complete_agent_flow_rule.py 27 KB

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  1. """
  2. 完整的智能体工作流 (Complete Agent Flow)
  3. =====================================
  4. 此工作流整合了规划、大纲生成和指标计算四个核心智能体,实现完整的报告生成流程。
  5. 包含的智能体:
  6. 1. PlanningAgent (规划智能体) - 分析状态并做出决策
  7. 2. OutlineAgent (大纲生成智能体) - 生成报告结构和指标需求
  8. 3. MetricCalculationAgent (指标计算智能体) - 执行标准指标计算
  9. 4. RulesEngineMetricCalculationAgent (规则引擎指标计算智能体) - 执行规则引擎指标计算
  10. 工作流程:
  11. 1. 规划节点 → 分析当前状态,决定下一步行动
  12. 2. 大纲生成节点 → 生成报告大纲和指标需求
  13. 3. 指标判断节点 → 根据大纲确定需要计算的指标
  14. 4. 指标计算节点 → 执行具体的指标计算任务
  15. 技术特点:
  16. - 基于LangGraph的状态机工作流
  17. - 支持条件路由和状态管理
  18. - 完善的错误处理机制
  19. - 详细的执行日志记录
  20. 作者: Big Agent Team
  21. 版本: 1.0.0
  22. 创建时间: 2024-12-20
  23. """
  24. import asyncio
  25. from typing import Dict, Any, List
  26. from datetime import datetime
  27. from langgraph.graph import StateGraph, START, END
  28. from workflow_state import (
  29. IntegratedWorkflowState,
  30. create_initial_integrated_state,
  31. get_calculation_progress,
  32. update_state_with_outline_generation,
  33. update_state_with_planning_decision,
  34. convert_numpy_types,
  35. )
  36. from agents.outline_agent import generate_report_outline
  37. from agents.planning_agent import plan_next_action
  38. from agents.rules_engine_metric_calculation_agent import RulesEngineMetricCalculationAgent
  39. class CompleteAgentFlow:
  40. """完整的智能体工作流"""
  41. def __init__(self, api_key: str, base_url: str = "https://api.deepseek.com"):
  42. """
  43. 初始化完整的工作流
  44. Args:
  45. api_key: DeepSeek API密钥
  46. base_url: DeepSeek API基础URL
  47. """
  48. self.api_key = api_key
  49. self.base_url = base_url
  50. # 初始规则引擎智能体
  51. self.rules_engine_agent = RulesEngineMetricCalculationAgent(api_key, base_url)
  52. # 创建工作流图
  53. self.workflow = self._create_workflow()
  54. def _create_workflow(self) -> StateGraph:
  55. """创建LangGraph工作流"""
  56. workflow = StateGraph(IntegratedWorkflowState)
  57. # 添加节点
  58. workflow.add_node("planning_node", self._planning_node)
  59. workflow.add_node("outline_generator", self._outline_generator_node)
  60. workflow.add_node("metric_calculator", self._metric_calculator_node)
  61. # 设置入口点
  62. workflow.set_entry_point("planning_node")
  63. # 添加条件边 - 基于规划决策路由
  64. workflow.add_conditional_edges(
  65. "planning_node",
  66. self._route_from_planning,
  67. {
  68. "outline_generator": "outline_generator",
  69. "metric_calculator": "metric_calculator",
  70. END: END
  71. }
  72. )
  73. # 从各个节点返回规划节点重新决策
  74. workflow.add_edge("outline_generator", "planning_node")
  75. workflow.add_edge("metric_calculator", END)
  76. return workflow
  77. def _route_from_planning(self, state: IntegratedWorkflowState) -> str:
  78. """
  79. 从规划节点路由到下一个节点
  80. Args:
  81. state: 当前状态
  82. Returns:
  83. 目标节点名称
  84. """
  85. print(f"\n🔍 [路由决策] 步骤={state['planning_step']}, "
  86. f"大纲={state.get('outline_draft') is not None}, "
  87. f"指标需求={len(state.get('metrics_requirements', []))}")
  88. # 防止无限循环
  89. if state['planning_step'] > 30:
  90. print("⚠️ 规划步骤超过30次,强制结束流程")
  91. return END
  92. # 如果大纲为空 → 生成大纲
  93. if not state.get("outline_draft"):
  94. print("→ 路由到 outline_generator(生成大纲)")
  95. return "outline_generator"
  96. # 如果指标需求为空但大纲已生成 → 评估指标需求
  97. if not state.get("metrics_requirements") and state.get("outline_draft"):
  98. print("→ 路由到 metric_evaluator(评估指标需求)")
  99. return "metric_evaluator"
  100. # 计算覆盖率
  101. progress = get_calculation_progress(state)
  102. coverage = progress["coverage_rate"]
  103. print(f" 指标覆盖率 = {coverage:.2%}")
  104. # 如果有待计算指标且覆盖率 < 100% → 计算指标
  105. if state.get("pending_metric_ids") and coverage < 1.0:
  106. print(f"→ 路由到 metric_calculator(计算指标,覆盖率={coverage:.2%})")
  107. return "metric_calculator"
  108. # 如果没有待计算指标或覆盖率 >= 80% → 生成最终报告
  109. if not state.get("pending_metric_ids") or coverage >= 0.8:
  110. print(f"→ 路由到 report_finalizer(生成最终报告,覆盖率={coverage:.2%})")
  111. return "report_finalizer"
  112. # 默认返回规划节点
  113. return "planning_node"
  114. async def _planning_node(self, state: IntegratedWorkflowState) -> IntegratedWorkflowState:
  115. """规划节点:分析状态并做出决策"""
  116. try:
  117. print("🧠 正在执行规划分析...")
  118. # 使用规划智能体做出决策
  119. decision = await plan_next_action(
  120. question=state["question"],
  121. industry=state["industry"],
  122. current_state=state,
  123. api_key=self.api_key
  124. )
  125. # 更新状态
  126. new_state = update_state_with_planning_decision(state, {
  127. "decision": decision.decision,
  128. "next_route": self._decision_to_route(decision.decision),
  129. "metrics_to_compute": decision.metrics_to_compute
  130. })
  131. # 添加决策消息
  132. decision_msg = self._format_decision_message(decision)
  133. new_state["messages"].append({
  134. "role": "assistant",
  135. "content": decision_msg,
  136. "timestamp": datetime.now().isoformat()
  137. })
  138. print(f"✅ 规划决策完成:{decision.decision}")
  139. return convert_numpy_types(new_state)
  140. except Exception as e:
  141. print(f"❌ 规划节点执行失败: {e}")
  142. new_state = state.copy()
  143. new_state["errors"].append(f"规划节点错误: {str(e)}")
  144. return convert_numpy_types(new_state)
  145. async def _outline_generator_node(self, state: IntegratedWorkflowState) -> IntegratedWorkflowState:
  146. """大纲生成节点"""
  147. try:
  148. print("📝 正在生成报告大纲...")
  149. # 生成大纲(支持重试机制)
  150. outline = await generate_report_outline(
  151. question=state["question"],
  152. industry=state["industry"],
  153. sample_data=state["data_set"][:3], # 使用前3个样本
  154. api_key=self.api_key,
  155. max_retries=3, # 最多重试5次
  156. retry_delay=3.0 # 每次重试间隔3秒
  157. )
  158. # 更新状态
  159. new_state = update_state_with_outline_generation(state, outline)
  160. print(f"✅ 大纲生成完成:{outline.report_title}")
  161. print(f" 包含 {len(outline.sections)} 个章节,{len(outline.global_metrics)} 个指标需求")
  162. # 分析并打印AI的指标选择推理过程
  163. self._print_ai_selection_analysis(outline)
  164. return convert_numpy_types(new_state)
  165. except Exception as e:
  166. print(f"❌ 大纲生成失败: {e}")
  167. new_state = state.copy()
  168. new_state["errors"].append(f"大纲生成错误: {str(e)}")
  169. return convert_numpy_types(new_state)
  170. def _print_ai_selection_analysis(self, outline):
  171. """打印AI指标选择的推理过程分析 - 完全通用版本"""
  172. print()
  173. print('╔══════════════════════════════════════════════════════════════════════════════╗')
  174. print('║ 🤖 AI指标选择分析 ║')
  175. print('╚══════════════════════════════════════════════════════════════════════════════╝')
  176. print()
  177. # 计算总指标数 - outline可能是字典格式,需要适配
  178. if hasattr(outline, 'sections'):
  179. # Pydantic模型格式
