Burn is a new comprehensive dynamic Deep Learning Framework built using Rust with extreme flexibility, compute efficiency and portability as its primary goals.
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Updated
Jun 28, 2024 - Rust
Burn is a new comprehensive dynamic Deep Learning Framework built using Rust with extreme flexibility, compute efficiency and portability as its primary goals.
A Rust machine learning framework.
ndarray: an N-dimensional array with array views, multidimensional slicing, and efficient operations
Shadow is a discrete-event network simulator that directly executes real application code, enabling you to simulate distributed systems with thousands of network-connected processes in realistic and scalable private network experiments using your laptop, desktop, or server running Linux.
OpenCL for Rust
A comprehensive library for machine learning and numerical computing. The library provides a set of tools for linear algebra, numerical computing, optimization, and enables a generic, powerful yet still efficient approach to machine learning.
Rust numeric library with R, MATLAB & Python syntax
A linear algebra library written in Rust
Statistical routines for ndarray
Rust Scientific Libary. ODE and DAE (Runge-Kutta) solvers. Special functions (Bessel, Elliptic, Beta, Gamma, Erf). Linear algebra. Sparse solvers (MUMPS, UMFPACK). Probability distributions. Tensor calculus.
Read & decompress many chunks of files at high speed
Fast stochastic simulator for chemical reaction networks
Multivariable calculus in pure rust
A Lisp for Scientific Computing written in Rust
Parallelized 3D FDTD Schrödinger Equation Solver
Implementation of the Reference Interaction-Site Model (RISM) equation
IonSolver is a magnetohydrodynamic simulation software featuring an extended Lattice Boltzmann method and GPU acceleration
➗ Powerful math library for Deno (WIP)
Machine learning crate in Rust
Automated mesher for turbomachinery applications
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