thread_runner.py 17 KB

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  1. from functools import partial
  2. import logging
  3. from typing import List
  4. from concurrent.futures import Executor
  5. from sqlalchemy.orm import Session
  6. from app.models.token_relation import RelationType
  7. from config.config import settings
  8. from config.llm import llm_settings, tool_settings
  9. from app.core.runner.llm_backend import LLMBackend
  10. from app.core.runner.llm_callback_handler import LLMCallbackHandler
  11. from app.core.runner.memory import Memory, find_memory
  12. from app.core.runner.pub_handler import StreamEventHandler
  13. from app.core.runner.utils import message_util as msg_util
  14. from app.core.runner.utils.tool_call_util import (
  15. tool_call_recognize,
  16. internal_tool_call_invoke,
  17. tool_call_request,
  18. tool_call_id,
  19. tool_call_output,
  20. )
  21. from app.core.tools import find_tools, BaseTool
  22. from app.libs.thread_executor import get_executor_for_config, run_with_executor
  23. from app.models.message import Message, MessageUpdate
  24. from app.models.run import Run
  25. from app.models.run_step import RunStep
  26. from app.models.token_relation import RelationType
  27. from app.services.assistant.assistant import AssistantService
  28. from app.services.file.file import FileService
  29. from app.services.message.message import MessageService
  30. from app.services.run.run import RunService
  31. from app.services.run.run_step import RunStepService
  32. from app.services.token.token import TokenService
  33. from app.services.token.token_relation import TokenRelationService
  34. class ThreadRunner:
  35. """
  36. ThreadRunner 封装 run 的执行逻辑
  37. """
  38. tool_executor: Executor = get_executor_for_config(
  39. tool_settings.TOOL_WORKER_NUM, "tool_worker_"
  40. )
  41. def __init__(
  42. self, run_id: str, token_id: str, session: Session, stream: bool = False
  43. ):
  44. self.run_id = run_id
  45. self.token_id = token_id
  46. self.session = session
  47. self.stream = stream
  48. self.max_step = llm_settings.LLM_MAX_STEP
  49. self.event_handler: StreamEventHandler = None
  50. def run(self):
  51. """
  52. 完成一次 run 的执行,基本步骤
  53. 1. 初始化,获取 run 以及相关 tools, 构造 system instructions;
  54. 2. 开始循环,查询已有 run step, 进行 chat message 生成;
  55. 3. 调用 llm 并解析返回结果;
  56. 4. 根据返回结果,生成新的 run step(tool calls 处理) 或者 message
  57. """
  58. # TODO: 重构,将 run 的状态变更逻辑放到 RunService 中
  59. run = RunService.get_run_sync(session=self.session, run_id=self.run_id)
  60. self.event_handler = StreamEventHandler(
  61. run_id=self.run_id, is_stream=self.stream
  62. )
  63. run = RunService.to_in_progress(session=self.session, run_id=self.run_id)
  64. self.event_handler.pub_run_in_progress(run)
  65. logging.info("processing ThreadRunner task, run_id: %s", self.run_id)
  66. # get memory from assistant metadata
  67. # format likes {"memory": {"type": "window", "window_size": 20, "max_token_size": 4000}}
  68. ast = AssistantService.get_assistant_sync(
  69. session=self.session, assistant_id=run.assistant_id
  70. )
  71. metadata = ast.metadata_ or {}
  72. memory = find_memory(metadata.get("memory", {}))
  73. instructions = (
  74. [run.instructions or ""] if run.instructions else [ast.instructions or ""]
  75. )
  76. asst_ids = []
  77. if ast.tool_resources and "file_search" in ast.tool_resources:
  78. asst_ids += (
  79. ast.tool_resources.get("file_search")
  80. .get("vector_stores")[0]
  81. .get("folder_ids")
  82. )
  83. asst_ids += (
  84. ast.tool_resources.get("file_search")
  85. .get("vector_stores")[0]
