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- import os
- from sympy.solvers.diophantine.diophantine import equivalent
- script_dir = os.path.dirname(os.path.abspath(__file__))
- import sys
- sys.path.append(script_dir)
- import pandas as pd
- import jieba
- import jieba.posseg as pseg
- import re
- import numpy as np
- import json
- import textdistance
- import faiss
- from remote_model import RemoteBGEModel
- class PLCMatch:
- """通过关键词+语义相似度的方式,从用户输入中匹配PLC点位"""
- def __init__(self, project_id:int):
- # 水厂id
- self.project_id = str(project_id)
- # 路径
- self.script_dir = os.path.dirname(os.path.abspath(__file__)) # 脚本绝对路径
- # 水厂的词典根路径
- self.plc_dict_root_dir = os.path.join(self.script_dir, f'plc_dictionary/{self.project_id}_plc_dictionary')
- # 读取pcl点位文件,生成name-code映射字典
- self.name_2_code_dict = self.__read_pcl()
- # 加载用户自定义词典,添加到jieba词库
- user_dictionary_dir = os.path.join(self.script_dir, 'user_maintain_dictionary', 'jieba_words')
- user_dict_list = [os.path.join(user_dictionary_dir, _) for _ in os.listdir(user_dictionary_dir) if _.split('.')[-1] == 'txt'] # 用户词典
- self.user_dict_list = user_dict_list
- self.__load_user_dict()
- # 生成二级字典
- self.dict_level_2 = self.__make_level_two_dictionary()
- # 生成一级字典
- self.dict_level_1 = self.__make_level_one_dictionary()
- # 等价词映射表
- self.equivalent_wordmap_txt = os.path.join(self.script_dir,'user_maintain_dictionary','equivalent_words', 'equivalent_wordmap.txt')
- self.dict_equivalent_wordmap = self.__construct_equivalent_wordmap()
- # 生成知识库,PLC点位数据库中文字段
- # 加载bge-m3和bge-reranker远程模型
- self.plc_database_name_template_list = list(self.name_2_code_dict.keys())
- self.model = RemoteBGEModel('dev')
- self.knowledge = self.__load_faiss_database()
- def __load_faiss_database(self):
- """从本地加载向量数据库"""
- # 水厂的数据库字段知识库
- faiss_path = os.path.join(self.plc_dict_root_dir, f'{self.project_id}_knowledge.faiss')
- # 尝试从本地加载
- if os.path.exists(faiss_path):
- print('PLC点位查询功能从本地加载点位字段向量知识库...')
- return faiss.read_index(faiss_path)
- # 如果不存在就尝试重新创建
- # 首先,我们需要拿到数据库的点位名称,可以直接从name-code映射字典当中获取
- plc_database_name_template_list = self.plc_database_name_template_list
- # 调用远程embedding模型,one by one 地处理,远程模型通过配置参数进行归一化
- embeddings = [self.model.encode([temp], normalize=True)[0] for temp in plc_database_name_template_list]
- for _ in embeddings:
- if _ is None:
- raise RuntimeError('为plc数据库中文字段构建向量数据库时发生异常,embeddings不能存在None')
- # 要求embeddings是一个二维矩阵,类型为float32
- embeddings = np.array(embeddings, dtype=np.float32)
- # 创建 FAISS 索引
- dimension = embeddings[0].shape[0]
- local_faiss = faiss.IndexFlatIP(dimension) # 建立内积索引
- local_faiss.add(embeddings) # 添加索引
- # 保存未来使用
- faiss.write_index(local_faiss, faiss_path)
- return local_faiss
- def __read_pcl(self):
- """
- 读取pcl文件,生成name2code词典
- :return:
- """
- # name-code映射词典路径
- dict_name2code_path = os.path.join(self.plc_dict_root_dir, f'{self.project_id}_dict_name_2_code.json')
- # 尝试从本地加载name-code映射字典
- if os.path.exists(dict_name2code_path):
- with open(dict_name2code_path, 'r', encoding='utf-8') as f:
