Proactive Management of Systems via Hybrid Analytic Techniques

Ji Xue, Feng Yan, Alma Riska, E. Smirni
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引用次数: 4

Abstract

In today's scaled out systems, co-scheduling data analytics work with high priority user workloads is common as it utilizes better the vast hardware availability. User workloads are dominated by periodic patterns, with alternating periods of high and low utilization, creating promising conditions to schedule data analytics work during low activity periods. To this end, we show the effectiveness of machine learning models in accurately predicting user workload intensities, essentially by suggesting the most opportune time to co-schedule data analytics work. Yet, machine learning models cannot predict the effects of performance interference when co-scheduling is employed, as this constitutes a "new" observation. Specifically, in tiered storage systems, their hierarchical design makes performance interference even more complex, thus accurate performance prediction is more challenging. Here, we quantify the unknown performance effects of workload co-scheduling by enhancing machine learning models with queuing theory ones to develop a hybrid approach that can accurately predict performance and guide scheduling decisions in a tiered storage system. Using traces from commercial systems we illustrate that queuing theory and machine learning models can be used in synergy to surpass their respective weaknesses and deliver robust co-scheduling solutions that achieve high performance.
通过混合分析技术的系统主动管理
在当今的横向扩展系统中,对高优先级用户工作负载进行协同调度的数据分析工作很常见,因为它可以更好地利用大量硬件可用性。用户工作负载由周期性模式主导,具有交替的高利用率和低利用率,这为在低活动期间安排数据分析工作创造了良好的条件。为此,我们展示了机器学习模型在准确预测用户工作负载强度方面的有效性,主要是通过建议最合适的时间来共同安排数据分析工作。然而,当采用协同调度时,机器学习模型无法预测性能干扰的影响,因为这构成了一个“新的”观察。具体来说,在分级存储系统中,其分层设计使得性能干扰更加复杂,因此准确的性能预测更具挑战性。在这里,我们通过增强机器学习模型和排队论模型来量化工作负载协同调度的未知性能影响,从而开发出一种混合方法,可以准确预测性能并指导分级存储系统中的调度决策。利用商业系统的痕迹,我们说明了排队理论和机器学习模型可以协同使用,以超越各自的弱点,并提供实现高性能的鲁棒协同调度解决方案。
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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