1#![allow(dead_code)]
2#![allow(non_snake_case)]
3#![allow(missing_docs)]
4#![allow(deprecated)]
5#![allow(clippy::all)]
6#![allow(clippy::pedantic)]
7#![allow(clippy::nursery)]
8mod adaptive_resource_allocation;
11mod adversarial_validation;
12mod automl_algorithm_selection;
13mod automl_feature_engineering;
14mod automl_pipeline;
15mod bandit_optimization;
16mod bayes_search;
17mod bayesian_model_averaging;
18mod bayesian_model_selection;
19mod bias_variance;
20mod config_management;
21mod conformal_prediction;
22mod cross_validation;
23mod cv;
24mod cv_model_selection;
25mod drift_detection;
26mod early_stopping;
27mod ensemble_evaluation;
28mod ensemble_selection;
29mod epistemic_uncertainty;
30mod evolutionary;
31mod grid_search;
32mod halving_grid_search;
33mod hierarchical_validation;
34mod hyperparameter_importance;
35mod imbalanced_validation;
36mod incremental_evaluation;
37mod information_criteria;
38mod memory_efficient;
39mod meta_learning;
40mod meta_learning_advanced;
41mod model_comparison;
42mod model_complexity;
43mod multi_fidelity_advanced;
44mod multi_fidelity_optimization;
45mod multilabel_validation;
46mod neural_architecture_search;
47mod noise_injection;
48mod ood_validation;
49mod optimizer_plugins;
50mod parallel_optimization;
51mod parameter_space;
52mod population_based_training;
53mod scoring;
54mod spatial_validation;
55mod temporal_validation;
56mod threshold_tuning;
57mod train_test_split;
58mod validation;
59mod warm_start;
60mod worst_case_validation;
61
62pub use adaptive_resource_allocation::{
63 AdaptiveAllocationConfig, AdaptiveResourceAllocator, AllocationStatistics, AllocationStrategy,
64 ResourceConfiguration,
65};
66pub use adversarial_validation::{
67 AdversarialStatistics, AdversarialValidationConfig, AdversarialValidationResult,
68 AdversarialValidator,
69};
70pub use automl_algorithm_selection::{
71 select_best_algorithm, AlgorithmFamily, AlgorithmSelectionResult, AlgorithmSpec,
72 AutoMLAlgorithmSelector, AutoMLConfig, ComputationalConstraints,
73 DatasetCharacteristics as AutoMLDatasetCharacteristics, RankedAlgorithm, TargetStatistics,
74};
75pub use automl_feature_engineering::{
76 engineer_features, AutoFeatureEngineer, AutoFeatureEngineering, FeatureEngineeringResult,
77 FeatureEngineeringStrategy, FeatureSelectionMethod, FeatureStatistics,
78 FeatureTransformationType, GeneratedFeature, TransformationInfo,
79};
80pub use automl_pipeline::{
81 automl, automl_with_budget, AutoMLPipeline, AutoMLPipelineConfig, AutoMLPipelineResult,
82 AutoMLProgressCallback, AutoMLStage, ConsoleProgressCallback, OptimizationLevel,
83};
84pub use bandit_optimization::{
85 BanditConfig, BanditOptimization, BanditOptimizationResult, BanditSearchCV, BanditStrategy,
86};
87pub use bayes_search::{
88 AcquisitionFunction as BayesAcquisitionFunction, BayesSearchCV, BayesSearchConfig,
89 ParamDistribution as BayesParamDistribution, TPEConfig, TPEOptimizer,
90};
91pub use bayesian_model_averaging::{
92 bayesian_model_average, BMAConfig, BMAResult, BayesianModelAverager as BMA_Averager,
93 EvidenceMethod, ModelInfo as BMA_ModelInfo, PriorType,
94};
95pub use bayesian_model_selection::{
96 BayesianModelAverager as BayesianModelSelector_BA, BayesianModelSelectionResult,
97 BayesianModelSelector, EvidenceEstimationMethod, ModelEvidenceData,
98};
99pub use bias_variance::{
100 bias_variance_decompose, BiasVarianceAnalyzer, BiasVarianceConfig, BiasVarianceResult,
101 SampleBiasVariance,
102};
103pub use config_management::{
