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Create an audio dataset

You can share a dataset with your team or with anyone in the community by creating a dataset repository on the Model Database Hub:

from datasets import load_dataset

dataset = load_dataset("<username>/my_dataset")

There are several methods for creating and sharing an audio dataset:

  • Create an audio dataset from local files in python with Dataset.push_to_hub(). This is an easy way that requires only a few steps in python.

  • Create an audio dataset repository with the AudioFolder builder. This is a no-code solution for quickly creating an audio dataset with several thousand audio files.

  • Create an audio dataset by writing a loading script. This method is for advanced users and requires more effort and coding, but you have greater flexibility over how a dataset is defined, downloaded, and generated which can be useful for more complex or large scale audio datasets.

You can control access to your dataset by requiring users to share their contact information first. Check out the Gated datasets guide for more information about how to enable this feature on the Hub.

Local files

You can load your own dataset using the paths to your audio files. Use the cast_column() function to take a column of audio file paths, and cast it to the Audio feature:

>>> audio_dataset = Dataset.from_dict({"audio": ["path/to/audio_1", "path/to/audio_2", ..., "path/to/audio_n"]}).cast_column("audio", Audio())
>>> audio_dataset[0]["audio"]
{'array': array([ 0.        ,  0.00024414, -0.00024414, ..., -0.00024414,
         0.        ,  0.        ], dtype=float32),
 'path': 'path/to/audio_1',
 'sampling_rate': 16000}

Then upload the dataset to the Model Database Hub using Dataset.push_to_hub():

audio_dataset.push_to_hub("<username>/my_dataset")

This will create a dataset repository containing your audio dataset:

my_dataset/
├── README.md
└── data/
    └── train-00000-of-00001.parquet

AudioFolder

The AudioFolder is a dataset builder designed to quickly load an audio dataset with several thousand audio files without requiring you to write any code. Any additional information about your dataset - such as transcription, speaker accent, or speaker intent - is automatically loaded by AudioFolder as long as you include this information in a metadata file (metadata.csv/metadata.jsonl).

💡 Take a look at the Split pattern hierarchy to learn more about how AudioFolder creates dataset splits based on your dataset repository structure.

Create a dataset repository on the Model Database Hub and upload your dataset directory following the AudioFolder structure:

my_dataset/
├── README.md
├── metadata.csv
└── data/

The data folder can be any name you want.

It can be helpful to store your metadata as a jsonl file if the data columns contain a more complex format (like a list of floats) to avoid parsing errors or reading complex values as strings.

The metadata file should include a file_name column to link an audio file to it’s metadata:

file_name,transcription
data/first_audio_file.mp3,znowu się duch z ciałem zrośnie w młodocianej wstaniesz wiosnie i możesz skutkiem tych leków umierać wstawać wiek wieków dalej tam były przestrogi jak siekać głowę jak nogi
data/second_audio_file.mp3,już u źwierzyńca podwojów król zasiada przy nim książęta i panowie rada a gdzie wzniosły krążył ganek rycerze obok kochanek król skinął palcem zaczęto igrzysko
data/third_audio_file.mp3,pewnie kędyś w obłędzie ubite minęły szlaki zaczekajmy dzień jaki poślemy szukać wszędzie dziś jutro pewnie będzie posłali wszędzie sługi czekali dzień i drugi gdy nic nie doczekali z płaczem chcą jechać dali

Then you can store your dataset in a directory structure like this:

metadata.csv
data/first_audio_file.mp3
data/second_audio_file.mp3
data/third_audio_file.mp3

Users can now load your dataset and the associated metadata by specifying audiofolder in load_dataset() and the dataset directory in data_dir:

>>> from datasets import load_dataset
>>> dataset = load_dataset("audiofolder", data_dir="/path/to/data")
>>> dataset["train"][0]
{'audio':
    {'path': '/path/to/extracted/audio/first_audio_file.mp3',
    'array': array([ 0.00088501,  0.0012207 ,  0.00131226, ..., -0.00045776, -0.00054932, -0.00054932], dtype=float32),
    'sampling_rate': 16000},
 'transcription': 'znowu się duch z ciałem zrośnie w młodocianej wstaniesz wiosnie i możesz skutkiem tych leków umierać wstawać wiek wieków dalej tam były przestrogi jak siekać głowę jak nogi'
}

You can also use audiofolder to load datasets involving multiple splits. To do so, your dataset directory might have the following structure:

data/train/first_train_audio_file.mp3
data/train/second_train_audio_file.mp3

data/test/first_test_audio_file.mp3
data/test/second_test_audio_file.mp3

Note that if audio files are located not right next to a metadata file, file_name column should be a full relative path to an audio file, not just its filename.

