能源感知云数据库的频率选择方法

Chaopeng Guo, J. Pierson
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引用次数: 1

摘要

面对数据量的爆炸式增长和大数据时代的到来,工业界和学术界大量采用云系统。同时,能源效率和节能成为部署大量云系统的数据中心的主要关注点。然而,由于资源供应过剩,能源浪费是相当普遍的。本文利用动态电压和频率缩放(DVFS),介绍了一种频率选择方法,以提高云系统在资源过剩方面的能源效率。该方法提出了遗传算法(GA)和蒙特卡罗树搜索算法(MCTS)两种算法。以云数据库系统为例对该方法进行了评价。实验结果表明,该算法具有良好的可扩展性,可以应用于120个节点的情况下,与最优解相比,准确率较高(GA和MCTS分别高达99.9%和99.6%)。根据最优界分析,使用我们的频率选择方法最多可节省21%的能量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency Selection Approach for Energy Aware Cloud Database
A lot of cloud systems are adopted in industry and academia to face the explosion of the data volume and the arrival of the big data era. Meanwhile, energy efficiency and energy saving become major concerns for data centers where massive cloud systems are deployed. However, energy waste is quite common due to resource over-provisioning. In this paper, using Dynamic Voltage and Frequency Scaling (DVFS), a frequency selection approach is introduced to improve the energy efficiency of cloud systems in terms of resource over-provisioning. In the approach, two algorithms, Genetic Algorithm (GA) and Monte Carlo Tree Search Algorithm (MCTS), are proposed. Cloud database system is taken as an example to evaluate the approach. The results of the experiments show that the algorithms have great scalability which can be applied to a 120-nodes case with high accuracy compared to optimal solutions (up to 99.9% and 99.6% for GA and MCTS respectively). According to an optimality bound analysis, 21 % of energy can be saved at most using our frequency selection approach.
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