Files
LangBot/src/langbot/pkg/pipeline/pipelinemgr.py
T
Dongchuan Fu 0755beebcd feat: add supports for dify hitl (#2226)
* feat: Implement workflow form handling for paused workflows

- Added module-level storage for pending forms to manage state across sessions.
- Introduced functions to set, get, and clear pending forms with expiration handling.
- Enhanced DifyServiceAPIRunner to support resuming paused workflows via form actions.
- Implemented logic to yield human input requests and display appropriate messages.
- Updated workflow submission methods to handle paused states and resume actions.
- Ensured proper merging of pending form actions with user inputs for seamless interaction.

* feat: Add '_routed_by_rule' variable to form action in Lark and Telegram adapters

* feat: Enhance Lark and Telegram adapters with new form handling for paused workflows

* feat: Enhance TelegramAdapter to handle form action buttons and message threading

* feat: Improve TelegramAdapter message handling with enhanced error management and draft message support

* feat: Add the function for formatting human input text to support adapters without rich UI.

* feat(dingtalk): implement human input card support and card action handling

- Add a new module `card_callback.py` to handle card action button clicks from DingTalk.
- Introduce `DingTalkCardActionHandler` to process card action callbacks and extract parameters.
- Update `DingTalkAdapter` to manage card state and handle form input through a single card template.
- Add configuration for `human_input_card_template_id` in `dingtalk.yaml` to specify the template for human input.
- Create a new card template `dingtalk_human_input_card.json` for rendering human input prompts and buttons.

* feat(dingtalk): enhance human input card functionality with streaming support and active turn management

- Updated the DingTalk card template to enable streaming mode and multi-update configuration.
- Removed the obsolete delete_card method from DingTalkClient to streamline card management.
- Enhanced DingTalkAdapter to manage active turn cards and accumulated streaming text, ensuring a seamless user experience during human input prompts.
- Modified the create_message_card method to utilize existing active cards for resumed workflows, preventing duplication.
- Improved the _paint_form_on_card method to update existing cards with human input prompts and buttons dynamically.
- Updated the dingtalk_human_input_card.json template to reflect the new streaming capabilities and configuration options.

* feat(wecom): implement Dify human input pause handling with button interaction support

* feat(qqofficial): implement Dify human input button interaction handling and markdown keyboard support

* feat(qqofficial): implement one-click QR binding and enhance localization support

* feat(discord): implement Discord form view with button interactions for Dify actions

* fix(telegram): correct group chat type check and handle oversized callback data for Telegram actions
fix(difysvapi): ensure safe access to remove-think configuration in pipeline settings

* feat(dify): add support for chatflow app type and enhance human input handling

* feat(telegram): add action title feedback for user selections in Telegram messages

* feat(lark): enhance LarkAdapter to store form content for resume notices

* feat(dingtalk): update display formatting for card content with HTML line breaks

* feat(dingtalk): add feedback functionality to cards with 👍/👎 buttons

- Implemented feedback state management for cards, allowing users to provide feedback via thumbs up/down buttons.
- Enhanced card rendering to include feedback buttons when appropriate.
- Registered feedback listeners to handle feedback events and update card states accordingly.
- Updated the card template to support dynamic button rendering for feedback actions.
- Improved error handling and logging for feedback actions and card updates.

* fix: add Avatar component to dingtalk_human_input_card.json for enhanced user interaction

* feat(wecom): add optional source block to interactive template cards for enhanced branding

* feat(wecom): add functions for template card action extraction and update, enhance button interaction handling

* feat(qqofficial): synchronize passive-reply counter with inbound message sequence

* feat(qqofficial): add method to identify invisible form placeholder chunks in messages

* feat(dingtalk): add download link for human input card template and enhance dynamic form configuration

* feat(telegram): enhance message handling with group stream deletion and form placeholder detection

* Add unit tests for DingTalk, Lark, WeComBot, and Dify service API runners

- Implement tests for DingTalk adapter helper functions including form content cleaning, input extraction, and completed input lines.
- Create unit tests for Lark adapter helper functions focusing on input extraction and completed input lines.
- Add tests for WeComBot template card functionalities, including event extraction and payload building for human input.
- Enhance Dify service API runner tests to cover human input forms, including input collection, action handling, and form snapshot extraction.