  86. .get("file_ids")
  87. )
  88. if len(asst_ids) > 0:
  89. if len(run.file_ids) > 0:
  90. run.tools.append({"type": "knowledge_search"})
  91. else:
  92. for tool in run.tools:
  93. if tool.get("type") == "file_search":
  94. tool["type"] = "knowledge_search"
  95. tools = find_tools(run, self.session)
  96. for tool in tools:
  97. tool.configure(session=self.session, run=run)
  98. instruction_supplement = tool.instruction_supplement()
  99. if instruction_supplement:
  100. instructions += [instruction_supplement or ""]
  101. instruction = "\n".join(instructions)
  102. llm = self.__init_llm_backend(run.assistant_id)
  103. loop = True
  104. while loop:
  105. print(
  106. "looplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooplooploop"
  107. )
  108. run_steps = RunStepService.get_run_step_list(
  109. session=self.session, run_id=self.run_id, thread_id=run.thread_id
  110. )
  111. loop = self.__run_step(llm, run, run_steps, instruction, tools, memory)
  112. # 任务结束
  113. self.event_handler.pub_run_completed(run)
  114. self.event_handler.pub_done()
  115. def __run_step(
  116. self,
  117. llm: LLMBackend,
  118. run: Run,
  119. run_steps: List[RunStep],
  120. instruction: str,
  121. tools: List[BaseTool],
  122. memory: Memory,
  123. ):
  124. """
  125. 执行 run step
  126. """
  127. logging.info("step %d is running", len(run_steps) + 1)
  128. assistant_system_message = [msg_util.system_message(instruction)]
  129. # 获取已有 message 上下文记录
  130. chat_messages = self.__generate_chat_messages(
  131. MessageService.get_message_list(
  132. session=self.session, thread_id=run.thread_id
  133. )
  134. )
  135. tool_call_messages = []
  136. for step in run_steps:
  137. if step.type == "tool_calls" and step.status == "completed":
  138. tool_call_messages += (
  139. self.__convert_assistant_tool_calls_to_chat_messages(step)
  140. )
  141. # tool_call_messages = tool_call_messages
  142. # memory
  143. messages = (
  144. assistant_system_message
  145. + memory.integrate_context(chat_messages)
  146. + tool_call_messages
  147. )
  148. logging.info("messages: run %s", run)
  149. logging.info(messages)
  150. logging.info(tools)
  151. response_stream = llm.run(
  152. messages=messages,
  153. model=run.model,
  154. tools=[tool.openai_function for tool in tools],
  155. tool_choice="auto" if len(run_steps) < self.max_step else "none",
  156. stream=self.stream,
  157. stream_options=run.stream_options,
  158. extra_body=run.extra_body,
  159. temperature=run.temperature,
  160. top_p=run.top_p,
  161. response_format=run.response_format,
  162. parallel_tool_calls=run.parallel_tool_calls,
  163. audio=run.audio,
  164. modalities=run.modalities,
  165. )
  166. # create message callback
  167. create_message_callback = partial(
  168. MessageService.new_message,
  169. session=self.session,
  170. assistant_id=run.assistant_id,
  171. thread_id=run.thread_id,
  172. run_id=run.id,
  173. role="assistant",
  174. )
  175. # create 'message creation' run step callback
  176. def _create_message_creation_run_step(message_id):
  177. return RunStepService.new_run_step(
  178. session=self.session,
  179. type="message_creation",
  180. assistant_id=run.assistant_id,
  181. thread_id=run.thread_id,
  182. run_id=run.id,
  183. step_details={
  184. "type": "message_creation",
  185. "message_creation": {"message_id": message_id},
  186. },
  187. )
  188. llm_callback_handler = LLMCallbackHandler(
  189. run_id=run.id,
  190. on_step_create_func=_create_message_creation_run_step,
  191. on_message_create_func=create_message_callback,
  192. event_handler=self.event_handler,
