面向应用服务的虚拟机性能评估
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  • 英文篇名:VMs performance analysis based on application service
  • 作者:曾文琦 ; 叶家炜 ; 杨阳 ; 刘发章 ; 吕智慧
  • 英文作者:ZENG Wen-qi;YE Jia-wei;YANG Yang;LIU Fa-zhang;L Zhi-hui;School of Computer Science,Fudan University;Institute of Electronic Payment,China Unionpay;
  • 关键词:云计算 ; 虚拟化 ; 虚拟机监控 ; 性能特征 ; 基础设施即服务
  • 英文关键词:cloud computing;;virtualization;;virtual machine monitoring;;performance characteristics;;IaaS
  • 中文刊名:SJSJ
  • 英文刊名:Computer Engineering and Design
  • 机构:复旦大学计算机科学技术学院;中国银联电子支付研究院;
  • 出版日期:2014-10-16
  • 出版单位:计算机工程与设计
  • 年:2014
  • 期:v.35;No.334
  • 基金:国家云计算示范工程基金项目(C73623989020220110006)
  • 语种:中文;
  • 页:SJSJ201410054
  • 页数:8
  • CN:10
  • ISSN:11-1775/TP
  • 分类号:299-306
摘要
为了获取在云平台下提供应用服务的虚拟机所表征出的特定负载特性(这种负载特性可以用来标识此应用服务的行为),设计对现有虚拟机负载信息进行采集,达到了对虚拟机状态信息和负载信息有效获取;通过获取到的虚拟机系统信息,提出基于指定类型优化的性能评估算法,得出虚拟机的基本特征,对虚拟机性能负载进行量化。为虚拟机资源和物理机资源的充分使用提供解决思路。
        In cloud,lots of VMs are running to provide the application service.To get the VMs' specific load characteristics,which can be used to identify the behaviors of the application service,a collection method was designed to collect the VMs' load information and make it more effective to achieve the VMs' state information.A design of performance evaluation algorithm was presented based on the specific application service type.First,the VMs' system information was collected to calculate the VMs' basic characters,then the VMs' performance load was quantified.The method gives a new solution on how to use resources of VMs and PMs adequately.
引文
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