Mr-moslo: vm consolidation using multiple regression multi-objective seven-spot ladybird optimization for host overload detection
Akram Saeed Aqlan Alhammadi, Dr.V. Vasanthi

TL;DR
This paper introduces MR-MOSLO, a novel adaptive regression and multi-objective optimization approach for host overload detection in cloud VM consolidation, improving accuracy and reducing power consumption.
Contribution
It proposes a new combined model using multiple regression and MOSLO for more accurate host overload detection considering multiple resources.
Findings
Detects host overload with high accuracy
Reduces power consumption in VM consolidation
Achieves better SLA and energy efficiency
Abstract
Virtual Machine (VM)consolidation is a crucial process in improving the utilization of the resource in cloud computing services.As the cloud data centers consume high electrical power,the operational costs and carbon dioxide releases increases.The inefficient usage of the resources is the main reason for these problems and VM consolidation is a viable solution.VM consolidation includes host overload/under-load detection,VM selection and VM placement processes.Most existing host overload/under-load detection approaches of VM consolidation uses CPU utilization only for the determining host load.In this paper,three resources namely CPU utilization,memory utilization and bandwidth utilization are used for host overload detection and an adaptive regression based model called Multiple Regression Multi-Objective Seven-Spot Ladybird Optimization(MR-MOSLO) is proposed.This model is based on…
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