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# Accelerated PyTorch Training on Mac |
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With PyTorch v1.12 release, developers and researchers can take advantage of Apple silicon GPUs for significantly faster model training. |
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This unlocks the ability to perform machine learning workflows like prototyping and fine-tuning locally, right on Mac. |
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Apple's Metal Performance Shaders (MPS) as a backend for PyTorch enables this and can be used via the new `"mps"` device. |
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This will map computational graphs and primitives on the MPS Graph framework and tuned kernels provided by MPS. |
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For more information please refer official documents [Introducing Accelerated PyTorch Training on Mac](https://pytorch.org/blog/introducing-accelerated-pytorch-training-on-mac/) |
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and [MPS BACKEND](https://pytorch.org/docs/stable/notes/mps.html). |
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### Benefits of Training and Inference using Apple Silicon Chips |
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1. Enables users to train larger networks or batch sizes locally |
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2. Reduces data retrieval latency and provides the GPU with direct access to the full memory store due to unified memory architecture. |
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Therefore, improving end-to-end performance. |
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3. Reduces costs associated with cloud-based development or the need for additional local GPUs. |
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**Pre-requisites**: To install torch with mps support, |
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please follow this nice medium article [GPU-Acceleration Comes to PyTorch on M1 Macs](https://medium.com/towards-data-science/gpu-acceleration-comes-to-pytorch-on-m1-macs-195c399efcc1). |
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## How it works out of the box |
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It is enabled by default on MacOs machines with MPS enabled Apple Silicon GPUs. |
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To disable it, pass `--cpu` flag to `accelerate launch` command or answer the corresponding question when answering the `accelerate config` questionnaire. |
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You can directly run the following script to test it out on MPS enabled Apple Silicon machines: |
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```bash |
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accelerate launch /examples/cv_example.py --data_dir images |
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``` |
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## A few caveats to be aware of |
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1. We strongly recommend to install PyTorch >= 1.13 (nightly version at the time of writing) on your MacOS machine. |
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It has major fixes related to model correctness and performance improvements for transformer based models. |
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Please refer to https://github.com/pytorch/pytorch/issues/82707 for more details. |
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2. Distributed setups `gloo` and `nccl` are not working with `mps` device. |
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This means that currently only single GPU of `mps` device type can be used. |
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Finally, please, remember that, 🤗 `Accelerate` only integrates MPS backend, therefore if you |
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have any problems or questions with regards to MPS backend usage, please, file an issue with [PyTorch GitHub](https://github.com/pytorch/pytorch/issues). |