core.py 9.5 KB

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  1. """
  2. 内容寻找 Agent - 核心执行逻辑
  3. 提供可复用的 agent 执行函数,供 run.py 和 server.py 调用。
  4. """
  5. import asyncio
  6. import logging
  7. import sys
  8. import os
  9. from pathlib import Path
  10. from typing import Optional, Dict, Any
  11. from utils.log_capture import build_log, log
  12. from datetime import datetime
  13. import uuid
  14. def _resolve_repo_root() -> Path:
  15. # /.../Agent/examples/content_finder/core.py -> repo root is /.../Agent
  16. return Path(__file__).resolve().parents[2]
  17. def _resolve_dir_from_env(repo_root: Path, raw: str) -> Path:
  18. p = Path(raw).expanduser()
  19. return p.resolve() if p.is_absolute() else (repo_root / p).resolve()
  20. def _resolve_log_file_path(
  21. *,
  22. content_finder_root: Path,
  23. output_dir_path: Path,
  24. trace_id: str | None,
  25. execution_id: str,
  26. ) -> Path:
  27. """
  28. 解析日志输出路径。
  29. 规则:
  30. - 如果设置了 INPUT_LOG_PATH:
  31. - 值为 OUTPUT_DIR / ${OUTPUT_DIR}:写入 OUTPUT_DIR/<trace_id>/log.txt
  32. - 绝对/相对路径:视为“目录”,写入 <dir>/run_log_<timestamp>.txt(兼容旧行为)
  33. - 未设置 INPUT_LOG_PATH:默认写入 OUTPUT_DIR/<trace_id>/log.txt
  34. """
  35. raw = (os.getenv("INPUT_LOG_PATH") or "").strip()
  36. dir_name = trace_id or execution_id
  37. if raw in {"OUTPUT_DIR", "${OUTPUT_DIR}"} or raw == "":
  38. return (output_dir_path / dir_name / "log.txt").resolve()
  39. p = Path(raw).expanduser()
  40. if not p.is_absolute():
  41. p = (content_finder_root / p).resolve()
  42. log_dir = p if not p.suffix else p.parent
  43. return (log_dir / f"run_log_{datetime.now().strftime('%Y%m%d_%H%M%S')}.txt").resolve()
  44. sys.path.insert(0, str(Path(__file__).parent.parent.parent))
  45. from dotenv import load_dotenv
  46. load_dotenv()
  47. # 保证从仓库根目录运行时也能读到 content_finder 下的 .env(INPUT_LOG_PATH 等)
  48. load_dotenv(dotenv_path=Path(__file__).resolve().parent / ".env", override=True)
  49. from agent import (
  50. AgentRunner,
  51. RunConfig,
  52. FileSystemTraceStore,
  53. Trace,
  54. Message,
  55. )
  56. from agent.llm import create_openrouter_llm_call
  57. from agent.llm.prompts import SimplePrompt
  58. from agent.tools.builtin.knowledge import KnowledgeConfig
  59. # 导入工具(确保工具被注册)
  60. from tools import (
  61. douyin_search,
  62. douyin_search_tikhub,
  63. douyin_user_videos,
  64. get_content_fans_portrait,
  65. get_account_fans_portrait,
  66. create_crawler_plan_by_douyin_content_id,
  67. create_crawler_plan_by_douyin_account_id,
  68. store_results_mysql,
  69. think_and_plan,
  70. find_authors_from_db,
  71. get_video_topic,
  72. )
  73. logger = logging.getLogger(__name__)
  74. # 默认搜索词
  75. DEFAULT_QUERY = "正能量"
  76. DEFAULT_DEMAND_ID = 1
  77. def extract_assistant_text(message: Message) -> str:
  78. if message.role != "assistant":
  79. return ""
  80. content = message.content
  81. if isinstance(content, str):
  82. return content
  83. if isinstance(content, dict):
  84. text = content.get("text", "")
  85. # 即使本轮包含工具调用,也打印模型给出的文本,便于观察每一步输出
  86. if text:
  87. return text
  88. return ""
  89. async def run_agent(
  90. query: Optional[str] = None,
  91. demand_id: Optional[int] = None,
  92. stream_output: bool = True,
  93. log_assistant_text: bool = True,
  94. ) -> Dict[str, Any]:
  95. """
  96. 执行 agent 任务
  97. Args:
  98. query: 查询内容(搜索词),None 则使用默认值
  99. demand_id: 本次搜索任务 id(int,关联 demand_content 表)
  100. stream_output: 是否输出到 stdout(run.py 需要,server.py 不需要)
  101. log_assistant_text: 是否将 assistant 文本写入 log.txt(server 建议开启)
  102. Returns:
  103. {
  104. "trace_id": "20260317_103046_xyz789",
  105. "status": "completed" | "failed",
  106. "error": "错误信息" # 失败时
  107. }
  108. """
  109. query = query or DEFAULT_QUERY
  110. demand_id = demand_id or DEFAULT_DEMAND_ID
  111. # 加载 prompt
  112. prompt_path = Path(__file__).parent / "content_finder.md"
  113. prompt = SimplePrompt(prompt_path)
  114. # output 目录(相对路径相对 content_finder)
  115. content_finder_root = Path(__file__).resolve().parent
  116. repo_root = _resolve_repo_root()
  117. output_dir = os.getenv("OUTPUT_DIR", ".cache/output")
  118. output_dir_path = _resolve_dir_from_env(repo_root, output_dir)
  119. # 构建消息(替换 %query%、%output_dir%、%demand_id%)
  120. demand_id_str = str(demand_id) if demand_id is not None else ""
  121. messages = prompt.build_messages(