* feat: Enhance Telegram and QQ Official adapters with select field handling and form action processing

- Added support for select fields in Telegram adapter, including option extraction and callback handling.
- Implemented form action processing for Telegram callbacks, improving user interaction feedback.
- Introduced new helper functions for building keyboards and resolving select button actions in QQ Official adapter.
- Enhanced DifyServiceAPIRunner to handle cumulative streaming responses and improve error handling during workflow resumes.
- Added unit tests for new functionalities in Telegram and QQ Official adapters, ensuring robust behavior for select fields and form actions.

* feat(lark): add functions for current input definitions and visible form content handling
feat(qqofficial): update fallback text handling for non-streaming scenarios
feat(difysvapi): enhance form content processing for interactive fields and actions
test: add unit tests for Lark and QQ Official adapter functionalities

* Add tests for DingTalk adapter content processing and markdown formatting

- Updated the assertion in `test_dingtalk_completed_input_lines_include_text_and_select_values` to remove unnecessary markdown formatting.
- Added new tests to verify that `_dingtalk_clean_form_content` maintains the order of prompts and completed values in various scenarios.
- Introduced `test_dingtalk_card_markdown_preserves_internal_line_breaks` to ensure internal line breaks are correctly converted to HTML line breaks.

* feat: Refactor input handling and feedback messages across multiple adapters

* feat: Update the human-computer interaction template cards, and optimize the prompt information and content display.

* feat: Refactor pending form handling to isolate by bot and pipeline

* feat: Enhance error handling and caching for Dify and WeCom interactions

* feat: Enhance select input handling and validation in Dify API runner and Telegram adapter

* feat: Add missing completed input lines handling in DingTalk adapter

* feat: Add pipeline_uuid handling across multiple adapters and update related tests
2026-07-13 00:42:46 +08:00

