runner.py 19 KB

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  1. """
  2. Agent Runner - Agent 执行引擎
  3. 核心职责:
  4. 1. 执行 Agent 任务(循环调用 LLM + 工具)
  5. 2. 记录执行轨迹(Trace + Messages + GoalTree)
  6. 3. 检索和注入记忆(Experience + Skill)
  7. 4. 管理执行计划(GoalTree)
  8. 5. 收集反馈,提取经验
  9. """
  10. import logging
  11. from dataclasses import dataclass
  12. from datetime import datetime
  13. from typing import AsyncIterator, Optional, Dict, Any, List, Callable, Literal, Union
  14. from agent.trace.models import Trace, Message
  15. from agent.trace.protocols import TraceStore
  16. from agent.trace.goal_models import GoalTree
  17. from agent.trace.goal_tool import goal_tool
  18. from agent.memory.models import Experience, Skill
  19. from agent.memory.protocols import MemoryStore, StateStore
  20. from agent.memory.skill_loader import load_skills_from_dir
  21. from agent.tools import ToolRegistry, get_tool_registry
  22. logger = logging.getLogger(__name__)
  23. @dataclass
  24. class AgentConfig:
  25. """Agent 配置"""
  26. agent_type: str = "default"
  27. max_iterations: int = 10
  28. enable_memory: bool = True
  29. auto_execute_tools: bool = True
  30. @dataclass
  31. class CallResult:
  32. """单次调用结果"""
  33. reply: str
  34. tool_calls: Optional[List[Dict]] = None
  35. trace_id: Optional[str] = None
  36. step_id: Optional[str] = None
  37. tokens: Optional[Dict[str, int]] = None
  38. cost: float = 0.0
  39. # 内置工具列表(始终自动加载)
  40. BUILTIN_TOOLS = [
  41. # 文件操作工具
  42. "read_file",
  43. "edit_file",
  44. "write_file",
  45. "glob_files",
  46. "grep_content",
  47. # 系统工具
  48. "bash_command",
  49. # 技能和目标管理
  50. "skill",
  51. "list_skills",
  52. "goal",
  53. # 搜索工具
  54. "search_posts",
  55. "get_search_suggestions",
  56. # 沙箱工具
  57. "sandbox_create_environment",
  58. "sandbox_run_shell",
  59. "sandbox_rebuild_with_ports",
  60. "sandbox_destroy_environment",
  61. # 浏览器工具
  62. "browser_navigate_to_url",
  63. "browser_search_web",
  64. "browser_go_back",
  65. "browser_wait",
  66. "browser_click_element",
  67. "browser_input_text",
  68. "browser_send_keys",
  69. "browser_upload_file",
  70. "browser_scroll_page",
  71. "browser_find_text",
  72. "browser_screenshot",
  73. "browser_switch_tab",
  74. "browser_close_tab",
  75. "browser_get_dropdown_options",
  76. "browser_select_dropdown_option",
  77. "browser_extract_content",
  78. "browser_get_page_html",
  79. "browser_get_selector_map",
  80. "browser_evaluate",
  81. "browser_ensure_login_with_cookies",
  82. "browser_wait_for_user_action",
  83. "browser_done",
  84. ]
  85. class AgentRunner:
  86. """
  87. Agent 执行引擎
  88. 支持两种模式:
  89. 1. call(): 单次 LLM 调用(简洁 API)
  90. 2. run(): Agent 模式(循环 + 记忆 + 追踪)
  91. """
  92. def __init__(
  93. self,
  94. trace_store: Optional[TraceStore] = None,
  95. memory_store: Optional[MemoryStore] = None,
  96. state_store: Optional[StateStore] = None,
  97. tool_registry: Optional[ToolRegistry] = None,
  98. llm_call: Optional[Callable] = None,
  99. config: Optional[AgentConfig] = None,
  100. skills_dir: Optional[str] = None,
  101. goal_tree: Optional[GoalTree] = None,
  102. debug: bool = False,
  103. ):
  104. """
  105. 初始化 AgentRunner
  106. Args:
  107. trace_store: Trace 存储(可选,不提供则不记录)
  108. memory_store: Memory 存储(可选,不提供则不使用记忆)
  109. state_store: State 存储(可选,用于任务状态)
  110. tool_registry: 工具注册表(可选,默认使用全局注册表)
  111. llm_call: LLM 调用函数(必须提供,用于实际调用 LLM)
  112. config: Agent 配置
  113. skills_dir: Skills 目录路径(可选,不提供则不加载 skills)
  114. goal_tree: 执行计划(可选,不提供则在运行时按需创建)
  115. debug: 保留参数(已废弃,请使用 API Server 可视化)
  116. """
  117. self.trace_store = trace_store
  118. self.memory_store = memory_store
  119. self.state_store = state_store
