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Virtual Machine Consolidation with Usage Prediction for Energy-Efficient Cloud Data Centers

机译:节能型云数据中心的虚拟机整合和使用预测

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Virtual machine consolidation aims at reducing the number of active physical servers in a data center, with the goal to reduce the total power consumption. In this context, most of the existing solutions rely on aggressive virtual machine migration, thus resulting in unnecessary overhead and energy wastage. This article presents a virtual machine consolidation algorithm with usage prediction (VMCUP) for improving the energy efficiency of cloud data centers. Our algorithm is executed during the virtual machine consolidation process to estimate the short-term future CPU utilization based on the local history of the considered servers. The joint use of current and predicted CPU utilization metrics allows a reliable characterization of overloaded and under loaded servers, thereby reducing both the load and the power consumption after consolidation. We evaluate our proposed solution through simulations on real workloads from the Planet Lab and the Google Cluster Data datasets. In comparison with the state of the art, the obtained results show that consolidation with usage prediction reduces the total migrations and the power consumption of the servers while complying with the service level agreement.
机译:虚拟机整合旨在减少数据中心中活动的物理服务器的数量,以减少总功耗。在这种情况下,大多数现有解决方案都依赖于积极的虚拟机迁移,从而导致不必要的开销和能源浪费。本文提出了一种具有使用率预测(VMCUP)的虚拟机整合算法,以提高云数据中心的能源效率。我们的算法在虚拟机整合过程中执行,以根据考虑的服务器的本地历史记录来估计短期将来的CPU使用率。结合使用当前和预测的CPU利用率指标,可以可靠地表征过载和负载不足的服务器,从而减少整合后的负载和功耗。我们通过对Planet Lab和Google Cluster Data数据集的实际工作量进行仿真来评估我们提出的解决方案。与现有技术相比,所获得的结果表明,与使用情况预测的合并减少了服务器的总体迁移和功耗,同时又符合了服务水平协议。

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