VeloC: Towards High Performance Adaptive Asynchronous Checkpointing at Large Scale

Bogdan Nicolae, A. Moody, Elsa Gonsiorowski, K. Mohror, F. Cappello
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引用次数: 49

Abstract

Global checkpointing to external storage (e.g., a parallel file system) is a common I/O pattern of many HPC applications. However, given the limited I/O throughput of external storage, global checkpointing can often lead to I/O bottlenecks. To address this issue, a shift from synchronous checkpointing (i.e., blocking until writes have finished) to asynchronous checkpointing (i.e., writing to faster local storage and flushing to external storage in the background) is increasingly being adopted. However, with rising core count per node and heterogeneity of both local and external storage, it is non trivial to design efficient asynchronous checkpointing mechanisms due to the complex interplay between high concurrency and I/O performance variability at both the node-local and global levels. This problem is not well understood but highly important for modern supercomputing infrastructures. This paper proposes a versatile asynchronous checkpointing solution that addresses this problem. To this end, we introduce a concurrency-optimized technique that combines performance modeling with lightweight monitoring to make informed decisions about what local storage devices to use in order to dynamically adapt to background flushes and reduce the checkpointing overhead. We illustrate this technique using the VeloC prototype. Extensive experiments on a pre-Exascale supercomputing system show significant benefits.
VeloC:迈向大规模高性能自适应异步检查点
指向外部存储(例如,并行文件系统)的全局检查点是许多HPC应用程序的常见I/O模式。但是,由于外部存储的I/O吞吐量有限,全局检查点通常会导致I/O瓶颈。为了解决这个问题,越来越多的人开始采用从同步检查点(即,在写入完成之前阻塞)到异步检查点(即,写入更快的本地存储并在后台刷新到外部存储)的转变。然而,随着每个节点核心数的增加以及本地和外部存储的异构性,由于节点本地和全局级别的高并发性和I/O性能可变性之间复杂的相互作用,设计有效的异步检查点机制是非常重要的。这个问题还没有被很好地理解,但对现代超级计算基础设施非常重要。本文提出了一个通用的异步检查点解决方案来解决这个问题。为此,我们引入了一种并发优化技术,该技术将性能建模与轻量级监控相结合,以便对使用哪些本地存储设备做出明智的决策,从而动态地适应后台刷新并减少检查点开销。我们使用VeloC原型来说明这种技术。在前百亿亿次超级计算系统上进行的大量实验显示了显著的好处。
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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