Named dimensions and indexing for julia arrays and other data
-
Updated
Jun 12, 2024 - Julia
Named dimensions and indexing for julia arrays and other data
Fast CPU and GPU Python implementations of Improved Kernel PLS by Dayal and MacGregor (1997) and Shortcutting Cross-Validation by Engstrøm (2024).
Python Suite for Advanced General Ensemble Simulations
HPC solver for nonlinear optimization problems
Bright Wire is an open source machine learning library for .NET with GPU support (via CUDA)
Providing reproducibility in deep learning frameworks
Geant4 EM physics simulation R&D project looking for solutions to reduce the computing performance bottleneck experienced by HEP detector simulation applications.
This is a sandbox manager developed using Django, providing isolated development environments with a suite of base functions and packages for each user on the same machine by using Docker.
A scheduler for GPU/CPU tasks
Real-time object detection system utilizing the SSD MobileNet V2 FPNLite 320x320 model for high-speed, efficient recognition.
My Video Converter
SERVER: Multi-modal Speech Emotion Recognition using Transformer-based and Vision-based Embeddings
Zero-dependency FFmpeg-based batch framework for repetitive and bulk high-quality transcoding in one click
"A neural network to rule them all, a neural network to find them, a neural network to bring them all and verify if is you !!" (Face recognition tool)
A Folding@Home Docker container with GPU support
Pitch-shift audio clips quickly with PyTorch (CUDA supported)! Additional utilities for searching efficient transformations are included.
Computer Vision And Neural Network with Xamarin
Re-Implementation of Google Research's VGGish model used for extracting audio features using Pytorch with GPU support.
Time-stretch audio clips quickly with PyTorch (CUDA supported)! Additional utilities for searching efficient transformations are included.
Add a description, image, and links to the gpu-support topic page so that developers can more easily learn about it.
To associate your repository with the gpu-support topic, visit your repo's landing page and select "manage topics."