A Low-cost Fault Corrector for Deep Neural Networks through Range Restriction

Zitao Chen, Guanpeng Li, K. Pattabiraman
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引用次数: 57

Abstract

The adoption of deep neural networks (DNNs) in safety-critical domains has engendered serious reliability concerns. A prominent example is hardware transient faults that are growing in frequency due to the progressive technology scaling, and can lead to failures in DNNs. This work proposes Ranger, a low-cost fault corrector, which directly rectifies the faulty output due to transient faults without re-computation. DNNs are inherently resilient to benign faults (which will not cause output corruption), but not to critical faults (which can result in erroneous output). Ranger is an automated transformation to selectively restrict the value ranges in DNNs, which reduces the large deviations caused by critical faults and transforms them to benign faults that can be tolerated by the inherent resilience of the DNNs. Our evaluation on 8 DNNs demonstrates Ranger significantly increases the error resilience of the DNNs (by 3x to 50x), with no loss in accuracy, and with negligible overheads.
通过范围限制为深度神经网络设计低成本纠错器
在安全关键领域采用深度神经网络(DNN)引起了严重的可靠性问题。一个突出的例子是硬件瞬态故障,由于技术的逐步升级,这种故障越来越频繁,可能导致 DNN 出现故障。本研究提出了一种低成本故障校正器 Ranger,它可以直接校正瞬态故障导致的故障输出,而无需重新计算。DNN 本身能抵御良性故障(不会导致输出损坏),但无法抵御严重故障(可能导致错误输出)。Ranger 是一种自动转换,可选择性地限制 DNN 的取值范围,从而减少临界故障造成的较大偏差,并将其转换为 DNN 固有弹性可容忍的良性故障。我们在 8 个 DNN 上进行的评估表明,Ranger 显著提高了 DNN 的抗错能力(提高了 3 至 50 倍),而准确性没有任何损失,开销几乎可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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