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QueryRewrite/rag2_0/intent_recognition/IntentRecognition.py
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#!/usr/bin/env python
# -*- coding: utf-8 -*-
"""
File: IntentRecognition.py
Author: oyyz
Date: 2025-05-13
Description: 意图分类、改写核心逻辑
"""
import os
from langchain_openai import ChatOpenAI
from langchain.output_parsers import PydanticOutputParser
import json
from typing import List, Tuple, Dict, Any, Optional, Union
import re
from .PromptTemplates import classification_prompt, query_rewrite_prompt, extract_nouns_prompt, classification_info, slot_filling_prompt
from .DataModels import (
Classification, QueryRewrite, Term, TermList,
SoftwareFunction, TroubleShooting, ProfessionalConsulting,
DataProblem, FileExtensionConsulting, SoftwareLock,
InstallationDownload, ProblemDiagnosis
)
from .ProfessionalNounVector import ProfessionalNounRetriever
from rag2_0.tool.ModelTool import XinferenceReRankerModel, OpenAiLLM, SiliconFlowReRankerModel
class IntentRecognizer:
"""
意图识别和问题改写类
"""
def __init__(self, api_key: str = None, base_url: str = None, model_name: str = "gpt-3.5-turbo", vector_index_dir: str = None):
"""
初始化意图识别器
Args:
api_key: OpenAI API密钥,如果为None则从环境变量获取
base_url: OpenAI API基础URL,如果为None则使用默认URL
model_name: 要使用的模型名称
vector_index_dir: 向量索引目录,如果为None则使用默认目录
"""
# 初始化LLM
llm_params = {
"temperature": 0.2, # 降低随机性,使结果更确定
"model": model_name
}
# 如果提供了API密钥,则使用提供的密钥
if api_key:
llm_params["api_key"] = api_key
# 如果提供了自定义URL,则使用提供的URL
if base_url:
llm_params["base_url"] = base_url
self.llm = OpenAiLLM(**llm_params)
# 准备分类解析器
self.classification_parser = PydanticOutputParser(pydantic_object=Classification)
# 准备问题改写解析器
self.query_rewrite_parser = PydanticOutputParser(pydantic_object=QueryRewrite)
# 准备术语列表解析器
self.terms_list_parser = PydanticOutputParser(pydantic_object=TermList)
# 加载suffix关键词
self.suffix_keywords = self._load_suffix_keywords()
# 初始化向量检索器
self.noun_retriever = ProfessionalNounRetriever(api_key=api_key, index_dir=vector_index_dir)
def _load_suffix_keywords(self, filepath: str = None) -> List[str]:
"""
加载后缀关键词列表
Args:
filepath: 后缀关键词文件路径,默认为None使用默认路径
Returns:
后缀关键词列表
"""
try:
# 如果未指定路径,使用默认路径
if filepath is None:
current_dir = os.path.dirname(os.path.abspath(__file__))
filepath = os.path.join(current_dir, "..", "..", "data", "nouns", "suffix_keywords.json")
# 读取JSON文件
with open(filepath, "r", encoding="utf-8") as f:
suffix_data = json.load(f)
# 添加额外的固定后缀
return suffix_data
except Exception as e:
raise RuntimeError(f"加载后缀关键词失败: {e}") from e
def classify_intent(self, query: str, keywords: TermList) -> Classification:
"""
对用户输入进行意图分类
Args:
content: 用户输入内容
keywords: 匹配到的关键词列表
rewrite: 重写的问题
Returns:
分类结果
"""
formatted_prompt = classification_prompt.format(user_input=query,
classification_info=classification_info,
output_format=self.classification_parser.get_format_instructions())
# 将关键词列表转换为JSON字符串
terms_dict = [term.model_dump() for term in keywords.terms]
keywords_str = json.dumps(terms_dict, ensure_ascii=False)
formatted_prompt = formatted_prompt.replace("{keywords}", keywords_str)
# 调用LLM
response = self.llm.invoke(formatted_prompt, False)
# 解析输出
try:
# 尝试直接解析JSON响应
parsed_output = self.classification_parser.parse(response.content.strip())
return parsed_output
except Exception as e:
raise RuntimeError(f"解析分类结果时出错: {e}") from e
def extract_keywords_with_llm(self, query: str) -> List[Term]:
"""
使用LLM从用户查询中提取专业关键词
