run.py 21 KB

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  1. """
  2. 示例(增强版)
  3. 使用 Agent 模式 + Skills
  4. 新增功能:
  5. 1. 支持命令行随时打断(输入 'p' 暂停,'q' 退出)
  6. 2. 暂停后可插入干预消息
  7. 3. 支持触发经验总结
  8. 4. 查看当前 GoalTree
  9. 5. 框架层自动清理不完整的工具调用
  10. 6. 支持通过 --trace <ID> 恢复已有 Trace 继续执行
  11. """
  12. import argparse
  13. import os
  14. import sys
  15. import select
  16. import asyncio
  17. from pathlib import Path
  18. # Clash Verge TUN 模式兼容:禁止 httpx/urllib 自动检测系统 HTTP 代理
  19. # TUN 虚拟网卡已在网络层接管所有流量,不需要应用层再走 HTTP 代理,
  20. # 否则 httpx 检测到 macOS 系统代理 (127.0.0.1:7897) 会导致 ConnectError
  21. os.environ.setdefault("no_proxy", "*")
  22. # 添加项目根目录到 Python 路径
  23. sys.path.insert(0, str(Path(__file__).parent.parent.parent))
  24. from dotenv import load_dotenv
  25. load_dotenv()
  26. from agent.llm.prompts import SimplePrompt
  27. from agent.core.runner import AgentRunner, RunConfig
  28. from agent.core.presets import AgentPreset, register_preset
  29. from agent.trace import (
  30. FileSystemTraceStore,
  31. Trace,
  32. Message,
  33. )
  34. from agent.llm import create_openrouter_llm_call
  35. from agent.tools import get_tool_registry
  36. DEFAULT_MODEL = "google/gemini-3-flash-preview"
  37. # ===== 非阻塞 stdin 检测 =====
  38. if sys.platform == 'win32':
  39. import msvcrt
  40. def check_stdin() -> str | None:
  41. """
  42. 跨平台非阻塞检查 stdin 输入。
  43. Windows: 使用 msvcrt.kbhit()
  44. macOS/Linux: 使用 select.select()
  45. """
  46. if sys.platform == 'win32':
  47. # 检查是否有按键按下
  48. if msvcrt.kbhit():
  49. # 读取按下的字符(msvcrt.getwch 是非阻塞读取宽字符)
  50. ch = msvcrt.getwch().lower()
  51. if ch == 'p':
  52. return 'pause'
  53. if ch == 'q':
  54. return 'quit'
  55. # 如果是其他按键,可以选择消耗掉或者忽略
  56. return None
  57. else:
  58. # Unix/Mac 逻辑
  59. ready, _, _ = select.select([sys.stdin], [], [], 0)
  60. if ready:
  61. line = sys.stdin.readline().strip().lower()
  62. if line in ('p', 'pause'):
  63. return 'pause'
  64. if line in ('q', 'quit'):
  65. return 'quit'
  66. return None
  67. # ===== 交互菜单 =====
  68. def _read_multiline() -> str:
  69. """
  70. 读取多行输入,以连续两次回车(空行)结束。
  71. 单次回车只是换行,不会提前终止输入。
  72. """
  73. print("\n请输入干预消息(连续输入两次回车结束):")
  74. lines: list[str] = []
  75. blank_count = 0
  76. while True:
  77. line = input()
  78. if line == "":
  79. blank_count += 1
  80. if blank_count >= 2:
  81. break
  82. lines.append("") # 保留单个空行
  83. else:
  84. blank_count = 0
  85. lines.append(line)
  86. # 去掉尾部多余空行
  87. while lines and lines[-1] == "":
  88. lines.pop()
  89. return "\n".join(lines)
  90. async def show_interactive_menu(
  91. runner: AgentRunner,
  92. trace_id: str,
  93. current_sequence: int,
  94. store: FileSystemTraceStore,
  95. ):
  96. """
  97. 显示交互式菜单,让用户选择操作。
  98. 进入本函数前不再有后台线程占用 stdin,所以 input() 能正常工作。
  99. """
  100. print("\n" + "=" * 60)
  101. print(" 执行已暂停")
  102. print("=" * 60)
  103. print("请选择操作:")
  104. print(" 1. 插入干预消息并继续")
  105. print(" 2. 触发经验总结(reflect)")
  106. print(" 3. 查看当前 GoalTree")
  107. print(" 4. 手动压缩上下文(compact)")
  108. print(" 5. 继续执行")
  109. print(" 6. 停止执行")
  110. print("=" * 60)
  111. while True:
  112. choice = input("请输入选项 (1-6): ").strip()
  113. if choice == "1":
  114. text = _read_multiline()
  115. if not text:
  116. print("未输入任何内容,取消操作")
  117. continue
  118. print(f"\n将插入干预消息并继续执行...")
