feat:人工学习过的表达会有更高的使用概率
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@@ -791,92 +791,6 @@ def _query_thinking_back(chat_id: str, question: str) -> Optional[Tuple[bool, st
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return None
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async def _analyze_question_answer(question: str, answer: str, chat_id: str) -> None:
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"""异步分析问题和答案的类别,并存储到相应系统
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Args:
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question: 问题
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answer: 答案
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chat_id: 聊天ID
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"""
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try:
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# 使用LLM分析类别
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analysis_prompt = f"""请分析以下问题和答案的类别:
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问题:{question}
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答案:{answer}
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类别说明:
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1. 人物信息:有关某个用户的个体信息(如某人的喜好、习惯、经历等)
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2. 黑话:对特定概念、缩写词、谐音词、自创词的解释(如"yyds"、"社死"等)
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3. 其他:除此之外的其他内容
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请输出JSON格式:
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{{
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"category": "人物信息" | "黑话" | "其他",
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"jargon_keyword": "如果是黑话,提取关键词(如'yyds'),否则为空字符串",
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"person_name": "如果是人物信息,提取人物名称,否则为空字符串",
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"memory_content": "如果是人物信息,提取要存储的记忆内容(简短概括),否则为空字符串"
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}}
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只输出JSON,不要输出其他内容:"""
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success, response, _, _ = await llm_api.generate_with_model(
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analysis_prompt,
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model_config=model_config.model_task_config.utils,
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request_type="memory.analyze_qa",
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)
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if not success:
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logger.error(f"分析问题和答案失败: {response}")
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return
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# 解析JSON响应
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try:
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json_pattern = r"```json\s*(.*?)\s*```"
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matches = re.findall(json_pattern, response, re.DOTALL)
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if matches:
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json_str = matches[0]
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else:
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json_str = response.strip()
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repaired_json = repair_json(json_str)
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analysis_result = json.loads(repaired_json)
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category = analysis_result.get("category", "").strip()
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if category == "黑话":
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# 处理黑话
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jargon_keyword = analysis_result.get("jargon_keyword", "").strip()
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if jargon_keyword:
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from src.jargon.jargon_miner import store_jargon_from_answer
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await store_jargon_from_answer(jargon_keyword, answer, chat_id)
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else:
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logger.warning(f"分析为黑话但未提取到关键词,问题: {question[:50]}...")
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elif category == "人物信息":
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# 处理人物信息
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# person_name = analysis_result.get("person_name", "").strip()
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# memory_content = analysis_result.get("memory_content", "").strip()
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# if person_name and memory_content:
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# from src.person_info.person_info import store_person_memory_from_answer
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# await store_person_memory_from_answer(person_name, memory_content, chat_id)
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# else:
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# logger.warning(f"分析为人物信息但未提取到人物名称或记忆内容,问题: {question[:50]}...")
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pass # 功能暂时禁用
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else:
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logger.info(f"问题和答案类别为'其他',不进行存储,问题: {question[:50]}...")
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except Exception as e:
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logger.error(f"解析分析结果失败: {e}, 响应: {response[:200]}...")
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except Exception as e:
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logger.error(f"分析问题和答案时发生异常: {e}")
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def _store_thinking_back(
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chat_id: str, question: str, context: str, found_answer: bool, answer: str, thinking_steps: List[Dict[str, Any]]
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) -> None:
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@@ -1013,8 +927,6 @@ async def _process_single_question(question: str, chat_id: str, context: str, in
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logger.info(f"ReAct Agent超时,不存储到数据库,问题: {question[:50]}...")
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if found_answer and answer:
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# 创建异步任务分析问题和答案
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asyncio.create_task(_analyze_question_answer(question, answer, chat_id))
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return f"问题:{question}\n答案:{answer}"
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return None
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