- How to Adjust X and Y Axis Scale in Arduino Serial Plotter (No Extra Software Needed)Posted 2 months ago
- Elettronici Entusiasti: Inspiring Makers at Maker Faire Rome 2024Posted 2 months ago
- makeITcircular 2024 content launched – Part of Maker Faire Rome 2024Posted 5 months ago
- Application For Maker Faire Rome 2024: Deadline June 20thPosted 6 months ago
- Building a 3D Digital Clock with ArduinoPosted 11 months ago
- Creating a controller for Minecraft with realistic body movements using ArduinoPosted 12 months ago
- Snowflake with ArduinoPosted 12 months ago
- Holographic Christmas TreePosted 12 months ago
- Segstick: Build Your Own Self-Balancing Vehicle in Just 2 Days with ArduinoPosted 1 year ago
- ZSWatch: An Open-Source Smartwatch Project Based on the Zephyr Operating SystemPosted 1 year ago
Nvidia Deep Learning Accelerator Will Be Integrated into Arm’s Machine Learning Platform
Nvidia and Arm have announced their new partnership to bring deep learning inferencing to the billions of mobile, consumer electronics, and internet of things devices, just few days ago.
Based on Nvidia’s Xavier AI chip, the autonomous machine system on a chip, Nvidia Deep Learning Accelerator (NVDLA) is a free and open architecture to promote a standard way of designing deep learning inference accelerators. Arm and Nvidia aim to integrate NVDLA architecture into Arm’s Project Trillium platform for machine learning.
The partnership will make it simple for IoT chip companies to integrate AI into their designs and help put intelligent, affordable products into the hands of billions of consumers worldwide.
“This is a win/win for IoT, mobile and embedded chip companies looking to design accelerated AI inferencing solutions,” said Karl Freund, lead analyst for deep learning at Moor Insights & Strategy. “NVIDIA is the clear leader in ML training and Arm is the leader in IoT end points, so it makes a lot of sense for them to partner on IP.”
The integration of NVDLA with Project Trillium will give deep learning developers high levels of performance as they leverage Arm’s flexibility and scalability across a wide range of IoT devices.