Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition

© 2015 IEEE. We propose a novel composition framework for an Infrastructure-as-a-Service (IaaS) provider that selects the optimal set of long-term service requests to maximize its profit. Existing solutions consider an IaaS provider's economic benefits at the time of service composition and ign...

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Main Authors: Mistry, S., Bouguettaya, A., Dong, Hai, Qin, A.
Format: Conference Paper
Published: 2015
Online Access:http://hdl.handle.net/20.500.11937/15197
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author Mistry, S.
Bouguettaya, A.
Dong, Hai
Qin, A.
author_facet Mistry, S.
Bouguettaya, A.
Dong, Hai
Qin, A.
author_sort Mistry, S.
building Curtin Institutional Repository
collection Online Access
description © 2015 IEEE. We propose a novel composition framework for an Infrastructure-as-a-Service (IaaS) provider that selects the optimal set of long-term service requests to maximize its profit. Existing solutions consider an IaaS provider's economic benefits at the time of service composition and ignore the dynamic nature of the consumer requests in a long-term period. The proposed framework deploys a new multivariate HMM and ARIMA model to predict different patterns of resource utilization and Quality of Service fluctuation tolerance levels of existing service consumers. The dynamic nature of new consumer requests with no history is modelled using a new community based heuristic approach. The predicted long-term service requests are optimized using Integer Linear Programming to find a proper configuration that maximizes the profit of an IaaS provider. Experimental results prove the feasibility of the proposed approach.
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spelling curtin-20.500.11937-151972017-09-13T15:03:20Z Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition Mistry, S. Bouguettaya, A. Dong, Hai Qin, A. © 2015 IEEE. We propose a novel composition framework for an Infrastructure-as-a-Service (IaaS) provider that selects the optimal set of long-term service requests to maximize its profit. Existing solutions consider an IaaS provider's economic benefits at the time of service composition and ignore the dynamic nature of the consumer requests in a long-term period. The proposed framework deploys a new multivariate HMM and ARIMA model to predict different patterns of resource utilization and Quality of Service fluctuation tolerance levels of existing service consumers. The dynamic nature of new consumer requests with no history is modelled using a new community based heuristic approach. The predicted long-term service requests are optimized using Integer Linear Programming to find a proper configuration that maximizes the profit of an IaaS provider. Experimental results prove the feasibility of the proposed approach. 2015 Conference Paper http://hdl.handle.net/20.500.11937/15197 10.1109/ICWS.2015.17 restricted
spellingShingle Mistry, S.
Bouguettaya, A.
Dong, Hai
Qin, A.
Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title_full Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title_fullStr Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title_full_unstemmed Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title_short Predicting Dynamic Requests Behavior in Long-Term IaaS Service Composition
title_sort predicting dynamic requests behavior in long-term iaas service composition
url http://hdl.handle.net/20.500.11937/15197