from __future__ import annotations import asyncio import typing import openai import openai.types.chat.chat_completion as chat_completion import httpx from .. import errors, requester from ....core import entities as core_entities from ... import entities as llm_entities from ...tools import entities as tools_entities class OpenAIChatCompletions(requester.ProviderAPIRequester): """OpenAI ChatCompletion API 请求器""" client: openai.AsyncClient default_config: dict[str, typing.Any] = { 'base_url': 'https://api.openai.com/v1', 'timeout': 120, } async def initialize(self): self.client = openai.AsyncClient( api_key='', base_url=self.requester_cfg['base_url'].replace(' ', ''), timeout=self.requester_cfg['timeout'], http_client=httpx.AsyncClient(trust_env=True, timeout=self.requester_cfg['timeout']), ) async def _req( self, args: dict, extra_body: dict = {}, ) -> chat_completion.ChatCompletion: return await self.client.chat.completions.create(**args, extra_body=extra_body) async def _req_stream( self, args: dict, extra_body: dict = {}, ) -> chat_completion.ChatCompletion: async for chunk in await self.client.chat.completions.create(**args, extra_body=extra_body): yield chunk async def _make_msg( self, chat_completion: chat_completion.ChatCompletion, remove_think: bool = False, ) -> llm_entities.Message: chatcmpl_message = chat_completion.choices[0].message.model_dump() # print(chatcmpl_message.keys(),chatcmpl_message.values()) # 确保 role 字段存在且不为 None if 'role' not in chatcmpl_message or chatcmpl_message['role'] is None: chatcmpl_message['role'] = 'assistant' reasoning_content = chatcmpl_message['reasoning_content'] if 'reasoning_content' in chatcmpl_message else None # deepseek的reasoner模型 if remove_think: pass else: if reasoning_content is not None: chatcmpl_message['content'] = ( '\n' + reasoning_content + '\n\n' + chatcmpl_message['content'] ) message = llm_entities.Message(**chatcmpl_message) return message async def _make_msg_chunk( self, delta: dict[str, typing.Any], idx: int, is_content: bool, is_think: bool, ) -> llm_entities.MessageChunk: # 处理流式chunk和完整响应的差异 # print(chat_completion.choices[0]) if 'role' not in delta or delta['role'] is None: delta['role'] = 'assistant' reasoning_content = delta['reasoning_content'] delta['content'] = '' if delta['content'] is None else delta['content'] # deepseek的reasoner模型 if reasoning_content is not None and idx == 0: delta['content'] += f'\n{reasoning_content}' is_think = True elif reasoning_content is None and idx != 0: if is_content: delta['content'] = delta['content'] elif is_think: delta['content'] = f'\n\n\n{delta["content"]}' is_content = True is_think = False elif reasoning_content is not None and reasoning_content != '': delta['content'] = reasoning_content message = llm_entities.MessageChunk(**delta) return message,is_content, is_think async def _closure_stream( self, query: core_entities.Query, req_messages: list[dict], use_model: requester.RuntimeLLMModel, use_funcs: list[tools_entities.LLMFunction] = None, extra_args: dict[str, typing.Any] = {}, remove_think: bool = False, ) -> llm_entities.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 current_content = '' args['stream'] = True chunk_idx = 0 is_content = False is_think = False tool_calls_map: dict[str, llm_entities.ToolCall] = {} async for chunk in self._req_stream(args, extra_body=extra_args): if hasattr(chunk, 'choices'): # 完整响应模式 choice = chunk.choices[0] delta = choice.delta.model_dump() if hasattr(choice, 'delta') else choice.message.model_dump() else: # 流式chunk模式 delta = chunk.delta.model_dump() if hasattr(chunk, 'delta') else {} print(delta) reasoning_content = delta['reasoning_content'] if 'reasoning_content' in delta else None delta['reasoning_content'] = reasoning_content if remove_think: if delta['reasoning_content'] is not None: continue if ((delta['content'] == '' or delta.get('content',None) is None) and (delta.get('reasoning_content',None) is None or delta['reasoning_content'] == '') and chunk_idx == 0): # 此处将第一条空消息排除,大部分模型第一条消息携带的是role,但是在role直接处理为ass continue # 处理流式消息 delta_message,is_content,is_think = await self._make_msg_chunk(delta, chunk_idx, is_content, is_think) if delta_message.content: current_content += delta_message.content delta_message.content = current_content # delta_message.all_content = current_content if delta_message.tool_calls: for tool_call in delta_message.tool_calls: if tool_call.id not in tool_calls_map: tool_calls_map[tool_call.id] = llm_entities.ToolCall( id=tool_call.id, type=tool_call.type, function=llm_entities.FunctionCall( name=tool_call.function.name