- dict_name2code = json.load(f)
- return dict_name2code
- # 如果本地没有就重新生成
- # 检查点位文件是否存在
- pcl_file_path = os.path.join(self.plc_dict_root_dir, f'{self.project_id}_点位.xlsx') # 点位文件路径
- if not os.path.exists(pcl_file_path):
- raise FileNotFoundError(f'{pcl_file_path} does not exist')
- # 读点位
- points = pd.read_excel(pcl_file_path)
- # 列名称,name | code
- column_label_alias, column_label_code = points.columns.tolist()
- # 中英文匹配
- names = points.loc[:, column_label_alias].to_numpy()
- codes = points.loc[:, column_label_code].to_numpy()
- # 对齐命名规范, 按照中荷水厂命名风格,将1#UF或1#RO统一替换为UF1,RO1,将所有反渗透文字替换为RO,所有超滤文字替换为UF
- names = [s.replace('超滤','UF').replace('反渗透','RO') for s in names]
- names = [self.field_align(s) for s in names]
- # 名到英文的字典
- dict_name2code = dict(zip(names, codes))
- # name-code映射字典保存到本地文件
- with open(dict_name2code_path, 'w', encoding='utf-8') as f:
- json.dump(dict_name2code, f, ensure_ascii=False)
- return dict_name2code
- def __load_user_dict(self):
- """加载用户词典,添加到jieba词库"""
- # 删除
- jieba.del_word('反渗透')
- jieba.del_word('超滤')
- for user_dict_txt in self.user_dict_list:
- # 检查文件是否存在
- if not os.path.exists(user_dict_txt):
- raise FileNotFoundError(f'{user_dict_txt} does not exist')
- # 检查文件后缀名是否合法
- if os.path.splitext(user_dict_txt)[1] != '.txt':
- continue
- # 分词库加载用户字典
- jieba.load_userdict(user_dict_txt)
- def __construct_equivalent_wordmap(self):
- """构建等价词汇映射表,等价词汇的使用方式是将备查词的所有等效说法都纳入备查序列,从而保证了搜索的高召回率"""
- # 检查文件是否存在
- equivalent_wordmap_path = os.path.join(self.script_dir, 'user_maintain_dictionary','equivalent_words', 'dict_equivalent_wordmap.json')
- if os.path.exists(equivalent_wordmap_path):
- with open(equivalent_wordmap_path, 'r', encoding='utf-8') as f:
- equivalent_wordmap = json.load(f)
- return equivalent_wordmap
- # 如果本地不存在等价词典json文件,那么就尝试创建
- if not os.path.exists(self.equivalent_wordmap_txt):
- raise FileNotFoundError(f'{self.equivalent_wordmap_txt} does not exist')
- with open(self.equivalent_wordmap_txt, 'r', encoding='utf-8') as f:
- all_lines = [_.strip() for _ in f.readlines()]
- # 创建等价词汇映射表
- dict_equi_wordmap = {}
- for line in all_lines:
- split_list = line.split('=')
- for i in range(len(split_list)):
- dict_equi_wordmap[split_list[i]] = split_list
- with open(equivalent_wordmap_path, 'w', encoding='utf-8') as f:
- json.dump(dict_equi_wordmap,f,ensure_ascii=False)
- return dict_equi_wordmap
- def __make_level_two_dictionary(self):
- """创建二级字典,对点位所有字段进行正则匹配中文,将中文一样的字段聚合为同一个字典键值对,键为正则提取的中文字符"""
- group_dict = {}
- # 尝试从本地加载二级字典
- dict_level2_dict_path = os.path.join(self.plc_dict_root_dir, f'{self.project_id}_dict_level_2.json')
- if os.path.exists(dict_level2_dict_path):
- with open(dict_level2_dict_path, 'r', encoding='utf-8') as f:
- group_dict = json.load(f)
- return group_dict
- if self.name_2_code_dict is None:
- raise ValueError(f'name_2_code_dict is None', self.name_2_code_dict)
- data = self.name_2_code_dict.keys()
- # 创建二级字典
- for item in data:
- k = re.sub(r'[^\u4e00-\u9fa5]', '', item)
- # 处理没有汉字的字段
- if k == '':
- k = "无"
