期刊文献+

资源调度等待开销感知的虚拟机整合 被引量:15

Resource-Scheduling-Waiting-Aware Virtual Machine Consolidation
下载PDF
导出
摘要 近年来,数据中心庞大的能源开销问题引起广泛关注.虚拟化管理平台可以通过虚拟机迁移技术将虚拟机整合到更少的服务器上,从而提高数据中心能源有效性.对面向数据中心节能的虚拟机整合研究工作进行调研,并总结虚拟机整合研究存在的3个挑战.针对已有工作未考虑虚拟机等待资源调度带来的服务器资源额外开销这种现象,开展了资源调度等待开销感知的虚拟机整合研究.从理论和实验上证明了在具有实际意义的约束条件下,存在着虚拟机等待资源调度带来的服务器资源额外开销,且随着整合虚拟机数量的增长保持稳定.基于典型工作负载的实验结果表明,这个额外开销平均占据了11.7%的服务器资源开销.此外,提出了资源预留整合(MRC)算法,用于改进已有的虚拟机整合算法.算法模拟实验结果表明,MRC算法相比于常用的虚拟机整合算法FFD(first fit decreasing),明显降低了服务器资源溢出概率. In recent years, the huge resource consumption problem of data centers is being widely concerned. Virtual machine monitor (VMM) can consolidate virtual machines (VMs) onto fewer servers via VM migration to improve the energy efficiency of data centers. This paper surveys the recent works on energy-efficient VM consolidation, and summarizes three research challenges. Among them, this work considers the resource consumption overhead caused by the waiting of virtual machines for server resource scheduling. The study theoretically and experimentally proves that under realistic constraints, this overhead remains steady as the number of consolidating VMs grows. Experiments based on a representative benchmark show that, on average, 11.7% of the server’s CPU resource is occupied by the overhead. In addition, in order to fill in the gap on existing approaches, this paper proposes margin reserved consolidation (MRC) algorithm. Simulation results show that MRC outperforms the state of the art baseline in terms of server resource violation probability.
出处 《软件学报》 EI CSCD 北大核心 2014年第7期1388-1402,共15页 Journal of Software
基金 国家重点基础研究发展计划(973)(2011302505) 国家自然科学基金(61070210 61303243)
关键词 能源有效性 虚拟机整合 资源开销测量 数据中心 energy efficiency virtual machine consolidation resource cost measurement data center
  • 相关文献

参考文献70

  • 1Kaplan JM, Forrest W, Kindler N. Revolutionizing data center energy efficiency. Technical Report, No.July-2008, McKinsey & Company, 2008.
  • 2Koomey J. Growth in data center electricity use 2005 to 2010. Technical Report, No.August-l, Analytics Press, 2011.
  • 3Scheihing P. DOE data center energy efficiency program. Technical Report, No.April-2009, U.S. Department of Energy, 2009.
  • 4Birke R, Chen LY, Smirni E. Data centers in the wild: A large performance study. Technical Report, No.ZI204-002, IBM Research, 2012.
  • 5VMware. 2013. http://www.vmware.com.
  • 6Xen. 2013. http://www.citrix.com/products/xenserver/overview.html.
  • 7VMware report: Server consolidation. 2013. http://www.vmware.com/consolidation/overview.
  • 8Bin packing problem. 2013. http://en.wikipedia.org/wiki/Binpacking_problem.
  • 9Srikantaiah S, Kansal A, Zhao F. Energy aware consolidation for cloud computing. In: Proc. of the Conf. on Power Aware Computing and Systems (HotPower). Berkeley: USENIX Association, 2008. 10.
  • 10Cardosa M, Korupolu MR, Singh A. Shares and utilities based power consolidation in virtualized server environments. In: Proc. of the 1 I th IFIP/IEEE Int'l Conf. on Symp. on Integrated Network Management (IM). 2009. 327-334. [doi: 10.1109/INM.2009. 5188832].

同被引文献103

  • 1陈昊罡,汪小林,王振林,张彬彬,罗英伟,李晓明.DMM:虚拟机的动态内存映射模型[J].中国科学:信息科学,2010,40(12):1543-1558. 被引量:2
  • 2彭龑.面向产品概念设计的虚拟三维装配建模及其仿真技术[J].四川理工学院学报(自然科学版),2005,18(2):18-21. 被引量:2
  • 3余恕莲,吴革.企业成本理论与方法研究[M].北京:中国社会科学出版社,2010.
  • 4REN S, HE Y, XU F. Provably-efficient job scheduling for energy and fairness in geographically distributed data centers[C]//Distrib- uted Computing Systems (ICDCS), 2012 IEEE 32nd International Conference on. IEEE, 2012:22-31.
  • 5LEE Y C, ZOMAYA A Y. Energy efficient utilization of resources in cloud computing systems[J]. The Journal of Supercomputing, 2012, 60(2): 268-280.
  • 6GOUDARZI H, GHASEMAZAR M, PEDRAM M. Sla-based opti- mization of power and migration cost in cloud computing[C]//Clus- ter, Cloud and Grid Computing (CCGrid), 2012 12th IEEE/ACM In- ternational Symposium on. IEEE, 2012: 172-179.
  • 7LI K. Optimal power allocation among multiple heterogeneous serv- ers in a data center[J]. Sustainable Computing: Informatics and Sys- tems, 2012, 2(1): 13-22.
  • 8CAO J, LI K, STOJMENOVIC I. Optimal Power Allocation and Load Distribution for Multiple Heterogeneous Multicore Server Pro- cessors across Clouds and Data Centers[J]. Computers, IEEE Trans- actions on, 2014,63(1): 45-58.
  • 9MAZZUCCO M, DYACHUK D. Optimizing cloud providers reve- nues via energy efficient server allocation[J]. Sustainable Comput- ing: Informatics and Systems, 2012, 2(1): 1-12.
  • 10GANDHI A, HARCHOL-BALTER M, RAGHUNATHAN R, et al. Autoscale: Dynamic, robust capacity management for multi-tier da- ta centers[J]. ACM Transactions on Computer Systems (TOCS), 2012, 30(4): 14.

引证文献15

二级引证文献31

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部