Evolutionary deployment optimization for service-oriented clouds

  • Authors:
  • Hiroshi Wada;Junichi Suzuki;Yuji Yamano;Katsuya Oba

  • Affiliations:
  • National ICT Australia, Eveleigh, NSW 1430, Australia;School of Computer Science and Engineering, University of New South Wales, Sydney, NSW 2052, Australia;Department of Computer Science, University of Massachusetts at Boston, Boston, MA 02125, U.S.A.;OGIS International, Inc., San Mateo, CA 94404, U.S.A.

  • Venue:
  • Software—Practice & Experience
  • Year:
  • 2011

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Abstract

This paper focuses on service deployment optimization in cloud computing environments. In a cloud, an application is assumed to consist of multiple services. Each service in an application can be deployed as one or more service instances. Different service instances operate at different quality of service (QoS) levels depending on the amount of computing resources assigned to them. In order to satisfy given performance requirements, i.e. service level agreements (SLAs), each application is required to optimize its deployment configuration such as the number of service instances, the amount of computing resources to assign and the locations of service instances. Since this problem is NP-hard and often faces trade-offs among conflicting QoS objectives in SLAs, existing optimization methods often fail to solve it. mathrmE3-R is a multiobjective genetic algorithm that seeks a set of Pareto-optimal deployment configurations that satisfy SLAs and exhibit the trade-offs among conflicting QoS objectives. By leveraging queueing theory, E3-R estimates the performance of an application and aids defining SLAs in a probabilistic manner. Moreover, E3-R automatically reduces the number of QoS objectives and improves the quality of solutions further. Experimental studies demonstrate that E3-R efficiently obtains quality deployment configurations that satisfy given SLAs. Copyright © 2011 John Wiley & Sons, Ltd.