零开销下瞬态故障感知设计与训练提高深度神经网络可靠性

Niccolo Cavagnero, F. Santos, Marco Ciccone, Giuseppe Averta, T. Tommasi, P. Rech
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引用次数: 6

摘要

深度神经网络(dnn)实现了一系列广泛的技术进步,从临床成像到预测性工业维护和自动驾驶。然而,最近的研究表明,瞬态硬件故障可能会严重破坏模型的预测。例如,辐射引起的错误预测概率非常高,阻碍了dnn模型的大规模安全部署,迫切需要高效有效的强化解决方案。在这项工作中,我们建议在训练和模型设计时解决可靠性问题。首先,我们证明了香草模型受到瞬态故障的高度影响,这可能导致性能下降高达37%。因此,我们提供了三种基于深度神经网络重新设计和重新训练的零开销解决方案,可以将深度神经网络对瞬态故障的可靠性提高到一个数量级。我们通过广泛的烧蚀研究来补充我们的工作,以量化每种硬化成分的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transient-Fault-Aware Design and Training to Enhance DNNs Reliability with Zero-Overhead
Deep Neural Networks (DNNs) enable a wide series of technological advancements, ranging from clinical imaging, to predictive industrial maintenance and autonomous driving. However, recent findings indicate that transient hardware faults may corrupt the models prediction dramatically. For instance, the radiation-induced misprediction probability can be so high to impede a safe deployment of DNNs models at scale, urging the need for efficient and effective hardening solutions. In this work, we propose to tackle the reliability issue both at training and model design time. First, we show that vanilla models are highly affected by transient faults, that can induce a performances drop up to 37%. Hence, we provide three zero-overhead solutions, based on DNN re-design and re-train, that can improve DNNs reliability to transient faults up to one order of magnitude. We complement our work with extensive ablation studies to quantify the gain in performances of each hardening component.
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