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from __future__ import annotations
import typing
import traceback
import sqlalchemy
from ..core import app
from . import entities as pipeline_entities
from ..entity.persistence import pipeline as persistence_pipeline
from . import stage
import langbot_plugin.api.entities.builtin.platform.message as platform_message
import langbot_plugin.api.entities.builtin.platform.events as platform_events
import langbot_plugin.api.entities.events as events
from ..utils import importutil
from .config_coercion import coerce_pipeline_config
import langbot_plugin.api.entities.builtin.provider.session as provider_session
import langbot_plugin.api.entities.builtin.pipeline.query as pipeline_query
from . import (
resprule,
bansess,
cntfilter,
process,
longtext,
respback,
wrapper,
preproc,
ratelimit,
msgtrun,
)
importutil.import_modules_in_pkgs(
[
resprule,
bansess,
cntfilter,
process,
longtext,
respback,
wrapper,
preproc,
ratelimit,
msgtrun,
]
)
class StageInstContainer:
"""阶段实例容器"""
inst_name: str
inst: stage.PipelineStage
def __init__(self, inst_name: str, inst: stage.PipelineStage):
self.inst_name = inst_name
self.inst = inst
class RuntimePipeline:
"""运行时流水线"""
ap: app.Application
pipeline_entity: persistence_pipeline.LegacyPipeline
"""流水线实体"""
stage_containers: list[StageInstContainer]
"""阶段实例容器"""
bound_plugins: list[str] | None
"""绑定到此流水线的插件列表(格式:author/plugin_name),None表示启用所有"""
bound_mcp_servers: list[str] | None
"""绑定到此流水线的MCP服务器列表(格式:uuid),None表示启用所有"""
enable_all_plugins: bool
"""是否启用所有插件"""
enable_all_mcp_servers: bool
"""是否启用所有MCP服务器"""
def __init__(
self,
ap: app.Application,
pipeline_entity: persistence_pipeline.LegacyPipeline,
stage_containers: list[StageInstContainer],
):
self.ap = ap
self.pipeline_entity = pipeline_entity
self.stage_containers = stage_containers
# Extract bound plugins and MCP servers from extensions_preferences
extensions_prefs = pipeline_entity.extensions_preferences or {}
self.enable_all_plugins = extensions_prefs.get('enable_all_plugins', True)
self.enable_all_mcp_servers = extensions_prefs.get('enable_all_mcp_servers', True)
local_agent_config = (pipeline_entity.config or {}).get('ai', {}).get('local-agent', {})
self.mcp_resource_attachments = local_agent_config.get(
'mcp-resources',
extensions_prefs.get('mcp_resources', []),
)
self.mcp_resource_agent_read_enabled = local_agent_config.get(
'mcp-resource-agent-read-enabled',
extensions_prefs.get('mcp_resource_agent_read_enabled', True),
)
if self.enable_all_plugins:
# None indicates to use all available plugins
self.bound_plugins = None
else:
plugin_list = extensions_prefs.get('plugins', [])
self.bound_plugins = [f'{p["author"]}/{p["name"]}' for p in plugin_list] if plugin_list else []
if self.enable_all_mcp_servers:
# None indicates to use all available MCP servers
self.bound_mcp_servers = None
else:
mcp_server_list = extensions_prefs.get('mcp_servers', [])
self.bound_mcp_servers = mcp_server_list if mcp_server_list else []
async def run(self, query: pipeline_query.Query):
query.pipeline_config = self.pipeline_entity.config
# Store bound plugins and MCP servers in query for filtering
query.variables['_pipeline_bound_plugins'] = self.bound_plugins
query.variables['_pipeline_bound_mcp_servers'] = self.bound_mcp_servers
query.variables['_pipeline_mcp_resource_attachments'] = self.mcp_resource_attachments
query.variables['_pipeline_mcp_resource_agent_read_enabled'] = self.mcp_resource_agent_read_enabled
# Record query start for monitoring
try:
# Get bot name from bot_uuid
bot_name = 'WebChat'
if query.bot_uuid:
try:
bot = await self.ap.bot_service.get_bot(query.bot_uuid, include_secret=False)
if bot:
bot_name = bot.get('name', 'Unknown')
except Exception:
pass
# Store for later use in process_query
query.variables['_monitoring_bot_name'] = bot_name
query.variables['_monitoring_pipeline_name'] = self.pipeline_entity.name
except Exception as e:
self.ap.logger.error(f'Failed to prepare monitoring data: {e}')
await self.process_query(query)
async def _check_output(self, query: pipeline_query.Query, result: pipeline_entities.StageProcessResult):
"""检查输出"""
if result.user_notice:
# 处理str类型
if isinstance(result.user_notice, str):
result.user_notice = platform_message.MessageChain([platform_message.Plain(text=result.user_notice)])
elif isinstance(result.user_notice, list):
result.user_notice = platform_message.MessageChain(*result.user_notice)
if query.pipeline_config['output']['misc']['at-sender'] and isinstance(
query.message_event, platform_events.GroupMessage
):
result.user_notice.insert(0, platform_message.At(target=query.message_event.sender.id))
if await query.adapter.is_stream_output_supported() and query.resp_messages:
await query.adapter.reply_message_chunk(
