Structure your repository

To host and share your dataset, you can create a dataset repository on the Hugging Face Dataset Hub and upload your data files.

This guide will show you how to structure your dataset repository when you upload it. A dataset with a supported structure and file format (text, JSON, JSON Lines, CSV, Parquet) can be loaded automatically with load_dataset(), and it’ll have a preview on its dataset page on the Hub.

For more flexibility over how to load and generate a dataset, you can also write a dataset loading script.

Main use-case

The simplest dataset structure has two files: train.csv and test.csv.

Your repository will also contain a README.md file, the dataset card displayed on your dataset page.

my_dataset_repository/
├── README.md
├── train.csv
└── test.csv

Splits and file names

🤗 Datasets automatically infer a dataset’s train, validation, and test splits from the file names. Files that contain train in their names are considered part of the train split. The same idea applies to the test and validation split:

Here is an example where all the files are placed into a directory named data:

my_dataset_repository/
├── README.md
└── data/
    ├── train.csv
    ├── test.csv
    └── valid.csv

Multiple files per split

If one of your splits comprises several files, 🤗 Datasets can still infer whether it is the train, validation, and test split from the file name. For example, if your train and test splits span several files:

my_dataset_repository/
├── README.md
├── train_0.csv
├── train_1.csv
├── train_2.csv
├── train_3.csv
├── test_0.csv
└── test_1.csv

Make sure all the files of your train set have train in their names (same for test and validation). Even if you add a prefix or suffix to train in the file name (like my_train_file_00001.csv for example), 🤗 Datasets can still infer the appropriate split.

For convenience, you can also place your data files into different directories. In this case, the split name is inferred from the directory name.

my_dataset_repository/
├── README.md
└── data/
    ├── train/
    │   ├── shard_0.csv
    │   ├── shard_1.csv
    │   ├── shard_2.csv
    │   └── shard_3.csv
    └── test/
        ├── shard_0.csv
        └── shard_1.csv

Eventually, you’ll also be able to structure your repository to specify different dataset configurations. Stay tuned on this issue for the latest updates!

Custom split names

If you have other data files in addition to the traditional train, validation, and test sets, you must use a different structure. Use this exact file name format for this structure type: data/<split_name>-xxxxx-of-xxxxx.csv.

Here is an example with three splits: train, test, and random:

my_dataset_repository/
├── README.md
└── data/
    ├── train-00000-of-00003.csv
    ├── train-00001-of-00003.csv
    ├── train-00002-of-00003.csv
    ├── test-00000-of-00001.csv
    ├── random-00000-of-00003.csv
    ├── random-00001-of-00003.csv
    └── random-00002-of-00003.csv