import spacy import numpy as np import os from zhconv import convert import re import random # добавьте специфическую для русского языка модель import ru_core_news_sm def detect_lang(text): # 定义语言占比字典 lang_dict = {'zh-cn': 0, 'zh-tw': 0, 'en': 0, 'ru': 0, 'other': 0} # добавьте русский язык # 随机抽样最多十个字符 sample = random.sample(text, min(10, len(text))) # 计算每种语言的字符占比 for char in sample: if re.search(r'[\u4e00-\u9fa5]', char): lang_dict['zh-cn'] += 1 elif re.search(r'[\u4e00-\u9fff]', char): lang_dict['zh-tw'] += 1 elif re.search(r'[a-zA-Z]', char): lang_dict['en'] += 1 elif re.search(r'[а-яА-Я]', char): # добавьте соответствующий диапазон для русских букв lang_dict['ru'] += 1 else: lang_dict['other'] += 1 # 返回占比最高的语言 return max(lang_dict, key=lang_dict.get) class embedding_processing: def __init__(self, model_path='./model'): self.en_model = spacy.load('en_core_web_sm') self.zh_model = spacy.load('zh_core_web_sm') self.ru_model = ru_core_news_sm.load() # добавьте модель для русского языка def model(self,text): lang = detect_lang(text) if lang == "zh-tw": ans_cn = self.zh_model(convert(text)).vector.tolist() else: ans_cn = self.zh_model(text).vector.tolist() ans = self.en_model(text).vector.tolist() return ans_cn+ans def embedding(self, text_list): embeddings_list = [self.model(text) for text in text_list] response_embedding = self.transform_embedding_to_dict(embeddings_list,text_list) return response_embedding def transform_embedding_to_dict(self, embedding_list, text_list, model_name="text-embedding-elmo-002"): prompt_tokens = sum(len(text) for text in text_list) total_tokens = sum(len(embedding) for embedding in embedding_list) transformed_data = { "data": [ { "embedding": embedding, "index": index, "object": "embedding" } for index, embedding in enumerate(embedding_list) ], "model": model_name, "object": "list", "usage": { "prompt_tokens": prompt_tokens, "total_tokens": total_tokens } } return transformed_data