大规模气候科学应用的I/O性能分析与改进

Zhuo Liu, Bin Wang, Teng Wang, Yuan Tian, Cong Xu, Yandong Wang, Weikuan Yu, Carlos A. Cruz, Shujia Zhou, T. Clune, S. Klasky
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引用次数: 21

摘要

百亿亿次计算系统即将出现,这将对计算和I/O性能之间的巨大差距提出巨大的挑战。许多大规模的科学应用在我们的日常生活中起着重要的作用。这些应用程序生成的大量数据需要高度并行和高效的I/O管理策略。在本文中,我们采用关键任务科学应用程序GEOS-5作为案例来分析和分析通信和I/O问题,这些问题阻碍了应用程序充分利用底层并行存储系统。通过详细的体系结构和实验表征,我们观察到当前的传统I/O方案会产生大量的网络通信开销,并且无法完全并行化数据访问,从而降低了应用程序的I/O性能和可伸缩性。为了解决这些低效率问题,我们重新设计了它的I/O框架以及一组并行I/O技术,以实现高可伸缩性和高性能。在NASA发现集群上的评估结果表明,采用ADIOS对GEOS-5进行优化后,与原来的GEOS-5实现相比,性能有了显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Profiling and Improving I/O Performance of a Large-Scale Climate Scientific Application
Exascale computing systems are soon to emerge, which will pose great challenges on the huge gap between computing and I/O performance. Many large-scale scientific applications play an important role in our daily life. The huge amounts of data generated by such applications require highly parallel and efficient I/O management policies. In this paper, we adopt a mission-critical scientific application, GEOS-5, as a case to profile and analyze the communication and I/O issues that are preventing applications from fully utilizing the underlying parallel storage systems. Through in-detail architectural and experimental characterization, we observe that current legacy I/O schemes incur significant network communication overheads and are unable to fully parallelize the data access, thus degrading applications' I/O performance and scalability. To address these inefficiencies, we redesign its I/O framework along with a set of parallel I/O techniques to achieve high scalability and performance. Evaluation results on the NASA discover cluster show that our optimization of GEOS- 5 with ADIOS has led to significant performance improvements compared to the original GEOS-5 implementation.
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