For audio datasets that don’t have any associated metadata, AudioFolder automatically infers the class labels of the dataset based on the directory name. It might be useful for audio classification tasks. Your dataset directory might look like:

data/train/electronic/01.mp3
data/train/punk/01.mp3

data/test/electronic/09.mp3
data/test/punk/09.mp3

Load the dataset with AudioFolder, and it will create a label column from the directory name (language id):

>>> from datasets import load_dataset
>>> dataset = load_dataset("audiofolder", data_dir="/path/to/data")
>>> dataset["train"][0]
{'audio':
    {'path': '/path/to/electronic/01.mp3',
     'array': array([ 3.9714024e-07,  7.3031038e-07,  7.5640685e-07, ...,
         -1.1963668e-01, -1.1681189e-01, -1.1244172e-01], dtype=float32),
     'sampling_rate': 44100},
 'label': 0  # "electronic"
}
>>> dataset["train"][-1]
{'audio':
    {'path': '/path/to/punk/01.mp3',
     'array': array([0.15237972, 0.13222949, 0.10627693, ..., 0.41940814, 0.37578005,
         0.33717662], dtype=float32),
     'sampling_rate': 44100},
 'label': 1  # "punk"
}

If all audio files are contained in a single directory or if they are not on the same level of directory structure, label column won’t be added automatically. If you need it, set drop_labels=False explicitly.

Some audio datasets, like those found in Kaggle competitions, have separate metadata files for each split. Provided the metadata features are the same for each split, audiofolder can be used to load all splits at once. If the metadata features differ across each split, you should load them with separate load_dataset() calls.

Loading script

Write a dataset loading script to manually create a dataset. It defines a dataset’s splits and configurations, and handles downloading and generating the dataset examples. The script should have the same name as your dataset folder or repository:

my_dataset/
├── README.md
├── my_dataset.py
└── data/

The data folder can be any name you want, it doesn’t have to be data. This folder is optional, unless you’re hosting your dataset on the Hub.

This directory structure allows your dataset to be loaded in one line:

>>> from datasets import load_dataset
>>> dataset = load_dataset("path/to/my_dataset")

This guide will show you how to create a dataset loading script for audio datasets, which is a bit different from creating a loading script for text datasets. Audio datasets are commonly stored in tar.gz archives which requires a particular approach to support streaming mode. While streaming is not required, we highly encourage implementing streaming support in your audio dataset because:

  1. Users without a lot of disk space can use your dataset without downloading it. Learn more about streaming in the Stream guide!
  2. Users can preview a dataset in the dataset viewer.

Here is an example using TAR archives:

my_dataset/
├── README.md
├── my_dataset.py
└── data/
    ├── train.tar.gz
    ├── test.tar.gz
    └── metadata.csv

In addition to learning how to create a streamable dataset, you’ll also learn how to:

  • Create a dataset builder class.
  • Create dataset configurations.
  • Add dataset metadata.
  • Download and define the dataset splits.
  • Generate the dataset.
  • Upload the dataset to the Hub.

The best way to learn is to open up an existing audio dataset loading script, like Vivos, and follow along!

This guide shows how to process audio data stored in TAR archives - the most frequent case for audio datasets. Check out minds14 dataset for an example of an audio script which uses ZIP archives.

To help you get started, we created a loading script template you can copy and use as a starting point!

Create a dataset builder class

GeneratorBasedBuilder is the base class for datasets generated from a dictionary generator. Within this class, there are three methods to help create your dataset:

  • _info stores information about your dataset like its description, license, and features.
  • _split_generators downloads the dataset and defines its splits.
  • _generate_examples generates the dataset’s samples containing the audio data and other features specified in info for each split.

Start by creating your dataset class as a subclass of GeneratorBasedBuilder and add the three methods. Don’t worry about filling in each of these methods yet, you’ll develop those over the next few sections:

class VivosDataset(datasets.GeneratorBasedBuilder):
    """VIVOS is a free Vietnamese speech corpus consisting of 15 hours of recording speech prepared for
    Vietnamese Automatic Speech Recognition task."""

    def _info(self):

    def _split_generators(self, dl_manager):

    def _generate_examples(self, prompts_path, path_to_clips, audio_files):

Multiple configurations

In some cases, a dataset may have more than one configuration. For example, LibriVox Indonesia dataset has several configurations corresponding to different languages.

