Convert codebase to JAX using Pallas for CUDA.#30
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sguada wants to merge 1 commit intoFelix-Petersen:mainfrom
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Convert codebase to JAX using Pallas for CUDA.#30sguada wants to merge 1 commit intoFelix-Petersen:mainfrom
sguada wants to merge 1 commit intoFelix-Petersen:mainfrom
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This commit converts the core logic of the difflogic library from PyTorch to JAX. The CUDA implementation is rewritten using Pallas kernels. The Python implementation is also converted to JAX. The script is adapted to use JAX for training and evaluation. Basic tests are added to verify the JAX implementation. The and compiled model functionality are not yet ported to JAX and are left as placeholders for future work.
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This commit converts the core logic of the difflogic library from PyTorch to JAX. The CUDA implementation is rewritten using Pallas kernels. The Python implementation is also converted to JAX. The script is adapted to use JAX for training and evaluation. Basic tests are added to verify the JAX implementation. The and compiled model functionality are not yet ported to JAX and are left as placeholders for future work.