1#![warn(missing_docs)]
129
130pub mod advanced_generators;
131pub mod benchmarks;
132pub mod cache;
133pub mod cloud;
134pub mod distributed;
135pub mod domain_specific;
136pub mod error;
137pub mod explore;
138pub mod external;
139pub mod generators;
140pub mod gpu;
141pub mod gpu_optimization;
142pub mod loaders;
143pub mod ml_integration;
144pub mod real_world;
145pub mod registry;
146pub mod sample;
147pub mod streaming;
148pub mod time_series;
149pub mod toy;
150pub mod utils;
155
156pub mod standard;
161
162pub mod stability;
167
168pub mod platform_dirs;
170
171mod method_resolution_test;
173
174pub mod adaptive_streaming_engine;
175pub mod neuromorphic_data_processor;
176pub mod quantum_enhanced_generators;
177pub mod quantum_neuromorphic_fusion;
178
179#[cfg(feature = "lazy-loading")]
185pub mod lazy_loading;
186
187#[cfg(feature = "augmentation")]
192pub mod augmentation;
193
194pub mod parallel_preprocessing;
199
200#[cfg(feature = "distributed")]
205pub mod distributed_loading;
206
207pub mod formats;
212
213pub mod benchmarks_module;
215pub mod hub_metadata;
217pub mod sharding;
219pub mod sampling;
221pub mod streaming_csv;
223
224pub use adaptive_streaming_engine::{
226 create_adaptive_engine, create_adaptive_engine_with_config, AdaptiveStreamConfig,
227 AdaptiveStreamingEngine, AlertSeverity, AlertType, ChunkMetadata, DataCharacteristics,
228 MemoryStrategy, PatternType, PerformanceMetrics, QualityAlert, QualityMetrics,
229 StatisticalMoments, StreamChunk, TrendDirection, TrendIndicators,
230};
231pub use advanced_generators::{
232 make_adversarial_examples, make_anomaly_dataset, make_continual_learning_dataset,
233 make_domain_adaptation_dataset, make_few_shot_dataset, make_multitask_dataset,
234 AdversarialConfig, AnomalyConfig, AnomalyType, AttackMethod, ContinualLearningDataset,
235 DomainAdaptationConfig, DomainAdaptationDataset, FewShotDataset, MultiTaskConfig,
236 MultiTaskDataset, TaskType,
237};
238pub use benchmarks::{BenchmarkResult, BenchmarkRunner, BenchmarkSuite, PerformanceComparison};
239pub use cloud::{
240 presets::{azure_client, gcs_client, public_s3_client, s3_client, s3_compatible_client},
241 public_datasets::{AWSOpenData, AzureOpenData, GCPPublicData},
242 CloudClient, CloudConfig, CloudCredentials, CloudProvider,
243};
244pub use distributed::{DistributedConfig, DistributedProcessor, ScalingMethod, ScalingParameters};
245pub use domain_specific::{
246 astronomy::StellarDatasets,
247 climate::ClimateDatasets,
248 convenience::{
249 list_domain_datasets, load_atmospheric_chemistry, load_climate_data, load_exoplanets,
250 load_gene_expression, load_stellar_classification,
251 },
252 genomics::GenomicsDatasets,
253 DomainConfig, QualityFilters,
254};
255pub use explore::{
256 convenience::{explore, export_summary, info, quick_summary},
257 DatasetExplorer, DatasetSummary, ExploreConfig, FeatureStatistics, InferredDataType,
258 OutputFormat, QualityAssessment,
259};
260#[cfg(not(feature = "download"))]
261pub use external::convenience::{load_github_dataset_sync, load_uci_dataset_sync};
262pub use external::{
263 convenience::{list_uci_datasets, load_from_url_sync},
264 repositories::{GitHubRepository, KaggleRepository, UCIRepository},
265 ExternalClient, ExternalConfig, ProgressCallback,
266};
267pub use ml_integration::{
268 convenience::{create_experiment, cv_split, prepare_for_ml, train_test_split},
