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Performance-to-Power Ratio Aware Resource Consolidation Framework Based on Reinforcement Learning in Cloud Data Centers

机译:基于云数据中心的强化学习的绩效与功率比感知资源整合框架

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Dynamic consolidation of virtual machines (VMs) is presented as a significant technique of energy conservation in cloud environments, which can eliminate the hotspot of overloaded hosts and switch the under loaded hosts to sleep mode through live migration of virtual machines. However, since the fact that migrating VM consumes a certain amount of extra resources, the process of reallocation can cause Service Level Agreement (SLA) violations. In this paper, a novel proactive framework which considers both predicted resource utilization and Performance-to-power Ratio (PPR) of heterogeneous hosts is proposed to perform dynamic VM consolidation to achieve balance of performance and energy. More precisely, a workload predictor is proposed based on the modified Weighted Moving Average (WMA) algorithm, representing the support for dynamic resource allocation; a cluster controller is proposed based on reinforcement learning for exploring the optimal matching relationship between resource requests and host at different PPR levels; a resource allocator is designed based on greedy strategy for achieving the trade-off between energy consumption and application performance across the cluster. Moreover, the framework is implemented based on distributed architecture and off-line learning pattern, which are able to not only scale up quickly but also improve the computing efficiency of the system. To validate the effectiveness of the proposed method, we have performed experimental evaluation on CloudSim with real-world workload traces of PlanetLab, and the simulation results demonstrate that it reduces the energy consumption up to 45.25 and effectively deals with high Quality of Service (QoS) requirements and heterogeneous distributed infrastructures in comparison with other competitive approaches.
机译:<斜视>虚拟机(VM)的动态整合作为云环境中的节能技术,可以通过虚拟的实际迁移消除重载的主机的热点并将下载主机切换到睡眠模式。机器。但是,由于迁移VM消耗一定量的额外资源的事实,重新定位过程可能导致<斜体>服务级别协议(SLA)违规。本文认为,考虑异构主机的预测资源利用和<斜斜电功率比(PPR)的新颖主动框架是为了实现动态VM整理,以实现性能和能量的平衡。更确切地说,基于修改的<斜斜体>加权移动平均(WMA)算法提出了工作负载预测器,表示用于动态资源分配的支持;基于加强学习提出了一种集群控制器,用于探索不同PPR水平的资源请求与主机之间的最佳匹配关系;资源分配器是根据贪婪策略设计的,用于在集群中实现能耗和应用程序性能之间的权衡。此外,该框架是基于分布式架构和离线学习模式来实现的,能够不仅能够快速扩展,而且还可以提高系统的计算效率。为了验证所提出的方法的有效性,我们对Cloudsim进行了实验评估,具有PlanetLab的现实世界工作量痕迹,仿真结果表明,它将能耗降低到45.25,并有效地处理高度<斜体>服务质量与其他竞争方法相比,(QoS)要求和异构分布式基础设施。

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