To create different configurations, use the BuilderConfig class to create a subclass of your dataset. The only required parameter is the name of the configuration, which must be passed to the configuration’s superclass __init__(). Otherwise, you can specify any custom parameters you want in your configuration class.

class LibriVoxIndonesiaConfig(datasets.BuilderConfig):
    """BuilderConfig for LibriVoxIndonesia."""

    def __init__(self, name, version, **kwargs):
        self.language = kwargs.pop("language", None)
        self.release_date = kwargs.pop("release_date", None)
        self.num_clips = kwargs.pop("num_clips", None)
        self.num_speakers = kwargs.pop("num_speakers", None)
        self.validated_hr = kwargs.pop("validated_hr", None)
        self.total_hr = kwargs.pop("total_hr", None)
        self.size_bytes = kwargs.pop("size_bytes", None)
        self.size_human = size_str(self.size_bytes)
        description = (
            f"LibriVox-Indonesia speech to text dataset in {self.language} released on {self.release_date}. "
            f"The dataset comprises {self.validated_hr} hours of transcribed speech data"
        )
        super(LibriVoxIndonesiaConfig, self).__init__(
            name=name,
            version=datasets.Version(version),
            description=description,
            **kwargs,
        )

Define your configurations in the BUILDER_CONFIGS class variable inside GeneratorBasedBuilder. In this example, the author imports the languages from a separate release_stats.py file from their repository, and then loops through each language to create a configuration:

class LibriVoxIndonesiaConfig(datasets.GeneratorBasedBuilder):
    DEFAULT_CONFIG_NAME = "all"

    BUILDER_CONFIGS = [
        LibriVoxIndonesiaConfig(
            name=lang,
            version=STATS["version"],
            language=LANGUAGES[lang],
            release_date=STATS["date"],
            num_clips=lang_stats["clips"],
            num_speakers=lang_stats["users"],
            total_hr=float(lang_stats["totalHrs"]) if lang_stats["totalHrs"] else None,
            size_bytes=int(lang_stats["size"]) if lang_stats["size"] else None,
        )
        for lang, lang_stats in STATS["locales"].items()
    ]

Typically, users need to specify a configuration to load in load_dataset(), otherwise a ValueError is raised. You can avoid this by setting a default dataset configuration to load in DEFAULT_CONFIG_NAME.

Now if users want to load the Balinese (bal) configuration, they can use the configuration name:

>>> from datasets import load_dataset
>>> dataset = load_dataset("indonesian-nlp/librivox-indonesia", "bal", split="train")

Add dataset metadata

Adding information about your dataset helps users to learn more about it. This information is stored in the DatasetInfo class which is returned by the info method. Users can access this information by:

>>> from datasets import load_dataset_builder
>>> ds_builder = load_dataset_builder("vivos")
>>> ds_builder.info

There is a lot of information you can include about your dataset, but some important ones are:

  1. description provides a concise description of the dataset.
  2. features specify the dataset column types. Since you’re creating an audio loading script, you’ll need to include the Audio feature and the sampling_rate of the dataset.
  3. homepage provides a link to the dataset homepage.
  4. license specify the permissions for using a dataset as defined by the license type.
  5. citation is a BibTeX citation of the dataset.

You’ll notice a lot of the dataset information is defined earlier in the loading script which can make it easier to read. There are also other ~Dataset.Features you can input, so be sure to check out the full list and features guide for more details.

def _info(self):
    return datasets.DatasetInfo(
        description=_DESCRIPTION,
        features=datasets.Features(
            {
                "speaker_id": datasets.Value("string"),
                "path": datasets.Value("string"),
                "audio": datasets.Audio(sampling_rate=16_000),
                "sentence": datasets.Value("string"),
            }
        ),
        supervised_keys=None,
        homepage=_HOMEPAGE,
        license=_LICENSE,
        citation=_CITATION,
    )

Download and define the dataset splits

Now that you’ve added some information about your dataset, the next step is to download the dataset and define the splits.

  1. Use the download() method to download metadata file at _PROMPTS_URLS and audio TAR archive at _DATA_URL. This method returns the path to the local file/archive. In streaming mode, it doesn’t download the file(s) and just returns a URL to stream the data from. This method accepts:

    • a relative path to a file inside a Hub dataset repository (for example, in the data/ folder)
    • a URL to a file hosted somewhere else
    • a (nested) list or dictionary of file names or URLs
  2. After you’ve downloaded the dataset, use the SplitGenerator to organize the audio files and sentence prompts in each split. Name each split with a standard name like: Split.TRAIN, Split.TEST, and SPLIT.Validation.

