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55 Commits

Author SHA1 Message Date
Junyan Qin ffd4143672 Add OSS and commercial workspace boundaries 2026-07-10 12:02:31 +08:00
Junyan Qin 516e85f9e3 Document multi-tenant workspace architecture 2026-07-10 12:02:31 +08:00
RockChinQ 940234a0d8 docs: update blog links to main site 2026-07-09 14:13:04 -04:00
Daria Korenieva 0c405901d2 feat(vector): add Valkey Search vector database backend (#2276)
* feat(vector): add Valkey Search vector database backend

Add a new opt-in VectorDatabase backend backed by the Valkey Search module
(valkey/valkey-bundle), accessed via the official valkey-glide client's native
ft command namespace.

- Implements the full VectorDatabase ABC: VECTOR, FULL_TEXT and HYBRID search,
  all 8 metadata filter operators, and pagination with exact totals.
- HYBRID uses filter-then-KNN (no app-side weighted fusion); vector_weight is
  accepted for interface parity but NOT honored (docstring + one-time warning +
  docs caveat).
- Lazy connect so a down Valkey never blocks boot; mandatory
  client_name=langbot_vector_client; optional auth + TLS (never logged).
- Registered via a single elif branch in vector/mgr.py; disabled by default
  (vdb.use stays chroma) for toC compatibility.
- Adds valkey-glide>=2.4.1,<3.0.0; no protobuf/pydantic downgrade; no ORM
  change so no Alembic migration.
- Unit tests (fast lane, no server) + slow-gated integration tests
  (TEST_VALKEY_URL, valkey/valkey-bundle:9.1.0) + integration doc.

* fix(vector): paginate Valkey Search deletes and guard delete_by_filter

Address self-review follow-ups for the Valkey Search VDB backend:

- _search_keys now paginates through the full result set in batches of
  _DELETE_SCAN_BATCH instead of capping at a single hard-coded 10000-key
  page, so delete_by_file_id / delete_by_filter fully remove files and
  filters that match more than one page of chunks (no orphaned vectors).
- Add unit regression tests for the delete_by_filter mass-deletion guard:
  a filter referencing only non-indexed fields must skip and return 0
  (never fall back to match-all), and a supported filter still deletes
  matching keys.

* refactor(vector): harden Valkey Search backend and add adversarial tests

Address the self-review NICE-TO-HAVE items for the Valkey Search VDB backend:
- Guard the username-without-password credential edge (skip auth + warn
  instead of building ServerCredentials(password=None, ...), which glide
  rejects).
- Add an async close() teardown that closes the glide client and resets
  cached state (re-init is safe via the existing None guard).
- Hoist 'import json' to module top (was imported inside three methods).
- Document the FT TAG literal-brace limitation in _escape_tag (fails closed,
  never widens).

Tests:
- Add an adversarial-input integration test proving crafted file_id /
  query_text cannot break out of or widen a query (fail-closed on braces).
- Add unit tests for close() and the credential-build guard.

Signed-off-by: Daria Korenieva <daric2612@gmail.com>

* fix(vector): make Valkey Search file_id TAG support arbitrary characters

Valkey Search's FT TAG query parser cannot handle '{', '}' or '*' even when
backslash-escaped, so a file_id containing those characters previously
produced an unparseable query (it failed closed / raised). Percent-encode
exactly those FT-unsafe characters (plus '%' for reversibility) in the
file_id TAG value, applied identically at write time and query time, so an
arbitrary file_id round-trips. For normal UUID/hash ids this is a no-op and
the stored value is unchanged; the original file_id is always preserved
verbatim in metadata_json.

Strengthen the adversarial integration test to assert a brace/star-bearing
file_id matches and deletes exactly its own row (no widening, no raise), and
add unit tests for _encode_file_id and the filter encoding.

Signed-off-by: Daria Korenieva <daric2612@gmail.com>

* refactor(vector): address Valkey Search review feedback

- Add configurable request_timeout (default 5000ms; glide default 250ms is
  too low for KNN); expose in config.yaml + docs table
- Validate embedding dimension consistency in add_embeddings (fail fast on
  mixed lengths to avoid silent KNN corruption)
- Use ft.info (O(1)) instead of ft.list (O(n)) for index existence checks in
  the query hot path; also closes the check-then-create TOCTOU window
- Pipeline HSETs via a non-atomic Batch instead of N sequential awaits
- Extract shared _iter_reply_docs to deduplicate reply parsing between
  _reply_to_chroma and list_by_filter
- Parenthesize multi-condition pre-filters before the => KNN clause
- Fail closed when a username is configured without a password
- Catch only RequestError on ft.dropindex (let connection/auth errors surface)
- Bound the delete_collection SCAN loop with a safety cap
- Add VectorDatabase.close() (no-op default) + VectorDBManager.shutdown()
- Simplify _MATCH_ALL literal; normalize typing to builtin generics

* fix(vector/valkey_search): address round-2 review feedback

- Serialize lazy client creation with an asyncio.Lock (double-checked) so
  concurrent first-use callers don't construct and leak duplicate clients.
- Make the filter operator chain exhaustive: raise on an unhandled op rather
  than silently dropping the condition (which could widen delete_by_filter).
- Cast numeric range (///) values to float, failing closed on
  non-numeric input and pre-empting a future NUMERIC-field injection surface.

* refactor(vector): remove shutdown/close from base ABC per maintainer feedback Per maintainer request, interface changes to VectorDatabase ABC and VectorDBManager should be in a separate PR with implementation across all backends. The ValkeySearchVectorDatabase.close() method remains but does not override an ABC method.

Signed-off-by: Daria Korenieva <daric2612@gmail.com>

* docs(test): list valkey_search in vdb coverage exclusions Add valkey_search to the documented vector/vdbs/ coverage-exclusion list, matching the existing chroma/milvus/pgvector/qdrant/seekdb entries. These adapters require a live database instance and are covered by env-gated integration tests instead of unit tests.

Signed-off-by: Daria Korenieva <daric2612@gmail.com>

---------

Signed-off-by: Daria Korenieva <daric2612@gmail.com>
2026-07-08 06:59:16 +08:00
Hyu 00e2103873 docs(config): add box.default_memory_mb to config.yaml template (#2319)
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 15:18:27 +08:00
Hyu 209706b0b9 feat(mcp): add box.default_memory_mb config for nsjail memory limit (#2318)
Operators can now set a global default memory limit for all stdio MCP
servers in config.yaml or via environment variable:

  config.yaml:
    box:
      default_memory_mb: 2048  # default: 1536

  env:
    BOX__DEFAULT_MEMORY_MB=2048

The default is raised from 1024 to 1536 MB — a safer floor for
Node.js V8 + WASM (undici llhttp) under nsjail cgroup limits.
Individual MCP servers can still override via their own box.memory_mb.

Previously the fallback was hardcoded to 1024 MB, causing OOM kills
(return_code=137) on node/npx MCP servers that need more RAM.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 14:24:06 +08:00
Hyu 205404e3da fix(deps): pin langbot-plugin 0.4.13 (memory_mb removed from _COMPAT_FIELDS) (#2317)
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 13:45:13 +08:00
Hyu 3e93ccfb45 fix(mcp): use uniform session memory_mb=1024 to avoid BoxSessionConflictError (#2316)
All MCPs share one Box session (mcp-shared). When session memory_mb differed
by command type (512 for python, 1024 for node), the second MCP to call
create_session raised BoxSessionConflictError. Fix: always use 1024 MB for
the shared session so python and node MCPs coexist without conflict.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 09:55:49 +08:00
Hyu c5d7e3dcb1 fix(deps): pin langbot-plugin 0.4.12 (BoxManagedProcessSpec.memory_mb fix) (#2315)
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 09:31:09 +08:00
Hyu cd6d5d9c2f fix(mcp): pin langbot-plugin 0.4.10 - per-process memory_mb for node OOM fix (#2314)
* fix(mcp): bump default memory to 1024MB for node (npx) stdio MCP servers

Node.js MCP servers (npx/bunx) were being OOM-killed (return_code=137) by the
default 512MB nsjail cgroup_mem_max. Node V8 reserves large virtual address
space and instantiates WebAssembly modules (undici llhttp) on startup, easily
exceeding 512MB resident. This caused every node-based MCP (memory,
sequential-thinking, filesystem, weather, docker, excel) to crash-loop.

Fix: when the stdio command is npx/bunx/pnpm, default memory_mb to 1024 unless
the operator explicitly set a value. Python/uvx servers keep the 512MB default.

* chore(deps): pin langbot-plugin 0.4.10 (per-process memory_mb fix)

* chore: update uv.lock for langbot-plugin 0.4.10

---------

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 09:03:43 +08:00
Hyu 1f7d9339fc fix(mcp): bump default memory to 1024MB for node (npx) stdio MCP servers (#2313)
Node.js MCP servers (npx/bunx) were being OOM-killed (return_code=137) by the
default 512MB nsjail cgroup_mem_max. Node V8 reserves large virtual address
space and instantiates WebAssembly modules (undici llhttp) on startup, easily
exceeding 512MB resident. This caused every node-based MCP (memory,
sequential-thinking, filesystem, weather, docker, excel) to crash-loop.

Fix: when the stdio command is npx/bunx/pnpm, default memory_mb to 1024 unless
the operator explicitly set a value. Python/uvx servers keep the 512MB default.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-04 08:31:08 +08:00
RockChinQ f3b5fcfb7c fix mcp sidebar status sync (#2312)
Co-authored-by: Hyu <chenhyu@proton.me>
2026-07-03 20:23:12 +08:00
Hyu ffabb91bfe fix(mcp): add missing MCPLogs import to MCPForm (#2311)
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 17:59:02 +08:00
Hyu 96c84740db feat(mcp): add logs tab to MCP server detail panel (frontend) (#2310)
* feat(mcp): add logs tab to MCP server detail panel

- Add MCPLogs component mirroring PluginLogs functionality
- Add getMcpServerLogs API method to BackendClient
- Add logs tab to MCPForm detail panel (edit mode only)
- Add i18n keys (tabLogs, logsLevelAll, logsRefresh, logsAutoRefresh, logsEmpty) to all 8 locales
- Auto-refresh logs every 3s with toggle
- Filter logs by level (ALL/DEBUG/INFO/WARNING/ERROR)

* style: fix prettier formatting in MCPForm.tsx logs tab

* style: fix prettier in i18n locale files

---------

Co-authored-by: dadachann <dadachann@users.noreply.github.com>
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 16:52:15 +08:00
Hyu 85b5b5b54b feat(mcp): add MCP server log panel backend (#2308)
- Add log buffer (_log_buffer: deque with maxlen=500) to RuntimeMCPSession
- Capture stderr from Box managed process in monitor_process_health loop
- Add get_mcp_server_logs service method with limit and level filtering
- Add GET /servers/<server_name>/logs HTTP endpoint
- Parse log level from stderr lines (error/warning/debug/info)
- Tests passing: 211 passed, 12 skipped

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 16:05:23 +08:00
Hyu 28bffdef21 fix(mcp): set _preserve_managed_process before finally in cold-start path (#2309)
_ColdStartRetry was caught in _lifecycle_loop_with_retry which set
_preserve_managed_process = True — but by then the finally block inside
_lifecycle_loop had already run and called _cleanup_box_stdio_session(),
stopping the live managed process (return_code=143 SIGTERM). The cold-start
retry then restarted a fresh process, eliminating the warm-up advantage.

Fix: add an explicit except _ColdStartRetry in _lifecycle_loop that sets
_preserve_managed_process = True before re-raising. The finally block then
sees the flag and skips stop_managed_process, leaving the live process
untouched for the next handshake attempt.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 15:26:18 +08:00
Hyu bf3c96026b fix(mcp): fix cold-start connection drop by using lexically-intact owner exit stack (#2307)
The previous _TransferredStack approach broke anyio lexical context:
websocket_client/ClientSession use anyio task groups whose cancel scope is
bound to the frame that entered them. Deferring their aclose via a transferred
exit stack left the underlying memory streams closed once initialize() returned,
so the very next request (refresh -> list_tools) failed with Connection closed.

New design:
- Attach on the owner exit stack (same task as the serve loop, lexically intact)
- A cold-starting process makes initialize() fail; signal _ColdStartRetry up to
  the outer retry loop, which reuses the live process without consuming retry budget
- _lifecycle_loop_with_retry handles _ColdStartRetry like _TransportReconnect:
  preserves process, no fatal budget, backs off 2s and retries
- Two new unit tests: cold-start raises _ColdStartRetry (not fatal) when process
  is alive; raises fatal error when process has actually exited

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 14:58:40 +08:00
Hyu ed9343c686 fix(mcp): retry the stdio handshake during slow (npx) cold starts (#2306)
A node/npx stdio MCP server (e.g. firecrawl-mcp via npx -y) failed on first
connect with Connection closed / Failed after 4 attempts, even though the
process was fine. An npx cold start downloads+installs the package before the
server can answer the MCP handshake (measured ~27s for a simple official
server; longer for heavier ones). The old code attached the WS and called
session.initialize() the instant the process was started, so the handshake ran
before the process could answer and failed; the outer lifecycle retry then
rebuilt the process, churning it in a loop.

Verified decisively: attaching + initialize() against a mid-cold-start process
times out on attempt 1 (process still installing) but SUCCEEDS at t+0.6s on
attempt 2 once the process is ready. So the fix is to retry the handshake in
place, not to rebuild the process.

Changes (mcp_stdio.initialize):
- Start the managed process ONCE, then loop attach WS -> ClientSession ->
  initialize() within the startup_timeout budget, tearing down each failed
  attempt cleanly, until the handshake succeeds or the budget elapses. A
  successful transport/session is transferred into the owner exit stack via a
  small _TransferredStack adapter.
- Bound each attempt with asyncio.wait_for(initialize, _HANDSHAKE_ATTEMPT_TIMEOUT_SEC=10s)
  so a cold-starting process fails fast and retries instead of hanging until
  the transport drops.
- Stop retrying ONLY when the process has DEFINITIVELY exited: new
  _managed_process_has_exited() (checks EXITED status) replaces the previous
  not-_managed_process_is_running() test, which false-negatived on a
  just-spawned process that had not yet reported RUNNING and made the loop bail
  to the outer rebuild path (relay then rejected the early re-attach with HTTP 400).

Adds a unit test that fails the first two handshakes with the process alive and
asserts the loop retries to success while starting the process exactly once.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 14:16:57 +08:00
Hyu 9a8cdde86c refactor(mcp): make MCP test reuse the shared Box session (near-instant tests) (#2304)
* refactor(mcp): make MCP test reuse the shared Box session instead of a per-test session

Testing an MCP server (config-page "test" button) previously spun up a fresh
isolated mcp-test-<uuid> Box session every time: cold-start the container, run
the dependency bootstrap, probe, then tear the whole session down. That is slow
(tens of seconds) and, on an already-hosted server, wasteful — the server is
already running in the shared session.

Change the test to reuse the shared session / live process:

- _build_box_session_id: transient tests now use mcp-shared, the same Box
  session as live servers, so a test reuses the running container (and, for an
  existing server, its live managed process) instead of a cold per-test session.
- cleanup_session: a transient test no longer deletes the whole session (which
  under the shared model would kill every other MCP server in the container). It
  stops only its own process_id, exactly like a live server. Isolation is now at
  the process level (distinct process_id per server/test), not the session level.
- test_mcp_server (persisted server): reuse the live connection with a real
  list_tools refresh/probe; only fall back to a full start() when there is no
  live connection to probe or the refresh fails, instead of an ERROR->start()
  rebuild.

Trade-off: a failing test now shares the container with live servers rather than
a throwaway session. Accepted deliberately in favour of near-instant tests;
process-level isolation keeps a test from stopping another server's process.

* chore(deps): pin langbot-plugin 0.4.9 for the nsjail RLIMIT_AS node/npx MCP fix

---------

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 13:14:14 +08:00
Hyu a2655e16f8 fix(mcp): survive transient WS transport drops for Box stdio MCP servers (#2303)
* fix(mcp): survive transient WS transport drops for Box stdio MCP servers

A Box-backed stdio MCP server (e.g. pab1it0/prometheus) would periodically
error on the frontend with Box managed process exited unexpectedly /
Failed after 4 attempts once the session had been alive for a while.

Root cause: the managed MCP process lives in the Box runtime and SURVIVES a
WebSocket transport drop, but _lifecycle_loop treated any monitor completion
as a fatal process death. It then ran the finally-block cleanup — which STOPS
the still-healthy managed process — and did a full 4-attempt exponential
backoff rebuild. Under an occasionally-stalled single-worker event loop the
mcp websocket client misses a ping/pong, the transport drops, and this
self-inflicted teardown loop is what the user sees.

Fixes:
- _lifecycle_loop: when the health monitor completes, re-check the real
  managed-process state. If the process is still running, the transport
  merely dropped: raise an internal _TransportReconnect signal instead of
  Box managed process exited unexpectedly.
- _lifecycle_loop_with_retry: handle _TransportReconnect as a free, uncounted
  reconnect (does not consume the fatal retry budget), so a long-lived session
  survives arbitrarily many transient drops.
- finally-block: gate managed-process teardown on a _preserve_managed_process
  flag so a transport-only reconnect closes just the WS, not the process.
- BoxStdioSessionRuntime.initialize: reuse an already-running managed process
  instead of stopping+rebuilding it (which also re-ran the slow dependency
  bootstrap); only (re)start when none is running. Adds
  _managed_process_is_running() helper.

Pairs with langbot-plugin-sdk fix adding a server-driven WS heartbeat to the
managed-process relay, which prevents most drops in the first place.

* style(mcp): ruff format

* chore(deps): pin langbot-plugin 0.4.8 for the managed-process WS heartbeat fix

---------

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-07-03 12:24:24 +08:00
Hyu f89611f39a chore: release v4.10.5 2026-07-03 00:59:53 +08:00
RockChinQ 04a199a3b2 fix: preserve MCP server ids with slashes
Fixes #2301
2026-07-03 00:17:29 +08:00
Hyu f85278f98b Fix monitoring CI regressions 2026-07-02 17:22:33 +08:00
Hyu 0ce382fc8b Improve pipeline monitoring and AI tab resilience 2026-07-02 16:53:50 +08:00
Hyu e32e515bc9 Tone down tool call bubbles 2026-07-02 16:53:50 +08:00
Hyu c809e3d14f Add tool call observability 2026-07-02 16:53:50 +08:00
Hyu b1bc05d5d3 Improve monitoring conversation turns 2026-07-02 16:53:50 +08:00
Stevenqin 13dba887d5 fix(wecomcs): implement proactive text sends (#2300) 2026-07-02 14:39:05 +08:00
彼方 cc7a13158e fix(aiocqhttp): resolve group member metadata (#2298)
* fix(aiocqhttp): resolve group member metadata

* style: ruff format
2026-07-01 20:00:47 +08:00
RockChinQ 7de7c7f714 docs: update Product Hunt badge to featured 2026-06-30 08:23:55 -04:00
Junyan Qin 85923e3d7b fix(migrations): shorten mcp resource revision id 2026-06-30 19:39:23 +08:00
Junyan Qin c7c6c5dc51 fix(i18n): add skill tools tooltip translations 2026-06-30 19:37:57 +08:00
Junyan Qin b056646696 fix(migrations): add mcp resource preferences 2026-06-30 19:36:04 +08:00
advancer-young 096ec1a8ce feat(mcp): support mcp resources (#2215)
* feat(mcp): support mcp resources

* feat(web): split MCP resources into tab

* docs: add MCP resources PR review

* feat(mcp): productionize resource support

* feat(mcp): scope local agent tools and resources

* fix(web): gate space embedding models behind login

* fix(web): prevent clipped space model CTA

* test: update preproc resource tool expectations

* fix(web): expose skill authoring tools in selector

---------

Co-authored-by: yang.xiang <yang.xiang@advancegroup.com>
Co-authored-by: Hyu <chenhyu@proton.me>
Co-authored-by: Junyan Qin <rockchinq@gmail.com>
2026-06-30 19:16:30 +08:00
RockChinQ 2618e06492 docs: update 302.AI referral link to share.302ai.cn 2026-06-30 05:10:17 -04:00
彼方 5c8c0eb17b test: use package import paths (#2297) 2026-06-30 10:51:34 +08:00
彼方 ccc51522cf fix(aiocqhttp): normalize base64 media payloads (#2296)
* fix(aiocqhttp): normalize image and voice base64 payloads

* fix(aiocqhttp): support file messages from base64 payloads

* test(aiocqhttp): use package import path
2026-06-30 10:51:09 +08:00
彼方 6a99a83f2d chore(scripts): mark scripts executable (#2295) 2026-06-30 10:50:26 +08:00
Hyu ebab5343cf fix(i18n): add bots.admins keys to all locale files (#2292)
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-06-27 17:38:30 +08:00
Hyu b97cc800d3 feat(platform): migrate bot admins from config.yaml to database (#2289)
* feat(platform): migrate bot admins from config.yaml to database

- Add BotAdmin ORM model (bot_admins table) scoped per bot_uuid
- Add Alembic migration 0007 to create table and migrate legacy config admins
- Remove top-level admins key from config.yaml template
- Add GET/POST/DELETE /api/v1/platform/bots/<uuid>/admins endpoints
- Update cmdmgr privilege check to query bot_admins table (bot-scoped)
- Add BotAdminsPanel frontend component in bot detail sessions tab
- Add i18n keys (zh-Hans, en-US)

* fix(ci): ruff/prettier format, fix test_importutil assertion

* fix(ci): prettier format BackendClient.ts and i18n locales

* fix(ci): eslint-prettier fix BackendClient.ts single-param formatting

* refactor: move admin management into session monitor, fix session_id enum format

- Remove standalone admins tab, replace with BotAdminsDialog in session monitor
- Add admin toggle button inline in chat header next to Active status
- Add BotAdminsDialog component with useBotAdmins hook
- Fix session_id written as LauncherTypes.PERSON_xxx instead of person_xxx
  (monitoring_helper.py x4, pipelinemgr.py x1 missing .value on launcher_type)
- Fix duplicate platform/person label in session list and chat header
- Migrate existing malformed session_id records in DB

---------

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-06-27 17:18:19 +08:00
彼方 48905ea080 feat(plugin): report deferred response delivery failures (#2287)
* feat(plugin): report deferred response delivery failures

* style: fix ruff format issues in plugin_diagnostics and test_handler_actions

---------

Co-authored-by: RockChinQ <45992437+RockChinQ@users.noreply.github.com>
2026-06-26 23:45:10 +08:00
Hyu ddb77fc43c fix(api): guard /set-password with allow_modify_login_info (#2288)
The /change-password and /bind-space endpoints already refuse when
system.allow_modify_login_info is false, but /set-password did not,
leaving a path to alter login credentials on locked-down deployments
(e.g. public demo instances). Apply the same guard.

Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-06-26 16:35:50 +08:00
huanghuoguoguo 5b2826fa49 Add performance and reliability QA gates (#2283)
* Add performance and reliability QA gates

