Intermediate–Advanced
EDA → Features → Modeling → Tuning → Evaluation
- Advanced EDA and data preprocessing that improves model performance
- Feature engineering (transformation, scaling, and selection of meaningful predictors)
- Supervised ML models for regression, classification, and ensemble techniques
- Model evaluation metrics (e.g., RMSE, accuracy) and correct train-test strategy
- Hyperparameter tuning and cross-validation to improve model robustness
- Model explainability to interpret and trust the results of your predictions
- Recorded session access for on-demand learning
- e-Certificate upon completion (if applicable)
- Post-workshop query support (subject to terms)









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