  180. total_metrics = sum(len(section.metrics_needed) for section in outline.sections)
  181. sections = outline.sections
  182. else:
  183. # 字典格式
  184. total_metrics = sum(len(section.get('metrics_needed', [])) for section in outline.get('sections', []))
  185. sections = outline.get('sections', [])
  186. # 获取可用指标总数(这里可以从状态或其他地方动态获取)
  187. available_count = 26 # 这个可以从API调用中动态获取
  188. print('📊 选择统计:')
  189. print(' ┌─────────────────────────────────────────────────────────────────────┐')
  190. print(' │ 系统可用指标: {}个 │ AI本次选择: {}个 │ 选择率: {:.1f}% │'.format(
  191. available_count, total_metrics, total_metrics/available_count*100 if available_count > 0 else 0))
  192. print(' └─────────────────────────────────────────────────────────────────────┘')
  193. print()
  194. print('📋 AI决策过程:')
  195. print(' 大模型已根据用户需求从{}个可用指标中选择了{}个最相关的指标。'.format(available_count, total_metrics))
  196. print(' 选择过程完全由大模型基于语义理解和业务逻辑进行,不涉及任何硬编码规则。')
  197. print()
  198. print('🔍 选择结果:')
  199. print(' • 总章节数: {}个'.format(len(sections)))
  200. print(' • 平均每章节指标数: {:.1f}个'.format(total_metrics/len(sections) if sections else 0))
  201. print(' • 选择策略: 基于用户需求的相关性分析')
  202. print()
  203. print('🎯 AI Agent核心能力:')
  204. print(' • 语义理解: 理解用户查询的业务意图和分析需求')
  205. print(' • 智能筛选: 从海量指标中挑选最相关的组合')
  206. print(' • 逻辑推理: 为每个分析维度提供充分的选择依据')
  207. print(' • 动态适配: 根据不同场景自动调整选择策略')
  208. print()
  209. print('💡 关键洞察:')
  210. print(' AI Agent通过大模型的推理能力,实现了超越传统规则引擎的智能化指标选择,')
  211. print(' 能够根据具体业务场景动态调整分析框架,确保分析的针对性和有效性。')
  212. print()
  213. async def _metric_evaluator_node(self, state: IntegratedWorkflowState) -> IntegratedWorkflowState:
  214. """指标评估节点:根据大纲确定需要计算的指标"""
  215. try:
  216. print("🔍 正在评估指标需求...")
  217. new_state = state.copy()
  218. outline = state.get("outline_draft")
  219. if not outline:
  220. print("⚠️ 没有大纲信息,跳过指标评估")
  221. return convert_numpy_types(new_state)
  222. # 从大纲中提取指标需求
  223. metrics_requirements = outline.global_metrics
  224. metric_ids = [m.metric_id for m in metrics_requirements]
  225. # 设置待计算指标
  226. new_state["metrics_requirements"] = metrics_requirements
  227. new_state["pending_metric_ids"] = metric_ids.copy()
  228. new_state["computed_metrics"] = {}
  229. new_state["metrics_cache"] = {}
  230. print(f"✅ 指标评估完成,发现 {len(metric_ids)} 个待计算指标")
  231. for i, metric_id in enumerate(metric_ids[:5], 1): # 只显示前5个
  232. print(f" {i}. {metric_id}")
  233. if len(metric_ids) > 5:
  234. print(f" ... 还有 {len(metric_ids) - 5} 个指标")
  235. # 添加消息
  236. new_state["messages"].append({
  237. "role": "assistant",
  238. "content": f"🔍 指标评估完成:发现 {len(metric_ids)} 个待计算指标",
  239. "timestamp": datetime.now().isoformat()
  240. })
  241. return convert_numpy_types(new_state)
  242. except Exception as e:
  243. print(f"❌ 指标评估失败: {e}")
  244. new_state = state.copy()
  245. new_state["errors"].append(f"指标评估错误: {str(e)}")
  246. return convert_numpy_types(new_state)
  247. async def _metric_calculator_node(self, state: IntegratedWorkflowState) -> IntegratedWorkflowState:
  248. """指标计算节点"""
  249. try:
  250. # 检查计算模式
  251. use_rules_engine_only = state.get("use_rules_engine_only", False)
  252. use_traditional_engine_only = state.get("use_traditional_engine_only", False)
  253. if use_rules_engine_only:
  254. print("🧮 正在执行规则引擎指标计算(专用模式)...")
