Repository navigation

#

accelerated-computing

My solutions for NVIDIA course Fundamentals of Accelerated Computing with CUDA C/C++

Cuda
5
2 年前

Fundamentals of Accelerated Computing C/C++ is a course provided by NVIDIA.

Cuda
3
5 年前

Written by Sem Kirkels, Nathan Bruggeman and Axel Vanherle. Grayscales an image, applies convolution, maximum pooling and minimum pooling.

Jupyter Notebook
2
2 年前

Parallelism standards for accelerating performance on calculations for detection of positive DNA selection

C
2
5 个月前

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.

1
2 年前

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.

Jupyter Notebook
1
6 个月前

Advance Statistical Computing, 2019, Seoul National University

Jupyter Notebook
0
2 年前

Fundamental tools and techniques for running GPU-accelerated Python applications using CUDA® GPUs and the Numba compiler.

Jupyter Notebook
0
3 个月前

How to use GPU-accelerated tools to conduct data science faster, leading to more scalable, reliable, and cost-effective results.

Jupyter Notebook
0
3 天前