A simple automatic differentiation library in Rust.
-
Updated
Mar 3, 2023 - Rust
A simple automatic differentiation library in Rust.
Complex Numbers for Algorithmic Differentiation
A GPU-parallel Java automatic differentiation computational graph implementation.
Repo containing jax based covariant lyapunov vector calculation
A simple and pythonic deep learning framework
Automatic differentiation for Fortran
Numerical Algorithms and Their Implementation
Solution of Simply Supported Rectangular Plates under Sinusoidal Load using Automatic Differentiation
Computation of greeks on an option basket with automatic differentiation
Differentiable interface to Firedrake for JAX
A high-performance library for gradient based quantum optimal control
Simple Deep Learning library in Rust based on ndarray.
A prototypical, experimental framework to define and execute computational graph to train neural networks.
A simple automatic differentiation library written in Go
A pedagogical implementation of Automatic Differation on multi-dimensional tensors.
AD with Enzyme through Lulesh.
A pure-Python, PyTorch-like automatic differentiation library for education.
Like torch, but rather than seeing the light, you get burnt.
Gograd is a small automatic differentiation framework written in Go.
Mercury library for automatic differentiation
Add a description, image, and links to the automatic-differentiation topic page so that developers can more easily learn about it.
To associate your repository with the automatic-differentiation topic, visit your repo's landing page and select "manage topics."