Online optimization in the Non-Stationary Cloud: Change Point Detection for Resource Provisioning (Invited Paper)

Jessica Maghakian, Joshua Comden, Zhenhua Liu
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引用次数: 2

Abstract

The rapid mainstream adoption of cloud computing and the corresponding spike in the energy usage of big data systems make the efficient management of cloud computing resources a more pressing issue than ever before. To this end, numerous online algorithms such as Receding Horizon Control and Online Balanced Descent have been designed. However it is difficult for cloud service providers to select the best control algorithm dynamically for resource provisioning when confronted with consumer resource demands that are notoriously unpredictable and volatile. Furthermore, it highly possible that it might not be the case for any one algorithm to consistently perform well over the months-long contract period. In this paper, we first exemplify the need to address non-stationarity in cloud computing by showcasing traces from MS Azure. We then develop a novel meta-algorithm that combines change point detection and online optimization. The new algorithm is shown to outperform existing solutions in real-world trace-driven simulations.
非平稳云中的在线优化:资源供应的变化点检测(特邀论文)
云计算的迅速普及和大数据系统能耗的激增使得云计算资源的高效管理比以往任何时候都更加紧迫。为此,人们设计了许多在线算法,如后退地平线控制和在线平衡下降。然而,云服务提供商在面对众所周知的不可预测和不稳定的消费者资源需求时,很难动态地选择最佳的控制算法来提供资源。此外,很有可能没有任何一种算法在长达数月的合同期内始终表现良好。在本文中,我们首先通过展示MS Azure的痕迹来举例说明解决云计算中的非平稳性的必要性。然后,我们开发了一种新的元算法,结合了变化点检测和在线优化。在实际跟踪驱动仿真中,新算法的性能优于现有的解决方案。
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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