  119. # 从 store 读取实际的 last_sequence,避免本地 current_sequence 过时
  120. live_trace = await store.get_trace(trace_id)
  121. actual_sequence = live_trace.last_sequence if live_trace and live_trace.last_sequence else current_sequence
  122. return {
  123. "action": "continue",
  124. "messages": [{"role": "user", "content": text}],
  125. "after_sequence": actual_sequence,
  126. }
  127. elif choice == "2":
  128. # 触发经验总结
  129. print("\n触发经验总结...")
  130. focus = input("请输入反思重点(可选,直接回车跳过): ").strip()
  131. from agent.trace.compaction import build_reflect_prompt
  132. # 保存当前 head_sequence
  133. trace = await store.get_trace(trace_id)
  134. saved_head = trace.head_sequence
  135. prompt = build_reflect_prompt()
  136. if focus:
  137. prompt += f"\n\n请特别关注:{focus}"
  138. print("正在生成反思...")
  139. reflect_cfg = RunConfig(trace_id=trace_id, max_iterations=1, tools=[])
  140. reflection_text = ""
  141. try:
  142. result = await runner.run_result(
  143. messages=[{"role": "user", "content": prompt}],
  144. config=reflect_cfg,
  145. )
  146. reflection_text = result.get("summary", "")
  147. finally:
  148. # 恢复 head_sequence(反思消息成为侧枝)
  149. await store.update_trace(trace_id, head_sequence=saved_head)
  150. # 追加到 experiences 文件
  151. if reflection_text:
  152. from datetime import datetime
  153. experiences_path = runner.experiences_path or "./.cache/experiences.md"
  154. os.makedirs(os.path.dirname(experiences_path), exist_ok=True)
  155. header = f"\n\n---\n\n## {trace_id} ({datetime.now().strftime('%Y-%m-%d %H:%M')})\n\n"
  156. with open(experiences_path, "a", encoding="utf-8") as f:
  157. f.write(header + reflection_text + "\n")
  158. print(f"\n反思已保存到: {experiences_path}")
  159. print("\n--- 反思内容 ---")
  160. print(reflection_text)
  161. print("--- 结束 ---\n")
  162. else:
  163. print("未生成反思内容")
  164. continue
  165. elif choice == "3":
  166. goal_tree = await store.get_goal_tree(trace_id)
  167. if goal_tree and goal_tree.goals:
  168. print("\n当前 GoalTree:")
  169. print(goal_tree.to_prompt())
  170. else:
  171. print("\n当前没有 Goal")
  172. continue
  173. elif choice == "4":
  174. # 手动压缩上下文
  175. print("\n正在执行上下文压缩(compact)...")
  176. try:
  177. goal_tree = await store.get_goal_tree(trace_id)
  178. trace = await store.get_trace(trace_id)
  179. if not trace:
  180. print("未找到 Trace,无法压缩")
  181. continue
  182. # 重建当前 history
  183. main_path = await store.get_main_path_messages(trace_id, trace.head_sequence)
  184. history = [msg.to_llm_dict() for msg in main_path]
  185. head_seq = main_path[-1].sequence if main_path else 0
  186. next_seq = head_seq + 1
  187. compact_config = RunConfig(trace_id=trace_id)
  188. new_history, new_head, new_seq = await runner._compress_history(
  189. trace_id=trace_id,
  190. history=history,
  191. goal_tree=goal_tree,
  192. config=compact_config,
  193. sequence=next_seq,
  194. head_seq=head_seq,
  195. )
  196. print(f"\n✅ 压缩完成: {len(history)} 条消息 → {len(new_history)} 条")
  197. except Exception as e:
  198. print(f"\n❌ 压缩失败: {e}")
  199. continue
  200. elif choice == "5":
  201. print("\n继续执行...")
