The study focuses on optimizing resource usage of VMware ESXi 5.1 servers by selecting an optimal set of parameters from various metrics using feature selection algorithms and clustering methods. K-means clustering identifies the best clusters based on Davies-Bouldin and Dunn indices to determine the most relevant virtual machines for workload management. The research emphasizes effective feature selection is crucial for enhancing inductive learning efficiency in server resource management.