A Machine Learning based Hard Fault Recuperation Model for Approximate Hardware Accelerators

Farah Naz Taher, Joseph Callenes-Sloan, Benjamin Carrión Schäfer
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引用次数: 4

Abstract

Continuous pursuit of higher performance and energy efficiency has led to heterogeneous SoC that contains multiple dedicated hardware accelerators. These accelerators exploit the inherent parallelism of tasks and are often tolerant to inaccuracies in their outputs, e.g. image and digital signal processing applications. At the same time, permanent faults are escalating due to process scaling and power restrictions, leading to erroneous outputs. To address this issue, in this paper, we propose a low-cost, universal fault-recovery/repair method that utilizes supervised machine learning techniques to ameliorate the effect of permanent fault(s) in hardware accelerators that can tolerate inexact outputs. The proposed compensation model does not require any information about the accelerator and is highly scalable with low area overhead. Experimental results show, the proposed method improves the accuracy by 50% and decreases the overall mean error rate by 90% with an area overhead of 5% compared to execution without fault compensation.
基于机器学习的近似硬件加速器硬故障恢复模型
对更高性能和能效的不断追求导致了包含多个专用硬件加速器的异构SoC。这些加速器利用任务的固有并行性,并且通常容忍输出中的不准确性,例如图像和数字信号处理应用。同时,由于过程缩放和功率限制,永久性故障正在升级,导致错误输出。为了解决这个问题,在本文中,我们提出了一种低成本、通用的故障恢复/修复方法,该方法利用监督机器学习技术来改善硬件加速器中可以容忍不精确输出的永久故障的影响。所提出的补偿模型不需要任何关于加速器的信息,并且具有低面积开销的高度可扩展性。实验结果表明,该方法与无故障补偿相比,准确率提高了50%,总体平均错误率降低了90%,面积开销仅为5%。
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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