  255. elif use_traditional_engine_only:
  256. print("🧮 正在执行传统引擎指标计算(专用模式)...")
  257. else:
  258. print("🧮 正在执行指标计算...")
  259. new_state = state.copy()
  260. # 使用规划决策指定的指标批次,如果没有指定则使用所有待计算指标
  261. current_batch = state.get("current_batch_metrics", [])
  262. if current_batch:
  263. pending_ids = current_batch
  264. print(f"🧮 本次计算批次包含 {len(pending_ids)} 个指标")
  265. else:
  266. pending_ids = state.get("pending_metric_ids", [])
  267. print(f"🧮 计算所有待计算指标,共 {len(pending_ids)} 个")
  268. if not pending_ids:
  269. print("⚠️ 没有待计算的指标")
  270. return convert_numpy_types(new_state)
  271. # 获取指标需求信息
  272. metrics_requirements = state.get("metrics_requirements", [])
  273. if not metrics_requirements:
  274. print("⚠️ 没有指标需求信息")
  275. return convert_numpy_types(new_state)
  276. # 计算成功和失败的指标
  277. successful_calculations = 0
  278. failed_calculations = 0
  279. # 遍历待计算的指标(创建副本避免修改时遍历的问题)
  280. for metric_id in pending_ids.copy():
  281. try:
  282. # 找到对应的指标需求
  283. metric_req = next((m for m in metrics_requirements if m.metric_id == metric_id), None)
  284. if not metric_req:
  285. print(f"⚠️ 找不到指标 {metric_id} 的需求信息,跳过")
  286. # 仍然从待计算列表中移除,避免无限循环
  287. if metric_id in new_state["pending_metric_ids"]:
  288. new_state["pending_metric_ids"].remove(metric_id)
  289. continue
  290. print(f"🧮 计算指标: {metric_id} - {metric_req.metric_name}")
  291. # 根据模式决定使用哪种计算方式
  292. if use_rules_engine_only:
  293. # 只使用规则引擎计算
  294. use_rules_engine = True
  295. print(f" 使用规则引擎模式")
  296. elif use_traditional_engine_only:
  297. # 只使用传统引擎计算
  298. use_rules_engine = False
  299. print(f" 使用传统引擎模式")
  300. else:
  301. # 自动选择计算方式:优先使用规则引擎,只在规则引擎不可用时使用传统计算
  302. use_rules_engine = True # 默认使用规则引擎计算所有指标
  303. if use_rules_engine:
  304. # 使用规则引擎计算
  305. # 现在metric_id已经是知识ID,直接使用它作为配置名
  306. config_name = metric_id # metric_id 已经是知识ID,如 "metric-分析账户数量"
  307. intent_result = {
  308. "target_configs": [config_name],
  309. "intent_category": "指标计算"
  310. }
  311. print(f" 使用知识ID: {config_name}")
  312. results = await self.rules_engine_agent.calculate_metrics(intent_result)
  313. else:
  314. # 使用传统指标计算(模拟)
  315. # 这里简化处理,实际应该根据配置文件调用相应的API
  316. results = {
  317. "success": True,
  318. "results": [{
  319. "config_name": metric_req.metric_id,
  320. "result": {
  321. "success": True,
  322. "data": f"传统引擎计算结果:{metric_req.metric_name}",
  323. "value": 100.0 # 模拟数值
  324. }
  325. }]
  326. }
  327. # 处理计算结果
  328. for result in results.get("results", []):
  329. if result.get("result", {}).get("success"):
  330. # 计算成功
  331. new_state["computed_metrics"][metric_id] = result["result"]
  332. successful_calculations += 1
  333. print(f"✅ 指标 {metric_id} 计算成功")
  334. else:
  335. # 计算失败
  336. failed_calculations += 1
  337. print(f"❌ 指标 {metric_id} 计算失败")
  338. # 从待计算列表中移除(无论成功还是失败)
  339. if metric_id in new_state["pending_metric_ids"]:
  340. new_state["pending_metric_ids"].remove(metric_id)
  341. except Exception as e:
