Best Practices for edaflow ========================= - Always verify your data quality before starting ML workflows - Use `setup_ml_experiment` for reproducible train/val/test splits - Compare multiple models before optimizing hyperparameters - Use copy-paste-safe param_distributions blocks for supported models - Save model artifacts and document your workflow for reproducibility - Refer to the User Guide and API Reference for troubleshooting and advanced usage **Best Practices for New Features** ----------------------------------- - Use `display_facet_grid` for multi-category visual analysis - Apply `scale_features` before ML modeling for better results - Use `group_rare_categories` to simplify categorical variables - Export figures with `export_figure` for reproducible reporting - Always check external library requirements before using advanced features