Skip to content

Diff4Earth/awesome-jax

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

275 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Awesome JAX AwesomeJAX Logo

JAX brings automatic differentiation and the XLA compiler together through a NumPy-like API for high performance machine learning research on accelerators like GPUs and TPUs.

This is a curated list of awesome JAX libraries, projects, and other resources. Contributions are welcome!

Contents

  • Neural Network Libraries
    • Flax - Centered on flexibility and clarity.
    • Flax NNX - An evolution on Flax by the same team
    • Haiku - Focused on simplicity, created by the authors of Sonnet at DeepMind.
    • Objax - Has an object oriented design similar to PyTorch.
    • Elegy - A High Level API for Deep Learning in JAX. Supports Flax, Haiku, and Optax.
    • Trax - "Batteries included" deep learning library focused on providing solutions for common workloads.
    • Jraph - Lightweight graph neural network library.
    • Neural Tangents - High-level API for specifying neural networks of both finite and infinite width.
    • HuggingFace Transformers - Ecosystem of pretrained Transformers for a wide range of natural language tasks (Flax).
    • Equinox - Callable PyTrees and filtered JIT/grad transformations => neural networks in JAX.
    • Scenic - A Jax Library for Computer Vision Research and Beyond.
    • Penzai - Prioritizes legibility, visualization, and easy editing of neural network models with composable tools and a simple mental model.
  • Levanter - Legible, Scalable, Reproducible Foundation Models with Named Tensors and JAX.
  • EasyLM - LLMs made easy: Pre-training, finetuning, evaluating and serving LLMs in JAX/Flax.
  • NumPyro - Probabilistic programming based on the Pyro library.
  • Chex - Utilities to write and test reliable JAX code.
  • Optax - Gradient processing and optimization library.
  • RLax - Library for implementing reinforcement learning agents.
  • JAX, M.D. - Accelerated, differential molecular dynamics.
  • Coax - Turn RL papers into code, the easy way.
  • Distrax - Reimplementation of TensorFlow Probability, containing probability distributions and bijectors.
  • cvxpylayers - Construct differentiable convex optimization layers.
  • TensorLy - Tensor learning made simple.
  • NetKet - Machine Learning toolbox for Quantum Physics.
  • Fortuna - AWS library for Uncertainty Quantification in Deep Learning.
  • BlackJAX - Library of samplers for JAX.

This section contains libraries that are well-made and useful, but have not necessarily been battle-tested by a large userbase yet.

