Neuromorphic Engineering Algorithms for Edge ML and Spiking Neural Networks

Neuromorphic Engineering Algorithms for Edge ML and Spiking Neural Networks

tinyML via YouTube Direct link

Spike Activation Map (SAM) for interpretable SNN

7 of 14

7 of 14

Spike Activation Map (SAM) for interpretable SNN

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Neuromorphic Engineering Algorithms for Edge ML and Spiking Neural Networks

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 JOHNS HOPKINS UNIVERSITY
  3. 3 Spiking for tinyML
  4. 4 Batch Normalization Through Time (BNTT) for Temporal Learning
  5. 5 BNTT: Energy Efficiency & Robustness
  6. 6 Training SNNs for edge with heterogeneous demands
  7. 7 Spike Activation Map (SAM) for interpretable SNN
  8. 8 Spiking neurons are binary units with timed outputs
  9. 9 End-to-end training is key for artificial neural networks
  10. 10 Solution: Replace the true gradient with a surrogate gradient
  11. 11 Surrogate gradients self-calibrate neuromorphic systems when they can access the analog substrate variables
  12. 12 Fluctuation-driven initialization and bio-inspired homeostatic plasticity ensure optimal initialization
  13. 13 Holomorphic Equilibrium Propagation Computes Exact Gradients Through Finite Size Oscillations
  14. 14 Technical Program Committee

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.