01Production-grade feature engineering pipelines for structured tabular data.
02Causal inference tools for observational data using Difference-in-Differences (DiD).
03Comprehensive A/B testing suite with sample size calculation and significance testing.
04Standardized experiment tracking and model logging with MLflow.
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06Advanced model evaluation including AUC-PR, SHAP values, and overfitting detection.