优化意图识别示例,更新文档相关性判断逻辑,增强Excel数据验证功能,改进日志记录,调整参数以提升代码可读性和灵活性。
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@@ -28,7 +28,7 @@ from rag2_0.tool.ModelTool import OpenAiLLM
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load_dotenv()
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# 示例查询
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examples_query = """主网电力建设计价通软件, 35kV的软件 土质比例不能一起设置吗"""
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examples_query = """ PE2211PK0801是什么软件"""
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conversation_context=""
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chat_history=[
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{
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@@ -100,27 +100,23 @@ class QueryRewriteProcessor:
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"relevance_score": 0.0
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}
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# 构建文档内容
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doc_contents = []
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for i, doc in enumerate(retrieved_doc[:3]): # 只取前3个文档进行判断
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content = doc.get("content", "")
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title = doc.get("title", "")
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doc_contents.append(f"文档{i+1}标题: {title}\n文档{i+1}内容: {content}")
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doc_text = "\n\n".join(doc_contents)
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doc_text_list = json.dumps(retrieved_doc, ensure_ascii=False, indent=2)
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class TempModel(BaseModel):
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is_relevant: bool = Field(description="是否与用户提问相关")
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can_solve_problem: bool = Field(description="是否能解决用户问题")
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relevance_score: int = Field(description="相关性评分,0-100分")
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explanation: str = Field(description="解释各个文档与提问的相关性或不相关性")
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explanation: str = Field(description="解释文档是否能解决(回答)提问")
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parser = PydanticOutputParser(pydantic_object=TempModel)
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class most_relevant_document(BaseModel):
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most_relevant_document: TempModel = Field(description="最相关的文档的判断结果")
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parser = PydanticOutputParser(pydantic_object=most_relevant_document)
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# 构建提示词
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prompt = f"""请判断以下检索文档是否与用户提问相关,并给出相关性评分(0-100分)。
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prompt = f"""请判断以下检索文档列表中是否与用户提问相关,能够解决用户的问题,并给出相关性评分(0-100分)。输出最相关的文档的判断结果。
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用户提问: {query}
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检索文档:
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{doc_text}
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检索文档列表:
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{doc_text_list}
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请按照以下JSON格式返回结果:
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{parser.get_format_instructions()}
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@@ -131,10 +127,10 @@ class QueryRewriteProcessor:
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llm = OpenAiLLM(api_key=self.api_key, base_url=self.base_url, model="deepseek-ai/DeepSeek-R1", response_format={"type": "json_object"})
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response = llm.invoke(prompt)
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result = parser.parse(response.content)
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result = parser.parse(response.content).most_relevant_document
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return {
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"is_relevant": result.is_relevant,
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"is_relevant": result.can_solve_problem,
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"relevance_score": result.relevance_score,
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"explanation": result.explanation
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}
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@@ -418,9 +414,6 @@ def main():
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# 在调试模式下使用完整的参数
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print(json.dumps(processor.process_query(
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query,
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conversation_context=conversation_context,
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chat_history=chat_history,
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previous_slots=previous_slots,
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enable_retrieval=enable_retrieval
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), ensure_ascii=False, indent=2))
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@@ -121,7 +121,7 @@ class TermMerger:
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else:
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return term_list[0]
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except Exception as e:
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logging.error(f"处理词条 {name} 时出错: {e}")
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logging.error(f"处理词条 {name} 时出错: {e}", exc_info=True)
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return term_list[0]
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def merge(self):
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@@ -33,7 +33,7 @@ class ValidationResult(BaseModel):
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class ExcelDataValidator:
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"""Excel数据验证类,用于批量验证Excel数据中的问题分类、问题拆解、检索关键词和问题改写"""
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def __init__(self, input_file=None, output_file=None, workers=4, batch_size=10, debug=False):
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def __init__(self, input_file=None, output_file=None, workers=4, debug=False):
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"""
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初始化验证器
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@@ -41,7 +41,6 @@ class ExcelDataValidator:
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input_file: 输入Excel文件路径
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output_file: 输出结果Excel文件路径
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workers: 并行工作线程数
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batch_size: 每批处理的行数
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debug: 是否启用调试模式(串行处理)
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"""
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# 加载环境变量
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@@ -50,7 +49,6 @@ class ExcelDataValidator:
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self.input_file = input_file
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self.output_file = output_file
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self.workers = workers
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self.batch_size = batch_size
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self.debug = debug
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self.df = None
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@@ -86,7 +84,7 @@ class ExcelDataValidator:
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try:
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df = pd.read_excel(file_path)
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required_columns = ["问题", "问题分类", "问题改写", "槽点信息"]
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required_columns = ["问题", "问题分类", "问题改写", "槽位信息", "检索的内容"]
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for col in required_columns:
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if col not in df.columns:
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logging.error(f"缺少必要的列: {col}", exc_info=True)
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@@ -320,7 +318,7 @@ class ExcelDataValidator:
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query = row["问题"]
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query_class = row.get("问题分类", "")
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rewrite = row.get("问题改写", "")
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slot_info = row.get("槽点信息", "")
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slot_info = row.get("槽位信息", "")
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retrieve_content = row.get("检索的内容", "")
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if self.debug:
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@@ -359,15 +357,16 @@ class ExcelDataValidator:
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if len(query_class_list) >= 2:
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result = self.validate_classification(llm, rewrite, query_class_list[0], query_class_list[1])
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if isinstance(result, tuple) and len(result) >= 3:
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is_correct, error_reason, confidence_score = result[:3]
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is_correct, error_reason, classification_confidence = result[:3]
