期刊文献+

引入多QoS开销适应度的云计算任务权衡调度

Cloud Computing Task Trade-off Scheduling Introduced in QoS Overhead Fitness Computing
下载PDF
导出
摘要 提出一种引入QoS开销适应度运算的云计算任务权衡调度算法,首先进行了支持多QoS因素任务调度问题描述与网格拓扑结构构建,进行云计算任务权衡调度对多用户QoS偏好的影响力数学度量,通过多QoS开销适应度运算的引入,根据计算资源的成本和数据传输时间,来确定分配任务的位置。为了适应云存储中的多QoS偏好,重新定义PSO的适应度函数,实现任务权衡调度算法的改进。通过仿真实验研究得出,采用该算法对云计算任务节点的聚类准确性较高,进行任务调度中的实时性好。通过多QoS偏好分析,引入QoS开销适应度运算,用户满意率有明显上升,适应度函数随不同类别任务变化,有效地反映不同类型任务的QoS偏好。展示了较好的云计算任务权衡调度性能。 A new QoS overhead fitness computing cloud computing task scheduling algorithm first constructs a trade-off is proposed, support for multiple QoS factors of task scheduling problem description and mesh topology structure of cloud com?puting, task scheduling metrics tradeoff influence of mathematics to multiuser QoS preference, adaptation through multiple QoS overhead of the introduction of operations, according to the cost of computing resources and the data transfer time, to determine the allocation of the location for the task. In order to adapt to the cloud storage of multi QoS preference, redefin?ing the fitness of PSO, improved task scheduling algorithm to achieve balance. Through the experimental study of simula?tion, the algorithm can use this algorithm in the face of cloud clustering accuracy higher calculation task node, for real-time task scheduling of a good. Through the multi QoS preference analysis, introducing the QoS overhead fitness operations, cus?tomer satisfaction rate increased significantly, the fitness function with the change of different types of tasks, it can effective?ly reflect the preferences of different types of task QoS, it show good cloud computing task scheduling performance.
作者 王捷 王顺平
出处 《科技通报》 北大核心 2015年第6期154-156,共3页 Bulletin of Science and Technology
关键词 QoS开销 满意度 权衡 云计算 QoS overhead satisfaction balance cloud computing
  • 相关文献

参考文献5

二级参考文献36

  • 1CHIEN A, CALDER B, ELBERT S,et ol. Entropia: Ar-chitecture and Performance of An Enterprise DesktopGrid System [J]. Journal of Parallel and Distributed Com-puting, 2003, 63(5):597-610.
  • 2ROCHWERGER B, BREITGAND D,LEVY E, et d. TheReservoir Model and Architec -ture for Open FederatedCloud ComputingfJ]. IBM Journal of Research and Devel-opment, 2009, 53(4):1-17.
  • 3ALI S,SIEGEL H J, MAHESWARAN M, et al. Repre-senting Task and Machine Heterogen -eities for Hetero-geneous Computing systems [J]. Journal of Science andEngineering, 2000, 3(3): 195-207.
  • 4Foster I,Zhao Y,Raicu I,et al.Cloud computing and grid computing 360-degree compared[C]// Proceedings of IEEE Grid Computing Environments Workshop.Piscataway:IEEE Press,2008:1-10.
  • 5Armbrust M,Fox A,Griffith R,et al.A view of cloud computing[J].Communications of the ACM,2010,53(4):50.
  • 6Buyya R,Yeo C S,and Venugopal S.Market-oriented cloud computing:vision,hype,and reality for delivering IT service as computing utility[C]// Proceedings of the 10th IEEE International Conference on High Performance Computing and Communications.Piscataway:IEEE Press,2008:5-13.
  • 7Zenoss Inc.Virtualization and cloud computing survey[EB/OL].[2010-10-15].http://www.zenoss.com/in/Vir tualization_survey.html.
  • 8Liu H,Orban D.Cloud MapReduce:a MapReduce implementation on top of a cloud operating system[C]//Proceedings of the l lth IEEE/ACM International Symposium on Cluster,Cloud and Grid Computing.Los Alamitos:IEEE Computer Press,2011:464-474.
  • 9Chaisiri S,Lee B,Niyato D.Optimization of resource provisioning cost in cloud computing[J].IEEE Transactions on Services Computing,2011,99(7):1.
  • 10Meng X,Isci C,Kephart J,et al.Efficient resource provisioning in compute clouds via VM multiplexing[C]//Proceedings of the 7th International Conference on Autonomoc Computing.New York:ACM Press,2010:11-20.

共引文献89

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