269 CrossValidationResults, DataSplit, MLExperiment, MLPipeline, MLPipelineConfig,
270 ScalingMethod as MLScalingMethod,
271};
272
273pub use cache::{
274 get_cachedir, BatchOperations, BatchResult, CacheFileInfo, CacheManager, CacheStats,
275 DatasetCache, DetailedCacheStats,
276};
277#[cfg(feature = "download")]
278pub use external::convenience::{load_from_url, load_github_dataset, load_uci_dataset};
279pub use generators::{
280 add_time_series_noise, benchmark_gpu_vs_cpu, get_gpu_info, gpu_is_available,
281 inject_missing_data, inject_outliers, make_anisotropic_blobs, make_blobs, make_blobs_gpu,
282 make_circles, make_classification, make_classification_gpu, make_corrupted_dataset, make_helix,
283 make_hierarchical_clusters, make_intersecting_manifolds, make_manifold, make_moons,
284 make_regression, make_regression_gpu, make_s_curve, make_severed_sphere, make_spirals,
285 make_swiss_roll, make_swiss_roll_advanced, make_time_series, make_torus, make_twin_peaks,
286 ManifoldConfig, ManifoldType, MissingPattern, OutlierType,
287};
288pub use generators::time_series::{
290 make_ar_process, make_random_walk, make_seasonal, make_sine_wave,
291};
292pub use generators::graph::{
294 make_barabasi_albert, make_karate_club, make_random_graph, make_watts_strogatz,
295};
296pub use generators::sparse::{make_sparse_banded, make_sparse_laplacian, make_sparse_spd};
298pub use generators::classification::{
300 make_classification_enhanced, make_hastie_10_2, make_multilabel_classification,
301 ClassificationConfig, MultilabelConfig, MultilabelDataset,
302};
303pub use generators::regression::{
305 make_friedman1, make_friedman2, make_friedman3, make_low_rank_matrix, make_sparse_uncorrelated,
306};
307pub use generators::structured::{
309 make_biclusters, make_checkerboard, make_sparse_coded_signal, make_sparse_spd_matrix,
310 make_spd_matrix,
311};
312pub use generators::concept_drift::{
314 detect_drift_accuracy, make_concept_drift, ConceptDriftConfig, ConceptDriftDataset, DriftType,
315};
316pub use generators::heterogeneous::{
317 encode_one_hot, make_heterogeneous, FeatureType, HeteroConfig, HeteroDataset,
318 HeteroFeatureValue,
319};
320pub use generators::low_rank::{
321 make_low_rank as make_low_rank_completion, observed_rmse, reconstruction_error, LowRankConfig,
322 LowRankDataset,
323};
324pub use generators::multilabel_advanced::{
325 hamming_loss, label_cardinality, label_density_score, make_advanced_multilabel_classification,
326 AdvancedMultilabelConfig, AdvancedMultilabelDataset,
327};
328pub use generators::sparse_classification::{
329 make_sparse_classification as make_sparse_class, sparsity_ratio, SparseClassConfig,
330 SparseClassDataset,
331};
332pub use sharding::{merge_shards, shard_dataset, shuffled_shard, stratified_shard, DatasetShard};
334pub use sampling::{iter_batches, MiniBatch, MiniBatchSampler, SamplerConfig, SamplerStrategy};
336pub use gpu::{
338 get_optimal_gpu_config, is_cuda_available, is_opencl_available, list_gpu_devices,
339 make_blobs_auto_gpu, make_classification_auto_gpu, make_regression_auto_gpu, GpuBackend,
340 GpuBenchmark, GpuBenchmarkResults, GpuConfig, GpuContext, GpuDeviceInfo, GpuMemoryConfig,
341};
342pub use gpu_optimization::{
343 benchmark_advanced_performance, generate_advanced_matrix, AdvancedGpuOptimizer,