message_source=query.message_event,
bot_message=query.resp_messages[-1],
message=result.user_notice,
quote_origin=query.pipeline_config['output']['misc']['quote-origin'],
is_final=[msg.is_final for msg in query.resp_messages][-1],
)
else:
await query.adapter.reply_message(
message_source=query.message_event,
message=result.user_notice,
quote_origin=query.pipeline_config['output']['misc']['quote-origin'],
)
if result.debug_notice:
self.ap.logger.debug(result.debug_notice)
if result.console_notice:
self.ap.logger.info(result.console_notice)
if result.error_notice:
self.ap.logger.error(result.error_notice)
# Mark query as having error
query.variables['_monitoring_has_error'] = True
# Record error to monitoring system
try:
bot_name = query.variables.get('_monitoring_bot_name', 'Unknown')
pipeline_name = query.variables.get('_monitoring_pipeline_name', 'Unknown')
message_id = query.variables.get('_monitoring_message_id', '')
session_id = f'{query.launcher_type.value if hasattr(query.launcher_type, "value") else query.launcher_type}_{query.launcher_id}'
# Update message status to error
if message_id:
await self.ap.monitoring_service.update_message_status(
message_id=message_id,
status='error',
level='error',
)
# Record error log
await self.ap.monitoring_service.record_error(
bot_id=query.bot_uuid or 'unknown',
bot_name=bot_name,
pipeline_id=self.pipeline_entity.uuid,
pipeline_name=pipeline_name,
error_type='PipelineError',
error_message=result.error_notice,
session_id=session_id,
stack_trace=result.debug_notice if result.debug_notice else None,
message_id=message_id,
)
except Exception as e:
self.ap.logger.error(f'Failed to record error to monitoring: {e}')
async def _execute_from_stage(
self,
stage_index: int,
query: pipeline_query.Query,
):
"""从指定阶段开始执行,实现了责任链模式和基于生成器的阶段分叉功能。
如何看懂这里为什么这么写?
去问 GPT-4:
Q1: 现在有一个责任链,其中有多个stage,query对象在其中传递,stage.process可能返回Result也有可能返回typing.AsyncGenerator[Result, None]
如果返回的是生成器,需要挨个生成result,检查是否result中是否要求继续,如果要求继续就进行下一个stage。如果此次生成器产生的result处理完了,就继续生成下一个result,
调用后续的stage,直到该生成器全部生成完。责任链中可能有多个stage会返回生成器
Q2: 不是这样的,你可能理解有误。如果我们责任链上有这些Stage:
A B C D E F G
如果所有的stage都返回Result,且所有Result都要求继续,那么执行顺序是:
A B C D E F G
现在假设C返回的是AsyncGenerator,那么执行顺序是:
A B C D E F G C D E F G C D E F G ...
Q3: 但是如果不止一个stage会返回生成器呢?
"""
i = stage_index
while i < len(self.stage_containers):
stage_container = self.stage_containers[i]
query.current_stage_name = stage_container.inst_name # 标记到 Query 对象里
result = stage_container.inst.process(query, stage_container.inst_name)
if isinstance(result, typing.Coroutine):
result = await result
if isinstance(result, pipeline_entities.StageProcessResult): # 直接返回结果
self.ap.logger.debug(
f'Stage {stage_container.inst_name} processed query {query.query_id} res {result.result_type}'
)
await self._check_output(query, result)
if result.result_type == pipeline_entities.ResultType.INTERRUPT:
self.ap.logger.debug(f'Stage {stage_container.inst_name} interrupted query {query.query_id}')
break
elif result.result_type == pipeline_entities.ResultType.CONTINUE:
query = result.new_query
elif isinstance(result, typing.AsyncGenerator): # 生成器
self.ap.logger.debug(f'Stage {stage_container.inst_name} processed query {query.query_id} gen')
async for sub_result in result:
self.ap.logger.debug(
f'Stage {stage_container.inst_name} processed query {query.query_id} res {sub_result.result_type}'
)
await self._check_output(query, sub_result)
if sub_result.result_type == pipeline_entities.ResultType.INTERRUPT:
self.ap.logger.debug(f'Stage {stage_container.inst_name} interrupted query {query.query_id}')
break
elif sub_result.result_type == pipeline_entities.ResultType.CONTINUE:
query = sub_result.new_query
await self._execute_from_stage(i + 1, query)
break
i += 1
async def process_query(self, query: pipeline_query.Query):
"""处理请求"""
# Get monitoring metadata
bot_name = query.variables.get('_monitoring_bot_name', 'Unknown')
pipeline_name = query.variables.get('_monitoring_pipeline_name', 'Unknown')
# Get runner name from pipeline config
runner_name = None
if query.pipeline_config and 'ai' in query.pipeline_config and 'runner' in query.pipeline_config['ai']:
runner_name = query.pipeline_config['ai']['runner'].get('runner')
# Record query start and store message_id
message_id = ''
try:
from . import monitoring_helper
message_id = await monitoring_helper.MonitoringHelper.record_query_start(
ap=self.ap,
query=query,
bot_id=query.bot_uuid or 'unknown',
bot_name=bot_name,
pipeline_id=self.pipeline_entity.uuid,
pipeline_name=pipeline_name,
runner_name=runner_name,
)
# Store message_id in query variables for LLM call monitoring
query.variables['_monitoring_message_id'] = message_id
# Notify adapter so it can map platform-specific IDs to monitoring message ID
if hasattr(query.adapter, 'on_monitoring_message_created'):
