Datasets documentation

Quickstart

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Quickstart

This quickstart is intended for developers who are ready to dive into the code and see an example of how to integrate 🤗 Datasets into their model training workflow. If you’re a beginner, we recommend starting with our tutorials, where you’ll get a more thorough introduction.

Each dataset is unique, and depending on the task, some datasets may require additional steps to prepare it for training. But you can always use 🤗 Datasets tools to load and process a dataset. The fastest and easiest way to get started is by loading an existing dataset from the Hugging Face Hub. There are thousands of datasets to choose from, spanning many tasks. Choose the type of dataset you want to work with, and let’s get started!

Check out Chapter 5 of the Hugging Face course to learn more about other important topics such as loading remote or local datasets, tools for cleaning up a dataset, and creating your own dataset.

Start by installing 🤗 Datasets:

pip install datasets

To work with audio datasets, install the Audio feature:

pip install datasets[audio]

To work with image datasets, install the Image feature:

pip install datasets[vision]

Audio

Audio datasets are loaded just like text datasets. However, an audio dataset is preprocessed a bit differently. Instead of a tokenizer, you’ll need a feature extractor. An audio input may also require resampling its sampling rate to match the sampling rate of the pretrained model you’re using. In this quickstart, you’ll prepare the MInDS-14 dataset for a model train on and classify the banking issue a customer is having.

1. Load the MInDS-14 dataset by providing the load_dataset() function with the dataset name, dataset configuration (not all datasets will have a configuration), and a dataset split:

>>> from datasets import load_dataset, Audio

>>> dataset = load_dataset("PolyAI/minds14", "en-US", split="train")

2. Next, load a pretrained Wav2Vec2 model and its corresponding feature extractor from the 🤗 Transformers library. It is totally normal to see a warning after you load the model about some weights not being initialized. This is expected because you are loading this model checkpoint for training with another task.

>>> from transformers import AutoModelForAudioClassification, AutoFeatureExtractor

>>> model = AutoModelForAudioClassification.from_pretrained("facebook/wav2vec2-base")
>>> feature_extractor = AutoFeatureExtractor.from_pretrained("facebook/wav2vec2-base")

3. The MInDS-14 dataset card indicates the sampling rate is 8kHz, but the Wav2Vec2 model was pretrained on a sampling rate of 16kHZ. You’ll need to upsample the audio column with the cast_column() function and Audio feature to match the model’s sampling rate.

>>> dataset = dataset.cast_column("audio", Audio(sampling_rate=16000))
>>> dataset[0]["audio"]
{'array': array([ 2.3443763e-05,  2.1729663e-04,  2.2145823e-04, ...,
         3.8356509e-05, -7.3497440e-06, -2.1754686e-05], dtype=float32),
 'path': '/root/.cache/huggingface/datasets/downloads/extracted/f14948e0e84be638dd7943ac36518a4cf3324e8b7aa331c5ab11541518e9368c/en-US~JOINT_ACCOUNT/602ba55abb1e6d0fbce92065.wav',
 'sampling_rate': 16000}

4. Create a function to preprocess the audio array with the feature extractor, and truncate and pad the sequences into tidy rectangular tensors. The most important thing to remember is to call the audio array in the feature extractor since the array - the actual speech signal - is the model input.

Once you have a preprocessing function, use the map() function to speed up processing by applying the function to batches of examples in the dataset.

>>> def preprocess_function(examples):
...     audio_arrays = [x["array"] for x in examples["audio"]]
...     inputs = feature_extractor(
...         audio_arrays,
...         sampling_rate=16000,
...         padding=True,
...         max_length=100000,
...         truncation=True,
...     )
...     return inputs

>>> dataset = dataset.map(preprocess_function, batched=True)

5. Use the rename_column() function to rename the intent_class column to labels, which is the expected input name in Wav2Vec2ForSequenceClassification:

>>> dataset = dataset.rename_column("intent_class", "labels")

6. Set the dataset format according to the machine learning framework you’re using.

Pytorch
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Use the set_format() function to set the dataset format to torch and specify the columns you want to format. This function applies formatting on-the-fly. After converting to PyTorch tensors, wrap the dataset in torch.utils.data.DataLoader:

>>> from torch.utils.data import DataLoader

>>> dataset.set_format(type="torch", columns=["input_values", "labels"])
>>> dataloader = DataLoader(dataset, batch_size=4)
TensorFlow
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Use the to_tf_dataset() function to set the dataset format to be compatible with TensorFlow. You’ll also need to import a data collator from 🤗 Transformers to combine the varying sequence lengths into a single batch of equal lengths:

>>> import tensorflow as tf

>>> tf_dataset = dataset.to_tf_dataset(
...     columns=["input_values"],
...     label_cols=["labels"],
...     batch_size=4,
...     shuffle=True)

7. Start training with your machine learning framework! Check out the 🤗 Transformers audio classification guide for an end-to-end example of how to train a model on an audio dataset.

Vision

Image datasets are loaded just like text datasets. However, instead of a tokenizer, you’ll need a feature extractor to preprocess the dataset. Applying data augmentation to an image is common in computer vision to make the model more robust against overfitting. You’re free to use any data augmentation library you want, and then you can apply the augmentations with 🤗 Datasets. In this quickstart, you’ll load the Beans dataset and get it ready for the model to train on and identify disease from the leaf images.

