ReSpawn: Energy-Efficient Fault-Tolerance for Spiking Neural Networks considering Unreliable Memories
Rachmad Vidya Wicaksana Putra, Muhammad Abdullah Hanif, Muhammad, Shafique

TL;DR
ReSpawn is a framework that enhances the fault tolerance of spiking neural networks against memory faults, significantly improving accuracy and energy efficiency through fault-aware techniques.
Contribution
It introduces a comprehensive fault-mitigation framework for SNNs, including fault-aware mapping and training, addressing hardware-induced memory faults.
Findings
Up to 70% accuracy improvement with ReSpawn
Effective fault mitigation in both on-chip and off-chip memories
Energy-efficient fault-aware memory mapping
Abstract
Spiking neural networks (SNNs) have shown a potential for having low energy with unsupervised learning capabilities due to their biologically-inspired computation. However, they may suffer from accuracy degradation if their processing is performed under the presence of hardware-induced faults in memories, which can come from manufacturing defects or voltage-induced approximation errors. Since recent works still focus on the fault-modeling and random fault injection in SNNs, the impact of memory faults in SNN hardware architectures on accuracy and the respective fault-mitigation techniques are not thoroughly explored. Toward this, we propose ReSpawn, a novel framework for mitigating the negative impacts of faults in both the off-chip and on-chip memories for resilient and energy-efficient SNNs. The key mechanisms of ReSpawn are: (1) analyzing the fault tolerance of SNNs; and (2)…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Neural dynamics and brain function
