Feature Engineering for Tabular Data: Techniques That Actually Matter in Production
A practical guide to feature engineering for tabular ML in production: numerical transforms and when they matter, target encoding without leakage, interaction and ratio features, cyclical datetime encoding, rolling aggregation features with correct temporal windowing, and building reproducible sklearn pipelines that produce identical outputs at training and serving time.