  193. )
  194. if self.stream == False and hasattr(response_stream, "choices"):
  195. response_stream = [response_stream]
  196. response_msg = llm_callback_handler.handle_llm_response(response_stream)
  197. message_creation_run_step = llm_callback_handler.step
  198. print("444444444444444444444444455555555577777777777777777777777")
  199. logging.info("chat_response_message: %s", response_msg)
  200. if msg_util.is_tool_call(response_msg):
  201. # tool & tool_call definition dict
  202. tool_calls = [
  203. tool_call_recognize(tool_call, tools)
  204. for tool_call in response_msg.tool_calls
  205. ]
  206. # new run step for tool calls
  207. new_run_step = RunStepService.new_run_step(
  208. session=self.session,
  209. type="tool_calls",
  210. assistant_id=run.assistant_id,
  211. thread_id=run.thread_id,
  212. run_id=run.id,
  213. step_details={
  214. "type": "tool_calls",
  215. "tool_calls": [tool_call_dict for _, tool_call_dict in tool_calls],
  216. },
  217. )
  218. self.event_handler.pub_run_step_created(new_run_step)
  219. self.event_handler.pub_run_step_in_progress(new_run_step)
  220. internal_tool_calls = list(
  221. filter(lambda _tool_calls: _tool_calls[0] is not None, tool_calls)
  222. )
  223. external_tool_call_dict = [
  224. tool_call_dict for tool, tool_call_dict in tool_calls if tool is None
  225. ]
  226. # 为减少线程同步逻辑,依次处理内/外 tool_call 调用
  227. if internal_tool_calls:
  228. try:
  229. print(
  230. "==========================internal_tool_callsinternal_tool_callsinternal_tool_calls"
  231. )
  232. print(internal_tool_calls)
  233. ## 线程执行有问题 可以改成异步, 这里如果是filesearch要确定只执行一次
  234. tool_calls_with_outputs = run_with_executor(
  235. executor=ThreadRunner.tool_executor,
  236. func=internal_tool_call_invoke,
  237. tasks=internal_tool_calls,
  238. timeout=tool_settings.TOOL_WORKER_EXECUTION_TIMEOUT,
  239. )
  240. new_run_step = RunStepService.update_step_details(
  241. session=self.session,
  242. run_step_id=new_run_step.id,
  243. step_details={
  244. "type": "tool_calls",
  245. "tool_calls": tool_calls_with_outputs,
  246. },
  247. completed=not external_tool_call_dict,
  248. )
  249. except Exception as e:
  250. RunStepService.to_failed(
  251. session=self.session, run_step_id=new_run_step.id, last_error=e
  252. )
  253. raise e
  254. print(
  255. "aaaaaaaaaaaaaaa===============================================================8888888888888888888888888"
  256. )
  257. print(external_tool_call_dict)
  258. if external_tool_call_dict:
  259. # run 设置为 action required,等待业务完成更新并再次拉起
  260. run = RunService.to_requires_action(
  261. session=self.session,
  262. run_id=run.id,
  263. required_action={
  264. "type": "submit_tool_outputs",
  265. "submit_tool_outputs": {"tool_calls": external_tool_call_dict},
  266. },
  267. )
  268. self.event_handler.pub_run_step_delta(
  269. step_id=new_run_step.id,
  270. step_details={
  271. "type": "tool_calls",
  272. "tool_calls": external_tool_call_dict,
  273. },
  274. )
  275. print(run)
  276. self.event_handler.pub_run_requires_action(run)
  277. else:
  278. self.event_handler.pub_run_step_completed(new_run_step)
  279. return True
  280. else:
  281. if response_msg.content == "":
  282. response_msg.content = (
  283. '[{"text": {"value": "", "annotations": []}, "type": "text"}]'
  284. )
  285. # 无 tool call 信息,message 生成结束,更新状态
  286. new_message = MessageService.modify_message_sync(
  287. session=self.session,
  288. thread_id=run.thread_id,
  289. message_id=llm_callback_handler.message.id,
  290. body=MessageUpdate(content=response_msg.content),
  291. )
