Application-Level Differential Checkpointing for HPC Applications with Dynamic Datasets

Kai Keller, L. Bautista-Gomez
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引用次数: 7

Abstract

High-performance computing (HPC) requires resilience techniques such as checkpointing in order to tolerate failures in supercomputers. As the number of nodes and memory in supercomputers keeps on increasing, the size of checkpoint data also increases dramatically, sometimes causing an I/O bottleneck. Differential checkpointing (dCP) aims to minimize the checkpointing overhead by only writing data differences. This is typically implemented at the memory page level, sometimes complemented with hashing algorithms. However, such a technique is unable to cope with dynamic-size datasets. In this work, we present a novel dCP implementation with a new file format that allows fragmentation of protected datasets in order to support dynamic sizes. We identify dirty data blocks using hash algorithms. In order to evaluate the dCP performance, we ported the HPC applications xPic, LULESH 2.0 and Heat2D and analyze them regarding their potential of reducing I/O with dCP and how this data reduction influences the checkpoint performance. In our experiments, we achieve reductions of up to 62% of the checkpoint time.
具有动态数据集的HPC应用程序的应用级差分检查点
高性能计算(HPC)需要弹性技术,如检查点,以便在超级计算机中容忍故障。随着超级计算机中节点和内存数量的不断增加,检查点数据的大小也会急剧增加,有时会导致I/O瓶颈。差分检查点(dCP)旨在通过只写入数据差异来最小化检查点开销。这通常是在内存页级别实现的,有时还会辅以散列算法。然而,这种技术无法处理动态大小的数据集。在这项工作中,我们提出了一种新的dCP实现,它采用一种新的文件格式,允许对受保护的数据集进行碎片化,以支持动态大小。我们使用散列算法识别脏数据块。为了评估dCP性能,我们移植了HPC应用程序xPic、LULESH 2.0和Heat2D,并分析了它们使用dCP减少I/O的潜力,以及这种数据减少如何影响检查点性能。在我们的实验中,我们减少了高达62%的检查点时间。
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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