* test(skills): prepare user path performance gate

* test(skills): add debug chat load gate

* test(skills): extend fake provider load profiles

* test(skills): add debug chat timing and isolation probes

* test(skills): clarify manual QA perf gates
2026-06-25 21:02:44 +08:00
Hyu 20636ac432 Merge pull request #2284 from langbot-app/fix/api-password-thread-offload
fix(api): offload password hashing from event loop
2026-06-25 20:31:44 +08:00
Hyu af42602547 Merge pull request #2285 from langbot-app/fix/monitoring-null-payloads
fix(monitoring): tolerate null API payloads
2026-06-25 20:26:25 +08:00
dadachann 53b20e2b13 fix(monitoring): tolerate null API payloads
Normalize monitoring API responses before rendering so empty or error payloads with data:null cannot crash the dashboard. Also guard chart, token, and box session arrays before reading length/map.
2026-06-25 08:22:01 -04:00
dadachann 1242dc2d21 fix(api): offload password hashing from event loop 2026-06-25 06:29:16 -04:00
RockChinQ 04628d93cb docs: add architecture guide for agents 2026-06-25 04:17:19 -04:00
RockChinQ 9c22a1521c fix(box): defer separated workspace ownership to runtime 2026-06-25 00:09:40 -04:00
RockChinQ c8d5039580 feat(box): expose Docker CPU limit toggle 2026-06-24 23:31:53 -04:00
dadachann 85d8d9304e fix(web): keep feedback dialog interactive 2026-06-24 10:10:19 -04:00
Hyu 76471af179 feat(web): add sidebar feedback popover
Co-authored-by: dadachann <185672915+dadachann@users.noreply.github.com>
2026-06-24 16:43:50 +08:00
RockChinQ 59b2a7cd51 fix(monitoring): hide disabled box status on cloud 2026-06-23 06:40:05 -04:00
RockChinQ a43978ff24 chore(release): bump version to 4.10.4 2026-06-22 21:15:53 -04:00
RockChinQ e3417dd20b fix(release): derive package version from metadata 2026-06-22 21:10:33 -04:00
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# AGENTS.md # AGENTS.md
This file guides code agents (Claude Code, GitHub Copilot, OpenAI Codex, etc.) working in the LangBot project. `CLAUDE.md` is a symlink to this file. This file guides code agents working in the LangBot main repository. `CLAUDE.md` is a symlink to this file.
## Project Overview Read `ARCHITECTURE.md` before non-trivial backend, frontend, runtime, plugin, Box, MCP, persistence, or cross-repo SDK changes. This file is the working checklist; `ARCHITECTURE.md` is the system map.
LangBot is an open-source, LLM-native instant-messaging bot development platform. It aims to provide an out-of-the-box IM bot development experience with Agent, RAG, MCP and other LLM application capabilities, supporting mainstream global IM platforms and exposing rich APIs for custom development. ## Quick Facts
LangBot has a comprehensive web frontend — almost every operation can be performed through it. - Python backend: `>=3.11,<4.0`, dependencies managed by `uv`.
- Frontend: `web/` is Vite + React Router 7 + shadcn/ui + Tailwind, managed by `pnpm`.
- Backend framework: Quart served by Hypercorn on `api.port`, default `5300`.
- Frontend dev server: `web/` on `3000`, with `VITE_API_BASE_URL` pointing at the backend.
- Plugin/Box/runtime contracts live in sibling repo `langbot-plugin-sdk`, pinned as `langbot-plugin` in `pyproject.toml`.
- **Python**: `>=3.11,<4.0`, dependencies managed by `uv`. Package version is in `pyproject.toml`. ## Essential Commands
- **Frontend**: `web/` is a **Vite + React Router 7 + shadcn/ui + Tailwind CSS** SPA, managed by `pnpm`. (Note: this is NOT Next.js — the `dev` script is `vite`.)
- **Backend framework**: Quart (the async flavour of Flask). The HTTP API and the pre-built web UI are both served by the backend on `http://127.0.0.1:5300`.
## Repository Layout
```
LangBot/
├── main.py # Entrypoint shim -> langbot.__main__.main()
├── pyproject.toml # Python project + deps (uv), pins langbot-plugin==<x.y.z>
├── src/langbot/
│ ├── __main__.py # Real entrypoint, CLI args (--standalone-runtime, --standalone-box, --debug)
│ ├── pkg/ # Core backend package
│ │ ├── api/ # HTTP API controllers + services (Quart)
│ │ ├── core/ # App bootstrap, stages, task manager
│ │ ├── platform/ # IM platform adapters, bot managers, session managers
│ │ ├── provider/ # LLM providers, requesters, tool providers
│ │ ├── pipeline/ # Pipelines, stages, query pool
│ │ ├── plugin/ # Bridge connecting LangBot to the plugin runtime (see below)
│ │ ├── box/ # Code-sandbox subsystem (Docker / nsjail / E2B backends)
│ │ ├── skill/ # Skill subsystem
│ │ ├── rag/ , vector/ # RAG + vector store
│ │ ├── command/ # Built-in commands
│ │ ├── persistence/ # ORM models + Alembic migrations (SQLite & PostgreSQL)
│ │ ├── storage/ # Object/file storage abstractions
│ │ ├── config/, entity/, discover/, utils/, telemetry/, survey/
│ ├── libs/ # Vendored SDKs (qq_official_api, wecom_api, etc.)
│ └── templates/ # Config/component templates (e.g. templates/config.yaml)
├── web/ # Frontend SPA (Vite + React Router 7 + shadcn + Tailwind)
└── docker/ # docker-compose deployment files
```
## Development Environment Setup
Full guide lives in the wiki: **["开发配置" / Dev Config](https://docs.langbot.app/zh/develop/dev-config)**. Summary:
### Backend
```bash
pip install uv
uv sync --dev # uv creates a .venv/ for you; point your editor's interpreter at it
uv run main.py # serves API + web UI on http://127.0.0.1:5300
```
On first run the config file is generated at `data/config.yaml`. DB is SQLite by default (zero setup); PostgreSQL is supported. Migrations run automatically on startup.
### Frontend
Requires Node.js + [pnpm](https://pnpm.io/installation).
```bash
cd web
cp .env.example .env # Windows: copy .env.example .env
pnpm install
pnpm dev # http://127.0.0.1:3000 (npm install / npm run dev also work)
```
`pnpm dev` reads `VITE_API_BASE_URL` from `web/.env` so the dev frontend can reach the backend on port `5300`. In production the frontend is pre-built into static files served by the backend on the same origin.
### Code formatting
The repo runs lint + format checks in CI. Install the pre-commit hooks so the same checks run locally before each commit:
```bash ```bash
uv sync --dev
uv run main.py
uv run pre-commit install uv run pre-commit install
cd web
pnpm install
pnpm dev
pnpm build
``` ```
## Plugin System Useful focused tests:
LangBot's plugin system (Plugin SDK, CLI `lbp`, Plugin Runtime, and the shared entity/API definitions) lives in a **separate repository**: [`langbot-plugin-sdk`](https://github.com/langbot-app/langbot-plugin-sdk). LangBot depends on it via the pinned `langbot-plugin` package in `pyproject.toml`.
### Architecture (what to know inside this repo)
- Plugins run as independent processes managed by the **Plugin Runtime**. The Runtime supports two control transports: `stdio` and `websocket`.
- When LangBot is started directly by a user (not in a container), it spawns and connects to the Runtime over **stdio** (lightweight/personal use).
- When LangBot runs in a container, it connects to a standalone Runtime over **WebSocket** (production).
- The bridge code lives in `src/langbot/pkg/plugin/` (`connector.py`, `handler.py`).
- Relevant config (`data/config.yaml`): `plugin.runtime_ws_url` (e.g. `ws://langbot_plugin_runtime:5400/control/ws`). Start LangBot with `--standalone-runtime` to make it connect to an externally-launched Runtime over WebSocket instead of spawning one over stdio.
### Debugging the Plugin Runtime / CLI / SDK
This is documented in detail in the **SDK repo's `AGENTS.md`** and in the wiki page **["调试插件运行时、CLI、SDK" / Plugin Runtime](https://docs.langbot.app/zh/develop/plugin-runtime)**. The short version:
- Clone `LangBot` and `langbot-plugin-sdk` as siblings under one parent dir so the editor resolves shared entities.
- Start a standalone Runtime from the SDK repo: `uv run --no-sync lbp rt` (control port `5400`, debug port `5401`).
- To make LangBot use a locally-modified SDK: from the SDK dir, with LangBot's `.venv` active, run `uv pip install .`, then launch LangBot with `uv run --no-sync main.py --standalone-runtime` (keep `--no-sync` so your local SDK isn't overwritten).
### Debugging the Box (sandbox) runtime
The Box subsystem (`src/langbot/pkg/box/`) is the code sandbox. It picks the first available backend among **Docker / nsjail / E2B**. The standalone Box runtime is launched via the SDK CLI: `lbp box`. Backend selection details, the `lbp box` flags, and the SDK-side architecture are documented in the SDK repo's `AGENTS.md`.
Relevant config (`data/config.yaml`, `box:` section): `box.enabled` (master switch — disabling it also disables the native sandbox tools, skill add/edit, and stdio-mode MCP servers), `box.backend` (`'local'` = Docker/nsjail auto-pick, or `'docker'` / `'nsjail'` / `'e2b'`; also settable via `BOX__BACKEND`), and `box.runtime.endpoint` (external Box runtime base URL, e.g. `ws://127.0.0.1:5410`; empty = local auto-managed runtime). Like the plugin runtime, LangBot can connect to an externally-launched Box runtime by setting that endpoint and starting with `--standalone-box`.
> A common false "No supported sandbox backend (Docker / nsjail / E2B) is available" comes from Docker being installed and running but the current user not being in the `docker` group → `docker info` gets `permission denied` on the socket. Fix: `sudo usermod -aG docker <user>` and restart the backend in a shell that has the new group.
## Development Standards
- LangBot is a global project: **all code comments and docstrings must be in English**, and every user-facing string must support **i18n** (`en_US` + `zh_Hans` at minimum, plus `ja_JP` where the repo already has it).
- LangBot is adopted in both toC and toB scenarios — always consider compatibility and security.
- **Commit message format**: `<type>(<scope>): <subject>`
- `type`: one of `feat`, `fix`, `docs`, `style`, `refactor`, `perf`, `test`, `chore`, etc.
- `scope`: the affected package/module/file/class.
- `subject`: concise description of the change.
### Database migrations (Alembic)
LangBot uses [Alembic](https://alembic.sqlalchemy.org/) for migrations, supporting both SQLite and PostgreSQL from a single set of scripts. Migration files live in `src/langbot/pkg/persistence/alembic/versions/`.
If you change ORM model definitions, generate a migration:
```bash ```bash
# Run from the project root (requires data/config.yaml to exist) uv run pytest tests/unit_tests -q
uv run python -m langbot.pkg.persistence.alembic_runner autogenerate "description of your change" uv run pytest tests/integration -q
uv run pytest tests/integration/persistence -q
uv run pytest tests/manual/mcp_smoke.py
cd web
pnpm lint
pnpm test:e2e
``` ```
Review and edit the generated script before committing. Migrations execute automatically on startup. `autogenerate` detects schema changes (add/drop columns, tables, type changes) but **data migrations** (e.g. mutating JSON field contents) must be hand-written into the generated script. `env.py` sets `render_as_batch=True`, so SQLite's ALTER TABLE limits are handled automatically — no need to branch per database. More in the wiki ["开发配置"](https://docs.langbot.app/zh/develop/dev-config#数据库迁移). Run the narrowest useful test first, then broader checks when confidence is needed.
When writing a migration, follow these rules: ## Where to Look
- **Revision id ≤ 32 characters.** PostgreSQL stores `alembic_version.version_num` as `varchar(32)`; a longer id raises `StringDataRightTruncationError` at runtime. Prefer short, descriptive ids like `0005_add_llm_context_length`. - Architecture map: `ARCHITECTURE.md`.
- **Guard every operation against missing tables/columns.** Fresh installs build the schema via `create_all()` and then stamp the Alembic baseline, so a migration may run against a table that already has the change — or, in tests, against an empty database. Check `inspector.get_table_names()` / `inspector.get_columns(...)` before `add_column` / `drop_column`, mirroring the existing migrations. - Dev environment guide: https://docs.langbot.app/zh/develop/dev-config.
- **Keep a single linear head.** Chain `down_revision` to the current head; do not create branches. Run the migration tests after adding one: `uv run pytest tests/integration/persistence/ -q` (the PostgreSQL test needs a running PG via `TEST_POSTGRES_URL`). - Plugin runtime / CLI / SDK debugging: https://docs.langbot.app/zh/develop/plugin-runtime.
- API-key auth: `docs/API_KEY_AUTH.md`.
- Box deep-dive notes: `docs/review/box-architecture.md` and related files.
- In-repo skills: `skills/` is the single source of truth for LangBot agent skills.
- SDK repo: `../langbot-plugin-sdk/` when changing shared entities, plugin APIs, action protocol, `lbp rt`, or `lbp box`.
> **Legacy migration system (deprecated — do not extend).** The old 3.x migration system under `src/langbot/pkg/persistence/migrations/` (`DBMigration` subclasses in `dbmXXX_*.py`, run from `pkg/persistence/mgr.py`) is **frozen**. Do **not** add new `dbmXXX_*.py` files. The chain is capped at `required_database_version = 25` (`pkg/utils/constants.py`); those files only exist to upgrade pre-existing 3.x databases up to the Alembic baseline and are kept read-only. All new schema changes go through Alembic. ## Cross-Repo SDK Work
## Agent-Facing Surfaces (MCP + Skills) When changing SDK contracts used by LangBot:
LangBot is built to be **agent-friendly**. Three surfaces let AI agents work ```bash
with LangBot, and they MUST be kept in lockstep with the HTTP API: # from langbot-plugin-sdk, with LangBot's .venv active
uv pip install .
1. **MCP server**`src/langbot/pkg/api/mcp/` exposes a curated subset of the # from LangBot, preserve the locally installed SDK
API as MCP tools at `/mcp` (API-key authenticated, including the uv run --no-sync main.py
`api.global_api_key` from config.yaml). `server.py` defines the tools (they ```
call the service layer directly); `mount.py` is the ASGI dispatcher.
2. **In-repo skills**`skills/` is the **single source of truth** for agent
skills (plugin/core/deploy/e2e/MCP-ops). Docs and the landing page link here
rather than embedding their own copies.
3. **API-key auth**`api.global_api_key` (config.yaml) authenticates the API
and MCP without a login session; see `docs/API_KEY_AUTH.md`.
> **Maintenance rule (important).** When you add, remove, or change an HTTP API For standalone runtime debugging:
> endpoint that should be agent-accessible, you MUST update **both** the matching
> MCP tool in `src/langbot/pkg/api/mcp/server.py` **and** the relevant skill under
> `skills/` (especially `skills/skills/langbot-mcp-ops`). The API, the MCP tool
> surface, and the skills are one system — drift between them is a bug.
## Some Principles ```bash
# in langbot-plugin-sdk
uv run --no-sync lbp rt
uv run --no-sync lbp box
# in LangBot
uv run --no-sync main.py --standalone-runtime
uv run --no-sync main.py --standalone-box
```
Config keys to verify in `data/config.yaml` / `src/langbot/templates/config.yaml`:
- Plugin runtime: `plugin.runtime_ws_url`, default Docker host `langbot_plugin_runtime:5400/control/ws`.
- Box runtime: `box.enabled`, `box.backend`, `box.runtime.endpoint`, Docker host `langbot_box:5410`.
- API/MCP auth: `api.global_api_key`.
## Change Rules
- HTTP API changes that should be agent-accessible must update the matching MCP tool in `src/langbot/pkg/api/mcp/server.py` and the relevant skill under `skills/` in the same pass.
- New schema changes use Alembic under `src/langbot/pkg/persistence/alembic/versions/`; do not add legacy `dbmXXX` migrations.
- New platform behavior belongs in platform adapters only for platform translation; pipeline/business logic belongs in `pkg/pipeline/` or services.
- User-facing strings must support i18n (`en_US`, `zh_Hans`; include `ja_JP` where the repo already does).
- Code comments and docstrings must be English.
- Keep compatibility and security in mind; LangBot is used in both self-hosted/community and toB deployments.
- Commit message format: `<type>(<scope>): <subject>`.
## Runtime Pitfalls
- Local stdio Plugin Runtime disconnects do not auto-reconnect; restart LangBot if that path breaks.
- Orphan runtime processes on `5400`/`5401` commonly break plugin debugging.
- Use `uv run --no-sync` after locally installing the SDK, or `uv` may restore the pinned package.
- A false Box “no backend” often means Docker is running but the current user lacks Docker socket permission.
- Do not confuse external MCP servers LangBot connects to (`pkg/provider/tools/loaders/mcp.py`) with LangBot's own `/mcp` server (`pkg/api/mcp/`).
- `CLAUDE.md` is a symlink to this file; edit `AGENTS.md`, not the symlink.
## Principles
- Keep it simple, stupid. - Keep it simple, stupid.
- Entities should not be multiplied unnecessarily. - Entities should not be multiplied unnecessarily.
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# Architecture
This document is a map of LangBot's moving parts. It is intentionally more stable than a feature guide and more concrete than the README: when you need to change behavior, start here, then follow the file references into the code.
For agent-specific working rules, see `AGENTS.md`. For plugin-runtime and Box-runtime implementation details, also read the sibling SDK repo: [`langbot-plugin-sdk`](https://github.com/langbot-app/langbot-plugin-sdk).
## What LangBot Is
LangBot is an open-source platform for building production IM bots backed by LLMs, agents, RAG, plugins, MCP tools, and a web management panel.
At runtime, one LangBot process owns:
- a Quart/Hypercorn HTTP service and the built web UI on `:5300`;
- messaging-platform adapters such as Discord, Telegram, Slack, WeChat, QQ, WeCom, Lark, DingTalk, KOOK, LINE, Satori, Matrix, and HTTP/WebSocket bots;
- a pipeline engine that turns inbound platform messages into LLM/tool/plugin work and replies;
- persistence, storage, vector database, telemetry, monitoring, and configuration managers;
- bridges to the Plugin Runtime and Box Runtime provided by `langbot-plugin-sdk`;
- an MCP server at `/mcp` exposing a curated agent-facing subset of the service layer.
## Repository Boundary
LangBot is not a single-repo system.
- `LangBot/` is the main product: backend, web UI, platform adapters, pipeline engine, HTTP API, MCP server, RAG, persistence, skills integration, and the bridge code that talks to runtimes.
- `langbot-plugin-sdk/` is published as `langbot-plugin` and pinned in `LangBot/pyproject.toml`. It contains plugin developer APIs, shared entities, `lbp`, the Plugin Runtime (`lbp rt`), and the Box Runtime (`lbp box`).
- Plugins import SDK APIs from `langbot_plugin.*`; the LangBot main process imports the same package for shared entities and runtime protocols.
This split matters. If a change modifies SDK entities, component APIs, action protocols, `lbp rt`, or `lbp box`, verify the sibling SDK repo and install the local SDK into LangBot's virtualenv when testing cross-repo behavior.
## Startup Path
The process entrypoint is small and layered:
1. `main.py` delegates to `langbot.__main__.main()`.
2. `src/langbot/__main__.py` parses `--standalone-runtime`, `--standalone-box`, and `--debug`, checks dependencies, generates missing config/data files, and calls `pkg.core.boot.main()`.
3. `pkg/core/boot.py` executes startup stages in order: `LoadConfigStage`, `GenKeysStage`, `SetupLoggerStage`, `BuildAppStage`, `ShowNotesStage`.
4. `BuildAppStage` constructs the `Application` object by wiring managers, services, runtime connectors, and controllers.
5. `Application.run()` starts the platform manager, query controller, HTTP controller, telemetry/cleanup loops, and plugin initialization.
The central runtime object is `pkg/core/app.py::Application`. It is a service locator for long-lived managers. That is not elegant, but it is the current architectural center; most subsystems receive `ap: Application` and collaborate through it.
## Top-Level Layout
```text
LangBot/
├── main.py # Entrypoint shim
├── pyproject.toml # Python package, deps, pinned langbot-plugin
├── src/langbot/
│ ├── __main__.py # CLI entrypoint and boot handoff
│ ├── pkg/
│ │ ├── core/ # Application, boot stages, task manager
│ │ ├── api/ # HTTP API + MCP server mount
│ │ ├── platform/ # IM adapters and runtime bot manager
│ │ ├── pipeline/ # Message routing and pipeline stages
│ │ ├── provider/ # LLM runners, model manager, tools
│ │ ├── plugin/ # LangBot-side Plugin Runtime connector/handler
│ │ ├── box/ # LangBot-side Box service/connector
│ │ ├── skill/ # Skill metadata/activation integration
│ │ ├── rag/ , vector/ # Knowledge-base and vector DB integration
│ │ ├── persistence/ # SQLAlchemy/SQLModel, Alembic, legacy migrations
│ │ ├── storage/ # Local/S3 file storage abstraction
│ │ └── config/, entity/, utils/, telemetry/, survey/
│ ├── libs/ # Vendored third-party platform SDKs
│ └── templates/ # Default config and component metadata
├── web/ # Vite + React Router + shadcn/ui + Tailwind SPA
├── docker/ # Deployment manifests
├── skills/ # In-repo agent skills, single source of truth
└── tests/ # Unit/integration/e2e/manual tests
```
## The Runtime Graph
The most useful mental model is this graph:
```text
Platform adapter
→ RuntimeBot
→ MessageAggregator
→ QueryPool
→ Controller
→ RuntimePipeline
→ PipelineStage chain
→ RequestRunner / ToolManager / PluginRuntimeConnector / BoxService
→ response via adapter
```
The HTTP and MCP surfaces are parallel entrypoints into the same service layer:
```text
HTTP client / Web UI
→ Quart route group
→ api/http/service/*
→ Application managers / persistence / runtime connectors
MCP client
→ /mcp mount
→ api/mcp/server.py tools
→ the same service layer directly
```
## Message Flow
Inbound platform messages enter through adapter-specific SDK callbacks. The common path is:
1. A platform adapter under `pkg/platform/sources/` converts platform-specific events into SDK message/event entities.
2. `RuntimeBot` in `pkg/platform/botmgr.py` applies pipeline routing rules and either discards the message, pushes it to webhooks, or sends it to the message aggregator.
3. `MessageAggregator` batches/normalizes messages before adding a `Query` to `QueryPool`.
4. `Controller` in `pkg/pipeline/controller.py` selects queries subject to global pipeline concurrency and per-session concurrency.
5. `RuntimePipeline` in `pkg/pipeline/pipelinemgr.py` runs configured pipeline stages using a responsibility-chain style executor that supports generator stages.
6. The chat stage emits plugin events, calls a configured `RequestRunner`, handles streaming/non-streaming responses, records telemetry, and appends conversation history.
7. Output stages send text, cards, chunks, files, or error notices back through the original platform adapter.
Pipeline components are registered by decorators and package import side effects. When adding a new stage, loader, runner, or adapter, check the corresponding preregistration mechanism instead of inventing a second registry.
## Platform Layer
Platform code lives under `pkg/platform/`.
- `botmgr.py` owns runtime bots, routing rules, event logging, webhook pushing, and adapter lifecycle.
- `sources/` contains adapter implementations. Each adapter subclasses `langbot_plugin.api.definition.abstract.platform.adapter.AbstractMessagePlatformAdapter` from the SDK.
- Platform entities such as `MessageChain`, `Image`, `At`, `Voice`, and events come from `langbot-plugin-sdk`, not from this repo.
The platform layer should translate between external platform APIs and LangBot's shared message/event model. It should not contain LLM-provider logic or pipeline business logic.
## Pipeline Layer
Pipeline code lives under `pkg/pipeline/`.
Important pieces:
- `pool.py::QueryPool` stores pending queries and cached in-flight queries for plugin backward-compatible calls.
- `controller.py::Controller` schedules query processing and enforces concurrency.
- `pipelinemgr.py::RuntimePipeline` materializes database pipeline config into a runtime stage chain.
- `process/handlers/chat.py::ChatMessageHandler` is the main LLM conversation handler.
- Stage families include response rules, banned sessions, content filters, preprocessors, rate limits, message truncation, long text handling, response-back, command handling, and wrappers.
Pipelines are configuration-driven. Prefer adding a stage or extending an existing stage family over hard-coding behavior in platform adapters.
## Provider, RAG, and Tools
Provider code lives under `pkg/provider/`.
- `modelmgr/` manages configured model providers and requesters.
- `runners/` implements request runners such as the local agent runner and external workflow integrations.
- `tools/toolmgr.py` aggregates tools from native tools, plugin tools, external MCP servers, and skill-authoring tools.
- `tools/loaders/mcp.py` is the MCP client side: external MCP servers that LangBot connects to for agent tools.
- RAG lives across `pkg/rag/`, `pkg/vector/`, model services, and plugin KnowledgeEngine actions.
Do not confuse LangBot's MCP client side with LangBot's own MCP server at `/mcp`; they are different surfaces.
## Plugin System
The plugin system crosses the repo boundary.
In this repo:
- `pkg/plugin/connector.py` connects LangBot to the Plugin Runtime over stdio or WebSocket.
- `pkg/plugin/handler.py` exposes LangBot actions to the runtime and calls runtime actions for plugin operations.
- `pkg/provider/tools/loaders/plugin.py` exposes plugin Tool components to LLM runners.
- Pipeline handlers emit SDK events such as normal-message events and prompt-processing events.
In `langbot-plugin-sdk`:
- `src/langbot_plugin/api/` defines `BasePlugin`, component base classes, message/event entities, contexts, proxies, and manifests.
- `src/langbot_plugin/runtime/` implements `lbp rt`, plugin discovery, dependency installation, process launching, and control/debug connections.
- `src/langbot_plugin/entities/io/` defines the action protocol shared by LangBot, runtime, and plugin processes.
The Plugin Runtime supports stdio and WebSocket control transports. Direct local LangBot runs usually spawn the runtime over stdio. Containerized/standalone deployments connect over WebSocket using `plugin.runtime_ws_url` and `--standalone-runtime`.
## Box Runtime and Skills
Box is the sandbox subsystem used by native agent tools, stdio MCP servers, skill authoring, and managed processes.
In this repo:
- `pkg/box/service.py` is the application-facing facade for exec, sessions, managed processes, skill CRUD, status, reconnects, quotas, mounts, and sandbox profiles.
- `pkg/box/connector.py` connects to the Box Runtime over stdio, Windows subprocess+WebSocket, or remote WebSocket.
- `pkg/provider/tools/loaders/native.py`, `mcp_stdio.py`, and skill loaders depend on Box availability.
- `pkg/skill/manager.py` loads skills from the Box runtime, falling back to local `data/skills` when needed.
In `langbot-plugin-sdk`:
- `src/langbot_plugin/box/server.py` implements `lbp box` and the WebSocket endpoints on `:5410`.
- `src/langbot_plugin/box/runtime.py` owns sandbox sessions and managed processes.
- `backend.py`, `nsjail_backend.py`, and `e2b_backend.py` implement sandbox backends.
- `skill_store.py` manages skill packages from the Box side.
Important config keys live under `box:` in `src/langbot/templates/config.yaml`: `box.enabled`, `box.backend`, `box.runtime.endpoint`, and `box.local.*`. Start LangBot with `--standalone-box` when connecting to an externally launched Box runtime.
## HTTP API, Web UI, and MCP Server
`pkg/api/http/controller/main.py` builds a Quart app, registers route groups, serves the built SPA, and wraps the ASGI app with the MCP dispatcher.
- HTTP route groups live under `pkg/api/http/controller/groups/`.
- Service-layer logic lives under `pkg/api/http/service/`.
- The built web UI is served from the frontend build path with SPA fallback.
- The MCP server lives under `pkg/api/mcp/` and is mounted at `/mcp`.
The MCP server intentionally exposes a curated subset of the API. Tools call service classes directly rather than making HTTP requests back into LangBot.
Maintenance rule: when adding, removing, or changing an HTTP endpoint that should be agent-accessible, update the matching MCP tool and the relevant in-repo skill under `skills/` in the same pass.
## Persistence and Configuration
Persistence is centered on `pkg/persistence/mgr.py`.
- SQLite is the default database; PostgreSQL is supported.
- Models live under `pkg/entity/persistence/`.
- Fresh schemas are created from metadata, then legacy migrations run up to the frozen 3.x baseline, then Alembic migrations run to head.
- New schema changes should use Alembic under `pkg/persistence/alembic/versions/`; do not extend the frozen legacy migration chain.
Configuration starts from `src/langbot/templates/config.yaml` and is generated into `data/config.yaml` on first run. Most long-lived managers read from `ap.instance_config.data`.
## Frontend
The frontend lives in `web/` and is a Vite SPA using React Router 7, shadcn/ui, Tailwind CSS, and pnpm. It is not Next.js, despite some historical filenames.
In development, `pnpm dev` serves the UI on `:3000` and reads `VITE_API_BASE_URL` to call the backend on `:5300`. In production, the built frontend is packaged into the Python distribution and served by the backend.
Keep frontend API behavior aligned with `pkg/api/http/service/` and route groups. User-facing strings must go through the existing i18n setup.
## Agent-Facing Surfaces
LangBot is deliberately agent-friendly. The agent-facing surfaces are part of the architecture, not extra docs.
- `skills/` is the single source of truth for in-repo skills.
- `pkg/api/mcp/server.py` exposes the LangBot MCP server at `/mcp`.
- `api.global_api_key` authenticates API/MCP access without a browser login.
- `AGENTS.md` and `ARCHITECTURE.md` tell coding agents how the repo works.
When one of these changes, update the others if the behavior or contract changed. API, MCP tools, and skills are one system; drift is a bug.
## Where to Change Things
- New HTTP API: add/adjust a service in `pkg/api/http/service/`, a route group in `pkg/api/http/controller/groups/`, tests, and MCP/skills if agent-accessible.
- New platform adapter: add a `pkg/platform/sources/*` adapter, component metadata/templates as needed, i18n, docs, and tests/smoke coverage.
- New pipeline behavior: add or extend a pipeline stage family under `pkg/pipeline/`; avoid putting pipeline rules in adapters.
- New LLM provider/requester: work under `pkg/provider/modelmgr/` and related service/UI surfaces.
- New LLM tool source: extend `pkg/provider/tools/loaders/` and `ToolManager` intentionally.
- New plugin component/API/protocol: change `langbot-plugin-sdk` first or in lockstep, then update LangBot bridge code.
- New Box capability: change both `pkg/box/` and `langbot-plugin-sdk/src/langbot_plugin/box/`, plus config and tests.
- New database schema: add an Alembic migration, not a legacy `dbmXXX` migration.
## Design Biases
- Keep platform translation, pipeline orchestration, provider execution, and runtime protocols separate.
- Reuse existing registries and service layers instead of adding parallel paths.
- Prefer small, explicit agent surfaces over exposing every internal API.
- Treat cross-repo contracts with the SDK as public interfaces.
- Test behavior at the narrowest useful layer first, then add integration/e2e coverage for runtime or platform changes.
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@@ -5,7 +5,7 @@
<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>Production-grade platform for building agentic IM bots.</h3> <h3>Production-grade platform for building agentic IM bots.</h3>
<h4>Quickly build, debug, and ship AI bots to Slack, Discord, Telegram, WeChat, and more.</h4> <h4>Quickly build, debug, and ship AI bots to Slack, Discord, Telegram, WeChat, and more.</h4>
@@ -51,7 +51,7 @@ LangBot is an **open-source, production-grade platform** for building AI-powered
[→ Learn more about all features](https://link.langbot.app/en/docs/features) [→ Learn more about all features](https://link.langbot.app/en/docs/features)
📍 Practical guides: [deploy a multi-platform AI bot in 5 minutes](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [connect DeepSeek to WeChat, Discord, and Telegram](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [run a Dify Agent in Discord, Telegram, and Slack](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/), and [build an n8n-powered chatbot](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 Practical guides: [deploy a multi-platform AI bot in 5 minutes](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [connect DeepSeek to WeChat, Discord, and Telegram](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [run a Dify Agent in Discord, Telegram, and Slack](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/), and [build an n8n-powered chatbot](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -136,7 +136,7 @@ docker compose --profile all up -d
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU Platform | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU Platform | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPU Platform | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPU Platform | ✅ |
| [接口 AI](https://jiekou.ai/) | Gateway | ✅ | | [接口 AI](https://jiekou.ai/) | Gateway | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | Gateway | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | Gateway | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | Gateway | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | Gateway | ✅ |
[→ View all integrations](https://link.langbot.app/en/docs/features) [→ View all integrations](https://link.langbot.app/en/docs/features)
+2 -2
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@@ -51,7 +51,7 @@ LangBot 是一个**开源的生产级平台**,用于构建 AI 驱动的即时
[→ 了解更多功能特性](https://link.langbot.app/zh/docs/features) [→ 了解更多功能特性](https://link.langbot.app/zh/docs/features)
📍 实践指南:[5 分钟部署多平台 AI 机器人](https://blog.langbot.app/zh/blog/deploy-ai-bot-in-5-minutes/)、[将 DeepSeek 接入微信、企业微信与 Discord](https://blog.langbot.app/zh/blog/connect-deepseek-to-wechat/)、[让 Dify Agent 跑在 Discord、Telegram 和 Slack 上](https://blog.langbot.app/zh/blog/dify-agent-discord-telegram-slack/),以及[用 n8n 构建多平台 AI 聊天机器人](https://blog.langbot.app/zh/blog/n8n-multi-platform-ai-chatbot/)。 📍 实践指南:[5 分钟部署多平台 AI 机器人](https://langbot.app/zh/blog/deploy-ai-bot-in-5-minutes/)、[将 DeepSeek 接入微信、企业微信与 Discord](https://langbot.app/zh/blog/connect-deepseek-to-wechat/)、[让 Dify Agent 跑在 Discord、Telegram 和 Slack 上](https://langbot.app/zh/blog/dify-agent-discord-telegram-slack/),以及[用 n8n 构建多平台 AI 聊天机器人](https://langbot.app/zh/blog/n8n-multi-platform-ai-chatbot/)。
--- ---
@@ -136,7 +136,7 @@ docker compose --profile all up -d
| [优云智算](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | GPU 平台 | ✅ | | [优云智算](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | GPU 平台 | ✅ |
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 平台 | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 平台 | ✅ |
| [接口 AI](https://jiekou.ai/) | 聚合平台 | ✅ | | [接口 AI](https://jiekou.ai/) | 聚合平台 | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | 聚合平台 | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | 聚合平台 | ✅ |
| [小马算力](https://www.tokenpony.cn/453z1) | 聚合平台 | ✅ | | [小马算力](https://www.tokenpony.cn/453z1) | 聚合平台 | ✅ |
| [百宝箱Tbox](https://www.tbox.cn/open) | 智能体平台 | ✅ | | [百宝箱Tbox](https://www.tbox.cn/open) | 智能体平台 | ✅ |
| [七牛云Qiniu](https://www.qiniu.com/ai/agent) | 聚合平台 | ✅ | | [七牛云Qiniu](https://www.qiniu.com/ai/agent) | 聚合平台 | ✅ |
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<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>Plataforma de grado de producción para construir bots de mensajería instantánea con agentes de IA.</h3> <h3>Plataforma de grado de producción para construir bots de mensajería instantánea con agentes de IA.</h3>
<h4>Construya, depure y despliegue bots de IA rápidamente en Slack, Discord, Telegram, WeChat y más.</h4> <h4>Construya, depure y despliegue bots de IA rápidamente en Slack, Discord, Telegram, WeChat y más.</h4>
@@ -50,7 +50,7 @@ LangBot es una **plataforma de código abierto y grado de producción** para con
[→ Conocer más sobre todas las funcionalidades](https://link.langbot.app/en/docs/features) [→ Conocer más sobre todas las funcionalidades](https://link.langbot.app/en/docs/features)
📍 Guías prácticas: [desplegar un bot de IA multiplataforma en 5 minutos](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [conectar DeepSeek a WeChat, Discord y Telegram](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [ejecutar un Dify Agent en Discord, Telegram y Slack](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/) y [crear un chatbot con n8n](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 Guías prácticas: [desplegar un bot de IA multiplataforma en 5 minutos](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [conectar DeepSeek a WeChat, Discord y Telegram](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [ejecutar un Dify Agent en Discord, Telegram y Slack](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/) y [crear un chatbot con n8n](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -135,7 +135,7 @@ docker compose --profile all up -d
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Plataforma GPU | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Plataforma GPU | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Plataforma GPU | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Plataforma GPU | ✅ |
| [接口 AI](https://jiekou.ai/) | Pasarela | ✅ | | [接口 AI](https://jiekou.ai/) | Pasarela | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | Pasarela | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | Pasarela | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | Pasarela | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | Pasarela | ✅ |
[→ Ver todas las integraciones](https://link.langbot.app/en/docs/features) [→ Ver todas las integraciones](https://link.langbot.app/en/docs/features)
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<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>Plateforme de niveau production pour construire des bots de messagerie instantanée avec agents IA.</h3> <h3>Plateforme de niveau production pour construire des bots de messagerie instantanée avec agents IA.</h3>
<h4>Créez, déboguez et déployez rapidement des bots IA sur Slack, Discord, Telegram, WeChat et plus.</h4> <h4>Créez, déboguez et déployez rapidement des bots IA sur Slack, Discord, Telegram, WeChat et plus.</h4>
@@ -50,7 +50,7 @@ LangBot est une **plateforme open-source de niveau production** pour créer des
[→ En savoir plus sur toutes les fonctionnalités](https://link.langbot.app/en/docs/features) [→ En savoir plus sur toutes les fonctionnalités](https://link.langbot.app/en/docs/features)
📍 Guides pratiques : [déployer un bot IA multiplateforme en 5 minutes](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [connecter DeepSeek à WeChat, Discord et Telegram](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [exécuter un Dify Agent dans Discord, Telegram et Slack](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/) et [créer un chatbot avec n8n](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 Guides pratiques : [déployer un bot IA multiplateforme en 5 minutes](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [connecter DeepSeek à WeChat, Discord et Telegram](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [exécuter un Dify Agent dans Discord, Telegram et Slack](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/) et [créer un chatbot avec n8n](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -132,7 +132,7 @@ docker compose --profile all up -d
| [ModelScope](https://modelscope.cn/docs/model-service/API-Inference/intro) | Passerelle | ✅ | | [ModelScope](https://modelscope.cn/docs/model-service/API-Inference/intro) | Passerelle | ✅ |
| [GiteeAI](https://ai.gitee.com/) | Passerelle | ✅ | | [GiteeAI](https://ai.gitee.com/) | Passerelle | ✅ |
| [接口 AI](https://jiekou.ai/) | Passerelle | ✅ | | [接口 AI](https://jiekou.ai/) | Passerelle | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | Passerelle | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | Passerelle | ✅ |
| [CompShare](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | Plateforme GPU | ✅ | | [CompShare](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | Plateforme GPU | ✅ |
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Plateforme GPU | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Plateforme GPU | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Plateforme GPU | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Plateforme GPU | ✅ |
+3 -3
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<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>AIエージェント搭載IMボットを構築するための本番グレードプラットフォーム。</h3> <h3>AIエージェント搭載IMボットを構築するための本番グレードプラットフォーム。</h3>
<h4>Slack、Discord、Telegram、WeChat などに AI ボットを素早く構築、デバッグ、デプロイ。</h4> <h4>Slack、Discord、Telegram、WeChat などに AI ボットを素早く構築、デバッグ、デプロイ。</h4>
@@ -50,7 +50,7 @@ LangBot は、AI搭載のインスタントメッセージングボットを構
[→ すべての機能について詳しく見る](https://link.langbot.app/ja/docs/features) [→ すべての機能について詳しく見る](https://link.langbot.app/ja/docs/features)
📍 実践ガイド: [5分でマルチプラットフォームAIボットをデプロイ](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/)、[DeepSeekをWeChat・Discord・Telegramに接続](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/)、[Dify AgentをDiscord・Telegram・Slackで動かす](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/)、[n8n連携チャットボットを構築](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/)。 📍 実践ガイド: [5分でマルチプラットフォームAIボットをデプロイ](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/)、[DeepSeekをWeChat・Discord・Telegramに接続](https://langbot.app/en/blog/connect-deepseek-to-wechat/)、[Dify AgentをDiscord・Telegram・Slackで動かす](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/)、[n8n連携チャットボットを構築](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/)。
--- ---
@@ -135,7 +135,7 @@ docker compose --profile all up -d
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPUプラットフォーム | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPUプラットフォーム | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPUプラットフォーム | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPUプラットフォーム | ✅ |
| [接口 AI](https://jiekou.ai/) | ゲートウェイ | ✅ | | [接口 AI](https://jiekou.ai/) | ゲートウェイ | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | ゲートウェイ | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | ゲートウェイ | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | ゲートウェイ | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | ゲートウェイ | ✅ |
[→ すべての統合を表示](https://link.langbot.app/en/docs/features) [→ すべての統合を表示](https://link.langbot.app/en/docs/features)
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<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>AI 에이전트 IM 봇 구축을 위한 프로덕션 등급 플랫폼.</h3> <h3>AI 에이전트 IM 봇 구축을 위한 프로덕션 등급 플랫폼.</h3>
<h4>Slack, Discord, Telegram, WeChat 등에 AI 봇을 빠르게 구축, 디버그 및 배포.</h4> <h4>Slack, Discord, Telegram, WeChat 등에 AI 봇을 빠르게 구축, 디버그 및 배포.</h4>
@@ -50,7 +50,7 @@ LangBot은 AI 기반 인스턴트 메시징 봇을 구축하기 위한 **오픈
[→ 모든 기능 자세히 보기](https://link.langbot.app/en/docs/features) [→ 모든 기능 자세히 보기](https://link.langbot.app/en/docs/features)
📍 실전 가이드: [5분 만에 멀티 플랫폼 AI 봇 배포하기](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [DeepSeek를 WeChat, Discord, Telegram에 연결하기](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [Dify Agent를 Discord, Telegram, Slack에서 실행하기](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/), [n8n 기반 챗봇 만들기](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 실전 가이드: [5분 만에 멀티 플랫폼 AI 봇 배포하기](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [DeepSeek를 WeChat, Discord, Telegram에 연결하기](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [Dify Agent를 Discord, Telegram, Slack에서 실행하기](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/), [n8n 기반 챗봇 만들기](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -135,7 +135,7 @@ docker compose --profile all up -d
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 플랫폼 | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 플랫폼 | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPU 플랫폼 | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | GPU 플랫폼 | ✅ |
| [接口 AI](https://jiekou.ai/) | 게이트웨이 | ✅ | | [接口 AI](https://jiekou.ai/) | 게이트웨이 | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | 게이트웨이 | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | 게이트웨이 | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | 게이트웨이 | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | 게이트웨이 | ✅ |
[→ 모든 통합 보기](https://link.langbot.app/en/docs/features) [→ 모든 통합 보기](https://link.langbot.app/en/docs/features)
+3 -3
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@@ -5,7 +5,7 @@
<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>Платформа производственного уровня для создания агентных IM-ботов.</h3> <h3>Платформа производственного уровня для создания агентных IM-ботов.</h3>
<h4>Быстро создавайте, отлаживайте и развертывайте ИИ-ботов в Slack, Discord, Telegram, WeChat и других платформах.</h4> <h4>Быстро создавайте, отлаживайте и развертывайте ИИ-ботов в Slack, Discord, Telegram, WeChat и других платформах.</h4>
@@ -50,7 +50,7 @@ LangBot — это **платформа с открытым исходным к
[→ Подробнее обо всех возможностях](https://link.langbot.app/en/docs/features) [→ Подробнее обо всех возможностях](https://link.langbot.app/en/docs/features)
📍 Практические руководства: [развернуть мультиплатформенного ИИ-бота за 5 минут](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [подключить DeepSeek к WeChat, Discord и Telegram](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [запустить Dify Agent в Discord, Telegram и Slack](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/) и [создать чат-бота на n8n](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 Практические руководства: [развернуть мультиплатформенного ИИ-бота за 5 минут](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [подключить DeepSeek к WeChat, Discord и Telegram](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [запустить Dify Agent в Discord, Telegram и Slack](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/) и [создать чат-бота на n8n](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -131,7 +131,7 @@ docker compose --profile all up -d
| [Volc Engine Ark](https://console.volcengine.com/ark/region:ark+cn-beijing/model?vendor=Bytedance&view=LIST_VIEW) | Шлюз | ✅ | | [Volc Engine Ark](https://console.volcengine.com/ark/region:ark+cn-beijing/model?vendor=Bytedance&view=LIST_VIEW) | Шлюз | ✅ |
| [ModelScope](https://modelscope.cn/docs/model-service/API-Inference/intro) | Шлюз | ✅ | | [ModelScope](https://modelscope.cn/docs/model-service/API-Inference/intro) | Шлюз | ✅ |
| [GiteeAI](https://ai.gitee.com/) | Шлюз | ✅ | | [GiteeAI](https://ai.gitee.com/) | Шлюз | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | Шлюз | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | Шлюз | ✅ |
| [接口 AI](https://jiekou.ai/) | Шлюз | ✅ | | [接口 AI](https://jiekou.ai/) | Шлюз | ✅ |
| [CompShare](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | Платформа GPU | ✅ | | [CompShare](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | Платформа GPU | ✅ |
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Платформа GPU | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Платформа GPU | ✅ |
+2 -2
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@@ -52,7 +52,7 @@ LangBot 是一個**開源的生產級平台**,用於建構 AI 驅動的即時
[→ 了解更多功能特性](https://link.langbot.app/zh/docs/features) [→ 了解更多功能特性](https://link.langbot.app/zh/docs/features)
📍 實踐指南:[5 分鐘部署多平台 AI 機器人](https://blog.langbot.app/zh/blog/deploy-ai-bot-in-5-minutes/)、[將 DeepSeek 接入微信、企業微信與 Discord](https://blog.langbot.app/zh/blog/connect-deepseek-to-wechat/)、[讓 Dify Agent 跑在 Discord、Telegram 和 Slack 上](https://blog.langbot.app/zh/blog/dify-agent-discord-telegram-slack/),以及[用 n8n 建構多平台 AI 聊天機器人](https://blog.langbot.app/zh/blog/n8n-multi-platform-ai-chatbot/)。 📍 實踐指南:[5 分鐘部署多平台 AI 機器人](https://langbot.app/zh/blog/deploy-ai-bot-in-5-minutes/)、[將 DeepSeek 接入微信、企業微信與 Discord](https://langbot.app/zh/blog/connect-deepseek-to-wechat/)、[讓 Dify Agent 跑在 Discord、Telegram 和 Slack 上](https://langbot.app/zh/blog/dify-agent-discord-telegram-slack/),以及[用 n8n 建構多平台 AI 聊天機器人](https://langbot.app/zh/blog/n8n-multi-platform-ai-chatbot/)。
--- ---
@@ -137,7 +137,7 @@ docker compose --profile all up -d
| [優雲智算](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | GPU 平台 | ✅ | | [優雲智算](https://www.compshare.cn/?ytag=GPU_YY-gh_langbot) | GPU 平台 | ✅ |
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 平台 | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | GPU 平台 | ✅ |
| [接口 AI](https://jiekou.ai/) | 聚合平台 | ✅ | | [接口 AI](https://jiekou.ai/) | 聚合平台 | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | 聚合平台 | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | 聚合平台 | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | 聚合平台 | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | 聚合平台 | ✅ |
### TTS(語音合成) ### TTS(語音合成)
+3 -3
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@@ -5,7 +5,7 @@
<div align="center"> <div align="center">
<a href="https://www.producthunt.com/products/langbot?utm_source=badge-follow&utm_medium=badge&utm_source=badge-langbot" target="_blank"><img src="https://api.producthunt.com/widgets/embed-image/v1/follow.svg?product_id=1077185&theme=light" alt="LangBot - Production&#0045;grade&#0032;IM&#0032;bot&#0032;made&#0032;easy&#0046; | Product Hunt" style="width: 250px; height: 54px;" width="250" height="54" /></a> <a href="https://www.producthunt.com/products/langbot/launches/langbot?embed=true&amp;utm_source=badge-featured&amp;utm_medium=badge&amp;utm_campaign=badge-langbot" target="_blank" rel="noopener noreferrer"><img alt="LangBot - Easy-to-use global IM bot platform designed for the LLM era | Product Hunt" width="250" height="54" src="https://api.producthunt.com/widgets/embed-image/v1/featured.svg?post_id=979554&amp;theme=light&amp;t=1782822143403"></a>
<h3>Nền tảng cấp sản xuất để xây dựng bot IM với AI agent.</h3> <h3>Nền tảng cấp sản xuất để xây dựng bot IM với AI agent.</h3>
<h4>Xây dựng, gỡ lỗi và triển khai bot AI nhanh chóng trên Slack, Discord, Telegram, WeChat và nhiều nền tảng khác.</h4> <h4>Xây dựng, gỡ lỗi và triển khai bot AI nhanh chóng trên Slack, Discord, Telegram, WeChat và nhiều nền tảng khác.</h4>
@@ -50,7 +50,7 @@ LangBot là một **nền tảng mã nguồn mở, cấp sản xuất** để x
[→ Tìm hiểu thêm về tất cả tính năng](https://link.langbot.app/en/docs/features) [→ Tìm hiểu thêm về tất cả tính năng](https://link.langbot.app/en/docs/features)
📍 Hướng dẫn thực hành: [triển khai bot AI đa nền tảng trong 5 phút](https://blog.langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [kết nối DeepSeek với WeChat, Discord và Telegram](https://blog.langbot.app/en/blog/connect-deepseek-to-wechat/), [chạy Dify Agent trên Discord, Telegram và Slack](https://blog.langbot.app/en/blog/dify-agent-discord-telegram-slack/) và [xây dựng chatbot với n8n](https://blog.langbot.app/en/blog/n8n-multi-platform-ai-chatbot/). 📍 Hướng dẫn thực hành: [triển khai bot AI đa nền tảng trong 5 phút](https://langbot.app/en/blog/deploy-ai-bot-in-5-minutes/), [kết nối DeepSeek với WeChat, Discord và Telegram](https://langbot.app/en/blog/connect-deepseek-to-wechat/), [chạy Dify Agent trên Discord, Telegram và Slack](https://langbot.app/en/blog/dify-agent-discord-telegram-slack/) và [xây dựng chatbot với n8n](https://langbot.app/en/blog/n8n-multi-platform-ai-chatbot/).
--- ---
@@ -135,7 +135,7 @@ docker compose --profile all up -d
| [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Nền tảng GPU | ✅ | | [PPIO](https://ppinfra.com/user/register?invited_by=QJKFYD&utm_source=github_langbot) | Nền tảng GPU | ✅ |
| [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Nền tảng GPU | ✅ | | [ShengSuanYun](https://www.shengsuanyun.com/?from=CH_KYIPP758) | Nền tảng GPU | ✅ |
| [接口 AI](https://jiekou.ai/) | Cổng | ✅ | | [接口 AI](https://jiekou.ai/) | Cổng | ✅ |
| [302.AI](https://share.302.ai/SuTG99) | Cổng | ✅ | | [302.AI](https://share.302ai.cn/SuTG99) | Cổng | ✅ |
| [Qiniu](https://www.qiniu.com/ai/agent) | Cổng | ✅ | | [Qiniu](https://www.qiniu.com/ai/agent) | Cổng | ✅ |
[→ Xem tất cả tích hợp](https://link.langbot.app/en/docs/features) [→ Xem tất cả tích hợp](https://link.langbot.app/en/docs/features)
+2 -1
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@@ -62,11 +62,12 @@ services:
- TZ=Asia/Shanghai - TZ=Asia/Shanghai
# Unified env-override convention: SECTION__SUBSECTION__KEY overrides the # Unified env-override convention: SECTION__SUBSECTION__KEY overrides the
# matching config.yaml field (see LoadConfigStage). These map onto # matching config.yaml field (see LoadConfigStage). These map onto
# box.local.* and are forwarded to the Box runtime via INIT RPC. # box.* and are forwarded to the Box runtime via INIT RPC.
- BOX__LOCAL__HOST_ROOT=${LANGBOT_BOX_ROOT:-${PWD}/data/box} - BOX__LOCAL__HOST_ROOT=${LANGBOT_BOX_ROOT:-${PWD}/data/box}
- BOX__LOCAL__DEFAULT_WORKSPACE=default - BOX__LOCAL__DEFAULT_WORKSPACE=default
- BOX__LOCAL__SKILLS_ROOT=skills - BOX__LOCAL__SKILLS_ROOT=skills
- BOX__LOCAL__ALLOWED_MOUNT_ROOTS=${LANGBOT_BOX_ROOT:-${PWD}/data/box} - BOX__LOCAL__ALLOWED_MOUNT_ROOTS=${LANGBOT_BOX_ROOT:-${PWD}/data/box}
- BOX__DOCKER__CPU_LIMIT_ENABLED=${LANGBOT_BOX_DOCKER_CPU_LIMIT_ENABLED:-true}
ports: ports:
- 5300:5300 # For web ui and webhook callback - 5300:5300 # For web ui and webhook callback
- 2280-2285:2280-2285 # For platform reverse connection - 2280-2285:2280-2285 # For platform reverse connection
+169
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@@ -0,0 +1,169 @@
# Valkey Search Vector Database Integration
This document describes how to use **Valkey Search** (the search/vector module bundled in
`valkey/valkey-bundle`) as the vector database backend for LangBot's knowledge base (RAG)
feature.
## What is Valkey Search?
**Valkey Search** is a module that adds vector similarity search and full-text search to
[Valkey](https://valkey.io/), the open-source, BSD-licensed in-memory data store forked from
Redis OSS. It is distributed in the `valkey/valkey-bundle` image alongside other modules
(JSON, Bloom, LDAP).
LangBot talks to Valkey through the official [`valkey-glide`](https://pypi.org/project/valkey-glide/)
client (Rust core + async Python wrapper), using its native `ft` (search) command namespace.
