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dc.contributor.authorJobava, Akaki
dc.contributor.authorYazidi, Anis
dc.contributor.authorOommen, John
dc.contributor.authorBegnum, Kyrre
dc.date.accessioned2017-03-01T08:27:12Z
dc.date.accessioned2017-03-03T10:51:09Z
dc.date.available2017-03-01T08:27:12Z
dc.date.available2017-03-03T10:51:09Z
dc.date.issued2016
dc.identifier.citationJobava A, Yazidi A, Oommen J, Begnum KM: Achieving Intelligent Traffic-aware Consolidation of Virtual Machines in a Data Center Using Learning Automata. In: Badra M, Pau G, Vassiliou. 2016 8th IFIP International Conference on New Technologies, Mobility and Security (NTMS), 2016. IEEE conference proceedingslanguage
dc.identifier.urihttps://hdl.handle.net/10642/4090
dc.description.abstractCloud Computing (CC) is becoming increasingly pertinent and popular. A natural consequence of this is that many modern-day data centers experience very high internal traffic within the data centers themselves. The VMs with high mutual traffic often end up being far apart in the data center network, forcing them to communicate over unnecessarily long distances. The consequent traffic bottlenecks negatively affect both the performance of the application and the network in its entirety, posing nontrivial challenges for the administrators of these cloudbased data centers. The problem can, quite naturally, be compartmentalized into two phases which follow each other. First of all, the VMs are consolidated with a VM clustering algorithm, and this is achieved by utilizing the toolbox involving Learning Automata (LA). By mapping the clustering problem onto the Graph Partitioning (GP) problem, our LAbased solution successfully reduces the total communication cost by amounts that range between 34% to 85%. Thereafter, the resulting clusters are assigned to the server racks using a cluster placement algorithm that involves a completely different intelligent strategy, i.e., one that invokes Simulated Annealing (SA). This phase further reduces the total cost of communication by amounts that range between 89% to 99%. The analysis and results for different models and topologies demonstrate that the optimization is done in a fast and computationally-efficient way. Indeed, as far as we know, this paper pioneers the application of LA in the traffic-aware consolidation of virtual machines in data centers, and also pioneers a strategy which serializes the tools in LA and SA to optimize CC.language
dc.language.isoenlanguage
dc.publisherIEEE conference proceedingslanguage
dc.subjectCloud Computing (CC)language
dc.subjectLearning Automata (LA)language
dc.subjectGraph Partitioning (GP)language
dc.subjectTraffic-aware consolidationlanguage
dc.subjectVirtual machineslanguage
dc.titleAchieving Intelligent Traffic-aware Consolidation of Virtual Machines in a Data Center Using Learning Automatalanguage
dc.typeChapter
dc.typePeer reviewedlanguage
dc.date.updated2017-03-01T08:27:12Z
dc.description.versionpublishedVersionlanguage
dc.identifier.doihttp://dx.doi.org/10.1109/NTMS.2016.7792430
dc.identifier.cristin1428465
dc.source.isbn978-1-5090-2914-3


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