| ml | The ml module — all verbs accessed via ml$verb() |
| ml_algorithms | List available ML algorithms |
| ml_assess | Assess model on held-out test data (do once) |
| ml_best | Get the best model from a leaderboard |
| ml_calibrate | Calibrate predicted probabilities |
| ml_check | Verify bitwise reproducibility for a given dataset |
| ml_check_data | Pre-flight data quality checks |
| ml_compare | Compare pre-fitted models on the same data |
| ml_config | Configure ml package settings |
| ml_cv | Create k-fold cross-validation from a split |
| ml_cv_group | Create group-aware cross-validation from a split |
| ml_cv_temporal | Create temporal cross-validation from a split |
| ml_dataset | Load a built-in dataset |
| ml_drift | Detect data drift between reference and new data |
| ml_embed | Embed texts into numeric features |
| ml_enough | Learning curve analysis - do you need more data? |
| ml_evaluate | Evaluate model on validation data (iterate freely) |
| ml_explain | Explain model via feature importance |
| ml_fit | Fit a machine learning model |
| ml_leak | Detect potential data leakage |
| ml_load | Load a model from disk |
| ml_optimize | Optimize decision threshold for binary classification |
| ml_plot | Visual diagnostics for a fitted model |
| ml_predict | Predict from a fitted model (ml_predict style) |
| ml_predict_proba | Predict class probabilities |
| ml_prepare | Prepare data for ML: encode, impute, and scale |
| ml_profile | Profile data before modeling |
| ml_quick | One-call workflow: split + screen + fit + evaluate |
| ml_report | Generate an HTML training report |
| ml_save | Save a model to disk |
| ml_screen | Screen all algorithms on your data |
| ml_shelf | Check if a model is past its shelf life |
| ml_split | Split data into train/valid/test partitions or cross-validation folds |
| ml_split_group | Split data with group non-overlap — no group leaks across partitions |
| ml_split_temporal | Split data chronologically — no future leakage |
| ml_stack | Ensemble stacking |
| ml_tune | Tune hyperparameters via random or grid search |
| ml_validate | Validate model against rules and/or baseline |
| ml_verify | Verify provenance integrity of a model |
| predict.ml_model | Predict from a fitted model |
| predict.ml_tuning_result | Predict from best model in a tuning result |
| print.ml_cv_result | Print ml_cv_result |
| print.ml_drift_result | Print ml_drift_result |
| print.ml_embedder | Print ml_embedder |
| print.ml_evidence | Print ml_evidence |
| print.ml_explanation | Print ml_explanation |
| print.ml_leaderboard | Print ml_leaderboard |
| print.ml_metrics | Print ml_metrics |
| print.ml_model | Print an ml_model |
| print.ml_profile_result | Print ml_profile_result |
| print.ml_shelf_result | Print ml_shelf_result |
| print.ml_split_result | Print an ml_split_result |
| print.ml_tuning_result | Print an ml_tuning_result |
| print.ml_validate_result | Print ml_validate_result |