在该领域对gpu软误差进行了大规模研究

Bin Nie, Devesh Tiwari, Saurabh Gupta, E. Smirni, James H. Rogers
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引用次数: 71

摘要

GPU架构提供的并行性使领域科学家能够以比以前基于cpu的大规模集群更快的速度和更细的粒度模拟物理现象。架构研究人员一直在研究gpu的可靠性特性和创新技术,以提高这些新兴计算设备的可靠性。这样的工作通常由技术预测和简单的科学内核指导,并使用体系结构模拟器和建模工具执行。缺乏大规模的实地数据阻碍了这种努力的有效性。本研究试图通过展示GPU可靠性的大规模现场数据分析来弥合这一差距。我们在泰坦超级计算机的GPU节点上对不同类型的软误差进行了表征和量化。我们的研究揭示了一些有趣的和以前未知的关于软错误的特征和影响的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A large-scale study of soft-errors on GPUs in the field
Parallelism provided by the GPU architecture has enabled domain scientists to simulate physical phenomena at a much faster rate and finer granularity than what was previously possible by CPU-based large-scale clusters. Architecture researchers have been investigating reliability characteristics of GPUs and innovating techniques to increase the reliability of these emerging computing devices. Such efforts are often guided by technology projections and simplistic scientific kernels, and performed using architectural simulators and modeling tools. Lack of large-scale field data impedes the effectiveness of such efforts. This study attempts to bridge this gap by presenting a large-scale field data analysis of GPU reliability. We characterize and quantify different kinds of soft-errors on the Titan supercomputer's GPU nodes. Our study uncovers several interesting and previously unknown insights about the characteristics and impact of soft-errors.
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