    In the gen_kwargs parameter, specify the file path to the prompts_path and path_to_clips. For audio_files, you’ll need to use iter_archive() to iterate over the audio files in the TAR archive. This enables streaming for your dataset. All of these file paths are passed onto the next step where you’ll actually generate the dataset.

def _split_generators(self, dl_manager):
    """Returns SplitGenerators."""
    prompts_paths = dl_manager.download(_PROMPTS_URLS)
    archive = dl_manager.download(_DATA_URL)
    train_dir = "vivos/train"
    test_dir = "vivos/test"

    return [
        datasets.SplitGenerator(
            name=datasets.Split.TRAIN,
            gen_kwargs={
                "prompts_path": prompts_paths["train"],
                "path_to_clips": train_dir + "/waves",
                "audio_files": dl_manager.iter_archive(archive),
            },
        ),
        datasets.SplitGenerator(
            name=datasets.Split.TEST,
            gen_kwargs={
                "prompts_path": prompts_paths["test"],
                "path_to_clips": test_dir + "/waves",
                "audio_files": dl_manager.iter_archive(archive),
            },
        ),
    ]

This implementation does not extract downloaded archives. If you want to extract files after download, you need to additionally use extract(), see the (Advanced) Extract TAR archives section.

Generate the dataset

The last method in the GeneratorBasedBuilder class actually generates the samples in the dataset. It yields a dataset according to the structure specified in features from the info method. As you can see, generate_examples accepts the prompts_path, path_to_clips, and audio_files from the previous method as arguments.

Files inside TAR archives are accessed and yielded sequentially. This means you need to have the metadata associated with the audio files in the TAR file in hand first so you can yield it with its corresponding audio file.

examples = {}
with open(prompts_path, encoding="utf-8") as f:
    for row in f:
        data = row.strip().split(" ", 1)
        speaker_id = data[0].split("_")[0]
        audio_path = "/".join([path_to_clips, speaker_id, data[0] + ".wav"])
        examples[audio_path] = {
            "speaker_id": speaker_id,
            "path": audio_path,
            "sentence": data[1],
        }

Finally, iterate over files in audio_files and yield them along with their corresponding metadata. iter_archive() yields a tuple of (path, f) where path is a relative path to a file inside TAR archive and f is a file object itself.

inside_clips_dir = False
id_ = 0
for path, f in audio_files:
    if path.startswith(path_to_clips):
        inside_clips_dir = True
        if path in examples:
            audio = {"path": path, "bytes": f.read()}
            yield id_, {**examples[path], "audio": audio}
            id_ += 1
    elif inside_clips_dir:
        break

Put these two steps together, and the whole _generate_examples method looks like:

def _generate_examples(self, prompts_path, path_to_clips, audio_files):
    """Yields examples as (key, example) tuples."""
    examples = {}
    with open(prompts_path, encoding="utf-8") as f:
        for row in f:
            data = row.strip().split(" ", 1)
            speaker_id = data[0].split("_")[0]
            audio_path = "/".join([path_to_clips, speaker_id, data[0] + ".wav"])
            examples[audio_path] = {
                "speaker_id": speaker_id,
                "path": audio_path,
                "sentence": data[1],
            }
    inside_clips_dir = False
    id_ = 0
    for path, f in audio_files:
        if path.startswith(path_to_clips):
            inside_clips_dir = True
            if path in examples:
                audio = {"path": path, "bytes": f.read()}
                yield id_, {**examples[path], "audio": audio}
                id_ += 1
        elif inside_clips_dir:
            break

Upload the dataset to the Hub

Once your script is ready, create a dataset card and upload it to the Hub.

Congratulations, you can now load your dataset from the Hub! 🥳

>>> from datasets import load_dataset
>>> load_dataset("<username>/my_dataset")

(Advanced) Extract TAR archives locally

In the example above downloaded archives are not extracted and therefore examples do not contain information about where they are stored locally. To explain how to do the extraction in a way that it also supports streaming, we will briefly go through the LibriVox Indonesia loading script.

Download and define the dataset splits

  1. Use the download() method to download the audio data at _AUDIO_URL.

  2. To extract audio TAR archive locally, use the extract(). You can use this method only in non-streaming mode (when dl_manager.is_streaming=False). This returns a local path to the extracted archive directory:

    local_extracted_archive = dl_manager.extract(audio_path) if not dl_manager.is_streaming else None
  3. Use the iter_archive() method to iterate over the archive at audio_path, just like in the Vivos example above. iter_archive() doesn’t provide any information about the full paths of files from the archive, even if it has been extracted. As a result, you need to pass the local_extracted_archive path to the next step in gen_kwargs, in order to preserve information about where the archive was extracted to. This is required to construct the correct paths to the local files when you generate the examples.

