ProRenaTa: Proactive and Reactive Tuning to Scale a Distributed Storage System

Y. Liu, N. Rameshan, Enric Monte-Moreno, Vladimir Vlassov, Leandro Navarro-Moldes
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引用次数: 20

Abstract

Provisioning tasteful services in the Cloud that guarantees high quality of service with reduced hosting cost is challenging to achieve. There are two typical auto-scaling approaches: predictive and reactive. A prediction based controller leaves the system enough time to react to workload changes while a feedback based controller scales the system with better accuracy. In this paper, we show the limitations of using a proactive or reactive approach in isolation to scale a tasteful system and the overhead involved. To overcome the limitations, we implement an elasticity controller, ProRenaTa, which combines both reactive and proactive approaches to leverage on their respective advantages and also implements a data migration model to handle the scaling overhead. We show that the combination of reactive and proactive approaches outperforms the state of the art approaches. Our experiments with Wikipedia workload trace indicate that ProRenaTa guarantees a high level of SLA commitments while improving the overall resource utilization.
ProRenaTa:扩展分布式存储系统的主动和被动调优
在云中提供有品位的服务,以降低托管成本来保证高质量的服务,这是一项具有挑战性的任务。有两种典型的自动扩展方法:预测性和响应性。基于预测的控制器使系统有足够的时间对工作负载的变化作出反应,而基于反馈的控制器则以更好的精度扩展系统。在本文中,我们展示了单独使用主动或被动方法来扩展一个有品位的系统的局限性以及所涉及的开销。为了克服这些限制,我们实现了一个弹性控制器ProRenaTa,它结合了被动和主动方法来利用各自的优势,还实现了一个数据迁移模型来处理扩展开销。我们表明,反应性和主动性方法的结合优于最先进的方法。我们对Wikipedia工作负载跟踪的实验表明,ProRenaTa在提高整体资源利用率的同时保证了高水平的SLA承诺。
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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