- if k not in group_dict.keys():
- group_dict[k] = [item]
- else:
- group_dict[k].append(item)
- # 保存二级字典到本地
- with open(dict_level2_dict_path, 'w', encoding='utf-8') as f:
- json.dump(group_dict, f, ensure_ascii=False)
- return group_dict
- @staticmethod
- def cut_compair(arr_a: str, arr_b: str, condition='nz') -> str:
- """
- :param condition: 词性
- :param arr_a:
- :param arr_b:
- :return: 第一个相同nz词
- """
- # a: w1,f1 w2,f2 w3, f3
- # b: w1,f1 w2,f2 w3, f3
- cut_arr_a = [list(_) for _ in pseg.lcut(arr_a)]
- cut_arr_b = [list(_) for _ in pseg.lcut(arr_b)]
- for i in range(len(cut_arr_a)):
- for j in range(i, len(cut_arr_b)):
- # 只比较nz词性
- if cut_arr_a[i][1] != condition or cut_arr_b[j][1] != condition:
- continue
- if cut_arr_a[i][0] == cut_arr_b[j][0] and cut_arr_a[i][1] == cut_arr_b[j][1]:
- return cut_arr_a[i][0]
- return ''
- def __make_level_one_dictionary(self):
- """创建一级字典"""
- group_dict = {} # 存放二次分组的结果
- # 尝试从本地加载一级字典
- dict_level_1_path = os.path.join(self.plc_dict_root_dir, f'{self.project_id}_dict_level_1.json')
- if os.path.exists(dict_level_1_path):
- with open(dict_level_1_path, 'r', encoding='utf-8') as f:
- group_dict = json.load(f)
- return group_dict
- if self.dict_level_2.keys() is None:
- raise ValueError(f'dict_lev2 is None', self.dict_level_2)
- # 提取二级字典的所有key
- data = self.dict_level_2.keys()
- # 如果不存在就重新生成一级字典
- # 根据用户词典进行分词,筛选出所有带nz词的字段
- no_nz_list = [] # 没有nz词的字段
- nz_list = [] # 有nz词的字段
- for item in data:
- # 判断是否存在nz名词
- is_exist_n = False
- for w, f in pseg.lcut(item):
- if f == 'nz': # 查看词性
- is_exist_n = True
- break
- if is_exist_n: # 存在词
- nz_list.append(item)
- else: # 不存在nz词
- no_nz_list.append(item)
- # 聚合具有相同nz名词的字段
- while len(nz_list) > 0:
- pos = [1 for _ in range(len(nz_list))] # 0表示不被取,1表示需要被取,默认都要被取,用来更新nz_list给下次判断使用
- pos[0] = 0 # 标记第一个单词为不需要处理
- for i in range(len(nz_list)):
- # 查看是否存在相同的nz词
- same_nz_word = self.cut_compair(nz_list[0], nz_list[i])
- if same_nz_word:
- # 执行聚合
- if same_nz_word not in group_dict.keys():
- # 首次聚合,与自身比较,创建自身类别
- group_dict[same_nz_word] = [nz_list[i]]
- else:
- group_dict[same_nz_word].append(nz_list[i])
- pos[i] = 0
- # 处理完一趟就要变更nz_list
- nz_list = np.array(nz_list)[np.array(pos, dtype=np.bool)].tolist()
- # 聚合不包含nz的名词, 单独占一个类别
- for item in no_nz_list:
- group_dict[item] = [item]
- with open(dict_level_1_path, 'w', encoding='utf-8') as f:
- json.dump(group_dict, f, ensure_ascii=False)
- return group_dict
- @staticmethod
- def field_align(input_str:str)->str:
- """按照锡山中荷命名规范对齐字段,1#UF替换为UF1,1#RO替换为RO1,保持统一"""
- sources_uf = re.findall(r'\d+#UF', input_str, re.IGNORECASE) # 匹配1#UF
- sources_ro = re.findall(r'\d+#RO', input_str, re.IGNORECASE) # 匹配1#RO
- sources = sources_uf + sources_ro
- for sou in sources:
- number_, flag_ = sou.split('#')
- input_str = input_str.replace(sou, flag_.upper() + number_) # 统一转为大写
- return input_str
- @ staticmethod
- def quicksort_up_part(arr:list, start:int, end:int)-> int:
- """升序排序"""
- # 双指针
- low = start
- high = end
- pivot = arr[start][1] # 基准值
- # 大数放在基准值右边,小数放在基准值左边
