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Energy Efficient Allocation of Virtual Machines in Cloud Computing Environments Based on Demand Forecast

机译:基于需求预测的云计算环境中虚拟机的能源高效分配

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In cloud computing environments, demands from different users are often handled on virtual machines (VMs) which are deployed over plenty of hosts. Huge amount of electrical power is consumed by these hosts and auxiliary infrastructures that support them. However, demands are usually time-variant and of some seasonal pattern. It is possible to reduce power consumption by forecasting varying demands periodically and allocating VMs accordingly. In this paper, we propose a power-saving approach based on demand forecast for allocation of VMs. First of all, we forecast demands of next period with Holt-Winters' exponential smoothing method. Second, a modified knapsack algorithm is used to find the appropriate allocation between VMs and hosts. Third, a self-optimizing module updates the values of parameters in Holt-Winters' model and determines the reasonable forecast frequency. We carried out a set of experiments whose results indicate that our approach can reduce the frequency of switching on/off hosts. In comparison with other approaches, this method leads to considerable power saving for cloud computing environments.
机译:在云计算环境中,来自不同用户的需求通常在部署在大量主机上的虚拟机(VM)上处理。这些主机和支持它们的辅助基础结构消耗了大量的电能。但是,需求通常是随时间变化的并且具有某些季节性模式。通过定期预测变化的需求并相应地分配VM,可以降低功耗。在本文中,我们提出了一种基于需求预测的节能方法来分配虚拟机。首先,我们使用Holt-Winters的指数平滑方法预测下一个时期的需求。其次,使用改良的背包算法在VM和主机之间找到适当的分配。第三,一个自优化模块更新Holt-Winters模型中的参数值,并确定合理的预测频率。我们进行了一组实验,结果表明我们的方法可以减少打开/关闭主机的频率。与其他方法相比,此方法可为云计算环境节省大量电能。

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