joshleh/secom-fault-detection
End-to-end fault detection pipeline on SECOM semiconductor manufacturing data. Compares Isolation Forest, Random Forest, and LSTM Autoencoder with MLflow experiment tracking. Includes SHAP explainability and a FastAPI inference endpoint that returns top contributing sensor features per prediction.
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MIT
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Last pushed
Mar 20, 2026
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