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A comparison of techniques to detect similarities in cloud virtual machines
Author(s) -
Claudia Canali,
Riccardo Lancellotti
Publication year - 2016
Publication title -
international journal of grid and utility computing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.187
H-Index - 20
eISSN - 1741-8488
pISSN - 1741-847X
DOI - 10.1504/ijguc.2016.077489
Subject(s) - computer science , cloud computing , cluster analysis , scalability , workload , virtual machine , distributed computing , process (computing) , data mining , similarity (geometry) , divergence (linguistics) , mixture model , machine learning , database , artificial intelligence , operating system , linguistics , philosophy , image (mathematics)
Scalability in monitoring and management of cloud data centres may be improved through the clustering of virtual machines (VMs) exhibiting similar behaviour. However, available solutions for automatic VM clustering present some important drawbacks that hinder their applicability to real cloud scenarios. For example, existing solutions show a clear trade-off between the accuracy of the VMs clustering and the computational cost of the automatic process; moreover, their performance shows a strong dependence on specific technique parameters. To overcome these issues, we propose a novel approach for VM clustering that uses Mixture of Gaussians (MoGs) together with the Kullback-Leiber divergence to model similarity between VMs. Furthermore, we provide a thorough experimental evaluation of our proposal and of existing techniques to identify the most suitable solution for different workload scenarios

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