  342. print(f"❌ 计算指标 {metric_id} 时发生异常: {e}")
  343. failed_calculations += 1
  344. # 即使异常,也要从待计算列表中移除,避免无限循环
  345. if metric_id in new_state["pending_metric_ids"]:
  346. new_state["pending_metric_ids"].remove(metric_id)
  347. # 更新计算结果统计
  348. new_state["calculation_results"] = {
  349. "total_configs": len(pending_ids),
  350. "successful_calculations": successful_calculations,
  351. "failed_calculations": failed_calculations
  352. }
  353. # 添加消息
  354. if use_rules_engine_only:
  355. message_content = f"🧮 规则引擎指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败"
  356. elif use_traditional_engine_only:
  357. message_content = f"🧮 传统引擎指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败"
  358. else:
  359. message_content = f"🧮 指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败"
  360. new_state["messages"].append({
  361. "role": "assistant",
  362. "content": message_content,
  363. "timestamp": datetime.now().isoformat()
  364. })
  365. if use_rules_engine_only:
  366. print(f"✅ 规则引擎指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败")
  367. elif use_traditional_engine_only:
  368. print(f"✅ 传统引擎指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败")
  369. else:
  370. print(f"✅ 指标计算完成:{successful_calculations} 成功,{failed_calculations} 失败")
  371. return convert_numpy_types(new_state)
  372. except Exception as e:
  373. print(f"❌ 指标计算节点失败: {e}")
  374. new_state = state.copy()
  375. new_state["errors"].append(f"指标计算错误: {str(e)}")
  376. return convert_numpy_types(new_state)
  377. def _decision_to_route(self, decision: str) -> str:
  378. """将规划决策转换为路由"""
  379. decision_routes = {
  380. "generate_outline": "outline_generator",
  381. "compute_metrics": "metric_calculator",
  382. "finalize_report": "report_finalizer"
  383. }
  384. return decision_routes.get(decision, "planning_node")
  385. def _format_decision_message(self, decision: Any) -> str:
  386. """格式化决策消息"""
  387. try:
  388. decision_type = getattr(decision, 'decision', 'unknown')
  389. reasoning = getattr(decision, 'reasoning', '')
  390. if decision_type == "compute_metrics" and hasattr(decision, 'metrics_to_compute'):
  391. metrics = decision.metrics_to_compute
  392. return f"🧮 规划决策:计算 {len(metrics)} 个指标"
  393. elif decision_type == "finalize_report":
  394. return f"✅ 规划决策:生成最终报告"
  395. elif decision_type == "generate_outline":
  396. return f"📋 规划决策:生成大纲"
  397. else:
  398. return f"🤔 规划决策:{decision_type}"
  399. except:
  400. return "🤔 规划决策已完成"
  401. async def run_workflow(self, question: str, industry: str, data: List[Dict[str, Any]], session_id: str = None, use_rules_engine_only: bool = False, use_traditional_engine_only: bool = False) -> Dict[str, Any]:
  402. """
  403. 运行完整的工作流
  404. Args:
  405. question: 用户查询
  406. industry: 行业
  407. data: 数据集
  408. session_id: 会话ID
  409. use_rules_engine_only: 是否只使用规则引擎指标计算
  410. use_traditional_engine_only: 是否只使用传统引擎指标计算
  411. Returns:
  412. 工作流结果
  413. """
  414. try:
  415. print("🚀 启动完整智能体工作流...")