  202. return {"action": "continue"}
  203. elif choice == "6":
  204. print("\n停止执行...")
  205. return {"action": "stop"}
  206. else:
  207. print("无效选项,请重新输入")
  208. async def main():
  209. # 解析命令行参数
  210. parser = argparse.ArgumentParser(description="任务 (Agent 模式 + 交互增强)")
  211. parser.add_argument(
  212. "--trace", type=str, default=None,
  213. help="已有的 Trace ID,用于恢复继续执行(不指定则新建)",
  214. )
  215. args = parser.parse_args()
  216. # 路径配置
  217. base_dir = Path(__file__).parent
  218. project_root = base_dir.parent.parent
  219. prompt_path = base_dir / "production.prompt"
  220. output_dir = base_dir / "output_1"
  221. output_dir.mkdir(exist_ok=True)
  222. # 加载项目级 presets(examples/how/presets.json)
  223. presets_path = base_dir / "presets.json"
  224. if presets_path.exists():
  225. import json
  226. with open(presets_path, "r", encoding="utf-8") as f:
  227. project_presets = json.load(f)
  228. for name, cfg in project_presets.items():
  229. register_preset(name, AgentPreset(**cfg))
  230. print(f" - 已加载项目 presets: {list(project_presets.keys())}")
  231. # Skills 目录(可选:用户自定义 skills)
  232. # 注意:内置 skills(agent/memory/skills/)会自动加载
  233. skills_dir = str(base_dir / "skills")
  234. print("=" * 60)
  235. print("mcp/skills 发现、获取、评价 分析任务 (Agent 模式 + 交互增强)")
  236. print("=" * 60)
  237. print()
  238. print("💡 交互提示:")
  239. print(" - 执行过程中输入 'p' 或 'pause' 暂停并进入交互模式")
  240. print(" - 执行过程中输入 'q' 或 'quit' 停止执行")
  241. print("=" * 60)
  242. print()
  243. # 1. 加载 prompt
  244. print("1. 加载 prompt 配置...")
  245. prompt = SimplePrompt(prompt_path)
  246. # 2. 构建消息(仅新建时使用,恢复时消息已在 trace 中)
  247. print("2. 构建任务消息...")
  248. messages = prompt.build_messages()
  249. # 3. 创建 Agent Runner(配置 skills)
  250. print("3. 创建 Agent Runner...")
  251. print(f" - Skills 目录: {skills_dir}")
  252. print(f" - 模型: {prompt.config.get('model', 'sonnet-4.5')}")
  253. # 加载自定义工具
  254. print(" - 加载自定义工具: nanobanana")
  255. import examples.how.tool # 导入自定义工具模块,触发 @tool 装饰器注册
  256. store = FileSystemTraceStore(base_path=".trace")
  257. runner = AgentRunner(
  258. trace_store=store,
  259. llm_call=create_openrouter_llm_call(model=DEFAULT_MODEL),
  260. skills_dir=skills_dir,
  261. experiences_path="./.cache/experiences_how.md",
  262. debug=True
  263. )
  264. # 4. 判断是新建还是恢复
  265. resume_trace_id = args.trace
  266. if resume_trace_id:
  267. # 验证 trace 存在
  268. existing_trace = await store.get_trace(resume_trace_id)
  269. if not existing_trace:
  270. print(f"\n错误: Trace 不存在: {resume_trace_id}")
  271. sys.exit(1)
  272. print(f"4. 恢复已有 Trace: {resume_trace_id[:8]}...")
  273. print(f" - 状态: {existing_trace.status}")
  274. print(f" - 消息数: {existing_trace.total_messages}")
  275. print(f" - 任务: {existing_trace.task}")
  276. else:
  277. print(f"4. 启动新 Agent 模式...")
