Utilization Prediction Aware VM Consolidation Approach for Green Cloud Computing

Dynamic Virtual Machine (VM) consolidation is one of the most promising solutions to reduce energy consumption and improve resource utilization in data centers. Since VM consolidation problem is strictly NP-hard, many heuristic algorithms have been proposed to tackle the problem. However, most of the existing works deal only with minimizing the number of hosts based on their current resource utilization and these works do not explore the future resource requirements. Therefore, unnecessary VM migrations are generated and the rate of Service Level Agreement (SLA) violations are increased in data centers. To address this problem, our VM consolidation method which is formulated as a bin-packing problem considers both the current and future utilization of resources. The future utilization of resources is accurately predicted using a k-nearest neighbor regression based model. In this paper, we investigate the effectiveness of VM and host resource utilization predictions in the VM consolidation task using real workload traces. The experimental results show that our approach provides substantial improvement over other heuristic algorithms in reducing energy consumption, number of VM migrations and number of SLA violations.

[1]  Tal Garfinkel,et al.  Virtual machine monitors: current technology and future trends , 2005, Computer.

[2]  Rajkumar Buyya,et al.  CloudSim: a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms , 2011, Softw. Pract. Exp..

[3]  Sangyoon Oh,et al.  Sercon: Server Consolidation Algorithm using Live Migration of Virtual Machines for Green Computing , 2011 .

[4]  Antti Ylä-Jääski,et al.  A virtual machine placement algorithm for balanced resource utilization in cloud data centers , 2014, 2014 IEEE 7th International Conference on Cloud Computing.

[5]  Liang Zhong,et al.  EnaCloud: An Energy-Saving Application Live Placement Approach for Cloud Computing Environments , 2009, 2009 IEEE International Conference on Cloud Computing.

[6]  KyoungSoo Park,et al.  CoMon: a mostly-scalable monitoring system for PlanetLab , 2006, OPSR.

[7]  Andrzej Kochut,et al.  Dynamic Placement of Virtual Machines for Managing SLA Violations , 2007, 2007 10th IFIP/IEEE International Symposium on Integrated Network Management.

[8]  Rajkumar Buyya,et al.  Optimal online deterministic algorithms and adaptive heuristics for energy and performance efficient dynamic consolidation of virtual machines in Cloud data centers , 2012, Concurr. Comput. Pract. Exp..

[9]  Pasi Liljeberg,et al.  Energy Aware Consolidation Algorithm Based on K-Nearest Neighbor Regression for Cloud Data Centers , 2013, 2013 IEEE/ACM 6th International Conference on Utility and Cloud Computing.

[10]  Pasi Liljeberg,et al.  LiRCUP: Linear Regression Based CPU Usage Prediction Algorithm for Live Migration of Virtual Machines in Data Centers , 2013, 2013 39th Euromicro Conference on Software Engineering and Advanced Applications.

[11]  Peter E. Hart,et al.  Nearest neighbor pattern classification , 1967, IEEE Trans. Inf. Theory.

[12]  Akshat Verma,et al.  pMapper: Power and Migration Cost Aware Application Placement in Virtualized Systems , 2008, Middleware.

[13]  Andrew Warfield,et al.  Live migration of virtual machines , 2005, NSDI.

[14]  Nagarajan Kandasamy,et al.  Power and performance management of virtualized computing environments via lookahead control , 2008, 2008 International Conference on Autonomic Computing.

[15]  Hannu Tenhunen,et al.  Using Ant Colony System to Consolidate VMs for Green Cloud Computing , 2015, IEEE Transactions on Services Computing.