- while low < high:
- # 先从右向左找比基准值小的
- while low< high and arr[high][1] >= pivot:
- high -= 1
- # 此时high指向值小于基准值,交换
- if low < high:
- arr[low], arr[high] = arr[high], arr[low]
- low +=1
- # 现在开始从左向右找,比基准值大的数
- while low < high and arr[low][1] <= pivot:
- low += 1
- # 此时low指向值大于基准值,交换
- if low < high:
- arr[high], arr[low] = arr[low], arr[high]
- high -= 1
- return low
- def quicksort_up(self, arr:list, start:int, end:int):
- """按照元组第二个元素值大小进行升序排序"""
- if start >= end:
- return
- # 先排一次获得基准值位置
- mid = self.quicksort_up_part(arr, start, end)
- # 排左面
- self.quicksort_up(arr, start, mid - 1)
- # 排右面
- self.quicksort_up(arr, mid + 1, end)
- def words_similarity_score_sorted(self, query:str, candidates:list)->list:
- """计算输入语句与候选词的相似度并按照相似度分值进行排序"""
- # 选择算法(示例使用Levenshtein,归一化到0-1)
- candidates = candidates.copy()
- jarowinkler = textdistance.JaroWinkler()
- key_score_list = [(candidate, jarowinkler.normalized_similarity(query, candidate)) for candidate in candidates]
- self.quicksort_up(key_score_list, 0, len(key_score_list) - 1) # 升序排序
- key_sorted_list = [tuple_element[0] for tuple_element in key_score_list] # 取出key
- key_sorted_list = key_sorted_list[::-1] # 反转,变为降序
- return key_sorted_list
- def words_similarity_score_sorted_v2(self, query:str, candidates:list)->list:
- """通过rerank的方式为候选词进行相似度排序"""
- # 调用远程reranker模型
- n = len(candidates) # 候选词数量
- group_query = [(query, i) for i in candidates]
- score = self.model.compute_score(group_query)
- key_score_list = [(candidates[i], score[i]) for i in range(n)]
- self.quicksort_up(key_score_list, 0, len(key_score_list) - 1) # 升序排序
- key_sorted_list = [tuple_element[0] for tuple_element in key_score_list] # 取出key
- key_sorted_list = key_sorted_list[::-1] # 反转,变为降序
- return key_sorted_list
- def match_v2_on(self, promt: str,is_agent:bool=False):
- """
- 模糊匹配v2
- :param is_agent:
- :param promt:
- :return:
- """
- print("=" * 50)
- # 命名风格转换
- print("原始查询:", promt)
- promt = promt.replace('超滤', 'UF').replace('反渗透', 'RO').replace('号', '#').replace('组', '#')
- promt = self.field_align(promt)
- print("转换查询:", promt)
- # 输入分词
- nz_words = []
- for w, f in pseg.lcut(promt):
- print(f'{w}({f})', end="")
- if f == 'nz':
- nz_words.append(w)
- print('\n备查nz词:', nz_words)
- # 处理专有名词的等价词,为了保证高召回率,我们将备查词的所有等价说法都放入备查序列
- equivalent_words = []
- for nz_idx, nz in enumerate(nz_words):
- # 首先判断nz词是否在等价词汇表中,如果不在根本无法替换
- if nz in self.dict_equivalent_wordmap.keys():
- # 然后把等价的说法都添加进去就好了
- equivalent_words = self.dict_equivalent_wordmap.get(nz, [])
- if equivalent_words:
- nz_words += equivalent_words
- nz_words = list(set(nz_words))
- print('等价备查nz词:', nz_words)
- del equivalent_words
- # 进行一级查询,根据nz词是否包含于词典
- query_level_one = []
- for i in range(len(nz_words)): # 为第i个nz词进行初次匹配
- result = []
- # 如果nz词包含在一级词典中就算匹配成功
- for dict_level_1_key in self.dict_level_1.keys():
- if nz_words[i] in dict_level_1_key: # 如果nz词包含在一级词典内
- result+= self.dict_level_1.get(dict_level_1_key)
- query_level_one.append(result) # 放入一级查询结果中
- # 进行二级查询
- query_level_two = []
