from __future__ import annotations import typing from . import chatcmpl import uuid from .. import requester import langbot_plugin.api.entities.builtin.provider.message as provider_message import langbot_plugin.api.entities.builtin.pipeline.query as pipeline_query import langbot_plugin.api.entities.builtin.resource.tool as resource_tool class GeminiChatCompletions(chatcmpl.OpenAIChatCompletions): """Google Gemini API 请求器""" default_config: dict[str, typing.Any] = { 'base_url': 'https://generativelanguage.googleapis.com/v1beta/openai', 'timeout': 120, } async def _closure_stream( self, query: pipeline_query.Query, req_messages: list[dict], use_model: requester.RuntimeLLMModel, use_funcs: list[resource_tool.LLMTool] = None, extra_args: dict[str, typing.Any] = {}, remove_think: bool = False, ) -> provider_message.MessageChunk: self.client.api_key = use_model.token_mgr.get_token() args = {} args['model'] = use_model.model_entity.name if use_funcs: tools = await self.ap.tool_mgr.generate_tools_for_openai(use_funcs) if tools: args['tools'] = tools # 设置此次请求中的messages messages = req_messages.copy() # 检查vision for msg in messages: if 'content' in msg and isinstance(msg['content'], list): for me in msg['content']: if me['type'] == 'image_base64': me['image_url'] = {'url': me['image_base64']} me['type'] = 'image_url' del me['image_base64'] args['messages'] = messages args['stream'] = True # 流式处理状态 # tool_calls_map: dict[str, provider_message.ToolCall] = {} chunk_idx = 0 thinking_started = False thinking_ended = False role = 'assistant' # 默认角色 tool_id = '' tool_name = '' # accumulated_reasoning = '' # 仅用于判断何时结束思维链 async for chunk in self._req_stream(args, extra_body=extra_args): # 解析 chunk 数据 if hasattr(chunk, 'choices') and chunk.choices: choice = chunk.choices[0] delta = choice.delta.model_dump() if hasattr(choice, 'delta') else {} finish_reason = getattr(choice, 'finish_reason', None) else: delta = {} finish_reason = None # 从第一个 chunk 获取 role,后续使用这个 role if 'role' in delta and delta['role']: role = delta['role'] # 获取增量内容 delta_content = delta.get('content', '') reasoning_content = delta.get('reasoning_content', '') # 处理 reasoning_content if reasoning_content: # accumulated_reasoning += reasoning_content # 如果设置了 remove_think,跳过 reasoning_content if remove_think: chunk_idx += 1 continue # 第一次出现 reasoning_content,添加 开始标签 if not thinking_started: thinking_started = True delta_content = '\n' + reasoning_content else: # 继续输出 reasoning_content delta_content = reasoning_content elif thinking_started and not thinking_ended and delta_content: # reasoning_content 结束,normal content 开始,添加 结束标签 thinking_ended = True delta_content = '\n\n' + delta_content # 处理 content 中已有的 标签(如果需要移除) # if delta_content and remove_think and '' in delta_content: # import re # # # 移除 标签及其内容 # delta_content = re.sub(r'.*?', '', delta_content, flags=re.DOTALL) # 处理工具调用增量 # delta_tool_calls = None if delta.get('tool_calls'): for tool_call in delta['tool_calls']: if tool_call['id'] == '' and tool_id == '': tool_id = str(uuid.uuid4()) if tool_call['function']['name']: tool_name = tool_call['function']['name'] tool_call['id'] = tool_id tool_call['function']['name'] = tool_name if tool_call['type'] is None: tool_call['type'] = 'function' # 跳过空的第一个 chunk(只有 role 没有内容) if chunk_idx == 0 and not delta_content and not reasoning_content and not delta.get('tool_calls'): chunk_idx += 1 continue # 构建 MessageChunk - 只包含增量内容 chunk_data = { 'role': role, 'content': delta_content if delta_content else None, 'tool_calls': delta.get('tool_calls'), 'is_final': bool(finish_reason), } # 移除 None 值 chunk_data = {k: v for k, v in chunk_data.items() if v is not None} yield provider_message.MessageChunk(**chunk_data) chunk_idx += 1