import pandas as pd import openai from utils.openai import load_client client = load_client('') # 初始化OpenAI API密钥 openai.api_key = 'dE6qTITLy3WCoMPMCPr8tUFBHBaec5wN' # 指定parquet文件的路径 file_path = '/home/yiyangai/stephenqs/datasets/physics_big/data/combined_images_non_empty.parquet' # 读取parquet文件 df = pd.read_parquet(file_path) # 定义翻译函数,调用GPT-4 API def translate_text(text): if isinstance(text, list): # 如果是列表,递归处理每个元素 return [translate_text(item) for item in text] elif isinstance(text, dict): # 如果是字典,递归处理字典中的值 return {key: translate_text(value) for key, value in text.items()} elif isinstance(text, str): # 如果是字符串,翻译 response = openai.ChatCompletion.create( model="gpt-4o-mini", messages=[ {"role": "system", "content": "You are a helpful assistant."}, {"role": "user", "content": f"Translate this Russian text to English: {text}"} ] ) return response.choices[0].message['content'].strip() else: return text # 初始化一个空的DataFrame来存储翻译后的结果 df_translated = pd.DataFrame(columns=df.columns) # 每次翻译20条记录 batch_size = 20 # 逐批次翻译数据 for i in range(0, len(df), batch_size): print(f"正在翻译样本 {i+1} 到 {min(i+batch_size, len(df))}...") batch = df.iloc[i:i+batch_size].copy() # 对批次内的每一列进行翻译 for column in batch.columns: batch[column] = batch[column].apply(translate_text) # 将翻译后的批次数据添加到翻译结果的DataFrame中 df_translated = pd.concat([df_translated, batch], ignore_index=True) # 保存中间结果(可选,以防脚本中途失败) df_translated.to_parquet('/home/yiyangai/stephenqs/datasets/physics_big/data/partial_translation.parquet') # 最终保存完整的翻译结果到新的Parquet文件 output_file_path = '/home/yiyangai/stephenqs/datasets/physics_big/data/translated_combined_images_non_empty.parquet' df_translated.to_parquet(output_file_path) print(f"翻译完成,已将结果保存到 {output_file_path}")