# XLA XLA (Accelerated Linear Algebra) is an open-source compiler for machine learning. The XLA compiler takes models from popular frameworks such as PyTorch, TensorFlow, and JAX, and optimizes the models for high-performance execution across different hardware platforms including GPUs, CPUs, and ML accelerators. As a part of the OpenXLA project, XLA is built collaboratively by industry-leading ML hardware and software companies, including Alibaba, Amazon Web Services, AMD, Apple, Arm, Google, Intel, Meta, and NVIDIA. ## Key benefits - **Build anywhere**: XLA is already integrated into leading ML frameworks such as TensorFlow, PyTorch, and JAX. - **Run anywhere**: It supports various backends including GPUs, CPUs, and ML accelerators, and includes a pluggable infrastructure to add support for more. - **Maximize and scale performance**: It optimizes a model's performance with production-tested optimization passes and automated partitioning for model parallelism. - **Eliminate complexity**: It leverages the power of [MLIR](https://mlir.llvm.org/) to bring the best capabilities into a single compiler toolchain, so you don't have to manage a range of domain-specific compilers. - **Future ready**: As an open source project, built through a collaboration of leading ML hardware and software vendors, XLA is designed to operate at the cutting-edge of the ML industry. ## Documentation To learn more about XLA, check out the links on the left. If you're a new XLA developer, you might want to start with [XLA architecture](architecture.md) and then read [Contributing](contributing.md).