### Key Features
- **Vector search**: ANN via HNSW or exact via FLAT, with COSINE / L2 / IP distance metrics
- **Full-text search**: term, prefix and phrase matching over indexed text fields
- **Hybrid search**: a metadata/text filter pre-selects candidates, then KNN ranks them
- **In-memory speed**: vectors and documents are stored as Valkey HASH keys
- **Auth + TLS**: optional username/password and TLS for production (toB / SaaS) deployments
### Licensing
- Valkey core and the Search module are **BSD-3-Clause**.
- The `valkey-glide` client is **Apache-2.0**.
Both are compatible with LangBot.
## Installation
Valkey Search support is included when you install LangBot — the `valkey-glide` dependency is
declared in `pyproject.toml`. To install manually:
```bash
pip install 'valkey-glide>=2.4.1,<3.0.0'
```
You also need a running Valkey server with the Search module loaded. The simplest way is the
bundled image:
```bash
# Run valkey-bundle (includes the Search module) on host port 6380
podman run -d --name valkey-test-langbot -p 6380:6379 valkey/valkey-bundle:9.1.0
# (docker run ... works identically)
```
`valkey-bundle` ships multi-arch images (linux/amd64 + linux/arm64), so it runs on both CI
(x86_64) and Apple-silicon dev machines.
## Configuration
Valkey Search is **opt-in and disabled by default** — the default `vdb.use` stays `chroma`,
so existing single-process deployments are unaffected. To enable it, edit your `config.yaml`:
```yaml
vdb:
use: valkey_search
valkey_search:
host: 'localhost'
port: 6379 # use 6380 if you started the container as shown above
db: 0
password: '' # optional (ACL / requirepass) — never logged
username: '' # optional (ACL user)
tls: false # optional (toB / SaaS)
index_algorithm: 'HNSW' # HNSW | FLAT
distance_metric: 'COSINE' # COSINE | L2 | IP
request_timeout: 5000 # per-request timeout in ms
```
| Option | Default | Description |
|--------|---------|-------------|
| `host` | `localhost` | Valkey host |
| `port` | `6379` | Valkey port |
| `db` | `0` | Logical database id |
| `password` | `''` | Optional auth password (empty = no auth). Never logged. |
| `username` | `''` | Optional ACL username. Configuring a username without a password fails closed (raises) rather than connecting unauthenticated. |
| `tls` | `false` | Enable TLS for the connection |
| `index_algorithm` | `HNSW` | `HNSW` (approximate) or `FLAT` (exact) |
| `distance_metric` | `COSINE` | `COSINE`, `L2`, or `IP` |
| `request_timeout` | `5000` | Per-request timeout in milliseconds. The valkey-glide default (250ms) is too low for vector KNN under load; raise it further for remote/cross-AZ Valkey. |
### Connection behavior
The backend uses a **lazy** connection (`lazy_connect=True`): the client is created on first
use and the connection is deferred to the first command. A misconfigured or unreachable Valkey
server therefore does **not** block LangBot from booting — knowledge-base operations will error
at call time instead, and you can recover by switching `vdb.use` back to another backend.
The connection sets a fixed `client_name` of `langbot_vector_client` so it is identifiable in
`CLIENT LIST` and monitoring dashboards.
## Supported search types
| Type | Behavior |
|------|----------|
| `vector` | Pure KNN over the embedding field |
| `full_text` | Term/phrase match over the indexed `document` text field |
| `hybrid` | Metadata/text filter **pre-selects** candidates, then KNN ranks them |
### ⚠️ Important: `vector_weight` is NOT honored
Valkey Search hybrid queries follow a **filter-then-KNN** model: the filter (and/or full-text
clause) narrows the candidate set, and the KNN stage ranks the survivors by vector distance.
There is **no native weighted score fusion** (unlike, e.g., SeekDB's RRF boost).
For interface compatibility the backend still accepts a `vector_weight` argument, but it is
**ignored** — passing different weights does not change result ordering. The first time a
non-default weight is supplied, the backend logs a one-time warning.
If weighted hybrid ranking is needed in the future, it can be added **application-side** (run
vector KNN and full-text search separately and blend the scores). That is intentionally out of
scope for this integration.
## Metadata & filtering
Documents are stored as Valkey HASH keys under the prefix `kb:{collection}:{id}` with fields:
- `vector` — the embedding, packed as little-endian FLOAT32
- `document` — the raw text (indexed as TEXT for full-text/hybrid search)
- `file_id` — promoted to an indexed TAG field so it is filterable
- `metadata_json` — the full metadata dict, preserved verbatim as JSON
Only **indexed** fields are filterable. Currently that is `file_id`. Filters referencing
non-indexed metadata keys are dropped with a warning (the same pragmatism used by the Milvus
and pgvector backends). All other metadata still round-trips intact via `metadata_json`.
Supported filter operators (canonical Chroma-style `where` syntax): `$eq`, `$ne`, `$gt`,
`$gte`, `$lt`, `$lte`, `$in`, `$nin`. Multiple top-level keys are AND-ed.
## Testing
Unit tests (filter mapping, float32 packing, reply parsing, import guard) run in the fast lane
with no server:
```bash
uv run pytest tests/unit_tests/vector/test_valkey_search_filter.py -q
```
Integration tests are **slow-gated** on `TEST_VALKEY_URL` and require a running server:
```bash
podman run -d --name valkey-test-langbot -p 6380:6379 valkey/valkey-bundle:9.1.0
TEST_VALKEY_URL=valkey://localhost:6380 \
uv run pytest tests/integration/vector/test_valkey_search.py -m slow -q
```
The default upstream fast CI lane (`-m "not slow"`) skips these, matching the existing
PostgreSQL migration-test precedent.
## Troubleshooting
| Symptom | Cause / fix |
|---------|-------------|
| Tests skip with "Valkey Search module not available" | The server is plain Valkey without the Search module. Use the `valkey/valkey-bundle` image. |
| `ConnectionError` at call time | Check `host`/`port`/auth; remember `lazy_connect` defers errors to first use. |
| Empty search results right after insert | The Search indexer is asynchronous; results become visible within a short delay. The integration tests poll/retry to account for this. |
| Hybrid ranking ignores `vector_weight` | Expected — see the caveat above. |
## Production considerations
- **Cluster mode**: Valkey Search in cluster mode uses an additional coordination port. This
integration targets standalone mode; cluster support is a future consideration.
- **Persistence**: configure Valkey RDB/AOF persistence if the knowledge base must survive
restarts; otherwise an in-memory store is ephemeral.
- **Security**: set `password`/`username` and `tls: true` for any non-local deployment.
Credentials are never written to logs.
@@ -0,0 +1,858 @@
# LangBot 多租户与多用户改造方案
## 目标
本方案面向 LangBot 从“单实例单管理员”演进到 SaaS 友好的“多 workspace、多账户、多权限”架构。
核心定义:
- Account:登录主体。一个自然人或服务账号,可加入多个 workspace。
- Workspace:租户边界。一个 workspace 内可拥有多个用户、机器人、流水线、模型、知识库、扩展、监控数据与 API Key。
- Membership:账户与 workspace 的关系,承载角色与权限。
- Role/Permissionworkspace 内权限,不再用“是否是当前唯一用户”来决定访问能力。
目标体验:
- 新用户登录后可以创建 workspace、加入 workspace、切换 workspace。
- 同一个账户可加入多个 workspace,每个 workspace 权限不同。
- 一个 workspace 可邀请多个用户协作,并分别设置 owner/admin/editor/viewer 等权限。
- 所有业务资源默认属于某个 workspace,所有 API 默认在当前 workspace 下工作。
- Plugin SDK、MCP、知识库、模型调用、监控日志都能拿到稳定的 workspace 上下文,并且不跨租户泄露数据。
## 调研结论
### 当前 LangBot 的单用户假设
LangBot 现在已经有 `users` 表和 JWT 登录,但仍是单用户/单租户模型:
- `src/langbot/pkg/entity/persistence/user.py``User` 只保存 `user/password/account_type/space_*`,没有角色、状态、workspace 关系。
- `src/langbot/pkg/api/http/service/user.py` 通过 `is_initialized()` 判断系统是否已有用户;`create_or_update_space_user()` 在系统已初始化且邮箱不匹配时拒绝新用户,这直接限制了多用户登录。
- `src/langbot/pkg/api/http/controller/group.py``AuthType.USER_TOKEN` 验证后只向 handler 注入 `user_email`JWT payload 也只有 `user`,没有 `account_id``workspace_id``role``permissions`
- `src/langbot/pkg/api/http/service/apikey.py` 的 API Key 只验证 key 是否存在,没有 owner、scope、workspace。
- `web/src/app/infra/http/BaseHttpClient.ts``localStorage.token` 读取单个 token,并在所有请求上加 `Authorization`;前端没有 workspace selector,也没有当前 workspace 上下文。
当前登录流程更像“初始化一个本地管理账号”,而不是 SaaS 账户体系。要支持多用户,必须把“初始化状态”和“首个 workspace 创建”拆开。
### 业务资源当前都是全局资源
主要持久化表没有租户字段:
- Bot`bots`
- Pipeline`legacy_pipelines``pipeline_run_records`
- Model`model_providers``llm_models``embedding_models``rerank_models`
- Plugin`plugin_settings`
- MCP`mcp_servers`
- RAG`knowledge_bases``knowledge_base_files``knowledge_base_chunks`
- Monitoring`monitoring_messages``monitoring_llm_calls``monitoring_sessions``monitoring_errors``monitoring_embedding_calls``monitoring_feedback`
- API Key`api_keys`
- Webhook`webhooks`
- Metadata`metadata`
- Binary storage`binary_storages`
对应服务也直接 select 全表,例如:
- `BotService.get_bots()` 返回所有 bot。
- `PipelineService.get_pipelines()` 返回所有 pipeline。
- `ModelProviderService.get_providers()` 返回所有 provider。
- `MCPService.get_mcp_servers()` 返回所有 MCP server。
- 插件和二进制存储没有 workspace 维度,插件 workspace storage 在 SDK 里还硬编码为 `default`
所以改造重点不是只给用户表加字段,而是给资源访问层统一加入 workspace scope。
### 运行时也存在全局单例假设
`src/langbot/pkg/core/stages/build_app.py` 初始化的是一个全局 `Application`,其中包含单例:
- `platform_mgr`
- `pipeline_mgr`
- `model_mgr`
- `tool_mgr`
- `plugin_connector`
- `sess_mgr`
- `rag_mgr`
- `vector_db_mgr`
当前运行时把所有 bot、pipeline、model、plugin、MCP 都加载到同一套内存管理器。多租户改造需要决定:是共享运行时并在对象上带 workspace 过滤,还是每个 workspace 拆 runtime shard。第一阶段建议共享进程、强制 workspace-aware;等规模变大后再演进为按 workspace 分片。
### Plugin SDK 对 workspace 的假设
SDK 当前只认识 bot/pipeline/query/session,不认识租户:
- `src/langbot_plugin/api/entities/builtin/pipeline/query.py``Query``query_id/launcher_type/launcher_id/sender_id/bot_uuid/pipeline_uuid`,没有 `workspace_id/account_id`
- `src/langbot_plugin/api/entities/builtin/provider/session.py``Session` 只按 `launcher_type + launcher_id` 表达会话。
- `src/langbot_plugin/api/proxies/langbot_api.py` 暴露 `get_bots/get_llm_models/invoke_llm/list_tools/vector_*` 等 Host API,都是全局语义。
- `src/langbot_plugin/runtime/io/handlers/plugin.py``set_workspace_storage/get_workspace_storage``owner_type` 设为 `workspace`,但 `owner` 固定为 `default`
- LangBot 侧 `src/langbot/pkg/plugin/handler.py` 处理插件请求时,会把 `GET_BOTS``GET_LLM_MODELS``VECTOR_*` 等转到全局服务。
这意味着多租户落地时,不能只在 Web API 层过滤;插件可以通过 Host API 访问全局资源,所以 SDK/Runtime 通信也必须传递 workspace context。
## 开源版与商业版产品边界
LangBot 是开源软件,但多 workspace 能力本质上是 SaaS 控制面能力。如果把完整多 workspace、成员协作、订阅权益和配额代码都放进开源仓库,只靠本地 feature flag 或本地 license check,无法有效避免第三方 fork 后自建 SaaS。因此建议采用 open-core 架构:开源版保留单 workspace 执行能力,账户、订阅、权益和多 workspace 协作能力放到 LangBot Space/Cloud Control Plane 和商业模块中。
### 版本边界
推荐拆成三层:
- `LangBot Core OSS`:开源,自托管,默认只有一个隐式 `default workspace`。它可以在数据结构上兼容 workspace,但产品能力上不提供创建多个 workspace、切换 workspace、成员邀请、成员权限管理、审计和多租户配额。
- `LangBot Space / Cloud Control Plane`:托管控制面,负责 account、workspace、membership、subscription、billing、entitlement、license token、workspace quota、marketplace 权益等能力。
- `LangBot Commercial Module`:商业闭源或私有包,承载多 workspace、团队协作、RBAC、自定义角色、审计日志、SAML/SSO、企业私有化授权等能力。
企业私有化版本可以采用 `LangBot Core + Commercial Module + License Token` 的形式交付。开源 Core 仍然可独立运行,但只能作为单 workspace 自托管产品,不提供 SaaS 多租户控制面。
### OSS 中如何保留兼容但不开放多 workspace
为了让后续商业版复用同一套资源隔离模型,OSS 代码里可以保留 `workspace_uuid` 相关字段和默认 workspace 迁移,但应限制为单 workspace:
- 首次初始化时创建一个 `Default Workspace`
- 所有资源自动归属这个 default workspace。
- 不暴露 `POST /api/v1/workspaces`
- 不暴露 workspace switcher。
- 不暴露成员邀请和成员角色管理。
- 不支持一个 account 加入多个 workspace。
- 不支持 workspace 数量大于 1。
- 前端不展示 workspace selector。
- API 层如果收到非 default workspace 的 `X-Workspace-Id`,直接拒绝。
也就是说,OSS 可以是 workspace-aware,但不是 multi-workspace-enabled。这样做的价值是:代码结构提前适配租户隔离,未来商业版不用重写所有资源模型;同时开源版用户无法直接通过 UI/API 获得 SaaS 型多租户能力。
### 账户、订阅和权益抽到 Space
账户和订阅体系建议从 LangBot Core 中抽出,交给 Space 控制面:
```text
LangBot Space
-> Account
-> Workspace
-> Membership
-> Subscription
-> Entitlement
-> License Token
LangBot Core
-> Validate entitlement / license
-> Run bots, pipelines, plugins, MCP, RAG
-> Enforce local resource scope
-> Report usage
```
这样做有几个原因:
- 账号体系如果完全在本地,第三方容易直接改库创建 workspace/membership。
- 订阅、配额和商业权益如果完全在本地,容易绕过。
- Space 可以统一处理 OAuth、组织、邀请、付款、发票、套餐、权益、Marketplace 分发权限。
- LangBot Core 只作为执行面消费 Space 下发的 entitlement,减少商业规则暴露。
### Entitlement 设计
Space 向 LangBot Core 下发签名权益,可以是在线校验,也可以为企业版提供短期/长期离线 license token。
示例:
```json
{
"edition": "oss",
"workspace_limit": 1,
"member_limit": 1,
"multi_workspace": false,
"rbac": false,
"audit_log": false,
"custom_roles": false,
"sso": false,
"commercial_use": false,
"expires_at": 1893456000
}
```
OSS 默认权益:
- `workspace_limit = 1`
- `member_limit = 1`
- `multi_workspace = false`
- `rbac = false`
- `audit_log = false`
- `sso = false`
Cloud/Pro/Enterprise 权益:
- `workspace_limit > 1`
- `member_limit > 1`
- `multi_workspace = true`
- `rbac = true`
- 可按套餐打开 audit、custom roles、SSO、usage reporting、enterprise support 等能力。
Core 执行面需要在关键入口强制校验 entitlement
- 创建 workspace。
- 邀请成员。
- 修改成员角色。
- 切换 workspace。
- 创建超过 quota 的资源。
- 开启商业模块功能。
### 商业模块边界
以下能力不建议进入 OSS 仓库的完整实现:
- 多 workspace 创建和切换。
- Workspace 成员邀请。
- Workspace RBAC 和自定义角色。
- Workspace 审计日志。
- Workspace 级用量和配额管理。
- 订阅、账单、发票。
- 企业 SSO/SAML/OIDC。
- 在线/离线 license 管理。
- 多租户 SaaS 运营控制台。
OSS 仓库可以保留接口占位、默认 workspace 兼容和必要的数据隔离字段,但完整交互、管理 UI、权益校验器和多 workspace policy engine 应由 Space 或商业模块提供。
### 防自建 SaaS 的现实边界
技术上无法 100% 阻止别人 fork 开源代码后自行改造。更可靠的策略是组合:
- 不把完整商业多 workspace 实现放进 OSS。
- Space 控制面提供账号、订阅、权益、Marketplace 和官方托管能力。
- 商业模块闭源或私有分发。
- 使用商标、云服务条款和商业 license 限制“自称官方 LangBot SaaS”或未经授权商用托管。
- 如果当前开源 license 对托管商用限制不足,需要单独评估 license 策略,必要时引入 open-core license 或新增商业附加条款。具体 license 调整需要法律评审。
结论:多 workspace 的底层 schema 可以在 OSS 中以 default workspace 兼容方式铺路,但多 workspace 产品能力、账户订阅权益、协作管理和 SaaS 控制面应放到 Space/商业模块,不作为开源版可直接使用的能力。
## 推荐总体架构
采用“单实例多 workspace,资源行级隔离,运行时上下文隔离”的架构:
```mermaid
flowchart TD
A["Account"] --> B["WorkspaceMembership"]
B --> C["Workspace"]
C --> D["Bots"]
C --> E["Pipelines"]
C --> F["Models & Providers"]
C --> G["Knowledge Bases"]
C --> H["Extensions: Plugins / MCP"]
C --> I["API Keys & Webhooks"]
C --> J["Monitoring"]
D --> K["Runtime Query"]
E --> K
K --> L["Plugin Runtime"]
K --> M["MCP Runtime"]
L --> N["Workspace-scoped Host APIs"]
```
原则:
- 账户全局唯一,workspace 是所有业务资源的归属边界。
- 所有 HTTP handler 在进入业务服务前解析出 `RequestContext(account, workspace, membership, permissions)`
- 所有 service 方法显式接收 `ctx``workspace_id`,禁止在业务服务里无条件 select 全表。
- 运行时对象的 key 从 `uuid` 扩展为 `(workspace_id, uuid)` 或使用全局唯一 uuid 但必须记录 workspace_id 并校验。
- 插件/MCP/知识库/模型调用都按 query 所属 workspace 过滤可用资源。
## 数据模型设计
### Account
替代现有 `users` 的语义,建议保留表名但升级字段,避免过大迁移:
字段建议:
- `id`
- `uuid`
- `email`
- `password_hash`
- `display_name`
- `avatar_url`
- `account_type`: `local | space`
- `status`: `active | disabled | deleted`
- `space_account_uuid`
- `space_access_token`
- `space_refresh_token`
- `space_access_token_expires_at`
- `space_api_key`
- `created_at`
- `updated_at`
兼容策略:
- 旧字段 `user` 迁移为 `email`,可以短期保留 alias。
-`password` 迁移为 `password_hash`,也可先保持列名不变,service 层改命名。
- JWT 中不要继续只放 email,应放 `sub=account_uuid`
### Workspace
新增 `workspaces`
- `uuid`
- `name`
- `slug`
- `avatar_url`
- `type`: `personal | team`
- `status`: `active | suspended | deleted`
- `default_language`
- `created_by_account_uuid`
- `created_at`
- `updated_at`
每个账户首次登录时自动创建一个 personal workspace。旧单用户实例迁移时创建一个 `Default Workspace`
### WorkspaceMembership
新增 `workspace_memberships`
- `workspace_uuid`
- `account_uuid`
- `role`: `owner | admin | developer | operator | viewer`
- `status`: `active | invited | disabled`
- `invited_by_account_uuid`
- `joined_at`
- `created_at`
- `updated_at`
唯一索引:
- `(workspace_uuid, account_uuid)`
### WorkspaceInvitation
新增 `workspace_invitations`
- `uuid`
- `workspace_uuid`
- `email`
- `role`
- `token_hash`
- `expires_at`
- `accepted_at`
- `created_by_account_uuid`
- `created_at`
用于邀请外部用户加入 workspace。Space OAuth 登录时可以根据 email 自动匹配未接受邀请。
### Role 与 Permission
先用固定角色,后续再做自定义角色。
建议权限:
- `workspace.manage`
- `member.view`
- `member.invite`
- `member.update_role`
- `member.remove`
- `bot.view`
- `bot.manage`
- `pipeline.view`
- `pipeline.manage`
- `model.view`
- `model.manage`
- `knowledge.view`
- `knowledge.manage`
- `extension.view`
- `extension.manage`
- `monitoring.view`
- `apikey.manage`
- `webhook.manage`
- `billing.view`
- `billing.manage`
角色映射:
| Role | 说明 | 权限 |
| --- | --- | --- |
| owner | workspace 拥有者 | 全部权限;可转让 owner;不可被其他角色移除 |
| admin | 管理员 | 除 owner 转让和删除 workspace 外的全部权限 |
| developer | 构建者 | 管理 bot、pipeline、model、knowledge、extension、webhook,可看监控 |
| operator | 运营者 | 查看和启停 bot、查看监控、查看配置,不可改密钥和删除资源 |
| viewer | 只读成员 | 只读资源和监控 |
### 业务资源加 workspace_uuid
以下表需要新增 `workspace_uuid`
- `bots`
- `legacy_pipelines`
- `pipeline_run_records`
- `model_providers`
- `llm_models`
- `embedding_models`
- `rerank_models`
- `plugin_settings`
- `mcp_servers`
- `knowledge_bases`
- `knowledge_base_files`
- `knowledge_base_chunks`
- `monitoring_*`
- `api_keys`
- `webhooks`
- `binary_storages`
- `metadata`
索引建议:
- 所有资源表加 `(workspace_uuid, created_at)``(workspace_uuid, updated_at)`
- 资源唯一键从单列改为 workspace 复合唯一:
- `bots.uuid` 可保持全局唯一,但查询仍必须带 workspace。
- `plugin_settings` 主键从 `(plugin_author, plugin_name)` 改为 `(workspace_uuid, plugin_author, plugin_name)`
- `mcp_servers.name` 如果未来要求唯一,必须是 `(workspace_uuid, name)`
- `metadata.key` 改为 `(workspace_uuid, key)`,系统级 metadata 单独放 `system_metadata` 或使用 `workspace_uuid=NULL`
- `binary_storages.unique_key` 建议改为 `workspace_uuid + owner_type + owner + key` 的 hash。
### API Key
API Key 必须归属于 workspace
- `workspace_uuid`
- `created_by_account_uuid`
- `scopes`
- `expires_at`
- `last_used_at`
- `status`
验证 API Key 后生成 `RequestContext`
- `account_uuid=None` 或 service account uuid
- `workspace_uuid=key.workspace_uuid`
- `permissions=key.scopes`
这样 `/api/v1/platform/bots/<uuid>/send_message` 之类接口不会跨 workspace 操作 bot。
## 后端改造方案
### RequestContext
新增统一上下文对象,例如:
```python
class RequestContext:
account_uuid: str | None
workspace_uuid: str
role: str | None
permissions: set[str]
auth_type: Literal["user_token", "api_key"]
```
改造 `RouterGroup.route()`
- `USER_TOKEN`:验证 JWT,读取 `account_uuid`,再从 header/query/cookie 中解析 current workspace。
- `API_KEY`:验证 API Key,直接得到 workspace。
- `USER_TOKEN_OR_API_KEY`:两者都返回同一种 `RequestContext`
- handler 参数从可选 `user_email` 升级为可选 `ctx`;兼容期同时支持 `user_email`
当前 workspace 传递方式:
- 推荐 header`X-Workspace-Id: <workspace_uuid>`
- Web 前端同时把当前 workspace 存在 localStorage。
- 如果未传,后端用账户最近使用 workspace 或第一个 active membership。
JWT payload
```json
{
"sub": "account_uuid",
"email": "user@example.com",
"iss": "LangBot-...",
"exp": 1234567890
}
```
不要把 workspace 写死在 JWT 里,否则切换 workspace 需要刷新 token。可以额外支持短 TTL workspace token,但第一阶段不必。
### 服务层改造模式
所有 service 方法增加 `ctx``workspace_uuid`
```python
async def get_bots(self, ctx: RequestContext, include_secret: bool = True):
require(ctx, "bot.view")
query = sqlalchemy.select(Bot).where(Bot.workspace_uuid == ctx.workspace_uuid)
```
需要改造的服务:
- `UserService`:拆成 AccountService + WorkspaceService 更清晰。
- `ApiKeyService`:按 workspace 管理 key。
- `BotService`:所有 bot 查询/创建/更新/删除按 workspace。
- `PipelineService`:所有 pipeline 查询/默认 pipeline 按 workspace。
- `ModelProviderService` 和 model services:按 workspace 隔离 provider 和 model。
- `MCPService`:按 workspace 管理 MCP server,运行时按 workspace host。
- `KnowledgeService/RAGRuntimeService`:按 workspace 管理 KB、文件、collection。
- `MonitoringService`:记录和查询都带 workspace。
- `WebhookService`:按 workspace 管理 webhook。
- `PluginRuntimeConnector`:插件安装、设置、配置按 workspace。
### HTTP API 形态
保留现有路径,靠 `X-Workspace-Id` 表示当前 workspace,可减少前端和 SDK 破坏:
- `GET /api/v1/workspaces`
- `POST /api/v1/workspaces`
- `GET /api/v1/workspaces/current`
- `PUT /api/v1/workspaces/current`
- `GET /api/v1/workspaces/<workspace_uuid>/members`
- `POST /api/v1/workspaces/<workspace_uuid>/invitations`
- `PUT /api/v1/workspaces/<workspace_uuid>/members/<account_uuid>`
- `DELETE /api/v1/workspaces/<workspace_uuid>/members/<account_uuid>`
现有资源 API
- `/api/v1/platform/bots`
- `/api/v1/pipelines`
- `/api/v1/provider/*`
- `/api/v1/plugins`
- `/api/v1/mcp`
- `/api/v1/knowledge`
继续保留,但必须从 `RequestContext.workspace_uuid` 过滤。
对外 API Key 也使用相同路径,只是由 key 决定 workspace。
### 初始化流程
现有 `/api/v1/user/init` 含义改为“创建首个账号和首个 workspace”:
1. 如果系统没有任何 account
- 创建 account。
- 创建 personal/team workspace。
- 创建 owner membership。
- 创建默认 pipeline。
- 标记 wizard status 到该 workspace metadata。
2. 如果系统已有 account
- 禁止无邀请注册,除非配置允许公开注册。
- Space OAuth 登录后,如果没有 membership,引导创建 workspace 或接受邀请。
`/api/v1/user/account-info` 不应再只返回 first user,应返回:
- `initialized`
- `registration_mode`
- `space_enabled`
- `default_login_methods`
登录成功后前端调用 `/api/v1/workspaces` 选择 workspace。
### 运行时隔离
第一阶段采用共享进程 + workspace-aware runtime
- `RuntimeBot` 增加 `workspace_uuid`
- `RuntimePipeline` 增加 `workspace_uuid`
- `Query` 增加 `workspace_uuid`,从 bot/pipeline 派生。
- `SessionManager.get_session()` key 从 `(launcher_type, launcher_id)` 改为 `(workspace_uuid, bot_uuid, launcher_type, launcher_id)`
- `PipelineManager.pipeline_dict` key 可保持 pipeline uuid,但所有 load/get 都校验 workspace;如果 uuid 不是全局唯一则改为 `(workspace_uuid, pipeline_uuid)`
- `ModelManager` provider/model 加 workspace 过滤;`get_model_by_uuid` 必须确保 query workspace 可访问。
- `ToolManager` 中 MCP tools、plugin tools 按 query workspace 过滤。
后续规模化时可演进:
- workspace runtime shard:每个 workspace 一套 plugin runtime/MCP runtime。
- 大客户独立进程或独立数据库。
## Plugin SDK 与 Runtime 改造
### Query/Event 增加 workspace context
SDK `Query` 增加:
- `workspace_uuid: str`
- `workspace_slug: str | None`
- `account_uuid: str | None`,仅 Web/API 触发时可能有,聊天平台消息通常为空。
Event 模型通过 `event.query.workspace_uuid` 可拿到租户上下文;序列化时也应包含这些字段。
向后兼容:
- 字段可选,默认 `None`
- 老插件不感知这些字段也能跑。
- 新插件可通过 `ctx.event.query.workspace_uuid` 或新增 `ctx.get_workspace()` 访问。
### Host API 默认按当前 workspace 限制
`LangBotAPIProxy` 的以下方法必须由 Host 端按 workspace 过滤:
- `get_bots`
- `get_bot_info`
- `send_message`
- `get_llm_models`
- `invoke_llm`
- `list_plugins_manifest`
- `list_commands`
- `list_tools`
- `call_tool`
- `invoke_embedding`
- `vector_*`
- `list_knowledge_bases`
- `retrieve_knowledge`
建议新增显式方法:
- `get_workspace_info()`
- `get_current_account()`
- `get_workspace_storage(...)`
但不要让插件传入任意 workspace id 来越权访问。插件请求的 workspace 应由 Runtime 根据当前 query/plugin connection 填充。
### Workspace storage 修复
当前 SDK runtime 中:
```python
data["owner_type"] = "workspace"
data["owner"] = "default"
```
必须改为:
- 如果请求来自 query/eventowner 为 `workspace_uuid`
- 如果请求来自后台插件任务:owner 为 plugin 安装所属 workspace。
- Host 侧 `binary_storages``workspace_uuid`,并在 unique key 中包含 workspace。
Plugin storage 建议也同时加 workspace
- 现在 plugin storage owner 是 `author/name`,这会导致同一插件在不同 workspace 的私有数据冲突。
- 应改为 `(workspace_uuid, plugin_id, key)`
### 插件安装与配置
`plugin_settings` 从全局变为 workspace-scoped
- 同一个插件可安装到多个 workspace。
- 每个 workspace 有自己的 enabled、priority、config、install_source、install_info。
- 插件 runtime 列表需要能按 workspace 过滤。
实现路线有两种:
1. 共享插件进程,插件代码只加载一份,设置和调用时附带 workspace。
2. 每个 workspace 一个插件容器实例,隔离最彻底但资源占用更高。
推荐第一阶段采用方案 1,但要求:
- 所有 RuntimeToLangBot/PluginToRuntime action 都能携带 `workspace_uuid`
- 插件 config 获取时按 workspace 返回。
- 插件 page API 请求必须校验当前用户在该 workspace 有访问权限。
### MCP
MCP server 是租户资源:
- `mcp_servers.workspace_uuid`
- MCP session key 从 `server_name` 改为 `(workspace_uuid, server_name)` 或使用全局 uuid。
- Pipeline extension preferences 中绑定 MCP server uuid 时,只能绑定同 workspace 的 server。
- MCP tool 列表在 query 执行时按 query.workspace_uuid + pipeline 绑定关系过滤。
## 前端改造
### Workspace selector
Home layout 顶部或 sidebar 增加 workspace selector
- 当前 workspace 名称和头像。
- 切换 workspace 后写入 `localStorage.currentWorkspaceId`
- 所有请求自动带 `X-Workspace-Id`
- 切换后刷新 sidebar 数据和页面缓存。
`BaseHttpClient` request interceptor 增加:
```ts
const workspaceId = localStorage.getItem("currentWorkspaceId");
if (workspaceId) config.headers["X-Workspace-Id"] = workspaceId;
```
### 用户与成员管理页面
新增页面:
- `/home/workspace/settings`
- `/home/workspace/members`
- `/home/workspace/invitations`
能力:
- owner/admin 邀请成员。
- owner/admin 修改成员角色。
- owner 移除成员、转让 owner。
- 所有人可切换 workspace。
- viewer/operator 在 UI 上隐藏不可操作按钮,但后端仍做权限校验。
### 登录与注册
登录后流程:
1. `authUser` 拿 token。
2. `initializeUserInfo()` 获取 account info。
3. `GET /api/v1/workspaces`
4. 如果没有 workspace:进入创建 workspace 向导。
5. 如果有多个 workspace:默认进入最近使用 workspace,可切换。
注册页不再表达“初始化管理员账号”,而是:
- 首次系统启动:创建首个 owner + default workspace。
- 后续:根据配置允许公开注册,或只能接受邀请。
### 旧页面影响
需要逐个检查这些页面的数据加载是否都依赖当前 workspace:
- Bots
- Pipelines
- Plugins/Market/MCP
- Knowledge
- Monitoring
- Models dialog
- API integration dialog
- Wizard
## 迁移方案
### 迁移阶段 0:准备
- 引入 `workspaces``workspace_memberships``workspace_invitations`
-`users` 增加 `uuid/status/display_name` 等字段。
- 创建 `RequestContext`,但先不强制所有服务改完。
### 迁移阶段 1:默认 workspace
对现有实例执行迁移:
1. 创建 `Default Workspace`
2. 找到现有第一个 user,设为 owner。
3. 所有已有资源写入 `workspace_uuid=default_workspace_uuid`
4. `metadata` 迁入 default workspace;确实全局的配置放到 `system_metadata`
5. `binary_storages``owner_type=workspace, owner=default` 改为 owner 为 default workspace uuid。
6. 插件 `plugin_settings` 归入 default workspace。
### 迁移阶段 2:服务层强制 scope
- 改所有 service 查询,必须要求 `workspace_uuid`
- API Key 迁移为 workspace key。
- 所有写操作必须检查权限。
- 监控和任务查询按 workspace 过滤。
### 迁移阶段 3:运行时上下文
- `Query``Session``RuntimeBot``RuntimePipeline` 增加 workspace。
- Plugin/MCP/Model/RAG runtime 全部按 workspace 过滤。
- 修复 SDK workspace storage。
### 迁移阶段 4:前端多 workspace
- 登录后 workspace 选择。
- Header/sidebar workspace switcher。
- 成员和邀请管理。
- 所有 API 请求带 `X-Workspace-Id`
### 迁移阶段 5:安全收敛
- 添加跨 workspace 越权测试。
- 添加 API Key scope 测试。
- 添加插件 Host API 过滤测试。
- 添加 MCP 和 RAG 隔离测试。
## 安全边界
必须防的场景:
- 用户 A 修改 URL 中 bot uuid,访问用户 B workspace 的 bot。
- API Key 来自 workspace A,但调用 workspace B 的 bot。
- 插件通过 `get_bots()` 枚举所有 workspace 的 bot。
- 插件通过 `workspace_storage` 读取其它 workspace 的数据。
- MCP server 名称相同导致 session 复用。
- monitoring session_id 相同导致数据串租户。
- Space OAuth 登录时,同 email 账户被错误绑定到已有本地 account。
建议策略:
- 所有资源访问都使用 `workspace_uuid + resource_id`
- 所有 service 方法入口做权限检查。
- 插件 Host API 的 workspace 不信任插件入参,只信任 query/runtime connection 上下文。
- API Key 只授予最小 scope,默认不允许成员管理。
- owner 角色不能被普通 admin 移除或降权。
## 实施优先级
### P0:基础租户骨架
- Account uuid/status。
- Workspace / Membership / Invitation。
- RequestContext。
- JWT 改为 account uuid。
- 前端 current workspace header。
### P1:资源行级隔离
- Bots、Pipelines、Models、MCP、Plugins、Knowledge、Monitoring、API Keys 全部加 workspace_uuid。
- service 查询统一加 workspace filter。
- 权限矩阵落地。
### P2:运行时隔离
- Query、Session、RuntimeBot、RuntimePipeline 加 workspace。
- Plugin Host API 和 MCP tools 按 workspace 过滤。
- SDK workspace storage 从 `default` 改为真实 workspace。
### P3:协作体验
- 邀请成员。
- 成员列表和角色管理。
- workspace switcher。
- 最近使用 workspace。
### P4SaaS 运维增强
- Workspace 级用量统计。
- Workspace 级限额:max_bots/max_pipelines/max_extensions/tokens/storage。
- 审计日志。
- workspace suspend/delete。
- 可选自定义角色。
## 测试计划
后端测试:
- 账户可加入多个 workspace。
- 同账户在不同 workspace 权限不同。
- viewer 不能创建/修改资源。
- API Key 只能访问所属 workspace。
- 所有资源 list/get/update/delete 都不能跨 workspace。
- 默认 workspace 迁移后旧数据可用。
运行时测试:
- 两个 workspace 使用相同 `launcher_id` 不共享 session。
- 两个 workspace 使用相同 MCP server name 不共享 MCP session。
- 插件 `get_bots()` 只能看到当前 workspace bot。
- 插件 `workspace_storage` 在不同 workspace 读写隔离。
- Pipeline 只调用当前 workspace 绑定的插件和 MCP tools。
前端测试:
- 登录后自动进入最近 workspace。
- 切换 workspace 后列表数据变化。
- 无权限按钮隐藏,直接调用 API 也被后端拒绝。
- 邀请成员流程完整。
迁移测试:
- SQLite 老实例迁移。
- PostgreSQL 老实例迁移。
- 已有 local account 迁移为 default workspace owner。
- 已有 Space account token 和 Space model provider API key 不丢失。
## 关键实现注意事项
- 不建议在第一版做数据库 schema-per-tenant。LangBot 当前 ORM 和运行时均以单库单表为主,先做 shared schema + workspace_uuid 成本更低。
- 不建议每个 workspace 立即启动独立 plugin runtime。先共享 runtime,强制 action 带 workspace;大客户隔离可作为后续部署形态。
- 不要只在前端过滤 workspace。插件、API Key、MCP、RAG 都能绕过前端,必须在后端和运行时层过滤。
- `metadata` 要拆清楚:wizard status 属于 workspace,系统版本/迁移信息属于 system。
- `users.user` 用 email 当主键语义不稳,应尽快引入 `account_uuid` 并让 JWT 以 uuid 为准。
- `plugin_settings` 当前主键没有 workspace,改造时要先改主键/唯一约束,否则同插件无法在多个 workspace 配不同配置。
## 建议落地顺序
1. 新增 workspace/account/membership 表和 RequestContext。
2. 迁移旧数据到 default workspace。
3. 改 auth 和前端请求头,让每个请求都有 current workspace。
4. 从最核心资源开始逐个加 scopebot -> pipeline -> provider/model -> plugin/MCP -> knowledge -> monitoring。
5. 改 SDK Query/Event 和 runtime storage。
6. 上成员管理 UI 和邀请。
7. 做越权测试和迁移测试。
这个顺序的好处是可以较早让主 UI 在一个 workspace 下继续工作,同时把最危险的跨租户泄露面逐步收紧。
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# MCP Resources PR #2215 Review
> 更新日期: 2026-06-29
> 分支: `mcp_resources`
> PR: langbot-app/LangBot#2215
> 主题: MCP Resources 在 LangBot 中的产品价值、AgentRunner 集成方式与后续架构方向
## 结论
PR #2215 对 LangBot 有明确价值:它补齐了 MCP 协议中 Resources 这一重要能力,让 MCP server 不再只暴露 tools,也可以暴露文档、代码片段、配置、日志、图片等上下文资源。管理端可以发现和预览资源,Agent 也可以通过当前实现按需列出和读取资源。
但当前 AgentRunner 层的接入方式更接近一个可用的第一阶段方案,而不是最终架构。现在 MCP Resources 被包装成两个 synthetic tools
- `langbot_mcp_list_resources`
- `langbot_mcp_read_resource`
这让模型可以通过 function calling 主动探索资源,落地成本低,也复用了已有 `ToolManager` / `LocalAgentRunner` 的工具调用链路。不过从 MCP 规范和主流实现来看,Resources 更适合作为一种一等上下文来源,而不是长期隐藏在工具列表里。
建议保留当前 synthetic tools 作为探索能力,同时把后续主线设计调整为:MCP Resources 是 pipeline / conversation / message 级别可选择、可固定、可审计的上下文输入。
## 当前实现判断
当前 AgentRunner 集成路径如下:
```text
Pipeline 绑定 MCP server
-> query.variables['_pipeline_bound_mcp_servers']
-> Preproc 为 local-agent 加载工具
-> ToolManager.get_all_tools()
-> MCPLoader 注入 synthetic resource tools
-> LocalAgentRunner 将工具 schema 传给模型
-> 模型发起 list/read tool call
-> ToolManager.execute_func_call()
-> MCPLoader 调 MCP session.list_resources/read_resource
-> tool result 回灌给模型
```
这个路径的优点是:
- 复用现有工具调用机制,改动范围小。
- Agent 可以按需探索资源,不需要每轮预先读取所有资源。
- 可以沿用 pipeline 绑定的 MCP server 范围,避免越权读取未绑定 server。
- 对已有 MCP tools 行为影响较小。
主要问题是:
- Resources 在语义上被降级成 tools,和 MCP 规范里的 resource primitive 不完全一致。
- 模型必须先理解并主动调用 `list/read`,资源不会自然成为上下文。
- pipeline 不能配置“默认携带某些资源”或“本轮附加某些资源”。
- UI 资源 tab 目前是管理端预览能力,和 Agent 上下文选择没有打通。
- 对 blob、图片、大文件、结构化资源的处理还比较粗糙。
- 缺少 resource templates、订阅更新、缓存、chunk、token budget、trace 与审计策略。
## 主流项目做法
### MCP 官方规范
MCP Resources 是 server 暴露上下文数据的协议能力。规范没有要求 resources 必须以 tool call 形式给模型使用,而是把如何选择、过滤、读取和纳入上下文交给 Host application。
这意味着比较正统的集成方式是:LangBot 作为 Host,在 pipeline、会话或消息层决定哪些 resources 进入模型上下文。
参考: https://modelcontextprotocol.io/specification/2025-06-18/server/resources
### VS Code Copilot
VS Code 把 MCP Resources 做成 chat context 的一部分。用户可以通过 `Add Context > MCP Resources` 或命令浏览 MCP resources,并把选中的资源附加到一次 chat request。
这是目前最值得 LangBot 参考的产品形态:资源不是模型工具,而是用户和 Host 可控的上下文附件。
参考: https://code.visualstudio.com/docs/agent-customization/mcp-servers
### Anthropic SDK
Anthropic 的 client-side MCP helpers 提供资源读取和转换能力,例如把 MCP resource 转为 Claude message content 或 file。也就是说,应用先读取 resource,再显式放进模型消息。
这同样是 application-owned context injection,而不是把 resource 伪装成模型工具。
参考: https://platform.claude.com/docs/en/agents-and-tools/mcp-connector
### LangChain MCP Adapters
LangChain 把 MCP Resources 更像 data loader / document input 来处理,可以把资源加载成 `Blob`,再进入 LangChain 的文档、检索或上下文处理链路。
这说明 Resources 很适合作为知识源、文档源或上下文源,而不只是即时工具调用。
参考: https://docs.langchain.com/oss/python/langchain/mcp
### OpenAI Agents SDK
OpenAI Agents SDK 主路径仍偏向 MCP tools,但底层 MCP server API 已经有 `list_resources``list_resource_templates``read_resource` 等能力。当前形态说明 resources 是 client 能力,但并未默认变成 agent-visible tools。
参考: https://openai.github.io/openai-agents-python/mcp/
### Cline
Cline 会拉取 MCP tools、resources、resourceTemplates、prompts,并通过类似 `access_mcp_resource` 的内置访问方式让模型读取资源。这个方向和 LangBot 当前 synthetic tools 比较接近。
这种模式适合让 Agent 自主探索,但更像 Host 自定义的模型访问协议,不应成为唯一集成路径。
参考: https://github.com/cline/cline/blob/main/src/services/mcp/McpHub.ts
## 建议架构方向
### 1. 保留探索型工具
保留当前两个 synthetic tools
- `langbot_mcp_list_resources`
- `langbot_mcp_read_resource`
它们适合处理“用户没有显式选择资源,但 Agent 判断需要探索 MCP server 上下文”的场景。后续可以优化工具描述、返回格式、资源大小限制和错误信息。
### 2. 增加一等 Resource Context
新增一个 Host 层资源上下文概念,例如:
```text
PipelineResourceBinding
ConversationResourceAttachment
MessageResourceAttachment
```
Preproc 或独立的 `ResourceContextProvider` 在模型调用前读取这些资源,按 MIME 类型、大小、token budget 转为模型可消费的上下文。
### 3. 打通 UI 与 Agent 上下文
当前 MCP 详情页的 Resources tab 可以继续作为资源发现和预览入口。建议增加操作:
- 添加到本轮上下文
- 固定到当前 pipeline
- 固定到当前 bot / conversation
- 查看资源读取历史和错误
这样 UI 资源管理能力才能真正影响 Agent 行为。
### 4. 支持 resource templates
MCP resource templates 允许 server 暴露参数化资源,例如:
```text
repo://{owner}/{repo}/file/{path}
log://{service}/{date}
```
LangBot 后续应支持模板发现、参数填写、实例化和绑定。否则只能使用静态 resources,覆盖面会受限。
### 5. 增加资源处理策略
建议补齐:
- 文本资源 token budget 与截断策略。
- 大文件 chunk 与摘要策略。
- 图片/blob 的模型能力判断与 fallback。
- MIME 类型白名单与安全限制。
- 缓存与过期策略。
- `resources/listChanged` 或订阅更新。
- resource read trace,便于审计 Agent 读取了什么上下文。
## 推荐落地顺序
### Phase 1: 完成当前 PR 可用性
- 保留 synthetic tools。
- 明确文档说明当前 Agent 集成是 tool-mediated。
- 完善资源工具描述,降低模型误用概率。
- 给 read/list 增加大小限制和更清晰的 MIME 处理。
- 前端 Resources tab 与 Tools tab 分离,保持管理端清晰。
### Phase 2: 做 Host-owned context attachments
- 在 pipeline 或 conversation 层新增 resource attachment 配置。
- Preproc 读取已绑定 resources,注入模型上下文。
- UI 支持“添加到上下文 / 固定到 pipeline”。
- 记录每轮实际注入的 resource URI 和 token 消耗。
### Phase 3: 做完整 MCP Resources 能力
- 支持 resource templates。
- 支持资源订阅更新。
- 支持 chunk、summary、RAG 化接入。
- 为 DifyAgentRunner、LocalAgentRunner 等不同 runner 定义统一资源上下文接口。
## 最终建议
PR #2215 可以作为 MCP Resources 的第一阶段实现继续推进。它让 LangBot 快速拥有“资源发现、预览、按需读取”的闭环,也给 Agent 探索资源提供了可运行路径。
但在正式设计上,不建议把 “Resources == Tools” 固化为长期抽象。LangBot 更应该把 MCP Resources 定位为上下文来源,与 tools、prompts、knowledge base 并列:
```text
Tools -> Agent 可以执行的动作
Resources -> Host/用户/Agent 可以选择的上下文数据
Prompts -> 可复用的任务模板
Knowledge -> 可检索、可索引的长期知识
```
这样既尊重 MCP 协议语义,也能让 LangBot 在 Agent 工作流、企业知识接入和多 MCP server 管理上走得更稳。
+3 -2
View File
@@ -1,6 +1,6 @@
[project] [project]
name = "langbot" name = "langbot"
version = "4.10.3" version = "4.10.5"
description = "Production-grade platform for building agentic IM bots" description = "Production-grade platform for building agentic IM bots"
readme = "README.md" readme = "README.md"
license-files = ["LICENSE"] license-files = ["LICENSE"]
@@ -70,7 +70,7 @@ dependencies = [
"chromadb>=1.0.0,<2.0.0", "chromadb>=1.0.0,<2.0.0",
"qdrant-client (>=1.15.1,<2.0.0)", "qdrant-client (>=1.15.1,<2.0.0)",
"pyseekdb==1.1.0.post3", "pyseekdb==1.1.0.post3",
"langbot-plugin==0.4.6", "langbot-plugin==0.4.13",
"asyncpg>=0.30.0", "asyncpg>=0.30.0",
"line-bot-sdk>=3.19.0", "line-bot-sdk>=3.19.0",
"matrix-nio>=0.25.2", "matrix-nio>=0.25.2",
@@ -80,6 +80,7 @@ dependencies = [
"pgvector>=0.4.1", "pgvector>=0.4.1",
"botocore>=1.42.39", "botocore>=1.42.39",
"litellm>=1.0.0", "litellm>=1.0.0",
"valkey-glide>=2.4.1,<3.0.0",
] ]
keywords = [ keywords = [
"bot", "bot",
+2 -1
View File
@@ -26,7 +26,7 @@ and LangBot's own Local Agent) working with the LangBot ecosystem.
## Quick start (for an AI agent) ## Quick start (for an AI agent)
1. Read this README, `AGENTS.md`, and `qa-agent-docs/` to understand the layout. 1. Read this README, `AGENTS.md`, and `docs/user-guide.md` to understand the layout.
2. Read `skills/.env` for shared local defaults. On a new machine, copy 2. Read `skills/.env` for shared local defaults. On a new machine, copy
`skills/.env.example` to `skills/.env.local` (gitignored) and override `skills/.env.example` to `skills/.env.local` (gitignored) and override
machine-specific values there. Never commit secrets. machine-specific values there. Never commit secrets.
@@ -48,6 +48,7 @@ bin/lbs env show # inspect resolved env defaults (redacted)
bin/lbs env doctor # diagnose local environment readiness bin/lbs env doctor # diagnose local environment readiness
bin/lbs case list --ready bin/lbs case list --ready
bin/lbs test plan <case-id> bin/lbs test plan <case-id>
bin/lbs suite plan langbot-debug-chat-load-gate
``` ```
## Maintenance rule ## Maintenance rule
+171
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@@ -0,0 +1,171 @@
# LangBot QA Skills User Guide
Use this guide as the first operational path after reading `README.md` and
`AGENTS.md`.
## 1. Configure Local Inputs
Read `skills/.env`, then create `skills/.env.local` for machine-local values.
Do not commit `.env.local`, browser profiles, reports, tokens, API keys, OAuth
state, or provider credentials.
Minimum local fields for live browser QA:
```bash
LANGBOT_REPO=/path/to/LangBot
LANGBOT_WEB_REPO=/path/to/LangBot/web
LANGBOT_BACKEND_URL=http://127.0.0.1:5300
LANGBOT_FRONTEND_URL=http://127.0.0.1:3000
LANGBOT_DEV_FRONTEND_URL=http://127.0.0.1:3000
LANGBOT_BROWSER_PROFILE=/path/to/langbot-browser-profile
LANGBOT_CHROMIUM_EXECUTABLE=/path/to/chromium-or-playwright-chrome
LANGBOT_E2E_LOGIN_USER=qa-local@example.com
```
`LANGBOT_E2E_LOGIN_USER` is a local QA account. The setup automation uses the
LangBot recovery key from the active checkout to initialize or refresh that
local account and write a browser `localStorage` token. It does not need the
user's GitHub or Space credentials.
## 2. Check Readiness
From `skills/`:
```bash
bin/lbs env show
bin/lbs env doctor
bin/lbs validate
bin/lbs index --check
```
`env doctor` should report reachable backend and frontend URLs before live
browser cases are run. Missing Space provider credentials are not a LangBot
product pass; classify them as `env_issue` and configure the local Space
provider before measuring Debug Chat performance.
## 3. Start Services
Start the backend from `LANGBOT_REPO`:
```bash
cd "$LANGBOT_REPO"
uv run main.py
```
Start the standalone frontend from `LANGBOT_WEB_REPO` and point it at the
backend:
```bash
cd "$LANGBOT_WEB_REPO"
VITE_API_BASE_URL="$LANGBOT_BACKEND_URL" pnpm dev --host 0.0.0.0
```
If `VITE_API_BASE_URL` is missing, browser tests can load the Vite page but send
API requests to the frontend port, which produces false UI failures.
## 4. Prepare User-Path Fixtures
For local-agent Debug Chat cases and the user-path performance gate:
```bash
node scripts/e2e/ensure-local-agent-pipeline.mjs --write-env
```
The script:
- refreshes the local QA login and browser token;
- marks the local wizard as skipped;
- creates or updates a local QA pipeline;
- scans Space LLM models, tests candidates, and switches to the first working
Space model with tested fallback models;
- writes `LANGBOT_PIPELINE_URL`, `LANGBOT_PIPELINE_NAME`, and local-agent
pipeline/model variables into `skills/.env.local`;
- returns `env_issue` when no Space model can be scanned or tested.
Useful model controls:
```bash
LANGBOT_E2E_MODEL_TEST_LIMIT=8
LANGBOT_E2E_MODEL_FALLBACK_COUNT=3
LANGBOT_E2E_SKIP_MODEL_UUIDS=uuid-a,uuid-b
LANGBOT_E2E_SKIP_MODEL_NAMES=model-a,model-b
LANGBOT_E2E_SCAN_SPACE_MODELS=true
```
The setup writes a current-runtime compatibility `max-round` value into the
pipeline config because this backend still reads that field directly during
message truncation. Do not treat it as a long-term QA contract.
## 5. Run Gates
Fast contract gate, no live service required:
```bash
bin/lbs suite run langbot-performance-contract-gate --run-id langbot-contract-local
```
Live backend gate:
```bash
bin/lbs suite run langbot-live-backend-gate --run-id langbot-backend-local
```
Browser-visible user-path performance gate:
```bash
bin/lbs suite plan langbot-user-path-performance-gate
bin/lbs suite run langbot-user-path-performance-gate --run-id langbot-user-path-local --include-manual-check
```
Controlled Debug Chat message-path load gate (manual/non-required; run fake-provider cases serially when they share `LANGBOT_FAKE_PROVIDER_URL`):
```bash
bin/lbs suite plan langbot-debug-chat-load-gate
bin/lbs test run langbot-fake-provider-debug-chat-load --run-id langbot-fake-load-local
bin/lbs test run langbot-fake-provider-debug-chat-slow-load --run-id langbot-fake-slow-local
bin/lbs test run langbot-fake-provider-debug-chat-fault-recovery --run-id langbot-fake-fault-local
bin/lbs test run langbot-space-debug-chat-concurrency-smoke --run-id langbot-space-smoke-local
```
Cross-pipeline Debug Chat isolation is a separate manual regression gate because
current releases may fail it due to product bug #2286:
```bash
bin/lbs suite plan langbot-debug-chat-isolation-gate
bin/lbs suite run langbot-debug-chat-isolation-gate --run-id langbot-debug-chat-isolation-local --include-manual-check
```
Start with `langbot-fake-provider-debug-chat-load`. It launches a local
OpenAI-compatible fake provider, creates the matching provider/model/pipeline,
then sends concurrent WebSocket Debug Chat messages through the real backend.
Use `langbot-fake-provider-debug-chat-slow-load` to measure the same path under
deterministic streaming latency. Use
`langbot-fake-provider-debug-chat-fault-recovery` to inject bounded provider
HTTP failures and confirm later Debug Chat requests recover. Use the separate
`langbot-debug-chat-isolation-gate` to verify that concurrent Debug Chat traffic
on two pipelines does not leak assistant responses across pipeline boundaries;
current releases may fail that gate because of #2286, so keep it out of the
normal load gate until the product fix lands.
Use `langbot-space-debug-chat-concurrency-smoke` only as a low-volume live
provider smoke; it includes Space/model/network latency and should be compared
against the fake-provider baseline before attributing failures to LangBot.
`manual_check` means the agent must confirm the declared preconditions for that
run window. When setup automation is declared, run output may stop early with
`env_issue`; fix that environment input before treating the product path as
measured.
## 6. Read Results
Suite reports live under `skills/reports/`. Evidence lives under
`skills/reports/evidence/<run-id>/`.
For performance cases, inspect:
- `metrics.json` for p50/p95/p99, error rate, and total duration;
- `automation-result.json` for threshold decisions and artifacts;
- `console.log` and `network.log` for frontend/API failures;
- backend logs for provider, runner, WebSocket, or persistence failures.
Do not call a user-path performance result a LangBot overhead regression until
provider/tool/network time has been separated or ruled out.
+109 -2
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@@ -48,7 +48,18 @@
}, },
"type": { "type": {
"type": "string", "type": "string",
"enum": ["smoke", "regression", "feature", "provider", "exploratory"] "enum": [
"smoke",
"regression",
"feature",
"provider",
"exploratory",
"contract",
"performance",
"reliability",
"chaos",
"security"
]
}, },
"priority": { "priority": {
"type": "string", "type": "string",
@@ -102,7 +113,11 @@
"backend_log", "backend_log",
"frontend_log", "frontend_log",
"api_diagnostic", "api_diagnostic",
"filesystem" "filesystem",
"metrics",
"trace",
"profile",
"resource_log"
] ]
}, },
"minItems": 1 "minItems": 1
@@ -188,9 +203,101 @@
"type": "string", "type": "string",
"enum": ["person", "group"] "enum": ["person", "group"]
}, },
"automation_debug_chat_response_p95_ms": {
"type": "string"
},
"automation_debug_chat_max_error_rate": {
"type": "string"
},
"automation_debug_chat_load_requests": {
"type": "string"
},
"automation_debug_chat_load_concurrency": {
"type": "string"
},
"automation_debug_chat_load_timeout_ms": {
"type": "string"
},
"automation_debug_chat_load_response_p95_ms": {
"type": "string"
},
"automation_debug_chat_load_first_response_p95_ms": {
"type": "string"
},
"automation_debug_chat_load_max_error_rate": {
"type": "string"
},
"automation_debug_chat_load_min_error_rate": {
"type": "string"
},
"automation_debug_chat_load_min_error_count": {
"type": "string"
},
"automation_debug_chat_load_min_ok_count": {
"type": "string"
},
"automation_debug_chat_load_min_provider_fault_count": {
"type": "string"
},
"automation_debug_chat_load_expected_prefix": {
"type": "string"
},
"automation_debug_chat_load_prompt_template": {
"type": "string"
},
"automation_debug_chat_load_stream": {
"type": "string",
"enum": ["0", "1", "false", "true"]
},
"automation_debug_chat_load_reset": {
"type": "string",
"enum": ["0", "1", "false", "true"]
},
"automation_debug_chat_load_fail_on_final_mismatch": {
"type": "string",
"enum": ["0", "1", "false", "true"]
},
"automation_fake_provider_response_text": {
"type": "string"
},
"automation_fake_provider_first_token_delay_ms": {
"type": "string"
},
"automation_fake_provider_chunk_delay_ms": {
"type": "string"
},
"automation_fake_provider_chunk_count": {
"type": "string"
},
"automation_fake_provider_fail_first_n": {
"type": "string"
},
"automation_fake_provider_fail_every_n": {
"type": "string"
},
"automation_fake_provider_fault_status": {
"type": "string"
},
"automation_fake_provider_fail_after_first_chunk": {
"type": "string",
"enum": ["0", "1", "false", "true"]
},
"automation_fake_provider_dynamic_response": {
"type": "string",
"enum": ["0", "1", "false", "true"]
},
"automation_filesystem_checks_json": { "automation_filesystem_checks_json": {
"type": "string" "type": "string"
}, },
"metrics_thresholds_json": {
"type": "string"
},
"load_profile_json": {
"type": "string"
},
"fault_model_json": {
"type": "string"
},
"automation_pipeline_url_env": { "automation_pipeline_url_env": {
"type": "string", "type": "string",
"pattern": "^[A-Z][A-Z0-9_]*$" "pattern": "^[A-Z][A-Z0-9_]*$"
+11 -1
View File
@@ -18,7 +18,17 @@
}, },
"type": { "type": {
"type": "string", "type": "string",
"enum": ["smoke", "regression", "release_gate", "exploratory"] "enum": [
"smoke",
"regression",
"release_gate",
"exploratory",
"contract",
"performance",
"reliability",
"chaos",
"security"
]
}, },
"priority": { "priority": {
"type": "string", "type": "string",
Regular → Executable
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+205
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@@ -0,0 +1,205 @@
#!/usr/bin/env node
import { spawn } from "node:child_process";
import { mkdir, readFile, writeFile } from "node:fs/promises";
import { dirname, resolve } from "node:path";
import { env } from "node:process";
import {
appendLine,
ensureEvidence,
evidencePaths,
loadEnvFiles,
redact,
writeResult,
} from "./lib/langbot-e2e.mjs";
const caseId = "ensure-fake-provider-cross-pipelines";
const DEFAULT_PIPELINE_A_NAME = "LangBot QA Fake Provider Debug Chat A";
const DEFAULT_PIPELINE_B_NAME = "LangBot QA Fake Provider Debug Chat B";
await loadEnvFiles();
const paths = evidencePaths(caseId);
await ensureEvidence(paths);
const writeEnv = process.argv.includes("--write-env");
const envLocalPath = resolve("skills/.env.local");
const pipelineAName = env.LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME || DEFAULT_PIPELINE_A_NAME;
const pipelineBName = env.LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME || DEFAULT_PIPELINE_B_NAME;
const result = {
source: "setup_automation",
case_id: caseId,
run_id: paths.runId,
status: "fail",
reason: "",
pipeline_a: {
name: pipelineAName,
id: "",
url: "",
},
pipeline_b: {
name: pipelineBName,
id: "",
url: "",
},
fake_provider: {
url: "",
base_url: "",
pid: null,
},
wrote_env: false,
evidence: {
console_log: paths.consoleLog,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
},
evidence_collected: ["api_diagnostic", "filesystem"],
};
try {
console.error(`[langbot-qa] configuring cross-pipeline QA fixtures: pipeline_a=\"${pipelineAName}\", pipeline_b=\"${pipelineBName}\"`);
console.error("[langbot-qa] run these fake-provider setup/probe commands serially when they share LANGBOT_FAKE_PROVIDER_URL.");
if (pipelineAName === pipelineBName) {
throw new Error("LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME and LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME must be different.");
}
const setupA = await runPipelineSetup(pipelineAName, "A");
const setupB = await runPipelineSetup(pipelineBName, "B");
result.pipeline_a = {
name: setupA.pipeline_name || pipelineAName,
id: setupA.pipeline_id || "",
url: setupA.pipeline_url || "",
};
result.pipeline_b = {
name: setupB.pipeline_name || pipelineBName,
id: setupB.pipeline_id || "",
url: setupB.pipeline_url || "",
};
result.fake_provider = {
url: setupB.fake_provider?.url || setupA.fake_provider?.url || "",
base_url: setupB.fake_provider?.base_url || setupA.fake_provider?.base_url || "",
pid: setupB.fake_provider?.pid ?? setupA.fake_provider?.pid ?? null,
};
if (!result.pipeline_a.url || !result.pipeline_b.url || !result.fake_provider.url) {
throw new Error("Cross-pipeline fake provider setup did not return both pipeline URLs and provider URL.");
}
if (writeEnv) {
await upsertEnvLocal(envLocalPath, {
LANGBOT_FAKE_PROVIDER_URL: result.fake_provider.url,
LANGBOT_FAKE_PROVIDER_BASE_URL: result.fake_provider.base_url,
LANGBOT_FAKE_PROVIDER_PID: result.fake_provider.pid ? String(result.fake_provider.pid) : "",
LANGBOT_FAKE_PROVIDER_PIPELINE_A_URL: result.pipeline_a.url,
LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME: result.pipeline_a.name,
LANGBOT_FAKE_PROVIDER_PIPELINE_B_URL: result.pipeline_b.url,
LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME: result.pipeline_b.name,
});
result.wrote_env = true;
}
result.status = "pass";
result.reason = "Fake provider cross-pipeline fixtures are configured.";
} catch (error) {
result.status = looksLikeEnvIssue(error) ? "env_issue" : "fail";
result.reason = safeReason(error.message);
} finally {
await writeResult(paths, result);
console.log(JSON.stringify(result, null, 2));
}
process.exit(result.status === "pass" ? 0 : result.status === "env_issue" ? 2 : 1);
function runPipelineSetup(pipelineName, label) {
return new Promise((resolvePromise, rejectPromise) => {
const child = spawn(process.execPath, ["scripts/e2e/ensure-fake-provider-pipeline.mjs"], {
cwd: resolve("."),
env: {
...env,
LANGBOT_FAKE_PROVIDER_PIPELINE_NAME: pipelineName,
LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS: env.LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS || "25",
LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS: env.LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS || "10",
LANGBOT_FAKE_PROVIDER_CHUNK_COUNT: env.LANGBOT_FAKE_PROVIDER_CHUNK_COUNT || "0",
LANGBOT_FAKE_PROVIDER_FAIL_FIRST_N: "0",
LANGBOT_FAKE_PROVIDER_FAIL_EVERY_N: "0",
LANGBOT_FAKE_PROVIDER_FAULT_STATUS: env.LANGBOT_FAKE_PROVIDER_FAULT_STATUS || "500",
LANGBOT_FAKE_PROVIDER_FAIL_AFTER_FIRST_CHUNK: "false",
LANGBOT_FAKE_PROVIDER_DYNAMIC_RESPONSE: "true",
},
stdio: ["ignore", "pipe", "pipe"],
});
let stdout = "";
let stderr = "";
child.stdout.on("data", (chunk) => {
const text = chunk.toString();
stdout += text;
appendLine(paths.consoleLog, `[setup ${label} stdout] ${text.trimEnd()}`).catch(() => {});
});
child.stderr.on("data", (chunk) => {
const text = chunk.toString();
stderr += text;
appendLine(paths.consoleLog, `[setup ${label} stderr] ${text.trimEnd()}`).catch(() => {});
});
child.on("error", rejectPromise);
child.on("close", (code) => {
const parsed = parseJsonOutput(stdout);
if (code !== 0 || parsed.status !== "pass") {
rejectPromise(new Error(parsed.reason || stderr || `Fake provider pipeline setup ${label} exited with ${code}.`));
return;
}
resolvePromise(parsed);
});
});
}
function parseJsonOutput(text) {
const trimmed = String(text || "").trim();
if (!trimmed) return {};
try {
return JSON.parse(trimmed);
} catch {
const start = trimmed.indexOf("{");
const end = trimmed.lastIndexOf("}");
if (start >= 0 && end > start) {
try {
return JSON.parse(trimmed.slice(start, end + 1));
} catch {
return {};
}
}
return {};
}
}
async function upsertEnvLocal(path, updates) {
await mkdir(dirname(path), { recursive: true });
let text = "";
try {
text = await readFile(path, "utf8");
} catch {
text = "";
}
const lines = text.split(/\r?\n/);
const seen = new Set();
const next = lines.map((line) => {
const trimmed = line.trim();
const match = trimmed.match(/^([A-Z][A-Z0-9_]*)=/);
if (!match || updates[match[1]] === undefined) return line;
seen.add(match[1]);
return `${match[1]}=${updates[match[1]]}`;
});
for (const [key, value] of Object.entries(updates)) {
if (!seen.has(key)) next.push(`${key}=${value}`);
}
await writeFile(path, `${next.join("\n").replace(/\n+$/, "")}\n`, "utf8");
}
function looksLikeEnvIssue(error) {
const message = String(error?.message || error || "");
return /fetch failed|ECONNREFUSED|ENOTFOUND|LANGBOT_.*not configured|Could not read recovery_key|Backend did not respond/i.test(message);
}
function safeReason(value) {
return redact(String(value || "")).slice(0, 1000);
}
+635
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@@ -0,0 +1,635 @@
#!/usr/bin/env node
import { spawn } from "node:child_process";
import { open, readFile, mkdir, writeFile } from "node:fs/promises";
import { dirname, resolve } from "node:path";
import { env } from "node:process";
import {
apiJson,
ensureEvidence,
evidencePaths,
loadEnvFiles,
redact,
resetAndAuthLocalUser,
writeResult,
} from "./lib/langbot-e2e.mjs";
const RUNNER_ID = "local-agent";
const DEFAULT_LOCAL_PASSWORD = "LangBotE2ELocalPass!2026";
const DEFAULT_PIPELINE_NAME = "LangBot QA Fake Provider Debug Chat";
const DEFAULT_PROVIDER_NAME = "LangBot QA Fake OpenAI Provider";
const QA_RESOURCE_DESCRIPTION = "Managed by LangBot skills QA automation for controlled fake-provider Debug Chat tests. Safe to delete when local QA fixtures are no longer needed.";
const DEFAULT_MODEL_NAME = "gpt-4o-mini";
const DEFAULT_REQUESTER = "openai-chat-completions";
const caseId = "ensure-fake-provider-pipeline";
await loadEnvFiles();
const paths = evidencePaths(caseId);
await ensureEvidence(paths);
const writeEnv = process.argv.includes("--write-env");
const frontendUrl = env.LANGBOT_FRONTEND_URL || "";
const backendUrl = env.LANGBOT_BACKEND_URL || "";
const envLocalPath = resolve("skills/.env.local");
const repoRoot = resolve(env.LANGBOT_REPO || "..");
const fakeStateDir = resolve(env.LANGBOT_FAKE_PROVIDER_STATE_DIR || resolve(repoRoot, ".qa/fake-provider"));
const fakeStatePath = resolve(fakeStateDir, "state.json");
const fakeStdoutPath = resolve(fakeStateDir, "fake-provider.stdout.log");
const fakeStderrPath = resolve(fakeStateDir, "fake-provider.stderr.log");
const pipelineName = env.LANGBOT_FAKE_PROVIDER_PIPELINE_NAME || DEFAULT_PIPELINE_NAME;
const providerName = env.LANGBOT_FAKE_PROVIDER_NAME || DEFAULT_PROVIDER_NAME;
const requester = env.LANGBOT_FAKE_PROVIDER_REQUESTER || DEFAULT_REQUESTER;
const modelName = env.LANGBOT_FAKE_PROVIDER_MODEL_NAME || DEFAULT_MODEL_NAME;
const result = {
source: "automation",
case_id: caseId,
run_id: paths.runId,
status: "fail",
reason: "",
frontend_url: frontendUrl,
backend_url: backendUrl,
fake_provider: {
url: "",
base_url: "",
pid: null,
reused: false,
config: {},
state_file: fakeStatePath,
stdout_log: fakeStdoutPath,
stderr_log: fakeStderrPath,
},
provider: {
uuid: "",
name: providerName,
requester,
created: false,
updated: false,
},
model: {
uuid: "",
name: modelName,
created: false,
updated: false,
test_status: "not_run",
test_reason: "",
},
pipeline_id: "",
pipeline_name: pipelineName,
pipeline_url: "",
created: false,
updated: false,
wrote_env: false,
evidence: {
console_log: paths.consoleLog,
network_log: paths.networkLog,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
},
evidence_collected: ["api_diagnostic", "network", "filesystem"],
};
try {
console.error(`[langbot-qa] configuring QA-owned fake-provider fixtures: provider=\"${providerName}\", pipeline=\"${pipelineName}\"`);
