计算机科学 ›› 2015, Vol. 42 ›› Issue (1): 92-95.doi: 10.11896/j.issn.1002-137X.2015.01.022

• 2013年全国理论计算机科学学术年会 • 上一篇    下一篇

混合云中的一个高效协调器

王宗江,郑秋生,曹健   

  1. 中原工学院计算机学院 郑州450007,中原工学院计算机学院 郑州450007,上海交通大学计算机系 上海200031
  • 出版日期:2018-11-14 发布日期:2018-11-14
  • 基金资助:
    本文受国家自然科学基金(61073021),河南省科技攻关项目计划(122102210397),河南省教育厅科学计算研究重点项目(12A520052)资助

Efficient Coordinator in Hybrid Cloud

WANG Zong-jiang, ZHENG Qiu-sheng and CAO Jian   

  • Online:2018-11-14 Published:2018-11-14

摘要: 云计算提供了4种部署模型:公有云、私有云、社区云和混合云。通常,一个私有云中可用的资源是有限的,因此云用户不得不从公有云租用资源。这意味着云用户将会产生额外的费用。越来越多的企业选择混合云来部署它们的应用。在混合云中,为了实现用户的利益最大化,必须满足使用资源的费用最小化和用户的QoS,为此为混合云用户提供了一个既能最小化资源费用又能保证满足QoS的资源分配方法。实验结果表明,该算法在保持低操作成本的同时还满足了用户的QoS。

关键词: 云计算,混合云,资源分配,服务质量,调度

Abstract: Cloud computing provides four deployment models:public cloud,private cloud,community cloud and hybrid cloud.Generally,resources available in a private cloud are limited,thus the cloud users have to rent resources from public clouds.This requirement means that cloud users will incur extra costs.More and more enterprises choose the hybrid cloud to deploy their applications.In the hybrid cloud,in order to minimize the cost of using resources,it is also important to satisfy QoS for user.Therefore,this paper proposed resources allocation algorithm for hybrid cloud users who want to minimize the resource cost and ensure QoS satisfaction.The empirical results demonstrate that resources can be allocated by our algorithm in a way that satisfies the user QoS and keeps low operational costs.

Key words: Cloud computing,Hybrid cloud,Resource allocation,Quality of service,Scheduling

