Cost-efficient resource scheduling in cloud for big data processing using metaheuristic search black widow optimization (MS-BWO) algorithm

Author:

Jagadish Kumar N.1,Balasubramanian C.2

Affiliation:

1. Department of Information Technology, Velammal Institute of Technology, Chennai, Tamil Nadu, India

2. Department of Computer Science and Engineering, P.S.R. Engineering College, Sivakasi, Tamil Nadu, India

Abstract

In a cloud computing system, resources can be accessed at a minimal cost whenever users raise request needs. The primary goal of cloud computing is to provide cost-efficiency of service scheduling to clients fast while using the least number of resources. Cloud Service Provisioning (CSP) can match consumer needs with minimal use of resources. There are several metaheuristic optimization algorithms have been developed in the field of CSP resource minimization and adequate computing resources are required to ensure client satisfaction. However, it performs poorly under a variety of practical constraints, including a vast amount of user data, smart filtering to boost user search, and slow service delivery. In this regard, propose a Black Widow Optimization (BWO) algorithm that reduces cloud service costs while ensuring that all resources are devoted only to end-user needs. It is a nature-inspired metaheuristic algorithm that involved a multi-criterion correlation that is used to identify the relationship between user requirements and available services and thereby, it is defined as an MS-BWO algorithm. Thus finds the most efficient virtual space allocation in a cloud environment. It uses a service provisioning dataset with metrics like energy usage, bandwidth utilization rate, computational cost, and memory consumption. In terms of data performance, the proposed MS-BWO outperforms exceed than other existing state-of-art-algorithms including Work-load aware Autonomic Resource Management Scheme(WARMS), Fuzzy Clustering Load balancer(FCL), Agent-based Automated Service Composition (A2SC) and Load Balancing Resource Clustering (LBRC), and an autonomic approach for resource provisioning (AARP)

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference29 articles.

1. Meta heuristic-based taskdeployment mechanism for load balancing in IaaS cloud;Adhikari;Journalof Network and Computer Applications,2019

2. Multi-objective task scheduling in cloud computing environment by hybridized bat algorithm;Bezdan;Journal of Intelligent & Fuzzy Systems,2022

3. Resource allocationin cloud environment using approaches based particle swarm optimization;Chalack;International Journal of Computer ApplicationsTechnology and Research,2017

4. Work load aware autonomic resource management scheme using grey wolf optimization in cloud environment;Dewangan;IET Communications,2021

5. SCORE: Simulator for cloud optimization of resources and energy consumption;Fernández-Cerero;Simulation Modelling Practice and Theory,2018

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