console.error("[langbot-qa] this setup may create or update local QA provider/model/pipeline resources on the selected backend.");
if (!backendUrl) {
result.status = "env_issue";
throw new Error("LANGBOT_BACKEND_URL is not configured.");
}
if (!frontendUrl) {
result.status = "env_issue";
throw new Error("LANGBOT_FRONTEND_URL is not configured.");
}
const fakeProvider = await ensureFakeProvider();
const setupConfig = await configureFakeProvider(fakeProvider.url, healthyFakeProviderConfig(), true);
result.fake_provider = {
...result.fake_provider,
...fakeProvider,
config: setupConfig.config || healthyFakeProviderConfig(),
};
const user = env.LANGBOT_E2E_LOGIN_USER || "";
const password = env.LANGBOT_E2E_LOGIN_PASSWORD || DEFAULT_LOCAL_PASSWORD;
if (!user) {
result.status = "env_issue";
throw new Error("LANGBOT_E2E_LOGIN_USER is required so this setup can create/update the fake provider pipeline.");
}
const auth = await resetAndAuthLocalUser({ backendUrl, user, password });
const wizard = await skipWizard({ backendUrl, token: auth.token });
if (wizard.status !== "pass") {
result.status = "fail";
throw new Error(wizard.reason || "Failed to mark the local QA wizard as skipped.");
}
const provider = await ensureProvider({
backendUrl,
token: auth.token,
name: providerName,
requester,
baseUrl: fakeProvider.base_url,
});
result.provider = provider;
const model = await ensureModel({
backendUrl,
token: auth.token,
providerUuid: provider.uuid,
name: modelName,
});
result.model = model;
const pipeline = await ensurePipeline({
backendUrl,
token: auth.token,
name: pipelineName,
modelUuid: model.uuid,
});
Object.assign(result, pipeline);
result.pipeline_url = `${frontendUrl.replace(/\/$/, "")}/home/pipelines?id=${encodeURIComponent(pipeline.pipeline_id)}`;
const runConfig = await configureFakeProvider(fakeProvider.url, targetFakeProviderConfig(), true);
result.fake_provider.config = runConfig.config || targetFakeProviderConfig();
if (writeEnv) {
await upsertEnvLocal(envLocalPath, {
LANGBOT_E2E_LOGIN_USER: user,
LANGBOT_FAKE_PROVIDER_URL: fakeProvider.url,
LANGBOT_FAKE_PROVIDER_BASE_URL: fakeProvider.base_url,
LANGBOT_FAKE_PROVIDER_PID: fakeProvider.pid ? String(fakeProvider.pid) : "",
LANGBOT_FAKE_PROVIDER_PROVIDER_UUID: provider.uuid,
LANGBOT_FAKE_PROVIDER_MODEL_UUID: model.uuid,
LANGBOT_FAKE_PROVIDER_PIPELINE_URL: result.pipeline_url,
LANGBOT_FAKE_PROVIDER_PIPELINE_NAME: pipelineName,
});
result.wrote_env = true;
}
result.status = "pass";
result.reason = `Fake provider pipeline is configured with ${requester}/${modelName}.`;
} catch (error) {
result.status = result.status === "env_issue" ? "env_issue" : "fail";
result.reason = result.reason || safeReason(error.message);
} finally {
await writeResult(paths, result);
console.log(JSON.stringify(result, null, 2));
}
process.exit(result.status === "pass" ? 0 : result.status === "env_issue" ? 2 : 1);
async function ensureFakeProvider() {
const envUrl = normalizeProviderRootUrl(env.LANGBOT_FAKE_PROVIDER_URL || "");
if (envUrl && await fakeProviderHealthy(envUrl) && await fakeProviderConfigurable(envUrl)) {
return {
url: envUrl,
base_url: `${envUrl}/v1`,
pid: null,
reused: true,
};
}
const state = await readState(fakeStatePath);
const stateUrl = normalizeProviderRootUrl(state.url || "");
if (stateUrl && await fakeProviderHealthy(stateUrl)) {
if (await fakeProviderConfigurable(stateUrl)) {
return {
url: stateUrl,
base_url: state.base_url || `${stateUrl}/v1`,
pid: Number.isInteger(state.pid) ? state.pid : null,
reused: true,
};
}
if (Number.isInteger(state.pid)) await stopProcess(state.pid);
}
await mkdir(fakeStateDir, { recursive: true });
await writeFile(fakeStatePath, `${JSON.stringify({ status: "starting", started_at: new Date().toISOString() }, null, 2)}\n`, "utf8");
const stdout = await open(fakeStdoutPath, "a");
const stderr = await open(fakeStderrPath, "a");
const scriptPath = resolve("scripts/e2e/fake-openai-provider.mjs");
const host = env.LANGBOT_FAKE_PROVIDER_HOST || "127.0.0.1";
const port = env.LANGBOT_FAKE_PROVIDER_PORT || "0";
const child = spawn(process.execPath, [
scriptPath,
`--host=${host}`,
`--port=${port}`,
`--state-file=${fakeStatePath}`,
], {
cwd: resolve("."),
detached: true,
env: {
...env,
LANGBOT_FAKE_PROVIDER_MODEL_NAME: modelName,
},
stdio: ["ignore", stdout.fd, stderr.fd],
});
child.unref();
await stdout.close();
await stderr.close();
const started = await waitForFakeProviderState(fakeStatePath, child.pid, 10_000);
if (!started.url || !await fakeProviderHealthy(started.url) || !await fakeProviderConfigurable(started.url)) {
throw new Error(`Fake provider did not become healthy. See ${fakeStderrPath}`);
}
return {
url: started.url,
base_url: started.base_url || `${started.url}/v1`,
pid: child.pid ?? started.pid ?? null,
reused: false,
};
}
async function configureFakeProvider(rootUrl, config, resetRequestCount) {
const response = await fetch(`${normalizeProviderRootUrl(rootUrl)}/__qa/config`, {
method: "POST",
headers: { "content-type": "application/json" },
body: JSON.stringify({
config,
reset_request_count: resetRequestCount,
}),
signal: AbortSignal.timeout(3000),
});
const json = await response.json().catch(() => ({}));
if (!response.ok || json.ok !== true) {
throw new Error(`Fake provider config failed with HTTP ${response.status}.`);
}
return json;
}
async function fakeProviderHealthy(rootUrl) {
try {
const response = await fetch(`${rootUrl.replace(/\/$/, "")}/healthz`, {
signal: AbortSignal.timeout(2000),
});
if (!response.ok) return false;
const json = await response.json().catch(() => ({}));
return json.ok === true;
} catch {
return false;
}
}
async function fakeProviderConfigurable(rootUrl) {
try {
const response = await fetch(`${rootUrl.replace(/\/$/, "")}/__qa/config`, {
signal: AbortSignal.timeout(2000),
});
if (!response.ok) return false;
const json = await response.json().catch(() => ({}));
return json.ok === true && json.config && typeof json.config === "object";
} catch {
return false;
}
}
async function stopProcess(pid) {
try {
process.kill(pid, "SIGTERM");
} catch {
return;
}
await sleep(500);
}
async function waitForFakeProviderState(path, expectedPid, timeoutMs) {
const startedAt = Date.now();
let lastState = {};
while (Date.now() - startedAt < timeoutMs) {
const state = await readState(path);
if (state.url && (!expectedPid || state.pid === expectedPid)) return state;
lastState = state;
await sleep(150);
}
return lastState;
}
async function readState(path) {
try {
return JSON.parse(await readFile(path, "utf8"));
} catch {
return {};
}
}
function normalizeProviderRootUrl(value) {
const trimmed = String(value || "").trim().replace(/\/$/, "");
return trimmed.endsWith("/v1") ? trimmed.slice(0, -3) : trimmed;
}
function healthyFakeProviderConfig() {
return {
response_text: "OK",
first_token_delay_ms: 25,
chunk_delay_ms: 10,
chunk_count: 0,
fault_status: 500,
fail_first_n: 0,
fail_every_n: 0,
fail_after_first_chunk: false,
dynamic_response: true,
};
}
function targetFakeProviderConfig() {
return {
response_text: env.LANGBOT_FAKE_PROVIDER_RESPONSE_TEXT || "OK",
first_token_delay_ms: nonNegativeInteger(env.LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS, 25),
chunk_delay_ms: nonNegativeInteger(env.LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS, 10),
chunk_count: nonNegativeInteger(env.LANGBOT_FAKE_PROVIDER_CHUNK_COUNT, 0),
fault_status: httpFaultStatus(env.LANGBOT_FAKE_PROVIDER_FAULT_STATUS, 500),
fail_first_n: nonNegativeInteger(env.LANGBOT_FAKE_PROVIDER_FAIL_FIRST_N, 0),
fail_every_n: nonNegativeInteger(env.LANGBOT_FAKE_PROVIDER_FAIL_EVERY_N, 0),
fail_after_first_chunk: envBool(env.LANGBOT_FAKE_PROVIDER_FAIL_AFTER_FIRST_CHUNK, false),
dynamic_response: envBool(env.LANGBOT_FAKE_PROVIDER_DYNAMIC_RESPONSE, true),
};
}
async function skipWizard({ backendUrl, token }) {
const response = await apiJson(backendUrl, "/api/v1/system/wizard/completed", {
method: "POST",
token,
body: { status: "skipped" },
});
const ok = response.status < 400 && response.json.code === 0;
return {
status: ok ? "pass" : "fail",
http_status: response.status,
code: response.json.code ?? null,
reason: ok ? "Wizard marked skipped for local QA." : response.json.msg || "Wizard status update failed.",
};
}
async function ensureProvider({ backendUrl, token, name, requester, baseUrl }) {
const list = await apiJson(backendUrl, "/api/v1/provider/providers", { token });
if (isApiFailure(list)) {
throw new Error(list.json.msg || "Failed to list providers.");
}
const providers = list.json.data?.providers || [];
const existing = providers.find((provider) => (
provider.name === name
|| (provider.requester === requester && String(provider.base_url || "").replace(/\/$/, "") === baseUrl.replace(/\/$/, ""))
));
const body = {
name,
requester,
base_url: baseUrl,
api_keys: [env.LANGBOT_FAKE_PROVIDER_API_KEY || "langbot-fake-provider-key"],
};
if (existing?.uuid) {
const update = await apiJson(backendUrl, `/api/v1/provider/providers/${encodeURIComponent(existing.uuid)}`, {
method: "PUT",
token,
body,
});
if (isApiFailure(update)) {
throw new Error(update.json.msg || "Failed to update fake provider.");
}
return {
uuid: existing.uuid,
name,
requester,
created: false,
updated: true,
};
}
const create = await apiJson(backendUrl, "/api/v1/provider/providers", {
method: "POST",
token,
body,
});
const uuid = create.json.data?.uuid || "";
if (isApiFailure(create) || !uuid) {
throw new Error(create.json.msg || "Failed to create fake provider.");
}
return {
uuid,
name,
requester,
created: true,
updated: false,
};
}
async function ensureModel({ backendUrl, token, providerUuid, name }) {
const list = await apiJson(backendUrl, `/api/v1/provider/models/llm?provider_uuid=${encodeURIComponent(providerUuid)}`, { token });
if (isApiFailure(list)) {
throw new Error(list.json.msg || "Failed to list fake provider models.");
}
const models = list.json.data?.models || [];
const existing = models.find((model) => model.name === name);
const body = {
name,
provider_uuid: providerUuid,
abilities: [],
context_length: positiveInteger(env.LANGBOT_FAKE_PROVIDER_CONTEXT_LENGTH, 8192),
extra_args: {},
prefered_ranking: 0,
};
let modelUuid = existing?.uuid || "";
let created = false;
let updated = false;
if (modelUuid) {
const update = await apiJson(backendUrl, `/api/v1/provider/models/llm/${encodeURIComponent(modelUuid)}`, {
method: "PUT",
token,
body,
});
if (isApiFailure(update)) {
throw new Error(update.json.msg || "Failed to update fake provider model.");
}
updated = true;
} else {
const create = await apiJson(backendUrl, "/api/v1/provider/models/llm", {
method: "POST",
token,
body,
});
modelUuid = create.json.data?.uuid || "";
if (isApiFailure(create) || !modelUuid) {
throw new Error(create.json.msg || "Failed to create fake provider model.");
}
created = true;
}
const test = await apiJson(backendUrl, `/api/v1/provider/models/llm/${encodeURIComponent(modelUuid)}/test`, {
method: "POST",
token,
body: { extra_args: {} },
});
if (isApiFailure(test)) {
throw new Error(safeReason(test.json.msg || test.json.message || "Fake provider model test failed."));
}
return {
uuid: modelUuid,
name,
created,
updated,
test_status: "pass",
test_reason: "",
};
}
async function ensurePipeline({ backendUrl, token, name, modelUuid }) {
const list = await apiJson(backendUrl, "/api/v1/pipelines", { token });
if (isApiFailure(list)) {
throw new Error(list.json.msg || "Failed to list pipelines.");
}
const pipelines = list.json.data?.pipelines || [];
let pipeline = pipelines.find((item) => item.name === name) || null;
let created = false;
if (!pipeline) {
const create = await apiJson(backendUrl, "/api/v1/pipelines", {
method: "POST",
token,
body: {
name,
description: QA_RESOURCE_DESCRIPTION,
emoji: "QA",
},
});
const pipelineId = create.json.data?.uuid || "";
if (isApiFailure(create) || !pipelineId) {
throw new Error(create.json.msg || "Failed to create fake provider pipeline.");
}
created = true;
pipeline = { uuid: pipelineId };
}
const loaded = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(pipeline.uuid)}`, { token });
pipeline = loaded.json.data?.pipeline || null;
if (isApiFailure(loaded) || !pipeline?.uuid) {
throw new Error(loaded.json.msg || "Failed to load fake provider pipeline.");
}
const config = pipeline.config && typeof pipeline.config === "object" ? pipeline.config : {};
const ai = config.ai && typeof config.ai === "object" ? config.ai : {};
const existingLocalAgentConfig = ai["local-agent"] && typeof ai["local-agent"] === "object"
? ai["local-agent"]
: {};
const localAgentConfig = {
timeout: 60,
prompt: [{ role: "system", content: "You are a deterministic QA assistant. Reply exactly as instructed." }],
"remove-think": false,
"knowledge-bases": [],
"box-session-id-template": "{launcher_type}_{launcher_id}",
"retrieval-top-k": 5,
"rerank-model": "",
"rerank-top-k": 5,
"max-tool-iterations": 20,
"tool-execution-mode": "parallel",
"max-tool-result-chars": 20000,
"context-history-fetch-limit": 20,
"context-window-tokens": 8192,
"context-reserve-tokens": 1024,
"context-keep-recent-tokens": 2048,
"context-summary-tokens": 1024,
...existingLocalAgentConfig,
// Current backend truncation still reads this field directly.
"max-round": positiveInteger(existingLocalAgentConfig["max-round"], 10),
model: {
primary: modelUuid,
fallbacks: [],
},
};
const updatedConfig = {
...config,
ai: {
...ai,
runner: {
...(ai.runner && typeof ai.runner === "object" ? ai.runner : {}),
id: RUNNER_ID,
runner: RUNNER_ID,
"expire-time": 0,
},
"local-agent": localAgentConfig,
},
};
const update = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(pipeline.uuid)}`, {
method: "PUT",
token,
body: {
name,
description: QA_RESOURCE_DESCRIPTION,
emoji: "QA",
config: updatedConfig,
},
});
if (isApiFailure(update)) {
throw new Error(update.json.msg || "Failed to update fake provider pipeline.");
}
return {
pipeline_id: pipeline.uuid,
pipeline_name: name,
created,
updated: true,
};
}
function isApiFailure(response) {
return response.status >= 400 || (response.json.code !== undefined && response.json.code !== 0);
}
function positiveInteger(value, fallback) {
const parsed = Number(value);
return Number.isInteger(parsed) && parsed > 0 ? parsed : fallback;
}
function nonNegativeInteger(value, fallback) {
const parsed = Number(value);
return Number.isInteger(parsed) && parsed >= 0 ? parsed : fallback;
}
function httpFaultStatus(value, fallback) {
const parsed = Number(value);
return Number.isInteger(parsed) && parsed >= 400 && parsed <= 599 ? parsed : fallback;
}
function envBool(value, fallback) {
if (value === undefined || value === "") return fallback;
if (/^(1|true|yes|on)$/i.test(String(value))) return true;
if (/^(0|false|no|off)$/i.test(String(value))) return false;
return fallback;
}
function sleep(ms) {
return new Promise((resolve) => setTimeout(resolve, ms));
}
function safeReason(value) {
return redact(String(value || "")).slice(0, 1000);
}
async function upsertEnvLocal(path, updates) {
await mkdir(dirname(path), { recursive: true });
let text = "";
try {
text = await readFile(path, "utf8");
} catch {
text = "";
}
const lines = text.split(/\r?\n/);
const seen = new Set();
const next = lines.map((line) => {
const trimmed = line.trim();
const equals = trimmed.indexOf("=");
if (equals <= 0 || trimmed.startsWith("#")) return line;
const key = trimmed.slice(0, equals).trim();
if (!(key in updates)) return line;
seen.add(key);
return `${key}=${updates[key]}`;
});
for (const [key, value] of Object.entries(updates)) {
if (!seen.has(key)) next.push(`${key}=${value}`);
}
await writeFile(path, `${next.filter((line, index) => line !== "" || index < next.length - 1).join("\n")}\n`, "utf8");
}
View File
+311 -14
View File
@@ -10,6 +10,7 @@ import {
ensureEvidence, ensureEvidence,
evidencePaths, evidencePaths,
loadEnvFiles, loadEnvFiles,
redact,
resetAndAuthLocalUser, resetAndAuthLocalUser,
safeScreenshot, safeScreenshot,
setBrowserToken, setBrowserToken,
@@ -17,9 +18,12 @@ import {
writeResult, writeResult,
} from "./lib/langbot-e2e.mjs"; } from "./lib/langbot-e2e.mjs";
const RUNNER_ID = "plugin:langbot/local-agent/default"; const RUNNER_ID = "local-agent";
const SPACE_PROVIDER_UUID = "00000000-0000-0000-0000-000000000000";
const DEFAULT_PIPELINE_NAME = "Agent QA Local Agent Debug Chat"; const DEFAULT_PIPELINE_NAME = "Agent QA Local Agent Debug Chat";
const DEFAULT_LOCAL_PASSWORD = "LangBotE2ELocalPass!2026"; const DEFAULT_LOCAL_PASSWORD = "LangBotE2ELocalPass!2026";
const DEFAULT_MODEL_TEST_LIMIT = 8;
const DEFAULT_MODEL_FALLBACK_COUNT = 3;
const caseId = "ensure-local-agent-pipeline"; const caseId = "ensure-local-agent-pipeline";
await loadEnvFiles(); await loadEnvFiles();
@@ -45,11 +49,18 @@ const result = {
pipeline_url: "", pipeline_url: "",
runner_id: RUNNER_ID, runner_id: RUNNER_ID,
selected_model_id: "", selected_model_id: "",
selected_model_name: "",
fallback_model_ids: [],
model_count: 0, model_count: 0,
space_model_count: 0,
scanned_space_model_count: 0,
tested_model_count: 0,
model_tests: [],
created: false, created: false,
updated: false, updated: false,
wrote_env: false, wrote_env: false,
auth: null, auth: null,
wizard: null,
browser_token_check: null, browser_token_check: null,
page_signal: "", page_signal: "",
evidence: { evidence: {
@@ -71,6 +82,7 @@ try {
const user = env.LANGBOT_E2E_LOGIN_USER || ""; const user = env.LANGBOT_E2E_LOGIN_USER || "";
const password = env.LANGBOT_E2E_LOGIN_PASSWORD || DEFAULT_LOCAL_PASSWORD; const password = env.LANGBOT_E2E_LOGIN_PASSWORD || DEFAULT_LOCAL_PASSWORD;
if (!user) { if (!user) {
result.status = "env_issue";
throw new Error("LANGBOT_E2E_LOGIN_USER is required so this setup can create/update the pipeline via backend API."); throw new Error("LANGBOT_E2E_LOGIN_USER is required so this setup can create/update the pipeline via backend API.");
} }
@@ -81,6 +93,13 @@ try {
backend_token_check: auth.check, backend_token_check: auth.check,
}; };
const wizard = await skipWizard({ backendUrl, token: auth.token });
result.wizard = wizard;
if (wizard.status !== "pass") {
result.status = "fail";
throw new Error(wizard.reason || "Failed to mark the local QA wizard as skipped.");
}
const prepared = await ensureLocalAgentPipeline({ const prepared = await ensureLocalAgentPipeline({
backendUrl, backendUrl,
token: auth.token, token: auth.token,
@@ -99,6 +118,10 @@ try {
LANGBOT_PIPELINE_NAME: result.pipeline_name || pipelineName, LANGBOT_PIPELINE_NAME: result.pipeline_name || pipelineName,
LANGBOT_LOCAL_AGENT_PIPELINE_URL: result.pipeline_url, LANGBOT_LOCAL_AGENT_PIPELINE_URL: result.pipeline_url,
LANGBOT_LOCAL_AGENT_PIPELINE_NAME: result.pipeline_name || pipelineName, LANGBOT_LOCAL_AGENT_PIPELINE_NAME: result.pipeline_name || pipelineName,
...(result.selected_model_id ? {
LANGBOT_LOCAL_AGENT_MODEL_UUID: result.selected_model_id,
LANGBOT_E2E_MODEL_UUID: result.selected_model_id,
} : {}),
}); });
result.wrote_env = true; result.wrote_env = true;
} }
@@ -127,6 +150,21 @@ try {
process.exit(result.status === "pass" ? 0 : result.status === "env_issue" ? 2 : 1); process.exit(result.status === "pass" ? 0 : result.status === "env_issue" ? 2 : 1);
async function skipWizard({ backendUrl, token }) {
const response = await apiJson(backendUrl, "/api/v1/system/wizard/completed", {
method: "POST",
token,
body: { status: "skipped" },
});
const ok = response.status < 400 && response.json.code === 0;
return {
status: ok ? "pass" : "fail",
http_status: response.status,
code: response.json.code ?? null,
reason: ok ? "Wizard marked skipped for local QA." : response.json.msg || "Wizard status update failed.",
};
}
async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runnerId }) { async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runnerId }) {
const [pipelineList, modelList] = await Promise.all([ const [pipelineList, modelList] = await Promise.all([
apiJson(backendUrl, "/api/v1/pipelines", { token }), apiJson(backendUrl, "/api/v1/pipelines", { token }),
@@ -149,7 +187,19 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
} }
const models = modelList.json.data?.models || []; const models = modelList.json.data?.models || [];
const selectedModel = models.find((model) => model.uuid) || null; const skippedModelIds = new Set(
String(env.LANGBOT_E2E_SKIP_MODEL_UUIDS || "")
.split(",")
.map((item) => item.trim())
.filter(Boolean),
);
const skippedModelNames = new Set(
String(env.LANGBOT_E2E_SKIP_MODEL_NAMES || "")
.split(",")
.map((item) => item.trim())
.filter(Boolean),
);
const spaceModels = models.filter((model) => isSpaceModel(model) && !skippedModelIds.has(model.uuid));
const pipelines = pipelineList.json.data?.pipelines || []; const pipelines = pipelineList.json.data?.pipelines || [];
let pipeline = pipelines.find((item) => item.name === pipelineName) || null; let pipeline = pipelines.find((item) => item.name === pipelineName) || null;
let created = false; let created = false;
@@ -170,6 +220,7 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
reason: createdResponse.json.msg || "Failed to create pipeline.", reason: createdResponse.json.msg || "Failed to create pipeline.",
create_status: createdResponse.status, create_status: createdResponse.status,
model_count: models.length, model_count: models.length,
space_model_count: spaceModels.length,
}; };
} }
const pipelineId = createdResponse.json.data?.uuid || ""; const pipelineId = createdResponse.json.data?.uuid || "";
@@ -183,6 +234,7 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
status: "fail", status: "fail",
reason: "Pipeline was not created or resolved.", reason: "Pipeline was not created or resolved.",
model_count: models.length, model_count: models.length,
space_model_count: spaceModels.length,
}; };
} }
@@ -194,27 +246,37 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
get_status: loaded.status, get_status: loaded.status,
pipeline_id: pipeline.uuid, pipeline_id: pipeline.uuid,
model_count: models.length, model_count: models.length,
space_model_count: spaceModels.length,
}; };
} }
pipeline = loaded.json.data.pipeline; pipeline = loaded.json.data.pipeline;
const config = pipeline.config && typeof pipeline.config === "object" ? pipeline.config : {}; const config = pipeline.config && typeof pipeline.config === "object" ? pipeline.config : {};
const ai = config.ai && typeof config.ai === "object" ? config.ai : {}; const ai = config.ai && typeof config.ai === "object" ? config.ai : {};
const runnerConfig = ai.runner_config && typeof ai.runner_config === "object" ? ai.runner_config : {}; const rawExistingLocalAgentConfig = ai["local-agent"] && typeof ai["local-agent"] === "object"
const rawExistingLocalAgentConfig = runnerConfig[runnerId] && typeof runnerConfig[runnerId] === "object" ? ai["local-agent"]
? runnerConfig[runnerId]
: {}; : {};
const existingLocalAgentConfig = rawExistingLocalAgentConfig; const existingLocalAgentConfig = rawExistingLocalAgentConfig;
const existingModel = existingLocalAgentConfig.model && typeof existingLocalAgentConfig.model === "object" const existingModel = existingLocalAgentConfig.model && typeof existingLocalAgentConfig.model === "object"
? existingLocalAgentConfig.model ? existingLocalAgentConfig.model
: {}; : {};
const requestedModelId = env.LANGBOT_LOCAL_AGENT_MODEL_UUID || env.LANGBOT_E2E_MODEL_UUID || ""; const requestedModelId = env.LANGBOT_LOCAL_AGENT_MODEL_UUID || env.LANGBOT_E2E_MODEL_UUID || "";
const selectedModelId = requestedModelId || existingModel.primary || selectedModel?.uuid || ""; const selected = await selectWorkingSpaceModel({
backendUrl,
token,
models,
skippedModelIds,
skippedModelNames,
requestedModelId,
existingModelId: existingModel.primary || "",
});
const selectedModelId = selected.selected_model_id || "";
const localAgentConfig = { const localAgentConfig = {
timeout: 300, timeout: 300,
prompt: [{ role: "system", content: "You are a helpful assistant." }], prompt: [{ role: "system", content: "You are a helpful assistant." }],
"remove-think": false, "remove-think": false,
"knowledge-bases": [], "knowledge-bases": [],
"box-session-id-template": "{launcher_type}_{launcher_id}",
"retrieval-top-k": 5, "retrieval-top-k": 5,
"rerank-model": "", "rerank-model": "",
"rerank-top-k": 5, "rerank-top-k": 5,
@@ -227,9 +289,11 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
"context-keep-recent-tokens": 20000, "context-keep-recent-tokens": 20000,
"context-summary-tokens": 8000, "context-summary-tokens": 8000,
...existingLocalAgentConfig, ...existingLocalAgentConfig,
// Current backend truncation still reads this field directly.
"max-round": positiveInteger(existingLocalAgentConfig["max-round"], 10),
model: { model: {
primary: selectedModelId, primary: selectedModelId,
fallbacks: requestedModelId ? [] : Array.isArray(existingModel.fallbacks) ? existingModel.fallbacks : [], fallbacks: selected.fallback_model_ids || [],
}, },
}; };
const updatedConfig = { const updatedConfig = {
@@ -239,12 +303,10 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
runner: { runner: {
...(ai.runner && typeof ai.runner === "object" ? ai.runner : {}), ...(ai.runner && typeof ai.runner === "object" ? ai.runner : {}),
id: runnerId, id: runnerId,
runner: runnerId,
"expire-time": 0, "expire-time": 0,
}, },
runner_config: { "local-agent": localAgentConfig,
...runnerConfig,
[runnerId]: localAgentConfig,
},
}, },
}; };
@@ -265,19 +327,31 @@ async function ensureLocalAgentPipeline({ backendUrl, token, pipelineName, runne
update_status: updateResponse.status, update_status: updateResponse.status,
pipeline_id: pipeline.uuid, pipeline_id: pipeline.uuid,
model_count: models.length, model_count: models.length,
space_model_count: spaceModels.length,
scanned_space_model_count: selected.scanned_space_model_count,
tested_model_count: selected.tested_model_count,
model_tests: selected.model_tests,
selected_model_id: selectedModelId, selected_model_id: selectedModelId,
selected_model_name: selected.selected_model_name,
fallback_model_ids: selected.fallback_model_ids,
}; };
} }
return { return {
status: selectedModelId ? "pass" : "env_issue", status: selectedModelId ? "pass" : "env_issue",
reason: selectedModelId reason: selectedModelId
? "Local-agent pipeline is configured for Debug Chat." ? `Local-agent pipeline is configured for Debug Chat with Space model ${selected.selected_model_name || selectedModelId} and ${selected.fallback_model_ids.length} fallback(s).`
: "Pipeline was created but no LLM model is configured in this LangBot instance.", : selected.reason || "No working Space LLM model is configured in this LangBot instance.",
pipeline_id: pipeline.uuid, pipeline_id: pipeline.uuid,
pipeline_name: pipeline.name, pipeline_name: pipelineName,
model_count: models.length, model_count: models.length,
space_model_count: spaceModels.length,
scanned_space_model_count: selected.scanned_space_model_count,
tested_model_count: selected.tested_model_count,
model_tests: selected.model_tests,
selected_model_id: selectedModelId, selected_model_id: selectedModelId,
selected_model_name: selected.selected_model_name,
fallback_model_ids: selected.fallback_model_ids,
created, created,
updated: true, updated: true,
}; };
@@ -287,6 +361,229 @@ function isApiFailure(response) {
return response.status >= 400 || (response.json.code !== undefined && response.json.code !== 0); return response.status >= 400 || (response.json.code !== undefined && response.json.code !== 0);
} }
function isSpaceModel(model) {
const provider = model?.provider && typeof model.provider === "object" ? model.provider : {};
return model?.provider_uuid === SPACE_PROVIDER_UUID
|| provider.uuid === SPACE_PROVIDER_UUID
|| provider.requester === "space-chat-completions"
|| provider.name === "LangBot Models";
}
async function selectWorkingSpaceModel({
backendUrl,
token,
models,
skippedModelIds,
skippedModelNames,
requestedModelId,
existingModelId,
}) {
const modelTests = [];
const testLimit = positiveInteger(env.LANGBOT_E2E_MODEL_TEST_LIMIT, DEFAULT_MODEL_TEST_LIMIT);
const fallbackCount = positiveInteger(env.LANGBOT_E2E_MODEL_FALLBACK_COUNT, DEFAULT_MODEL_FALLBACK_COUNT);
const workingModels = [];
const spaceModels = rankModels(models.filter((model) => (
model.uuid
&& isSpaceModel(model)
&& !skippedModelIds.has(model.uuid)
&& !skippedModelNames.has(model.name)
)));
const requestedModel = requestedModelId
? spaceModels.find((model) => model.uuid === requestedModelId) || null
: null;
const existingModel = existingModelId
? spaceModels.find((model) => model.uuid === existingModelId) || null
: null;
const candidates = uniqueCandidates([
...(requestedModel ? [existingCandidate(requestedModel, "requested")] : []),
...(existingModel ? [existingCandidate(existingModel, "existing-pipeline")] : []),
...spaceModels.map((model) => existingCandidate(model, "configured-space")),
]);
let scanResult = { status: "skipped", models: [], reason: "" };
if (env.LANGBOT_E2E_SCAN_SPACE_MODELS !== "false") {
scanResult = await scanSpaceModels({ backendUrl, token });
if (scanResult.status === "pass") {
const knownNames = new Set(spaceModels.map((model) => model.name));
candidates.push(...scanResult.models
.filter((model) => model.name && !knownNames.has(model.name) && !skippedModelNames.has(model.name))
.map((model) => scannedCandidate(model)));
}
}
const unique = uniqueCandidates(candidates);
for (const candidate of unique.slice(0, testLimit)) {
const test = await ensureAndTestModel({ backendUrl, token, candidate });
modelTests.push(test);
if (test.status === "pass" && test.model_uuid) {
workingModels.push(test);
if (workingModels.length >= fallbackCount + 1) break;
}
}
if (workingModels.length > 0) {
const [primary, ...fallbacks] = workingModels;
return {
status: "pass",
reason: "",
selected_model_id: primary.model_uuid,
selected_model_name: primary.model_name,
fallback_model_ids: fallbacks.map((model) => model.model_uuid),
scanned_space_model_count: scanResult.models.length,
tested_model_count: modelTests.length,
model_tests: modelTests,
};
}
const baseReason = unique.length === 0
? scanResult.reason || "No Space LLM model candidates are available."
: `No working Space LLM model found after testing ${modelTests.length} candidate(s).`;
return {
status: "env_issue",
reason: requestedModelId && !requestedModel
? `Requested Space LLM model ${requestedModelId} is missing or skipped; ${baseReason}`
: baseReason,
selected_model_id: "",
selected_model_name: "",
fallback_model_ids: [],
scanned_space_model_count: scanResult.models.length,
tested_model_count: modelTests.length,
model_tests: modelTests,
};
}
async function scanSpaceModels({ backendUrl, token }) {
const response = await apiJson(
backendUrl,
`/api/v1/provider/providers/${encodeURIComponent(SPACE_PROVIDER_UUID)}/scan-models?type=llm`,
{ token },
);
if (isApiFailure(response)) {
return {
status: "env_issue",
models: [],
reason: safeReason(response.json.msg || response.json.message || "Failed to scan Space LLM models."),
};
}
return {
status: "pass",
models: response.json.data?.models || [],
reason: "",
};
}
async function ensureAndTestModel({ backendUrl, token, candidate }) {
let modelUuid = candidate.uuid || "";
let created = false;
if (!modelUuid) {
const create = await apiJson(backendUrl, "/api/v1/provider/models/llm", {
method: "POST",
token,
body: {
name: candidate.name,
provider_uuid: SPACE_PROVIDER_UUID,
abilities: candidate.abilities || [],
context_length: candidate.context_length ?? null,
extra_args: {},
prefered_ranking: positiveInteger(candidate.prefered_ranking, 0),
},
});
modelUuid = create.json.data?.uuid || "";
if (isApiFailure(create) || !modelUuid) {
return modelTestResult(candidate, {
status: "fail",
reason: safeReason(create.json.msg || "Failed to create scanned Space model."),
http_status: create.status,
});
}
created = true;
}
const test = await apiJson(backendUrl, `/api/v1/provider/models/llm/${encodeURIComponent(modelUuid)}/test`, {
method: "POST",
token,
body: { extra_args: {} },
});
const passed = !isApiFailure(test);
if (!passed && created) {
await apiJson(backendUrl, `/api/v1/provider/models/llm/${encodeURIComponent(modelUuid)}`, {
method: "DELETE",
token,
}).catch(() => {});
}
return modelTestResult(candidate, {
status: passed ? "pass" : "fail",
reason: passed ? "" : safeReason(test.json.msg || test.json.message || "Space model test failed."),
http_status: test.status,
model_uuid: modelUuid,
created,
});
}
function modelTestResult(candidate, details) {
return {
source: candidate.source,
model_uuid: details.model_uuid || candidate.uuid || "",
model_name: candidate.name,
status: details.status,
reason: details.reason || "",
http_status: details.http_status ?? null,
created: Boolean(details.created),
};
}
function existingCandidate(model, source) {
return {
source,
uuid: model.uuid,
name: model.name,
abilities: model.abilities || [],
context_length: model.context_length,
prefered_ranking: model.prefered_ranking,
};
}
function scannedCandidate(model) {
return {
source: "scanned-space",
uuid: "",
name: model.name || model.id,
abilities: model.abilities || [],
context_length: model.context_length,
prefered_ranking: model.prefered_ranking,
};
}
function uniqueCandidates(candidates) {
const seen = new Set();
const result = [];
for (const candidate of candidates) {
const key = candidate.uuid ? `uuid:${candidate.uuid}` : `name:${candidate.name}`;
if (!candidate.name || seen.has(key)) continue;
seen.add(key);
result.push(candidate);
}
return result;
}
function rankModels(models) {
return [...models].sort((left, right) => {
const leftRank = Number.isFinite(Number(left.prefered_ranking)) ? Number(left.prefered_ranking) : 9999;
const rightRank = Number.isFinite(Number(right.prefered_ranking)) ? Number(right.prefered_ranking) : 9999;
if (leftRank !== rightRank) return leftRank - rightRank;
return String(left.name || "").localeCompare(String(right.name || ""));
});
}
function positiveInteger(value, fallback) {
const parsed = Number(value);
return Number.isInteger(parsed) && parsed > 0 ? parsed : fallback;
}
function safeReason(value) {
return redact(String(value || "")).slice(0, 1000);
}
async function upsertEnvLocal(path, updates) { async function upsertEnvLocal(path, updates) {
let text = ""; let text = "";
try { try {
View File
+496
View File
@@ -0,0 +1,496 @@
#!/usr/bin/env node
import { createServer } from "node:http";
import { mkdir, writeFile } from "node:fs/promises";
import { dirname, resolve } from "node:path";
import { env, exit } from "node:process";
const args = parseArgs(process.argv.slice(2));
const host = args.host || env.LANGBOT_FAKE_PROVIDER_HOST || "127.0.0.1";
const port = integer(args.port ?? env.LANGBOT_FAKE_PROVIDER_PORT, 0);
const stateFile = args["state-file"] || env.LANGBOT_FAKE_PROVIDER_STATE_FILE || "";
const modelName = env.LANGBOT_FAKE_PROVIDER_MODEL_NAME || "gpt-4o-mini";
const config = {
response_text: env.LANGBOT_FAKE_PROVIDER_RESPONSE_TEXT || "OK",
first_token_delay_ms: integer(env.LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS, 25),
chunk_delay_ms: integer(env.LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS, 10),
chunk_count: integer(env.LANGBOT_FAKE_PROVIDER_CHUNK_COUNT, 0),
fault_status: integer(env.LANGBOT_FAKE_PROVIDER_FAULT_STATUS, 500),
fail_first_n: integer(env.LANGBOT_FAKE_PROVIDER_FAIL_FIRST_N, 0),
fail_every_n: integer(env.LANGBOT_FAKE_PROVIDER_FAIL_EVERY_N, 0),
fail_after_first_chunk: bool(env.LANGBOT_FAKE_PROVIDER_FAIL_AFTER_FIRST_CHUNK, false),
dynamic_response: !/^(0|false|no|off)$/i.test(env.LANGBOT_FAKE_PROVIDER_DYNAMIC_RESPONSE || ""),
request_log_limit: integer(env.LANGBOT_FAKE_PROVIDER_REQUEST_LOG_LIMIT, 500),
};
let requestCount = 0;
const recentRequests = [];
const server = createServer(async (request, response) => {
const startedAt = Date.now();
const startedPerf = performance.now();
let requestRecord = null;
const url = new URL(request.url || "/", `http://${request.headers.host || `${host}:${port}`}`);
try {
if (request.method === "GET" && url.pathname === "/healthz") {
sendJson(response, 200, {
ok: true,
model: modelName,
config,
request_count: requestCount,
recent_request_count: recentRequests.length,
});
return;
}
if (request.method === "GET" && url.pathname === "/__qa/config") {
sendJson(response, 200, {
ok: true,
model: modelName,
config,
request_count: requestCount,
recent_requests: recentRequests,
});
return;
}
if (request.method === "POST" && url.pathname === "/__qa/config") {
const body = await readJson(request);
applyConfig(body.config && typeof body.config === "object" ? body.config : body);
if (body.reset_request_count !== false) resetRequestState();
sendJson(response, 200, {
ok: true,
model: modelName,
config,
request_count: requestCount,
});
return;
}
if (request.method === "POST" && url.pathname === "/__qa/reset") {
resetRequestState();
sendJson(response, 200, {
ok: true,
model: modelName,
config,
request_count: requestCount,
});
return;
}
if (request.method === "GET" && ["/models", "/v1/models"].includes(url.pathname)) {
sendJson(response, 200, {
object: "list",
data: [
{
id: modelName,
object: "model",
created: 1,
owned_by: "langbot-qa",
type: "llm",
},
],
});
return;
}
if (request.method === "POST" && ["/chat/completions", "/v1/chat/completions"].includes(url.pathname)) {
requestCount += 1;
const body = await readJson(request);
const requestId = `chatcmpl-langbot-fake-${requestCount}`;
const shouldFail = requestCount <= config.fail_first_n
|| (config.fail_every_n > 0 && requestCount % config.fail_every_n === 0);
const replyText = responseTextForBody(body);
requestRecord = recordRequest({
id: requestId,
request_number: requestCount,
path: url.pathname,
stream: Boolean(body.stream),
model: body.model || "",
message_count: Array.isArray(body.messages) ? body.messages.length : 0,
should_fail: shouldFail,
status: "running",
http_status: null,
expected_text: replyText,
response_text_preview: previewText(replyText),
started_at: new Date(startedAt).toISOString(),
started_epoch_ms: startedAt,
configured_first_token_delay_ms: config.first_token_delay_ms,
configured_chunk_delay_ms: config.chunk_delay_ms,
configured_chunk_count: config.chunk_count,
});
if (shouldFail) {
await sleep(config.first_token_delay_ms);
sendJson(response, config.fault_status, {
error: {
message: `LangBot fake provider injected HTTP ${config.fault_status}`,
type: "fake_provider_fault",
code: "fake_provider_fault",
},
});
finishRequestRecord(requestRecord, startedPerf, {
status: "http_fault",
http_status: config.fault_status,
});
return;
}
if (body.stream) {
await streamCompletion(response, {
requestId,
model: body.model || modelName,
content: replyText,
failAfterFirstChunk: config.fail_after_first_chunk,
requestRecord,
startedPerf,
});
} else {
await sleep(config.first_token_delay_ms + config.chunk_delay_ms);
sendJson(response, 200, completionPayload({
requestId,
model: body.model || modelName,
content: replyText,
}));
markRequestTiming(requestRecord, "first_chunk", startedPerf);
markRequestTiming(requestRecord, "first_content_chunk", startedPerf);
requestRecord.content_chunk_count = 1;
finishRequestRecord(requestRecord, startedPerf, {
status: "ok",
http_status: 200,
});
}
return;
}
sendJson(response, 404, {
error: {
message: `No fake provider route for ${request.method} ${url.pathname}`,
type: "not_found",
},
});
} catch (error) {
if (requestRecord) {
finishRequestRecord(requestRecord, startedPerf, {
status: "fake_provider_error",
http_status: 500,
error: error instanceof Error ? error.message : String(error),
});
}
sendJson(response, 500, {
error: {
message: error instanceof Error ? error.message : String(error),
type: "fake_provider_error",
},
});
} finally {
const durationMs = Date.now() - startedAt;
if (url.pathname !== "/healthz") {
console.log(JSON.stringify({
at: new Date().toISOString(),
method: request.method,
path: url.pathname,
duration_ms: durationMs,
}));
}
}
});
server.listen(port, host, async () => {
const address = server.address();
const selectedPort = typeof address === "object" && address ? address.port : port;
const url = `http://${host}:${selectedPort}`;
const state = {
status: "ready",
pid: process.pid,
url,
base_url: `${url}/v1`,
model: modelName,
started_at: new Date().toISOString(),
};
if (stateFile) {
const path = resolve(stateFile);
await mkdir(dirname(path), { recursive: true });
await writeFile(path, `${JSON.stringify(state, null, 2)}\n`, "utf8");
}
console.log(JSON.stringify(state));
});
server.on("error", (error) => {
console.error(JSON.stringify({
status: "error",
reason: error instanceof Error ? error.message : String(error),
}));
exit(1);
});
process.on("SIGTERM", () => {
server.close(() => exit(0));
});
function parseArgs(argv) {
const result = {};
for (const item of argv) {
const match = item.match(/^--([^=]+)(?:=(.*))?$/);
if (!match) continue;
result[match[1]] = match[2] ?? "1";
}
return result;
}
function integer(value, fallback) {
const parsed = Number.parseInt(String(value ?? ""), 10);
return Number.isFinite(parsed) && parsed >= 0 ? parsed : fallback;
}
function bool(value, fallback) {
if (value === undefined || value === "") return fallback;
if (/^(1|true|yes|on)$/i.test(String(value))) return true;
if (/^(0|false|no|off)$/i.test(String(value))) return false;
return fallback;
}
function sleep(ms) {
return new Promise((resolve) => setTimeout(resolve, Math.max(0, ms)));
}
async function readJson(request) {
let text = "";
for await (const chunk of request) text += chunk.toString();
if (!text) return {};
return JSON.parse(text);
}
function sendJson(response, status, payload) {
const text = `${JSON.stringify(payload)}\n`;
response.writeHead(status, {
"content-type": "application/json",
"content-length": Buffer.byteLength(text),
});
response.end(text);
}
function completionPayload({ requestId, model, content }) {
const completionTokens = tokenEstimate(content);
return {
id: requestId,
object: "chat.completion",
created: Math.floor(Date.now() / 1000),
model,
choices: [
{
index: 0,
message: {
role: "assistant",
content,
},
finish_reason: "stop",
},
],
usage: {
prompt_tokens: 8,
completion_tokens: completionTokens,
total_tokens: 8 + completionTokens,
},
};
}
async function streamCompletion(response, {
requestId,
model,
content,
failAfterFirstChunk: failMidStream,
requestRecord,
startedPerf,
}) {
response.writeHead(200, {
"content-type": "text/event-stream; charset=utf-8",
"cache-control": "no-cache",
"connection": "keep-alive",
});
await sleep(config.first_token_delay_ms);
markRequestTiming(requestRecord, "first_chunk", startedPerf);
writeSse(response, {
id: requestId,
object: "chat.completion.chunk",
created: Math.floor(Date.now() / 1000),
model,
choices: [{ index: 0, delta: { role: "assistant" }, finish_reason: null }],
});
const chunks = splitContent(content);
for (let index = 0; index < chunks.length; index += 1) {
await sleep(config.chunk_delay_ms);
if (index === 0) markRequestTiming(requestRecord, "first_content_chunk", startedPerf);
requestRecord.content_chunk_count = (requestRecord.content_chunk_count || 0) + 1;
writeSse(response, {
id: requestId,
object: "chat.completion.chunk",
created: Math.floor(Date.now() / 1000),
model,
choices: [{ index: 0, delta: { content: chunks[index] }, finish_reason: null }],
});
if (failMidStream && index === 0) {
finishRequestRecord(requestRecord, startedPerf, {
status: "mid_stream_disconnect",
http_status: 200,
});
response.destroy(new Error("LangBot fake provider injected mid-stream disconnect"));
return;
}
}
await sleep(config.chunk_delay_ms);
const completionTokens = tokenEstimate(content);
writeSse(response, {
id: requestId,
object: "chat.completion.chunk",
created: Math.floor(Date.now() / 1000),
model,
choices: [{ index: 0, delta: {}, finish_reason: "stop" }],
usage: {
prompt_tokens: 8,
completion_tokens: completionTokens,
total_tokens: 8 + completionTokens,
},
});
response.write("data: [DONE]\n\n");
response.end();
finishRequestRecord(requestRecord, startedPerf, {
status: "ok",
http_status: 200,
});
}
function writeSse(response, payload) {
response.write(`data: ${JSON.stringify(payload)}\n\n`);
}
function splitContent(content) {
const text = String(content);
const requested = config.chunk_count;
if (requested <= 1 || text.length <= 1) return [text];
const chunkSize = Math.max(1, Math.ceil(text.length / requested));
const chunks = [];
for (let index = 0; index < text.length; index += chunkSize) {
chunks.push(text.slice(index, index + chunkSize));
}
return chunks;
}
function tokenEstimate(content) {
return Math.max(1, Math.ceil(String(content || "").length / 4));
}
function responseTextForBody(body) {
if (!config.dynamic_response) {
return config.response_text;
}
const messages = Array.isArray(body.messages) ? body.messages : [];
const lastUser = [...messages].reverse().find((message) => message?.role === "user");
const text = flattenContent(lastUser?.content || "");
const quoted = text.match(/["'“”](.{1,80}?)["'“”]/);
if (quoted?.[1]) return quoted[1].trim();
const exact = text.match(/(?:reply|回复|输出|return)\s+(?:exactly\s+)?([A-Za-z0-9_.:@-]{1,80})/i);
if (exact?.[1]) return exact[1].trim().replace(/[。.!?]+$/, "");
const only = text.match(/只回复\s*([A-Za-z0-9_.:@-]{1,80})/);
if (only?.[1]) return only[1].trim().replace(/[。.!?]+$/, "");
return config.response_text;
}
function flattenContent(content) {
if (typeof content === "string") return content;
if (Array.isArray(content)) {
return content
.map((item) => {
if (typeof item === "string") return item;
if (item && typeof item === "object") return item.text || "";
return "";
})
.join("\n");
}
return "";
}
function recordRequest(entry) {
const item = {
...entry,
at: new Date().toISOString(),
finished_at: null,
finished_epoch_ms: null,
duration_ms: null,
first_chunk_at: null,
first_chunk_epoch_ms: null,
first_chunk_ms: null,
first_content_chunk_at: null,
first_content_chunk_epoch_ms: null,
first_content_chunk_ms: null,
content_chunk_count: 0,
};
recentRequests.push(item);
while (recentRequests.length > config.request_log_limit) recentRequests.shift();
return item;
}
function markRequestTiming(entry, key, startedPerf) {
if (!entry || entry[`${key}_at`]) return;
const now = Date.now();
entry[`${key}_at`] = new Date(now).toISOString();
entry[`${key}_epoch_ms`] = now;
entry[`${key}_ms`] = rounded(performance.now() - startedPerf);
}
function finishRequestRecord(entry, startedPerf, updates = {}) {
if (!entry || entry.finished_at) return;
const now = Date.now();
Object.assign(entry, updates);
entry.finished_at = new Date(now).toISOString();
entry.finished_epoch_ms = now;
entry.duration_ms = rounded(performance.now() - startedPerf);
}
function rounded(value) {
return Number(value.toFixed(3));
}
function previewText(value) {
return String(value || "").slice(0, 120);
}
function resetRequestState() {
requestCount = 0;
recentRequests.length = 0;
}
function applyConfig(updates) {
if (!updates || typeof updates !== "object") return;
assignString(updates, "response_text");
assignNonNegativeInteger(updates, "first_token_delay_ms");
assignNonNegativeInteger(updates, "chunk_delay_ms");
assignNonNegativeInteger(updates, "chunk_count");
assignNonNegativeInteger(updates, "fail_first_n");
assignNonNegativeInteger(updates, "fail_every_n");
assignNonNegativeInteger(updates, "request_log_limit");
if (updates.fault_status !== undefined) {
const parsed = Number.parseInt(String(updates.fault_status), 10);
if (Number.isInteger(parsed) && parsed >= 400 && parsed <= 599) config.fault_status = parsed;
}
assignBoolean(updates, "fail_after_first_chunk");
assignBoolean(updates, "dynamic_response");
}
function assignString(updates, key) {
if (updates[key] !== undefined) config[key] = String(updates[key]);
}
function assignNonNegativeInteger(updates, key) {
if (updates[key] === undefined) return;
const parsed = Number.parseInt(String(updates[key]), 10);
if (Number.isInteger(parsed) && parsed >= 0) config[key] = parsed;
}
function assignBoolean(updates, key) {
if (updates[key] === undefined) return;
config[key] = bool(updates[key], config[key]);
}
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+2 -1
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@@ -72,6 +72,7 @@ export async function writeResult(paths, result) {
} }
export async function loadEnvFiles(paths = ["skills/.env", "skills/.env.local"]) { export async function loadEnvFiles(paths = ["skills/.env", "skills/.env.local"]) {
const processEnvKeys = new Set(Object.keys(env));
for (const path of paths) { for (const path of paths) {
let text = ""; let text = "";
try { try {
@@ -86,7 +87,7 @@ export async function loadEnvFiles(paths = ["skills/.env", "skills/.env.local"])
if (equals <= 0) continue; if (equals <= 0) continue;
const key = trimmed.slice(0, equals).trim(); const key = trimmed.slice(0, equals).trim();
const value = trimmed.slice(equals + 1).trim().replace(/^["']|["']$/g, ""); const value = trimmed.slice(equals + 1).trim().replace(/^["']|["']$/g, "");
if (!(key in env)) env[key] = value; if (!processEnvKeys.has(key)) env[key] = value;
} }
} }
} }
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+79 -1
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@@ -54,6 +54,7 @@ const debugChatSessionType = env.LANGBOT_E2E_DEBUG_CHAT_SESSION_TYPE || "person"
const pipelineConfigDiagnosticPath = resolve(paths.evidenceDir, "pipeline-config-diagnostic.json"); const pipelineConfigDiagnosticPath = resolve(paths.evidenceDir, "pipeline-config-diagnostic.json");
const debugChatResetDiagnosticPath = resolve(paths.evidenceDir, "debug-chat-reset-diagnostic.json"); const debugChatResetDiagnosticPath = resolve(paths.evidenceDir, "debug-chat-reset-diagnostic.json");
const pipelineConfigRestoreDiagnosticPath = resolve(paths.evidenceDir, "pipeline-config-restore-diagnostic.json"); const pipelineConfigRestoreDiagnosticPath = resolve(paths.evidenceDir, "pipeline-config-restore-diagnostic.json");
const metricsPath = resolve(paths.evidenceDir, "metrics.json");
const startedAt = new Date(); const startedAt = new Date();
let browser; let browser;
@@ -80,10 +81,11 @@ let result = {
console_log: paths.consoleLog, console_log: paths.consoleLog,
network_log: paths.networkLog, network_log: paths.networkLog,
screenshot: paths.screenshot, screenshot: paths.screenshot,
metrics_json: metricsPath,
automation_result_json: paths.automationResultJson, automation_result_json: paths.automationResultJson,
result_json: paths.resultJson, result_json: paths.resultJson,
}, },
evidence_collected: ["ui", "screenshot", "console", "network"], evidence_collected: ["ui", "screenshot", "console", "network", "metrics"],
}; };
function boolFromEnv(value, defaultValue) { function boolFromEnv(value, defaultValue) {
@@ -103,6 +105,29 @@ function parseJsonEnv(key, fallback) {
} }
} }
function positiveNumberEnv(key, fallback) {
const value = Number(env[key] || "");
return Number.isFinite(value) && value >= 0 ? value : fallback;
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return Number(sorted[index].toFixed(3));
}
function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: Number(Math.min(...values).toFixed(3)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: Number(Math.max(...values).toFixed(3)),
};
}
function promptStepsFromEnv() { function promptStepsFromEnv() {
const rawSteps = parseJsonEnv("LANGBOT_E2E_PROMPTS_JSON", null); const rawSteps = parseJsonEnv("LANGBOT_E2E_PROMPTS_JSON", null);
if (rawSteps === null) { if (rawSteps === null) {
@@ -658,6 +683,7 @@ try {
} else { } else {
for (let index = 0; index < promptSteps.length; index += 1) { for (let index = 0; index < promptSteps.length; index += 1) {
const step = promptSteps[index]; const step = promptSteps[index];
const promptStartedAt = Date.now();
const chatResult = await runDebugChatPrompt(page, { const chatResult = await runDebugChatPrompt(page, {
prompt: step.prompt, prompt: step.prompt,
expectedText: step.expectedText, expectedText: step.expectedText,
@@ -665,11 +691,13 @@ try {
imagePath: index === 0 ? imagePath : "", imagePath: index === 0 ? imagePath : "",
failureSignals: failureSignals.length > 0 ? failureSignals : undefined, failureSignals: failureSignals.length > 0 ? failureSignals : undefined,
}); });
const promptDurationMs = Date.now() - promptStartedAt;
result.chat_results.push({ result.chat_results.push({
index, index,
expected_text: step.expectedText, expected_text: step.expectedText,
status: chatResult.status, status: chatResult.status,
reason: chatResult.reason, reason: chatResult.reason,
response_duration_ms: promptDurationMs,
min_expected_count: chatResult.min_expected_count, min_expected_count: chatResult.min_expected_count,
final_count: chatResult.final_count, final_count: chatResult.final_count,
before_assistant_expected_count: chatResult.before_assistant_expected_count, before_assistant_expected_count: chatResult.before_assistant_expected_count,
@@ -714,6 +742,56 @@ try {
const finishedAt = new Date(); const finishedAt = new Date();
result.finished_at = finishedAt.toISOString(); result.finished_at = finishedAt.toISOString();
result.finished_at_local = localIsoWithOffset(finishedAt); result.finished_at_local = localIsoWithOffset(finishedAt);
result.duration_ms = finishedAt.getTime() - startedAt.getTime();
const responseDurations = result.chat_results
.map((item) => item.response_duration_ms)
.filter((value) => Number.isFinite(value));
const passedPrompts = result.chat_results.filter((item) => item.status === "pass").length;
const attemptedPrompts = result.chat_results.length;
const errorRate = attemptedPrompts === 0 ? 1 : Number(((attemptedPrompts - passedPrompts) / attemptedPrompts).toFixed(4));
const responseStats = stats(responseDurations);
const responseP95BudgetMs = positiveNumberEnv(
"LANGBOT_E2E_DEBUG_CHAT_RESPONSE_P95_MS",
positiveNumberEnv("LANGBOT_DEBUG_CHAT_RESPONSE_P95_MS", safeResponseTimeoutMs),
);
const maxErrorRate = positiveNumberEnv("LANGBOT_E2E_DEBUG_CHAT_MAX_ERROR_RATE", 0);
const metrics = {
probe: caseId,
url: result.url,
prompt_count: result.prompt_count,
attempted_prompt_count: attemptedPrompts,
passed_prompt_count: passedPrompts,
error_rate: errorRate,
response_duration_ms: responseStats,
total_duration_ms: result.duration_ms,
chat_results: result.chat_results,
};
result.metrics_summary = {
prompt_count: metrics.prompt_count,
attempted_prompt_count: metrics.attempted_prompt_count,
passed_prompt_count: metrics.passed_prompt_count,
error_rate: metrics.error_rate,
response_p50_ms: metrics.response_duration_ms.p50,
response_p95_ms: metrics.response_duration_ms.p95,
total_duration_ms: metrics.total_duration_ms,
};
result.thresholds_summary = {
response_p95_ms: {
actual: metrics.response_duration_ms.p95,
max: responseP95BudgetMs,
