HCOC: a cost optimization algorithm for workflow scheduling in hybrid clouds

Workflows have been used to represent a variety of applications involving high processing and storage demands. As a solution to supply this necessity, the cloud computing paradigm has emerged as an on-demand resources provider. While public clouds charge users in a per-use basis, private clouds are...

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Bibliographic Details
Published inJournal of internet services and applications Vol. 2; no. 3; pp. 207 - 227
Main Authors Bittencourt, Luiz Fernando, Madeira, Edmundo Roberto Mauro
Format Journal Article
LanguageEnglish
Published London Springer London 01.12.2011
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Summary:Workflows have been used to represent a variety of applications involving high processing and storage demands. As a solution to supply this necessity, the cloud computing paradigm has emerged as an on-demand resources provider. While public clouds charge users in a per-use basis, private clouds are owned by users and can be utilized with no charge. When a public cloud and a private cloud are merged, we have what we call a hybrid cloud . In a hybrid cloud, the user has elasticity provided by public cloud resources that can be aggregated to the private resources pool as necessary. One question faced by the users in such systems is: Which are the best resources to request from a public cloud based on the current demand and on resources costs? In this paper we deal with this problem, presenting HCOC: The Hybrid Cloud Optimized Cost scheduling algorithm. HCOC decides which resources should be leased from the public cloud and aggregated to the private cloud to provide sufficient processing power to execute a workflow within a given execution time. We present extensive experimental and simulation results which show that HCOC can reduce costs while achieving the established desired execution time.
ISSN:1867-4828
1869-0238
DOI:10.1007/s13174-011-0032-0