  292. self.event_handler.pub_message_completed(new_message)
  293. new_step = RunStepService.update_step_details(
  294. session=self.session,
  295. run_step_id=message_creation_run_step.id,
  296. step_details={
  297. "type": "message_creation",
  298. "message_creation": {"message_id": new_message.id},
  299. },
  300. completed=True,
  301. )
  302. RunService.to_completed(session=self.session, run_id=run.id)
  303. self.event_handler.pub_run_step_completed(new_step)
  304. return False
  305. def __init_llm_backend(self, assistant_id):
  306. if settings.AUTH_ENABLE:
  307. # init llm backend with token id
  308. if self.token_id:
  309. token_id = self.token_id
  310. else:
  311. token_id = TokenRelationService.get_token_id_by_relation(
  312. session=self.session,
  313. relation_type=RelationType.Assistant,
  314. relation_id=assistant_id,
  315. )
  316. print(
  317. "token_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_idtoken_id"
  318. )
  319. print(self.token_id)
  320. print(token_id)
  321. try:
  322. if token_id is not None and len(token_id) > 0:
  323. token = TokenService.get_token_by_id(self.session, token_id)
  324. print(token)
  325. return LLMBackend(
  326. base_url=token.llm_base_url, api_key=token.llm_api_key
  327. )
  328. except Exception as e:
  329. print(e)
  330. token = {
  331. "llm_base_url": "http://172.16.12.13:3000/v1",
  332. "llm_api_key": "sk-vTqeBKDC2j6osbGt89A2202dAd1c4fE8B1D294388b569e54",
  333. }
  334. return LLMBackend(
  335. base_url=token.get("llm_base_url"), api_key=token.get("llm_api_key")
  336. )
  337. else:
  338. # init llm backend with llm settings
  339. return LLMBackend(
  340. base_url=llm_settings.OPENAI_API_BASE,
  341. api_key=llm_settings.OPENAI_API_KEY,
  342. )
  343. def __generate_chat_messages(self, messages: List[Message]):
  344. """
  345. 根据历史信息生成 chat message
  346. """
  347. chat_messages = []
  348. for message in messages:
  349. role = message.role
  350. if role == "user":
  351. message_content = []
  352. """
  353. if message.file_ids:
  354. files = FileService.get_file_list_by_ids(
  355. session=self.session, file_ids=message.file_ids
  356. )
  357. for file in files:
  358. chat_messages.append(
  359. msg_util.new_message(
  360. role,
  361. f'The file "{file.filename}" can be used as a reference',
  362. )
  363. )
  364. else:
  365. """
  366. for content in message.content:
  367. if content["type"] == "text":
  368. message_content.append(
  369. {"type": "text", "text": content["text"]["value"]}
  370. )
  371. elif content["type"] == "image_url":
  372. message_content.append(content)
  373. chat_messages.append(msg_util.new_message(role, message_content))
  374. elif role == "assistant":
  375. message_content = ""
  376. for content in message.content:
  377. if content["type"] == "text":
  378. message_content += content["text"]["value"]
  379. chat_messages.append(msg_util.new_message(role, message_content))
  380. return chat_messages ### 暂时只支持5条消息,后续正价token上限
  381. def __convert_assistant_tool_calls_to_chat_messages(self, run_step: RunStep):
  382. """
  383. 根据 run step 执行结果生成 message 信息
  384. 每个 tool call run step 包含两部分,调用与结果(结果可能为多个信息)
  385. """
  386. tool_calls = run_step.step_details["tool_calls"]
  387. tool_call_requests = [
  388. msg_util.tool_calls(
  389. [tool_call_request(tool_call) for tool_call in tool_calls]
  390. )
  391. ]
  392. tool_call_outputs = [
  393. msg_util.tool_call_result(
  394. tool_call_id(tool_call), tool_call_output(tool_call)
  395. )
  396. for tool_call in tool_calls
  397. ]
  398. return tool_call_requests + tool_call_outputs