immuneML.hyperparameter_optimization.core package
Submodules
immuneML.hyperparameter_optimization.core.HPAssessment module
- class immuneML.hyperparameter_optimization.core.HPAssessment.HPAssessment[source]
Bases:
object
- static reeval_on_assessment_split(state, train_val_dataset: Dataset, test_dataset: Dataset, hp_setting: HPSetting, path: Path, label: Label, split_index: int) MLMethod [source]
retrain model for specific label, assessment split and hp_setting
- static run_assessment(state: TrainMLModelState) TrainMLModelState [source]
- static run_assessment_split(state, train_val_dataset, test_dataset, split_index: int, n_splits)[source]
run inner CV loop (selection) and retrain on the full train_val_dataset after optimal model is chosen
- static run_assessment_split_per_label(state: TrainMLModelState, split_index: int)[source]
iterate through labels and hp_settings and retrain all models
- static update_hp_setting_for_assessment(hp_setting: HPSetting, state: TrainMLModelState, split_index: int, label_name: str)[source]
immuneML.hyperparameter_optimization.core.HPSelection module
- class immuneML.hyperparameter_optimization.core.HPSelection.HPSelection[source]
Bases:
object
- static create_selection_path(state: TrainMLModelState, current_path: Path) Path [source]
- static evaluate_hp_setting(state: TrainMLModelState, hp_setting: HPSetting, train_datasets: list, val_datasets: list, current_path: Path, label: Label, assessment_split_index: int)[source]
- static run_selection(state: TrainMLModelState, train_val_dataset, current_path: Path, split_index: int) TrainMLModelState [source]
- static run_setting(state: TrainMLModelState, hp_setting, train_dataset, val_dataset, split_index: int, current_path: Path, label: Label, assessment_index: int)[source]
- static update_split_count(state: TrainMLModelState, train_val_dataset)[source]
immuneML.hyperparameter_optimization.core.HPUtil module
- class immuneML.hyperparameter_optimization.core.HPUtil.HPUtil[source]
Bases:
object
- static assess_performance(method, metrics, optimization_metric, dataset, split_index, current_path: Path, test_predictions_path: Path, label: Label, ml_score_path: Path)[source]
- static encode_dataset(dataset, hp_setting: HPSetting, path: Path, learn_model: bool, context: dict, number_of_processes: int, label_configuration: LabelConfiguration, encode_labels: bool = True)[source]
- static preprocess_dataset(dataset: Dataset, preproc_sequence: list, path: Path, context: dict = None, hp_setting: HPSetting = None) Dataset [source]
- static run_hyperparameter_reports(state: TrainMLModelState, path: Path) List[ReportResult] [source]
- static run_selection_reports(state: TrainMLModelState, dataset, train_datasets: list, val_datasets: list, selection_state: HPSelectionState)[source]
- static split_data(dataset: Dataset, split_config: SplitConfig, path: Path, label_config: LabelConfiguration) tuple [source]