Buckets:
| - sections: | |
| - local: index | |
| title: 🤗 Datasets | |
| - local: quickstart | |
| title: Quickstart | |
| - local: installation | |
| title: Installation | |
| title: Get started | |
| - sections: | |
| - local: tutorial | |
| title: Overview | |
| - local: load_hub | |
| title: Load a dataset from the Hub | |
| - local: access | |
| title: Know your dataset | |
| - local: use_dataset | |
| title: Preprocess | |
| - local: create_dataset | |
| title: Create a dataset | |
| - local: upload_dataset | |
| title: Share a dataset to the Hub | |
| title: "Tutorials" | |
| - sections: | |
| - local: how_to | |
| title: Overview | |
| - sections: | |
| - local: loading | |
| title: Load | |
| - local: process | |
| title: Process | |
| - local: stream | |
| title: Stream | |
| - local: use_with_pytorch | |
| title: Use with PyTorch | |
| - local: use_with_tensorflow | |
| title: Use with TensorFlow | |
| - local: use_with_numpy | |
| title: Use with NumPy | |
| - local: use_with_jax | |
| title: Use with JAX | |
| - local: use_with_pandas | |
| title: Use with Pandas | |
| - local: use_with_polars | |
| title: Use with Polars | |
| - local: use_with_pyarrow | |
| title: Use with PyArrow | |
| - local: use_with_spark | |
| title: Use with Spark | |
| - local: cache | |
| title: Cache management | |
| - local: filesystems | |
| title: Cloud storage | |
| - local: faiss_es | |
| title: Search index | |
| - local: cli | |
| title: CLI | |
| - local: troubleshoot | |
| title: Troubleshooting | |
| title: "General usage" | |
| - sections: | |
| - local: audio_load | |
| title: Load audio data | |
| - local: audio_process | |
| title: Process audio data | |
| - local: audio_dataset | |
| title: Create an audio dataset | |
| title: "Audio" | |
| - sections: | |
| - local: image_load | |
| title: Load image data | |
| - local: image_process | |
| title: Process image data | |
| - local: image_dataset | |
| title: Create an image dataset | |
| - local: depth_estimation | |
| title: Depth estimation | |
| - local: image_classification | |
| title: Image classification | |
| - local: semantic_segmentation | |
| title: Semantic segmentation | |
| - local: object_detection | |
| title: Object detection | |
| - local: video_load | |
| title: Load video data | |
| - local: video_dataset | |
| title: Create a video dataset | |
| - local: document_load | |
| title: Load document data | |
| - local: document_dataset | |
| title: Create a document dataset | |
| - local: nifti_dataset | |
| title: Create a medical imaging dataset | |
| title: "Vision" | |
| - sections: | |
| - local: nlp_load | |
| title: Load text data | |
| - local: nlp_process | |
| title: Process text data | |
| title: "Text" | |
| - sections: | |
| - local: tabular_load | |
| title: Load tabular data | |
| title: "Tabular" | |
| - sections: | |
| - local: share | |
| title: Share | |
| - local: dataset_card | |
| title: Create a dataset card | |
| - local: repository_structure | |
| title: Structure your repository | |
| title: "Dataset repository" | |
| title: "How-to guides" | |
| - sections: | |
| - local: about_arrow | |
| title: Datasets 🤝 Arrow | |
| - local: about_cache | |
| title: The cache | |
| - local: about_mapstyle_vs_iterable | |
| title: Dataset or IterableDataset | |
| - local: about_dataset_features | |
| title: Dataset features | |
| - local: about_dataset_load | |
| title: Build and load | |
| - local: about_map_batch | |
| title: Batch mapping | |
| title: "Conceptual guides" | |
| - sections: | |
| - local: package_reference/main_classes | |
| title: Main classes | |
| - local: package_reference/builder_classes | |
| title: Builder classes | |
| - local: package_reference/loading_methods | |
| title: Loading methods | |
| - local: package_reference/table_classes | |
| title: Table Classes | |
| - local: package_reference/utilities | |
| title: Utilities | |
| title: "Reference" | |
Xet Storage Details
- Size:
- 3.65 kB
- Xet hash:
- bed4f488f43637cb7918f2493b1c42d3128c413ca2e15f1ac25b978c5ffef1d7
·
Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.