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| | This guide shows specific methods for processing image datasets. Learn how to: |
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| | - Use [`~Dataset.map`] with image dataset. |
| | - Apply data augmentations to a dataset with [`~Dataset.set_transform`]. |
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| | For a guide on how to process any type of dataset, take a look at the <a class="underline decoration-sky-400 decoration-2 font-semibold" href="./process">general process guide</a>. |
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| | The [`~Dataset.map`] function can apply transforms over an entire dataset. |
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| | For example, create a basic [`Resize`](https://pytorch.org/vision/stable/generated/torchvision.transforms.Resize.html) function: |
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| | ```py |
| | >>> def transforms(examples): |
| | ... examples["pixel_values"] = [image.convert("RGB").resize((100,100)) for image in examples["image"]] |
| | ... return examples |
| | ``` |
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| | Now use the [`~Dataset.map`] function to resize the entire dataset, and set `batched=True` to speed up the process by accepting batches of examples. The transform returns `pixel_values` as a cacheable `PIL.Image` object: |
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| | ```py |
| | >>> dataset = dataset.map(transforms, remove_columns=["image"], batched=True) |
| | >>> dataset[0] |
| | {'label': 6, |
| | 'pixel_values': <PIL.PngImagePlugin.PngImageFile image mode=RGB size=100x100 at 0x7F058237BB10>} |
| | ``` |
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| | The cache file saves time because you don't have to execute the same transform twice. The [`~Dataset.map`] function is best for operations you only run once per training - like resizing an image - instead of using it for operations executed for each epoch, like data augmentations. |
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| | [`~Dataset.map`] takes up some memory, but you can reduce its memory requirements with the following parameters: |
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| | - [`batch_size`](./package_reference/main_classes |
| | - [`writer_batch_size`](./package_reference/main_classes |
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| | Both parameter values default to 1000, which can be expensive if you are storing images. Lower these values to use less memory when you use [`~Dataset.map`]. |
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| | 🤗 Datasets applies data augmentations from any library or package to your dataset. Transforms can be applied on-the-fly on batches of data with [`~Dataset.set_transform`], which consumes less disk space. |
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| | <Tip> |
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| | The following example uses [torchvision](https://pytorch.org/vision/stable/index.html), but feel free to use other data augmentation libraries like [Albumentations](https://albumentations.ai/docs/), [Kornia](https://kornia.readthedocs.io/en/latest/), and [imgaug](https://imgaug.readthedocs.io/en/latest/). |
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| | </Tip> |
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| | For example, if you'd like to change the color properties of an image randomly: |
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| | ```py |
| | >>> from torchvision.transforms import Compose, ColorJitter, ToTensor |
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| | >>> jitter = Compose( |
| | ... [ |
| | ... ColorJitter(brightness=0.25, contrast=0.25, saturation=0.25, hue=0.7), |
| | ... ToTensor(), |
| | ... ] |
| | ... ) |
| | ``` |
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| | Create a function to apply the `ColorJitter` transform: |
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| | ```py |
| | >>> def transforms(examples): |
| | ... examples["pixel_values"] = [jitter(image.convert("RGB")) for image in examples["image"]] |
| | ... return examples |
| | ``` |
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| | Apply the transform with the [`~Dataset.set_transform`] function: |
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| | ```py |
| | >>> dataset.set_transform(transforms) |
| | ``` |