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Probabilistic programming and deep learning in JAX

Project description

Oryx

Oryx is a library for probabilistic programming and deep learning built on top of Jax. The approach is to expose a set of function transformations that compose and integrate with JAX's existing transformations (e.g. jit, grad, and vmap).

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Coming soon!

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