Cost Reduction Bounds of Proactive Management Based on Request Prediction

R. Milocco, P. Minet, É. Renault, S. Boumerdassi
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Abstract

Data Centers (DCs) need to manage their servers periodically to meet user demand efficiently. Since the cost of the energy employed to serve the user demand is lower when DC settings (e.g. number of active servers) are done a priori (proactively), there is a great interest in studying different proactive strategies based on predictions of requests. The amount of savings in energy cost that can be achieved depends not only on the selected proactive strategy but also on the statistics of the demand and the predictors used. Despite its importance, due to the complexity of the problem it is difficult to find studies that quantity the savings that can be obtained. The main contribution of this paper is to propose a generic methodology to quantity the possible cost reduction using proactive management based on predictions. Thus, using this method together with past data it is possible to quantity the efficiency of different predictors as well as optimize proactive strategies. In this paper, the cost reduction is evaluated using both ARMA (Auto Regressive Moving Average) and LV (Last Value) predictors. We then apply this methodology to the Google dataset collected over a period of 29 days to evaluate the benefit that can be obtained with those two predictors in the considered DC.
数据中心需要定期对服务器进行管理,以有效满足用户需求。由于当数据中心设置(例如活动服务器的数量)是先验的(主动的)时,用于满足用户需求的能源成本较低,因此基于请求预测研究不同的主动策略是一个很大的兴趣。可以实现的能源成本节省量不仅取决于所选择的主动策略,还取决于需求的统计数据和所使用的预测器。尽管它很重要,但由于问题的复杂性,很难找到量化可以获得的节省的研究。本文的主要贡献是提出了一种通用的方法来量化使用基于预测的主动管理的可能的成本降低。因此,将该方法与过去的数据结合使用,可以量化不同预测器的效率,并优化主动策略。在本文中,使用ARMA(自动回归移动平均)和LV(最后值)预测因子来评估成本降低。然后,我们将该方法应用于在29天内收集的谷歌数据集,以评估在考虑的DC中使用这两个预测因子可以获得的收益。
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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