首页> 外文会议>IEEE International Conference on Computer Communications >Considering Resource Demand Misalignments To Reduce Resource Over-Provisioning in Cloud Datacenters
【24h】

Considering Resource Demand Misalignments To Reduce Resource Over-Provisioning in Cloud Datacenters

机译:考虑资源需求未对准,以减少云数据中心的资源过度配置

获取原文

摘要

Previous resource provisioning strategies in cloud datacenters allocate physical resources to virtual machines (VMs) based on the predicted resource utilization pattern of VMs. The pattern for VMs of a job is usually derived from historical utilizations of multiple VMs of the job. We observed that these utilization curves are usually misaligned in time, which would lead to resource over-prediction and hence over-provisioning. Since this resource utilization misalignment problem has not been revealed and studied before, in this paper, we study the VM resource utilization from public datacenter traces to verify the existence of the utilization misalignments. Then, to reduce resource over-provisioning, we propose three VM resource utilization pattern refinement algorithms to improve the original generated pattern by lowering the cap of the pattern, reducing cap provision duration and varying the minimum value of the pattern. These algorithms can be used in any resource provisioning strategy that considers predicted resource utilizations of VMs of a job. We then adopt these refinement algorithms in an initial VM allocation mechanism and test them in trace-driven experiments and real-world cluster experiments. The experimental results show that each improved mechanism can increase resource efficiency up to 74%, and reduce the number of PMs needed to satisfy tenant requests up to 47% while conforming the SLO requirement.
机译:云数据中心的先前资源配置策略基于VM的预测资源利用模式将物理资源分配给虚拟机(VM)。作业VM的模式通常导致从作业的多个VM的历史利用。我们观察到这些利用曲线通常在时间内未对准,这将导致资源过度预测并因此过度配置。由于此文件尚未显示和研究该资源利用率未对准问题,因此在本文中,我们研究了来自公共数据中心的VM资源利用率,以验证利用错误的存在。然后,为了减少资源过度配置,我们提出了三个VM资源利用模式细化算法来通过降低图案的帽来改善原始生成的模式,从而减少帽子提供持续时间并改变图案的最小值。这些算法可以用于考虑作业VM的预测资源利用的任何资源供应策略中。然后,我们在初始VM分配机制中采用这些细化算法,并在追踪实验和现实世界集群实验中测试它们。实验结果表明,各种改进的机制可以提高资源效率高达74%,并减少满足租户要求的PMS数量高达47%,同时符合SLO要求。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号