1. Load the Beans dataset by providing the load_dataset() function with the dataset name and a dataset split:

>>> from datasets import load_dataset, Image

>>> dataset = load_dataset("beans", split="train")

2. Now you can add some data augmentations with any library (Albumentations, imgaug, Kornia) you like. Here, you’ll use torchvision to randomly change the color properties of an image:

>>> from torchvision.transforms import Compose, ColorJitter, ToTensor

>>> jitter = Compose(
...     [ColorJitter(brightness=0.5, hue=0.5), ToTensor()]
... )

3. Create a function to apply your transform to the dataset and generate the model input: pixel_values.

>>> def transforms(examples):
...     examples["pixel_values"] = [jitter(image.convert("RGB")) for image in examples["image"]]
...     return examples

4. Use the with_transform() function to apply the data augmentations on-the-fly:

>>> dataset = dataset.with_transform(transforms)

5. Set the dataset format according to the machine learning framework you’re using.

Pytorch
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Wrap the dataset in torch.utils.data.DataLoader. You’ll also need to create a collate function to collate the samples into batches:

>>> from torch.utils.data import DataLoader

>>> def collate_fn(examples):
...     images = []
...     labels = []
...     for example in examples:
...         images.append((example["pixel_values"]))
...         labels.append(example["labels"])
...         
...     pixel_values = torch.stack(images)
...     labels = torch.tensor(labels)
...     return {"pixel_values": pixel_values, "labels": labels}
>>> dataloader = DataLoader(dataset, collate_fn=collate_fn, batch_size=4)

6. Start training with your machine learning framework! Check out the 🤗 Transformers image classification guide for an end-to-end example of how to train a model on an image dataset.

NLP

Text needs to be tokenized into individual tokens by a tokenizer. For the quickstart, you’ll load the Microsoft Research Paraphrase Corpus (MRPC) training dataset to train a model to determine whether a pair of sentences mean the same thing.

1. Load the MRPC dataset by providing the load_dataset() function with the dataset name, dataset configuration (not all datasets will have a configuration), and dataset split:

>>> from datasets import load_dataset

>>> dataset = load_dataset("glue", "mrpc", split="train")

2. Next, load a pretrained BERT model and its corresponding tokenizer from the 🤗 Transformers library. It is totally normal to see a warning after you load the model about some weights not being initialized. This is expected because you are loading this model checkpoint for training with another task.

>>> from transformers import AutoModelForSequenceClassification, AutoTokenizer >>> model = AutoModelForSequenceClassification.from_pretrained("bert-base-uncased") >>> tokenizer = AutoTokenizer.from_pretrained("bert-base-uncased")

3. Create a function to tokenize the dataset, and you should also truncate and pad the text into tidy rectangular tensors. The tokenizer generates three new columns in the dataset: input_ids, token_type_ids, and an attention_mask. These are the model inputs.

Use the map() function to speed up processing by applying your tokenization function to batches of examples in the dataset:

>>> def encode(examples):
...     return tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, padding="max_length")

>>> dataset = dataset.map(encode, batched=True)
>>> dataset[0]
{'sentence1': 'Amrozi accused his brother , whom he called " the witness " , of deliberately distorting his evidence .',
'sentence2': 'Referring to him as only " the witness " , Amrozi accused his brother of deliberately distorting his evidence .',
'label': 1,
'idx': 0,
'input_ids': array([  101,  7277,  2180,  5303,  4806,  1117,  1711,   117,  2292, 1119,  1270,   107,  1103,  7737,   107,   117,  1104,  9938, 4267, 12223, 21811,  1117,  2554,   119,   102, 11336,  6732, 3384,  1106,  1140,  1112,  1178,   107,  1103,  7737,   107, 117,  7277,  2180,  5303,  4806,  1117,  1711,  1104,  9938, 4267, 12223, 21811,  1117,  2554,   119,   102]),
'token_type_ids': array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1]),
'attention_mask': array([1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1])}

4. Rename the label column to labels, which is the expected input name in BertForSequenceClassification:

>>> dataset = dataset.map(lambda examples: {"labels": examples["label"]}, batched=True)

5. Set the dataset format according to the machine learning framework you’re using.

Pytorch
Hide Pytorch content

Use the set_format() function to set the dataset format to torch and specify the columns you want to format. This function applies formatting on-the-fly. After converting to PyTorch tensors, wrap the dataset in torch.utils.data.DataLoader:

>>> import torch

>>> dataset.set_format(type="torch", columns=["input_ids", "token_type_ids", "attention_mask", "labels"])
>>> dataloader = torch.utils.data.DataLoader(dataset, batch_size=32)
TensorFlow
Hide TensorFlow content

Use the to_tf_dataset() function to set the dataset format to be compatible with TensorFlow. You’ll also need to import a data collator from 🤗 Transformers to combine the varying sequence lengths into a single batch of equal lengths:

>>> import tensorflow as tf
>>> from transformers import DataCollatorWithPadding

>>> data_collator = DataCollatorWithPadding(tokenizer=tokenizer, return_tensors="tf")
>>> tf_dataset = dataset.to_tf_dataset(
...     columns=["input_ids", "token_type_ids", "attention_mask"],
...     label_cols=["labels"],
...     batch_size=2,
...     collate_fn=data_collator,
...     shuffle=True)

6. Start training with your machine learning framework! Check out the 🤗 Transformers text classification guide for an end-to-end example of how to train a model on a text dataset.

What's next?

This completes the 🤗 Datasets quickstart! You can load any text, audio, or image dataset with a single function and get it ready for your model to train on.

For your next steps, take a look at our How-to guides and learn how to do more specific things like loading different dataset formats, aligning labels, and streaming large datasets. If you’re interested in learning more about 🤗 Datasets core concepts, grab a cup of coffee and read our Conceptual Guides!