[1] Armbrust M,Fox A,Griffith R,et al.Above the Clouds:ABerkeley View of Cloud Computing[R].Department,University of California,Berkeley,Feb 2009
[2] Mell P,Grance T.The NIST Denition of Cloud Computing[R].http://csrc.nist.gov/groups/SNS/cloud-computing/,2009
[3] Kang X,Zhang H,Jiang G,et al.Measurement,modeling,and analysis of internet video sharing site workload:A case study[C]∥IEEE International Conference on Web Services (ICWS).2008:278-285
[4] 林伟伟,齐德昱.云计算资源调度研究综述[J].计算机科学,2012,39(10):1-10
[5] Von L G,Wang L,Younge A J,et al.Power-Aware Scheduling of Virtual Machines in DVFS-enabled Clusters[C]∥Proc of IEEE international Conference on Cluster Computing 2009,9.New Orleans,LA,USA,2009:1
[6] Mezmaz M,Melab N,Kessaci Y,et al.A parallel bi-objective hy-brid metaheuristic for energy-aware scheduling for hybrid cloud computing systems[J].Journal of Parallel and Distributed Computing(JPDC),2011,1(11):1497-1508
[7] Hermenier F,Lorca X,Menaud J-M,et al.Entropy:a consolidation manager for cluster[C]∥Proc.of the 2009 International Conference on Virtual Execution Environments (VEE’09).Mar.2009:41-50
[8] Wei Gui-yi,Vasilakos A,Zheng Yao,et al.A game-theoreticmethod of fair resource allocation for cloud computing services[J].The Jouranl of Supercomputing,2010,54(2):252-269
[9] Buyya R,Yeo C S,Venugopal S,et al.Cloud computing andemerging IT platforms:vision,hype,and reality for delivering computing as the 5th utility[J].Future Generation Computer Systems,2009,5(6):599-616
[10] Srikantaiah S,Kansal A,Zhao F.Energy aware consolidation for cloud computing[C]∥Proceedings of the 2008 Conference on Power Aware Computing and Systems,2008.2008:1-10
[11] Liu Liang,Wang Hao,Liu Xue,et al.GreenCloud:a new architecture for green data center[C]∥Proceedings of the 6th International Conference Industry Session on Autonomic Computing and Communicaitons industry Session,2009.2009:29-38
[12] Ferreira A M.An erergy-aware approach for service perfor-mance evalutaiton[C]∥The International Conference on Energy-Efficiet Computing and Networking.2010
[13] Van H N,Tran F D,Menaud J-M.Sla-Aware Virtual Resource Management for Cloud Infrastructures[C]∥Ninth IEEE International Conference on Computer and Information Technology,2009.2009,1:357-362
[14] Van H N,Tran F D,Menaud J-M.Autonomic Virtual Resource Management for Service hosting platforms[C]∥ICSE Workshop on Software Engineering Challenges of Cloud Computing,2009.2009:1-8 (下转第105页)(上接第95页)
[15] 华夏渝,郑骏,胡文心.基于云计算环境的蚁群优化计算资源分配算法[J].华东师范大学学报:自然科学版,2010(1):127-134
[16] VMware Capacity Planner [EB/OL].http://www.vmware.com/products/capacity-planner/,2011
[17] IBM WebSphere CloudBurst[EB/OL].http:www-01.ibm.com/software/webservers/cloudburst/,2011
[18] 胡冷非.虚拟机Xen网络带宽分配的研究和改进[D].上海:上海交通大学,2009
[19] Tang Q,Gupta S K S,Varsamopoulos G.Energey-efficient thermal-aware task scheduling for homogeneous high-performance computing data centers:A cyber-physical approach[J].IEEE Trans.Parallel Distribute System,2008,9(11):1458-1472
[20] Moore J,Chase J,Ranganathan P,et al.Making schedulling“cool”:temperature-aware workload placement in data centers,ATEC’05[C]∥Proceedings of the Annual Conferrence on USENIX Annual Technical Conference,2005.USENIX Association,Berkeley,CA,USA,2005:5
[21] Buyya R,Ranjan R,Calheiros R N.InterCloud:utility-orientedfederation of cloud computing environments for scaling of application services[C]∥Proceedings of the 10th International Conference on Algorithms and Architectures for Parallel Proces-sing(ICA3PP’10).Springer,Busan,South Korea,2010:13-31
[22] Wu L,Garg S.SLA-based resource allocation for software as a service provider (SaaS) in cloud computing environments[C]∥11th IEEE/ACM International Symposium on Cluster,Cloud and Grid Computing.2011
[23] Calheiros R,Vecchiola C,Karunamoorthy D,et al.The Anekaplatform and QoS-driven resource provisioning for elastic applications on hybrid Clouds[J].Future Generation Computer Systems,2012,28(6):861-870
[24] Vecchiola C,Calheiros R,Karunamoorthy D,et al.Deadline-dri-ven provisioning of resources for scientific applications in hybrid clouds with Aneka[J].Future Generation Computer Systems,2012,28:58-65
[25] Calheiros R,Nadjaran toosi A,Vecchiola C,et al.A coordinator for scaling elastic applications across multiple clouds[J].Future Generation Computer Systems,2012,28(8):1350-1362
[26] Buyya R,Garg S,Calheiros R.SLA-Oriented Resource Provisio-ning for Cloud Computing:Challenges,Architecture,and Solutions[C]∥Proceedings of the 2011 IEEE International Conference on Cloud and Service Computing (CSC 2011).2011
[27] Nadjaran toosi A,Calheiros R,Thulasiram R,et al.Resource Provisioning Policies to Increase IaaS Provider’s Profit in a Fe-derated Cloud Environment[C]∥2011 IEEE International Conference on High Performance Computing and Communications(HPCC 2011).2011:279-287
[28] Calheiros R,Ranjan R,De rose C,et al.CloudSim:a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms[J].Software:Practice and Experience,2011,41(1):23-50
[29] Buyya R,Ranjan R,Calheiros R.Modeling and simulation ofscalable Cloud computing environments and the CloudSim toolkit[C]∥Challenges and opportunities,International Conference on High Performance Computing&Simulation,(HPCS’09).2009:1-11

No related articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!