ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator
-
Updated
May 21, 2024 - C++
ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator
Level up your video experience with a modern and user-friendly media player.
High-performance, optimized pre-trained template AI application pipelines for systems using Hailo devices
QMPlay2 is a video and audio player which can play most formats and codecs.
Native WebRTC use v4l2 h264 hardware/software encoder on Raspberry Pi
Self-hosted, local only NVR and AI Computer Vision software. With features such as object detection, motion detection, face recognition and more, it gives you the power to keep an eye on your home, office or any other place you want to monitor.
Brevitas: neural network quantization in PyTorch
HW Architecture-Mapping Design Space Exploration Framework for Deep Learning Accelerators
Hardware accelerated OpenCV, Torch & Tensorrt Ubuntu 20.04 docker images for Jetson Nano containing any python version you need up until the latest 3.12
An open source light-weight and high performance inference framework for Hailo devices
The Hailo PCIe driver is required for interacting with a Hailo device over the PCIe interface
💡 Compute and verify the SHA-256 random beacons used in the Zcash MPC ceremonies.
A collection of WebGPU samples.
Innervator: Hardware Acceleration for Artificial Neural Networks in FPGA using VHDL.
Free open-source non-linear video editor
This is my hobby project with System Verilog to accelerate LeViT Network which contain CNN and Attention layer.
Hardware Accelerator design for Euler and Modified method in solving ODE using VHDL language in Xilinx Vivado Environment
This is the code that I used for the measurements I made for my master's thesis for the USB Accelerator Module with Tensor Processing Unit and the Neural Compute Stick 2 with Vision Processing Unit.
Add a description, image, and links to the hardware-acceleration topic page so that developers can more easily learn about it.
To associate your repository with the hardware-acceleration topic, visit your repo's landing page and select "manage topics."