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confidence_score = max(confidence_score, classification_confidence)
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if self.debug:
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logging.info(f" 问题分类验证结果: {'通过' if is_correct else '不通过'}, 置信度: {confidence_score:.2f}")
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logging.info(f" 问题分类验证结果: {'通过' if is_correct else '不通过'}, 置信度: {classification_confidence:.2f}")
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if not is_correct:
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logging.info(f" 错误原因: {error_reason}")
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if not is_correct:
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return index, False, "问题分类", error_reason, confidence_score
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return index, False, "问题分类", error_reason, classification_confidence
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@@ -416,13 +415,6 @@ class ExcelDataValidator:
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logging.error(error_msg, exc_info=True)
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return index, False, "处理错误", error_msg, 0.0
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def process_batch(self, llm, batch_data):
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"""处理一批数据"""
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results = []
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for row_data in batch_data:
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results.append(self.validate_row(llm, row_data))
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return results
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def create_llm_instances(self, count):
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"""创建多个LLM实例"""
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api_key = os.getenv("OPENAI_API_KEY")
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@@ -437,7 +429,7 @@ class ExcelDataValidator:
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return [OpenAiLLM(**llm_params) for _ in range(count)]
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def validate(self, input_file=None, output_file=None, workers=None, batch_size=None, debug=None):
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def validate(self, input_file=None, output_file=None, workers=None, debug=None):
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"""
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执行验证过程
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@@ -445,7 +437,7 @@ class ExcelDataValidator:
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input_file: 输入Excel文件路径
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output_file: 输出结果Excel文件路径
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workers: 并行工作线程数
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batch_size: 每批处理的行数
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batch_size: 每批处理的行数(已弃用,保留参数保持兼容)
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debug: 是否启用调试模式(串行处理)
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Returns:
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@@ -454,7 +446,6 @@ class ExcelDataValidator:
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input_file = input_file or self.input_file
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output_file = output_file or self.output_file
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workers = workers or self.workers
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batch_size = batch_size or self.batch_size
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debug = debug if debug is not None else self.debug
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# 读取数据
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@@ -492,21 +483,20 @@ class ExcelDataValidator:
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# 输出当前结果
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logging.info(f"行 {index} 验证结果: {'通过' if is_correct else '不通过'}, 错误环节: {error_phase}, 错误原因: {error_reason}, 置信度: {confidence_score:.2f}")
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else:
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# 正常模式:并行处理
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batches = [all_rows[i:i+batch_size] for i in range(0, len(all_rows), batch_size)]
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llm_instances = self.create_llm_instances(min(workers, len(batches)))
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# 正常模式:并行处理,每行单独处理
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llm_instances = self.create_llm_instances(min(workers, len(all_rows)))
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with concurrent.futures.ThreadPoolExecutor(max_workers=workers) as executor:
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# 为每个批次分配一个LLM实例
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future_to_batch = {
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executor.submit(self.process_batch, llm_instances[i % len(llm_instances)], batch):
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i for i, batch in enumerate(batches)
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# 为每行分配一个LLM实例
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future_to_row = {
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executor.submit(self.validate_row, llm_instances[i % len(llm_instances)], row_data):
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i for i, row_data in enumerate(all_rows)
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}
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# 使用tqdm显示进度条
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for future in tqdm(concurrent.futures.as_completed(future_to_batch), total=len(batches), desc="批次处理进度"):
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batch_results = future.result()
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all_results.extend(batch_results)
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for future in tqdm(concurrent.futures.as_completed(future_to_row), total=len(all_rows), desc="处理进度"):
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result = future.result()
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all_results.append(result)
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# 按行索引排序结果,确保与原始数据顺序一致
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all_results.sort(key=lambda x: x[0])
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@@ -558,16 +548,14 @@ class ExcelDataValidator:
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def main():
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"""主函数"""
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# 解析命令行参数
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input_excel = os.path.join(os.path.dirname(__file__), "..", "..", "data", "excel", "1500条点踩软件问题测试_检索结果.xlsx")
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input_excel = os.path.join(os.path.dirname(__file__), "..", "..", "data", "excel", "1500条点踩软件问题测试_意图分类.xlsx")
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output_excel = os.path.join(os.path.dirname(__file__), "..", "..", "data", "excel", "自动验证_问题分类重写结果.xlsx")
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parser = argparse.ArgumentParser(description="验证Excel数据中的问题分类、问题拆解、检索关键词和问题改写")
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parser.add_argument("--input", "-i", type=str, help="输入Excel文件路径", default=input_excel)
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parser.add_argument("--output", "-o", type=str, help="输出结果Excel文件路径", default=output_excel)
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parser.add_argument("--workers", "-w", type=int, default=20, help="并行工作线程数")
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parser.add_argument("--batch-size", "-b", type=int, default=5, help="每批处理的行数")
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parser.add_argument("--debug", "-d", action="store_true", help="启用调试模式(串行处理)")
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logging.info(f"输入文件路径: {args.input}, 输出文件路径: {args.output}, 并行工作线程数: {args.workers}")
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args = parser.parse_args()
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is_debug = hasattr(sys, 'gettrace') and sys.gettrace() is not None
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@@ -576,7 +564,6 @@ def main():
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input_file=args.input,
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output_file=args.output,
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workers=args.workers,
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batch_size=args.batch_size,
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debug=is_debug
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)
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validator.validate()
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@@ -82,7 +82,7 @@ class SiliconFlowReRankerModel:
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results = response.json()
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return [{"document": item["document"]["text"], "score": item["relevance_score"], "index": item["index"]} for item in results["results"]]
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except requests.exceptions.RequestException as e:
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logging.error(f"重排序请求失败: {str(e)}")
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logging.error(f"重排序请求失败: {str(e)}", exc_info=True)
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return []
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class XinferenceReRankerModel:
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