A Python package of computer vision models for the Equinox ecosystem.

paganpasta paganpasta Last update: Mar 20, 2024

Eqxvision

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Eqxvision is a package of popular computer vision model architectures built using Equinox.

Installation

Use the package manager pip to install eqxvision.

pip install eqxvision

requires: python>=3.7

optional: torch, only if pretrained models are required.

Documentation

Available at https://eqxvision.readthedocs.io/en/latest/.

Usage

Picking a model and doing a forward pass is as simple as ...

    import jax
    import jax.random as jr
    import equinox as eqx
    from eqxvision.models import alexnet
    from eqxvision.utils import CLASSIFICATION_URLS
    
    
    @eqx.filter_jit
    def forward(net, images, key):
        keys = jax.random.split(key, images.shape[0])
        output = jax.vmap(net, axis_name=('batch'))(images, key=keys)
        ...
        
    net = alexnet(torch_weights=CLASSIFICATION_URLS['alexnet'])
    
    images = jr.uniform(jr.PRNGKey(0), shape=(1,3,224,224))
    output = forward(net, images, jr.PRNGKey(0))

What's New?

  • FCN, DeepLabV3 and LRASPP added as new image segmentation models.
  • Backward incompatible changes to v0.2.0 for loading a pretrained model.
  • Almost all image classification models are ported from torchvision.
  • New tutorial for generating adversarial examples and others coming soon.

Get Started!

Start with any one of these easy to follow tutorials.

Tips

  • Better to use @equinox.filter_jit instead of @jax.jit.
  • Use jax.{v,p}map with axis_name='batch' when using models that use batch normalisation.
  • Don't forget to switch to inference mode for evaluations. (model = eqx.tree_inference(model))
  • Initialise Optax optimisers as optim.init(eqx.filter(net, eqx.is_array)). (See here.)

Contributing

Pull requests are welcome. For major changes, please open an issue first to discuss what you would like to change.

Development Process

If you plan to modify the code or documentation, please follow the steps below:

  1. Fork the repository and create your branch from dev.
  2. If you have modified the code (new feature or bug-fix), please add unit tests.
  3. If you have changed APIs, update the documentation. Make sure the documentation builds. mkdocs serve
  4. Ensure the test suite passes. pytest tests -vvv
  5. Make sure your code passes the formatting checks. Automatically checked with a pre-commit hook.

Acknowledgements

License

MIT

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