首页> 外文期刊>Cloud Computing, IEEE Transactions on >Scheduling Live Migration of Virtual Machines
【24h】

Scheduling Live Migration of Virtual Machines

机译:安排虚拟机的实时迁移

获取原文
获取原文并翻译 | 示例
       

摘要

Every day, numerous VMs are migrated inside a datacenter to balance the load, save energy or prepare production servers for maintenance. Although VM placement problems are carefully studied, the underlying migration schedulers rely on vague adhoc models. This leads to unnecessarily long and energy-intensive migrations. We present mVM, a new and extensible migration scheduler. To provide schedules with minimal completion times, mVM parallelizes and sequentializes the migrations with regards to the memory workload and the network topology. mVM is implemented as a plugin of BtrPlace and its current library allows administrators to address temporal and energy concerns. Experiments on a real testbed shows mVM outperforms state-of-the-art migration schedulers. Compared to schedulers that cap the migration parallelism, mVM reduces the individual migration duration by 20.4 percent on average and the schedule completion time by 28.1 percent. In a maintenance operation involving 96 VMs migrated between 72 servers, mVM saves 21.5 percent Joules against BtrPlace. Compared to the migration model inside the cloud simulator CloudSim, the prediction error of the migrations duration is about 5 times lower with mVM. By computing schedules involving thousands of migrations performed over various fat-tree network topologies, we observed that the mVM solving time accounts for about 1 percent of the schedule execution time.
机译:每天,许多VM都在数据中心内迁移以平衡负载,节省能源或准备生产服务器进行维护。虽然仔细研究了VM放置问题,但底层迁移调度员依赖于模糊的adhoc模型。这导致不必要的漫长而能源密集的迁移。我们呈现MVM,一个新的和可扩展的迁移计划程序。为了提供具有最小完成时间的计划,MVM并行化并在内存工作负载和网络拓扑方面顺序化迁移。 MVM实现为BTRPLACE的插件,其当前库允许管理员解决时间和能源问题。在真正的测试平台上的实验显示MVM优于最先进的迁移调度员。与调度程序相比,迁移并行性,MVM平均将各个迁移持续时间降低20.4%,并将时间表完成时间减少28.1%。在涉及在72个服务器之间迁移的96个VM的维护操作中,MVM将21.5%的焦点保存到BTRPLACE。与云模拟器CloudSim内的迁移模型相比,迁移持续时间的预测误差约为MVM的5倍。通过计算涉及在各种脂肪树网络拓扑上执行的数千次迁移的调度,我们观察到MVM解决时间占计划执行时间的约1%。

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