Learning from Failure Across Multiple Clusters: A Trace-Driven Approach to Understanding, Predicting, and Mitigating Job Terminations

Nosayba El-Sayed, Hongyu Zhu, Bianca Schroeder
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引用次数: 52

Abstract

In large-scale computing platforms, jobs are prone to interruptions and premature terminations, limiting their usability and leading to significant waste in cluster resources. In this paper, we tackle this problem in three steps. First, we provide a comprehensive study based on log data from multiple large-scale production systems to identify patterns in the behaviour of unsuccessful jobs across different clusters and investigate possible root causes behind job termination. Our results reveal several interesting properties that distinguish unsuccessful jobs from others, particularly w.r.t. resource consumption patterns and job configuration settings. Secondly, we design a machine learning-based framework for predicting job and task terminations. We show that job failures can be predicted relatively early with high precision and recall, and also identify attributes that have strong predictive power of job failure. Finally, we demonstrate in a concrete use case how our prediction framework can be used to mitigate the effect of unsuccessful execution using an effective task-cloning policy that we propose.
从多个集群的失败中学习:一种跟踪驱动的方法来理解、预测和减轻作业终止
在大规模计算平台中,作业容易中断和过早终止,限制了它们的可用性,并导致集群资源的大量浪费。在本文中,我们分三步来解决这个问题。首先,我们基于来自多个大型生产系统的日志数据进行了全面的研究,以确定不同集群中不成功作业的行为模式,并调查作业终止背后可能的根本原因。我们的结果揭示了几个有趣的属性,这些属性将不成功的作业与其他作业区分开来,特别是w.r.t.资源消耗模式和作业配置设置。其次,我们设计了一个基于机器学习的框架来预测作业和任务的终止。我们发现工作失败可以相对较早地预测,具有较高的精度和召回率,并且还可以识别对工作失败具有强预测能力的属性。最后,我们在一个具体的用例中演示了如何使用我们提出的有效的任务克隆策略来使用我们的预测框架来减轻执行失败的影响。
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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