The reason you need to use a combination of download() and iter_archive() is because files in TAR archives can’t be accessed directly by their paths. Instead, you’ll need to iterate over the files within the archive! You can use download_and_extract() and extract() with TAR archives only in non-streaming mode, otherwise it would throw an error.

  1. Use the download_and_extract() method to download the metadata file specified in _METADATA_URL. This method returns a path to a local file in non-streaming mode. In streaming mode, it doesn’t download file locally and returns the same URL.

  2. Now use the SplitGenerator to organize the audio files and metadata in each split. Name each split with a standard name like: Split.TRAIN, Split.TEST, and SPLIT.Validation.

    In the gen_kwargs parameter, specify the file paths to local_extracted_archive, audio_files, metadata_path, and path_to_clips. Remember, for audio_files, you need to use iter_archive() to iterate over the audio files in the TAR archives. This enables streaming for your dataset! All of these file paths are passed onto the next step where the dataset samples are generated.

def _split_generators(self, dl_manager):
    """Returns SplitGenerators."""
    dl_manager.download_config.ignore_url_params = True

    audio_path = dl_manager.download(_AUDIO_URL)
    local_extracted_archive = dl_manager.extract(audio_path) if not dl_manager.is_streaming else None
    path_to_clips = "librivox-indonesia"

    return [
        datasets.SplitGenerator(
            name=datasets.Split.TRAIN,
            gen_kwargs={
                "local_extracted_archive": local_extracted_archive,
                "audio_files": dl_manager.iter_archive(audio_path),
                "metadata_path": dl_manager.download_and_extract(_METADATA_URL + "/metadata_train.csv.gz"),
                "path_to_clips": path_to_clips,
            },
        ),
        datasets.SplitGenerator(
            name=datasets.Split.TEST,
            gen_kwargs={
                "local_extracted_archive": local_extracted_archive,
                "audio_files": dl_manager.iter_archive(audio_path),
                "metadata_path": dl_manager.download_and_extract(_METADATA_URL + "/metadata_test.csv.gz"),
                "path_to_clips": path_to_clips,
            },
        ),
    ]

Generate the dataset

Here _generate_examples accepts local_extracted_archive, audio_files, metadata_path, and path_to_clips from the previous method as arguments.

  1. TAR files are accessed and yielded sequentially. This means you need to have the metadata in metadata_path associated with the audio files in the TAR file in hand first so that you can yield it with its corresponding audio file further:

    with open(metadata_path, "r", encoding="utf-8") as f:
        reader = csv.DictReader(f)
        for row in reader:
            if self.config.name == "all" or self.config.name == row["language"]:
                row["path"] = os.path.join(path_to_clips, row["path"])
                # if data is incomplete, fill with empty values
                for field in data_fields:
                    if field not in row:
                        row[field] = ""
                metadata[row["path"]] = row
  2. Now you can yield the files in audio_files archive. When you use iter_archive(), it yielded a tuple of (path, f) where path is a relative path to a file inside the archive, and f is the file object itself. To get the full path to the locally extracted file, join the path of the directory (local_extracted_path) where the archive is extracted to and the relative audio file path (path):

    for path, f in audio_files:
        if path in metadata:
            result = dict(metadata[path])
            # set the audio feature and the path to the extracted file
            path = os.path.join(local_extracted_archive, path) if local_extracted_archive else path
            result["audio"] = {"path": path, "bytes": f.read()}
            result["path"] = path
            yield id_, result
            id_ += 1

Put both of these steps together, and the whole _generate_examples method should look like:

def _generate_examples(
        self,
        local_extracted_archive,
        audio_files,
        metadata_path,
        path_to_clips,
    ):
        """Yields examples."""
        data_fields = list(self._info().features.keys())
        metadata = {}
        with open(metadata_path, "r", encoding="utf-8") as f:
            reader = csv.DictReader(f)
            for row in reader:
                if self.config.name == "all" or self.config.name == row["language"]:
                    row["path"] = os.path.join(path_to_clips, row["path"])
                    # if data is incomplete, fill with empty values
                    for field in data_fields:
                        if field not in row:
                            row[field] = ""
                    metadata[row["path"]] = row
        id_ = 0
        for path, f in audio_files:
            if path in metadata:
                result = dict(metadata[path])
                # set the audio feature and the path to the extracted file
                path = os.path.join(local_extracted_archive, path) if local_extracted_archive else path
                result["audio"] = {"path": path, "bytes": f.read()}
                result["path"] = path
                yield id_, result
                id_ += 1