104 ConfigError, ConfigManager, CrossValidationConfig as CVConfig, EarlyStoppingConfig as ESConfig,
105 ModelSelectionConfig, OptimizationConfig as OptiConfig, ParameterDefinition, ResourceConfig,
106 ScoringConfig as ScoreConfig,
107};
108pub use conformal_prediction::{
109 ConformalPredictionConfig, ConformalPredictionResult, ConformalPredictor, CoverageStatistics,
110 EfficiencyMetrics, JackknifeConformalPredictor, NonconformityMethod,
111};
112pub use cross_validation::{
113 BlockCrossValidator, BlockedTimeSeriesCV, BootstrapCV, CrossValidator, CustomCrossValidator,
114 GroupKFold, GroupShuffleSplit, GroupStrategy, KFold, LeaveOneGroupOut, LeaveOneOut,
115 LeavePGroupsOut, LeavePOut, MonteCarloCV, PredefinedSplit, PurgedGroupTimeSeriesSplit,
116 RegressionCrossValidator, RepeatedKFold, RepeatedStratifiedKFold, ShuffleSplit,
117 StratifiedGroupKFold, StratifiedKFold, StratifiedRegressionKFold, StratifiedShuffleSplit,
118 TimeSeriesSplit,
119};
120pub use cv_model_selection::{
121 cv_select_model, CVModelScore, CVModelSelectionConfig, CVModelSelectionResult, CVModelSelector,
122 ModelComparisonPair, ModelRanking, ModelSelectionCriteria,
123};
124pub use drift_detection::{
125 DriftDetectionConfig, DriftDetectionMethod, DriftDetectionResult, DriftDetector,
126 DriftStatistics,
127};
128pub use early_stopping::{
129 AdaptationConfig, AdaptiveEarlyStopping, ConvergenceMetrics, EarlyStoppingCallback,
130 EarlyStoppingConfig, EarlyStoppingMonitor, EarlyStoppingStrategy,
131};
132pub use ensemble_evaluation::{
133 evaluate_ensemble, DiversityAnalysis, DiversityMeasure, EnsembleEvaluationConfig,
134 EnsembleEvaluationResult, EnsembleEvaluationStrategy, EnsembleEvaluator,
135 EnsemblePerformanceMetrics, MemberContribution, MultiObjectiveAnalysis, OutOfBagScores,
136 ProgressivePerformance, StabilityAnalysis, StabilityMetric,
137};
138pub use ensemble_selection::{
139 select_ensemble, DiversityMeasures, EnsemblePerformance, EnsembleSelectionConfig,
140 EnsembleSelectionResult, EnsembleSelector, EnsembleStrategy, ModelInfo as EnsembleModelInfo,
141 ModelPerformance,
142};
143pub use epistemic_uncertainty::{
144 quantify_aleatoric_uncertainty, quantify_epistemic_uncertainty, quantify_uncertainty,
145 AleatoricUncertaintyConfig, AleatoricUncertaintyMethod, AleatoricUncertaintyQuantifier,
146 AleatoricUncertaintyResult, CalibrationMethod, EpistemicUncertaintyConfig,
147 EpistemicUncertaintyMethod, EpistemicUncertaintyQuantifier, EpistemicUncertaintyResult,
148 ReliabilityDiagram, ReliabilityMetrics, UncertaintyComponents, UncertaintyDecomposition,
149 UncertaintyDecompositionMethod, UncertaintyQuantificationConfig,
150 UncertaintyQuantificationResult, UncertaintyQuantifier,
151};
152pub use evolutionary::{
153 EvolutionarySearchCV, EvolutionarySearchResult, GeneticAlgorithmCV, GeneticAlgorithmConfig,
154 GeneticAlgorithmResult, Individual, MultiObjectiveGA, MultiObjectiveResult, ParameterDef,
155 ParameterSpace as EvolutionaryParameterSpace,
156};
157pub use grid_search::{
158 GridSearchCV, GridSearchResults, ParameterDistribution, ParameterDistributions, ParameterGrid,
159 ParameterSet, ParameterValue as GridParameterValue, RandomizedSearchCV,
160};
161pub use halving_grid_search::{
162 HalvingGridSearch, HalvingGridSearchConfig, HalvingGridSearchResults, HalvingRandomSearchCV,
163};
164pub use hierarchical_validation::{
165 hierarchical_cross_validate, ClusterInfo, HierarchicalCrossValidator, HierarchicalSplit,
166 HierarchicalStrategy, HierarchicalValidationConfig, HierarchicalValidationResult,
167};
168pub use hyperparameter_importance::{
169 analyze_parameter_sensitivity, compute_shap_importance, AblationAnalyzer, AblationConfig,
170 AblationResult, ComprehensiveImportanceResult, FANOVAAnalyzer, FANOVAConfig, FANOVAResult,
171 HyperparameterImportanceAnalyzer, ParameterSensitivity, SHAPAnalyzer, SHAPConfig, SHAPResult,
172 SensitivityAnalyzer, SensitivityConfig, SensitivityResult,
173};
174pub use imbalanced_validation::{
175 imbalanced_cross_validate, ClassStatistics, ImbalancedCrossValidator, ImbalancedSplit,
176 ImbalancedStrategy, ImbalancedValidationConfig, ImbalancedValidationResult, SamplingStrategy,
177};
178pub use incremental_evaluation::{
179 evaluate_incremental_stream, AdaptationCriterion, ConceptDriftHandling, DriftDetectorType,
180 DriftEvent, DriftType, FoldUpdateStrategy, IncrementalEvaluationConfig,
181 IncrementalEvaluationResult, IncrementalEvaluationStrategy, IncrementalEvaluator,
182 PerformanceSnapshot, StreamingStatistics,
183};
184pub use information_criteria::{
185 CrossValidatedIC, InformationCriterion, InformationCriterionCalculator,
186 InformationCriterionResult, ModelComparisonResult as ICModelComparisonResult,
187};
188pub use memory_efficient::{
189 memory_efficient_cross_validate, DataChunk, MemoryEfficiencyStats, MemoryEfficientConfig,
190 MemoryEfficientCrossValidator, MemoryError, MemoryPool, MemorySnapshot, MemoryTracker,
191 StreamingDataReader, StreamingEvaluationResult,
192};
193pub use meta_learning::{
194 meta_learning_recommend, ComplexityMeasures, DatasetCharacteristics, FeatureType,
195 MetaLearningConfig, MetaLearningEngine, MetaLearningRecommendation, MetaLearningStrategy,
196 OptimizationRecord, ParameterValue, SimilarityMetric, StatisticalMeasures, SurrogateModel,
197 TransferMethod,
198};
199pub use meta_learning_advanced::{
200 Experience as OptimizationExperience_Advanced, ExperienceReplayBuffer, ExperienceReplayConfig,
201 FewShotAlgorithm, FewShotConfig, FewShotOptimizer, FewShotResult, ImportanceWeightingMethod,
202 Learn2OptimizeConfig, Learn2OptimizeResult, LearnedOptimizer,
203 OptimizationExperience as MetaOptimizationExperience, OptimizationLearner,
204 OptimizationTask as MetaOptimizationTask, OptimizerArchitecture,
205 ParameterRange as MetaParameterRange, ParameterScale, PrioritizationStrategy, ReplayResult,
206 SamplingStrategy as ReplaySamplingStrategy, TaskCharacteristics as MetaTaskCharacteristics,
207 TransferLearningConfig, TransferLearningOptimizer, TransferResult, TransferStrategy,
208};
209pub use model_comparison::{
210 friedman_test, mcnemar_test, multiple_model_comparison, nemenyi_post_hoc_test, paired_t_test,
211 wilcoxon_signed_rank_test, ModelComparisonResult, MultipleTestingCorrection,
212 StatisticalTestResult,
213};
214pub use model_complexity::{
215 analyze_model_complexity, detect_overfitting_learning_curve, ComplexityAnalysisConfig,
216 ComplexityAnalysisResult, ComplexityMeasure, ComplexityRecommendation, ModelComplexityAnalyzer,
217 OverfittingDetector,
218};
219pub use multi_fidelity_advanced::{
220 AdaptiveFidelitySelector, AdaptiveFidelityStrategy, AllocationPlan, BudgetAllocationStrategy,
221 BudgetAllocator, CoarseToFineConfig, CoarseToFineOptimizer, CoarseToFineResult,
222 CoarseToFineStrategy, ConfigAllocation, ConfigurationWithPerformance,
223 ProgressiveAllocationConfig, ProgressiveAllocationStrategy, ProgressiveAllocator,
224};
225pub use multi_fidelity_optimization::{
226 multi_fidelity_optimize, AcquisitionFunction, CorrelationModel, CostModel, FidelityEvaluation,
227 FidelityLevel, FidelityProgression, FidelitySelectionMethod, MultiFidelityConfig,