await query.adapter.on_monitoring_message_created(query, message_id)
except Exception as e:
self.ap.logger.error(f'Failed to record query start: {e}')
try:
# Get bound plugins for this pipeline
bound_plugins = query.variables.get('_pipeline_bound_plugins', None)
# ======== 触发 MessageReceived 事件 ========
event_type = (
events.PersonMessageReceived
if query.launcher_type == provider_session.LauncherTypes.PERSON
else events.GroupMessageReceived
)
event_obj = event_type(
query=query,
launcher_type=query.launcher_type.value,
launcher_id=query.launcher_id,
sender_id=query.sender_id,
message_event=query.message_event,
message_chain=query.message_chain,
)
event_ctx = await self.ap.plugin_connector.emit_event(event_obj, bound_plugins)
if event_ctx.is_prevented_default():
self.ap.logger.debug(
f'MessageReceived event prevented default for query {query.query_id}, pipeline={pipeline_name}'
)
return
self.ap.logger.debug(f'Processing query {query.query_id}')
await self._execute_from_stage(0, query)
# Record query success only if no error occurred during processing
if not query.variables.get('_monitoring_has_error', False):
try:
await monitoring_helper.MonitoringHelper.record_query_success(
ap=self.ap,
message_id=message_id,
query=query,
)
except Exception as e:
self.ap.logger.error(f'Failed to record query success: {e}')
# Record bot response message
try:
await monitoring_helper.MonitoringHelper.record_query_response(
ap=self.ap,
query=query,
bot_id=query.bot_uuid or 'unknown',
bot_name=bot_name,
pipeline_id=self.pipeline_entity.uuid,
pipeline_name=pipeline_name,
runner_name=runner_name,
)
except Exception as e:
self.ap.logger.error(f'Failed to record query response: {e}')
except Exception as e:
inst_name = query.current_stage_name if query.current_stage_name else 'unknown'
self.ap.logger.error(f'Error processing query {query.query_id} stage={inst_name} : {e}')
self.ap.logger.error(f'Traceback: {traceback.format_exc()}')
# Record query error
try:
from . import monitoring_helper
await monitoring_helper.MonitoringHelper.record_query_error(
ap=self.ap,
query=query,
bot_id=query.bot_uuid or 'unknown',
bot_name=bot_name,
pipeline_id=self.pipeline_entity.uuid,
pipeline_name=pipeline_name,
error=e,
runner_name=runner_name,
)
except Exception as me:
self.ap.logger.error(f'Failed to record query error: {me}')
finally:
self.ap.logger.debug(f'Query {query.query_id} processed')
del self.ap.query_pool.cached_queries[query.query_id]
class PipelineManager:
"""流水线管理器"""
ap: app.Application
pipelines: list[RuntimePipeline]
stage_dict: dict[str, type[stage.PipelineStage]]
def __init__(self, ap: app.Application):
self.ap = ap
self.pipelines = []
async def initialize(self):
self.stage_dict = {name: cls for name, cls in stage.preregistered_stages.items()}
await self.load_pipelines_from_db()
async def load_pipelines_from_db(self):
self.ap.logger.info('Loading pipelines from db...')
result = await self.ap.persistence_mgr.execute_async(sqlalchemy.select(persistence_pipeline.LegacyPipeline))
pipelines = result.all()
# load pipelines
for pipeline in pipelines:
await self.load_pipeline(pipeline)
async def load_pipeline(
self,
pipeline_entity: persistence_pipeline.LegacyPipeline
| sqlalchemy.Row[persistence_pipeline.LegacyPipeline]
| dict,
):
if isinstance(pipeline_entity, sqlalchemy.Row):
pipeline_entity = persistence_pipeline.LegacyPipeline(**pipeline_entity._mapping)
elif isinstance(pipeline_entity, dict):
pipeline_entity = persistence_pipeline.LegacyPipeline(**pipeline_entity)
coerce_pipeline_config(
pipeline_entity.config,
getattr(self.ap, 'pipeline_config_meta_trigger', {'name': 'trigger', 'stages': []}),
getattr(self.ap, 'pipeline_config_meta_safety', {'name': 'safety', 'stages': []}),
getattr(self.ap, 'pipeline_config_meta_ai', {'name': 'ai', 'stages': []}),
getattr(self.ap, 'pipeline_config_meta_output', {'name': 'output', 'stages': []}),
)
# initialize stage containers according to pipeline_entity.stages
stage_containers: list[StageInstContainer] = []
for stage_name in pipeline_entity.stages:
stage_containers.append(StageInstContainer(inst_name=stage_name, inst=self.stage_dict[stage_name](self.ap)))
for stage_container in stage_containers:
await stage_container.inst.initialize(pipeline_entity.config)
runtime_pipeline = RuntimePipeline(self.ap, pipeline_entity, stage_containers)
self.pipelines.append(runtime_pipeline)
async def get_pipeline_by_uuid(self, uuid: str) -> RuntimePipeline | None:
for pipeline in self.pipelines:
if pipeline.pipeline_entity.uuid == uuid:
return pipeline
return None
async def remove_pipeline(self, uuid: str):
for pipeline in self.pipelines:
if pipeline.pipeline_entity.uuid == uuid:
self.pipelines.remove(pipeline)
return