CUDA Core Compute Libraries
-
Updated
Nov 15, 2024 - C++
CUDA Core Compute Libraries
Finite Field Operations on GPGPU
Written by Sem Kirkels, Nathan Bruggeman and Axel Vanherle. Grayscales an image, applies convolution, maximum pooling and minimum pooling.
Fundamentals of Accelerated Computing C/C++ is a course provided by NVIDIA.
My solutions for NVIDIA course Fundamentals of Accelerated Computing with CUDA C/C++
Paperspace CORE API Documentation
Based on Baidu's Edge Board, Accelerate Yolov3 model inference using NPU.
Based on Baidu's Edge Board, Accelerate Resnet model inference using NPU.
Parallelism standards for accelerating performance on calculations for detection of positive DNA selection
The project aims to optimize the Dynamic Time Warping (DTW) algorithm and accelerate it using Graphics Processing Units (GPUs), So that algorithm can be executed in a GPU-equipped laptop or a GPU-equipped embedded device like NVIDIA Jetson, rather than connecting to a massive server.
This repository contains an advanced tutorial on optimizing Python code for machine learning applications, focusing on processing large amounts of data efficiently. It covers three powerful libraries: Numba, NumPy, and Polars.
Based on Baidu's Edge Board, Accelerate HRNet model inference using NPU.
Talks and Presentations on Deep Learning principles,models and architectures
Advance Statistical Computing, 2019, Seoul National University
Fundamental tools and techniques for running GPU-accelerated Python applications using CUDA® GPUs and the Numba compiler.
Add a description, image, and links to the accelerated-computing topic page so that developers can more easily learn about it.
To associate your repository with the accelerated-computing topic, visit your repo's landing page and select "manage topics."