Apache TVM is an open-source machine learning compiler framework that helps you deploy models efficiently on CPUs, GPUs, and specialized accelerators.
Deploy ML models on any hardware easily
Apache TVM is an open-source framework that helps you compile and run machine learning models on a wide range of hardware, including CPUs, GPUs, and accelerators. Whether you’re working on deep learning projects or optimizing AI workloads, TVM gives you the tools to efficiently deploy your models without being tied to a specific device.
You’ll find resources like documentation, a blog, and community links to help you get started or dive deeper. The platform is designed for developers, researchers, and anyone looking to streamline the process of bringing machine learning models into real-world applications. With TVM, you can make your models more portable and efficient across different computing environments.
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