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Optimized Resource Allocation in Cloud Computing Environments
Published Online: May-June 2024
Pages: 78-83
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No DOIAbstract
In Cloud systems, Virtual Machines (VMs) are scheduled to hosts according to their instant resource usage (e.g. to hosts with most available RAM) without considering their overall and long-term utilization. Also, in many cases, the scheduling and placement processes are computational expensive and affect performance of deployed VMs. In this work, a Cloud VM scheduling algorithm that takes into account already running VM resource usage over time by analyzing past VM utilization levels in order to schedule VMs by optimizing performance by using Ant lion optimization classifier (ALO) technique.The Cloud management processes, like VM placement, affect already deployed systems so the aim is to minimize such performance degradation. Moreover, overloaded VMs tend to steal resources from neighboring VMs, so the work maximizes VMs real CPU utilization. The results show that our solution refines traditional Instant-based physical machine selection as it learns the system behavior as well as it adapts over time. The concept of VM scheduling according to resource monitoring data extracted from past resource utilizations (VMs). The count of the physical machine gets reduced by four using Ant lion optimization classifier.
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