  278. print()
  279. final_response = ""
  280. current_trace_id = resume_trace_id
  281. current_sequence = 0
  282. should_exit = False
  283. try:
  284. # 恢复模式:不发送初始消息,只指定 trace_id 续跑
  285. if resume_trace_id:
  286. initial_messages = None # None = 未设置,触发早期菜单检查
  287. config = RunConfig(
  288. model=f"claude-{prompt.config.get('model', 'sonnet-4.5')}",
  289. temperature=float(prompt.config.get('temperature', 0.3)),
  290. max_iterations=1000,
  291. trace_id=resume_trace_id,
  292. )
  293. else:
  294. initial_messages = messages
  295. config = RunConfig(
  296. model=f"claude-{prompt.config.get('model', 'sonnet-4.5')}",
  297. temperature=float(prompt.config.get('temperature', 0.3)),
  298. max_iterations=1000,
  299. name="社交媒体内容解构、建构、评估任务",
  300. )
  301. while not should_exit:
  302. # 如果是续跑,需要指定 trace_id
  303. if current_trace_id:
  304. config.trace_id = current_trace_id
  305. # 清理上一轮的响应,避免失败后显示旧内容
  306. final_response = ""
  307. # 如果 trace 已完成/失败且没有新消息,直接进入交互菜单
  308. # 注意:initial_messages 为 None 表示未设置(首次加载),[] 表示有意为空(用户选择"继续")
  309. if current_trace_id and initial_messages is None:
  310. check_trace = await store.get_trace(current_trace_id)
  311. if check_trace and check_trace.status in ("completed", "failed"):
  312. if check_trace.status == "completed":
  313. print(f"\n[Trace] ✅ 已完成")
  314. print(f" - Total messages: {check_trace.total_messages}")
  315. print(f" - Total cost: ${check_trace.total_cost:.4f}")
  316. else:
  317. print(f"\n[Trace] ❌ 已失败: {check_trace.error_message}")
  318. current_sequence = check_trace.head_sequence
  319. menu_result = await show_interactive_menu(
  320. runner, current_trace_id, current_sequence, store
  321. )
  322. if menu_result["action"] == "stop":
  323. break
  324. elif menu_result["action"] == "continue":
  325. new_messages = menu_result.get("messages", [])
  326. if new_messages:
  327. initial_messages = new_messages
  328. config.after_sequence = menu_result.get("after_sequence")
  329. else:
  330. # 无新消息:对 failed trace 意味着重试,对 completed 意味着继续
  331. initial_messages = []
  332. config.after_sequence = None
  333. continue
  334. break
  335. # 对 stopped/running 等非终态的 trace,直接续跑
  336. initial_messages = []
  337. print(f"{'▶️ 开始执行...' if not current_trace_id else '▶️ 继续执行...'}")
  338. # 执行 Agent
  339. paused = False
  340. try:
  341. async for item in runner.run(messages=initial_messages, config=config):
  342. # 检查用户中断
  343. cmd = check_stdin()
  344. if cmd == 'pause':
  345. # 暂停执行
  346. print("\n⏸️ 正在暂停执行...")
  347. if current_trace_id:
  348. await runner.stop(current_trace_id)
  349. # 等待一小段时间让 runner 处理 stop 信号
  350. await asyncio.sleep(0.5)
  351. # 显示交互菜单
  352. menu_result = await show_interactive_menu(
  353. runner, current_trace_id, current_sequence, store
  354. )
  355. if menu_result["action"] == "stop":
  356. should_exit = True
  357. paused = True
  358. break
  359. elif menu_result["action"] == "continue":
  360. # 检查是否有新消息需要插入
  361. new_messages = menu_result.get("messages", [])
  362. if new_messages:
  363. # 有干预消息,需要重新启动循环
  364. initial_messages = new_messages
  365. after_seq = menu_result.get("after_sequence")
  366. if after_seq is not None:
  367. config.after_sequence = after_seq
  368. paused = True
  369. break
  370. else:
  371. # 没有新消息,需要重启执行
  372. initial_messages = []
  373. config.after_sequence = None
  374. paused = True
  375. break
  376. elif cmd == 'quit':
  377. print("\n🛑 用户请求停止...")