344 AdvancedKernelConfig, BenchmarkResult as AdvancedBenchmarkResult, DataLayout,
345 LoadBalancingMethod, MemoryAccessPattern, PerformanceBenchmarkResults, SpecializationLevel,
346 VectorizationStrategy,
347};
348pub use loaders::{
349 load_csv, load_csv_legacy, load_csv_parallel, load_csv_streaming, load_json, load_raw,
350 save_json, CsvConfig, DatasetChunkIterator, StreamingConfig,
351};
352pub use neuromorphic_data_processor::{
353 create_neuromorphic_processor, create_neuromorphic_processor_with_topology, NetworkTopology,
354 NeuromorphicProcessor, NeuromorphicTransform, SynapticPlasticity,
355};
356pub use quantum_enhanced_generators::{
357 make_quantum_blobs, make_quantum_classification, make_quantum_regression,
358 QuantumDatasetGenerator,
359};
360pub use quantum_neuromorphic_fusion::{
361 create_fusion_with_params, create_quantum_neuromorphic_fusion, QuantumBioFusionResult,
362 QuantumInterference, QuantumNeuromorphicFusion,
363};
364pub use real_world::{
365 list_real_world_datasets, load_adult, load_california_housing, load_heart_disease,
366 load_red_wine_quality, load_titanic, RealWorldConfig, RealWorldDatasets,
367};
368pub use registry::{get_registry, load_dataset_byname, DatasetMetadata, DatasetRegistry};
369pub use sample::*;
370pub use standard::{
371 load_boston as load_boston_full, load_breast_cancer as load_breast_cancer_full,
372 load_digits as load_digits_full, load_iris as load_iris_full, load_wine, DatasetResult,
373};
374pub use streaming::{
375 stream_classification, stream_csv, stream_regression, DataChunk, StreamConfig, StreamProcessor,
376 StreamStats, StreamTransformer, StreamingIterator,
377};
378pub use toy::*;
379pub use utils::{
380 analyze_dataset_advanced, create_balanced_dataset, create_binned_features,
381 generate_synthetic_samples, importance_sample, k_fold_split, min_max_scale,
382 polynomial_features, quick_quality_assessment, random_oversample, random_sample,
383 random_undersample, robust_scale, statistical_features, stratified_k_fold_split,
384 stratified_sample, time_series_split, AdvancedDatasetAnalyzer, AdvancedQualityMetrics,
385 BalancingStrategy, BinningStrategy, CorrelationInsights, CrossValidationFolds, Dataset,
386 NormalityAssessment,
387};
388
389#[cfg(feature = "lazy-loading")]
391pub use lazy_loading::{
392 from_binary as lazy_from_binary, from_binary_with_config as lazy_from_binary_with_config,
393 LazyChunkIterator, LazyDataset, LazyLoadConfig, MmapDataset,
394};
395
396#[cfg(feature = "augmentation")]
397pub use augmentation::{
398 standard_image_augmentation, standard_tabular_augmentation, AugmentationPipeline, Brightness,
399 Contrast, GaussianNoise, HorizontalFlip, Mixup, RandomFeatureScale, RandomRotation90,
400 Transform, VerticalFlip,
401};
402
403pub use parallel_preprocessing::{
404 create_pipeline, create_pipeline_with_config, ParallelConfig, ParallelPipeline, PreprocessFn,
405};
406
407#[cfg(feature = "distributed")]
408pub use distributed_loading::{
409 create_loader, create_loader_with_config, DistributedCache,
410 DistributedConfig as DistributedLoadingConfig, DistributedLoader, Shard,
411};
412
413pub use formats::{CompressionCodec, FormatConfig, FormatType};
414
415#[cfg(feature = "formats")]
416pub use formats::{
417 read_auto, read_hdf5, read_parquet, write_hdf5, write_parquet, FormatConverter, Hdf5Reader,
418 Hdf5Writer, ParquetReader, ParquetWriter,
419};