Automated Hardening of Deep Neural Network Architectures

Michael Beyer, Christoph Schorn, T. Fabarisov, A. Morozov, K. Janschek
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引用次数: 1

Abstract

Designing optimal neural network (NN) architectures is a difficult and time-consuming task, especially when error resiliency and hardware efficiency are considered simultaneously. In our paper, we extend neural architecture search (NAS) to also optimize a NN’s error resilience and hardware related metrics in addition to classification accuarcy. To this end, we consider the error sensitivity of a NN on the architecture-level during NAS and additionally incorporate checksums into the network as an external error detection mechanism. With an additional computational overhead as low as 17% for the discovered architectures, checksums are an efficient method to effectively enhance the error resilience of NNs. Furthermore, the results show that cell-based NN architectures are able to maintain their error resilience characteristics when transferred to other tasks.
深度神经网络架构的自动强化
设计最优的神经网络(NN)架构是一项困难且耗时的任务,特别是在同时考虑错误弹性和硬件效率的情况下。在我们的论文中,我们扩展了神经结构搜索(NAS),除了分类精度之外,还优化了神经网络的错误恢复能力和硬件相关指标。为此,我们在NAS过程中考虑了NN在体系结构级别上的错误敏感性,并将校验和作为外部错误检测机制纳入网络。由于所发现的体系结构的额外计算开销低至17%,校验和是一种有效增强神经网络容错性的有效方法。此外,结果表明,基于细胞的神经网络架构在转移到其他任务时能够保持其错误弹性特性。
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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