Section 01
Introduction: SpikON – An Efficient Co-Design Accelerator for Online Spiking Neural Networks
SpikON is the first algorithm-hardware co-design framework for online supervised learning of Spiking Neural Networks (SNNs). Through techniques like learnable temporal thresholds and cascaded computation reuse, it achieves a 32.2% reduction in training latency and a 35% decrease in energy consumption, while enabling order-of-magnitude improvements in throughput and energy efficiency on edge devices. This project has been accepted by ISLPED 2026, and the code is open-sourced on GitHub (https://github.com/peilin-chen/SpikON).