if tool_call.function else '', arguments='' ), ) if tool_call.function and tool_call.function.arguments: # 流式处理中,工具调用参数可能分多个chunk返回,需要追加而不是覆盖 tool_calls_map[tool_call.id].function.arguments += tool_call.function.arguments chunk_idx += 1 chunk_choices = getattr(chunk, 'choices', None) if chunk_choices and getattr(chunk_choices[0], 'finish_reason', None): delta_message.is_final = True delta_message.content = current_content yield delta_message # return async def _closure( self, query: core_entities.Query, req_messages: list[dict], use_model: requester.RuntimeLLMModel, use_funcs: list[tools_entities.LLMFunction] = None, extra_args: dict[str, typing.Any] = {}, remove_think: bool = False, ) -> llm_entities.Message: 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 # 发送请求 resp = await self._req(args, extra_body=extra_args) # 处理请求结果 message = await self._make_msg(resp, remove_think) return message async def invoke_llm( self, query: core_entities.Query, model: requester.RuntimeLLMModel, messages: typing.List[llm_entities.Message], funcs: typing.List[tools_entities.LLMFunction] = None, extra_args: dict[str, typing.Any] = {}, remove_think: bool = False, ) -> llm_entities.Message: req_messages = [] # req_messages 仅用于类内,外部同步由 query.messages 进行 for m in messages: msg_dict = m.dict(exclude_none=True) content = msg_dict.get('content') if isinstance(content, list): # 检查 content 列表中是否每个部分都是文本 if all(isinstance(part, dict) and part.get('type') == 'text' for part in content): # 将所有文本部分合并为一个字符串 msg_dict['content'] = '\n'.join(part['text'] for part in content) req_messages.append(msg_dict) try: msg = await self._closure( query=query, req_messages=req_messages, use_model=model, use_funcs=funcs, extra_args=extra_args, remove_think=remove_think, ) return msg except asyncio.TimeoutError: raise errors.RequesterError('请求超时') except openai.BadRequestError as e: if 'context_length_exceeded' in e.message: raise errors.RequesterError(f'上文过长,请重置会话: {e.message}') else: raise errors.RequesterError(f'请求参数错误: {e.message}') except openai.AuthenticationError as e: raise errors.RequesterError(f'无效的 api-key: {e.message}') except openai.NotFoundError as e: raise errors.RequesterError(f'请求路径错误: {e.message}') except openai.RateLimitError as e: raise errors.RequesterError(f'请求过于频繁或余额不足: {e.message}') except openai.APIError as e: raise errors.RequesterError(f'请求错误: {e.message}') async def invoke_embedding( self, model: requester.RuntimeEmbeddingModel, input_text: list[str], extra_args: dict[str, typing.Any] = {}, ) -> list[list[float]]: """调用 Embedding API""" self.client.api_key = model.token_mgr.get_token() args = { 'model': model.model_entity.name, 'input': input_text, } if model.model_entity.extra_args: args.update(model.model_entity.extra_args) args.update(extra_args) try: resp = await self.client.embeddings.create(**args) return [d.embedding for d in resp.data] except asyncio.TimeoutError: raise errors.RequesterError('请求超时') except openai.BadRequestError as e: raise errors.RequesterError(f'请求参数错误: {e.message}') async def invoke_llm_stream( self, query: core_entities.Query, model: requester.RuntimeLLMModel, messages: typing.List[llm_entities.Message], funcs: typing.List[tools_entities.LLMFunction] = None, extra_args: dict[str, typing.Any] = {}, remove_think: bool = False, ) -> llm_entities.MessageChunk: req_messages = [] # req_messages 仅用于类内,外部同步由 query.messages 进行 for m in messages: msg_dict = m.dict(exclude_none=True) content = msg_dict.get('content') if isinstance(content, list): # 检查 content 列表中是否每个部分都是文本 if all(isinstance(part, dict) and part.get('type') == 'text' for part in content): # 将所有文本部分合并为一个字符串 msg_dict['content'] = '\n'.join(part['text'] for part in content) req_messages.append(msg_dict) try: async for item in self._closure_stream( query=query, req_messages=req_messages, use_model=model, use_funcs=funcs, extra_args=extra_args, remove_think=remove_think, ): yield item except asyncio.TimeoutError: raise errors.RequesterError('请求超时') except openai.BadRequestError as e: if 'context_length_exceeded' in e.message: raise errors.RequesterError(f'上文过长,请重置会话: {e.message}') else: raise errors.RequesterError(f'请求参数错误: {e.message}') except openai.AuthenticationError as e: raise errors.RequesterError(f'无效的 api-key: {e.message}') except openai.NotFoundError as e: raise errors.RequesterError(f'请求路径错误: {e.message}') except openai.RateLimitError as e: raise errors.RequesterError(f'请求过于频繁或余额不足: {e.message}') except openai.APIError as e: raise errors.RequesterError(f'请求错误: {e.message}')