"""训练和验证结构化 ML 模型。""" import argparse import pandas as pd from defect_analysis.ml.datasets import build_supervised_dataset from defect_analysis.ml.features import build_feature_frame from defect_analysis.ml.model_registry import detect_optional_model_backends from defect_analysis.ml.predict import predict_key_factors from defect_analysis.ml.tabular_models import train_tabular_model from defect_analysis.schemas import normalize_defect_schema def load_defect_csv(csv_path): return normalize_defect_schema(pd.read_csv(csv_path, parse_dates=["timestamp"], encoding="utf-8-sig")) def main(): parser = argparse.ArgumentParser(description="训练/运行不良分析 ML 模型") parser.add_argument("--csv", default="defect_data.csv") parser.add_argument( "--model", default="random_forest", choices=["random_forest", "logistic_regression", "isolation_forest", "xgboost", "lightgbm"], ) parser.add_argument("--target-defect-type") parser.add_argument("--target-severity") parser.add_argument("--top-n", type=int, default=10) parser.add_argument("--show-backends", action="store_true") args = parser.parse_args() if args.show_backends: print(detect_optional_model_backends()) df = load_defect_csv(args.csv) if args.model == "isolation_forest": X = build_feature_frame(df) result = train_tabular_model("isolation_forest", X) scores = pd.Series(result["anomaly_scores"]) print(f"IsolationForest 完成: 样本数={len(scores)}, 最高异常分={scores.max():.4f}, 平均异常分={scores.mean():.4f}") return X, y = build_supervised_dataset( df, target_defect_type=args.target_defect_type, target_severity=args.target_severity, ) result = train_tabular_model(args.model, X, y) print(f"{args.model} 训练完成: {result['metrics']}") predictions = predict_key_factors( df, target_defect_type=args.target_defect_type, target_severity=args.target_severity, model_name=args.model, top_n=args.top_n, ) if predictions.empty: print("未找到关键因子候选。") else: columns = ["维度", "因子值", "目标数", "异常倍数", "关键因子得分", "ml_probability", "model_name"] print(predictions[columns].to_string(index=False)) if __name__ == "__main__": main()