deep learning and scientific computing framework with native CPU and GPU backend for the Scala programming language
-
Updated
Jun 9, 2024 - Scala
deep learning and scientific computing framework with native CPU and GPU backend for the Scala programming language
(REOS) Radar and Electro-Optical Simulation Framework written in C++.
Tensors and Dynamic neural networks(NNs) in Python with and without GPU acceleration
A hardware-accelerated GPU terminal emulator focusing to run in desktops and browsers.
Set up GPU passthrough on Debain & Ubuntu hosts.
A 3D render engine from scratch, using CUDA/C++.
Powerful machine learning, accelerated by WebGPU
The primary source code repository for PHCpack, a software package to solve polynomial systems with homotopy continuation methods.
Research and Materials on Hardware implementation of Transformer Model
Raylib 100% GPU particles example in 3D. Uses compute shaders and is fully documented. Millions of particles at 60 fps on a laptop.
YUP is an open-source library dedicated to empowering developers with advanced tools for cross-platform application development.
CUDA C++ Core Libraries
SAGECal is a fast, memory efficient and GPU accelerated radio interferometric calibration program. It supports all source models including points, Gaussians and Shapelets. Distributed calibration using MPI and consensus optimization is enabled. Both spectral and spatial priors can be used as constraints. Tools to build/restore sky models are inc…
A model-independent chemistry module for atmosphere models
Stretching GPU performance for GEMMs and tensor contractions.
An adaptive mesh hydrodynamics simulation code for low Mach number reacting flows without level sub-cycling.
(REOS) Radar and ElectroOptical Simulation Framework written in Fortran.
Saccadic Fast Fourier Transform (SFFT) algorithm for Image subtraction in Fourier space
Sionna: An Open-Source Library for Next-Generation Physical Layer Research
Add a description, image, and links to the gpu-acceleration topic page so that developers can more easily learn about it.
To associate your repository with the gpu-acceleration topic, visit your repo's landing page and select "manage topics."