pass: attemptedPrompts > 0 && metrics.response_duration_ms.p95 <= responseP95BudgetMs,
},
error_rate: {
actual: metrics.error_rate,
max: maxErrorRate,
pass: metrics.error_rate <= maxErrorRate,
},
};
await writeFile(metricsPath, `${JSON.stringify(metrics, null, 2)}\n`, "utf8");
if (result.status === "pass" && !Object.values(result.thresholds_summary).every((item) => item.pass)) {
result.status = "fail";
result.reason = "Debug Chat performance breached response latency or error-rate thresholds.";
}
const existingEvidence = {}; const existingEvidence = {};
for (const [key, value] of Object.entries(result.evidence)) { for (const [key, value] of Object.entries(result.evidence)) {
if (typeof value !== "string") continue; if (typeof value !== "string") continue;
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+476
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@@ -130,6 +130,7 @@
"references/local-agent-runner.md", "references/local-agent-runner.md",
"references/mcp-stdio-testing.md", "references/mcp-stdio-testing.md",
"references/model-provider-testing.md", "references/model-provider-testing.md",
"references/performance-reliability-testing.md",
"references/pipeline-debug-chat.md", "references/pipeline-debug-chat.md",
"references/plugin-e2e-smoke.md", "references/plugin-e2e-smoke.md",
"references/sandbox-skill-authoring.md", "references/sandbox-skill-authoring.md",
@@ -150,6 +151,16 @@
"agent-runner-release-preflight", "agent-runner-release-preflight",
"agent-runner-runtime-chaos", "agent-runner-runtime-chaos",
"dify-agent-debug-chat", "dify-agent-debug-chat",
"langbot-fake-provider-debug-chat-cross-pipeline-isolation",
"langbot-fake-provider-debug-chat-fault-recovery",
"langbot-fake-provider-debug-chat-load",
"langbot-fake-provider-debug-chat-slow-load",
"langbot-fault-taxonomy-contract",
"langbot-live-backend-latency",
"langbot-live-backend-log-health",
"langbot-live-control-plane-api",
"langbot-overhead-accounting-contract",
"langbot-space-debug-chat-concurrency-smoke",
"langrag-kb-retrieve", "langrag-kb-retrieve",
"langrag-parser-golden-e2e", "langrag-parser-golden-e2e",
"langrag-sentinel-kb-discover", "langrag-sentinel-kb-discover",
@@ -165,6 +176,7 @@
"mcp-stdio-register", "mcp-stdio-register",
"mcp-stdio-tool-call", "mcp-stdio-tool-call",
"pipeline-debug-chat", "pipeline-debug-chat",
"pipeline-debug-chat-performance",
"plugin-e2e-smoke", "plugin-e2e-smoke",
"provider-deepseek", "provider-deepseek",
"qa-plugin-smoke-live-install", "qa-plugin-smoke-live-install",
@@ -486,6 +498,316 @@
"backend_log" "backend_log"
] ]
}, },
{
"id": "langbot-fake-provider-debug-chat-cross-pipeline-isolation",
"title": "LangBot Debug Chat fake-provider cross-pipeline isolation probe",
"mode": "probe",
"area": "reliability",
"type": "reliability",
"priority": "p1",
"risk": "high",
"ci_eligible": false,
"tags": [
"reliability",
"debug-chat",
"websocket",
"fake-provider",
"isolation",
"concurrency",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-debug-chat-cross-pipeline-isolation.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-fake-provider-cross-pipelines.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_FAKE_PROVIDER_URL",
"LANGBOT_FAKE_PROVIDER_BASE_URL",
"LANGBOT_FAKE_PROVIDER_PID",
"LANGBOT_FAKE_PROVIDER_PIPELINE_A_URL",
"LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME",
"LANGBOT_FAKE_PROVIDER_PIPELINE_B_URL",
"LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME"
],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-fake-provider-debug-chat-fault-recovery",
"title": "LangBot Debug Chat fake-provider fault recovery probe",
"mode": "probe",
"area": "reliability",
"type": "chaos",
"priority": "p1",
"risk": "high",
"ci_eligible": false,
"tags": [
"reliability",
"chaos",
"debug-chat",
"websocket",
"fake-provider",
"fault-injection",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_FAKE_PROVIDER_URL",
"LANGBOT_FAKE_PROVIDER_BASE_URL",
"LANGBOT_FAKE_PROVIDER_PID",
"LANGBOT_FAKE_PROVIDER_PROVIDER_UUID",
"LANGBOT_FAKE_PROVIDER_MODEL_UUID",
"LANGBOT_FAKE_PROVIDER_PIPELINE_URL",
"LANGBOT_FAKE_PROVIDER_PIPELINE_NAME"
],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-fake-provider-debug-chat-load",
"title": "LangBot Debug Chat controlled fake-provider load probe",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"performance",
"debug-chat",
"websocket",
"fake-provider",
"load",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_FAKE_PROVIDER_URL",
"LANGBOT_FAKE_PROVIDER_BASE_URL",
"LANGBOT_FAKE_PROVIDER_PID",
"LANGBOT_FAKE_PROVIDER_PROVIDER_UUID",
"LANGBOT_FAKE_PROVIDER_MODEL_UUID",
"LANGBOT_FAKE_PROVIDER_PIPELINE_URL",
"LANGBOT_FAKE_PROVIDER_PIPELINE_NAME"
],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-fake-provider-debug-chat-slow-load",
"title": "LangBot Debug Chat slow fake-provider load probe",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"performance",
"debug-chat",
"websocket",
"fake-provider",
"slow-provider",
"load",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_FAKE_PROVIDER_URL",
"LANGBOT_FAKE_PROVIDER_BASE_URL",
"LANGBOT_FAKE_PROVIDER_PID",
"LANGBOT_FAKE_PROVIDER_PROVIDER_UUID",
"LANGBOT_FAKE_PROVIDER_MODEL_UUID",
"LANGBOT_FAKE_PROVIDER_PIPELINE_URL",
"LANGBOT_FAKE_PROVIDER_PIPELINE_NAME"
],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-fault-taxonomy-contract",
"title": "LangBot fault taxonomy and cleanup contract",
"mode": "probe",
"area": "reliability",
"type": "chaos",
"priority": "p1",
"risk": "medium",
"ci_eligible": true,
"tags": [
"reliability",
"chaos",
"contract",
"synthetic"
],
"automation": "skills/langbot-testing/probes/langbot-fault-taxonomy-contract.mjs",
"setup_automation": [],
"setup_provides_env": [],
"evidence_required": [
"metrics",
"filesystem"
]
},
{
"id": "langbot-live-backend-latency",
"title": "LangBot live backend basic latency probe",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"performance",
"live-backend",
"latency",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-live-backend-latency.mjs",
"setup_automation": [],
"setup_provides_env": [],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-live-backend-log-health",
"title": "LangBot live backend log health probe",
"mode": "probe",
"area": "reliability",
"type": "reliability",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"reliability",
"live-backend",
"backend-log",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-live-backend-log-health.mjs",
"setup_automation": [],
"setup_provides_env": [],
"evidence_required": [
"metrics",
"backend_log",
"filesystem"
]
},
{
"id": "langbot-live-control-plane-api",
"title": "LangBot live control-plane API probe",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"performance",
"reliability",
"live-backend",
"control-plane",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-live-control-plane-api.mjs",
"setup_automation": [],
"setup_provides_env": [],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{
"id": "langbot-overhead-accounting-contract",
"title": "LangBot overhead accounting metrics contract",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": true,
"tags": [
"performance",
"metrics",
"contract",
"synthetic"
],
"automation": "skills/langbot-testing/probes/langbot-overhead-accounting-contract.mjs",
"setup_automation": [],
"setup_provides_env": [],
"evidence_required": [
"metrics",
"resource_log",
"filesystem"
]
},
{
"id": "langbot-space-debug-chat-concurrency-smoke",
"title": "LangBot Debug Chat real Space-provider concurrency smoke",
"mode": "probe",
"area": "performance",
"type": "performance",
"priority": "p1",
"risk": "high",
"ci_eligible": false,
"tags": [
"performance",
"debug-chat",
"websocket",
"space",
"live-provider",
"smoke",
"metrics"
],
"automation": "skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-local-agent-pipeline.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_PIPELINE_URL",
"LANGBOT_PIPELINE_NAME",
"LANGBOT_LOCAL_AGENT_PIPELINE_URL",
"LANGBOT_LOCAL_AGENT_PIPELINE_NAME",
"LANGBOT_LOCAL_AGENT_MODEL_UUID",
"LANGBOT_E2E_MODEL_UUID"
],
"evidence_required": [
"metrics",
"network",
"api_diagnostic",
"filesystem"
]
},
{ {
"id": "langrag-kb-retrieve", "id": "langrag-kb-retrieve",
"title": "LangRAG knowledge base ingests and retrieves a sentinel document", "title": "LangRAG knowledge base ingests and retrieves a sentinel document",
@@ -911,6 +1233,38 @@
"backend_log" "backend_log"
] ]
}, },
{
"id": "pipeline-debug-chat-performance",
"title": "Pipeline Debug Chat user-path performance probe",
"mode": "agent-browser",
"area": "pipeline",
"type": "performance",
"priority": "p1",
"risk": "medium",
"ci_eligible": false,
"tags": [
"performance",
"pipeline",
"debug-chat",
"user-path",
"metrics"
],
"automation": "scripts/e2e/pipeline-debug-chat.mjs",
"setup_automation": [
"node:scripts/e2e/ensure-local-agent-pipeline.mjs --write-env"
],
"setup_provides_env": [
"LANGBOT_PIPELINE_URL",
"LANGBOT_PIPELINE_NAME"
],
"evidence_required": [
"ui",
"screenshot",
"console",
"network",
"metrics"
]
},
{ {
"id": "plugin-e2e-smoke", "id": "plugin-e2e-smoke",
"title": "Plugin system installs a local plugin and exposes tool/page APIs", "title": "Plugin system installs a local plugin and exposes tool/page APIs",
@@ -1059,6 +1413,12 @@
"suites": [ "suites": [
"agent-runner-release-gate", "agent-runner-release-gate",
"core-smoke", "core-smoke",
"langbot-debug-chat-isolation-gate",
"langbot-debug-chat-load-gate",
"langbot-live-backend-gate",
"langbot-performance-contract-gate",
"langbot-performance-reliability-gate",
"langbot-user-path-performance-gate",
"local-agent-gate" "local-agent-gate"
], ],
"suite_summaries": [ "suite_summaries": [
@@ -1121,6 +1481,113 @@
"local-agent-basic-debug-chat" "local-agent-basic-debug-chat"
] ]
}, },
{
"id": "langbot-debug-chat-isolation-gate",
"title": "LangBot Debug Chat isolation gate",
"description": "Manual/non-required cross-pipeline Debug Chat isolation gate. Current releases may fail this gate because of product bug #2286; use it as regression evidence after the routing fix lands.",
"type": "reliability",
"priority": "p1",
"tags": [
"reliability",
"debug-chat",
"websocket",
"isolation",
"concurrency"
],
"cases": [
"langbot-fake-provider-debug-chat-cross-pipeline-isolation"
]
},
{
"id": "langbot-debug-chat-load-gate",
"title": "LangBot Debug Chat load gate",
"description": "Manual/non-required message-path load checks for Pipeline Debug Chat: controlled fake-provider baseline, slow-provider and fault-recovery profiles, plus optional real Space-provider smoke. Cross-pipeline isolation is split into langbot-debug-chat-isolation-gate because current releases may fail it due to product bug #2286.",
"type": "performance",
"priority": "p1",
"tags": [
"performance",
"debug-chat",
"websocket",
"load"
],
"cases": [
"langbot-fake-provider-debug-chat-load",
"langbot-fake-provider-debug-chat-slow-load",
"langbot-fake-provider-debug-chat-fault-recovery",
"langbot-space-debug-chat-concurrency-smoke"
]
},
{
"id": "langbot-live-backend-gate",
"title": "LangBot live backend reliability gate",
"description": "Live backend control-plane responsiveness and runtime log health checks for a locally running LangBot instance.",
"type": "reliability",
"priority": "p1",
"tags": [
"performance",
"reliability",
"live-backend",
"metrics"
],
"cases": [
"langbot-live-backend-latency",
"langbot-live-control-plane-api",
"langbot-live-backend-log-health"
]
},
{
"id": "langbot-performance-contract-gate",
"title": "LangBot performance contract gate",
"description": "Fast synthetic contract checks for performance metric accounting and non-destructive reliability fault taxonomy.",
"type": "contract",
"priority": "p1",
"tags": [
"performance",
"reliability",
"contract",
"metrics"
],
"cases": [
"langbot-overhead-accounting-contract",
"langbot-fault-taxonomy-contract"
]
},
{
"id": "langbot-performance-reliability-gate",
"title": "LangBot performance and reliability starter gate",
"description": "Starter gate for LangBot performance accounting, live backend control-plane latency, and non-destructive fault taxonomy checks.",
"type": "reliability",
"priority": "p1",
"tags": [
"performance",
"reliability",
"metrics",
"chaos"
],
"cases": [
"langbot-overhead-accounting-contract",
"langbot-fault-taxonomy-contract",
"langbot-live-backend-latency",
"langbot-live-control-plane-api",
"langbot-live-backend-log-health"
]
},
{
"id": "langbot-user-path-performance-gate",
"title": "LangBot user-path performance gate",
"description": "Browser-visible performance checks for user-facing LangBot paths such as Pipeline Debug Chat.",
"type": "performance",
"priority": "p1",
"tags": [
"performance",
"browser",
"debug-chat",
"user-path"
],
"cases": [
"pipeline-debug-chat-performance"
]
},
{ {
"id": "local-agent-gate", "id": "local-agent-gate",
"title": "Local Agent runner regression gate", "title": "Local Agent runner regression gate",
@@ -1265,6 +1732,7 @@
"sandbox-native-tools-unavailable", "sandbox-native-tools-unavailable",
"socks-proxy-without-socksio", "socks-proxy-without-socksio",
"survey-widget-blocks-debug-chat", "survey-widget-blocks-debug-chat",
"telemetry-proxy-noise",
"tool-name-collision-between-mcp-and-plugin", "tool-name-collision-between-mcp-and-plugin",
"uv-run-resyncs-local-sdk" "uv-run-resyncs-local-sdk"
], ],
@@ -1449,6 +1917,14 @@
"mcp-stdio-tool-call" "mcp-stdio-tool-call"
] ]
}, },
{
"id": "telemetry-proxy-noise",
"title": "Telemetry posting fails through the proxy while the target flow succeeds",
"category": "env_issue",
"related_cases": [
"langbot-space-debug-chat-concurrency-smoke"
]
},
{ {
"id": "tool-name-collision-between-mcp-and-plugin", "id": "tool-name-collision-between-mcp-and-plugin",
"title": "MCP and plugin expose the same tool name", "title": "MCP and plugin expose the same tool name",
+17
View File
@@ -26,6 +26,23 @@ LANGBOT_NO_PROXY=localhost,127.0.0.1,::1
LANGBOT_PIPELINE_URL= LANGBOT_PIPELINE_URL=
LANGBOT_PIPELINE_NAME= LANGBOT_PIPELINE_NAME=
# Optional fake OpenAI-compatible provider controls for Debug Chat load tests.
# Leave URL empty to let setup automation start a local provider and write the
# selected URL to skills/.env.local.
LANGBOT_FAKE_PROVIDER_URL=
LANGBOT_FAKE_PROVIDER_HOST=127.0.0.1
LANGBOT_FAKE_PROVIDER_PORT=
LANGBOT_FAKE_PROVIDER_MODEL_NAME=gpt-4o-mini
LANGBOT_FAKE_PROVIDER_RESPONSE_TEXT=OK
LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS=25
LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS=10
LANGBOT_FAKE_PROVIDER_CHUNK_COUNT=0
LANGBOT_FAKE_PROVIDER_FAIL_FIRST_N=0
LANGBOT_FAKE_PROVIDER_FAIL_EVERY_N=0
LANGBOT_FAKE_PROVIDER_FAULT_STATUS=500
LANGBOT_FAKE_PROVIDER_FAIL_AFTER_FIRST_CHUNK=false
LANGBOT_FAKE_PROVIDER_DYNAMIC_RESPONSE=true
# Optional case-specific runner targets. Prefer these for runner-specific cases # Optional case-specific runner targets. Prefer these for runner-specific cases
# so the automation cannot silently test the wrong runner. # so the automation cannot silently test the wrong runner.
LANGBOT_LOCAL_AGENT_PIPELINE_URL= LANGBOT_LOCAL_AGENT_PIPELINE_URL=
@@ -53,7 +53,7 @@ Start the new frontend from the web repo:
```bash ```bash
cd "$LANGBOT_WEB_REPO" cd "$LANGBOT_WEB_REPO"
npm run dev VITE_API_BASE_URL="$LANGBOT_BACKEND_URL" pnpm dev --host 0.0.0.0
``` ```
Healthy startup includes: Healthy startup includes:
@@ -68,6 +68,10 @@ Quick check:
curl -I --max-time 3 "$LANGBOT_FRONTEND_URL" curl -I --max-time 3 "$LANGBOT_FRONTEND_URL"
``` ```
If `VITE_API_BASE_URL` is missing, Vite still serves the page but frontend API
calls may go to the frontend port instead of the backend port. That produces
false browser failures in login, wizard, pipeline, and Debug Chat cases.
## Completion Signal ## Completion Signal
Environment setup is not complete until the required frontend/backend URLs are reachable and the chosen browser-control path can open the WebUI. Environment setup is not complete until the required frontend/backend URLs are reachable and the chosen browser-control path can open the WebUI.
+3
View File
@@ -21,6 +21,7 @@ Use this skill when an agent needs to verify LangBot behavior through the WebUI
- **Sandbox-backed skill authoring**: read `references/sandbox-skill-authoring.md`. - **Sandbox-backed skill authoring**: read `references/sandbox-skill-authoring.md`.
- **LangRAG knowledge bases**: read `references/langrag-knowledge-base.md`. - **LangRAG knowledge bases**: read `references/langrag-knowledge-base.md`.
- **MCP stdio tool testing**: read `references/mcp-stdio-testing.md`. - **MCP stdio tool testing**: read `references/mcp-stdio-testing.md`.
- **Performance, reliability, or chaos probes**: read `references/performance-reliability-testing.md`.
- **Drive a live instance over MCP (not raw HTTP)**: use the `langbot-mcp-ops` skill — the instance exposes an MCP server at `http://<host>:5300/mcp` (reuses API keys). Useful for setting up bots/pipelines/models as test fixtures programmatically. - **Drive a live instance over MCP (not raw HTTP)**: use the `langbot-mcp-ops` skill — the instance exposes an MCP server at `http://<host>:5300/mcp` (reuses API keys). Useful for setting up bots/pipelines/models as test fixtures programmatically.
- **Known failures and fixes**: read `references/troubleshooting.md`. - **Known failures and fixes**: read `references/troubleshooting.md`.
- **Reusable test groups**: run `bin/lbs suite list` and `bin/lbs suite plan <suite-id>` before manually assembling a case set. - **Reusable test groups**: run `bin/lbs suite list` and `bin/lbs suite plan <suite-id>` before manually assembling a case set.
@@ -36,6 +37,8 @@ Use this skill when an agent needs to verify LangBot behavior through the WebUI
- Use an authenticated browser profile prepared by `langbot-env-setup`. - Use an authenticated browser profile prepared by `langbot-env-setup`.
- Do not expose API keys, OAuth secrets, tokens, or localStorage token values in output. - Do not expose API keys, OAuth secrets, tokens, or localStorage token values in output.
- A WebUI test is not complete until the visible UI result is checked against backend logs or network behavior. - A WebUI test is not complete until the visible UI result is checked against backend logs or network behavior.
- A performance result is not complete without `metrics` evidence and a clear split between LangBot overhead and external provider/tool/network time.
- A chaos or reliability result is not complete until the fault scope, cleanup, and recovery checks are recorded.
- For a suite, use `bin/lbs suite start <suite-id>` to create the suite evidence root, per-case directories, and `suite-start.json`/`suite-start.md` handoff files; use `bin/lbs test result <case-id>` to write final per-case `result.json`, then run `bin/lbs suite report <suite-id> --evidence-dir <dir>`. - For a suite, use `bin/lbs suite start <suite-id>` to create the suite evidence root, per-case directories, and `suite-start.json`/`suite-start.md` handoff files; use `bin/lbs test result <case-id>` to write final per-case `result.json`, then run `bin/lbs suite report <suite-id> --evidence-dir <dir>`.
- Do not mark a case `pass` until `test result --evidence` covers every value in the case's `evidence_required`. - Do not mark a case `pass` until `test result --evidence` covers every value in the case's `evidence_required`.
- For runner-specific Debug Chat cases, use the case-specific pipeline env declared by `automation_pipeline_url_env` / `automation_pipeline_name_env`; do not silently reuse a generic `LANGBOT_PIPELINE_URL`. - For runner-specific Debug Chat cases, use the case-specific pipeline env declared by `automation_pipeline_url_env` / `automation_pipeline_name_env`; do not silently reuse a generic `LANGBOT_PIPELINE_URL`.
@@ -0,0 +1,84 @@
id: langbot-fake-provider-debug-chat-cross-pipeline-isolation
title: "LangBot Debug Chat fake-provider cross-pipeline isolation probe"
mode: probe
area: reliability
type: reliability
priority: p1
risk: high
ci_eligible: false
tags:
- reliability
- debug-chat
- websocket
- fake-provider
- isolation
- concurrency
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_BACKEND_URL
- LANGBOT_FRONTEND_URL
- LANGBOT_E2E_LOGIN_USER
automation: skills/langbot-testing/probes/langbot-debug-chat-cross-pipeline-isolation.mjs
automation_env:
- LANGBOT_BACKEND_URL
- LANGBOT_E2E_LOGIN_USER
- LANGBOT_FAKE_PROVIDER_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_A_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME
- LANGBOT_FAKE_PROVIDER_PIPELINE_B_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME
automation_debug_chat_load_requests: "6"
automation_debug_chat_load_concurrency: "4"
automation_debug_chat_load_timeout_ms: "30000"
automation_debug_chat_load_response_p95_ms: "5000"
automation_debug_chat_load_max_error_rate: "0"
automation_debug_chat_load_prompt_template: '请只回复 "{expected}",不要解释,不要添加其他字符。'
automation_debug_chat_load_stream: "true"
automation_debug_chat_load_reset: "true"
metrics_thresholds_json: '{"cross_pipeline_leak_count":{"max":0},"response_p95_ms":{"max":5000},"error_rate":{"max":0}}'
load_profile_json: '{"requests_per_pipeline":6,"pipelines":2,"concurrency":4,"path":"Pipeline Debug Chat WebSocket","provider":"controlled fake OpenAI-compatible provider","metric":"cross-pipeline response isolation and send-to-final-assistant-response"}'
setup_automation:
- "node:scripts/e2e/ensure-fake-provider-cross-pipelines.mjs --write-env"
setup_provides_env:
- LANGBOT_FAKE_PROVIDER_URL
- LANGBOT_FAKE_PROVIDER_BASE_URL
- LANGBOT_FAKE_PROVIDER_PID
- LANGBOT_FAKE_PROVIDER_PIPELINE_A_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME
- LANGBOT_FAKE_PROVIDER_PIPELINE_B_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME
steps:
- "Start or reuse the local fake OpenAI-compatible provider."
- "Create or update two local-agent pipelines that both point at the controlled fake provider."
- "Reset both Debug Chat sessions and the fake-provider request log."
- "Open concurrent WebSocket Debug Chat connections to both pipelines and send unique pipeline-scoped response tokens."
checks:
- "automation-result.json status is pass only when every request receives its own expected token and cross_pipeline_leak_count is zero."
- "metrics_summary includes by_pipeline status counts, fake-provider request count, and LangBot/provider timing estimates."
- "samples.json contains per-request pipeline labels so any leak can be attributed to the receiving pipeline."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe targets Debug Chat isolation under concurrent traffic from two pipelines."
- "It is designed to expose regressions where global pipeline state causes one pipeline's assistant response to be delivered to another pipeline's Debug Chat session."
- "Same-pipeline foreign responses are tolerated because Debug Chat intentionally broadcasts within the same pipeline/session; cross-pipeline tokens are never tolerated."
- "Known product bug: current releases may fail this probe because Debug Chat replies can read singleton WebSocket proxy pipeline state after another pipeline overwrites it. See https://github.com/langbot-app/LangBot/issues/2286."
expected_failures:
- "https://github.com/langbot-app/LangBot/issues/2286"
success_patterns:
- "Debug Chat cross-pipeline isolation probe passed"
failure_patterns:
- "cross_pipeline_leak"
- "Timed out after"
- "WebSocket connection error"
- "Final assistant response did not include"
troubleshooting:
- backend-not-listening
- debug-chat-history-contaminates-automation
- local-agent-model-route-unavailable
@@ -0,0 +1,95 @@
id: langbot-fake-provider-debug-chat-fault-recovery
title: "LangBot Debug Chat fake-provider fault recovery probe"
mode: probe
area: reliability
type: chaos
priority: p1
risk: high
ci_eligible: false
tags:
- reliability
- chaos
- debug-chat
- websocket
- fake-provider
- fault-injection
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_BACKEND_URL
- LANGBOT_FRONTEND_URL
- LANGBOT_E2E_LOGIN_USER
automation: skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs
automation_env:
- LANGBOT_BACKEND_URL
- LANGBOT_E2E_LOGIN_USER
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_pipeline_url_env: LANGBOT_FAKE_PROVIDER_PIPELINE_URL
automation_pipeline_name_env: LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_debug_chat_load_requests: "6"
automation_debug_chat_load_concurrency: "1"
automation_debug_chat_load_timeout_ms: "15000"
automation_debug_chat_load_response_p95_ms: "5000"
automation_debug_chat_load_max_error_rate: "0"
automation_debug_chat_load_min_ok_count: "6"
automation_debug_chat_load_min_provider_fault_count: "2"
automation_debug_chat_load_expected_prefix: "FAULTQA"
automation_debug_chat_load_prompt_template: '请只回复 "{expected}",不要解释,不要添加其他字符。'
automation_debug_chat_load_stream: "true"
automation_debug_chat_load_reset: "true"
automation_debug_chat_load_fail_on_final_mismatch: "true"
automation_fake_provider_first_token_delay_ms: "25"
automation_fake_provider_chunk_delay_ms: "10"
automation_fake_provider_chunk_count: "0"
automation_fake_provider_fail_first_n: "2"
automation_fake_provider_fail_every_n: "0"
automation_fake_provider_fault_status: "503"
metrics_thresholds_json: '{"response_p95_ms":{"max":5000},"error_rate":{"max":0},"ok_count_min":{"min":6},"fake_provider_fault_count_min":{"min":2}}'
fault_model_json: '{"provider_fault":"HTTP 503 for first 2 fake-provider chat completions after reset","expected_behavior":"LangBot retries or otherwise recovers from bounded provider failures so every Debug Chat request receives its expected response without backend crash."}'
load_profile_json: '{"requests":6,"concurrency":1,"path":"Pipeline Debug Chat WebSocket","provider":"controlled fake OpenAI-compatible provider","classification":"fault-recovery-not-throughput-benchmark"}'
setup_automation:
- "node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
setup_provides_env:
- LANGBOT_FAKE_PROVIDER_URL
- LANGBOT_FAKE_PROVIDER_BASE_URL
- LANGBOT_FAKE_PROVIDER_PID
- LANGBOT_FAKE_PROVIDER_PROVIDER_UUID
- LANGBOT_FAKE_PROVIDER_MODEL_UUID
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
steps:
- "Configure the local fake provider to return HTTP 503 for the first two chat completions after reset."
- "Create or update the LangBot provider, model, and local-agent pipeline that points at the fake provider."
- "Reset the target Debug Chat session and fake-provider request counter."
- "Send a sequential Debug Chat batch and verify later requests recover after the injected provider faults."
checks:
- "automation-result.json status is pass when the fake provider records at least two injected faults, every Debug Chat request succeeds, and total user-visible error rate stays at zero."
- "metrics_summary includes fake_provider_fault_count and status_counts for the same run window."
- "backend logs show request handling for the same run window without unexpected Traceback or task-leak findings."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This is a fault-recovery probe, not a throughput benchmark."
- "Provider faults may be retried inside the provider/requester path; judge this case by fake_provider_fault_count plus user-visible success/error metrics."
- "The profile uses concurrency 1 because Debug Chat broadcasts assistant responses to every connection in a session, and failed responses do not carry the unique success token needed for concurrent attribution."
success_patterns:
- "Debug Chat WebSocket concurrency probe passed"
- "Streaming completed"
failure_patterns:
- "fake_provider_fault"
- "HTTP 503"
- "Timed out after"
- "All models failed during streaming setup"
expected_failures:
- "fake_provider_fault"
- "HTTP 503"
troubleshooting:
- backend-not-listening
- debug-chat-history-contaminates-automation
- local-agent-model-route-unavailable
@@ -0,0 +1,81 @@
id: langbot-fake-provider-debug-chat-load
title: "LangBot Debug Chat controlled fake-provider load probe"
mode: probe
area: performance
type: performance
priority: p1
risk: medium
ci_eligible: false
tags:
- performance
- debug-chat
- websocket
- fake-provider
- load
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_BACKEND_URL
- LANGBOT_FRONTEND_URL
- LANGBOT_E2E_LOGIN_USER
automation: skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs
automation_env:
- LANGBOT_BACKEND_URL
- LANGBOT_E2E_LOGIN_USER
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_pipeline_url_env: LANGBOT_FAKE_PROVIDER_PIPELINE_URL
automation_pipeline_name_env: LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_debug_chat_load_requests: "12"
automation_debug_chat_load_concurrency: "4"
automation_debug_chat_load_timeout_ms: "30000"
automation_debug_chat_load_response_p95_ms: "5000"
automation_debug_chat_load_first_response_p95_ms: "3000"
automation_debug_chat_load_max_error_rate: "0"
automation_debug_chat_load_expected_prefix: "FAKEQA"
automation_debug_chat_load_prompt_template: '请只回复 "{expected}",不要解释,不要添加其他字符。'
automation_debug_chat_load_stream: "true"
automation_debug_chat_load_reset: "true"
metrics_thresholds_json: '{"response_p95_ms":{"max":5000},"first_response_p95_ms":{"max":3000},"error_rate":{"max":0}}'
load_profile_json: '{"requests":12,"concurrency":4,"path":"Pipeline Debug Chat WebSocket","provider":"controlled fake OpenAI-compatible provider","metric":"send-to-final-assistant-response"}'
setup_automation:
- "node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
setup_provides_env:
- LANGBOT_FAKE_PROVIDER_URL
- LANGBOT_FAKE_PROVIDER_BASE_URL
- LANGBOT_FAKE_PROVIDER_PID
- LANGBOT_FAKE_PROVIDER_PROVIDER_UUID
- LANGBOT_FAKE_PROVIDER_MODEL_UUID
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
steps:
- "Start or reuse the local fake OpenAI-compatible provider."
- "Create or update the LangBot provider, model, and local-agent pipeline that points at the fake provider."
- "Reset the target Debug Chat session."
- "Open concurrent WebSocket Debug Chat connections and send unique deterministic prompts through the real backend pipeline."
checks:
- "automation-result.json status is pass when every request receives its own expected assistant response."
- "metrics_summary includes request count, concurrency, p50/p95 response latency, first response latency, throughput, and error rate."
- "thresholds_summary shows response_p95_ms, first_response_p95_ms, and error_rate pass."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe removes external model latency from the measurement; it still exercises the live LangBot backend, provider requester, local-agent runner, pipeline, and Debug Chat WebSocket adapter."
- "Use this as the repeatable message-path baseline before comparing against Space or another real provider."
success_patterns:
- "Debug Chat WebSocket concurrency probe passed"
- "Streaming completed"
failure_patterns:
- "WebSocket connection error"
- "Timed out after"
- "Final assistant response did not include"
- "All models failed during streaming setup"
troubleshooting:
- backend-not-listening
- debug-chat-history-contaminates-automation
- local-agent-model-route-unavailable
@@ -0,0 +1,88 @@
id: langbot-fake-provider-debug-chat-slow-load
title: "LangBot Debug Chat slow fake-provider load probe"
mode: probe
area: performance
type: performance
priority: p1
risk: medium
ci_eligible: false
tags:
- performance
- debug-chat
- websocket
- fake-provider
- slow-provider
- load
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_BACKEND_URL
- LANGBOT_FRONTEND_URL
- LANGBOT_E2E_LOGIN_USER
automation: skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs
automation_env:
- LANGBOT_BACKEND_URL
- LANGBOT_E2E_LOGIN_USER
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_pipeline_url_env: LANGBOT_FAKE_PROVIDER_PIPELINE_URL
automation_pipeline_name_env: LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
automation_debug_chat_load_requests: "8"
automation_debug_chat_load_concurrency: "4"
automation_debug_chat_load_timeout_ms: "45000"
automation_debug_chat_load_response_p95_ms: "10000"
automation_debug_chat_load_first_response_p95_ms: "7000"
automation_debug_chat_load_max_error_rate: "0"
automation_debug_chat_load_expected_prefix: "SLOWQA"
automation_debug_chat_load_prompt_template: '请只回复 "{expected}",不要解释,不要添加其他字符。'
automation_debug_chat_load_stream: "true"
automation_debug_chat_load_reset: "true"
automation_fake_provider_first_token_delay_ms: "1000"
automation_fake_provider_chunk_delay_ms: "250"
automation_fake_provider_chunk_count: "4"
automation_fake_provider_fail_first_n: "0"
automation_fake_provider_fail_every_n: "0"
automation_fake_provider_fault_status: "500"
metrics_thresholds_json: '{"response_p95_ms":{"max":10000},"first_response_p95_ms":{"max":7000},"error_rate":{"max":0}}'
load_profile_json: '{"requests":8,"concurrency":4,"path":"Pipeline Debug Chat WebSocket","provider":"controlled slow fake OpenAI-compatible provider","metric":"send-to-final-assistant-response","provider_profile":{"first_token_delay_ms":1000,"chunk_delay_ms":250,"chunk_count":4}}'
setup_automation:
- "node:scripts/e2e/ensure-fake-provider-pipeline.mjs --write-env"
setup_provides_env:
- LANGBOT_FAKE_PROVIDER_URL
- LANGBOT_FAKE_PROVIDER_BASE_URL
- LANGBOT_FAKE_PROVIDER_PID
- LANGBOT_FAKE_PROVIDER_PROVIDER_UUID
- LANGBOT_FAKE_PROVIDER_MODEL_UUID
- LANGBOT_FAKE_PROVIDER_PIPELINE_URL
- LANGBOT_FAKE_PROVIDER_PIPELINE_NAME
steps:
- "Configure the local fake provider with deterministic slow streaming latency."
- "Create or update the LangBot provider, model, and local-agent pipeline that points at the fake provider."
- "Reset the target Debug Chat session."
- "Open concurrent WebSocket Debug Chat connections and send unique deterministic prompts through the real backend pipeline."
checks:
- "automation-result.json status is pass when every request receives its own expected assistant response."
- "metrics_summary shows zero errors under the slow-provider profile."
- "thresholds_summary shows response_p95_ms, first_response_p95_ms, and error_rate pass."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe keeps the model deterministic while injecting provider latency, so it catches backend timeout, streaming, and WebSocket backpressure issues without Space variability."
- "Compare with langbot-fake-provider-debug-chat-load to separate fixed LangBot overhead from provider-latency amplification."
success_patterns:
- "Debug Chat WebSocket concurrency probe passed"
- "Streaming completed"
failure_patterns:
- "WebSocket connection error"
- "Timed out after"
- "Final assistant response did not include"
- "All models failed during streaming setup"
troubleshooting:
- backend-not-listening
- debug-chat-history-contaminates-automation
- local-agent-model-route-unavailable
@@ -0,0 +1,35 @@
id: langbot-fault-taxonomy-contract
title: "LangBot fault taxonomy and cleanup contract"
mode: probe
area: reliability
type: chaos
priority: p1
risk: medium
ci_eligible: true
tags:
- reliability
- chaos
- contract
- synthetic
skills:
- langbot-testing
automation: skills/langbot-testing/probes/langbot-fault-taxonomy-contract.mjs
fault_model_json: '{"kind":"taxonomy-contract","destructive":false,"scenarios":["provider-timeout","plugin-runtime-disconnect","mcp-stdio-server-exit","operator-missing-login","transient-marketplace-timeout"]}'
steps:
- "Run `rtk bin/lbs test run langbot-fault-taxonomy-contract --dry-run` first; remove `--dry-run` after checking the evidence directory."
- "Automation validates that representative fault scenarios declare target, injected fault, expected status, recovery check, and cleanup."
- "Review metrics.json, fault-model.json, and automation-result.json under LBS_EVIDENCE_DIR."
checks:
- "automation-result.json status is pass."
- "Every scenario has an expected status in pass, fail, blocked, env_issue, or flaky."
- "Every scenario declares a cleanup action and recovery check."
evidence_required:
- metrics
- filesystem
diagnostics:
- "This is a non-destructive taxonomy contract probe; it does not inject real runtime faults."
- "Use it as a gate before adding live chaos cases that kill runtimes, route traffic through a proxy, or disrupt a backend dependency."
success_patterns:
- "Fault taxonomy contract declares status"
failure_patterns:
- "missing required scenario fields"
@@ -0,0 +1,42 @@
id: langbot-live-backend-latency
title: "LangBot live backend basic latency probe"
mode: probe
area: performance
type: performance
priority: p1
risk: medium
ci_eligible: false
tags:
- performance
- live-backend
- latency
- metrics
skills:
- langbot-testing
env:
- LANGBOT_BACKEND_URL
automation: skills/langbot-testing/probes/langbot-live-backend-latency.mjs
metrics_thresholds_json: '{"backend_p95_ms":{"max":1000},"error_rate":{"max":0}}'
load_profile_json: '{"requests":12,"concurrency":2,"endpoints":["/healthz"]}'
steps:
- "Confirm the selected LangBot backend is the intended test target."
- "Run `rtk bin/lbs test run langbot-live-backend-latency --dry-run` first; remove `--dry-run` after checking LANGBOT_BACKEND_URL and evidence directory."
- "Automation sends a small request batch to LANGBOT_BACKEND_URL/healthz and records latency, status counts, and network errors."
checks:
- "automation-result.json status is pass when the backend responds and p95/error-rate thresholds pass."
- "automation-result.json status is env_issue when the backend is not reachable."
- "metrics.json and network.log are written under LBS_EVIDENCE_DIR."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe measures backend health endpoint reachability latency only; it does not cover model/provider, browser, Debug Chat, RAG, or plugin runtime latency."
success_patterns:
- "Live backend latency probe passed"
failure_patterns:
- "Backend did not respond"
- "breached latency or error-rate thresholds"
troubleshooting:
- socks-proxy-without-socksio
@@ -0,0 +1,45 @@
id: langbot-live-backend-log-health
title: "LangBot live backend log health probe"
mode: probe
area: reliability
type: reliability
priority: p1
risk: medium
ci_eligible: false
tags:
- reliability
- live-backend
- backend-log
- metrics
skills:
- langbot-testing
env:
- LANGBOT_BACKEND_URL
automation: skills/langbot-testing/probes/langbot-live-backend-log-health.mjs
metrics_thresholds_json: '{"fail_count":{"max":0}}'
load_profile_json: '{"lookback_seconds":300,"log_source":"LANGBOT_BACKEND_LOG or latest LANGBOT_REPO/data/logs/langbot-*.log"}'
steps:
- "Confirm the selected LangBot backend log belongs to the intended test target."
- "Run `rtk bin/lbs test run langbot-live-backend-log-health --dry-run` first; remove `--dry-run` after checking evidence directory and log source."
- "Automation scans the recent backend log window for fail-severity runtime findings such as Traceback, ImportError, ERROR, unclosed sessions, and unawaited coroutines."
checks:
- "automation-result.json status is pass only when fail_count is 0."
- "metrics_summary includes scanned_line_count, fail_count, warning_count, and finding_count."
- "findings.json and scanned-backend.log are written under LBS_EVIDENCE_DIR."
evidence_required:
- metrics
- backend_log
- filesystem
diagnostics:
- "Set LANGBOT_BACKEND_LOG to an explicit log path when the latest log file is not the run target."
- "Set LANGBOT_BACKEND_LOG_SINCE or LANGBOT_BACKEND_LOG_LOOKBACK_SECONDS to control the scan window."
- "This probe measures runtime log health; it does not prove user-facing Debug Chat, plugin, model, or RAG behavior."
success_patterns:
- "Live backend log health passed"
failure_patterns:
- "Traceback"
- "ImportError"
- "ERROR"
- "unclosed"
troubleshooting:
- socks-proxy-without-socksio
@@ -0,0 +1,44 @@
id: langbot-live-control-plane-api
title: "LangBot live control-plane API probe"
mode: probe
area: performance
type: performance
priority: p1
risk: medium
ci_eligible: false
tags:
- performance
- reliability
- live-backend
- control-plane
- metrics
skills:
- langbot-testing
env:
- LANGBOT_BACKEND_URL
automation: skills/langbot-testing/probes/langbot-live-control-plane-api.mjs
metrics_thresholds_json: '{"error_rate":{"max":0},"response_shape_failures":{"max":0},"healthz_p95_ms":{"max":500},"system_info_p95_ms":{"max":1000}}'
load_profile_json: '{"requests":20,"concurrency":4,"endpoints":["/healthz","/api/v1/system/info"],"auth_required":false}'
steps:
- "Confirm the selected LangBot backend is the intended test target."
- "Run `rtk bin/lbs test run langbot-live-control-plane-api --dry-run` first; remove `--dry-run` after checking LANGBOT_BACKEND_URL and evidence directory."
- "Automation sends a small request batch to /healthz and /api/v1/system/info, then validates status code, JSON shape, and latency budgets."
checks:
- "automation-result.json status is pass when every control-plane request returns HTTP 200, JSON code 0, and required response fields."
- "metrics_summary includes per-endpoint p50/p95 latency, error rate, status counts, and response_shape_failures."
- "thresholds_summary shows error_rate, response_shape_failures, healthz_p95_ms, and system_info_p95_ms all pass."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe measures unauthenticated backend control-plane readiness; it does not cover authenticated UI flows, Debug Chat, model calls, plugins, or RAG."
- "A system_info shape failure usually means the API contract or startup state changed and should be investigated before treating latency as healthy."
success_patterns:
- "Live control-plane API probe passed"
failure_patterns:
- "Backend did not respond"
- "breached shape, latency, or error-rate thresholds"
troubleshooting:
- socks-proxy-without-socksio
@@ -0,0 +1,37 @@
id: langbot-overhead-accounting-contract
title: "LangBot overhead accounting metrics contract"
mode: probe
area: performance
type: performance
priority: p1
risk: medium
ci_eligible: true
tags:
- performance
- metrics
- contract
- synthetic
skills:
- langbot-testing
automation: skills/langbot-testing/probes/langbot-overhead-accounting-contract.mjs
metrics_thresholds_json: '{"sample_count":{"min":50},"langbot_overhead_p95_ms":{"max":25},"accounting_gap_max_ms":{"max":0.001}}'
load_profile_json: '{"kind":"synthetic-overhead-accounting","samples":80,"external_latency_segments":["provider","external_tool","network"]}'
steps:
- "Run `rtk bin/lbs test run langbot-overhead-accounting-contract --dry-run` first; remove `--dry-run` after checking the evidence directory."
- "Automation generates deterministic message-path latency samples and separates LangBot overhead from provider/tool/network latency."
- "Review metrics.json, thresholds.json, resource-log.json, and automation-result.json under LBS_EVIDENCE_DIR."
checks:
- "automation-result.json status is pass."
- "metrics_summary includes sample_count, langbot_overhead_p95_ms, e2e_latency_p95_ms, external_latency_p95_ms, and accounting_gap_max_ms."
- "thresholds_summary shows sample_count, langbot_overhead_p95_ms, and accounting_gap_max_ms all pass."
evidence_required:
- metrics
- resource_log
- filesystem
diagnostics:
- "This is a synthetic contract probe for the QA harness; it is not live product performance."
- "Use it to verify that reports can carry overhead accounting metrics before running live backend or browser performance probes."
success_patterns:
- "Overhead accounting contract passed"
failure_patterns:
- "breached one or more thresholds"
@@ -0,0 +1,84 @@
id: langbot-space-debug-chat-concurrency-smoke
title: "LangBot Debug Chat real Space-provider concurrency smoke"
mode: probe
area: performance
type: performance
priority: p1
risk: high
ci_eligible: false
tags:
- performance
- debug-chat
- websocket
- space
- live-provider
- smoke
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_BACKEND_URL
- LANGBOT_FRONTEND_URL
- LANGBOT_E2E_LOGIN_USER
automation: skills/langbot-testing/probes/langbot-debug-chat-concurrency.mjs
automation_env:
- LANGBOT_BACKEND_URL
- LANGBOT_E2E_LOGIN_USER
- LANGBOT_LOCAL_AGENT_PIPELINE_URL
- LANGBOT_LOCAL_AGENT_PIPELINE_NAME
automation_pipeline_url_env: LANGBOT_LOCAL_AGENT_PIPELINE_URL
automation_pipeline_name_env: LANGBOT_LOCAL_AGENT_PIPELINE_NAME
automation_debug_chat_load_requests: "3"
automation_debug_chat_load_concurrency: "2"
automation_debug_chat_load_timeout_ms: "120000"
automation_debug_chat_load_response_p95_ms: "120000"
automation_debug_chat_load_max_error_rate: "0"
automation_debug_chat_load_expected_prefix: "SPACEQA"
automation_debug_chat_load_prompt_template: '请只回复 "{expected}",不要解释,不要添加其他字符。'
automation_debug_chat_load_stream: "true"
automation_debug_chat_load_reset: "true"
metrics_thresholds_json: '{"response_p95_ms":{"max":120000},"error_rate":{"max":0}}'
load_profile_json: '{"requests":3,"concurrency":2,"path":"Pipeline Debug Chat WebSocket","provider":"LangBot Space model route","metric":"send-to-final-assistant-response","classification":"smoke-not-benchmark"}'
setup_automation:
- "node:scripts/e2e/ensure-local-agent-pipeline.mjs --write-env"
setup_provides_env:
- LANGBOT_PIPELINE_URL
- LANGBOT_PIPELINE_NAME
- LANGBOT_LOCAL_AGENT_PIPELINE_URL
- LANGBOT_LOCAL_AGENT_PIPELINE_NAME
- LANGBOT_LOCAL_AGENT_MODEL_UUID
- LANGBOT_E2E_MODEL_UUID
preconditions:
- "The selected local LangBot instance is safe for a low-volume real Space model smoke run."
- "Treat Space/provider/network failures as environment or dependency findings until fake-provider baseline evidence separates LangBot overhead."
steps:
- "Prepare a local-agent pipeline with a tested Space model and fallback models."
- "Reset the target Debug Chat session."
- "Open a small number of concurrent WebSocket Debug Chat connections and send unique deterministic prompts through the live Space provider path."
checks:
- "automation-result.json status is pass when every request receives its own expected assistant response."
- "metrics_summary includes request count, concurrency, p95 response latency, throughput, and error rate."
- "The report classifies the result as a live-provider smoke, not a stable LangBot overhead benchmark."
evidence_required:
- metrics
- network
- api_diagnostic
- filesystem
diagnostics:
- "This probe measures real user-path latency through Space and includes provider latency, model behavior, and network effects."
- "Compare with langbot-fake-provider-debug-chat-load before attributing slow or failed runs to LangBot itself."
success_patterns:
- "Debug Chat WebSocket concurrency probe passed"
- "Streaming completed"
failure_patterns:
- "invalid api key"
- "WebSocket connection error"
- "Timed out after"
- "Final assistant response did not include"
- "All models failed during streaming setup"
troubleshooting:
- local-agent-model-route-unavailable
- marketplace-network-flaky
- proxy-env-mismatch
- telemetry-proxy-noise
@@ -0,0 +1,80 @@
id: pipeline-debug-chat-performance
title: "Pipeline Debug Chat user-path performance probe"
mode: agent-browser
area: pipeline
type: performance
priority: p1
risk: medium
ci_eligible: false
tags:
- performance
- pipeline
- debug-chat
- user-path
- metrics
skills:
- langbot-env-setup
- langbot-testing
env:
- LANGBOT_FRONTEND_URL
- LANGBOT_BACKEND_URL
env_any:
- LANGBOT_PIPELINE_URL|LANGBOT_PIPELINE_NAME
automation: scripts/e2e/pipeline-debug-chat.mjs
automation_env:
- LANGBOT_FRONTEND_URL
- LANGBOT_BACKEND_URL
- LANGBOT_BROWSER_PROFILE
- LANGBOT_CHROMIUM_EXECUTABLE
- LANGBOT_E2E_PROMPT
- LANGBOT_E2E_EXPECTED_TEXT
- LANGBOT_E2E_RESPONSE_TIMEOUT_MS
automation_env_any:
- LANGBOT_PIPELINE_URL|LANGBOT_PIPELINE_NAME
automation_prompt: "请只回复 OK,用于性能测试。"
automation_expected_text: "OK"
automation_response_timeout_ms: "120000"
automation_reset_debug_chat: "true"
automation_debug_chat_response_p95_ms: "120000"
automation_debug_chat_max_error_rate: "0"
metrics_thresholds_json: '{"response_p95_ms":{"max":120000},"error_rate":{"max":0}}'
load_profile_json: '{"prompts":1,"browser":true,"path":"Pipeline Debug Chat","metric":"send-to-visible-completion"}'
setup_automation:
- "node:scripts/e2e/ensure-local-agent-pipeline.mjs --write-env"
setup_provides_env:
- LANGBOT_PIPELINE_URL
- LANGBOT_PIPELINE_NAME
preconditions:
- "LANGBOT_PIPELINE_URL or LANGBOT_PIPELINE_NAME points to the pipeline intended for this Debug Chat performance run."
- "The target pipeline is safe to reset Debug Chat history for this run."
- "The target pipeline has a known-good runner/model; provider latency should be interpreted separately from LangBot overhead."
steps:
- "Open LANGBOT_FRONTEND_URL with the prepared browser profile."
- "Open the target pipeline and select Debug Chat."
- "Reset Debug Chat history through the backend API when configured."
- "Send the deterministic prompt and wait for the expected assistant response."
checks:
- "automation-result.json status is pass when the expected assistant response appears."
- "metrics_summary includes response_p50_ms, response_p95_ms, error_rate, and total_duration_ms."
- "thresholds_summary shows response_p95_ms and error_rate pass."
evidence_required:
- ui
- screenshot
- console
- network
- metrics
diagnostics:
- "This case measures browser-visible send-to-completion latency; it does not split provider latency from LangBot overhead."
- "Use backend logs and provider diagnostics to explain slow runs before calling them LangBot regressions."
success_patterns:
- "Processing request from person_websocket"
- "Streaming completed"
failure_patterns:
- "Action invoke_llm_stream call timed out"
- "Task exception was never retrieved"
- "All models failed during streaming setup"
troubleshooting:
- debug-chat-history-contaminates-automation
- local-agent-model-route-unavailable
- plugin-runtime-timeout
- proxy-env-mismatch
@@ -1 +1,3 @@
dist/ dist/*
!dist/
!dist/qa-plugin-smoke-0.1.0.lbpkg
View File
View File
View File
View File
@@ -0,0 +1,837 @@
#!/usr/bin/env node
import crypto from "node:crypto";
import net from "node:net";
import tls from "node:tls";
import { mkdir, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
import {
apiJson,
appendLine,
ensureEvidence,
evidencePaths,
loadEnvFiles,
localIsoWithOffset,
redact,
resetAndAuthLocalUser,
writeResult,
} from "../../../scripts/e2e/lib/langbot-e2e.mjs";
import {
buildProviderTimingMetrics,
summarizeFakeProviderState,
} from "./lib/fake-provider-timing.mjs";
const DEFAULT_LOCAL_PASSWORD = "LangBotE2ELocalPass!2026";
await loadEnvFiles();
const caseId = env.LBS_CASE_ID || "langbot-debug-chat-concurrency";
const paths = evidencePaths(caseId);
await ensureEvidence(paths);
const startedAt = new Date();
const metricsPath = resolve(paths.evidenceDir, "metrics.json");
const samplesPath = resolve(paths.evidenceDir, "samples.json");
const fakeProviderStatePath = resolve(paths.evidenceDir, "fake-provider-state.json");
const resetDiagnosticPath = resolve(paths.evidenceDir, "debug-chat-reset-diagnostic.json");
const backendUrl = env.LANGBOT_BACKEND_URL || "";
const fakeProviderUrl = env.LANGBOT_FAKE_PROVIDER_URL || "";
const pipelineUrl = env.LANGBOT_E2E_PIPELINE_URL || env.LANGBOT_PIPELINE_URL || "";
const pipelineName = env.LANGBOT_E2E_PIPELINE_NAME || env.LANGBOT_PIPELINE_NAME || "";
const sessionType = env.LANGBOT_DEBUG_CHAT_LOAD_SESSION_TYPE || env.LANGBOT_E2E_DEBUG_CHAT_SESSION_TYPE || "person";
const totalRequests = positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_REQUESTS, defaultRequests(caseId));
const concurrency = Math.min(totalRequests, positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_CONCURRENCY, defaultConcurrency(caseId)));
const timeoutMs = positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_TIMEOUT_MS, defaultTimeout(caseId));
const expectedPrefix = env.LANGBOT_DEBUG_CHAT_LOAD_EXPECTED_PREFIX || "LBQA";
const promptTemplate = env.LANGBOT_DEBUG_CHAT_LOAD_PROMPT_TEMPLATE
|| "请只回复 \"{expected}\",不要解释,不要添加其他字符。";
const stream = bool(env.LANGBOT_DEBUG_CHAT_LOAD_STREAM, true);
const resetBeforeRun = bool(env.LANGBOT_DEBUG_CHAT_LOAD_RESET, true);
const responseP95BudgetMs = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_RESPONSE_P95_MS, defaultP95Budget(caseId));
const firstResponseP95BudgetMs = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_FIRST_RESPONSE_P95_MS, 0);
const maxErrorRate = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_MAX_ERROR_RATE, 0);
const minErrorRate = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_MIN_ERROR_RATE, 0);
const minErrorCount = nonNegativeInteger(env.LANGBOT_DEBUG_CHAT_LOAD_MIN_ERROR_COUNT, 0);
const minOkCount = nonNegativeInteger(env.LANGBOT_DEBUG_CHAT_LOAD_MIN_OK_COUNT, 0);
const minProviderFaultCount = nonNegativeInteger(env.LANGBOT_DEBUG_CHAT_LOAD_MIN_PROVIDER_FAULT_COUNT, 0);
const failOnFinalMismatch = bool(env.LANGBOT_DEBUG_CHAT_LOAD_FAIL_ON_FINAL_MISMATCH, false);
const failureSignals = textList(env.LANGBOT_E2E_FAILURE_SIGNALS || env.LANGBOT_DEBUG_CHAT_LOAD_FAILURE_SIGNALS || "");
const result = {
source: "automation",
case_id: caseId,
run_id: paths.runId,
status: "fail",
reason: "",
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: "",
finished_at_local: "",
duration_ms: 0,
backend_url: backendUrl,
pipeline_url: pipelineUrl,
pipeline_name: pipelineName,
pipeline_id: "",
session_type: sessionType,
load_profile: {
requests: totalRequests,
concurrency,
timeout_ms: timeoutMs,
stream,
reset_before_run: resetBeforeRun,
fail_on_final_mismatch: failOnFinalMismatch,
},
evidence: {
network_log: paths.networkLog,
metrics_json: metricsPath,
samples_json: samplesPath,
fake_provider_state_json: fakeProviderStatePath,
debug_chat_reset_diagnostic_json: resetDiagnosticPath,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
},
evidence_collected: ["metrics", "network", "api_diagnostic", "filesystem"],
};
try {
if (!backendUrl) {
result.status = "env_issue";
throw new Error("LANGBOT_BACKEND_URL is not configured.");
}
if (!["person", "group"].includes(sessionType)) {
throw new Error(`LANGBOT_DEBUG_CHAT_LOAD_SESSION_TYPE must be person or group, got ${sessionType}.`);
}
const backendReady = await backendReachable(backendUrl);
if (!backendReady) {
result.status = "env_issue";
throw new Error(`Backend did not respond at ${backendUrl}.`);
}
const user = env.LANGBOT_E2E_LOGIN_USER || "";
const password = env.LANGBOT_E2E_LOGIN_PASSWORD || DEFAULT_LOCAL_PASSWORD;
if (!user) {
result.status = "env_issue";
throw new Error("LANGBOT_E2E_LOGIN_USER is required so this probe can resolve/reset the Debug Chat session.");
}
const auth = await resetAndAuthLocalUser({ backendUrl, user, password });
const pipeline = await resolvePipeline({ backendUrl, token: auth.token, pipelineUrl, pipelineName });
result.pipeline_id = pipeline.id;
result.pipeline_name = pipeline.name || pipelineName;
if (!result.pipeline_url && env.LANGBOT_FRONTEND_URL) {
