Evaluating Asynchronous Parallel I/O on HPC Systems

J. Ravi, S. Byna, Q. Koziol, Houjun Tang, M. Becchi
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Abstract

Parallel I/O is an effective method to optimize data movement between memory and storage for many scientific applications. Poor performance of traditional disk-based file systems has led to the design of I/O libraries which take advantage of faster memory layers, such as on-node memory, present in high-performance computing (HPC) systems. By allowing caching and prefetching of data for applications alternating computation and I/O phases, a faster memory layer also provides opportunities for hiding the latency of I/O phases by overlapping them with computation phases, a technique called asynchronous I/O. Since asynchronous parallel I/O in HPC systems is still in the initial stages of development, there hasn't been a systematic study of the factors affecting its performance.In this paper, we perform a systematic study of various factors affecting the performance and efficacy of asynchronous I/O, we develop a performance model to estimate the aggregate I/O bandwidth achievable by iterative applications using synchronous and asynchronous I/O based on past observations, and we evaluate the performance of the recently developed asynchronous I/O feature of a parallel I/O library (HDF5) using benchmarks and real-world science applications. Our study covers parallel file systems on two large-scale HPC systems: Summit and Cori, the former with a GPFS storage and the latter with a Lustre parallel file system.
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在高性能计算系统上评估异步并行I/O
对于许多科学应用来说,并行I/O是优化内存和存储之间数据移动的有效方法。传统的基于磁盘的文件系统性能不佳,导致I/O库的设计利用了高性能计算(HPC)系统中存在的更快的内存层,例如节点上内存。通过允许应用程序交替进行计算和I/O阶段的数据缓存和预取,更快的内存层还提供了通过与计算阶段重叠来隐藏I/O阶段延迟的机会,这种技术称为异步I/O。由于高性能计算系统中的异步并行I/O还处于发展的初级阶段,目前还没有对其性能影响因素进行系统的研究。在本文中,我们对影响异步I/O性能和效率的各种因素进行了系统的研究,我们开发了一个性能模型,以估计使用同步和异步I/O的迭代应用程序可以实现的总I/O带宽,并使用基准测试和现实世界的科学应用程序评估了最近开发的并行I/O库(HDF5)的异步I/O特性的性能。我们的研究涵盖了两个大型HPC系统上的并行文件系统:Summit和Cori,前者使用GPFS存储,后者使用Lustre并行文件系统。
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