  • Neural Network Libraries
    • FedJAX - Federated learning in JAX, built on Optax and Haiku.
    • Equivariant MLP - Construct equivariant neural network layers.
    • jax-resnet - Implementations and checkpoints for ResNet variants in Flax.
    • Parallax - Immutable Torch Modules for JAX.
  • Nonlinear Optimization
    • Optimistix - Root finding, minimisation, fixed points, and least squares.
    • JAXopt - Hardware accelerated (GPU/TPU), batchable and differentiable optimizers in JAX.
  • jax-unirep - Library implementing the UniRep model for protein machine learning applications.
  • flowjax - Distributions and normalizing flows built as equinox modules.
  • jax-flows - Normalizing flows in JAX.
  • sklearn-jax-kernels - scikit-learn kernel matrices using JAX.
  • jax-cosmo - Differentiable cosmology library.
  • efax - Exponential Families in JAX.
  • mpi4jax - Combine MPI operations with your Jax code on CPUs and GPUs.
  • imax - Image augmentations and transformations.
  • FlaxVision - Flax version of TorchVision.
  • Oryx - Probabilistic programming language based on program transformations.
  • Optimal Transport Tools - Toolbox that bundles utilities to solve optimal transport problems.
  • delta PV - A photovoltaic simulator with automatic differentation.
  • jaxlie - Lie theory library for rigid body transformations and optimization.
  • BRAX - Differentiable physics engine to simulate environments along with learning algorithms to train agents for these environments.
  • flaxmodels - Pretrained models for Jax/Flax.
  • CR.Sparse - XLA accelerated algorithms for sparse representations and compressive sensing.
  • exojax - Automatic differentiable spectrum modeling of exoplanets/brown dwarfs compatible to JAX.
  • PIX - PIX is an image processing library in JAX, for JAX.
  • bayex - Bayesian Optimization powered by JAX.
  • JaxDF - Framework for differentiable simulators with arbitrary discretizations.
  • tree-math - Convert functions that operate on arrays into functions that operate on PyTrees.
  • jax-models - Implementations of research papers originally without code or code written with frameworks other than JAX.
  • PGMax - A framework for building discrete Probabilistic Graphical Models (PGM's) and running inference inference on them via JAX.
  • EvoJAX - Hardware-Accelerated Neuroevolution
  • evosax - JAX-Based Evolution Strategies
  • SymJAX - Symbolic CPU/GPU/TPU programming.
  • mcx - Express & compile probabilistic programs for performant inference.
  • Einshape - DSL-based reshaping library for JAX and other frameworks.
  • ALX - Open-source library for distributed matrix factorization using Alternating Least Squares, more info in ALX: Large Scale Matrix Factorization on TPUs.
  • Diffrax - Numerical differential equation solvers in JAX.
  • tinygp - The tiniest of Gaussian process libraries in JAX.
  • gymnax - Reinforcement Learning Environments with the well-known gym API.
  • Mctx - Monte Carlo tree search algorithms in native JAX.
  • KFAC-JAX - Second Order Optimization with Approximate Curvature for NNs.
  • TF2JAX - Convert functions/graphs to JAX functions.
  • jwave - A library for differentiable acoustic simulations
  • GPJax - Gaussian processes in JAX.
  • Jumanji - A Suite of Industry-Driven Hardware-Accelerated RL Environments written in JAX.
  • Eqxvision - Equinox version of Torchvision.
  • JAXFit - Accelerated curve fitting library for nonlinear least-squares problems (see arXiv paper).
  • econpizza - Solve macroeconomic models with hetereogeneous agents using JAX.
  • SPU - A domain-specific compiler and runtime suite to run JAX code with MPC(Secure Multi-Party Computation).
  • jax-tqdm - Add a tqdm progress bar to JAX scans and loops.
  • safejax - Serialize JAX, Flax, Haiku, or Objax model params with 🤗safetensors.
  • Kernex - Differentiable stencil decorators in JAX.
  • MaxText - A simple, performant and scalable Jax LLM written in pure Python/Jax and targeting Google Cloud TPUs.
  • Pax - A Jax-based machine learning framework for training large scale models.
  • Praxis - The layer library for Pax with a goal to be usable by other JAX-based ML projects.
  • purejaxrl - Vectorisable, end-to-end RL algorithms in JAX.
  • Lorax - Automatically apply LoRA to JAX models (Flax, Haiku, etc.)
  • SCICO - Scientific computational imaging in JAX.
  • Spyx - Spiking Neural Networks in JAX for machine learning on neuromorphic hardware.
  • Brain Dynamics Programming Ecosystem
    • BrainPy - Brain Dynamics Programming in Python.
    • brainunit - Physical units and unit-aware mathematical system in JAX.
    • dendritex - Dendritic Modeling in JAX.
    • brainstate - State-based Transformation System for Program Compilation and Augmentation.
    • braintaichi - Leveraging Taichi Lang to customize brain dynamics operators.
  • OTT-JAX - Optimal transport tools in JAX.
  • QDax - Quality Diversity optimization in Jax.
  • JAX Toolbox - Nightly CI and optimized examples for JAX on NVIDIA GPUs using libraries such as T5x, Paxml, and Transformer Engine.
  • Pgx - Vectorized board game environments for RL with an AlphaZero example.
  • EasyDeL - EasyDeL 🔮 is an OpenSource Library to make your training faster and more Optimized With cool Options for training and serving (Llama, MPT, Mixtral, Falcon, etc) in JAX
  • XLB - A Differentiable Massively Parallel Lattice Boltzmann Library in Python for Physics-Based Machine Learning.
  • dynamiqs - High-performance and differentiable simulations of quantum systems with JAX.
  • foragax - Agent-Based modelling framework in JAX.
  • tmmax - Vectorized calculation of optical properties in thin-film structures using JAX. Swiss Army knife tool for thin-film optics research
  • Coreax - Algorithms for finding coresets to compress large datasets while retaining their statistical properties.
  • NAVIX - A reimplementation of MiniGrid, a Reinforcement Learning environment, in JAX

JAX

Flax

Haiku

Trax

  • Reformer - Implementation of the Reformer (efficient transformer) architecture.

NumPyro

This section contains papers focused on JAX (e.g. JAX-based library whitepapers, research on JAX, etc). Papers implemented in JAX are listed in the Models/Projects section.

  • Jax in Action - A hands-on guide to using JAX for deep learning and other mathematically-intensive applications.

Contributing

Contributions welcome! Read the contribution guidelines first.

About

JAX - A curated list of resources https://github.com/google/jax

Resources

License

Code of conduct

Contributing

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published