result.pipeline_url = `${env.LANGBOT_FRONTEND_URL.replace(/\/$/, "")}/home/pipelines?id=${encodeURIComponent(pipeline.id)}`;
}
if (resetBeforeRun) {
const reset = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(pipeline.id)}/ws/reset/${encodeURIComponent(sessionType)}`, {
method: "POST",
token: auth.token,
});
const resetDiagnostic = {
status: isApiFailure(reset) ? "fail" : "ready",
http_status: reset.status,
code: reset.json.code ?? null,
reason: isApiFailure(reset) ? reset.json.msg || "Debug Chat reset failed." : "Debug Chat session reset.",
};
await writeFile(resetDiagnosticPath, `${JSON.stringify(resetDiagnostic, null, 2)}\n`, "utf8");
if (resetDiagnostic.status === "fail") {
throw new Error(resetDiagnostic.reason);
}
}
const wsUrl = websocketUrl(backendUrl, pipeline.id, sessionType);
const loadStartedAt = performance.now();
const samples = await runLoad({
wsUrl,
totalRequests,
concurrency,
timeoutMs,
promptTemplate,
expectedPrefix,
stream,
failOnFinalMismatch,
failureSignals,
});
const loadDurationMs = performance.now() - loadStartedAt;
const fakeProviderState = await readFakeProviderState(fakeProviderUrl);
if (fakeProviderState) {
await writeFile(fakeProviderStatePath, `${JSON.stringify(fakeProviderState, null, 2)}\n`, "utf8");
}
const metrics = buildMetrics({
samples,
totalRequests,
concurrency,
timeoutMs,
loadDurationMs,
backendUrl,
pipelineId: pipeline.id,
sessionType,
fakeProviderState,
});
const thresholds = buildThresholds(metrics);
const passed = Object.values(thresholds).every((item) => item.pass);
result.status = passed ? "pass" : "fail";
result.reason = passed
? "Debug Chat WebSocket concurrency probe passed all thresholds."
: "Debug Chat WebSocket concurrency probe breached latency or error-rate thresholds.";
result.metrics_summary = {
requests: metrics.total_requests,
concurrency: metrics.concurrency,
ok_count: metrics.ok_count,
error_count: metrics.error_count,
timeout_count: metrics.timeout_count,
error_rate: metrics.error_rate,
response_p50_ms: metrics.response_duration_ms.p50,
response_p95_ms: metrics.response_duration_ms.p95,
first_assistant_event_p95_ms: metrics.first_assistant_event_ms.p95,
first_assistant_content_p95_ms: metrics.first_assistant_content_ms.p95,
first_response_p95_ms: metrics.first_response_ms.p95,
throughput_rps: metrics.throughput_rps,
status_counts: metrics.status_counts,
fake_provider_request_count: metrics.fake_provider?.request_count ?? null,
fake_provider_fault_count: metrics.fake_provider?.fault_count ?? null,
fake_provider_duration_p95_ms: metrics.provider_timing?.provider_duration_ms.p95 ?? null,
langbot_overhead_estimate_p95_ms: metrics.provider_timing?.langbot_overhead_estimate_ms.p95 ?? null,
send_to_provider_start_p95_ms: metrics.provider_timing?.send_to_provider_start_ms.p95 ?? null,
provider_finish_to_ws_final_p95_ms: metrics.provider_timing?.provider_finish_to_ws_final_ms.p95 ?? null,
provider_timing_matched_request_count: metrics.provider_timing?.matched_request_count ?? null,
};
result.thresholds_summary = thresholds;
result.artifacts = {
metrics_json: metricsPath,
samples_json: samplesPath,
fake_provider_state_json: fakeProviderState ? fakeProviderStatePath : "",
network_log: paths.networkLog,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
};
await writeFile(metricsPath, `${JSON.stringify({ ...metrics, thresholds }, null, 2)}\n`, "utf8");
await writeFile(samplesPath, `${JSON.stringify(samples, null, 2)}\n`, "utf8");
} catch (error) {
if (!["env_issue", "blocked"].includes(result.status)) {
result.status = looksLikeEnvIssue(error) ? "env_issue" : "fail";
}
result.reason = result.reason || safeReason(error.message);
} finally {
const finishedAt = new Date();
result.finished_at = finishedAt.toISOString();
result.finished_at_local = localIsoWithOffset(finishedAt);
result.duration_ms = finishedAt.getTime() - startedAt.getTime();
await mkdir(paths.evidenceDir, { recursive: true });
await writeResult(paths, result);
console.log(JSON.stringify(result, null, 2));
}
exit(result.status === "pass" ? 0 : result.status === "env_issue" || result.status === "blocked" ? 2 : 1);
function defaultRequests(id) {
return id.includes("space") ? 3 : 12;
}
function defaultConcurrency(id) {
return id.includes("space") ? 1 : 4;
}
function defaultTimeout(id) {
return id.includes("space") ? 120_000 : 30_000;
}
function defaultP95Budget(id) {
return id.includes("space") ? 120_000 : 5_000;
}
function positiveInteger(value, fallback) {
const parsed = Number.parseInt(String(value || ""), 10);
return Number.isInteger(parsed) && parsed > 0 ? parsed : fallback;
}
function nonNegativeInteger(value, fallback) {
const parsed = Number.parseInt(String(value ?? ""), 10);
return Number.isInteger(parsed) && parsed >= 0 ? parsed : fallback;
}
function positiveNumber(value, fallback) {
const parsed = Number(value || "");
return Number.isFinite(parsed) && parsed >= 0 ? parsed : fallback;
}
function bool(value, fallback) {
if (value === undefined || value === "") return fallback;
if (/^(1|true|yes|on)$/i.test(String(value))) return true;
if (/^(0|false|no|off)$/i.test(String(value))) return false;
return fallback;
}
function textList(value) {
return String(value || "")
.split(/\r?\n|,/)
.map((item) => item.trim())
.filter(Boolean);
}
async function backendReachable(baseUrl) {
try {
const response = await fetch(`${baseUrl.replace(/\/$/, "")}/healthz`, {
signal: AbortSignal.timeout(3000),
});
return response.status < 500;
} catch {
return false;
}
}
async function readFakeProviderState(rootUrl) {
if (!rootUrl) return null;
try {
const response = await fetch(`${normalizeProviderRootUrl(rootUrl)}/__qa/config`, {
signal: AbortSignal.timeout(3000),
});
const json = await response.json().catch(() => ({}));
return {
status: response.ok && json.ok === true ? "loaded" : "unavailable",
url: normalizeProviderRootUrl(rootUrl),
http_status: response.status,
model: json.model || "",
config: json.config || {},
request_count: Number.isFinite(json.request_count) ? json.request_count : null,
recent_requests: Array.isArray(json.recent_requests) ? json.recent_requests : [],
};
} catch (error) {
return {
status: "unavailable",
url: normalizeProviderRootUrl(rootUrl),
reason: safeReason(error.message),
request_count: null,
recent_requests: [],
};
}
}
function normalizeProviderRootUrl(value) {
const trimmed = String(value || "").trim().replace(/\/$/, "");
return trimmed.endsWith("/v1") ? trimmed.slice(0, -3) : trimmed;
}
function pipelineIdFromUrl(url) {
if (!url) return "";
try {
const parsed = new URL(url);
return parsed.searchParams.get("id") || "";
} catch {
return "";
}
}
async function resolvePipeline({ backendUrl, token, pipelineUrl, pipelineName }) {
const idFromUrl = pipelineIdFromUrl(pipelineUrl);
if (idFromUrl) {
const response = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(idFromUrl)}`, { token });
const pipeline = response.json.data?.pipeline;
if (isApiFailure(response) || !pipeline?.uuid) {
throw new Error(response.json.msg || `Could not load pipeline ${idFromUrl}.`);
}
return { id: pipeline.uuid, name: pipeline.name || "" };
}
if (!pipelineName) {
throw new Error("Set LANGBOT_E2E_PIPELINE_URL or LANGBOT_E2E_PIPELINE_NAME before running this probe.");
}
const response = await apiJson(backendUrl, "/api/v1/pipelines", { token });
if (isApiFailure(response)) {
throw new Error(response.json.msg || "Failed to list pipelines.");
}
const pipeline = (response.json.data?.pipelines || []).find((item) => item.name === pipelineName);
if (!pipeline?.uuid) {
throw new Error(`Could not find pipeline named ${pipelineName}.`);
}
return { id: pipeline.uuid, name: pipeline.name || pipelineName };
}
function isApiFailure(response) {
return response.status >= 400 || (response.json.code !== undefined && response.json.code !== 0);
}
function websocketUrl(baseUrl, pipelineId, sessionType) {
const parsed = new URL(baseUrl);
parsed.protocol = parsed.protocol === "https:" ? "wss:" : "ws:";
parsed.pathname = `/api/v1/pipelines/${encodeURIComponent(pipelineId)}/ws/connect`;
parsed.search = `?session_type=${encodeURIComponent(sessionType)}`;
return parsed.toString();
}
async function runLoad(options) {
const samples = [];
let nextIndex = 0;
const workers = Array.from({ length: options.concurrency }, async () => {
while (nextIndex < options.totalRequests) {
const index = nextIndex;
nextIndex += 1;
const sample = await runSingleRequest({ ...options, index });
samples.push(sample);
}
});
await Promise.all(workers);
return samples.sort((left, right) => left.index - right.index);
}
function expectedForIndex(prefix, index) {
return `${prefix}-${String(index + 1).padStart(4, "0")}`;
}
function promptForIndex(template, expected) {
return template.replaceAll("{expected}", expected);
}
function runSingleRequest({
wsUrl,
index,
timeoutMs,
promptTemplate,
expectedPrefix,
stream,
failOnFinalMismatch,
failureSignals,
}) {
return new Promise((resolve) => {
const expected = expectedForIndex(expectedPrefix, index);
const prompt = promptForIndex(promptTemplate, expected);
const sample = {
index,
status: "running",
ok: false,
expected_text: expected,
prompt,
response_text: "",
started_at: new Date().toISOString(),
started_epoch_ms: Date.now(),
connected_at: null,
connected_epoch_ms: null,
sent_at: null,
sent_epoch_ms: null,
first_assistant_event_at: null,
first_assistant_event_epoch_ms: null,
first_assistant_event_ms: null,
first_assistant_content_at: null,
first_assistant_content_epoch_ms: null,
first_assistant_content_ms: null,
first_response_at: null,
first_response_epoch_ms: null,
connected_ms: null,
first_response_ms: null,
response_duration_ms: null,
finished_at: null,
finished_epoch_ms: null,
event_count: 0,
foreign_response_count: 0,
last_foreign_response_text: "",
error: "",
close_code: null,
close_reason: "",
};
let closed = false;
let connectedAt = 0;
let sentAt = 0;
const startedAt = performance.now();
let client = null;
const timer = setTimeout(() => {
finish("timeout", `Timed out after ${timeoutMs} ms.`);
}, timeoutMs);
client = openRawWebSocket(wsUrl, {
onOpen() {
connectedAt = performance.now();
const now = Date.now();
sample.connected_at = new Date(now).toISOString();
sample.connected_epoch_ms = now;
sample.connected_ms = rounded(connectedAt - startedAt);
},
onMessage(text) {
sample.event_count += 1;
let data;
try {
data = JSON.parse(String(text || ""));
} catch (error) {
finish("error", `Invalid WebSocket JSON: ${error.message}`);
return;
}
appendLine(paths.networkLog, JSON.stringify({
request_index: index,
type: data.type,
session_type: data.session_type || "",
role: data.data?.role || "",
is_final: data.data?.is_final ?? null,
content_preview: redact(String(data.data?.content || data.message || "").slice(0, 200)),
})).catch(() => {});
if (data.type === "connected") {
sentAt = performance.now();
const now = Date.now();
sample.sent_at = new Date(now).toISOString();
sample.sent_epoch_ms = now;
client.send(JSON.stringify({
type: "message",
message: [{ type: "Plain", text: prompt }],
stream,
}));
return;
}
if (data.type === "error") {
finish("error", data.message || "WebSocket error message.");
return;
}
if (data.type !== "response" || data.data?.role !== "assistant") return;
const content = String(data.data.content || "");
markFirstAssistantEvent(sample, sentAt);
if (content) sample.response_text = content;
if (content) markFirstAssistantContent(sample, sentAt);
if (content.includes(expected) && sample.first_response_ms === null && sentAt > 0) {
const now = Date.now();
sample.first_response_at = new Date(now).toISOString();
sample.first_response_epoch_ms = now;
sample.first_response_ms = rounded(performance.now() - sentAt);
}
if (data.data.is_final === true) {
const ok = sample.response_text.includes(expected);
if (ok) {
if (sample.first_response_ms === null && sentAt > 0) {
sample.first_response_ms = rounded(performance.now() - sentAt);
}
finish("pass", "");
} else if (matchesFailureSignal(sample.response_text, failureSignals)) {
finish("app_error", `Assistant final response matched a failure signal: ${sample.response_text}`);
} else if (failOnFinalMismatch && !containsLoadToken(sample.response_text, expectedPrefix)) {
finish("mismatch", `Final assistant response did not include ${expected}: ${sample.response_text}`);
} else {
sample.foreign_response_count += 1;
sample.last_foreign_response_text = sample.response_text;
}
}
},
onError(error) {
finish("connection_error", `WebSocket connection error: ${error.message}`);
},
onClose(event) {
sample.close_code = event.code;
sample.close_reason = event.reason || "";
if (!closed) finish("closed", `WebSocket closed before final assistant response: ${event.code}`);
},
});
function finish(status, reason) {
if (closed) return;
closed = true;
clearTimeout(timer);
sample.status = status;
sample.ok = status === "pass";
sample.error = status === "timeout" && sample.foreign_response_count > 0
? `${reason || ""} Saw ${sample.foreign_response_count} foreign assistant response(s); last=${sample.last_foreign_response_text}`
: reason || "";
if (sentAt > 0) sample.response_duration_ms = rounded(performance.now() - sentAt);
else sample.response_duration_ms = rounded(performance.now() - startedAt);
const now = Date.now();
sample.finished_at = new Date(now).toISOString();
sample.finished_epoch_ms = now;
try {
client?.close();
} catch {
// Closing a failed socket should not hide the sample result.
}
resolve(sample);
}
});
}
function markFirstAssistantEvent(sample, sentAt) {
if (sample.first_assistant_event_ms !== null || sentAt <= 0) return;
const now = Date.now();
sample.first_assistant_event_at = new Date(now).toISOString();
sample.first_assistant_event_epoch_ms = now;
sample.first_assistant_event_ms = rounded(performance.now() - sentAt);
}
function markFirstAssistantContent(sample, sentAt) {
if (sample.first_assistant_content_ms !== null || sentAt <= 0) return;
const now = Date.now();
sample.first_assistant_content_at = new Date(now).toISOString();
sample.first_assistant_content_epoch_ms = now;
sample.first_assistant_content_ms = rounded(performance.now() - sentAt);
}
function containsLoadToken(text, prefix) {
const escaped = String(prefix).replace(/[.*+?^${}()|[\]\\]/g, "\\$&");
return new RegExp(`${escaped}-\\d{4}`).test(String(text || ""));
}
function matchesFailureSignal(text, signals) {
const lower = String(text || "").toLowerCase();
return signals.some((signal) => lower.includes(signal.toLowerCase()));
}
function openRawWebSocket(wsUrl, handlers) {
const parsed = new URL(wsUrl);
const secure = parsed.protocol === "wss:";
const port = Number(parsed.port || (secure ? 443 : 80));
const host = parsed.hostname;
const path = `${parsed.pathname}${parsed.search}`;
const key = crypto.randomBytes(16).toString("base64");
const socket = secure
? tls.connect({ host, port, servername: host })
: net.connect({ host, port });
let opened = false;
let closed = false;
let buffer = Buffer.alloc(0);
socket.setNoDelay(true);
socket.on("connect", () => {
const originProtocol = secure ? "https" : "http";
const request = [
`GET ${path} HTTP/1.1`,
`Host: ${parsed.host}`,
"Upgrade: websocket",
"Connection: Upgrade",
`Sec-WebSocket-Key: ${key}`,
"Sec-WebSocket-Version: 13",
`Origin: ${originProtocol}://${parsed.host}`,
"",
"",
].join("\r\n");
socket.write(request);
});
socket.on("data", (chunk) => {
buffer = Buffer.concat([buffer, chunk]);
if (!opened) {
const headerEnd = buffer.indexOf("\r\n\r\n");
if (headerEnd === -1) return;
const headerText = buffer.slice(0, headerEnd).toString("utf8");
buffer = buffer.slice(headerEnd + 4);
if (!/^HTTP\/1\.1 101\b/i.test(headerText)) {
handlers.onError(new Error(`Handshake failed: ${headerText.split("\r\n")[0] || "missing status"}`));
socket.destroy();
return;
}
opened = true;
handlers.onOpen();
}
processFrames();
});
socket.on("error", (error) => {
if (!closed) handlers.onError(error);
});
socket.on("close", () => {
if (closed) return;
closed = true;
handlers.onClose({ code: null, reason: "" });
});
function processFrames() {
while (true) {
const frame = readFrame(buffer);
if (!frame) return;
buffer = buffer.slice(frame.consumed);
if (frame.opcode === 0x1) {
handlers.onMessage(frame.payload.toString("utf8"));
} else if (frame.opcode === 0x8) {
const code = frame.payload.length >= 2 ? frame.payload.readUInt16BE(0) : null;
const reason = frame.payload.length > 2 ? frame.payload.slice(2).toString("utf8") : "";
closed = true;
handlers.onClose({ code, reason });
socket.end();
return;
} else if (frame.opcode === 0x9) {
writeFrame(socket, 0xA, frame.payload);
}
}
}
return {
send(text) {
if (closed || !opened) return;
writeFrame(socket, 0x1, Buffer.from(text, "utf8"));
},
close() {
if (closed) return;
closed = true;
if (!socket.destroyed) {
if (opened) writeFrame(socket, 0x8, Buffer.alloc(0));
setTimeout(() => socket.end(), 50).unref();
}
},
};
}
function readFrame(buffer) {
if (buffer.length < 2) return null;
const first = buffer[0];
const second = buffer[1];
const opcode = first & 0x0f;
const masked = Boolean(second & 0x80);
let length = second & 0x7f;
let offset = 2;
if (length === 126) {
if (buffer.length < offset + 2) return null;
length = buffer.readUInt16BE(offset);
offset += 2;
} else if (length === 127) {
if (buffer.length < offset + 8) return null;
const high = buffer.readUInt32BE(offset);
const low = buffer.readUInt32BE(offset + 4);
length = high * 2 ** 32 + low;
offset += 8;
}
let mask = null;
if (masked) {
if (buffer.length < offset + 4) return null;
mask = buffer.slice(offset, offset + 4);
offset += 4;
}
if (buffer.length < offset + length) return null;
let payload = buffer.slice(offset, offset + length);
if (mask) {
payload = Buffer.from(payload);
for (let index = 0; index < payload.length; index += 1) {
payload[index] ^= mask[index % 4];
}
}
return {
opcode,
payload,
consumed: offset + length,
};
}
function writeFrame(socket, opcode, payload) {
const body = Buffer.isBuffer(payload) ? payload : Buffer.from(payload || "");
const mask = crypto.randomBytes(4);
const headerLength = body.length < 126 ? 2 : body.length <= 0xffff ? 4 : 10;
const header = Buffer.alloc(headerLength);
header[0] = 0x80 | opcode;
if (body.length < 126) {
header[1] = 0x80 | body.length;
} else if (body.length <= 0xffff) {
header[1] = 0x80 | 126;
header.writeUInt16BE(body.length, 2);
} else {
header[1] = 0x80 | 127;
header.writeUInt32BE(Math.floor(body.length / 2 ** 32), 2);
header.writeUInt32BE(body.length >>> 0, 6);
}
const masked = Buffer.from(body);
for (let index = 0; index < masked.length; index += 1) {
masked[index] ^= mask[index % 4];
}
socket.write(Buffer.concat([header, mask, masked]));
}
function rounded(value) {
return Number(value.toFixed(3));
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return rounded(sorted[index]);
}
function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: rounded(Math.min(...values)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: rounded(Math.max(...values)),
};
}
function buildMetrics({ samples, totalRequests, concurrency, timeoutMs, loadDurationMs, backendUrl, pipelineId, sessionType, fakeProviderState }) {
const okSamples = samples.filter((sample) => sample.ok);
const statusCounts = {};
for (const sample of samples) {
statusCounts[sample.status] = (statusCounts[sample.status] || 0) + 1;
}
const errorCount = samples.length - okSamples.length;
return {
probe: caseId,
backend_url: backendUrl,
pipeline_id: pipelineId,
session_type: sessionType,
total_requests: totalRequests,
completed_requests: samples.length,
concurrency,
timeout_ms: timeoutMs,
ok_count: okSamples.length,
error_count: errorCount,
timeout_count: samples.filter((sample) => sample.status === "timeout").length,
error_rate: samples.length === 0 ? 1 : rounded(errorCount / samples.length),
load_duration_ms: rounded(loadDurationMs),
throughput_rps: loadDurationMs <= 0 ? 0 : rounded(okSamples.length / (loadDurationMs / 1000)),
status_counts: statusCounts,
connected_ms: stats(samples.map((sample) => sample.connected_ms).filter(Number.isFinite)),
first_assistant_event_ms: stats(samples.map((sample) => sample.first_assistant_event_ms).filter(Number.isFinite)),
first_assistant_content_ms: stats(samples.map((sample) => sample.first_assistant_content_ms).filter(Number.isFinite)),
first_response_ms: stats(okSamples.map((sample) => sample.first_response_ms).filter(Number.isFinite)),
response_duration_ms: stats(okSamples.map((sample) => sample.response_duration_ms).filter(Number.isFinite)),
fake_provider: summarizeFakeProviderState(fakeProviderState),
provider_timing: buildProviderTimingMetrics(samples, fakeProviderState),
samples,
};
}
function buildThresholds(metrics) {
const thresholds = {
error_rate: { actual: metrics.error_rate, max: maxErrorRate, pass: metrics.error_rate <= maxErrorRate },
response_p95_ms: {
actual: metrics.response_duration_ms.p95,
max: responseP95BudgetMs,
pass: metrics.ok_count > 0 && metrics.response_duration_ms.p95 <= responseP95BudgetMs,
},
};
if (minErrorRate > 0) {
thresholds.error_rate_min = {
actual: metrics.error_rate,
min: minErrorRate,
pass: metrics.error_rate >= minErrorRate,
};
}
if (minErrorCount > 0) {
thresholds.error_count_min = {
actual: metrics.error_count,
min: minErrorCount,
pass: metrics.error_count >= minErrorCount,
};
}
if (minOkCount > 0) {
thresholds.ok_count_min = {
actual: metrics.ok_count,
min: minOkCount,
pass: metrics.ok_count >= minOkCount,
};
}
if (minProviderFaultCount > 0) {
const actual = metrics.fake_provider?.fault_count ?? 0;
thresholds.fake_provider_fault_count_min = {
actual,
min: minProviderFaultCount,
pass: actual >= minProviderFaultCount,
};
}
if (firstResponseP95BudgetMs > 0) {
thresholds.first_response_p95_ms = {
actual: metrics.first_response_ms.p95,
max: firstResponseP95BudgetMs,
pass: metrics.ok_count > 0 && metrics.first_response_ms.p95 <= firstResponseP95BudgetMs,
};
}
return thresholds;
}
function looksLikeEnvIssue(error) {
const message = String(error?.message || error || "");
return /fetch failed|ECONNREFUSED|ENOTFOUND|LANGBOT_.*not configured|Could not read recovery_key|Backend did not respond/i.test(message);
}
function safeReason(value) {
return redact(String(value || "")).slice(0, 1000);
}
@@ -0,0 +1,861 @@
#!/usr/bin/env node
import crypto from "node:crypto";
import net from "node:net";
import tls from "node:tls";
import { mkdir, writeFile } from "node:fs/promises";
import { resolve } from "node:path";
import { env, exit } from "node:process";
import {
apiJson,
appendLine,
ensureEvidence,
evidencePaths,
loadEnvFiles,
localIsoWithOffset,
redact,
resetAndAuthLocalUser,
writeResult,
} from "../../../scripts/e2e/lib/langbot-e2e.mjs";
import {
buildProviderTimingMetrics,
summarizeFakeProviderState,
} from "./lib/fake-provider-timing.mjs";
const DEFAULT_LOCAL_PASSWORD = "LangBotE2ELocalPass!2026";
await loadEnvFiles();
const caseId = env.LBS_CASE_ID || "langbot-debug-chat-cross-pipeline-isolation";
const paths = evidencePaths(caseId);
await ensureEvidence(paths);
const startedAt = new Date();
const metricsPath = resolve(paths.evidenceDir, "metrics.json");
const samplesPath = resolve(paths.evidenceDir, "samples.json");
const fakeProviderStatePath = resolve(paths.evidenceDir, "fake-provider-state.json");
const resetDiagnosticPath = resolve(paths.evidenceDir, "debug-chat-reset-diagnostic.json");
const backendUrl = env.LANGBOT_BACKEND_URL || "";
const fakeProviderUrl = env.LANGBOT_FAKE_PROVIDER_URL || "";
const sessionType = env.LANGBOT_DEBUG_CHAT_LOAD_SESSION_TYPE || env.LANGBOT_E2E_DEBUG_CHAT_SESSION_TYPE || "person";
const requestsPerPipeline = positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_REQUESTS, 6);
const concurrency = Math.min(requestsPerPipeline * 2, positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_CONCURRENCY, 4));
const timeoutMs = positiveInteger(env.LANGBOT_DEBUG_CHAT_LOAD_TIMEOUT_MS, 30_000);
const stream = bool(env.LANGBOT_DEBUG_CHAT_LOAD_STREAM, true);
const resetBeforeRun = bool(env.LANGBOT_DEBUG_CHAT_LOAD_RESET, true);
const responseP95BudgetMs = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_RESPONSE_P95_MS, 5_000);
const maxErrorRate = positiveNumber(env.LANGBOT_DEBUG_CHAT_LOAD_MAX_ERROR_RATE, 0);
const promptTemplate = env.LANGBOT_DEBUG_CHAT_LOAD_PROMPT_TEMPLATE
|| "请只回复 \"{expected}\",不要解释,不要添加其他字符。";
const failureSignals = textList(env.LANGBOT_E2E_FAILURE_SIGNALS || env.LANGBOT_DEBUG_CHAT_LOAD_FAILURE_SIGNALS || "");
const pipelineTargets = [
{
label: "A",
expectedPrefix: "PIPEA",
otherPrefix: "PIPEB",
url: env.LANGBOT_FAKE_PROVIDER_PIPELINE_A_URL || "",
name: env.LANGBOT_FAKE_PROVIDER_PIPELINE_A_NAME || "",
},
{
label: "B",
expectedPrefix: "PIPEB",
otherPrefix: "PIPEA",
url: env.LANGBOT_FAKE_PROVIDER_PIPELINE_B_URL || "",
name: env.LANGBOT_FAKE_PROVIDER_PIPELINE_B_NAME || "",
},
];
const result = {
source: "automation",
case_id: caseId,
run_id: paths.runId,
status: "fail",
reason: "",
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: "",
finished_at_local: "",
duration_ms: 0,
backend_url: backendUrl,
session_type: sessionType,
pipelines: [],
load_profile: {
requests_per_pipeline: requestsPerPipeline,
total_requests: requestsPerPipeline * 2,
concurrency,
timeout_ms: timeoutMs,
stream,
reset_before_run: resetBeforeRun,
},
evidence: {
network_log: paths.networkLog,
metrics_json: metricsPath,
samples_json: samplesPath,
fake_provider_state_json: fakeProviderStatePath,
debug_chat_reset_diagnostic_json: resetDiagnosticPath,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
},
evidence_collected: ["metrics", "network", "api_diagnostic", "filesystem"],
};
try {
if (!backendUrl) {
result.status = "env_issue";
throw new Error("LANGBOT_BACKEND_URL is not configured.");
}
if (!["person", "group"].includes(sessionType)) {
throw new Error(`LANGBOT_DEBUG_CHAT_LOAD_SESSION_TYPE must be person or group, got ${sessionType}.`);
}
for (const target of pipelineTargets) {
if (!target.url && !target.name) {
result.status = "env_issue";
throw new Error(`Set LANGBOT_FAKE_PROVIDER_PIPELINE_${target.label}_URL or LANGBOT_FAKE_PROVIDER_PIPELINE_${target.label}_NAME.`);
}
}
const backendReady = await backendReachable(backendUrl);
if (!backendReady) {
result.status = "env_issue";
throw new Error(`Backend did not respond at ${backendUrl}.`);
}
const user = env.LANGBOT_E2E_LOGIN_USER || "";
const password = env.LANGBOT_E2E_LOGIN_PASSWORD || DEFAULT_LOCAL_PASSWORD;
if (!user) {
result.status = "env_issue";
throw new Error("LANGBOT_E2E_LOGIN_USER is required so this probe can resolve/reset Debug Chat sessions.");
}
const auth = await resetAndAuthLocalUser({ backendUrl, user, password });
const pipelines = [];
for (const target of pipelineTargets) {
const pipeline = await resolvePipeline({
backendUrl,
token: auth.token,
pipelineUrl: target.url,
pipelineName: target.name,
});
pipelines.push({
...target,
id: pipeline.id,
name: pipeline.name || target.name,
wsUrl: websocketUrl(backendUrl, pipeline.id, sessionType),
});
}
result.pipelines = pipelines.map((pipeline) => ({
label: pipeline.label,
id: pipeline.id,
name: pipeline.name,
url: pipeline.url,
}));
if (resetBeforeRun) {
const resetDiagnostics = [];
for (const pipeline of pipelines) {
const reset = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(pipeline.id)}/ws/reset/${encodeURIComponent(sessionType)}`, {
method: "POST",
token: auth.token,
});
resetDiagnostics.push({
pipeline_label: pipeline.label,
pipeline_id: pipeline.id,
status: isApiFailure(reset) ? "fail" : "ready",
http_status: reset.status,
code: reset.json.code ?? null,
reason: isApiFailure(reset) ? reset.json.msg || "Debug Chat reset failed." : "Debug Chat session reset.",
});
}
await writeFile(resetDiagnosticPath, `${JSON.stringify(resetDiagnostics, null, 2)}\n`, "utf8");
const failedReset = resetDiagnostics.find((item) => item.status === "fail");
if (failedReset) throw new Error(failedReset.reason);
}
await resetFakeProvider(fakeProviderUrl);
const jobs = [];
for (let index = 0; index < requestsPerPipeline; index += 1) {
for (const pipeline of pipelines) {
jobs.push({ ...pipeline, index });
}
}
const loadStartedAt = performance.now();
const samples = await runLoad({
jobs,
concurrency,
timeoutMs,
promptTemplate,
stream,
failureSignals,
});
const loadDurationMs = performance.now() - loadStartedAt;
const fakeProviderState = await readFakeProviderState(fakeProviderUrl);
if (fakeProviderState) {
await writeFile(fakeProviderStatePath, `${JSON.stringify(fakeProviderState, null, 2)}\n`, "utf8");
}
const metrics = buildMetrics({
samples,
requestsPerPipeline,
concurrency,
timeoutMs,
loadDurationMs,
backendUrl,
sessionType,
fakeProviderState,
});
const thresholds = buildThresholds(metrics);
const passed = Object.values(thresholds).every((item) => item.pass);
result.status = passed ? "pass" : "fail";
result.reason = passed
? "Debug Chat cross-pipeline isolation probe passed all thresholds."
: "Debug Chat cross-pipeline isolation probe found leaks, errors, or latency threshold breaches.";
result.metrics_summary = {
requests_per_pipeline: metrics.requests_per_pipeline,
total_requests: metrics.total_requests,
concurrency: metrics.concurrency,
ok_count: metrics.ok_count,
error_count: metrics.error_count,
cross_pipeline_leak_count: metrics.cross_pipeline_leak_count,
timeout_count: metrics.timeout_count,
error_rate: metrics.error_rate,
response_p95_ms: metrics.response_duration_ms.p95,
first_response_p95_ms: metrics.first_response_ms.p95,
throughput_rps: metrics.throughput_rps,
status_counts: metrics.status_counts,
by_pipeline: metrics.by_pipeline,
fake_provider_request_count: metrics.fake_provider?.request_count ?? null,
fake_provider_duration_p95_ms: metrics.provider_timing?.provider_duration_ms.p95 ?? null,
langbot_overhead_estimate_p95_ms: metrics.provider_timing?.langbot_overhead_estimate_ms.p95 ?? null,
send_to_provider_start_p95_ms: metrics.provider_timing?.send_to_provider_start_ms.p95 ?? null,
provider_finish_to_ws_final_p95_ms: metrics.provider_timing?.provider_finish_to_ws_final_ms.p95 ?? null,
};
result.thresholds_summary = thresholds;
result.artifacts = {
metrics_json: metricsPath,
samples_json: samplesPath,
fake_provider_state_json: fakeProviderState ? fakeProviderStatePath : "",
network_log: paths.networkLog,
automation_result_json: paths.automationResultJson,
result_json: paths.resultJson,
};
await writeFile(metricsPath, `${JSON.stringify({ ...metrics, thresholds }, null, 2)}\n`, "utf8");
await writeFile(samplesPath, `${JSON.stringify(samples, null, 2)}\n`, "utf8");
} catch (error) {
if (!["env_issue", "blocked"].includes(result.status)) {
result.status = looksLikeEnvIssue(error) ? "env_issue" : "fail";
}
result.reason = result.reason || safeReason(error.message);
} finally {
const finishedAt = new Date();
result.finished_at = finishedAt.toISOString();
result.finished_at_local = localIsoWithOffset(finishedAt);
result.duration_ms = finishedAt.getTime() - startedAt.getTime();
await mkdir(paths.evidenceDir, { recursive: true });
await writeResult(paths, result);
console.log(JSON.stringify(result, null, 2));
}
exit(result.status === "pass" ? 0 : result.status === "env_issue" || result.status === "blocked" ? 2 : 1);
async function backendReachable(baseUrl) {
try {
const response = await fetch(`${baseUrl.replace(/\/$/, "")}/healthz`, {
signal: AbortSignal.timeout(3000),
});
return response.status < 500;
} catch {
return false;
}
}
async function resetFakeProvider(rootUrl) {
if (!rootUrl) return;
try {
await fetch(`${normalizeProviderRootUrl(rootUrl)}/__qa/reset`, {
method: "POST",
signal: AbortSignal.timeout(3000),
});
} catch {
// Missing fake-provider diagnostics should not hide the isolation result.
}
}
async function readFakeProviderState(rootUrl) {
if (!rootUrl) return null;
try {
const response = await fetch(`${normalizeProviderRootUrl(rootUrl)}/__qa/config`, {
signal: AbortSignal.timeout(3000),
});
const json = await response.json().catch(() => ({}));
return {
status: response.ok && json.ok === true ? "loaded" : "unavailable",
url: normalizeProviderRootUrl(rootUrl),
http_status: response.status,
model: json.model || "",
config: json.config || {},
request_count: Number.isFinite(json.request_count) ? json.request_count : null,
recent_requests: Array.isArray(json.recent_requests) ? json.recent_requests : [],
};
} catch (error) {
return {
status: "unavailable",
url: normalizeProviderRootUrl(rootUrl),
reason: safeReason(error.message),
request_count: null,
recent_requests: [],
};
}
}
function normalizeProviderRootUrl(value) {
const trimmed = String(value || "").trim().replace(/\/$/, "");
return trimmed.endsWith("/v1") ? trimmed.slice(0, -3) : trimmed;
}
function pipelineIdFromUrl(url) {
if (!url) return "";
try {
const parsed = new URL(url);
return parsed.searchParams.get("id") || "";
} catch {
return "";
}
}
async function resolvePipeline({ backendUrl, token, pipelineUrl, pipelineName }) {
const idFromUrl = pipelineIdFromUrl(pipelineUrl);
if (idFromUrl) {
const response = await apiJson(backendUrl, `/api/v1/pipelines/${encodeURIComponent(idFromUrl)}`, { token });
const pipeline = response.json.data?.pipeline;
if (isApiFailure(response) || !pipeline?.uuid) {
throw new Error(response.json.msg || `Could not load pipeline ${idFromUrl}.`);
}
return { id: pipeline.uuid, name: pipeline.name || "" };
}
if (!pipelineName) {
throw new Error("Set pipeline URL or name before running this probe.");
}
const response = await apiJson(backendUrl, "/api/v1/pipelines", { token });
if (isApiFailure(response)) {
throw new Error(response.json.msg || "Failed to list pipelines.");
}
const pipeline = (response.json.data?.pipelines || []).find((item) => item.name === pipelineName);
if (!pipeline?.uuid) {
throw new Error(`Could not find pipeline named ${pipelineName}.`);
}
return { id: pipeline.uuid, name: pipeline.name || pipelineName };
}
function isApiFailure(response) {
return response.status >= 400 || (response.json.code !== undefined && response.json.code !== 0);
}
function websocketUrl(baseUrl, pipelineId, sessionTypeValue) {
const parsed = new URL(baseUrl);
parsed.protocol = parsed.protocol === "https:" ? "wss:" : "ws:";
parsed.pathname = `/api/v1/pipelines/${encodeURIComponent(pipelineId)}/ws/connect`;
parsed.search = `?session_type=${encodeURIComponent(sessionTypeValue)}`;
return parsed.toString();
}
async function runLoad(options) {
const samples = [];
const queue = [...options.jobs];
const workers = Array.from({ length: options.concurrency }, async () => {
while (queue.length > 0) {
const job = queue.shift();
if (!job) continue;
const sample = await runSingleRequest({ ...options, job });
samples.push(sample);
}
});
await Promise.all(workers);
return samples.sort((left, right) => (
left.pipeline_label.localeCompare(right.pipeline_label) || left.index - right.index
));
}
function expectedForIndex(prefix, index) {
return `${prefix}-${String(index + 1).padStart(4, "0")}`;
}
function promptForIndex(template, expected) {
return template.replaceAll("{expected}", expected);
}
function runSingleRequest({
job,
timeoutMs,
promptTemplate,
stream,
failureSignals,
}) {
return new Promise((resolvePromise) => {
const expected = expectedForIndex(job.expectedPrefix, job.index);
const prompt = promptForIndex(promptTemplate, expected);
const sample = {
index: job.index,
pipeline_label: job.label,
pipeline_id: job.id,
pipeline_name: job.name,
status: "running",
ok: false,
expected_text: expected,
expected_prefix: job.expectedPrefix,
other_prefix: job.otherPrefix,
prompt,
response_text: "",
started_at: new Date().toISOString(),
started_epoch_ms: Date.now(),
connected_at: null,
connected_epoch_ms: null,
sent_at: null,
sent_epoch_ms: null,
first_assistant_event_at: null,
first_assistant_event_epoch_ms: null,
first_assistant_event_ms: null,
first_assistant_content_at: null,
first_assistant_content_epoch_ms: null,
first_assistant_content_ms: null,
first_response_at: null,
first_response_epoch_ms: null,
connected_ms: null,
first_response_ms: null,
response_duration_ms: null,
finished_at: null,
finished_epoch_ms: null,
event_count: 0,
same_pipeline_foreign_response_count: 0,
cross_pipeline_leak_count: 0,
last_foreign_response_text: "",
error: "",
close_code: null,
close_reason: "",
};
let closed = false;
let connectedAt = 0;
let sentAt = 0;
const startedPerf = performance.now();
let client = null;
const timer = setTimeout(() => {
finish("timeout", `Timed out after ${timeoutMs} ms.`);
}, timeoutMs);
client = openRawWebSocket(job.wsUrl, {
onOpen() {
connectedAt = performance.now();
const now = Date.now();
sample.connected_at = new Date(now).toISOString();
sample.connected_epoch_ms = now;
sample.connected_ms = rounded(connectedAt - startedPerf);
},
onMessage(text) {
sample.event_count += 1;
let data;
try {
data = JSON.parse(String(text || ""));
} catch (error) {
finish("error", `Invalid WebSocket JSON: ${error.message}`);
return;
}
appendLine(paths.networkLog, JSON.stringify({
pipeline_label: job.label,
request_index: job.index,
type: data.type,
session_type: data.session_type || "",
role: data.data?.role || "",
is_final: data.data?.is_final ?? null,
content_preview: redact(String(data.data?.content || data.message || "").slice(0, 200)),
})).catch(() => {});
if (data.type === "connected") {
sentAt = performance.now();
const now = Date.now();
sample.sent_at = new Date(now).toISOString();
sample.sent_epoch_ms = now;
client.send(JSON.stringify({
type: "message",
message: [{ type: "Plain", text: prompt }],
stream,
}));
return;
}
if (data.type === "error") {
finish("error", data.message || "WebSocket error message.");
return;
}
if (data.type !== "response" || data.data?.role !== "assistant") return;
const content = String(data.data.content || "");
markFirstAssistantEvent(sample, sentAt);
if (content) sample.response_text = content;
if (content) markFirstAssistantContent(sample, sentAt);
if (containsPipelineToken(content, job.otherPrefix)) {
sample.cross_pipeline_leak_count += 1;
finish("cross_pipeline_leak", `Pipeline ${job.label} received response from ${job.otherPrefix}: ${content}`);
return;
}
if (content.includes(expected) && sample.first_response_ms === null && sentAt > 0) {
const now = Date.now();
sample.first_response_at = new Date(now).toISOString();
sample.first_response_epoch_ms = now;
sample.first_response_ms = rounded(performance.now() - sentAt);
}
if (data.data.is_final === true) {
const ok = sample.response_text.includes(expected);
if (ok) {
if (sample.first_response_ms === null && sentAt > 0) {
const now = Date.now();
sample.first_response_at = new Date(now).toISOString();
sample.first_response_epoch_ms = now;
sample.first_response_ms = rounded(performance.now() - sentAt);
}
finish("pass", "");
} else if (matchesFailureSignal(sample.response_text, failureSignals)) {
finish("app_error", `Assistant final response matched a failure signal: ${sample.response_text}`);
} else if (containsPipelineToken(sample.response_text, job.expectedPrefix)) {
sample.same_pipeline_foreign_response_count += 1;
sample.last_foreign_response_text = sample.response_text;
} else {
finish("mismatch", `Final assistant response did not include ${expected}: ${sample.response_text}`);
}
}
},
onError(error) {
finish("connection_error", `WebSocket connection error: ${error.message}`);
},
onClose(event) {
sample.close_code = event.code;
sample.close_reason = event.reason || "";
if (!closed) finish("closed", `WebSocket closed before final assistant response: ${event.code}`);
},
});
function finish(status, reason) {
if (closed) return;
closed = true;
clearTimeout(timer);
sample.status = status;
sample.ok = status === "pass";
sample.error = status === "timeout" && sample.same_pipeline_foreign_response_count > 0
? `${reason || ""} Saw ${sample.same_pipeline_foreign_response_count} same-pipeline foreign assistant response(s); last=${sample.last_foreign_response_text}`
: reason || "";
if (sentAt > 0) sample.response_duration_ms = rounded(performance.now() - sentAt);
else sample.response_duration_ms = rounded(performance.now() - startedPerf);
const now = Date.now();
sample.finished_at = new Date(now).toISOString();
sample.finished_epoch_ms = now;
try {
client?.close();
} catch {
// Closing a failed socket should not hide the sample result.
}
resolvePromise(sample);
}
});
}
function markFirstAssistantEvent(sample, sentAt) {
if (sample.first_assistant_event_ms !== null || sentAt <= 0) return;
const now = Date.now();
sample.first_assistant_event_at = new Date(now).toISOString();
sample.first_assistant_event_epoch_ms = now;
sample.first_assistant_event_ms = rounded(performance.now() - sentAt);
}
function markFirstAssistantContent(sample, sentAt) {
if (sample.first_assistant_content_ms !== null || sentAt <= 0) return;
const now = Date.now();
sample.first_assistant_content_at = new Date(now).toISOString();
sample.first_assistant_content_epoch_ms = now;
sample.first_assistant_content_ms = rounded(performance.now() - sentAt);
}
function containsPipelineToken(text, prefix) {
const escaped = String(prefix).replace(/[.*+?^${}()|[\]\\]/g, "\\$&");
return new RegExp(`${escaped}-\\d{4}`).test(String(text || ""));
}
function matchesFailureSignal(text, signals) {
const lower = String(text || "").toLowerCase();
return signals.some((signal) => lower.includes(signal.toLowerCase()));
}
function openRawWebSocket(wsUrl, handlers) {
const parsed = new URL(wsUrl);
const secure = parsed.protocol === "wss:";
const port = Number(parsed.port || (secure ? 443 : 80));
const host = parsed.hostname;
const path = `${parsed.pathname}${parsed.search}`;
const key = crypto.randomBytes(16).toString("base64");
const socket = secure
? tls.connect({ host, port, servername: host })
: net.connect({ host, port });
let opened = false;
let closed = false;
let buffer = Buffer.alloc(0);
socket.setNoDelay(true);
socket.on("connect", () => {
const originProtocol = secure ? "https" : "http";
const request = [
`GET ${path} HTTP/1.1`,
`Host: ${parsed.host}`,
"Upgrade: websocket",
"Connection: Upgrade",
`Sec-WebSocket-Key: ${key}`,
"Sec-WebSocket-Version: 13",
`Origin: ${originProtocol}://${parsed.host}`,
"",
"",
].join("\r\n");
socket.write(request);
});
socket.on("data", (chunk) => {
buffer = Buffer.concat([buffer, chunk]);
if (!opened) {
const headerEnd = buffer.indexOf("\r\n\r\n");
if (headerEnd === -1) return;
const headerText = buffer.slice(0, headerEnd).toString("utf8");
buffer = buffer.slice(headerEnd + 4);
if (!/^HTTP\/1\.1 101\b/i.test(headerText)) {
handlers.onError(new Error(`Handshake failed: ${headerText.split("\r\n")[0] || "missing status"}`));
socket.destroy();
return;
}
opened = true;
handlers.onOpen();
}
processFrames();
});
socket.on("error", (error) => {
if (!closed) handlers.onError(error);
});
socket.on("close", () => {
if (closed) return;
closed = true;
handlers.onClose({ code: null, reason: "" });
});
function processFrames() {
while (true) {
const frame = readFrame(buffer);
if (!frame) return;
buffer = buffer.slice(frame.consumed);
if (frame.opcode === 0x1) {
handlers.onMessage(frame.payload.toString("utf8"));
} else if (frame.opcode === 0x8) {
const code = frame.payload.length >= 2 ? frame.payload.readUInt16BE(0) : null;
const reason = frame.payload.length > 2 ? frame.payload.slice(2).toString("utf8") : "";
closed = true;
handlers.onClose({ code, reason });
socket.end();
return;
} else if (frame.opcode === 0x9) {
writeFrame(socket, 0xA, frame.payload);
}
}
}
return {
send(text) {
if (closed || !opened) return;
writeFrame(socket, 0x1, Buffer.from(text, "utf8"));
},
close() {
if (closed) return;
closed = true;
if (!socket.destroyed) {
if (opened) writeFrame(socket, 0x8, Buffer.alloc(0));
setTimeout(() => socket.end(), 50).unref();
}
},
};
}
function readFrame(buffer) {
if (buffer.length < 2) return null;
const first = buffer[0];
const second = buffer[1];
const opcode = first & 0x0f;
const masked = Boolean(second & 0x80);
let length = second & 0x7f;
let offset = 2;
if (length === 126) {
if (buffer.length < offset + 2) return null;
length = buffer.readUInt16BE(offset);
offset += 2;
} else if (length === 127) {
if (buffer.length < offset + 8) return null;
const high = buffer.readUInt32BE(offset);
const low = buffer.readUInt32BE(offset + 4);
length = high * 2 ** 32 + low;
offset += 8;
}
let mask = null;
if (masked) {
if (buffer.length < offset + 4) return null;
mask = buffer.slice(offset, offset + 4);
offset += 4;
}
if (buffer.length < offset + length) return null;
let payload = buffer.slice(offset, offset + length);
if (mask) {
payload = Buffer.from(payload);
for (let index = 0; index < payload.length; index += 1) {
payload[index] ^= mask[index % 4];
}
}
return {
opcode,
payload,
consumed: offset + length,
};
}
function writeFrame(socket, opcode, payload) {
const body = Buffer.isBuffer(payload) ? payload : Buffer.from(payload || "");
const mask = crypto.randomBytes(4);
const headerLength = body.length < 126 ? 2 : body.length <= 0xffff ? 4 : 10;
const header = Buffer.alloc(headerLength);
header[0] = 0x80 | opcode;
if (body.length < 126) {
header[1] = 0x80 | body.length;
} else if (body.length <= 0xffff) {
header[1] = 0x80 | 126;
header.writeUInt16BE(body.length, 2);
} else {
header[1] = 0x80 | 127;
header.writeUInt32BE(Math.floor(body.length / 2 ** 32), 2);
header.writeUInt32BE(body.length >>> 0, 6);
}
const masked = Buffer.from(body);
for (let index = 0; index < masked.length; index += 1) {
masked[index] ^= mask[index % 4];
}
socket.write(Buffer.concat([header, mask, masked]));
}
function buildMetrics({ samples, requestsPerPipeline, concurrency, timeoutMs, loadDurationMs, backendUrl, sessionType, fakeProviderState }) {
const okSamples = samples.filter((sample) => sample.ok);
const statusCounts = {};
const byPipeline = {};
for (const sample of samples) {
statusCounts[sample.status] = (statusCounts[sample.status] || 0) + 1;
if (!byPipeline[sample.pipeline_label]) {
byPipeline[sample.pipeline_label] = {
ok_count: 0,
error_count: 0,
cross_pipeline_leak_count: 0,
timeout_count: 0,
};
}
if (sample.ok) byPipeline[sample.pipeline_label].ok_count += 1;
else byPipeline[sample.pipeline_label].error_count += 1;
byPipeline[sample.pipeline_label].cross_pipeline_leak_count += sample.cross_pipeline_leak_count || 0;
if (sample.status === "timeout") byPipeline[sample.pipeline_label].timeout_count += 1;
}
const errorCount = samples.length - okSamples.length;
return {
probe: caseId,
backend_url: backendUrl,
session_type: sessionType,
requests_per_pipeline: requestsPerPipeline,
total_requests: requestsPerPipeline * 2,
completed_requests: samples.length,
concurrency,
timeout_ms: timeoutMs,
ok_count: okSamples.length,
error_count: errorCount,
timeout_count: samples.filter((sample) => sample.status === "timeout").length,
cross_pipeline_leak_count: samples.reduce((count, sample) => count + (sample.cross_pipeline_leak_count || 0), 0),
error_rate: samples.length === 0 ? 1 : rounded(errorCount / samples.length),
load_duration_ms: rounded(loadDurationMs),
throughput_rps: loadDurationMs <= 0 ? 0 : rounded(okSamples.length / (loadDurationMs / 1000)),
status_counts: statusCounts,
by_pipeline: byPipeline,
connected_ms: stats(samples.map((sample) => sample.connected_ms).filter(Number.isFinite)),
first_assistant_event_ms: stats(samples.map((sample) => sample.first_assistant_event_ms).filter(Number.isFinite)),
first_assistant_content_ms: stats(samples.map((sample) => sample.first_assistant_content_ms).filter(Number.isFinite)),
first_response_ms: stats(okSamples.map((sample) => sample.first_response_ms).filter(Number.isFinite)),
response_duration_ms: stats(okSamples.map((sample) => sample.response_duration_ms).filter(Number.isFinite)),
fake_provider: summarizeFakeProviderState(fakeProviderState),
provider_timing: buildProviderTimingMetrics(samples, fakeProviderState),
samples,
};
}
function buildThresholds(metrics) {
return {
cross_pipeline_leak_count: {
actual: metrics.cross_pipeline_leak_count,
max: 0,
pass: metrics.cross_pipeline_leak_count === 0,
},
error_rate: {
actual: metrics.error_rate,
max: maxErrorRate,
pass: metrics.error_rate <= maxErrorRate,
},
response_p95_ms: {
actual: metrics.response_duration_ms.p95,
max: responseP95BudgetMs,
pass: metrics.ok_count > 0 && metrics.response_duration_ms.p95 <= responseP95BudgetMs,
},
};
}
function positiveInteger(value, fallback) {
const parsed = Number.parseInt(String(value || ""), 10);
return Number.isInteger(parsed) && parsed > 0 ? parsed : fallback;
}
function positiveNumber(value, fallback) {
const parsed = Number(value || "");
return Number.isFinite(parsed) && parsed >= 0 ? parsed : fallback;
}
function bool(value, fallback) {
if (value === undefined || value === "") return fallback;
if (/^(1|true|yes|on)$/i.test(String(value))) return true;
if (/^(0|false|no|off)$/i.test(String(value))) return false;
return fallback;
}
function textList(value) {
return String(value || "")
.split(/\r?\n|,/)
.map((item) => item.trim())
.filter(Boolean);
}
function rounded(value) {
return Number(value.toFixed(3));
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return rounded(sorted[index]);
}
function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: rounded(Math.min(...values)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: rounded(Math.max(...values)),
};
}
function looksLikeEnvIssue(error) {
const message = String(error?.message || error || "");
return /fetch failed|ECONNREFUSED|ENOTFOUND|LANGBOT_.*not configured|Could not read recovery_key|Backend did not respond/i.test(message);
}
function safeReason(value) {
return redact(String(value || "")).slice(0, 1000);
}
@@ -0,0 +1,159 @@
#!/usr/bin/env node
import { mkdir, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
function pad(value, size = 2) {
return String(value).padStart(size, "0");
}
function localIsoWithOffset(date = new Date()) {
const offsetMinutes = -date.getTimezoneOffset();
const sign = offsetMinutes >= 0 ? "+" : "-";
const absolute = Math.abs(offsetMinutes);
return [
`${date.getFullYear()}-${pad(date.getMonth() + 1)}-${pad(date.getDate())}`,
`T${pad(date.getHours())}:${pad(date.getMinutes())}:${pad(date.getSeconds())}.${pad(date.getMilliseconds(), 3)}`,
`${sign}${pad(Math.floor(absolute / 60))}:${pad(absolute % 60)}`,
].join("");
}
function timestampSlug(date = new Date()) {
return date.toISOString().replace(/\.\d{3}Z$/, "Z").replace(/[^0-9A-Za-z]+/g, "-").replace(/^-|-$/g, "");
}
const scenarios = [
{
id: "provider-timeout",
target: "provider",
injected_fault: "fake provider request exceeds the configured timeout",
expected_status: "env_issue",
recovery_check: "provider route is reachable or the case remains outside product pass/fail",
cleanup: "stop fake provider or reset proxy route",
},
{
id: "plugin-runtime-disconnect",
target: "plugin-runtime",
injected_fault: "runtime control channel disconnects during an action",
expected_status: "fail",
recovery_check: "runtime reconnects and a deterministic plugin action succeeds",
cleanup: "restart the local plugin runtime process",
},
{
id: "mcp-stdio-server-exit",
target: "mcp",
injected_fault: "stdio server exits mid-call",
expected_status: "fail",
recovery_check: "server can be registered again and exposes the expected tool",
cleanup: "remove temporary MCP server registration",
},
{
id: "operator-missing-login",
target: "webui",
injected_fault: "browser profile is not authenticated",
expected_status: "blocked",
recovery_check: "authenticated profile can open the same WebUI origin",
cleanup: "no product cleanup; refresh local login state",
},
{
id: "transient-marketplace-timeout",
target: "marketplace",
injected_fault: "marketplace request times out once and then succeeds",
expected_status: "flaky",
recovery_check: "rerun passes with the same product revision and no code change",
cleanup: "clear retry-only evidence and keep the run classified as flaky",
},
];
function validateScenario(scenario) {
const missing = ["id", "target", "injected_fault", "expected_status", "recovery_check", "cleanup"]
.filter((key) => !scenario[key]);
const allowedStatuses = new Set(["pass", "fail", "blocked", "env_issue", "flaky"]);
return {
id: scenario.id,
pass: missing.length === 0 && allowedStatuses.has(scenario.expected_status),
missing,
expected_status: scenario.expected_status,
};
}
async function main() {
const root = resolve(env.LBS_ROOT || process.cwd());
const caseId = "langbot-fault-taxonomy-contract";
const runId = env.LBS_RUN_ID || `${timestampSlug()}-${caseId}`;
const evidenceDir = resolve(env.LBS_EVIDENCE_DIR || join(root, "reports", "evidence", runId));
await mkdir(evidenceDir, { recursive: true });
const startedAt = new Date();
const validations = scenarios.map(validateScenario);
const statusCounts = {};
for (const scenario of scenarios) {
statusCounts[scenario.expected_status] = (statusCounts[scenario.expected_status] || 0) + 1;
}
const metrics = {
probe: caseId,
scenario_count: scenarios.length,
status_counts: statusCounts,
scenarios,
validations,
};
const thresholds = {
scenario_count: { actual: scenarios.length, min: 5, pass: scenarios.length >= 5 },
invalid_scenario_count: {
actual: validations.filter((item) => !item.pass).length,
max: 0,
pass: validations.every((item) => item.pass),
},
cleanup_declared_count: {
actual: scenarios.filter((item) => item.cleanup).length,
min: scenarios.length,
pass: scenarios.every((item) => item.cleanup),
},
};
const status = Object.values(thresholds).every((item) => item.pass) ? "pass" : "fail";
const metricsPath = join(evidenceDir, "metrics.json");
const faultModelPath = join(evidenceDir, "fault-model.json");
const automationResultPath = join(evidenceDir, "automation-result.json");
const resultPath = join(evidenceDir, "result.json");
await writeFile(metricsPath, `${JSON.stringify(metrics, null, 2)}\n`, "utf8");
await writeFile(faultModelPath, `${JSON.stringify({ scenarios }, null, 2)}\n`, "utf8");
const finishedAt = new Date();
const result = {
source: "automation",
case_id: caseId,
run_id: runId,
status,
reason: status === "pass"
? "Fault taxonomy contract declares status, recovery, and cleanup for every scenario."
: "Fault taxonomy contract is missing required scenario fields.",
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: finishedAt.toISOString(),
finished_at_local: localIsoWithOffset(finishedAt),
duration_ms: finishedAt.getTime() - startedAt.getTime(),
metrics_summary: {
scenario_count: metrics.scenario_count,
status_counts: metrics.status_counts,
invalid_scenario_count: thresholds.invalid_scenario_count.actual,
},
thresholds_summary: thresholds,
artifacts: {
metrics_json: metricsPath,
fault_model_json: faultModelPath,
automation_result_json: automationResultPath,
result_json: resultPath,
},
evidence_collected: ["metrics", "filesystem"],
};
const resultText = `${JSON.stringify(result, null, 2)}\n`;