Args:
query: 用户查询
Returns:
提取的术语列表
"""
# 准备提示词
formatted_prompt = extract_nouns_prompt.replace("{content}", query)
formatted_prompt = formatted_prompt.replace("{output_format}", self.terms_list_parser.get_format_instructions())
# 调用LLM
response = self.llm.invoke(formatted_prompt, False)
try:
# 尝试使用Pydantic解析器解析TermList
parsed_output = self.terms_list_parser.parse(response.content)
return parsed_output.terms
except Exception as e:
raise RuntimeError(f"无法解析LLM关键词提取响应: {e}") from e
def rerank_matched_terms(self, query_key: str, matched_terms: set, top_k: int = 2) -> List[Term]:
"""
对召回的专业术语进行重排序,按与用户查询的相关性排序
Args:
query: 用户查询
matched_terms: 匹配到的专业术语集合
query_keys: 用户查询中提取的关键词列表
Returns:
重排序后的专业术语列表
"""
if not matched_terms:
return []
try:
# 将每个术语转换为可用于重排序的文本表示
term_texts = ["名称:" + term.name + "|" + "同义词:" + ";".join(term.synonymous) + "|" + "描述:" + term.description for term in matched_terms]
# 使用重排序模型
xinference_reranker = SiliconFlowReRankerModel()
rerank_results = xinference_reranker.rerank(query_key, term_texts, top_k=top_k)
# 将matched_terms转换为列表以便按索引访问
matched_terms_list = list(matched_terms)
# 根据重排序结果获取排序后的术语列表
reranked_terms = [matched_terms_list[result["index"]] for result in rerank_results if result["score"] >= 0.6]
return reranked_terms
except Exception as e:
raise RuntimeError(f"SiliconFlowReRankerModel重排失败:{e}") from e
def match_keywords(self, query: str) -> Tuple[TermList, List[str]]:
"""
从用户问题中匹配关键词,结合LLM提取和向量检索
Args:
query: 用户问题
Returns:
匹配到的关键词列表
"""
query_keys=[]
# 步骤2: 使用LLM提取查询中的关键词
try:
extracted_terms = self.extract_keywords_with_llm(query)
for term in extracted_terms:
query_keys.append(term.name)
except Exception as e:
raise RuntimeError(f"LLM关键词提取失败: {e}") from e
matched_terms = [] # 存储匹配到的Term对象
# 步骤3: 使用向量检索找到相似的专业名词
try:
# 对matched_terms中的每个关键字进行向量检索
for current_key in query_keys:
vector_results = self.noun_retriever.query(current_key, top_k=5, use_intersection=False)
current_key_terms = set()
# 添加向量检索结果
for result in vector_results:
if isinstance(result.get('synonymous', []), str):
result['synonymous'] = result['synonymous'].split(';')
term = Term(
name=result.get('name'),
synonymous=result.get('synonymous', []),
description=result.get('description', '')
)
current_key_terms.add(term)
reranked_terms = self.rerank_matched_terms(current_key, current_key_terms)
matched_terms.extend(reranked_terms)
except Exception as e:
raise RuntimeError(f"向量检索关键词时出错: {e}") from e
# 提取所有Term对象的名称并排序
# 将set类型的matched_terms转换为TermList类型
term_list = TermList(terms=list(matched_terms))
return term_list, query_keys
def rewrite_query(self, query: str, keywords: TermList) -> QueryRewrite:
"""
对用户问题进行改写
Args:
query: 用户原始问题
keywords: 匹配到的关键词列表
Returns:
改写结果
"""
# 准备问题改写提示
terms_dict = [term.model_dump(exclude={"description"}) for term in keywords.terms]
keywords_str = json.dumps(terms_dict, ensure_ascii=False)
formatted_prompt = query_rewrite_prompt.format(query=query,
output_format=self.query_rewrite_parser.get_format_instructions(),
keywords=keywords_str)
# 调用LLM
response = self.llm.invoke(formatted_prompt, False)
# 解析输出
try:
# 尝试直接解析JSON响应
parsed_output = self.query_rewrite_parser.parse(response.content)
return parsed_output
except Exception as e:
raise RuntimeError(f"解析问题改写结果时出错: {e}") from e
def judge_define_suffix(self, input_str: str) -> Tuple[bool, List[str]]:
"""
判断输入字符串是否包含定义的后缀,并返回所有匹配到的后缀名列表
Args:
input_str: 输入字符串
Returns:
Tuple[bool, List[str]]: (是否包含定义的后缀, 匹配到的后缀名列表)
"""
