Queuing Theoretic and Evolutionary Deployment Optimization with Probabilistic SLAs for Service Oriented Clouds | IEEE Conference Publication | IEEE Xplore

Queuing Theoretic and Evolutionary Deployment Optimization with Probabilistic SLAs for Service Oriented Clouds


Abstract:

This paper focuses on service deployment optimization in cloud computing environments. In a cloud, each service in an application is deployed as one or more service insta...Show More

Abstract:

This paper focuses on service deployment optimization in cloud computing environments. In a cloud, each service in an application is deployed as one or more service instances. Different service instances operate at different quality of service (QoS) levels. In order to satisfy given service level agreements (SLAs) as end-to-end QoS requirements of an application, the application is required to optimize its deployment configuration of service instances. E3/Q is a multiobjective genetic algorithm to solve this problem. By leveraging queuing theory, E3/Q estimates the performance of an application and allows for defining SLAs in a probabilistic manner. Simulation results demonstrate that E3/Q efficiently obtains deployment configurations that satisfy given SLAs.
Date of Conference: 06-10 July 2009
Date Added to IEEE Xplore: 10 November 2009
CD:978-0-7695-3708-5
Print ISSN: 2378-3818
Conference Location: Los Angeles, CA, USA

Contact IEEE to Subscribe

References

References is not available for this document.