Fine-Tuning Surrogate Gradient Learning for Optimal Hardware Performance in Spiking Neural Networks
February 09, 2024 ยท Declared Dead ยท ๐ Design, Automation and Test in Europe
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Authors
Ilkin Aliyev, Tosiron Adegbija
arXiv ID
2402.06211
Category
cs.NE: Neural & Evolutionary
Citations
5
Venue
Design, Automation and Test in Europe
Last Checked
4 months ago
Abstract
The highly sparse activations in Spiking Neural Networks (SNNs) can provide tremendous energy efficiency benefits when carefully exploited in hardware. The behavior of sparsity in SNNs is uniquely shaped by the dataset and training hyperparameters. This work reveals novel insights into the impacts of training on hardware performance. Specifically, we explore the trade-offs between model accuracy and hardware efficiency. We focus on three key hyperparameters: surrogate gradient functions, beta, and membrane threshold. Results on an FPGA-based hardware platform show that the fast sigmoid surrogate function yields a lower firing rate with similar accuracy compared to the arctangent surrogate on the SVHN dataset. Furthermore, by cross-sweeping the beta and membrane threshold hyperparameters, we can achieve a 48% reduction in hardware-based inference latency with only 2.88% trade-off in inference accuracy compared to the default setting. Overall, this study highlights the importance of fine-tuning model hyperparameters as crucial for designing efficient SNN hardware accelerators, evidenced by the fine-tuned model achieving a 1.72x improvement in accelerator efficiency (FPS/W) compared to the most recent work.
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