Advanced Features in edaflow =========================== This section covers advanced capabilities for power users: - Computer Vision EDA: Class-wise image sample visualization, image quality assessment - Smart Categorical Encoding: Automated selection and application of encoding strategies - Outlier Handling: Multiple statistical methods for robust outlier detection and replacement - Integration with pandas, numpy, scikit-learn, plotly, and more - Customizable display and dark mode support for notebooks **New Advanced Features** ------------------------ - Faceted grid visualization: `display_facet_grid(df, col, row, hue, kind, ...)` - Feature scaling utility: `scale_features(df, columns, method)` - Rare category grouping: `group_rare_categories(df, column, threshold, new_value)` - Figure export API: `export_figure(fig, filename, format, dpi)` See the API Reference for details on each advanced function, and the Visualization Guide for code examples.