import os import numpy as np from BERT_CTM import BERT_CTM_Model # 假设BERT_CTM模型在这个文件中 # BERT_CTM 嵌入生成和加载函数 def get_bert_ctm_embeddings(texts, bert_model_path, ctm_tokenizer_path, n_components=12, num_epochs=20, save_path=None): """ 获取或生成 BERT+CTM 嵌入,并保存到文件。 :param texts: 需要嵌入的文本 :param bert_model_path: BERT 模型的路径 :param ctm_tokenizer_path: CTM tokenizer 的路径 :param n_components: 生成的主题数量 :param num_epochs: 训练的epoch数 :param save_path: 嵌入保存路径 :return: 生成或加载的嵌入 """ # 检查是否已经存在保存的嵌入文件 if save_path and os.path.exists(save_path): print(f"从文件 {save_path} 加载嵌入...") embeddings = np.load(save_path) else: print("生成 BERT+CTM 嵌入...") bert_ctm_model = BERT_CTM_Model( bert_model_path=bert_model_path, ctm_tokenizer_path=ctm_tokenizer_path, n_components=n_components, num_epochs=num_epochs ) embeddings = bert_ctm_model.train(texts) # 生成嵌入 # 保存嵌入到文件 if save_path: print(f"保存嵌入到文件 {save_path}...") np.save(save_path, embeddings) return embeddings if __name__ == "__main__": # 示例调用 sample_texts = ["This is a test text.", "Another example of text data."] bert_model_path = './bert_model' ctm_tokenizer_path = './sentence_bert_model' save_path = 'sample_embeddings.npy' # 生成或加载 BERT+CTM 嵌入 embeddings = get_bert_ctm_embeddings(sample_texts, bert_model_path, ctm_tokenizer_path, save_path=save_path) # 打印嵌入形状 print(f"嵌入形状: {embeddings.shape}")