RETRACTED ARTICLE: Dynamic resource allocation with optimized task scheduling and improved power management in cloud computing

被引:0
作者
J. Praveenchandar
A. Tamilarasi
机构
[1] CSE,Department of Computer Applications
[2] Vel Tech Rangarajan Dr. Sagunthala R and D Institute of Science and Technology,undefined
[3] Kongu Engineering College,undefined
来源
Journal of Ambient Intelligence and Humanized Computing | 2021年 / 12卷
关键词
Resource allocation; Task scheduling; DRA table; Power management;
D O I
暂无
中图分类号
学科分类号
摘要
Cloud computing is one among the emerging platforms in business, IT enterprise and mobile computing applications. Resources like Software, CPU, Memory and I/O devices etc. are utilized and charged as per the usage, instead of buying it. A Proper and efficient resource allocation in this dynamic cloud environment becomes the challenging task due to drastic increment in cloud usage. Various promising technologies have been developed to improve the efficiency of resource allocation process. But still there is some incompetency in terms of task scheduling and power consumption, when the system gets overloaded. So an energy efficient task scheduling algorithm is required to improve the efficiency of resource allocation process. In this paper an improved task scheduling and an optimal power minimization approach is proposed for efficient dynamic resource allocation process. Using prediction mechanism and dynamic resource table updating algorithm, efficiency of resource allocation in terms of task completion and response time is achieved. This framework brings an efficient result in terms of power reduction since it reduces the power consumption in data centers. The proposed approach gives accurate values for updating resource table. An efficient resource allocation is achieved by an improved task scheduling technique and reduced power consumption approach. The Simulation result gives 8% better results when comparing to other existing methods.
引用
收藏
页码:4147 / 4159
页数:12
相关论文
共 94 条
  • [11] Guizani M(2015)An online mechanism for resource allocation and pricing in clouds IEEE Trans Comput 26 594-603
  • [12] Rayes A(2015)A cost-efficient QoS-aware model for cloud IaaS resource allocation in large datacenters IEEE Int Conf Cloud Netw 9 1-15
  • [13] Dai W(2014)Truthful greedy mechanisms for dynamic virtual machine provisioning and allocation in clouds IEEE Trans Parallel Distrib Syst 37 1667-1680
  • [14] Qiu L(2017)Resource allocation for heterogeneous cloud computing Resource 64 5275-5287
  • [15] Wu A(2017)Integrating heuristic and machine-learning methods for efficient virtual machine allocation in data centers IEEE Trans Comput Aided Des Integr Circuits Syst 64 3746-3758
  • [16] Qiu M(2014)Energy-efficient resource assignment and power allocation in heterogeneous cloud radio access networks IEEE Trans Veh Technol 24 2060-2073
  • [17] Du J(2016)Delay-aware scheduling and resource optimization with network function virtualization IEEE Trans Commun 15 2137-2150
  • [18] Zhao L(2015)An online auction framework for dynamic resource provisioning in cloud computing IEEE/ACM Trans Netw 12 1688-1699
  • [19] Feng J(2015)A fair and efficient resource allocation scheme for multi-server distributed systems and networks IEEE Trans Mob Comput 3 275-289
  • [20] Chu X(2017)Dynamic resource prediction and allocation for cloud data center using the multi objective genetic algorithm IEEE Syst J 24 1107-1117