A high-performance, zero-overhead, extensible Python compiler with built-in NumPy support
-
Updated
Jun 16, 2025 - Python
A high-performance, zero-overhead, extensible Python compiler with built-in NumPy support
Scalene: a high-performance, high-precision CPU, GPU, and memory profiler for Python with AI-powered optimization proposals
Computations and statistics on manifolds with geometric structures.
Implementation of a Transformer, but completely in Triton
Fast deterministic all-Python Lennard-Jones particle simulator that utilizes Numba for GPU-accelerated computation.
Implementation of the Apriori and Eclat algorithms, two of the best-known basic algorithms for mining frequent item sets in a set of transactions, implementation in Python.
Boilerplate for GPU-Accelerated TensorFlow and PyTorch code on M1 Macbook
🌟 Vertex Centric approach for building GNN/TGNNs
pyCUDA implementation of forward propagation for Convolutional Neural Networks
Fundamentals of heterogeneous parallel programming with CUDA C/C++ at the beginner level.
bilibili视频【CUDA 12.x 并行编程入门(Python版)】配套代码
vgg16 inference implementation using tensorflow, numpy and pycuda
A package to run commands when GPU resources are available
A helper package to easily time Numba CUDA GPU events ⌛
Simplify GPU Setup: Drivers, CUDA, Frameworks, and more!
Real-time object detection app using YOLOv5/YOLOv8 with custom UI built from scratch using Pyglet & OpenGL. UI animations made in Adobe After Effects, rendered as GIFs, and integrated via uxElements.py. Multi-core processing enables live capture, detection, and display with low latency. Uses Open Images v7 dataset. Train mode is WIP.
CUDA accelerated raytracer using PyCUDA in Python
Smart weekly planner with auto-scheduling and Google Calendar integration
A Bifrost plug-in for the Tensor-Core Correlator.
Project for the Parallel and Concurrent Programming course 2023/2024
Add a description, image, and links to the gpu-programming topic page so that developers can more easily learn about it.
To associate your repository with the gpu-programming topic, visit your repo's landing page and select "manage topics."