  120. self.tools = tool_registry or get_tool_registry()
  121. self.llm_call = llm_call
  122. self.config = config or AgentConfig()
  123. self.skills_dir = skills_dir
  124. self.goal_tree = goal_tree
  125. self.debug = debug
  126. def _generate_id(self) -> str:
  127. """生成唯一 ID"""
  128. import uuid
  129. return str(uuid.uuid4())
  130. # ===== 单次调用 =====
  131. async def call(
  132. self,
  133. messages: List[Dict],
  134. model: str = "gpt-4o",
  135. tools: Optional[List[str]] = None,
  136. uid: Optional[str] = None,
  137. trace: bool = True,
  138. **kwargs
  139. ) -> CallResult:
  140. """
  141. 单次 LLM 调用
  142. Args:
  143. messages: 消息列表
  144. model: 模型名称
  145. tools: 工具名称列表
  146. uid: 用户 ID
  147. trace: 是否记录 Trace
  148. **kwargs: 其他参数传递给 LLM
  149. Returns:
  150. CallResult
  151. """
  152. if not self.llm_call:
  153. raise ValueError("llm_call function not provided")
  154. trace_id = None
  155. message_id = None
  156. # 准备工具 Schema
  157. tool_names = BUILTIN_TOOLS.copy()
  158. if tools:
  159. for tool in tools:
  160. if tool not in tool_names:
  161. tool_names.append(tool)
  162. tool_schemas = self.tools.get_schemas(tool_names)
  163. # 创建 Trace
  164. if trace and self.trace_store:
  165. trace_obj = Trace.create(
  166. mode="call",
  167. uid=uid,
  168. model=model,
  169. tools=tool_schemas, # 保存工具定义
  170. llm_params=kwargs, # 保存 LLM 参数
  171. )
  172. trace_id = await self.trace_store.create_trace(trace_obj)
  173. # 调用 LLM
  174. result = await self.llm_call(
  175. messages=messages,
  176. model=model,
  177. tools=tool_schemas,
  178. **kwargs
  179. )
  180. # 记录 Message(单次调用模式不使用 GoalTree)
  181. if trace and self.trace_store and trace_id:
  182. msg = Message.create(
  183. trace_id=trace_id,
  184. role="assistant",
  185. sequence=1,
  186. goal_id=None, # 单次调用没有 goal
  187. content={"text": result.get("content", ""), "tool_calls": result.get("tool_calls")},
  188. prompt_tokens=result.get("prompt_tokens", 0),
  189. completion_tokens=result.get("completion_tokens", 0),
  190. finish_reason=result.get("finish_reason"),
  191. cost=result.get("cost", 0),
  192. )
  193. message_id = await self.trace_store.add_message(msg)
  194. # 完成 Trace
  195. await self.trace_store.update_trace(
  196. trace_id,
  197. status="completed",
  198. completed_at=datetime.now(),
  199. )
  200. return CallResult(
  201. reply=result.get("content", ""),
  202. tool_calls=result.get("tool_calls"),
  203. trace_id=trace_id,
  204. step_id=message_id, # 兼容字段名
  205. tokens={
  206. "prompt": result.get("prompt_tokens", 0),
  207. "completion": result.get("completion_tokens", 0),
  208. },
  209. cost=result.get("cost", 0)
  210. )
  211. # ===== Agent 模式 =====
  212. async def run(
  213. self,
  214. task: str,
  215. messages: Optional[List[Dict]] = None,
  216. system_prompt: Optional[str] = None,
  217. model: str = "gpt-4o",
  218. tools: Optional[List[str]] = None,
  219. agent_type: Optional[str] = None,
  220. uid: Optional[str] = None,
  221. max_iterations: Optional[int] = None,
  222. enable_memory: Optional[bool] = None,
  223. auto_execute_tools: Optional[bool] = None,
  224. **kwargs
  225. ) -> AsyncIterator[Union[Trace, Message]]:
  226. """
  227. Agent 模式执行
  228. Args:
  229. task: 任务描述
  230. messages: 初始消息(可选)
  231. system_prompt: 系统提示(可选)
  232. model: 模型名称
  233. tools: 工具名称列表
  234. agent_type: Agent 类型
  235. uid: 用户 ID
  236. max_iterations: 最大迭代次数
  237. enable_memory: 是否启用记忆
  238. auto_execute_tools: 是否自动执行工具
  239. **kwargs: 其他参数
  240. Yields:
  241. Union[Trace, Message]: Trace 对象(状态变化)或 Message 对象(执行过程)
  242. """
  243. if not self.llm_call:
  244. raise ValueError("llm_call function not provided")
  245. # 使用配置默认值
  246. agent_type = agent_type or self.config.agent_type
