用于性能优化的PIDX并行I/O的表征和建模

Sidharth Kumar, A. Saha, V. Vishwanath, P. Carns, John A. Schmidt, G. Scorzelli, H. Kolla, R. Grout, R. Latham, R. Ross, M. Papka, Jacqueline H. Chen, Valerio Pascucci
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引用次数: 26

摘要

并行I/O库的性能随着用户可调参数值(如聚合器计数、文件计数和聚合策略)的变化而变化很大。不幸的是,手动选择这些值非常耗时,并且依赖于目标机器、底层文件系统和数据集本身的特征。某些特性,例如每个内核的内存量,也可能对可行参数值的范围施加硬约束。在这项工作中,我们通过使用机器学习技术来模拟PIDX并行I/O库的性能并选择适当的可调参数值来解决这些问题。我们描述了Cray XE6和IBM Blue Gene/P系统上PIDX的网络和I/O阶段。我们利用这项研究的结果开发了一个用于参数空间探索和性能预测的机器学习模型。
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Characterization and modeling of PIDX parallel I/O for performance optimization
Parallel I/O library performance can vary greatly in response to user-tunable parameter values such as aggregator count, file count, and aggregation strategy. Unfortunately, manual selection of these values is time consuming and dependent on characteristics of the target machine, the underlying file system, and the dataset itself. Some characteristics, such as the amount of memory per core, can also impose hard constraints on the range of viable parameter values. In this work we address these problems by using machine learning techniques to model the performance of the PIDX parallel I/O library and select appropriate tunable parameter values. We characterize both the network and I/O phases of PIDX on a Cray XE6 as well as an IBM Blue Gene/P system. We use the results of this study to develop a machine learning model for parameter space exploration and performance prediction.
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