The document summarizes a study on optimal feature selection from VMware ESXi 5.1. Data was collected from a VMware server running multiple virtual machines under different loads. Feature selection algorithms like CFS, RELIEF, chi-square, wrapper and rough set methods were used to extract the optimal set of parameters. K-means clustering algorithm grouped the VMs and cluster quality was determined using Davies Bouldin and Dunn indices. The best cluster's features were considered the optimal parameter set for resource usage analysis and VM selection during migration.
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