This document presents a study on optimal feature selection from the VMware ESXi 5.1 server to enhance resource management by applying various feature selection and clustering algorithms, particularly the k-means algorithm. The study focuses on evaluating different parameter sets for multiple virtual machines and utilizes indices like Davies-Bouldin and Dunn for cluster assessment. A detailed methodology is provided, along with results from various feature selection algorithms used to determine relevant parameters for CPU, memory, disk, network, and power resources.
Related topics: