Lightweight Armoury Crate alternative for Asus laptops and ROG Ally. Control tool for ROG Zephyrus G14, G15, G16, M16, Flow X13, Flow X16, TUF, Strix, Scar and other models
-
Updated
Oct 1, 2024 - C#
Lightweight Armoury Crate alternative for Asus laptops and ROG Ally. Control tool for ROG Zephyrus G14, G15, G16, M16, Flow X13, Flow X16, TUF, Strix, Scar and other models
A .NET library to run C# code in parallel on the GPU through DX12, D2D1, and dynamically generated HLSL compute and pixel shaders, with the goal of making GPU computing easy to use for all .NET developers! 🚀
A High Performance Compute Shader Based Mesh Pathtracer in Unity3d without RT Cores
Bright Wire is an open source machine learning library for .NET with GPU support (via CUDA)
Unity super simple approach for GPU instanced grass (+ occlusion/frustum culling)
Cross platform .NET graphics library
System Analysis Software
Neural Network from scratch in C# with CUDA support
Seq2SeqSharp is a tensor based fast & flexible deep neural network framework written by .NET (C#). It has many highlighted features, such as automatic differentiation, different network types (Transformer, LSTM, BiLSTM and so on), multi-GPUs supported, cross-platforms (Windows, Linux, x86, x64, ARM), multimodal model for text and images and so on.
A library for visually programming on the GPU, built to enable rapid workflows and modular approaches to accelerated graphics, logic and computation.
A .NET library for hardware-accelerated, high performance, immediate mode rendering via Direct2D.
A highly configurable implementation of the Differential Evolution optimization algorithm in C#, optimized for GPU execution using ILGPU. This library provides a flexible framework for configuring mutation, selection, and termination strategies.
Windows native weather app powered by DirectX12 animations
Proof-of-concept implementation of a search engine that uses sparse matrix multiplication to identify the best peptide candidates for a given mass spectrum.
Add a description, image, and links to the gpu topic page so that developers can more easily learn about it.
To associate your repository with the gpu topic, visit your repo's landing page and select "manage topics."