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Soft error reliability predictor based on a Deep Feedforward Neural Network

机译:基于深度前馈神经网络的软错误可靠性预测器

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Statistical fault injection is a widely used methodology to early evaluation of soft error reliability of microprocessor based systems. Due to the increasing complexity of the software and hardware stack, the simulation of faults on modern processors is becoming a computationally demanding task even for ISA-equivalent models and virtualization tools. This paper proposes and explores the use of a supervised machine learning technique, Deep Feedforward Neural Network, to design a predictor which drastically reduces the computing time of fault injection campaigns. In addition, a novel approach is presented to increase the training data from a limited set of benchmarks. Thanks to this approach, the predictor can be modeled with an extensive data set comprising not only of millions of fault injections but also thousands of different benchmarks. Experiments show promising results for estimating the applications fault tolerance when they run on state of the art ARM processor.
机译:统计故障注入是一种广泛使用的方法,用于早期评估基于微处理器的系统的软错误可靠性。由于软件和硬件堆栈的复杂性越来越高,即使对于与ISA等效的模型和虚拟化工具,现代处理器上的故障仿真也已成为一项计算量巨大的任务。本文提出并探索了一种有监督的机器学习技术,即深度前馈神经网络,以设计一种可大大减少故障注入活动的计算时间的预测器。另外,提出了一种新颖的方法来从一组有限的基准中增加训练数据。由于采用了这种方法,因此可以使用广泛的数据集对预测变量进行建模,该数据集不仅包含数百万个故障注入,而且还包含数以千计的不同基准。实验表明,当应用程序在最先进的ARM处理器上运行时,它们可用于估计应用程序的容错能力。

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