Queue Waiting Time Prediction for Large-scale High-performance Computing System

Ju-Won Park
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引用次数: 2

Abstract

Traditionally, high-performance computing (HPC) systems have been extensively utilized in many science fields including big data analysis and machine learning. Such large-scale HPC resources typically use the queue management systems which prefer space-sharing method to allocate resources. In space-sharing method, it is natural that a queue waiting time occurs until the resources are available if resources are not sufficient. When the predicted information on such a waiting time is provided, it is possible to improve the performance of scheduler. For this, in this paper, we propose a prediction method of queue waiting time based on the job log file created in the HPC system actually under operation. The prediction technique presented in this paper largely comprises three phases. The first phase is a pre-processing of data in constant time intervals. In the second phase, major features are selected through a factor analysis and clustering is conducted based on the selected features. In the third phase, a waiting time of the next job is predicted using the sliding window method based on the jobs that were clustered.
大规模高性能计算系统的队列等待时间预测
传统上,高性能计算(HPC)系统已广泛应用于许多科学领域,包括大数据分析和机器学习。这种大规模的高性能计算资源通常使用队列管理系统,而队列管理系统更倾向于采用空间共享的方式来分配资源。在空间共享方法中,如果资源不足,很自然地会出现队列等待时间,直到资源可用为止。当提供了关于这种等待时间的预测信息时,就有可能提高调度器的性能。为此,本文提出了一种基于HPC系统实际运行中生成的作业日志文件的队列等待时间预测方法。本文提出的预测技术主要包括三个阶段。第一阶段是以恒定的时间间隔对数据进行预处理。第二阶段,通过因子分析选择主要特征,并在此基础上进行聚类。在第三阶段,使用滑动窗口方法根据聚集的作业预测下一个作业的等待时间。
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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