await writeFile(automationResultPath, resultText, "utf8");
await writeFile(resultPath, resultText, "utf8");
console.log(JSON.stringify(result, null, 2));
exit(status === "pass" ? 0 : 1);
}
await main();
@@ -0,0 +1,212 @@
#!/usr/bin/env node
import { mkdir, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
function pad(value, size = 2) {
return String(value).padStart(size, "0");
}
function localIsoWithOffset(date = new Date()) {
const offsetMinutes = -date.getTimezoneOffset();
const sign = offsetMinutes >= 0 ? "+" : "-";
const absolute = Math.abs(offsetMinutes);
return [
`${date.getFullYear()}-${pad(date.getMonth() + 1)}-${pad(date.getDate())}`,
`T${pad(date.getHours())}:${pad(date.getMinutes())}:${pad(date.getSeconds())}.${pad(date.getMilliseconds(), 3)}`,
`${sign}${pad(Math.floor(absolute / 60))}:${pad(absolute % 60)}`,
].join("");
}
function timestampSlug(date = new Date()) {
return date.toISOString().replace(/\.\d{3}Z$/, "Z").replace(/[^0-9A-Za-z]+/g, "-").replace(/^-|-$/g, "");
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return Number(sorted[index].toFixed(3));
}
function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: Number(Math.min(...values).toFixed(3)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: Number(Math.max(...values).toFixed(3)),
};
}
function parseJsonList(value, fallback) {
if (!value) return fallback;
try {
const parsed = JSON.parse(value);
return Array.isArray(parsed) && parsed.every((item) => typeof item === "string") ? parsed : fallback;
} catch {
return fallback;
}
}
function joinUrl(baseUrl, path) {
const base = baseUrl.replace(/\/+$/, "");
const suffix = path.startsWith("/") ? path : `/${path}`;
return `${base}${suffix}`;
}
async function fetchOnce(url, timeoutMs) {
const controller = new AbortController();
const timeout = setTimeout(() => controller.abort(), timeoutMs);
const started = performance.now();
try {
const response = await fetch(url, { method: "GET", signal: controller.signal });
await response.arrayBuffer();
const latencyMs = performance.now() - started;
return {
url,
ok: response.status < 500,
status: response.status,
latency_ms: Number(latencyMs.toFixed(3)),
error: "",
};
} catch (error) {
const latencyMs = performance.now() - started;
return {
url,
ok: false,
status: 0,
latency_ms: Number(latencyMs.toFixed(3)),
error: error instanceof Error ? error.message : String(error),
};
} finally {
clearTimeout(timeout);
}
}
async function runBatches(urls, totalRequests, concurrency, timeoutMs) {
const queue = Array.from({ length: totalRequests }, (_, index) => urls[index % urls.length]);
const results = [];
while (queue.length > 0) {
const batch = queue.splice(0, concurrency);
results.push(...await Promise.all(batch.map((url) => fetchOnce(url, timeoutMs))));
}
return results;
}
async function main() {
const root = resolve(env.LBS_ROOT || process.cwd());
const caseId = "langbot-live-backend-latency";
const runId = env.LBS_RUN_ID || `${timestampSlug()}-${caseId}`;
const evidenceDir = resolve(env.LBS_EVIDENCE_DIR || join(root, "reports", "evidence", runId));
await mkdir(evidenceDir, { recursive: true });
const startedAt = new Date();
const backendUrl = env.LANGBOT_BACKEND_URL || "";
const endpoints = parseJsonList(env.LANGBOT_PERF_ENDPOINTS_JSON, ["/healthz"]);
const totalRequests = Number(env.LANGBOT_PERF_REQUESTS || "12");
const concurrency = Number(env.LANGBOT_PERF_CONCURRENCY || "2");
const timeoutMs = Number(env.LANGBOT_PERF_TIMEOUT_MS || "5000");
const p95BudgetMs = Number(env.LANGBOT_PERF_BACKEND_P95_MS || "1000");
const maxErrorRate = Number(env.LANGBOT_PERF_MAX_ERROR_RATE || "0");
const metricsPath = join(evidenceDir, "metrics.json");
const networkLogPath = join(evidenceDir, "network.log");
const automationResultPath = join(evidenceDir, "automation-result.json");
const resultPath = join(evidenceDir, "result.json");
let status = "fail";
let reason = "";
let results = [];
if (!backendUrl) {
status = "env_issue";
reason = "LANGBOT_BACKEND_URL is not configured.";
} else {
const urls = endpoints.map((path) => joinUrl(backendUrl, path));
results = await runBatches(urls, totalRequests, concurrency, timeoutMs);
const okCount = results.filter((item) => item.ok).length;
const errorCount = results.length - okCount;
const errorRate = results.length === 0 ? 1 : errorCount / results.length;
const latencies = results.filter((item) => item.ok).map((item) => item.latency_ms);
const latencyStats = stats(latencies);
const allConnectionFailures = results.length > 0 && results.every((item) => item.status === 0);
if (allConnectionFailures) {
status = "env_issue";
reason = `Backend did not respond at ${backendUrl}.`;
} else if (latencyStats.p95 <= p95BudgetMs && errorRate <= maxErrorRate) {
status = "pass";
reason = "Live backend latency probe passed all thresholds.";
} else {
status = "fail";
reason = "Live backend latency probe breached latency or error-rate thresholds.";
}
}
const statusCounts = {};
for (const item of results) {
const key = item.status === 0 ? "network_error" : String(item.status);
statusCounts[key] = (statusCounts[key] || 0) + 1;
}
const okResults = results.filter((item) => item.ok);
const metrics = {
probe: caseId,
backend_url: backendUrl,
endpoints,
total_requests: totalRequests,
concurrency,
timeout_ms: timeoutMs,
ok_count: okResults.length,
error_count: results.length - okResults.length,
error_rate: results.length === 0 ? 1 : Number(((results.length - okResults.length) / results.length).toFixed(4)),
latency_ms: stats(okResults.map((item) => item.latency_ms)),
status_counts: statusCounts,
};
const thresholds = {
backend_p95_ms: { actual: metrics.latency_ms.p95, max: p95BudgetMs, pass: metrics.latency_ms.p95 <= p95BudgetMs },
error_rate: { actual: metrics.error_rate, max: maxErrorRate, pass: metrics.error_rate <= maxErrorRate },
};
await writeFile(metricsPath, `${JSON.stringify({ ...metrics, samples: results }, null, 2)}\n`, "utf8");
await writeFile(networkLogPath, results.map((item) => JSON.stringify(item)).join("\n") + (results.length > 0 ? "\n" : ""), "utf8");
const finishedAt = new Date();
const result = {
source: "automation",
case_id: caseId,
run_id: runId,
status,
reason,
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: finishedAt.toISOString(),
finished_at_local: localIsoWithOffset(finishedAt),
duration_ms: finishedAt.getTime() - startedAt.getTime(),
url: backendUrl,
metrics_summary: {
requests: metrics.total_requests,
concurrency: metrics.concurrency,
ok_count: metrics.ok_count,
error_rate: metrics.error_rate,
latency_p50_ms: metrics.latency_ms.p50,
latency_p95_ms: metrics.latency_ms.p95,
status_counts: metrics.status_counts,
},
thresholds_summary: thresholds,
artifacts: {
metrics_json: metricsPath,
network_log: networkLogPath,
automation_result_json: automationResultPath,
result_json: resultPath,
},
evidence_collected: ["metrics", "network", "api_diagnostic", "filesystem"],
};
const resultText = `${JSON.stringify(result, null, 2)}\n`;
await writeFile(automationResultPath, resultText, "utf8");
await writeFile(resultPath, resultText, "utf8");
console.log(JSON.stringify(result, null, 2));
exit(status === "pass" ? 0 : status === "env_issue" ? 2 : 1);
}
await main();
@@ -0,0 +1,205 @@
#!/usr/bin/env node
import { existsSync, readdirSync, statSync } from "node:fs";
import { mkdir, readFile, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
function pad(value, size = 2) {
return String(value).padStart(size, "0");
}
function localIsoWithOffset(date = new Date()) {
const offsetMinutes = -date.getTimezoneOffset();
const sign = offsetMinutes >= 0 ? "+" : "-";
const absolute = Math.abs(offsetMinutes);
return [
`${date.getFullYear()}-${pad(date.getMonth() + 1)}-${pad(date.getDate())}`,
`T${pad(date.getHours())}:${pad(date.getMinutes())}:${pad(date.getSeconds())}.${pad(date.getMilliseconds(), 3)}`,
`${sign}${pad(Math.floor(absolute / 60))}:${pad(absolute % 60)}`,
].join("");
}
function timestampSlug(date = new Date()) {
return date.toISOString().replace(/\.\d{3}Z$/, "Z").replace(/[^0-9A-Za-z]+/g, "-").replace(/^-|-$/g, "");
}
function repoRootFromEnv(root) {
return env.LANGBOT_REPO ? resolve(env.LANGBOT_REPO) : resolve(root, "..");
}
function latestBackendLog(root) {
const explicit = env.LANGBOT_BACKEND_LOG;
if (explicit) return resolve(explicit);
const logsDir = join(repoRootFromEnv(root), "data", "logs");
if (!existsSync(logsDir)) return "";
const candidates = readdirSync(logsDir)
.filter((name) => /^langbot-.*\.log$/.test(name))
.map((name) => join(logsDir, name))
.filter((path) => {
try {
return statSync(path).isFile();
} catch {
return false;
}
})
.sort((left, right) => statSync(right).mtimeMs - statSync(left).mtimeMs);
return candidates[0] || "";
}
function parseSince(startedAt) {
if (env.LANGBOT_BACKEND_LOG_SINCE) return new Date(env.LANGBOT_BACKEND_LOG_SINCE);
const lookbackSeconds = Number(env.LANGBOT_BACKEND_LOG_LOOKBACK_SECONDS || "300");
return new Date(startedAt.getTime() - lookbackSeconds * 1000);
}
function parseTimestamp(line, year) {
const localMatch = line.match(/^\[(\d{2})-(\d{2}) (\d{2}):(\d{2}):(\d{2})\.(\d{3})\]/);
if (localMatch) {
const [, month, day, hour, minute, second, millisecond] = localMatch;
return new Date(`${year}-${month}-${day}T${hour}:${minute}:${second}.${millisecond}+08:00`);
}
const accessMatch = line.match(/^\[(\d{4})-(\d{2})-(\d{2}) (\d{2}):(\d{2}):(\d{2}) ([+-]\d{4})\]/);
if (accessMatch) {
const [, fullYear, month, day, hour, minute, second, offset] = accessMatch;
const normalizedOffset = `${offset.slice(0, 3)}:${offset.slice(3)}`;
return new Date(`${fullYear}-${month}-${day}T${hour}:${minute}:${second}${normalizedOffset}`);
}
return null;
}
function findingForLine(line, number) {
const rules = [
{ severity: "fail", kind: "python_traceback", pattern: /\bTraceback(?: \(most recent call last\))?/i },
{ severity: "fail", kind: "unretrieved_task_exception", pattern: /Task exception was never retrieved/i },
{ severity: "fail", kind: "unawaited_coroutine", pattern: /RuntimeWarning:\s+coroutine .* was never awaited/i },
{ severity: "fail", kind: "unclosed_client_session", pattern: /Unclosed client session/i },
{ severity: "fail", kind: "unclosed_connector", pattern: /Unclosed connector/i },
{ severity: "fail", kind: "import_error", pattern: /\bImportError\b/i },
{ severity: "fail", kind: "error_log", pattern: /\b(?:ERROR|CRITICAL)\b/ },
{ severity: "warning", kind: "warning_log", pattern: /\bWARNING\b/ },
];
for (const rule of rules) {
if (rule.pattern.test(line)) {
return {
severity: rule.severity,
kind: rule.kind,
line: number,
excerpt: line,
};
}
}
return null;
}
function scanLines(text, since, year) {
const findings = [];
const scanned = [];
let includeContinuation = false;
const lines = text.split(/\r?\n/);
for (const [index, line] of lines.entries()) {
const number = index + 1;
const timestamp = parseTimestamp(line, year);
if (timestamp) includeContinuation = timestamp >= since;
if (!includeContinuation) continue;
scanned.push({ number, text: line });
const finding = findingForLine(line, number);
if (finding) findings.push(finding);
}
return { findings, scanned, total_lines: lines.length };
}
async function main() {
const root = resolve(env.LBS_ROOT || process.cwd());
const caseId = "langbot-live-backend-log-health";
const runId = env.LBS_RUN_ID || `${timestampSlug()}-${caseId}`;
const evidenceDir = resolve(env.LBS_EVIDENCE_DIR || join(root, "reports", "evidence", runId));
await mkdir(evidenceDir, { recursive: true });
const startedAt = new Date();
const since = parseSince(startedAt);
const logPath = latestBackendLog(root);
const metricsPath = join(evidenceDir, "metrics.json");
const findingsPath = join(evidenceDir, "findings.json");
const scannedLogPath = join(evidenceDir, "scanned-backend.log");
const automationResultPath = join(evidenceDir, "automation-result.json");
const resultPath = join(evidenceDir, "result.json");
let status = "fail";
let reason = "";
let scan = { findings: [], scanned: [], total_lines: 0 };
if (!logPath || !existsSync(logPath)) {
status = "env_issue";
reason = "No LangBot backend log file was found. Set LANGBOT_BACKEND_LOG or LANGBOT_REPO.";
} else {
const text = await readFile(logPath, "utf8");
scan = scanLines(text, since, startedAt.getFullYear());
const failCount = scan.findings.filter((item) => item.severity === "fail").length;
status = failCount === 0 ? "pass" : "fail";
reason = status === "pass"
? "Live backend log health passed; no fail-severity findings in the scanned window."
: "Live backend log health found fail-severity backend log findings.";
}
const warningCount = scan.findings.filter((item) => item.severity === "warning").length;
const failCount = scan.findings.filter((item) => item.severity === "fail").length;
const metrics = {
probe: caseId,
backend_log: logPath,
since: since.toISOString(),
scanned_line_count: scan.scanned.length,
total_line_count: scan.total_lines,
fail_count: failCount,
warning_count: warningCount,
finding_count: scan.findings.length,
};
const thresholds = {
fail_count: { actual: failCount, max: 0, pass: failCount === 0 },
};
await writeFile(metricsPath, `${JSON.stringify(metrics, null, 2)}\n`, "utf8");
await writeFile(findingsPath, `${JSON.stringify(scan.findings, null, 2)}\n`, "utf8");
await writeFile(scannedLogPath, scan.scanned.map((item) => `${item.number}: ${item.text}`).join("\n") + (scan.scanned.length > 0 ? "\n" : ""), "utf8");
const finishedAt = new Date();
const result = {
source: "automation",
case_id: caseId,
run_id: runId,
status,
reason,
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: finishedAt.toISOString(),
finished_at_local: localIsoWithOffset(finishedAt),
duration_ms: finishedAt.getTime() - startedAt.getTime(),
url: logPath,
metrics_summary: {
scanned_line_count: metrics.scanned_line_count,
fail_count: metrics.fail_count,
warning_count: metrics.warning_count,
finding_count: metrics.finding_count,
},
thresholds_summary: thresholds,
artifacts: {
metrics_json: metricsPath,
findings_json: findingsPath,
scanned_backend_log: scannedLogPath,
automation_result_json: automationResultPath,
result_json: resultPath,
},
evidence_collected: ["metrics", "backend_log", "filesystem"],
};
const resultText = `${JSON.stringify(result, null, 2)}\n`;
await writeFile(automationResultPath, resultText, "utf8");
await writeFile(resultPath, resultText, "utf8");
console.log(JSON.stringify(result, null, 2));
exit(status === "pass" ? 0 : status === "env_issue" ? 2 : 1);
}
await main();
@@ -0,0 +1,311 @@
#!/usr/bin/env node
import { mkdir, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
function pad(value, size = 2) {
return String(value).padStart(size, "0");
}
function localIsoWithOffset(date = new Date()) {
const offsetMinutes = -date.getTimezoneOffset();
const sign = offsetMinutes >= 0 ? "+" : "-";
const absolute = Math.abs(offsetMinutes);
return [
`${date.getFullYear()}-${pad(date.getMonth() + 1)}-${pad(date.getDate())}`,
`T${pad(date.getHours())}:${pad(date.getMinutes())}:${pad(date.getSeconds())}.${pad(date.getMilliseconds(), 3)}`,
`${sign}${pad(Math.floor(absolute / 60))}:${pad(absolute % 60)}`,
].join("");
}
function timestampSlug(date = new Date()) {
return date.toISOString().replace(/\.\d{3}Z$/, "Z").replace(/[^0-9A-Za-z]+/g, "-").replace(/^-|-$/g, "");
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return Number(sorted[index].toFixed(3));
}
function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: Number(Math.min(...values).toFixed(3)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: Number(Math.max(...values).toFixed(3)),
};
}
function joinUrl(baseUrl, path) {
const base = baseUrl.replace(/\/+$/, "");
const suffix = path.startsWith("/") ? path : `/${path}`;
return `${base}${suffix}`;
}
function parseJsonObject(value, fallback) {
if (!value) return fallback;
try {
const parsed = JSON.parse(value);
return parsed && typeof parsed === "object" && !Array.isArray(parsed) ? parsed : fallback;
} catch {
return fallback;
}
}
function controlPlaneEndpoints() {
return [
{
id: "healthz",
path: "/healthz",
expected_status: 200,
expected_code: 0,
p95_budget_ms: Number(env.LANGBOT_PERF_HEALTHZ_P95_MS || "500"),
required_data_fields: [],
},
{
id: "system_info",
path: "/api/v1/system/info",
expected_status: 200,
expected_code: 0,
p95_budget_ms: Number(env.LANGBOT_PERF_SYSTEM_INFO_P95_MS || "1000"),
required_data_fields: ["version", "edition", "enable_marketplace"],
},
];
}
async function fetchEndpoint(backendUrl, endpoint, timeoutMs) {
const url = joinUrl(backendUrl, endpoint.path);
const controller = new AbortController();
const timeout = setTimeout(() => controller.abort(), timeoutMs);
const started = performance.now();
let bodyText = "";
let json = null;
let jsonValid = false;
let error = "";
try {
const response = await fetch(url, {
method: "GET",
headers: { "accept": "application/json" },
signal: controller.signal,
});
bodyText = await response.text();
try {
json = bodyText ? JSON.parse(bodyText) : null;
jsonValid = json !== null;
} catch (parseError) {
error = parseError instanceof Error ? parseError.message : String(parseError);
}
const data = json && typeof json === "object" && json.data && typeof json.data === "object" ? json.data : {};
const missingFields = endpoint.required_data_fields.filter((field) => !(field in data));
const statusOk = response.status === endpoint.expected_status;
const codeOk = !json || typeof json !== "object" ? false : json.code === endpoint.expected_code;
const shapeOk = jsonValid && missingFields.length === 0;
const latencyMs = performance.now() - started;
return {
endpoint_id: endpoint.id,
path: endpoint.path,
url,
status: response.status,
ok: statusOk && codeOk && shapeOk,
status_ok: statusOk,
code_ok: codeOk,
json_valid: jsonValid,
missing_fields: missingFields,
response_code: json && typeof json === "object" ? json.code : null,
latency_ms: Number(latencyMs.toFixed(3)),
error,
};
} catch (fetchError) {
const latencyMs = performance.now() - started;
return {
endpoint_id: endpoint.id,
path: endpoint.path,
url,
status: 0,
ok: false,
status_ok: false,
code_ok: false,
json_valid: false,
missing_fields: endpoint.required_data_fields,
response_code: null,
latency_ms: Number(latencyMs.toFixed(3)),
error: fetchError instanceof Error ? fetchError.message : String(fetchError),
};
} finally {
clearTimeout(timeout);
}
}
async function runBatches(backendUrl, endpoints, totalRequests, concurrency, timeoutMs) {
const queue = Array.from({ length: totalRequests }, (_, index) => endpoints[index % endpoints.length]);
const results = [];
while (queue.length > 0) {
const batch = queue.splice(0, concurrency);
results.push(...await Promise.all(batch.map((endpoint) => fetchEndpoint(backendUrl, endpoint, timeoutMs))));
}
return results;
}
function endpointMetrics(endpoints, results) {
return Object.fromEntries(endpoints.map((endpoint) => {
const samples = results.filter((item) => item.endpoint_id === endpoint.id);
const okSamples = samples.filter((item) => item.ok);
return [
endpoint.id,
{
path: endpoint.path,
requests: samples.length,
ok_count: okSamples.length,
error_rate: samples.length === 0 ? 1 : Number(((samples.length - okSamples.length) / samples.length).toFixed(4)),
latency_ms: stats(okSamples.map((item) => item.latency_ms)),
p95_budget_ms: endpoint.p95_budget_ms,
},
];
}));
}
async function main() {
const root = resolve(env.LBS_ROOT || process.cwd());
const caseId = "langbot-live-control-plane-api";
const runId = env.LBS_RUN_ID || `${timestampSlug()}-${caseId}`;
const evidenceDir = resolve(env.LBS_EVIDENCE_DIR || join(root, "reports", "evidence", runId));
await mkdir(evidenceDir, { recursive: true });
const startedAt = new Date();
const backendUrl = env.LANGBOT_BACKEND_URL || "";
const endpoints = controlPlaneEndpoints();
const configuredBudgets = parseJsonObject(env.LANGBOT_CONTROL_PLANE_P95_BUDGETS_JSON, {});
for (const endpoint of endpoints) {
const budget = configuredBudgets[endpoint.id];
if (typeof budget === "number" && Number.isFinite(budget)) endpoint.p95_budget_ms = budget;
}
const totalRequests = Number(env.LANGBOT_CONTROL_PLANE_REQUESTS || "20");
const concurrency = Number(env.LANGBOT_CONTROL_PLANE_CONCURRENCY || "4");
const timeoutMs = Number(env.LANGBOT_CONTROL_PLANE_TIMEOUT_MS || "5000");
const maxErrorRate = Number(env.LANGBOT_CONTROL_PLANE_MAX_ERROR_RATE || "0");
const metricsPath = join(evidenceDir, "metrics.json");
const endpointsPath = join(evidenceDir, "endpoints.json");
const networkLogPath = join(evidenceDir, "network.log");
const automationResultPath = join(evidenceDir, "automation-result.json");
const resultPath = join(evidenceDir, "result.json");
let status = "fail";
let reason = "";
let results = [];
if (!backendUrl) {
status = "env_issue";
reason = "LANGBOT_BACKEND_URL is not configured.";
} else {
results = await runBatches(backendUrl, endpoints, totalRequests, concurrency, timeoutMs);
const allConnectionFailures = results.length > 0 && results.every((item) => item.status === 0);
if (allConnectionFailures) {
status = "env_issue";
reason = `Backend did not respond at ${backendUrl}.`;
}
}
const okResults = results.filter((item) => item.ok);
const statusCounts = {};
for (const item of results) {
const key = item.status === 0 ? "network_error" : String(item.status);
statusCounts[key] = (statusCounts[key] || 0) + 1;
}
const perEndpoint = endpointMetrics(endpoints, results);
const responseShapeFailures = results.filter((item) => !item.json_valid || item.missing_fields.length > 0 || !item.code_ok).length;
const errorRate = results.length === 0 ? 1 : Number(((results.length - okResults.length) / results.length).toFixed(4));
const thresholds = {
error_rate: { actual: errorRate, max: maxErrorRate, pass: errorRate <= maxErrorRate },
response_shape_failures: { actual: responseShapeFailures, max: 0, pass: responseShapeFailures === 0 },
};
for (const endpoint of endpoints) {
const actual = perEndpoint[endpoint.id].latency_ms.p95;
thresholds[`${endpoint.id}_p95_ms`] = {
actual,
max: endpoint.p95_budget_ms,
pass: actual <= endpoint.p95_budget_ms,
};
}
if (status !== "env_issue") {
const passed = Object.values(thresholds).every((item) => item.pass);
status = passed ? "pass" : "fail";
reason = passed
? "Live control-plane API probe passed all thresholds."
: "Live control-plane API probe breached shape, latency, or error-rate thresholds.";
}
const metrics = {
probe: caseId,
backend_url: backendUrl,
total_requests: totalRequests,
concurrency,
timeout_ms: timeoutMs,
ok_count: okResults.length,
error_count: results.length - okResults.length,
error_rate: errorRate,
status_counts: statusCounts,
response_shape_failures: responseShapeFailures,
endpoints: perEndpoint,
};
await writeFile(metricsPath, `${JSON.stringify({ ...metrics, samples: results }, null, 2)}\n`, "utf8");
await writeFile(endpointsPath, `${JSON.stringify(endpoints, null, 2)}\n`, "utf8");
await writeFile(networkLogPath, results.map((item) => JSON.stringify(item)).join("\n") + (results.length > 0 ? "\n" : ""), "utf8");
const finishedAt = new Date();
const result = {
source: "automation",
case_id: caseId,
run_id: runId,
status,
reason,
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: finishedAt.toISOString(),
finished_at_local: localIsoWithOffset(finishedAt),
duration_ms: finishedAt.getTime() - startedAt.getTime(),
url: backendUrl,
metrics_summary: {
requests: metrics.total_requests,
concurrency: metrics.concurrency,
ok_count: metrics.ok_count,
error_rate: metrics.error_rate,
response_shape_failures: metrics.response_shape_failures,
endpoints: Object.fromEntries(Object.entries(metrics.endpoints).map(([id, value]) => [
id,
{
path: value.path,
ok_count: value.ok_count,
error_rate: value.error_rate,
latency_p50_ms: value.latency_ms.p50,
latency_p95_ms: value.latency_ms.p95,
},
])),
status_counts: metrics.status_counts,
},
thresholds_summary: thresholds,
artifacts: {
metrics_json: metricsPath,
endpoints_json: endpointsPath,
network_log: networkLogPath,
automation_result_json: automationResultPath,
result_json: resultPath,
},
evidence_collected: ["metrics", "network", "api_diagnostic", "filesystem"],
};
const resultText = `${JSON.stringify(result, null, 2)}\n`;
await writeFile(automationResultPath, resultText, "utf8");
await writeFile(resultPath, resultText, "utf8");
console.log(JSON.stringify(result, null, 2));
exit(status === "pass" ? 0 : status === "env_issue" ? 2 : 1);
}
await main();
@@ -0,0 +1,162 @@
#!/usr/bin/env node
import { mkdir, writeFile } from "node:fs/promises";
import { join, resolve } from "node:path";
import { env, exit } from "node:process";
function pad(value, size = 2) {
return String(value).padStart(size, "0");
}
function localIsoWithOffset(date = new Date()) {
const offsetMinutes = -date.getTimezoneOffset();
const sign = offsetMinutes >= 0 ? "+" : "-";
const absolute = Math.abs(offsetMinutes);
return [
`${date.getFullYear()}-${pad(date.getMonth() + 1)}-${pad(date.getDate())}`,
`T${pad(date.getHours())}:${pad(date.getMinutes())}:${pad(date.getSeconds())}.${pad(date.getMilliseconds(), 3)}`,
`${sign}${pad(Math.floor(absolute / 60))}:${pad(absolute % 60)}`,
].join("");
}
function timestampSlug(date = new Date()) {
return date.toISOString().replace(/\.\d{3}Z$/, "Z").replace(/[^0-9A-Za-z]+/g, "-").replace(/^-|-$/g, "");
}
function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return Number(sorted[index].toFixed(3));
}
function stats(values) {
return {
min: Number(Math.min(...values).toFixed(3)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: Number(Math.max(...values).toFixed(3)),
};
}
function threshold(actual, limit, operator) {
const pass = operator === "<=" ? actual <= limit : actual >= limit;
return { actual, [operator === "<=" ? "max" : "min"]: limit, pass };
}
function makeSample(index) {
const ingress = 1 + (index % 5) * 0.22;
const pipeline = 2.8 + (index % 7) * 0.31;
const persistence = 1.1 + (index % 4) * 0.2;
const pluginIpc = 1.9 + (index % 6) * 0.27;
const rag = index % 3 === 0 ? 4.4 : 0.8 + (index % 5) * 0.18;
const streaming = 1.5 + (index % 8) * 0.24;
const provider = 80 + (index % 13) * 11;
const externalTool = index % 4 === 0 ? 25 + (index % 9) * 3 : 0;
const network = 8 + (index % 10) * 1.7;
const overhead = ingress + pipeline + persistence + pluginIpc + rag + streaming;
const external = provider + externalTool + network;
const total = overhead + external;
return {
index,
segments_ms: {
ingress,
pipeline,
persistence,
plugin_ipc: pluginIpc,
rag,
streaming,
provider,
external_tool: externalTool,
network,
},
langbot_overhead_ms: Number(overhead.toFixed(3)),
external_latency_ms: Number(external.toFixed(3)),
e2e_latency_ms: Number(total.toFixed(3)),
accounting_gap_ms: Number((total - external - overhead).toFixed(6)),
};
}
async function main() {
const root = resolve(env.LBS_ROOT || process.cwd());
const caseId = "langbot-overhead-accounting-contract";
const runId = env.LBS_RUN_ID || `${timestampSlug()}-${caseId}`;
const evidenceDir = resolve(env.LBS_EVIDENCE_DIR || join(root, "reports", "evidence", runId));
await mkdir(evidenceDir, { recursive: true });
const startedAt = new Date();
const sampleCount = Number(env.LANGBOT_PERF_CONTRACT_SAMPLES || "80");
const overheadP95BudgetMs = Number(env.LANGBOT_PERF_OVERHEAD_P95_MS || "25");
const samples = Array.from({ length: sampleCount }, (_, index) => makeSample(index));
const overheads = samples.map((sample) => sample.langbot_overhead_ms);
const e2e = samples.map((sample) => sample.e2e_latency_ms);
const external = samples.map((sample) => sample.external_latency_ms);
const gaps = samples.map((sample) => Math.abs(sample.accounting_gap_ms));
const memory = process.memoryUsage();
const metrics = {
probe: caseId,
sample_count: sampleCount,
langbot_overhead_ms: stats(overheads),
e2e_latency_ms: stats(e2e),
external_latency_ms: stats(external),
accounting_gap_max_ms: Number(Math.max(...gaps).toFixed(6)),
samples,
};
const thresholds = {
sample_count: threshold(sampleCount, 50, ">="),
langbot_overhead_p95_ms: threshold(metrics.langbot_overhead_ms.p95, overheadP95BudgetMs, "<="),
accounting_gap_max_ms: threshold(metrics.accounting_gap_max_ms, 0.001, "<="),
};
const status = Object.values(thresholds).every((item) => item.pass) ? "pass" : "fail";
const metricsPath = join(evidenceDir, "metrics.json");
const thresholdsPath = join(evidenceDir, "thresholds.json");
const resourceLogPath = join(evidenceDir, "resource-log.json");
const automationResultPath = join(evidenceDir, "automation-result.json");
const resultPath = join(evidenceDir, "result.json");
await writeFile(metricsPath, `${JSON.stringify(metrics, null, 2)}\n`, "utf8");
await writeFile(thresholdsPath, `${JSON.stringify(thresholds, null, 2)}\n`, "utf8");
await writeFile(resourceLogPath, `${JSON.stringify({ memory, pid: process.pid }, null, 2)}\n`, "utf8");
const finishedAt = new Date();
const result = {
source: "automation",
case_id: caseId,
run_id: runId,
status,
reason: status === "pass"
? "Overhead accounting contract passed all thresholds."
: "Overhead accounting contract breached one or more thresholds.",
started_at: startedAt.toISOString(),
started_at_local: localIsoWithOffset(startedAt),
finished_at: finishedAt.toISOString(),
finished_at_local: localIsoWithOffset(finishedAt),
duration_ms: finishedAt.getTime() - startedAt.getTime(),
metrics_summary: {
sample_count: metrics.sample_count,
langbot_overhead_p95_ms: metrics.langbot_overhead_ms.p95,
e2e_latency_p95_ms: metrics.e2e_latency_ms.p95,
external_latency_p95_ms: metrics.external_latency_ms.p95,
accounting_gap_max_ms: metrics.accounting_gap_max_ms,
},
thresholds_summary: thresholds,
artifacts: {
metrics_json: metricsPath,
thresholds_json: thresholdsPath,
resource_log_json: resourceLogPath,
automation_result_json: automationResultPath,
result_json: resultPath,
},
evidence_collected: ["metrics", "resource_log", "filesystem"],
};
const resultText = `${JSON.stringify(result, null, 2)}\n`;
await writeFile(automationResultPath, resultText, "utf8");
await writeFile(resultPath, resultText, "utf8");
console.log(JSON.stringify(result, null, 2));
exit(status === "pass" ? 0 : 1);
}
await main();
@@ -0,0 +1,134 @@
export function summarizeFakeProviderState(state) {
if (!state) return null;
const recentRequests = Array.isArray(state.recent_requests) ? state.recent_requests : [];
const chatRequests = recentRequests.filter((request) => String(request?.path || "").includes("/chat/completions"));
const successfulRequests = chatRequests.filter((request) => request?.status === "ok");
const faultRequests = chatRequests.filter((request) => (
request?.should_fail === true
|| request?.status === "http_fault"
|| (Number.isFinite(request?.http_status) && request.http_status >= 400)
));
return {
status: state.status || "unknown",
url: state.url || "",
request_count: Number.isFinite(state.request_count) ? state.request_count : recentRequests.length,
recent_request_count: recentRequests.length,
chat_request_count: chatRequests.length,
fault_count: faultRequests.length,
streamed_request_count: chatRequests.filter((request) => request?.stream === true).length,
duration_ms: stats(chatRequests.map((request) => numberOrNull(request?.duration_ms)).filter(Number.isFinite)),
successful_duration_ms: stats(successfulRequests.map((request) => numberOrNull(request?.duration_ms)).filter(Number.isFinite)),
first_chunk_ms: stats(successfulRequests.map((request) => numberOrNull(request?.first_chunk_ms)).filter(Number.isFinite)),
first_content_chunk_ms: stats(successfulRequests.map((request) => numberOrNull(request?.first_content_chunk_ms)).filter(Number.isFinite)),
content_chunk_count: stats(successfulRequests.map((request) => numberOrNull(request?.content_chunk_count)).filter(Number.isFinite)),
config: state.config || {},
};
}
export function buildProviderTimingMetrics(samples, state) {
const recentRequests = Array.isArray(state?.recent_requests) ? state.recent_requests : [];
const byExpectedText = new Map();
for (const request of recentRequests) {
const expected = String(request?.expected_text || "");
if (!expected) continue;
if (!byExpectedText.has(expected)) byExpectedText.set(expected, []);
byExpectedText.get(expected).push(request);
}
const segments = [];
const missingExpectedText = [];
for (const sample of samples) {
const expected = String(sample?.expected_text || "");
if (!expected) continue;
const request = (byExpectedText.get(expected) || []).shift();
if (!request) {
missingExpectedText.push(expected);
continue;
}
const segment = buildTimingSegment(sample, request);
if (segment) segments.push(segment);
}
const values = (key) => segments.map((segment) => numberOrNull(segment[key])).filter(Number.isFinite);
return {
matched_request_count: segments.length,
missing_provider_match_count: missingExpectedText.length,
missing_expected_text: missingExpectedText.slice(0, 20),
send_to_provider_start_ms: stats(values("send_to_provider_start_ms")),
provider_duration_ms: stats(values("provider_duration_ms")),
provider_finish_to_ws_final_ms: stats(values("provider_finish_to_ws_final_ms")),
langbot_overhead_estimate_ms: stats(values("langbot_overhead_estimate_ms")),
e2e_minus_provider_ms: stats(values("e2e_minus_provider_ms")),
provider_first_content_to_ws_first_content_ms: stats(values("provider_first_content_to_ws_first_content_ms")),
segments,
};
}
function buildTimingSegment(sample, request) {
const sentEpochMs = numberOrNull(sample.sent_epoch_ms);
const finishedEpochMs = numberOrNull(sample.finished_epoch_ms);
const providerStartedEpochMs = numberOrNull(request.started_epoch_ms);
const providerFinishedEpochMs = numberOrNull(request.finished_epoch_ms);
const providerFirstContentEpochMs = numberOrNull(request.first_content_chunk_epoch_ms);
const wsFirstContentEpochMs = numberOrNull(sample.first_assistant_content_epoch_ms);
const responseDurationMs = numberOrNull(sample.response_duration_ms);
const providerDurationMs = numberOrNull(request.duration_ms);
const sendToProviderStartMs = finiteDelta(providerStartedEpochMs, sentEpochMs);
const providerFinishToWsFinalMs = finiteDelta(finishedEpochMs, providerFinishedEpochMs);
const e2eMinusProviderMs = Number.isFinite(responseDurationMs) && Number.isFinite(providerDurationMs)
? rounded(responseDurationMs - providerDurationMs)
: null;
const overheadEstimateMs = Number.isFinite(sendToProviderStartMs) && Number.isFinite(providerFinishToWsFinalMs)
? rounded(sendToProviderStartMs + providerFinishToWsFinalMs)
: e2eMinusProviderMs;
return {
sample_index: sample.index,
pipeline_label: sample.pipeline_label || "",
expected_text: sample.expected_text || "",
provider_request_id: request.id || "",
provider_request_number: request.request_number ?? null,
response_duration_ms: responseDurationMs,
provider_duration_ms: providerDurationMs,
send_to_provider_start_ms: sendToProviderStartMs,
provider_finish_to_ws_final_ms: providerFinishToWsFinalMs,
langbot_overhead_estimate_ms: overheadEstimateMs,
e2e_minus_provider_ms: e2eMinusProviderMs,
provider_first_content_to_ws_first_content_ms: finiteDelta(wsFirstContentEpochMs, providerFirstContentEpochMs),
provider_status: request.status || "",
provider_http_status: request.http_status ?? null,
};
}
function finiteDelta(left, right) {
return Number.isFinite(left) && Number.isFinite(right) ? rounded(left - right) : null;
}
export function stats(values) {
if (values.length === 0) return { min: 0, p50: 0, p95: 0, p99: 0, max: 0 };
return {
min: rounded(Math.min(...values)),
p50: percentile(values, 50),
p95: percentile(values, 95),
p99: percentile(values, 99),
max: rounded(Math.max(...values)),
};
}
export function percentile(values, percentileValue) {
if (values.length === 0) return 0;
const sorted = [...values].sort((a, b) => a - b);
const index = Math.min(sorted.length - 1, Math.ceil((percentileValue / 100) * sorted.length) - 1);
return rounded(sorted[index]);
}
export function rounded(value) {
return Number(value.toFixed(3));
}
function numberOrNull(value) {
const number = Number(value);
return Number.isFinite(number) ? number : null;
}
View File
@@ -0,0 +1,285 @@
# Performance And Reliability Testing
Use this reference when a QA request asks whether LangBot is fast enough,
stable under load, or resilient to controlled faults.
These probes are manual/non-required QA gates unless a case or suite explicitly
states otherwise. They depend on a live local backend, mutable QA fixtures, and
operator-selected environment variables, so do not promote them to required CI
checks until fake-provider isolation, ownership markers, and cleanup are in
place.
## Scope
Treat `skills/` as the QA control plane:
- Cases define intent, readiness, thresholds, and required evidence.
- Probe scripts collect metrics, traces, resource logs, and artifacts.
- Reports classify the same run as `pass`, `fail`, `blocked`,
`env_issue`, or `flaky`.
Do not turn `skills/` into a load generator or chaos engine. Call a focused
tool from a `mode: probe` case when the test needs one, for example k6,
Locust, pytest-benchmark, Playwright trace collection, Toxiproxy, Docker, or a
Kubernetes disruption tool.
## LangBot Performance Model
For LangBot, performance is the cost LangBot adds around external systems:
```text
LangBot overhead = end-to-end latency - provider latency - external tool latency - network/fault injection latency
```
Measure user experience and internal composition separately:
- WebUI load and interaction latency.
- Debug Chat send-to-first-visible-token and send-to-completion latency.
- Pipeline, RAG, plugin runtime, MCP, AgentRunner, and persistence segment
latency.
- Queue wait time, concurrency, throughput, timeout rate, and p95/p99 latency.
- Startup, plugin install, knowledge-base ingestion, migration, and recovery
time.
Do not report a single message round-trip time as "LangBot performance" unless
the report also explains external provider/tool/network time.
## Evidence Contract
Performance and reliability cases should declare the evidence they need:
- `metrics`: machine-readable latency, throughput, error-rate, or recovery
metrics, usually `metrics.json`.
- `resource_log`: CPU, memory, process, connection, queue, or file descriptor
samples.
- `trace`: browser, HTTP, database, or runtime trace artifacts.
- `profile`: CPU, memory, or flamegraph profile artifacts.
- `backend_log`, `network`, `api_diagnostic`, and `filesystem` as supporting
evidence when relevant.
Automation should write `automation-result.json` with these fields when
available:
```json
{
"status": "pass",
"reason": "Probe passed all thresholds.",
"metrics_summary": {
"langbot_overhead_p95_ms": 12.4,
"error_rate": 0
},
"thresholds_summary": {
"langbot_overhead_p95_ms": { "actual": 12.4, "max": 50, "pass": true }
},
"artifacts": {
"metrics_json": "/path/to/metrics.json"
},
"evidence_collected": ["metrics", "filesystem"]
}
```
Synthetic contract probes are useful for checking the QA harness, but they are
not live product performance results. Label them as contract probes in the case
title, checks, and report.
## Chaos And Reliability Rules
Chaos tests must be narrow and reversible:
- Declare the fault model in `fault_model_json`.
- Record blast radius, target component, injection method, duration, and abort
conditions.
- Capture recovery checks and cleanup steps in the case.
- Classify unavailable dependencies as `env_issue` unless the target behavior
is LangBot's handling of that dependency failure.
- Do not run destructive fault injection against a shared or production-like
instance without explicit operator approval.
Recommended first fault models:
- Provider timeout or HTTP 429 from a fake provider endpoint.
- Plugin runtime disconnect/reconnect in a local instance.
- MCP stdio server exits mid-call.
- RAG parser fixture fails once and recovers on retry.
- Backend API endpoint returns 5xx from a controlled local proxy.
## Starter Live Probes
The starter gate separates QA-harness contracts from live product checks:
- `langbot-overhead-accounting-contract` verifies that reports can carry
overhead accounting metrics. It uses deterministic synthetic samples and is
not live product performance.
- `langbot-fault-taxonomy-contract` verifies that fault scenarios declare
expected status, recovery, and cleanup before destructive chaos tests are
added.
- `langbot-live-backend-latency` checks the unauthenticated `/healthz`
endpoint for basic backend responsiveness.
- `langbot-live-control-plane-api` checks `/healthz` and
`/api/v1/system/info` for HTTP 200, JSON `code: 0`, response shape, and
per-endpoint p95 latency.
- `langbot-live-backend-log-health` scans the recent backend log window for
fail-severity runtime findings. It is the reliability guard that should fail
the gate when HTTP probes pass but backend logs contain Traceback, ImportError,
ERROR, unclosed sessions, or unawaited coroutine signals.
Do not treat these starter live probes as Debug Chat or model-provider
performance. They are control-plane readiness checks; user-facing performance
needs browser/WebSocket/message-path measurements.
## Debug Chat Load And Fake Provider Baseline
Use `langbot-fake-provider-debug-chat-load` before real-provider load checks.
The setup automation starts a local OpenAI-compatible fake provider, registers
it as a normal LangBot provider/model, configures a local-agent pipeline, resets
Debug Chat, and then drives concurrent WebSocket messages through the live
backend.
This is not a mocked backend test. It still exercises:
- provider/model persistence and runtime reload;
- LiteLLM OpenAI-compatible requester path;
- local-agent runner selection and pipeline execution;
- Debug Chat WebSocket adapter and broadcast behavior;
- backend concurrency, timeout, and error-rate accounting.
The fake provider is deterministic and can inject controlled latency or faults
with `LANGBOT_FAKE_PROVIDER_*` variables, so it is the baseline for LangBot
message-path overhead. A fake-provider process keeps process-global config,
request counters, and recent request history; run fake-provider probes serially
or give each run its own provider instance. Concurrent probes against the same
fake-provider URL can reset or reconfigure each other's metrics.
The probe uses unique expected response tokens per
request because Debug Chat broadcasts messages to every connection in the same
session; unique tokens prevent one connection from counting another
connection's response as its own.
When the fake provider is used, reports also include provider-side timing in
`metrics.json`:
- `fake_provider.duration_ms` and `fake_provider.first_content_chunk_ms`
measure the controlled provider itself.
- `provider_timing.send_to_provider_start_ms` estimates WebSocket ingress,
pipeline dispatch, runner setup, and requester time before the provider
receives the request.
- `provider_timing.provider_finish_to_ws_final_ms` estimates the path from
provider completion back to the final Debug Chat WebSocket response.
- `provider_timing.langbot_overhead_estimate_ms` is the sum of those two
LangBot-side segments when wall-clock timestamps can be matched by the
unique expected response token.
After the baseline passes, run `langbot-fake-provider-debug-chat-slow-load` to
keep the same live backend path while injecting deterministic streaming latency.
Run `langbot-fake-provider-debug-chat-fault-recovery` to inject bounded HTTP
provider failures and require both observed failures and later successful
requests. The fault-recovery case is deliberately sequential because failed
Debug Chat responses do not carry a unique success token that can be attributed
to one concurrent connection.
Run `langbot-fake-provider-debug-chat-cross-pipeline-isolation` separately via
`langbot-debug-chat-isolation-gate`. Current LangBot releases may fail it because
of product bug [#2286](https://github.com/langbot-app/LangBot/issues/2286), where
Debug Chat replies can read singleton WebSocket proxy pipeline state after a
later message overwrites it. Treat that failure as regression evidence for the
product fix rather than as a fake-provider latency finding.
Use `langbot-space-debug-chat-concurrency-smoke` after the fake-provider
baseline. It runs a deliberately small real Space-provider batch and reports
user-visible latency, not pure LangBot overhead. Space/model/network failures
are dependency findings until the fake baseline shows the same symptom.
If a Space smoke passes but log guard finds telemetry posting Tracebacks,
classify that separately as `telemetry-proxy-noise` instead of clearing the
proxy or treating the Debug Chat path as failed.
Useful commands:
```bash
rtk bin/lbs test run langbot-fake-provider-debug-chat-load --run-id langbot-fake-load-local
rtk bin/lbs test run langbot-fake-provider-debug-chat-slow-load --run-id langbot-fake-slow-local
rtk bin/lbs test run langbot-fake-provider-debug-chat-fault-recovery --run-id langbot-fake-fault-local
rtk bin/lbs suite run langbot-debug-chat-isolation-gate --run-id langbot-debug-chat-isolation-local --include-manual-check
rtk bin/lbs test run langbot-space-debug-chat-concurrency-smoke --run-id langbot-space-smoke-local
rtk bin/lbs suite run langbot-debug-chat-load-gate --run-id langbot-debug-chat-load-local --include-manual-check
```
## Gate Layers
Use the smallest gate that answers the quality question:
- `langbot-performance-contract-gate`: fast synthetic checks for report shape,
threshold accounting, and fault taxonomy. Good for PR feedback when no live
service is running.
- `langbot-live-backend-gate`: live backend `/healthz`,
`/api/v1/system/info`, and backend log health. Good after starting a local
LangBot backend.
- `langbot-user-path-performance-gate`: browser-visible user path performance,
starting with Pipeline Debug Chat send-to-visible-completion latency. Run it
only when the browser profile and target pipeline are ready.
- `langbot-debug-chat-load-gate`: manual WebSocket Debug Chat load checks,
starting with controlled fake-provider baseline, slow-provider, and
fault-recovery profiles, plus an optional low-volume real Space-provider
smoke. Run fake-provider cases serially when they share a provider URL.
- `langbot-debug-chat-isolation-gate`: manual cross-pipeline Debug Chat
isolation regression gate. Current releases may fail because of #2286; keep it
separate from the normal load gate until that product fix lands.
- `langbot-performance-reliability-gate`: combined starter gate for synthetic
contracts plus live backend checks.
Keep environment diagnostics separate from product regressions. For example, a
SOCKS proxy without Python `socksio` support should be fixed or clearly
classified by `bin/lbs env doctor`; do not hide the resulting backend
Traceback in reports.
## Debug Chat Performance
`pipeline-debug-chat-performance` reuses the browser Debug Chat automation and
adds `metrics.json`, `metrics_summary`, and `thresholds_summary` to
`automation-result.json`.
Current metric:
```text
response_duration_ms = prompt send -> expected assistant response visible and stable
```
This is a user-path metric, not pure LangBot overhead. If it regresses, inspect
provider latency, model route health, plugin/runtime logs, WebSocket behavior,
and browser console/network evidence before attributing the whole duration to
LangBot.
### User-Path Gate Runbook
1. Start the backend and frontend. The frontend must be launched with
`VITE_API_BASE_URL="$LANGBOT_BACKEND_URL"` so browser API calls reach the
backend.
2. Run `node scripts/e2e/ensure-local-agent-pipeline.mjs --write-env`. The
setup refreshes the local QA login, skips the wizard, prepares a Debug Chat
pipeline, scans Space models, tests candidates, writes tested fallback
models, and writes the selected pipeline/model env values to
`skills/.env.local`.
3. If setup returns `env_issue`, read `model_tests` and provider errors first.
A missing Space key, failed Space scan, or unavailable model route is not a
LangBot performance regression.
4. Run
`bin/lbs suite run langbot-user-path-performance-gate --include-manual-check`.
5. Interpret `response_p95_ms` as browser-visible send-to-completion time. It
includes provider latency; use backend logs and model test evidence to
separate LangBot overhead from the external model route.
The setup keeps a `max-round` value in the generated pipeline config only
because the current backend truncator still reads that field directly. Do not
use it as a quality requirement for future local-agent behavior.
## Running The First Gate
Start with the reusable suite:
```bash
rtk bin/lbs suite plan langbot-performance-reliability-gate
rtk bin/lbs suite start langbot-performance-reliability-gate --run-id langbot-perf-rel-local
```
Run synthetic contract probes first. Run live probes only after the selected
backend/frontend instance is reachable and the run owner accepts any fault
scope.
@@ -0,0 +1,13 @@
id: langbot-debug-chat-isolation-gate
title: "LangBot Debug Chat isolation gate"
description: "Manual/non-required cross-pipeline Debug Chat isolation gate. Current releases may fail this gate because of product bug #2286; use it as regression evidence after the routing fix lands."
type: reliability
priority: p1
tags:
- reliability
- debug-chat
- websocket
- isolation
- concurrency
cases:
- langbot-fake-provider-debug-chat-cross-pipeline-isolation
@@ -0,0 +1,15 @@
id: langbot-debug-chat-load-gate
title: "LangBot Debug Chat load gate"
description: "Manual/non-required message-path load checks for Pipeline Debug Chat: controlled fake-provider baseline, slow-provider and fault-recovery profiles, plus optional real Space-provider smoke. Cross-pipeline isolation is split into langbot-debug-chat-isolation-gate because current releases may fail it due to product bug #2286."
type: performance
priority: p1
tags:
- performance
- debug-chat
- websocket
- load
cases:
- langbot-fake-provider-debug-chat-load
- langbot-fake-provider-debug-chat-slow-load
- langbot-fake-provider-debug-chat-fault-recovery
- langbot-space-debug-chat-concurrency-smoke
@@ -0,0 +1,14 @@
id: langbot-live-backend-gate
title: "LangBot live backend reliability gate"
description: "Live backend control-plane responsiveness and runtime log health checks for a locally running LangBot instance."
type: reliability
priority: p1
tags:
- performance
- reliability
- live-backend
- metrics
cases:
- langbot-live-backend-latency
- langbot-live-control-plane-api
- langbot-live-backend-log-health
@@ -0,0 +1,13 @@
id: langbot-performance-contract-gate
title: "LangBot performance contract gate"
description: "Fast synthetic contract checks for performance metric accounting and non-destructive reliability fault taxonomy."
type: contract
priority: p1
tags:
- performance
- reliability
- contract
- metrics
cases:
- langbot-overhead-accounting-contract
- langbot-fault-taxonomy-contract
@@ -0,0 +1,16 @@
id: langbot-performance-reliability-gate
title: "LangBot performance and reliability starter gate"
description: "Starter gate for LangBot performance accounting, live backend control-plane latency, and non-destructive fault taxonomy checks."
type: reliability
priority: p1
tags:
- performance
- reliability
- metrics
- chaos
cases:
- langbot-overhead-accounting-contract
- langbot-fault-taxonomy-contract
- langbot-live-backend-latency
- langbot-live-control-plane-api
- langbot-live-backend-log-health
@@ -0,0 +1,12 @@
id: langbot-user-path-performance-gate
title: "LangBot user-path performance gate"
description: "Browser-visible performance checks for user-facing LangBot paths such as Pipeline Debug Chat."
type: performance
priority: p1
tags:
- performance
- browser
- debug-chat
- user-path
cases:
- pipeline-debug-chat-performance
@@ -0,0 +1,23 @@
id: telemetry-proxy-noise
title: "Telemetry posting fails through the proxy while the target flow succeeds"
date: 2026-06-25
category: env_issue
symptoms:
- "The target Debug Chat or provider smoke request completes successfully."
- "The same log window contains a Traceback for telemetry posting."
- "The traceback references the Space telemetry endpoint."
patterns:
- "Failed to post telemetry"
- "https://space.langbot.app/api/v1/telemetry"
- "httpx.ConnectError"
likely_causes:
- "The backend process inherited proxy settings that are required for model/provider access but unreliable for telemetry posting."
- "The telemetry endpoint is temporarily unreachable through the local proxy route."
- "TLS or proxy negotiation failed for the non-critical telemetry request."
fix_steps:
- "Keep the proxy configuration needed for model/provider access; do not clear it only to hide telemetry noise."
- "Check that uppercase and lowercase proxy variables are consistent before rerunning a live Space smoke."
- "Classify the target flow and log-health result separately: a successful Debug Chat run can still have an environment log-health finding."
verification: "A rerun shows the target case success patterns and no telemetry Traceback in the scanned log window, or the report explicitly records the telemetry issue as environment noise."
related_cases:
- langbot-space-debug-chat-concurrency-smoke
+35
View File
@@ -1,5 +1,7 @@
import { existsSync } from "node:fs"; import { existsSync } from "node:fs";
import { spawnSync } from "node:child_process";
import { Socket } from "node:net"; import { Socket } from "node:net";
import { join } from "node:path";
import type { CommandContext } from "../types.ts"; import type { CommandContext } from "../types.ts";
import { parseOptions } from "../cli.ts"; import { parseOptions } from "../cli.ts";
import { loadEnv } from "../fs.ts"; import { loadEnv } from "../fs.ts";
@@ -88,6 +90,37 @@ function compareProxyPair(env: Record<string, string>, upper: string, lower: str
return null; return null;
} }
function envValue(env: Record<string, string>, key: string): string {
return process.env[key] ?? env[key] ?? "";
}
function activeSocksProxy(env: Record<string, string>): { key: string; value: string } | null {
for (const key of ["ALL_PROXY", "all_proxy", "HTTPS_PROXY", "https_proxy", "HTTP_PROXY", "http_proxy"]) {
const value = envValue(env, key);
if (/^socks/i.test(value)) return { key, value };
}
return null;
}
function checkSocksio(env: Record<string, string>): string | null {
const proxy = activeSocksProxy(env);
if (!proxy) return null;
const repo = env.LANGBOT_REPO;
const python = repo ? join(repo, ".venv", "bin", "python") : "";
if (!python || !existsSync(python)) {
return `SOCKS proxy ${proxy.key} is configured (${redactEnvValue(proxy.key, proxy.value)}), but LangBot venv python was not found; after creating the venv, verify it can import socksio.`;
}
const result = spawnSync(python, ["-c", "import socksio"], {
encoding: "utf8",
timeout: 5000,
});
if (result.status === 0) return null;