  416. print(f"问题:{question}")
  417. print(f"行业:{industry}")
  418. print(f"数据条数:{len(data)}")
  419. if use_rules_engine_only:
  420. print("计算模式:只使用规则引擎")
  421. elif use_traditional_engine_only:
  422. print("计算模式:只使用传统引擎")
  423. else:
  424. print("计算模式:标准模式")
  425. # 创建初始状态
  426. initial_state = create_initial_integrated_state(question, industry, data, session_id)
  427. # 设置计算模式标记
  428. if use_rules_engine_only:
  429. initial_state["use_rules_engine_only"] = True
  430. initial_state["use_traditional_engine_only"] = False
  431. elif use_traditional_engine_only:
  432. initial_state["use_rules_engine_only"] = False
  433. initial_state["use_traditional_engine_only"] = True
  434. else:
  435. initial_state["use_rules_engine_only"] = False
  436. initial_state["use_traditional_engine_only"] = False
  437. # 编译工作流
  438. app = self.workflow.compile()
  439. # 执行工作流
  440. result = await app.ainvoke(initial_state)
  441. print("✅ 工作流执行完成")
  442. return {
  443. "success": True,
  444. "result": result,
  445. "answer": result.get("answer"),
  446. "report": result.get("report_draft"),
  447. "session_id": result.get("session_id"),
  448. "execution_summary": {
  449. "planning_steps": result.get("planning_step", 0),
  450. "outline_generated": result.get("outline_draft") is not None,
  451. "metrics_computed": len(result.get("computed_metrics", {})),
  452. "completion_rate": result.get("completeness_score", 0)
  453. }
  454. }
  455. except Exception as e:
  456. print(f"❌ 工作流执行失败: {e}")
  457. return {
  458. "success": False,
  459. "error": str(e),
  460. "result": None
  461. }
  462. # 便捷函数
  463. async def run_complete_agent_flow(question: str, industry: str, data: List[Dict[str, Any]], api_key: str, session_id: str = None, use_rules_engine_only: bool = False, use_traditional_engine_only: bool = False) -> Dict[str, Any]:
  464. """
  465. 运行完整智能体工作流的便捷函数
  466. Args:
  467. question: 用户查询
  468. data: 数据集
  469. api_key: API密钥
  470. session_id: 会话ID
  471. use_rules_engine_only: 是否只使用规则引擎指标计算
  472. use_traditional_engine_only: 是否只使用传统引擎指标计算
  473. Returns:
  474. 工作流结果
  475. """
  476. workflow = CompleteAgentFlow(api_key)
  477. return await workflow.run_workflow(question, industry, data, session_id, use_rules_engine_only, use_traditional_engine_only)
  478. # 主函数用于测试
  479. async def main():
  480. """主函数:执行系统测试"""
  481. print("🚀 执行CompleteAgentFlow系统测试")
  482. print("=" * 50)
  483. # 导入配置
  484. import config
  485. if not config.DEEPSEEK_API_KEY:
  486. print("❌ 未找到API密钥")
  487. return
  488. # 测试数据
  489. test_data = [
  490. {
  491. }
  492. ]
  493. print(f"📊 测试数据: {len(test_data)} 条记录")
  494. # 执行测试
  495. result = await run_complete_agent_flow(
  496. question="请生成一份详细的农业经营贷流水分析报告,需要包含:1.总收入和总支出统计 2.收入笔数和支出笔数 3.各类型收入支出占比分析 4.交易对手收入支出TOP3排名 5.按月份的收入支出趋势分析 6.账户数量和交易时间范围统计 7.资金流入流出月度统计等全面指标",
  497. industry = "农业",
  498. # question="请生成一份详细的黑色金属相关经营贷流水分析报告,需要包含:1.总收入统计 2.收入笔数 3.各类型收入占比分析 4.交易对手收入排名 5.按月份的收入趋势分析 6.账户数量和交易时间范围统计 7.资金流入流出月度统计等全面指标",
  499. # industry = "黑色金属",
  500. data=test_data,
  501. api_key=config.DEEPSEEK_API_KEY,
  502. session_id="direct-test"
  503. )
  504. print(f"📋 结果: {'✅ 成功' if result.get('success') else '❌ 失败'}")
  505. if result.get('success'):
  506. summary = result.get('execution_summary', {})
  507. print(f" 规划步骤: {summary.get('planning_steps', 0)}")
  508. print(f" 指标计算: {summary.get('metrics_computed', 0)}")
  509. print("🎉 测试成功!")
  510. if __name__ == "__main__":
  511. import asyncio
  512. asyncio.run(main())