IOScout:一种超级计算机作业I/O特性预测方法

Yuqi Li, Li-Quan Xiao, Jinghua Feng, Jian Zhang, Gang Zheng, Yuan Yuan
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引用次数: 0

摘要

现代百亿亿级超级计算机需要比传统的单共享文件系统更高效的I/O服务,以支持具有不同I/O负载的应用程序。虽然目前的超级计算机可以提供多种存储资源来满足不同的作业I/O需求,但主流的作业调度器需要能够根据作业I/O特征自动分配硬件。作业调度器必须首先预测高性能计算作业的I/O特征,才能启用此功能。然而,传统的I/O特性预测方法使用作业开始后收集的I/O性能指标。I/O通道通常是在开始时为作业构建的,这意味着作业调度器必须在作业开始之前预测I/O特征。本文提出了一种仅利用作业描述信息的超级计算机作业I/O特性预测方法,该信息可以在作业开始前收集,包含文本和数字数据。我们在数据训练过程中解决了不同数据类型的整合问题,并通过模型选择器选择最合适的模型。通过在新一代天河超级计算机上40多天的作业记录验证,该方法的准确率达到80.2%,精密度达到88.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IOScout: an I/O Characteristics Prediction Method for the Supercomputer Jobs
Modern exascale supercomputers require more efficient I/O service than traditional single-shared filesystems can provide to support applications with varying I/O loads. Although current supercomputers can offer multiple storage resources for meeting different job I/O requirements, mainstream job schedulers need the ability to allocate hardware based on job I/O characteristics automatically. Job schedulers must first predict the I/O characteristics of the high-performance computing job to enable this ability. However, the traditional I/O feature prediction method uses I/O performance metrics collected after the job starts. The I/O channels are generally built for the job at the beginning, meaning the job schedulers must predict I/O characteristics before the job starts. This paper proposes an I/O characteristics prediction method for supercomputer jobs using only job description information, which can be collected before the jobs start and contain text and numerical data. We solved the problem of integrating different data types and selected the most suitable model through model selectors during the data training process. The method achieves 80.2% accuracy and 88.6% precision through validation using more than 40 days of job records on the new generation Tianhe supercomputer.
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