121 lines
4.2 KiB
Python
121 lines
4.2 KiB
Python
"""
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对话 Agent:基于访谈问题清单,动态选择问题,实时生成回应
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"""
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from typing import List, Optional
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from langchain.chains import ConversationChain
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from langchain.memory import ConversationBufferMemory
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from langchain.prompts import PromptTemplate
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from services.llm_service import llm_service
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from .prompts import ConversationStage, get_conversation_prompt
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class ConversationAgent:
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"""对话 Agent"""
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def __init__(self):
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# 使用 LLM 服务获取 LLM 实例
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self.llm = llm_service.get_llm()
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# 对话记忆
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self.memories: dict[str, ConversationBufferMemory] = {}
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def _get_memory(self, conversation_id: str) -> ConversationBufferMemory:
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"""获取或创建对话记忆"""
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if conversation_id not in self.memories:
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self.memories[conversation_id] = ConversationBufferMemory(
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return_messages=True,
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memory_key="history"
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)
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return self.memories[conversation_id]
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def generate_response(
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self,
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conversation_id: str,
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user_message: str,
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current_stage: Optional[ConversationStage] = None,
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covered_topics: Optional[List[str]] = None
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) -> str:
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"""
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生成 Agent 回应
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Args:
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conversation_id: 对话 ID
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user_message: 用户消息
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current_stage: 当前对话阶段
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covered_topics: 已聊过的话题列表
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Returns:
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Agent 回应文本
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"""
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if current_stage is None:
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current_stage = ConversationStage.CHILDHOOD
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if covered_topics is None:
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covered_topics = []
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# 如果没有配置 LLM,返回默认回应
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if not self.llm:
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return "抱歉,LLM 服务未配置。请设置 DEEPSEEK_API_KEY 或 LLM_API_KEY 环境变量。"
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# 获取系统提示词
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system_prompt = get_conversation_prompt(current_stage, covered_topics, user_message)
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# 获取对话记忆
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memory = self._get_memory(conversation_id)
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# 创建对话链
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prompt_template = PromptTemplate(
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input_variables=["history", "input"],
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template=f"{system_prompt}\n\n{{history}}\n\nHuman: {{input}}\n\nAssistant:"
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)
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chain = ConversationChain(
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llm=self.llm,
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prompt=prompt_template,
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memory=memory,
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verbose=False
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)
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# 生成回应
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response = chain.predict(input=user_message)
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return response
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def detect_stage(self, conversation_id: str, user_message: str) -> ConversationStage:
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"""
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检测对话阶段
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Args:
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conversation_id: 对话 ID
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user_message: 用户消息
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Returns:
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检测到的对话阶段
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"""
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# 简单的关键词检测(实际应该使用更智能的方法)
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message_lower = user_message.lower()
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if any(word in message_lower for word in ["童年", "小时候", "出生", "家庭背景"]):
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return ConversationStage.CHILDHOOD
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elif any(word in message_lower for word in ["上学", "学校", "老师", "同学", "教育"]):
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return ConversationStage.EDUCATION
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elif any(word in message_lower for word in ["工作", "职业", "事业", "公司", "同事"]):
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return ConversationStage.CAREER
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elif any(word in message_lower for word in ["伴侣", "孩子", "家庭", "家人", "结婚"]):
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return ConversationStage.FAMILY
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elif any(word in message_lower for word in ["信念", "价值观", "座右铭", "坚持", "原则"]):
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return ConversationStage.BELIEFS
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elif any(word in message_lower for word in ["总结", "回顾", "感激", "希望", "未来"]):
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return ConversationStage.SUMMARY
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else:
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# 默认返回当前阶段或童年阶段
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return ConversationStage.CHILDHOOD
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def clear_memory(self, conversation_id: str):
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"""清除对话记忆"""
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if conversation_id in self.memories:
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del self.memories[conversation_id]
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