Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

YouTube

Monostable Multivibrator Networks - Extremely Low Power Inference at the Edge with Timer Neurons

EDGE AI FOUNDATION via YouTube

Overview

Learn about Monostable Multivibrator Networks (MMVs) for edge computing in this technical presentation from imec researcher Lars Keuninckx. Explore how MMV networks can enable extremely low-power inference through timer neurons, with detailed coverage of MMV fundamentals and network timing conditions. Discover the training algorithm that optimizes excitatory/inhibitory connections and MMV periods using surrogate gradient techniques. Examine real-world applications through case studies including Google Soli radar gestures, Heidelberg keyword spotting, IBM DVS-128 gestures, and Yin-Yang symbol segmentation. Gain insights into a fresh perspective on neuromorphic engineering that focuses on leveraging fundamental electronic building blocks rather than strictly mimicking biological neurons. Understand how MMVs implemented through digital hardware counters offer a practical approach to efficient edge computing implementations.

Syllabus

tinyML EMEA - Lars Keuninckx: Monostable Multivibrator Networks: extremely low power inference...

Taught by

EDGE AI FOUNDATION

Reviews

Start your review of Monostable Multivibrator Networks - Extremely Low Power Inference at the Edge with Timer Neurons

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.