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Predictive performance modeling for distributed batch processing using black box monitoring and machine learning

机译:使用黑匣子监视和机器学习进行分布式批处理的预测性能建模

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摘要

In many domains, the previous decade was characterized by increasing data volumes and growing complexity of data analyses, creating new demands for batch processing on distributed systems. Effective operation of these systems is challenging when facing uncertainties about the performance of jobs and tasks under varying resource configurations, e.g., for scheduling and resource allocation. We survey predictive performance modeling (PPM) approaches to estimate performance metrics such as execution duration, required memory or wait times of future jobs and tasks based on past performance observations. We focus on non-intrusive methods, i. e., methods that can be applied to any workload without modification, since the workload is usually a black box from the perspective of the systems managing the computational infrastructure. We classify and compare sources of performance variation, predicted performance metrics, limitations and challenges, required training data, use cases, and the underlying prediction techniques. We conclude by identifying several open problems and pressing research needs in the field. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在许多领域中,前十年的特点是数据量增加和数据分析的复杂性不断提高,从而对分布式系统上的批处理提出了新的要求。当面对在可变资源配置(例如,调度和资源分配)下作业和任务性能的不确定性时,这些系统的有效操作具有挑战性。我们调查预测性能建模(PPM)方法,以根据过去的性能观察来估计性能指标,例如执行持续时间,所需的内存或未来作业和任务的等待时间。我们专注于非侵入性方法,即。例如,无需修改即可应用于任何工作负载的方法,因为从管理计算基础结构的系统的角度来看,工作负载通常是一个黑匣子。我们对性能变化的来源,预测的性能指标,局限性和挑战,所需的培训数据,用例以及潜在的预测技术进行分类和比较。最后,我们找出一些未解决的问题并紧迫该领域的研究需求。 (C)2019 Elsevier Ltd.保留所有权利。

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