228 MultiFidelityOptimizer, MultiFidelityResult, MultiFidelityStrategy,
229};
230pub use multilabel_validation::{
231 multilabel_cross_validate, LabelStatistics, MultiLabelCrossValidator, MultiLabelSplit,
232 MultiLabelStrategy, MultiLabelValidationConfig, MultiLabelValidationResult,
233};
234pub use neural_architecture_search::{
235 ArchitectureEvaluation, ArchitectureSearchSpace, NASConfig, NASOptimizer, NASResult,
236 NASStrategy, NeuralArchitecture,
237};
238pub use noise_injection::{
239 robustness_test, AdversarialMethod, NoiseConfig, NoiseInjector, NoiseStatistics, NoiseType,
240 RobustnessTestResult,
241};
242pub use ood_validation::{
243 validate_ood, DistributionShiftMetrics, OODConfidenceIntervals, OODDetectionMethod,
244 OODValidationConfig, OODValidationResult, OODValidator,
245};
246pub use optimizer_plugins::{
247 CustomMetric, Evaluation, HookError, HookManager, LoggingHook, MetricError, MetricRegistry,
248 MiddlewareError, MiddlewarePipeline, NormalizationMiddleware,
249 OptimizationHistory as PluginOptimizationHistory, OptimizationHook, OptimizationMiddleware,
250 OptimizerPlugin, ParameterConstraints as PluginParameterConstraints, PluginConfig, PluginError,
251 PluginFactory, PluginRegistry, StopReason,
252};
253pub use parallel_optimization::{
254 parallel_optimize, BatchAcquisitionStrategy, CommunicationProtocol, ErrorHandlingStrategy,
255 EvaluationResult, LoadBalancingStrategy, ParallelOptimizationConfig,
256 ParallelOptimizationResult, ParallelOptimizer, ParallelStrategy, ProgressReportingConfig,
257 ResourceUtilization, SynchronizationStrategy, WorkerStatistics,
258};
259pub use parameter_space::{
260 CategoricalParameter, ConditionalParameter, ParameterConstraint, ParameterImportanceAnalyzer,
261 ParameterSpace,
262};
263pub use population_based_training::{
264 PBTConfig, PBTConfigFn, PBTParameterSpace, PBTParameters, PBTResult, PBTStatistics, PBTWorker,
265 PopulationBasedTraining, PopulationBasedTrainingCV,
266};
267pub use scoring::{
268 paired_ttest, ClosureScorer, CustomScorer, EnhancedScorer, ScorerRegistry, ScoringConfig,
269 ScoringResult, SignificanceTestResult, TaskType,
270};
271pub use spatial_validation::{
272 DistanceMethod, LeaveOneRegionOut, SpatialClusteringMethod, SpatialCoordinate,
273 SpatialCrossValidator, SpatialValidationConfig,
274};
275pub use temporal_validation::{
276 BlockedTemporalCV, SeasonalCrossValidator, TemporalCrossValidator, TemporalValidationConfig,
277};
278pub use threshold_tuning::{
279 optimize_threshold, FixedThresholdClassifier, OptimizationMetric, ThresholdOptimizationResult,
280 TunedThresholdClassifierCV, TunedThresholdClassifierCVTrained,
281};
282pub use train_test_split::train_test_split;
283pub use validation::{
284 cross_val_predict, cross_val_score, cross_validate, learning_curve, nested_cross_validate,
285 permutation_test_score, validation_curve, CrossValidateResult, LearningCurveResult,
286 NestedCVResult, ParamConfigFn, PermutationTestResult, Scoring, ValidationCurveResult,
287};
288pub use warm_start::{
289 EvaluationRecord, OptimizationHistory, OptimizationStatistics, TransferLearning,
290 WarmStartConfig, WarmStartInitializer, WarmStartStrategy,
291};
292pub use worst_case_validation::{
293 worst_case_validate, AdversarialAttackMethod, CorruptionType, DistributionShiftType,
294 DriftPattern, MissingPattern, NoisePattern, RobustnessMetrics, ScenarioResult,
295 WorstCaseScenario, WorstCaseScenarioGenerator, WorstCaseValidationConfig,
296 WorstCaseValidationResult, WorstCaseValidator,
297};