- for idx_nz, i_nz_query_result in enumerate(query_level_one): # 遍历每个nz词的查询结果
- result = [] # 为第i个nz词进行二次匹配
- # 如果第i个nz词一级查询不为空
- if i_nz_query_result: # 第i个nz词的查询结果list
- for res_word_level_one in i_nz_query_result:
- if res_word_level_one in self.dict_level_2.keys():
- result += self.dict_level_2.get(res_word_level_one) # self.dict_level_2的value本身就是字典,所以用+=拼接
- # 虽然一级查询失败,但是并不意味着映射词典里没有,因为一级词典忽略英文。
- else: # 如果一级查询失败,就直接在name2code字典中查询
- if nz_words[idx_nz] in self.name_2_code_dict.keys():# 如果第i个nz词在2级词典,就直接添加到结果中
- result.append(nz_words[idx_nz])
- # 如果第i个nz词的一级查询结果为空,则添加空列表占位
- query_level_two.append(result)
- # 常规精确匹配结束,如果匹配成功,结构为二维列表,否则为空列表
- matched_keys = query_level_two # 获取已匹配的字段
- # 备查词合并,我们约定所有备查词进行统一的查询,后面怎么用这些结果取决于外部的应用,对于agent模式,将会输出许多结果,对月非agent只会输出概率最高的结果
- tem_matched_keys = []
- for item in matched_keys:
- tem_matched_keys += item
- matched_keys = [list(set(tem_matched_keys))]
- del tem_matched_keys
- # 如果精确匹配失败,没有匹配到任何结果则按照语义进行模糊匹配,返回满足条件的置信度最高的结果
- # if not nz_words or ([] in matched_keys):
- # 比起手动维护词典,我们更相信语义相似度
- top_k = 5
- confi = 0.2 # 置信度阈值
- print(f'进入模糊匹配,召回Top:{top_k} 置信度阈值:{confi}...')
- # 调用远程bge-m3模型进行embedding
- query_embedding = np.array(self.model.encode([promt], normalize=True), dtype=np.float32) # 要求query_embedding是一个二维矩阵,形状为(1, 1024)
- distances, indices = self.knowledge.search(query_embedding, top_k)
- group_query = [(promt, self.plc_database_name_template_list[indices[0][i]]) for i in range(top_k)]
- # 我们更愿意相信bge,因此把词典关键词匹配的结果一并放进去重排序
- group_query_manuel = [(promt, k) for keys in matched_keys for k in keys]
- group_query += group_query_manuel
- del group_query_manuel
- group_query = list(set(group_query)) # 去重
- # 调用远程bge-reranker模型
- score = self.model.compute_score(group_query)
- rerank_result = sorted([(group_query[i][1], score[i]) for i in range(len(group_query))], key=lambda x: x[1], reverse=True)
- print(F'打印前top{top_k}候选词结果:', rerank_result[:top_k])
- print(f'首元素模糊匹配到{rerank_result[0][0]}, 置信度为{rerank_result[0][1]}')
- # matched_keys 为最终结果,保持形状为二维列表
- matched_keys = [[i[0] for i in rerank_result]]
- # 每个匹配结果的置信度
- matched_keys_score = [[i[1] for i in rerank_result]]
- # 为结果创建映射字典
- result_list = []
- for i_nz_keys in matched_keys:
- result_list.append([{key: self.name_2_code_dict.get(key)} for key in i_nz_keys])
- print(f"查询到{len([_ for _ in result_list if _])}个结果:")
- if not is_agent:
- # 非agent模式每个匹配结果只取第一个元素的英文
- tem_list = []
- for res in result_list:
- if res:
- for k, v in res[0].items(): # 每个nz词的查询结果都是一个list,每个list可能包含多个字典
- tem_list.append(f'{k}:{v}')
- result_list = tem_list
- print('以非agent模式返回:', result_list)
- return result_list
- print('以agent模式返回:', result_list)
- print('='*50)
- return result_list, matched_keys_score
- if __name__ == '__main__':
- pj = 92 # pcl点位
- pcl_helper = PLCMatch(project_id=pj)
- # 用户输入
- my_promt = "我想要查询锡山中荷进水电导率"
- # query_res = pcl_helper.match_v2_on(my_promt, is_agent=True)
- query_res = pcl_helper.match_v2_on(my_promt, is_agent=False)
- pass
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