D. Sabena, M. Reorda, L. Sterpone, P. Rech, L. Carro
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引用次数: 20
摘要
最近,通用图形处理单元(General Purpose Graphic Processing unit, gpgpu)已经开始在一些计算密集型的应用中比cpu更受青睐,这些应用不一定与计算机图形学相关。然而,由于其复杂性,gpgpu对软误差也表现出相对较高的敏感性。因此,人们对设计和应用软件技术很感兴趣,这些软件技术能够通过仅作用于已执行的代码来利用它们的计算能力。本文报告了采用两种不同的软件冗余技术进行软错误检测的初步结果;这些技术是完全独立于算法的,并已应用于运行在商用现成GPGPU上的示例应用程序。结果是通过中子测试活动收集的。给出了一些实验结果,说明了该方法的能力,并对其进行了评论。
On the evaluation of soft-errors detection techniques for GPGPUs
Recently, General Purpose Graphic Processing Units (GPGPUs) have begun to be preferred to CPUs for several computationally intensive applications, not necessarily related to computer graphics. However, due to their complexity GPGPUs also show a relatively high sensitivity to soft errors. Hence, there is some interest in devising and applying software techniques able to exploit their computational power by just acting on the executed code. In this paper we report some preliminary results obtained by applying two different software redundancy techniques aimed at soft-error detection; these techniques are completely algorithm independent, and have been applied on a sample application running on a Commercial-Off-The-Shelf GPGPU. The results have been gathered resorting to a neutron testing campaign. Some experimental results, explaining the capabilities of the methods, are presented and commented.