检测无声数据损坏的极端规模的MPI应用程序

L. Bautista-Gomez, F. Cappello
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引用次数: 14

摘要

下一代超级计算机预计将拥有更多的组件,同时每次操作消耗的能量要少几倍。这些趋势正将超级计算机的建造推向小型化和节能策略的极限。因此,软错误的数量预计将在未来几年急剧增加。虽然有适当的机制来纠正或至少检测一些软错误,但这些错误中有很大一部分没有被硬件注意到。这种无声的错误极具破坏性,因为它们会使应用程序无声地产生错误的结果。在这项工作中,我们提出了一种技术,利用高性能计算应用程序的某些属性来检测应用程序级别的静默错误。我们的技术仅基于应用程序数据集的行为检测损坏,并且与应用程序无关。我们提出了多个损坏检测器,并将它们耦合起来,以一种对用户透明的方式协同工作。我们证明,这种策略可以检测到80%以上的腐败,而产生的开销不到1%。我们表明,误报率小于1%,当考虑多比特损坏时,检测召回率增加到95%以上。
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Detecting Silent Data Corruption for Extreme-Scale MPI Applications
Next-generation supercomputers are expected to have more components and, at the same time, consume several times less energy per operation. These trends are pushing supercomputer construction to the limits of miniaturization and energy-saving strategies. Consequently, the number of soft errors is expected to increase dramatically in the coming years. While mechanisms are in place to correct or at least detect some soft errors, a significant percentage of those errors pass unnoticed by the hardware. Such silent errors are extremely damaging because they can make applications silently produce wrong results. In this work we propose a technique that leverages certain properties of high-performance computing applications in order to detect silent errors at the application level. Our technique detects corruption based solely on the behavior of the application datasets and is application-agnostic. We propose multiple corruption detectors, and we couple them to work together in a fashion transparent to the user. We demonstrate that this strategy can detect over 80% of corruptions, while incurring less than 1% of overhead. We show that the false positive rate is less than 1% and that when multi-bit corruptions are taken into account, the detection recall increases to over 95%.
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