  122. query=query, output_dir=str(output_dir_path), demand_id=demand_id_str
  123. )
  124. # 初始化配置
  125. api_key = os.getenv("OPEN_ROUTER_API_KEY")
  126. if not api_key:
  127. raise ValueError("OPEN_ROUTER_API_KEY 未设置")
  128. model_name = prompt.config.get("model", "sonnet-4.6")
  129. model = os.getenv("MODEL", f"anthropic/claude-{model_name}")
  130. temperature = float(prompt.config.get("temperature", 0.3))
  131. max_iterations = int(os.getenv("MAX_ITERATIONS", "30"))
  132. trace_dir = os.getenv("TRACE_DIR", ".cache/traces")
  133. skills_dir = str(Path(__file__).parent / "skills")
  134. trace_dir_path = _resolve_dir_from_env(repo_root, trace_dir)
  135. trace_dir_path.mkdir(parents=True, exist_ok=True)
  136. store = FileSystemTraceStore(base_path=str(trace_dir_path))
  137. allowed_tools = [
  138. "douyin_search",
  139. "douyin_search_tikhub",
  140. "douyin_user_videos",
  141. "get_content_fans_portrait",
  142. "get_account_fans_portrait",
  143. "find_authors_from_db",
  144. "store_results_mysql",
  145. "create_crawler_plan_by_douyin_content_id",
  146. "create_crawler_plan_by_douyin_account_id",
  147. "think_and_plan",
  148. "get_video_topic",
  149. ]
  150. runner = AgentRunner(
  151. llm_call=create_openrouter_llm_call(model=model),
  152. trace_store=store,
  153. skills_dir=skills_dir,
  154. )
  155. config = RunConfig(
  156. name="内容寻找",
  157. model=model,
  158. temperature=temperature,
  159. enable_research_flow = False,
  160. goal_compression = "none",
  161. force_side_branch = None,
  162. max_iterations=max_iterations,
  163. tools=allowed_tools,
  164. extra_llm_params={"max_tokens": 8192},
  165. knowledge=KnowledgeConfig(
  166. enable_extraction=False,
  167. enable_completion_extraction=False,
  168. enable_injection=False,
  169. # owner="content_finder_agent",
  170. # default_tags={"project": "content_finder"},
  171. # default_scopes=["com.piaoquantv.supply"],
  172. # default_search_types=["tool", "usecase", "definition"],
  173. # default_search_owner="content_finder_agent"
  174. )
  175. )
  176. # 执行
  177. trace_id = None
  178. execution_id = str(uuid.uuid4())
  179. try:
  180. run_result: Optional[Dict[str, Any]] = None
  181. with build_log(execution_id) as log_buffer:
  182. async for item in runner.run(messages=messages, config=config):
  183. if isinstance(item, Trace):
  184. trace_id = item.trace_id
  185. if item.status == "completed":
  186. logger.info(f"Agent 执行完成: trace_id={trace_id}")
  187. run_result = {
  188. "trace_id": trace_id,
  189. "status": "completed",
  190. }
  191. break
  192. if item.status == "failed":
  193. logger.error(f"Agent 执行失败: {item.error_message}")
  194. run_result = {
  195. "trace_id": trace_id,
  196. "status": "failed",
  197. "error": item.error_message,
  198. }
  199. break
  200. elif isinstance(item, Message):
  201. text = extract_assistant_text(item)
  202. if text and log_assistant_text:
  203. log(f"[assistant] {text}")
  204. if text and stream_output:
  205. print(text)
  206. if run_result is None:
  207. run_result = {
  208. "trace_id": trace_id,
  209. "status": "failed",
  210. "error": "Agent 异常退出",
  211. }
  212. full_log = log_buffer.getvalue()
  213. log_file_path = _resolve_log_file_path(
  214. content_finder_root=content_finder_root,
  215. output_dir_path=output_dir_path,
  216. trace_id=trace_id,
  217. execution_id=execution_id,
  218. )
  219. log_file_path.parent.mkdir(parents=True, exist_ok=True)
  220. with open(log_file_path, "w", encoding="utf-8") as f:
  221. f.write(full_log)
  222. try:
  223. from render_log_html import render_log_html_and_upload
  224. if trace_id:
  225. url = render_log_html_and_upload(trace_id=trace_id, log_file_path=log_file_path)
  226. if url:
  227. logger.info(f"log.html 已上传: trace_id={trace_id}, url={url}")
  228. except Exception as e:
  229. logger.warning(f"渲染/上传 log.html 失败: trace_id={trace_id}, err={e}")
  230. return run_result
  231. except KeyboardInterrupt:
  232. logger.info("用户中断")
  233. if stream_output:
  234. print("\n用户中断")
  235. return {
  236. "trace_id": trace_id,
  237. "status": "failed",
  238. "error": "用户中断"
  239. }
  240. except Exception as e:
  241. logger.error(f"Agent 执行异常: {e}", exc_info=True)
  242. if stream_output:
  243. print(f"\n执行失败: {e}")
  244. return {
  245. "trace_id": trace_id,
  246. "status": "failed",
  247. "error": str(e)
  248. }