  247. max_iterations = max_iterations or self.config.max_iterations
  248. enable_memory = enable_memory if enable_memory is not None else self.config.enable_memory
  249. auto_execute_tools = auto_execute_tools if auto_execute_tools is not None else self.config.auto_execute_tools
  250. # 准备工具 Schema(提前准备,用于 Trace)
  251. tool_names = BUILTIN_TOOLS.copy()
  252. if tools:
  253. for tool in tools:
  254. if tool not in tool_names:
  255. tool_names.append(tool)
  256. tool_schemas = self.tools.get_schemas(tool_names)
  257. # 创建 Trace
  258. trace_id = self._generate_id()
  259. trace_obj = Trace(
  260. trace_id=trace_id,
  261. mode="agent",
  262. task=task,
  263. agent_type=agent_type,
  264. uid=uid,
  265. model=model,
  266. tools=tool_schemas, # 保存工具定义
  267. llm_params=kwargs, # 保存 LLM 参数
  268. status="running"
  269. )
  270. if self.trace_store:
  271. await self.trace_store.create_trace(trace_obj)
  272. # 初始化 GoalTree
  273. goal_tree = self.goal_tree or GoalTree(mission=task)
  274. await self.trace_store.update_goal_tree(trace_id, goal_tree)
  275. # 返回 Trace(表示开始)
  276. yield trace_obj
  277. try:
  278. # 加载记忆(Experience 和 Skill)
  279. experiences_text = ""
  280. skills_text = ""
  281. if enable_memory and self.memory_store:
  282. scope = f"agent:{agent_type}"
  283. experiences = await self.memory_store.search_experiences(scope, task)
  284. experiences_text = self._format_experiences(experiences)
  285. logger.info(f"加载 {len(experiences)} 条经验")
  286. # 加载 Skills(内置 + 用户自定义)
  287. skills = load_skills_from_dir(self.skills_dir)
  288. if skills:
  289. skills_text = self._format_skills(skills)
  290. if self.skills_dir:
  291. logger.info(f"加载 {len(skills)} 个 skills (内置 + 自定义: {self.skills_dir})")
  292. else:
  293. logger.info(f"加载 {len(skills)} 个内置 skills")
  294. # 构建初始消息
  295. if messages is None:
  296. messages = []
  297. # 记录初始 system 和 user 消息到 trace
  298. sequence = 1
  299. if system_prompt:
  300. # 注入记忆和 skills 到 system prompt
  301. full_system = system_prompt
  302. if skills_text:
  303. full_system += f"\n\n## Skills\n{skills_text}"
  304. if experiences_text:
  305. full_system += f"\n\n## 相关经验\n{experiences_text}"
  306. messages = [{"role": "system", "content": full_system}] + messages
  307. # 保存 system 消息
  308. if self.trace_store:
  309. system_msg = Message.create(
  310. trace_id=trace_id,
  311. role="system",
  312. sequence=sequence,
  313. goal_id=None, # 初始消息没有 goal
  314. content=full_system,
  315. )
  316. await self.trace_store.add_message(system_msg)
  317. yield system_msg
  318. sequence += 1
  319. # 添加任务描述
  320. messages.append({"role": "user", "content": task})
  321. # 保存 user 消息(任务描述)
  322. if self.trace_store:
  323. user_msg = Message.create(
  324. trace_id=trace_id,
  325. role="user",
  326. sequence=sequence,
  327. goal_id=None, # 初始消息没有 goal
  328. content=task,
  329. )
  330. await self.trace_store.add_message(user_msg)
  331. yield user_msg
  332. sequence += 1
  333. # 获取 GoalTree
  334. goal_tree = None
  335. if self.trace_store:
  336. goal_tree = await self.trace_store.get_goal_tree(trace_id)
  337. # 设置 goal_tree 到 goal 工具(供 LLM 调用)
  338. from agent.trace.goal_tool import set_goal_tree
  339. set_goal_tree(goal_tree)
  340. # 执行循环
  341. for iteration in range(max_iterations):
  342. # 注入当前计划到 messages(如果有 goals)
  343. llm_messages = list(messages)
  344. if goal_tree and goal_tree.goals:
  345. plan_text = f"\n## Current Plan\n\n{goal_tree.to_prompt()}"
  346. # 在最后一条 system 消息之后注入
  347. llm_messages.append({"role": "system", "content": plan_text})
  348. # 调用 LLM
  349. result = await self.llm_call(
  350. messages=llm_messages,
  351. model=model,
  352. tools=tool_schemas,
