A hardware-accelerated GPU terminal emulator focusing to run in desktops and browsers.
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Updated
Jun 13, 2024 - Rust
A hardware-accelerated GPU terminal emulator focusing to run in desktops and browsers.
Galactic and Gravitational Dynamics in Python (+ GPU and autodiff)
YUP is an open-source library dedicated to empowering developers with advanced tools for cross-platform application development.
CUDA C++ Core Libraries
Koma is a Pulseq-compatible framework to efficiently simulate Magnetic Resonance Imaging (MRI) acquisitions. The main focus of this package is to simulate general scenarios that could arise in pulse sequence development.
A model-independent chemistry module for atmosphere models
(REOS) Radar and ElectroOptical Simulation Framework written in Fortran.
Stretching GPU performance for GEMMs and tensor contractions.
Package xrt (XRayTracer) is a python software library for ray tracing and wave propagation in x-ray regime. It is primarily meant for modeling synchrotron sources, beamlines and beamline elements.
Safe rust wrapper around CUDA toolkit
TornadoVM: A practical and efficient heterogeneous programming framework for managed languages
Sionna: An Open-Source Library for Next-Generation Physical Layer Research
Bringing heterogenous hardware acceleration to Kotlin machine learning
NVIDIA® TensorRT™ is an SDK for high-performance deep learning inference on NVIDIA GPUs. This repository contains the open source components of TensorRT.
An adaptive mesh hydrodynamics simulation code for low Mach number reacting flows without level sub-cycling.
CHAI and RAJA provide an excellent base on which to build portable codes. CARE expands that functionality, adding new features such as loop fusion capability and a portable interface for many numerical algorithms. It provides all the basics for anyone wanting to write portable code.
A parallel and GPU-accelerated Code for Real-Space All-Electron Linear-Scaling Density Functional Theory
NVIDIA Merlin is an open source library providing end-to-end GPU-accelerated recommender systems, from feature engineering and preprocessing to training deep learning models and running inference in production.
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