A set of Docker containers extensively used for both AI/HPC software development and deployment at Unum
-
Updated
Feb 3, 2021 - Dockerfile
A set of Docker containers extensively used for both AI/HPC software development and deployment at Unum
A simple basic illumination ray tracer written in C/CUDA. Spheres, cylinders, cones, planes and triangles implemented. Checkered texture and all colors defined with adjustable specular values. Still working on making mirrors work on the GPU.
CUDA implementations of various Computer Vision Algorithms
CUDA implementation of Floyd-Warshall algorithm
Electro-magnetic field simulation made with CUDA
A Complete beginner's introduction to programming with CUDA Fortran
This repository contains some of my implementations of parallel algorithms on cuda.
SParry is a shortest path calculating Python tool using some algorithms with CUDA to speedup.
Solving the N-Queens problem with OpenMP- and CUDA-implemented approaches (Edinburgh Napier University, Concurrent and Parallel Systems module coursework 2)
Hand-crafted Cuda Canny Edge Detector on top of your webcam feed, using OpenCV, modern CMake and Conan third parties
The Word Frequency program with CUDA project aims to develop an advanced solution for efficiently analyzing the frequency of words in large datasets. The project will leverage NVIDIA's CUDA framework to harness the power of GPUs, surpassing the performance of traditional CPU-based implementations.
Parallelized version of Counting Sort using CUDA
The logistic regression is parallelized with CUDA.
Programme de calcul matriciel utilisant la technologie CUDA de nVidia
GPU Accelerated Path-Tracer (basic prototype)
CUDA C parallel implementation of the Merge operation.
Optimization of Attention layers for efficient inferencing on the CPU and GPU. It covers optimizations for AVX and CUDA also efficient memory processing techniques.
My attempt of making a GEMM kernel...
Add a description, image, and links to the cuda-kernels topic page so that developers can more easily learn about it.
To associate your repository with the cuda-kernels topic, visit your repo's landing page and select "manage topics."