  353. **kwargs
  354. )
  355. response_content = result.get("content", "")
  356. tool_calls = result.get("tool_calls")
  357. finish_reason = result.get("finish_reason")
  358. prompt_tokens = result.get("prompt_tokens", 0)
  359. completion_tokens = result.get("completion_tokens", 0)
  360. step_tokens = prompt_tokens + completion_tokens
  361. step_cost = result.get("cost", 0)
  362. # 获取当前 goal_id
  363. current_goal_id = goal_tree.current_id if (goal_tree and goal_tree.current_id) else None
  364. # 记录 assistant Message
  365. assistant_msg = Message.create(
  366. trace_id=trace_id,
  367. role="assistant",
  368. sequence=sequence,
  369. goal_id=current_goal_id,
  370. content={"text": response_content, "tool_calls": tool_calls},
  371. prompt_tokens=prompt_tokens,
  372. completion_tokens=completion_tokens,
  373. finish_reason=finish_reason,
  374. cost=step_cost,
  375. )
  376. if self.trace_store:
  377. await self.trace_store.add_message(assistant_msg)
  378. # WebSocket 广播由 add_message 内部的 append_event 触发
  379. yield assistant_msg
  380. sequence += 1
  381. # 处理工具调用
  382. if tool_calls and auto_execute_tools:
  383. # 添加 assistant 消息到对话历史
  384. messages.append({
  385. "role": "assistant",
  386. "content": response_content,
  387. "tool_calls": tool_calls,
  388. })
  389. for tc in tool_calls:
  390. tool_name = tc["function"]["name"]
  391. tool_args = tc["function"]["arguments"]
  392. # 解析参数
  393. if isinstance(tool_args, str):
  394. if tool_args.strip(): # 非空字符串
  395. import json
  396. tool_args = json.loads(tool_args)
  397. else:
  398. tool_args = {} # 空字符串转换为空字典
  399. elif tool_args is None:
  400. tool_args = {} # None 转换为空字典
  401. # 执行工具(统一处理,传递 context)
  402. tool_result = await self.tools.execute(
  403. tool_name,
  404. tool_args,
  405. uid=uid or "",
  406. context={
  407. "store": self.trace_store,
  408. "trace_id": trace_id
  409. }
  410. )
  411. # 记录 tool Message
  412. tool_msg = Message.create(
  413. trace_id=trace_id,
  414. role="tool",
  415. sequence=sequence,
  416. goal_id=current_goal_id,
  417. tool_call_id=tc["id"],
  418. content={"tool_name": tool_name, "result": tool_result},
  419. )
  420. if self.trace_store:
  421. await self.trace_store.add_message(tool_msg)
  422. yield tool_msg
  423. sequence += 1
  424. # 添加到消息历史
  425. messages.append({
  426. "role": "tool",
  427. "tool_call_id": tc["id"],
  428. "name": tool_name,
  429. "content": str(tool_result),
  430. })
  431. continue # 继续循环
  432. # 无工具调用,任务完成
  433. break
  434. # 完成 Trace
  435. if self.trace_store:
  436. trace_obj = await self.trace_store.get_trace(trace_id)
  437. if trace_obj:
  438. await self.trace_store.update_trace(
  439. trace_id,
  440. status="completed",
  441. completed_at=datetime.now(),
  442. )
  443. # 重新获取更新后的 Trace 并返回
  444. trace_obj = await self.trace_store.get_trace(trace_id)
  445. if trace_obj:
  446. yield trace_obj
  447. except Exception as e:
  448. logger.error(f"Agent run failed: {e}")
  449. if self.trace_store:
  450. await self.trace_store.update_trace(
  451. trace_id,
  452. status="failed",
  453. error_message=str(e),
  454. completed_at=datetime.now()
  455. )
  456. trace_obj = await self.trace_store.get_trace(trace_id)
  457. if trace_obj:
  458. yield trace_obj
  459. raise
  460. # ===== 辅助方法 =====
  461. def _format_skills(self, skills: List[Skill]) -> str:
  462. """格式化技能为 Prompt 文本"""
  463. if not skills:
  464. return ""
  465. return "\n\n".join(s.to_prompt_text() for s in skills)
  466. def _format_experiences(self, experiences: List[Experience]) -> str:
  467. """格式化经验为 Prompt 文本"""
  468. if not experiences:
  469. return ""
  470. return "\n".join(f"- {e.to_prompt_text()}" for e in experiences)