Flux is a deep learning library for Julia, offering tools and resources for building, training, and deploying machine learning models with ease.
Build deep learning models in Julia easily
Flux is an open-source deep learning library designed specifically for the Julia programming language. With Flux, you can build, train, and experiment with neural networks using simple, expressive code that feels natural in Julia. The site offers comprehensive documentation, a model zoo for examples, and links to its active GitHub repository, making it easy to get started or contribute.
Whether you're a researcher, student, or developer, Flux provides the tools you need to create everything from basic neural networks to advanced machine learning models. The site highlights community resources, blog updates, and ways to get involved, so you can stay up to date and connect with fellow Julia ML enthusiasts.
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