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