# 构建正则表达式模式,匹配大小写不敏感且前面可能带有.
pattern = r'(?:\.?)(' + '|'.join(re.escape(field.get('name')) for field in self.suffix_keywords) + r')'
# 使用 re.IGNORECASE 标志来忽略大小写,findall找到所有匹配
matches = re.finditer(pattern, input_str, re.IGNORECASE)
matched_suffixes = [match.group(1) for match in matches]
return bool(matched_suffixes), matched_suffixes
def process_query(self, query: str) -> Tuple[Classification, TermList, QueryRewrite, List[str]]:
"""
处理用户问题的完整流程
Args:
query: 用户原始问题
Returns:
(意图分类结果, 匹配的关键词列表, 问题改写结果)的元组
"""
# 是否是扩展名
# is_suffix, matched_suffixes = self.judge_define_suffix(query)
# if is_suffix:
# # 将所有匹配到的后缀名作为Term添加到结果中
# suffix_terms = []
# for suffix in matched_suffixes:
# term_dict = next((item for item in self.suffix_keywords if item['name'].lower() == suffix.lower()), None)
# if term_dict:
# suffix_term = Term(
# name=term_dict.get('name'),
# synonymous=term_dict.get('synonymous', []),
# description=json.dumps(term_dict.get('description', ''), ensure_ascii=False)
# )
# suffix_terms.append(suffix_term)
# return Classification(vertical_classification="安装下载", sub_classification="查询"), TermList(terms=suffix_terms), QueryRewrite(rewrite=query), matched_suffixes
# 步骤1: 匹配关键词
keywords_terms, query_keys = self.match_keywords(query)
# 步骤2: 问题改写
rewrite = self.rewrite_query(
query=query,
keywords=keywords_terms
)
# 步骤3: 进行意图分类
classification = self.classify_intent(query, keywords_terms)
if classification.vertical_classification == "其他" or classification.sub_classification == "其他":
return classification, TermList(terms=[]), QueryRewrite(rewrite=query), []
if classification.vertical_classification == "闲聊" or classification.sub_classification == "闲聊":
return classification, TermList(terms=[]), QueryRewrite(rewrite=query),[]
# rewrite = QueryRewrite(rewrite=query)
return classification, keywords_terms, rewrite, query_keys
def fill_slots(self, query: str, classification: Classification) -> Dict[str, Any]:
"""
根据分类结果对问题进行槽位填充
Args:
query: 用户原始问题
classification: 意图分类结果
keywords: 匹配的关键词列表
Returns:
填充后的槽位数据模型
"""
# 根据分类结果选择对应的数据模型
slot_model = self._get_slot_model(classification)
if not slot_model:
return {"error": "未找到匹配的槽位模型"}
# 使用LLM进行槽位填充
filled_slots = self._fill_slots_with_llm(query, classification, slot_model)
# 检查必填槽位是否都已填充
is_complete, missing_slots = filled_slots.check_required_slots()
return {
"is_complete": is_complete,
"missing_slots": missing_slots,
"filled_data": filled_slots.model_dump()
}
def _get_slot_model(self, classification: Classification) -> Optional[type]:
"""
根据分类结果获取对应的槽位模型类
Args:
classification: 意图分类结果
Returns:
对应的槽位模型类
"""
# 软件问题
if classification.vertical_classification == "软件问题":
if classification.sub_classification == "软件功能":
return SoftwareFunction
elif classification.sub_classification == "故障排查":
return TroubleShooting
# 业务问题
elif classification.vertical_classification == "业务问题":
if classification.sub_classification == "专业咨询":
return ProfessionalConsulting
elif classification.sub_classification == "数据问题":
return DataProblem
# 安装下载注册
elif classification.vertical_classification == "安装下载注册":
if classification.sub_classification == "后缀名咨询":
return FileExtensionConsulting
elif classification.sub_classification == "软件锁类":
return SoftwareLock
elif classification.sub_classification == "安装下载类":
return InstallationDownload
elif classification.sub_classification == "问题排查类":
return ProblemDiagnosis
return None
count=1
def _fill_slots_with_llm(self, query: str, classification: Classification, slot_model_class: type) -> Any:
"""
使用LLM进行槽位填充
Args:
query: 用户原始问题
classification: 意图分类结果
slot_model_class: 槽位模型类
Returns:
填充后的槽位数据模型实例
"""
# 准备提示词
slot_parser = PydanticOutputParser(pydantic_object=slot_model_class)
formatted_prompt = slot_filling_prompt.format(
query=query,
vertical_classification=classification.vertical_classification,
sub_classification=classification.sub_classification,
output_format=slot_parser.get_format_instructions()
)
# 调用LLM
response = self.llm.invoke(formatted_prompt, False)
try:
# 尝试解析LLM响应
parsed_output = slot_parser.parse(response.content)
return parsed_output
except Exception as e:
# 如果解析失败,创建一个空的模型实例
empty_instance = slot_model_class()
return empty_instance
def process_query_with_slots(self, query: str) -> Dict[str, Any]:
"""
处理用户问题的完整流程,包括槽位填充
Args:
query: 用户原始问题
Returns:
包含分类、关键词、改写和槽位填充结果的字典
"""
# 执行基本处理流程
classification, keywords, rewrite, query_keys = self.process_query(query)
# 如果是有效分类,进行槽位填充
slot_filling_result = {}
if classification.vertical_classification not in ["其他", "闲聊"] and classification.sub_classification not in ["其他", "闲聊"]:
slot_filling_result = self.fill_slots(rewrite.rewrite, classification)
return {
"classification": classification.model_dump(),
"keywords": keywords.model_dump(),
"rewrite": rewrite.model_dump(),
"query_keys": query_keys,
"slot_filling": slot_filling_result
}