  378. if current_trace_id:
  379. await runner.stop(current_trace_id)
  380. should_exit = True
  381. break
  382. # 处理 Trace 对象(整体状态变化)
  383. if isinstance(item, Trace):
  384. current_trace_id = item.trace_id
  385. if item.status == "running":
  386. print(f"[Trace] 开始: {item.trace_id[:8]}...")
  387. elif item.status == "completed":
  388. print(f"\n[Trace] ✅ 完成")
  389. print(f" - Total messages: {item.total_messages}")
  390. print(f" - Total tokens: {item.total_tokens}")
  391. print(f" - Total cost: ${item.total_cost:.4f}")
  392. elif item.status == "failed":
  393. print(f"\n[Trace] ❌ 失败: {item.error_message}")
  394. elif item.status == "stopped":
  395. print(f"\n[Trace] ⏸️ 已停止")
  396. # 处理 Message 对象(执行过程)
  397. elif isinstance(item, Message):
  398. current_sequence = item.sequence
  399. if item.role == "assistant":
  400. content = item.content
  401. if isinstance(content, dict):
  402. text = content.get("text", "")
  403. tool_calls = content.get("tool_calls")
  404. if text and not tool_calls:
  405. # 纯文本回复(最终响应)
  406. final_response = text
  407. print(f"\n[Response] Agent 回复:")
  408. print(text)
  409. elif text:
  410. preview = text[:150] + "..." if len(text) > 150 else text
  411. print(f"[Assistant] {preview}")
  412. if tool_calls:
  413. for tc in tool_calls:
  414. tool_name = tc.get("function", {}).get("name", "unknown")
  415. print(f"[Tool Call] 🛠️ {tool_name}")
  416. elif item.role == "tool":
  417. content = item.content
  418. if isinstance(content, dict):
  419. tool_name = content.get("tool_name", "unknown")
  420. print(f"[Tool Result] ✅ {tool_name}")
  421. if item.description:
  422. desc = item.description[:80] if len(item.description) > 80 else item.description
  423. print(f" {desc}...")
  424. except Exception as e:
  425. print(f"\n执行出错: {e}")
  426. import traceback
  427. traceback.print_exc()
  428. # paused → 菜单已在暂停时内联显示过
  429. if paused:
  430. if should_exit:
  431. break
  432. continue
  433. # quit → 直接退出
  434. if should_exit:
  435. break
  436. # Runner 退出(完成/失败/停止/异常)→ 显示交互菜单
  437. if current_trace_id:
  438. menu_result = await show_interactive_menu(
  439. runner, current_trace_id, current_sequence, store
  440. )
  441. if menu_result["action"] == "stop":
  442. break
  443. elif menu_result["action"] == "continue":
  444. new_messages = menu_result.get("messages", [])
  445. if new_messages:
  446. initial_messages = new_messages
  447. config.after_sequence = menu_result.get("after_sequence")
  448. else:
  449. initial_messages = []
  450. config.after_sequence = None
  451. continue
  452. break
  453. except KeyboardInterrupt:
  454. print("\n\n用户中断 (Ctrl+C)")
  455. if current_trace_id:
  456. await runner.stop(current_trace_id)
  457. # 6. 输出结果
  458. if final_response:
  459. print()
  460. print("=" * 60)
  461. print("Agent 响应:")
  462. print("=" * 60)
  463. print(final_response)
  464. print("=" * 60)
  465. print()
  466. # 7. 保存结果
  467. output_file = output_dir / "result.txt"
  468. with open(output_file, 'w', encoding='utf-8') as f:
  469. f.write(final_response)
  470. print(f"✓ 结果已保存到: {output_file}")
  471. print()
  472. # 可视化提示
  473. if current_trace_id:
  474. print("=" * 60)
  475. print("可视化 Step Tree:")
  476. print("=" * 60)
  477. print("1. 启动 API Server:")
  478. print(" python3 api_server.py")
  479. print()
  480. print("2. 浏览器访问:")
  481. print(" http://localhost:8000/api/traces")
  482. print()
  483. print(f"3. Trace ID: {current_trace_id}")
  484. print("=" * 60)
  485. if __name__ == "__main__":
  486. asyncio.run(main())