return `SOCKS proxy ${proxy.key} is configured (${redactEnvValue(proxy.key, proxy.value)}), but ${python} cannot import socksio; run \`${python} -m pip install socksio\` or start LangBot without SOCKS proxy env.`;
}
export async function commandEnvDoctor(ctx: CommandContext): Promise<number> { export async function commandEnvDoctor(ctx: CommandContext): Promise<number> {
const env = loadEnv(ctx.root); const env = loadEnv(ctx.root);
const failures: string[] = []; const failures: string[] = [];
@@ -117,6 +150,8 @@ export async function commandEnvDoctor(ctx: CommandContext): Promise<number> {
]) { ]) {
if (mismatch) failures.push(mismatch); if (mismatch) failures.push(mismatch);
} }
const socksioFailure = checkSocksio(env);
if (socksioFailure) failures.push(socksioFailure);
for (const [label, result] of await Promise.all([ for (const [label, result] of await Promise.all([
checkUrl("LANGBOT_BACKEND_URL", env.LANGBOT_BACKEND_URL).then((result) => ["LANGBOT_BACKEND_URL", result] as const), checkUrl("LANGBOT_BACKEND_URL", env.LANGBOT_BACKEND_URL).then((result) => ["LANGBOT_BACKEND_URL", result] as const),
+44 -3
View File
@@ -465,6 +465,41 @@ function outputTail(value: string | Buffer | null | undefined): string {
return String(value ?? "").trim().slice(-4000); return String(value ?? "").trim().slice(-4000);
} }
function exitStatusFromResultStatus(status: string): number {
if (status === "pass") return 0;
if (status === "blocked" || status === "env_issue" || status === "flaky") return 2;
return 1;
}
function executionStatusFromExitStatus(status: number): string {
if (status === 0) return "ok";
if (status === 2) return "classified";
return "nonzero";
}
function executionFromCaseResultFile(caseItem: Record<string, unknown>): Record<string, unknown> | null {
const resultPath = join(String(caseItem.evidence_dir), "result.json");
if (!existsSync(resultPath)) return null;
try {
const parsed = JSON.parse(readFileSync(resultPath, "utf8")) as Record<string, unknown>;
if (
parsed.case_id !== caseItem.id ||
parsed.run_id !== caseItem.run_id ||
typeof parsed.status !== "string"
) return null;
const exitStatus = exitStatusFromResultStatus(parsed.status);
return {
status: executionStatusFromExitStatus(exitStatus),
exit_status: exitStatus,
reason: typeof parsed.reason === "string" ? parsed.reason : "result.json completed",
result_status: parsed.status,
result_json: resultPath,
};
} catch {
return null;
}
}
function executionProblemStatus(executions: Array<Record<string, unknown>>): string { function executionProblemStatus(executions: Array<Record<string, unknown>>): string {
const statuses = executions.map((item) => String(item.status)); const statuses = executions.map((item) => String(item.status));
if (statuses.includes("nonzero")) return "fail"; if (statuses.includes("nonzero")) return "fail";
@@ -523,12 +558,18 @@ export function commandSuiteRun(ctx: CommandContext): number {
encoding: "utf8", encoding: "utf8",
stdio: options.json === true ? "pipe" : "inherit", stdio: options.json === true ? "pipe" : "inherit",
}); });
const status = result.error ? 1 : result.status ?? 1; const fileExecution = result.error ? executionFromCaseResultFile(caseItem) : null;
const status = typeof fileExecution?.exit_status === "number"
? fileExecution.exit_status
: result.error ? 1 : result.status ?? 1;
executions.push({ executions.push({
id: caseItem.id, id: caseItem.id,
status: status === 0 ? "ok" : "nonzero", status: fileExecution?.status ?? executionStatusFromExitStatus(status),
exit_status: status, exit_status: status,
reason: result.error?.message || "", reason: fileExecution?.reason ?? result.error?.message ?? "",
result_status: fileExecution?.result_status,
result_json: fileExecution?.result_json,
spawn_error: fileExecution && result.error ? result.error.message : undefined,
stdout: outputTail(result.stdout), stdout: outputTail(result.stdout),
stderr: outputTail(result.stderr), stderr: outputTail(result.stderr),
}); });
+92 -11
View File
@@ -271,7 +271,7 @@ function reportTemplate(mode: string): Record<string, string> {
target_tested: "Probe target, endpoint, file, command, or service actually checked", target_tested: "Probe target, endpoint, file, command, or service actually checked",
execution_path: "automation script | shell command | direct API | other", execution_path: "automation script | shell command | direct API | other",
probe_result: "What the probe observed", probe_result: "What the probe observed",
logs_or_artifacts: "Log, filesystem, API, or other artifact paths collected", metrics_or_artifacts: "Metrics, logs, filesystem artifacts, traces, or profiles collected",
diagnostics: "Extra diagnostics used, if any", diagnostics: "Extra diagnostics used, if any",
matched_troubleshooting: "Troubleshooting ids matched, if any", matched_troubleshooting: "Troubleshooting ids matched, if any",
assets_to_update: "New case/reference/troubleshooting entries to add", assets_to_update: "New case/reference/troubleshooting entries to add",
@@ -320,7 +320,7 @@ function manualEvidenceTemplate(mode: string): ManualEvidenceTemplate {
target_tested: "TODO: probe target, endpoint, file, command, or service actually checked", target_tested: "TODO: probe target, endpoint, file, command, or service actually checked",
execution_path: "TODO: automation script | shell command | direct API | other", execution_path: "TODO: automation script | shell command | direct API | other",
probe_result: "TODO: observed probe result", probe_result: "TODO: observed probe result",
logs_or_artifacts: "TODO: evidence paths or skipped reason", metrics_or_artifacts: "TODO: metrics, logs, filesystem artifacts, traces, or profiles collected",
diagnostics: "TODO: additional diagnostics used, if any", diagnostics: "TODO: additional diagnostics used, if any",
matched_troubleshooting: "TODO: troubleshooting ids matched, if any", matched_troubleshooting: "TODO: troubleshooting ids matched, if any",
assets_to_update: "TODO: case/reference/troubleshooting updates to make", assets_to_update: "TODO: case/reference/troubleshooting updates to make",
@@ -1099,6 +1099,41 @@ function executionTail(value: string | Buffer | null | undefined): string {
return String(value ?? "").trim().slice(-4000); return String(value ?? "").trim().slice(-4000);
} }
function exitStatusFromResultStatus(status: string): number {
if (status === "pass") return 0;
if (status === "blocked" || status === "env_issue" || status === "flaky") return 2;
return 1;
}
function executionStatusFromExitStatus(status: number): string {
if (status === 0) return "ok";
if (status === 2) return "classified";
return "nonzero";
}
function executionFromAutomationResultFile(
evidenceDir: string,
caseId: string,
runId: string,
): { status: string; exit_status: number; reason: string; result_status: string; path: string } | null {
const resultPath = join(evidenceDir, "automation-result.json");
if (!existsSync(resultPath)) return null;
try {
const parsed = JSON.parse(readFileSync(resultPath, "utf8")) as Record<string, unknown>;
if (parsed.case_id !== caseId || parsed.run_id !== runId || typeof parsed.status !== "string") return null;
const exitStatus = exitStatusFromResultStatus(parsed.status);
return {
status: executionStatusFromExitStatus(exitStatus),
exit_status: exitStatus,
reason: typeof parsed.reason === "string" ? parsed.reason : "automation-result.json completed",
result_status: parsed.status,
path: resultPath,
};
} catch {
return null;
}
}
function runSetupAutomation( function runSetupAutomation(
ctx: CommandContext, ctx: CommandContext,
item: StructuredItem, item: StructuredItem,
@@ -1224,6 +1259,30 @@ export function commandTestRun(ctx: CommandContext): number {
}); });
if (result.error) { if (result.error) {
const fileExecution = executionFromAutomationResultFile(
run.automation.evidence_dir,
String(run.case.id),
run.run_id,
);
if (fileExecution) {
if (options.json !== true) {
console.error(`WARN: automation spawn reported an error, but ${fileExecution.path} completed: ${result.error.message}`);
}
if (options.json === true) {
console.log(JSON.stringify({
run,
setup_executions: setupExecutions,
automation_execution: {
...fileExecution,
spawn_error: result.error.message,
stdout: executionTail(result.stdout),
stderr: executionTail(result.stderr),
},
exit_status: fileExecution.exit_status,
}, null, 2));
}
return fileExecution.exit_status;
}
if (options.json !== true) console.error(`ERROR: failed to run automation: ${result.error.message}`); if (options.json !== true) console.error(`ERROR: failed to run automation: ${result.error.message}`);
if (options.json === true) { if (options.json === true) {
console.log(JSON.stringify({ console.log(JSON.stringify({
@@ -1247,7 +1306,7 @@ export function commandTestRun(ctx: CommandContext): number {
run, run,
setup_executions: setupExecutions, setup_executions: setupExecutions,
automation_execution: { automation_execution: {
status: status === 0 ? "ok" : "nonzero", status: executionStatusFromExitStatus(status),
exit_status: status, exit_status: status,
stdout: executionTail(result.stdout), stdout: executionTail(result.stdout),
stderr: executionTail(result.stderr), stderr: executionTail(result.stderr),
@@ -1311,6 +1370,7 @@ function renderMarkdownReport(report: TestReport): string {
const environment = report.environment; const environment = report.environment;
const logGuard = report.log_guard; const logGuard = report.log_guard;
const troubleshooting = report.troubleshooting; const troubleshooting = report.troubleshooting;
const automation = report.automation_result;
const lines: string[] = []; const lines: string[] = [];
lines.push(`# Test Report: ${reportCase.id}`); lines.push(`# Test Report: ${reportCase.id}`);
@@ -1323,20 +1383,41 @@ function renderMarkdownReport(report: TestReport): string {
lines.push(`Type: ${reportCase.type}`); lines.push(`Type: ${reportCase.type}`);
lines.push(""); lines.push("");
lines.push("## Result"); lines.push("## Result");
if (automation.status === "loaded" && automation.result) {
lines.push(`- result: ${automation.result}`);
if (automation.reason) lines.push(`- reason: ${automation.reason}`);
if (automation.url) lines.push(`- target_tested: ${automation.url}`);
if (automation.path) lines.push(`- automation_result: ${automation.path}`);
if (automation.artifacts) lines.push(`- artifacts: ${JSON.stringify(automation.artifacts)}`);
} else {
lines.push(`- result: ${evidence.result}`); lines.push(`- result: ${evidence.result}`);
for (const [key, value] of Object.entries(evidence)) { for (const [key, value] of Object.entries(evidence)) {
if (key !== "result") lines.push(`- ${key}: ${value}`); if (key !== "result") lines.push(`- ${key}: ${value}`);
} }
}
lines.push(""); lines.push("");
lines.push("## Automation Result"); lines.push("## Automation Result");
lines.push(`- status: ${report.automation_result.status}`); lines.push(`- status: ${automation.status}`);
if (report.automation_result.path) lines.push(`- path: ${report.automation_result.path}`); if (automation.path) lines.push(`- path: ${automation.path}`);
if (report.automation_result.result) lines.push(`- result: ${report.automation_result.result}`); if (automation.result) lines.push(`- result: ${automation.result}`);
if (report.automation_result.reason) lines.push(`- reason: ${report.automation_result.reason}`); if (automation.reason) lines.push(`- reason: ${automation.reason}`);
if (report.automation_result.started_at_local) lines.push(`- started_at_local: ${report.automation_result.started_at_local}`); if (automation.duration_ms !== undefined) lines.push(`- duration_ms: ${automation.duration_ms}`);
if (report.automation_result.finished_at_local) lines.push(`- finished_at_local: ${report.automation_result.finished_at_local}`); if (automation.started_at_local) lines.push(`- started_at_local: ${automation.started_at_local}`);
if (report.automation_result.url) lines.push(`- url: ${report.automation_result.url}`); if (automation.finished_at_local) lines.push(`- finished_at_local: ${automation.finished_at_local}`);
if (report.automation_result.expected_text) lines.push(`- expected_text: ${report.automation_result.expected_text}`); if (automation.url) lines.push(`- url: ${automation.url}`);
if (automation.expected_text) lines.push(`- expected_text: ${automation.expected_text}`);
if (automation.metrics_summary) {
lines.push("- metrics_summary:");
lines.push(` ${JSON.stringify(automation.metrics_summary)}`);
}
if (automation.thresholds_summary) {
lines.push("- thresholds_summary:");
lines.push(` ${JSON.stringify(automation.thresholds_summary)}`);
}
if (automation.artifacts) {
lines.push("- artifacts:");
lines.push(` ${JSON.stringify(automation.artifacts)}`);
}
lines.push(""); lines.push("");
lines.push("## Environment"); lines.push("## Environment");
for (const [key, value] of Object.entries(environment)) lines.push(`- ${key}=${value}`); for (const [key, value] of Object.entries(environment)) lines.push(`- ${key}=${value}`);
+55
View File
@@ -126,6 +126,9 @@ function validateCaseItem(root: string, item: StructuredItem, skillNames: Set<st
...validateEnvKeyScalar(item, "automation_pipeline_url_env"), ...validateEnvKeyScalar(item, "automation_pipeline_url_env"),
...validateEnvKeyScalar(item, "automation_pipeline_name_env"), ...validateEnvKeyScalar(item, "automation_pipeline_name_env"),
...validateJsonScalar(item, "automation_filesystem_checks_json"), ...validateJsonScalar(item, "automation_filesystem_checks_json"),
...validateJsonScalar(item, "metrics_thresholds_json"),
...validateJsonScalar(item, "load_profile_json"),
...validateJsonScalar(item, "fault_model_json"),
...listValue(item.fields, "setup_automation").flatMap((entry) => ( ...listValue(item.fields, "setup_automation").flatMap((entry) => (
validateSetupAutomationEntry(root, entry, caseIds).map((error) => `${item.path}: ${error}`) validateSetupAutomationEntry(root, entry, caseIds).map((error) => `${item.path}: ${error}`)
)), )),
@@ -183,10 +186,62 @@ function validateCaseItem(root: string, item: StructuredItem, skillNames: Set<st
if (timeout && (!/^\d+$/.test(timeout) || Number.parseInt(timeout, 10) <= 0)) { if (timeout && (!/^\d+$/.test(timeout) || Number.parseInt(timeout, 10) <= 0)) {
errors.push(`${item.path}: 'automation_response_timeout_ms' must be a positive integer string`); errors.push(`${item.path}: 'automation_response_timeout_ms' must be a positive integer string`);
} }
for (const key of [
"automation_debug_chat_load_requests",
"automation_debug_chat_load_concurrency",
"automation_debug_chat_load_timeout_ms",
"automation_debug_chat_load_response_p95_ms",
"automation_debug_chat_load_first_response_p95_ms",
]) {
const value = scalar(item.fields, key);
if (value && (!/^\d+$/.test(value) || Number.parseInt(value, 10) <= 0)) {
errors.push(`${item.path}: '${key}' must be a positive integer string`);
}
}
for (const key of [
"automation_debug_chat_load_min_error_count",
"automation_debug_chat_load_min_ok_count",
"automation_debug_chat_load_min_provider_fault_count",
"automation_fake_provider_first_token_delay_ms",
"automation_fake_provider_chunk_delay_ms",
"automation_fake_provider_chunk_count",
"automation_fake_provider_fail_first_n",
"automation_fake_provider_fail_every_n",
]) {
const value = scalar(item.fields, key);
if (value && (!/^\d+$/.test(value) || Number.parseInt(value, 10) < 0)) {
errors.push(`${item.path}: '${key}' must be a non-negative integer string`);
}
}
for (const key of ["automation_debug_chat_load_max_error_rate", "automation_debug_chat_load_min_error_rate"]) {
const value = scalar(item.fields, key);
if (value && (!/^(?:0(?:\.\d+)?|1(?:\.0+)?)$/.test(value))) {
errors.push(`${item.path}: '${key}' must be a number string between 0 and 1`);
}
}
const fakeProviderFaultStatus = scalar(item.fields, "automation_fake_provider_fault_status");
if (fakeProviderFaultStatus) {
const parsed = Number.parseInt(fakeProviderFaultStatus, 10);
if (!/^\d+$/.test(fakeProviderFaultStatus) || parsed < 400 || parsed > 599) {
errors.push(`${item.path}: 'automation_fake_provider_fault_status' must be an HTTP 4xx or 5xx status string`);
}
}
const streamOutput = scalar(item.fields, "automation_stream_output"); const streamOutput = scalar(item.fields, "automation_stream_output");
if (streamOutput && !["0", "1", "false", "true"].includes(streamOutput)) { if (streamOutput && !["0", "1", "false", "true"].includes(streamOutput)) {
errors.push(`${item.path}: 'automation_stream_output' must be one of 0, 1, false, or true`); errors.push(`${item.path}: 'automation_stream_output' must be one of 0, 1, false, or true`);
} }
for (const key of [
"automation_debug_chat_load_stream",
"automation_debug_chat_load_reset",
"automation_debug_chat_load_fail_on_final_mismatch",
"automation_fake_provider_fail_after_first_chunk",
"automation_fake_provider_dynamic_response",
]) {
const value = scalar(item.fields, key);
if (value && !["0", "1", "false", "true"].includes(value)) {
errors.push(`${item.path}: '${key}' must be one of 0, 1, false, or true`);
}
}
const imageBase64Fixture = scalar(item.fields, "automation_image_base64_fixture"); const imageBase64Fixture = scalar(item.fields, "automation_image_base64_fixture");
if (imageBase64Fixture && !existsSync(join(root, imageBase64Fixture))) { if (imageBase64Fixture && !existsSync(join(root, imageBase64Fixture))) {
errors.push(`${item.path}: automation image fixture does not exist: ${imageBase64Fixture}`); errors.push(`${item.path}: automation image fixture does not exist: ${imageBase64Fixture}`);
+27 -2
View File
@@ -9,7 +9,18 @@ export const requiredEnvKeys = [
]; ];
export const caseModeValues = ["agent-browser", "probe"]; export const caseModeValues = ["agent-browser", "probe"];
export const caseTypeValues = ["smoke", "regression", "feature", "provider", "exploratory"]; export const caseTypeValues = [
"smoke",
"regression",
"feature",
"provider",
"exploratory",
"contract",
"performance",
"reliability",
"chaos",
"security",
];
export const casePriorityValues = ["p0", "p1", "p2"]; export const casePriorityValues = ["p0", "p1", "p2"];
export const caseRiskValues = ["low", "medium", "high"]; export const caseRiskValues = ["low", "medium", "high"];
export const caseEvidenceValues = [ export const caseEvidenceValues = [
@@ -21,10 +32,24 @@ export const caseEvidenceValues = [
"frontend_log", "frontend_log",
"api_diagnostic", "api_diagnostic",
"filesystem", "filesystem",
"metrics",
"trace",
"profile",
"resource_log",
]; ];
export const testResultStatusValues = ["pass", "fail", "blocked", "env_issue", "flaky"]; export const testResultStatusValues = ["pass", "fail", "blocked", "env_issue", "flaky"];
export const troubleshootingCategoryValues = ["product", "env_issue", "external_dependency", "blocked", "flaky"]; export const troubleshootingCategoryValues = ["product", "env_issue", "external_dependency", "blocked", "flaky"];
export const suiteTypeValues = ["smoke", "regression", "release_gate", "exploratory"]; export const suiteTypeValues = [
"smoke",
"regression",
"release_gate",
"exploratory",
"contract",
"performance",
"reliability",
"chaos",
"security",
];
export const suiteRequiredStrings = ["id", "title", "description", "type", "priority"]; export const suiteRequiredStrings = ["id", "title", "description", "type", "priority"];
export const suiteRequiredLists = ["tags", "cases"]; export const suiteRequiredLists = ["tags", "cases"];
+20
View File
@@ -91,6 +91,7 @@ export type AutomationResultEvidence = {
path?: string; path?: string;
result?: string; result?: string;
reason?: string; reason?: string;
duration_ms?: number;
started_at?: string; started_at?: string;
started_at_local?: string; started_at_local?: string;
finished_at?: string; finished_at?: string;
@@ -98,6 +99,9 @@ export type AutomationResultEvidence = {
url?: string; url?: string;
prompt?: string; prompt?: string;
expected_text?: string; expected_text?: string;
metrics_summary?: Record<string, unknown>;
thresholds_summary?: Record<string, unknown>;
artifacts?: Record<string, unknown>;
}; };
type MutableScanState = { type MutableScanState = {
@@ -594,6 +598,18 @@ function stringField(data: Record<string, unknown>, key: string): string | undef
return typeof value === "string" && value.trim() ? value : undefined; return typeof value === "string" && value.trim() ? value : undefined;
} }
function numberField(data: Record<string, unknown>, key: string): number | undefined {
const value = data[key];
return typeof value === "number" && Number.isFinite(value) ? value : undefined;
}
function objectField(data: Record<string, unknown>, key: string): Record<string, unknown> | undefined {
const value = data[key];
return value && typeof value === "object" && !Array.isArray(value)
? value as Record<string, unknown>
: undefined;
}
function evidenceDirFromOptions(options: Record<string, string | boolean>): string | undefined { function evidenceDirFromOptions(options: Record<string, string | boolean>): string | undefined {
const explicit = typeof options["evidence-dir"] === "string" ? options["evidence-dir"] : undefined; const explicit = typeof options["evidence-dir"] === "string" ? options["evidence-dir"] : undefined;
if (explicit) return resolve(explicit); if (explicit) return resolve(explicit);
@@ -628,6 +644,7 @@ export function readAutomationResultEvidence(options: Record<string, string | bo
path: resultPath, path: resultPath,
result: stringField(result, "status"), result: stringField(result, "status"),
reason: stringField(result, "reason"), reason: stringField(result, "reason"),
duration_ms: numberField(result, "duration_ms"),
started_at: stringField(result, "started_at"), started_at: stringField(result, "started_at"),
started_at_local: stringField(result, "started_at_local"), started_at_local: stringField(result, "started_at_local"),
finished_at: stringField(result, "finished_at"), finished_at: stringField(result, "finished_at"),
@@ -635,6 +652,9 @@ export function readAutomationResultEvidence(options: Record<string, string | bo
url: stringField(result, "url"), url: stringField(result, "url"),
prompt: redactSecrets(stringField(result, "prompt") ?? ""), prompt: redactSecrets(stringField(result, "prompt") ?? ""),
expected_text: stringField(result, "expected_text"), expected_text: stringField(result, "expected_text"),
metrics_summary: objectField(result, "metrics_summary"),
thresholds_summary: objectField(result, "thresholds_summary"),
artifacts: objectField(result, "artifacts"),
}; };
} catch (error) { } catch (error) {
return { status: "invalid", path: resultPath, reason: String(error) }; return { status: "invalid", path: resultPath, reason: String(error) };
+26
View File
@@ -114,6 +114,32 @@ export function automationEnvDefaults(item: StructuredItem, env: EnvSource = pro
["automation_expected_runner_id", "LANGBOT_E2E_EXPECTED_RUNNER_ID"], ["automation_expected_runner_id", "LANGBOT_E2E_EXPECTED_RUNNER_ID"],
["automation_reset_debug_chat", "LANGBOT_E2E_RESET_DEBUG_CHAT"], ["automation_reset_debug_chat", "LANGBOT_E2E_RESET_DEBUG_CHAT"],
["automation_debug_chat_session_type", "LANGBOT_E2E_DEBUG_CHAT_SESSION_TYPE"], ["automation_debug_chat_session_type", "LANGBOT_E2E_DEBUG_CHAT_SESSION_TYPE"],
["automation_debug_chat_response_p95_ms", "LANGBOT_E2E_DEBUG_CHAT_RESPONSE_P95_MS"],
["automation_debug_chat_max_error_rate", "LANGBOT_E2E_DEBUG_CHAT_MAX_ERROR_RATE"],
["automation_debug_chat_load_requests", "LANGBOT_DEBUG_CHAT_LOAD_REQUESTS"],
["automation_debug_chat_load_concurrency", "LANGBOT_DEBUG_CHAT_LOAD_CONCURRENCY"],
["automation_debug_chat_load_timeout_ms", "LANGBOT_DEBUG_CHAT_LOAD_TIMEOUT_MS"],
["automation_debug_chat_load_response_p95_ms", "LANGBOT_DEBUG_CHAT_LOAD_RESPONSE_P95_MS"],
["automation_debug_chat_load_first_response_p95_ms", "LANGBOT_DEBUG_CHAT_LOAD_FIRST_RESPONSE_P95_MS"],
["automation_debug_chat_load_max_error_rate", "LANGBOT_DEBUG_CHAT_LOAD_MAX_ERROR_RATE"],
["automation_debug_chat_load_min_error_rate", "LANGBOT_DEBUG_CHAT_LOAD_MIN_ERROR_RATE"],
["automation_debug_chat_load_min_error_count", "LANGBOT_DEBUG_CHAT_LOAD_MIN_ERROR_COUNT"],
["automation_debug_chat_load_min_ok_count", "LANGBOT_DEBUG_CHAT_LOAD_MIN_OK_COUNT"],
["automation_debug_chat_load_min_provider_fault_count", "LANGBOT_DEBUG_CHAT_LOAD_MIN_PROVIDER_FAULT_COUNT"],
["automation_debug_chat_load_expected_prefix", "LANGBOT_DEBUG_CHAT_LOAD_EXPECTED_PREFIX"],
["automation_debug_chat_load_prompt_template", "LANGBOT_DEBUG_CHAT_LOAD_PROMPT_TEMPLATE"],
["automation_debug_chat_load_stream", "LANGBOT_DEBUG_CHAT_LOAD_STREAM"],
["automation_debug_chat_load_reset", "LANGBOT_DEBUG_CHAT_LOAD_RESET"],
["automation_debug_chat_load_fail_on_final_mismatch", "LANGBOT_DEBUG_CHAT_LOAD_FAIL_ON_FINAL_MISMATCH"],
["automation_fake_provider_response_text", "LANGBOT_FAKE_PROVIDER_RESPONSE_TEXT"],
["automation_fake_provider_first_token_delay_ms", "LANGBOT_FAKE_PROVIDER_FIRST_TOKEN_DELAY_MS"],
["automation_fake_provider_chunk_delay_ms", "LANGBOT_FAKE_PROVIDER_CHUNK_DELAY_MS"],
["automation_fake_provider_chunk_count", "LANGBOT_FAKE_PROVIDER_CHUNK_COUNT"],
["automation_fake_provider_fail_first_n", "LANGBOT_FAKE_PROVIDER_FAIL_FIRST_N"],
["automation_fake_provider_fail_every_n", "LANGBOT_FAKE_PROVIDER_FAIL_EVERY_N"],
["automation_fake_provider_fault_status", "LANGBOT_FAKE_PROVIDER_FAULT_STATUS"],
["automation_fake_provider_fail_after_first_chunk", "LANGBOT_FAKE_PROVIDER_FAIL_AFTER_FIRST_CHUNK"],
["automation_fake_provider_dynamic_response", "LANGBOT_FAKE_PROVIDER_DYNAMIC_RESPONSE"],
["automation_filesystem_checks_json", "LANGBOT_E2E_FILESYSTEM_CHECKS_JSON"], ["automation_filesystem_checks_json", "LANGBOT_E2E_FILESYSTEM_CHECKS_JSON"],
["automation_plugin_package", "LANGBOT_E2E_PLUGIN_PACKAGE"], ["automation_plugin_package", "LANGBOT_E2E_PLUGIN_PACKAGE"],
["automation_expected_plugin_id", "LANGBOT_E2E_EXPECTED_PLUGIN_ID"], ["automation_expected_plugin_id", "LANGBOT_E2E_EXPECTED_PLUGIN_ID"],
+159 -1
View File
@@ -1,6 +1,6 @@
import assert from "node:assert/strict"; import assert from "node:assert/strict";
import { test } from "node:test"; import { test } from "node:test";
import { appendFileSync, existsSync, mkdtempSync, mkdirSync, readFileSync, rmSync, writeFileSync } from "node:fs"; import { appendFileSync, chmodSync, existsSync, mkdtempSync, mkdirSync, readFileSync, rmSync, writeFileSync } from "node:fs";
import { spawnSync } from "node:child_process"; import { spawnSync } from "node:child_process";
import { tmpdir } from "node:os"; import { tmpdir } from "node:os";
import { join } from "node:path"; import { join } from "node:path";
@@ -676,6 +676,82 @@ test("suite run JSON captures failed case output", () => {
} }
}); });
test("suite run preserves classified env_issue automation results", () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-suite-run-env-issue-"));
try {
const skillDir = join(tmp, "skills", "langbot-testing");
const casesDir = join(skillDir, "cases");
const suitesDir = join(skillDir, "suites");
const scriptsDir = join(tmp, "scripts");
mkdirSync(casesDir, { recursive: true });
mkdirSync(suitesDir, { recursive: true });
mkdirSync(scriptsDir, { recursive: true });
writeFileSync(join(skillDir, "SKILL.md"), "---\nname: langbot-testing\ndescription: Testing.\n---\n\n# Testing\n");
writeFileSync(join(tmp, "skills", ".env"), "");
writeFileSync(
join(casesDir, "env-case.yaml"),
[
"id: env-case",
"title: Env Case",
"mode: probe",
"area: qa",
"type: smoke",
"priority: p2",
"risk: low",
"ci_eligible: true",
"automation: scripts/env-issue.mjs",
"evidence_required:",
" - filesystem",
].join("\n"),
);
writeFileSync(
join(suitesDir, "mini.yaml"),
[
"id: mini",
"title: Mini",
"description: Mini suite.",
"type: smoke",
"priority: p2",
"tags:",
" - qa",
"cases:",
" - env-case",
].join("\n"),
);
writeFileSync(
join(scriptsDir, "env-issue.mjs"),
[
"import { mkdirSync, writeFileSync } from 'node:fs';",
"import { join } from 'node:path';",
"mkdirSync(process.env.LBS_EVIDENCE_DIR, { recursive: true });",
"const result = {",
" case_id: process.env.LBS_CASE_ID,",
" run_id: process.env.LBS_RUN_ID,",
" status: 'env_issue',",
" reason: 'backend not reachable',",
" evidence_collected: ['filesystem']",
"};",
"writeFileSync(join(process.env.LBS_EVIDENCE_DIR, 'result.json'), JSON.stringify(result));",
"writeFileSync(join(process.env.LBS_EVIDENCE_DIR, 'automation-result.json'), JSON.stringify({ ...result, source: 'automation' }));",
"process.exit(2);",
].join("\n"),
);
const result = capture(() => commandSuiteRun({
root: tmp,
args: ["suite", "run", "mini", "--run-id", "mini-run", "--evidence-dir", join(tmp, "evidence"), "--json"],
}));
assert.equal(result.code, 2);
const payload = JSON.parse(result.output);
assert.equal(payload.executions[0].status, "classified");
assert.equal(payload.report.status, "env_issue");
assert.equal(payload.report.execution_status, "ok");
} finally {
rmSync(tmp, { recursive: true, force: true });
}
});
test("suite run failure cannot be masked by stale pass result", () => { test("suite run failure cannot be masked by stale pass result", () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-suite-run-stale-pass-")); const tmp = mkdtempSync(join(tmpdir(), "lbs-suite-run-stale-pass-"));
try { try {
@@ -1369,6 +1445,56 @@ test("env doctor does not require proxy variables", async () => {
} }
}); });
test("env doctor reports missing socksio for active SOCKS proxy", async () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-env-doctor-socksio-"));
const originalAllProxy = process.env.ALL_PROXY;
const originalAllProxyLower = process.env.all_proxy;
try {
delete process.env.ALL_PROXY;
delete process.env.all_proxy;
const skillsDir = join(tmp, "skills");
const repoDir = join(tmp, "LangBot");
const webDir = join(repoDir, "web");
const venvBin = join(repoDir, ".venv", "bin");
const browserProfile = join(tmp, "browser-profile");
const chromium = join(tmp, "chromium");
mkdirSync(skillsDir, { recursive: true });
mkdirSync(webDir, { recursive: true });
mkdirSync(venvBin, { recursive: true });
mkdirSync(browserProfile, { recursive: true });
writeFileSync(chromium, "");
const python = join(venvBin, "python");
writeFileSync(python, "#!/bin/sh\nexit 1\n");
chmodSync(python, 0o755);
writeFileSync(
join(skillsDir, ".env"),
[
"LANGBOT_BACKEND_URL=http://127.0.0.1:59996",
"LANGBOT_FRONTEND_URL=http://127.0.0.1:59996",
"LANGBOT_DEV_FRONTEND_URL=http://127.0.0.1:59996",
`LANGBOT_REPO=${repoDir}`,
`LANGBOT_WEB_REPO=${webDir}`,
`LANGBOT_BROWSER_PROFILE=${browserProfile}`,
`LANGBOT_CHROMIUM_EXECUTABLE=${chromium}`,
"ALL_PROXY=socks5://127.0.0.1:7890",
].join("\n"),
);
const result = await captureAsync(() => commandEnvDoctor({ root: tmp, args: ["env", "doctor"] }));
assert.equal(result.code, 1);
assert.match(result.output, /FAIL: SOCKS proxy ALL_PROXY is configured/);
assert.match(result.output, /cannot import socksio/);
assert.match(result.output, /-m pip install socksio/);
} finally {
if (originalAllProxy === undefined) delete process.env.ALL_PROXY;
else process.env.ALL_PROXY = originalAllProxy;
if (originalAllProxyLower === undefined) delete process.env.all_proxy;
else process.env.all_proxy = originalAllProxyLower;
rmSync(tmp, { recursive: true, force: true });
}
});
test("env show redacts secret-like values by default", () => { test("env show redacts secret-like values by default", () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-env-show-redact-")); const tmp = mkdtempSync(join(tmpdir(), "lbs-env-show-redact-"));
try { try {
@@ -2521,6 +2647,38 @@ test("test report renders a reusable evidence template", () => {
assert.match(result.output, /no log files provided/); assert.match(result.output, /no log files provided/);
}); });
test("test report promotes loaded automation evidence into result section", () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-report-automation-"));
try {
writeFileSync(
join(tmp, "automation-result.json"),
JSON.stringify({
status: "pass",
reason: "latency thresholds passed",
url: "http://127.0.0.1:5300",
artifacts: { metrics_json: join(tmp, "metrics.json") },
}),
);
const result = capture(() => commandTestReport(ctx([
"test",
"report",
"langbot-live-backend-latency",
"--evidence-dir",
tmp,
"--no-auto-log",
])));
assert.equal(result.code, 0);
assert.match(result.output, /## Result\n- result: pass\n- reason: latency thresholds passed/);
assert.match(result.output, /- target_tested: http:\/\/127\.0\.0\.1:5300/);
assert.doesNotMatch(result.output, /target_tested: TODO/);
assert.match(result.output, /## Automation Result/);
} finally {
rmSync(tmp, { recursive: true, force: true });
}
});
test("validate rejects dangling case references and missing automation scripts", () => { test("validate rejects dangling case references and missing automation scripts", () => {
const tmp = mkdtempSync(join(tmpdir(), "lbs-validate-strict-")); const tmp = mkdtempSync(join(tmpdir(), "lbs-validate-strict-"));
try { try {
+3 -1
View File
@@ -1,3 +1,5 @@
"""LangBot - Production-grade platform for building agentic IM bots""" """LangBot - Production-grade platform for building agentic IM bots"""
__version__ = '4.10.2' from importlib.metadata import version
__version__ = version('langbot')
@@ -1,6 +1,9 @@
from __future__ import annotations from __future__ import annotations
from langbot.pkg.utils import constants
from .. import group from .. import group
from .box_visibility import should_hide_box_runtime_status
@group.group_class('box', '/api/v1/box') @group.group_class('box', '/api/v1/box')
@@ -9,6 +12,7 @@ class BoxRouterGroup(group.RouterGroup):
@self.route('/status', methods=['GET'], auth_type=group.AuthType.USER_TOKEN) @self.route('/status', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def _() -> str: async def _() -> str:
status = await self.ap.box_service.get_status() status = await self.ap.box_service.get_status()
status['hidden'] = should_hide_box_runtime_status(constants.edition, status.get('enabled'))
return self.success(data=status) return self.success(data=status)
@self.route('/sessions', methods=['GET'], auth_type=group.AuthType.USER_TOKEN) @self.route('/sessions', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
@@ -0,0 +1,5 @@
from __future__ import annotations
def should_hide_box_runtime_status(edition: str, box_enabled: bool | None) -> bool:
return edition == 'cloud' and box_enabled is False
@@ -138,6 +138,39 @@ class MonitoringRouterGroup(group.RouterGroup):
} }
) )
@self.route('/tool-calls', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def get_tool_calls() -> str:
"""Get tool call records"""
bot_ids = quart.request.args.getlist('botId')
pipeline_ids = quart.request.args.getlist('pipelineId')
session_ids = quart.request.args.getlist('sessionId')
start_time_str = quart.request.args.get('startTime')
end_time_str = quart.request.args.get('endTime')
limit = int(quart.request.args.get('limit', 100))
offset = int(quart.request.args.get('offset', 0))
start_time = parse_iso_datetime(start_time_str)
end_time = parse_iso_datetime(end_time_str)
tool_calls, total = await self.ap.monitoring_service.get_tool_calls(
bot_ids=bot_ids if bot_ids else None,
pipeline_ids=pipeline_ids if pipeline_ids else None,
session_ids=session_ids if session_ids else None,
start_time=start_time,
end_time=end_time,
limit=limit,
offset=offset,
)
return self.success(
data={
'tool_calls': tool_calls,
'total': total,
'limit': limit,
'offset': offset,
}
)
@self.route('/embedding-calls', methods=['GET'], auth_type=group.AuthType.USER_TOKEN) @self.route('/embedding-calls', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def get_embedding_calls() -> str: async def get_embedding_calls() -> str:
"""Get embedding call records""" """Get embedding call records"""
@@ -284,6 +317,16 @@ class MonitoringRouterGroup(group.RouterGroup):
offset=0, offset=0,
) )
# Get tool calls
tool_calls, tool_calls_total = await self.ap.monitoring_service.get_tool_calls(
bot_ids=bot_ids if bot_ids else None,
pipeline_ids=pipeline_ids if pipeline_ids else None,
start_time=start_time,
end_time=end_time,
limit=limit,
offset=0,
)
# Get sessions # Get sessions
sessions, sessions_total = await self.ap.monitoring_service.get_sessions( sessions, sessions_total = await self.ap.monitoring_service.get_sessions(
bot_ids=bot_ids if bot_ids else None, bot_ids=bot_ids if bot_ids else None,
@@ -318,12 +361,14 @@ class MonitoringRouterGroup(group.RouterGroup):
'overview': overview, 'overview': overview,
'messages': messages, 'messages': messages,
'llmCalls': llm_calls, 'llmCalls': llm_calls,
'toolCalls': tool_calls,
'embeddingCalls': embedding_calls, 'embeddingCalls': embedding_calls,
'sessions': sessions, 'sessions': sessions,
'errors': errors, 'errors': errors,
'totalCount': { 'totalCount': {
'messages': messages_total, 'messages': messages_total,
'llmCalls': llm_calls_total, 'llmCalls': llm_calls_total,
'toolCalls': tool_calls_total,
'embeddingCalls': embedding_calls_total, 'embeddingCalls': embedding_calls_total,
'sessions': sessions_total, 'sessions': sessions_total,
'errors': errors_total, 'errors': errors_total,
@@ -86,6 +86,10 @@ class PipelinesRouterGroup(group.RouterGroup):
'available_plugins': plugins, 'available_plugins': plugins,
'bound_mcp_servers': extensions_prefs.get('mcp_servers', []), 'bound_mcp_servers': extensions_prefs.get('mcp_servers', []),
'available_mcp_servers': mcp_servers, 'available_mcp_servers': mcp_servers,
'bound_mcp_resources': extensions_prefs.get('mcp_resources', []),
'mcp_resource_agent_read_enabled': extensions_prefs.get(
'mcp_resource_agent_read_enabled', True
),
'bound_skills': extensions_prefs.get('skills', []), 'bound_skills': extensions_prefs.get('skills', []),
'available_skills': available_skills, 'available_skills': available_skills,
} }
@@ -99,6 +103,8 @@ class PipelinesRouterGroup(group.RouterGroup):
bound_plugins = json_data.get('bound_plugins', []) bound_plugins = json_data.get('bound_plugins', [])
bound_mcp_servers = json_data.get('bound_mcp_servers', []) bound_mcp_servers = json_data.get('bound_mcp_servers', [])
bound_skills = json_data.get('bound_skills', []) bound_skills = json_data.get('bound_skills', [])
bound_mcp_resources = json_data.get('bound_mcp_resources')
mcp_resource_agent_read_enabled = json_data.get('mcp_resource_agent_read_enabled')
await self.ap.pipeline_service.update_pipeline_extensions( await self.ap.pipeline_service.update_pipeline_extensions(
pipeline_uuid, pipeline_uuid,
@@ -108,6 +114,8 @@ class PipelinesRouterGroup(group.RouterGroup):
enable_all_mcp_servers, enable_all_mcp_servers,
bound_skills=bound_skills, bound_skills=bound_skills,
enable_all_skills=enable_all_skills, enable_all_skills=enable_all_skills,
bound_mcp_resources=bound_mcp_resources,
mcp_resource_agent_read_enabled=mcp_resource_agent_read_enabled,
) )
return self.success() return self.success()
@@ -18,7 +18,6 @@ class BotsRouterGroup(group.RouterGroup):
@self.route('/<bot_uuid>', methods=['GET', 'PUT', 'DELETE'], auth_type=group.AuthType.USER_TOKEN_OR_API_KEY) @self.route('/<bot_uuid>', methods=['GET', 'PUT', 'DELETE'], auth_type=group.AuthType.USER_TOKEN_OR_API_KEY)
async def _(bot_uuid: str) -> str: async def _(bot_uuid: str) -> str:
if quart.request.method == 'GET': if quart.request.method == 'GET':
# 返回运行时信息,包括webhook地址等
bot = await self.ap.bot_service.get_runtime_bot_info(bot_uuid) bot = await self.ap.bot_service.get_runtime_bot_info(bot_uuid)
if bot is None: if bot is None:
return self.http_status(404, -1, 'bot not found') return self.http_status(404, -1, 'bot not found')
@@ -37,30 +36,21 @@ class BotsRouterGroup(group.RouterGroup):
from_index = json_data.get('from_index', -1) from_index = json_data.get('from_index', -1)
max_count = json_data.get('max_count', 10) max_count = json_data.get('max_count', 10)
logs, total_count = await self.ap.bot_service.list_event_logs(bot_uuid, from_index, max_count) logs, total_count = await self.ap.bot_service.list_event_logs(bot_uuid, from_index, max_count)
return self.success( return self.success(data={'logs': logs, 'total_count': total_count})
data={
'logs': logs,
'total_count': total_count,
}
)
@self.route('/<bot_uuid>/send_message', methods=['POST'], auth_type=group.AuthType.API_KEY) @self.route('/<bot_uuid>/send_message', methods=['POST'], auth_type=group.AuthType.API_KEY)
async def _(bot_uuid: str) -> str: async def _(bot_uuid: str) -> str:
"""Send message to a specific target via bot"""
json_data = await quart.request.json json_data = await quart.request.json
target_type = json_data.get('target_type') target_type = json_data.get('target_type')
target_id = json_data.get('target_id') target_id = json_data.get('target_id')
message_chain_data = json_data.get('message_chain') message_chain_data = json_data.get('message_chain')
# Validate required fields
if not target_type: if not target_type:
return self.http_status(400, -1, 'target_type is required') return self.http_status(400, -1, 'target_type is required')
if not target_id: if not target_id:
return self.http_status(400, -1, 'target_id is required') return self.http_status(400, -1, 'target_id is required')
if not message_chain_data: if not message_chain_data:
return self.http_status(400, -1, 'message_chain is required') return self.http_status(400, -1, 'message_chain is required')
# Validate target_type
if target_type not in ['person', 'group']: if target_type not in ['person', 'group']:
return self.http_status(400, -1, 'target_type must be either "person" or "group"') return self.http_status(400, -1, 'target_type must be either "person" or "group"')
@@ -72,3 +62,29 @@ class BotsRouterGroup(group.RouterGroup):
traceback.print_exc() traceback.print_exc()
return self.http_status(500, -1, f'Failed to send message: {str(e)}') return self.http_status(500, -1, f'Failed to send message: {str(e)}')
# ============ Bot Admins ============
@self.route('/<bot_uuid>/admins', methods=['GET', 'POST'], auth_type=group.AuthType.USER_TOKEN_OR_API_KEY)
async def _(bot_uuid: str) -> str:
if quart.request.method == 'GET':
admins = await self.ap.bot_service.get_bot_admins(bot_uuid)
return self.success(data={'admins': admins})
elif quart.request.method == 'POST':
json_data = await quart.request.json
launcher_type = json_data.get('launcher_type', '').strip()
launcher_id = str(json_data.get('launcher_id', '')).strip()
if not launcher_type or not launcher_id:
return self.http_status(400, -1, 'launcher_type and launcher_id are required')
try:
admin_id = await self.ap.bot_service.add_bot_admin(bot_uuid, launcher_type, launcher_id)
return self.success(data={'id': admin_id})
except Exception as e:
return self.http_status(409, -1, str(e))
@self.route(
'/<bot_uuid>/admins/<int:admin_id>', methods=['DELETE'], auth_type=group.AuthType.USER_TOKEN_OR_API_KEY
)
async def _(bot_uuid: str, admin_id: int) -> str:
await self.ap.bot_service.delete_bot_admin(bot_uuid, admin_id)
return self.success()
@@ -2,6 +2,7 @@ from __future__ import annotations
import quart import quart
import traceback import traceback
from urllib.parse import unquote
from ... import group from ... import group
@@ -28,11 +29,11 @@ class MCPRouterGroup(group.RouterGroup):
traceback.print_exc() traceback.print_exc()
return self.http_status(500, -1, f'Failed to create MCP server: {str(e)}') return self.http_status(500, -1, f'Failed to create MCP server: {str(e)}')
@self.route('/servers/<server_name>', methods=['GET', 'PUT', 'DELETE'], auth_type=group.AuthType.USER_TOKEN) @self.route(
'/servers/<path:server_name>', methods=['GET', 'PUT', 'DELETE'], auth_type=group.AuthType.USER_TOKEN
)
async def _(server_name: str) -> str: async def _(server_name: str) -> str:
"""获取、更新或删除MCP服务器配置""" """获取、更新或删除MCP服务器配置"""
from urllib.parse import unquote
server_name = unquote(server_name) server_name = unquote(server_name)
server_data = await self.ap.mcp_service.get_mcp_server_by_name(server_name) server_data = await self.ap.mcp_service.get_mcp_server_by_name(server_name)
@@ -57,12 +58,72 @@ class MCPRouterGroup(group.RouterGroup):
except Exception as e: except Exception as e:
return self.http_status(500, -1, f'Failed to delete MCP server: {str(e)}') return self.http_status(500, -1, f'Failed to delete MCP server: {str(e)}')
@self.route('/servers/<server_name>/test', methods=['POST'], auth_type=group.AuthType.USER_TOKEN) @self.route('/servers/<path:server_name>/test', methods=['POST'], auth_type=group.AuthType.USER_TOKEN)
async def _(server_name: str) -> str: async def _(server_name: str) -> str:
"""测试MCP服务器连接""" """测试MCP服务器连接"""
from urllib.parse import unquote
server_name = unquote(server_name) server_name = unquote(server_name)
server_data = await quart.request.json server_data = await quart.request.json
task_id = await self.ap.mcp_service.test_mcp_server(server_name=server_name, server_data=server_data) task_id = await self.ap.mcp_service.test_mcp_server(server_name=server_name, server_data=server_data)
return self.success(data={'task_id': task_id}) return self.success(data={'task_id': task_id})
@self.route('/servers/<path:server_name>/resources', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def _(server_name: str) -> str:
"""Get resources from an MCP server"""
server_name = unquote(server_name)
try:
resources = await self.ap.mcp_service.get_mcp_server_resources(server_name)
templates = await self.ap.mcp_service.get_mcp_server_resource_templates(server_name)
runtime_info = await self.ap.mcp_service.get_runtime_info(server_name)
return self.success(
data={
'resources': resources,
'resource_templates': templates,
'resource_capabilities': (runtime_info or {}).get('resource_capabilities', {}),
}
)
except Exception as e:
return self.http_status(500, -1, f'Failed to get resources: {str(e)}')
@self.route(
'/servers/<path:server_name>/resource-templates', methods=['GET'], auth_type=group.AuthType.USER_TOKEN
)
async def _(server_name: str) -> str:
"""Get resource templates from an MCP server"""
server_name = unquote(server_name)
try:
templates = await self.ap.mcp_service.get_mcp_server_resource_templates(server_name)
return self.success(data={'resource_templates': templates})
except Exception as e:
return self.http_status(500, -1, f'Failed to get resource templates: {str(e)}')
@self.route('/servers/<path:server_name>/logs', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def _(server_name: str) -> str:
"""Get logs from an MCP server"""
server_name = unquote(server_name)
try:
limit = int(quart.request.args.get('limit', 200))
except (TypeError, ValueError):
limit = 200
limit = min(limit, 500)
level = quart.request.args.get('level') or None
logs = await self.ap.mcp_service.get_mcp_server_logs(server_name, limit=limit, level=level)
return self.success(data={'logs': logs})
@self.route('/servers/<path:server_name>/resources/read', methods=['POST'], auth_type=group.AuthType.USER_TOKEN)
async def _(server_name: str) -> str:
"""Read a resource from an MCP server"""
server_name = unquote(server_name)
data = await quart.request.json
uri = data.get('uri')
if not uri:
return self.http_status(400, -1, 'URI is required')
try:
envelope = await self.ap.mcp_service.read_mcp_server_resource_envelope(
server_name,
uri,
max_bytes=data.get('max_bytes'),
include_blob=bool(data.get('include_blob', False)),
)
return self.success(data=envelope)
except Exception as e:
return self.http_status(500, -1, f'Failed to read resource: {str(e)}')
@@ -1,5 +1,7 @@
from __future__ import annotations from __future__ import annotations
import quart
from ... import group from ... import group
@@ -9,25 +11,41 @@ class ToolsRouterGroup(group.RouterGroup):
@self.route('', methods=['GET'], auth_type=group.AuthType.USER_TOKEN) @self.route('', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def _() -> str: async def _() -> str:
"""获取所有可用工具列表""" """获取所有可用工具列表"""
tools = await self.ap.tool_mgr.get_all_tools() pipeline_uuid = quart.request.args.get('pipeline_uuid') or quart.request.args.get('pipeline_id')
bound_plugins: list[str] | None = None
bound_mcp_servers: list[str] | None = None
tool_list = [] if pipeline_uuid:
for tool in tools: pipeline = await self.ap.pipeline_service.get_pipeline(pipeline_uuid)
tool_list.append( if pipeline is None:
{ return self.http_status(404, -1, 'pipeline not found')
'name': tool.name,
'description': tool.description, extensions_prefs = pipeline.get('extensions_preferences', {}) or {}
'human_desc': tool.human_desc, if not extensions_prefs.get('enable_all_plugins', True):
'parameters': tool.parameters, bound_plugins = [
f'{plugin.get("author", "")}/{plugin.get("name", "")}'
for plugin in extensions_prefs.get('plugins', [])
if isinstance(plugin, dict) and plugin.get('name')
]
if not extensions_prefs.get('enable_all_mcp_servers', True):
bound_mcp_servers = [
server for server in (extensions_prefs.get('mcp_servers', []) or []) if isinstance(server, str)
]
return self.success(
data={
'tools': await self.ap.tool_mgr.get_tool_catalog(
bound_plugins,
bound_mcp_servers,
include_skill_authoring=True,
)
} }
) )
return self.success(data={'tools': tool_list})
@self.route('/<tool_name>', methods=['GET'], auth_type=group.AuthType.USER_TOKEN) @self.route('/<tool_name>', methods=['GET'], auth_type=group.AuthType.USER_TOKEN)
async def _(tool_name: str) -> str: async def _(tool_name: str) -> str:
"""获取特定工具详情""" """获取特定工具详情"""
tools = await self.ap.tool_mgr.get_all_tools() tools = await self.ap.tool_mgr.get_all_tools(include_skill_authoring=True)
for tool in tools: for tool in tools:
if tool.name == tool_name: if tool.name == tool_name:
@@ -1,3 +1,5 @@
import base64
import quart import quart
from .. import group from .. import group
@@ -30,6 +32,50 @@ class SurveyRouterGroup(group.RouterGroup):
return self.fail(2, 'Failed to submit response') return self.fail(2, 'Failed to submit response')
return self.fail(3, 'Survey not available') return self.fail(3, 'Survey not available')
@self.route('/feedback', methods=['POST'], auth_type=group.AuthType.USER_TOKEN)
async def _feedback(user_email: str) -> str:
"""Submit on-demand user feedback from the sidebar."""
json_data = await quart.request.get_json(silent=True) or {}
content = str(json_data.get('content', '')).strip()
attachments = json_data.get('attachments', [])
if not content:
return self.fail(1, 'content required')
if len(content) > 5000:
return self.fail(2, 'content too long')
if not isinstance(attachments, list):
return self.fail(3, 'attachments must be an array')
if len(attachments) > 3:
return self.fail(4, 'too many attachments')
normalized_attachments = []
for item in attachments:
if not isinstance(item, dict):
continue
data_url = str(item.get('data_url', ''))
mime_type = str(item.get('mime_type', ''))[:128]
name = str(item.get('name', ''))[:255]
if not data_url.startswith('data:image/'):
continue
try:
payload = data_url.split(',', 1)[1]
if len(base64.b64decode(payload, validate=True)) > 1024 * 1024:
return self.fail(5, 'attachment too large')
except Exception:
return self.fail(5, 'attachment too large')
normalized_attachments.append({'name': name, 'mime_type': mime_type, 'data_url': data_url})
if self.ap.survey:
ok = await self.ap.survey.submit_feedback(
content=content,
attachments=normalized_attachments,
user_email=user_email,
)
if ok:
return self.success()
return self.fail(6, 'Failed to submit feedback')
return self.fail(7, 'Survey not available')
@self.route('/dismiss', methods=['POST'], auth_type=group.AuthType.USER_TOKEN) @self.route('/dismiss', methods=['POST'], auth_type=group.AuthType.USER_TOKEN)
async def _dismiss() -> str: async def _dismiss() -> str:
"""Dismiss survey.""" """Dismiss survey."""
@@ -195,6 +195,13 @@ class UserRouterGroup(group.RouterGroup):
@self.route('/set-password', methods=['POST'], auth_type=group.AuthType.USER_TOKEN) @self.route('/set-password', methods=['POST'], auth_type=group.AuthType.USER_TOKEN)
async def _(user_email: str) -> str: async def _(user_email: str) -> str:
"""Set password for Space account (first time) or change password""" """Set password for Space account (first time) or change password"""
# Check if modifying login info is allowed
allow_modify_login_info = self.ap.instance_config.data.get('system', {}).get(
'allow_modify_login_info', True
)
if not allow_modify_login_info:
return self.http_status(403, -1, 'Modifying login info is disabled')
json_data = await quart.request.json json_data = await quart.request.json
new_password = json_data.get('new_password') new_password = json_data.get('new_password')
current_password = json_data.get('current_password') current_password = json_data.get('current_password')
+32
View File
@@ -199,3 +199,35 @@ class BotService:
# Send message via adapter # Send message via adapter
await runtime_bot.adapter.send_message(target_type, str(target_id), message_chain) await runtime_bot.adapter.send_message(target_type, str(target_id), message_chain)
# ============ Bot Admins ============
async def get_bot_admins(self, bot_uuid: str) -> list[dict]:
from ....entity.persistence import bot as persistence_bot
result = await self.ap.persistence_mgr.execute_async(
sqlalchemy.select(persistence_bot.BotAdmin).where(persistence_bot.BotAdmin.bot_uuid == bot_uuid)
)
return [{'id': r.id, 'launcher_type': r.launcher_type, 'launcher_id': r.launcher_id} for r in result.all()]
async def add_bot_admin(self, bot_uuid: str, launcher_type: str, launcher_id: str) -> int:
from ....entity.persistence import bot as persistence_bot
result = await self.ap.persistence_mgr.execute_async(
sqlalchemy.insert(persistence_bot.BotAdmin).values(
bot_uuid=bot_uuid,
launcher_type=launcher_type,
launcher_id=launcher_id,
)
)
return result.inserted_primary_key[0]
async def delete_bot_admin(self, bot_uuid: str, admin_id: int) -> None:
from ....entity.persistence import bot as persistence_bot
await self.ap.persistence_mgr.execute_async(
sqlalchemy.delete(persistence_bot.BotAdmin).where(
persistence_bot.BotAdmin.bot_uuid == bot_uuid,
persistence_bot.BotAdmin.id == admin_id,
)
)
@@ -243,6 +243,7 @@ class MaintenanceService:
tables = { tables = {
'messages': persistence_monitoring.MonitoringMessage.id, 'messages': persistence_monitoring.MonitoringMessage.id,
'llm_calls': persistence_monitoring.MonitoringLLMCall.id, 'llm_calls': persistence_monitoring.MonitoringLLMCall.id,
'tool_calls': persistence_monitoring.MonitoringToolCall.id,
'embedding_calls': persistence_monitoring.MonitoringEmbeddingCall.id, 'embedding_calls': persistence_monitoring.MonitoringEmbeddingCall.id,
'errors': persistence_monitoring.MonitoringError.id, 'errors': persistence_monitoring.MonitoringError.id,
'sessions': persistence_monitoring.MonitoringSession.session_id, 'sessions': persistence_monitoring.MonitoringSession.session_id,

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