Cargando…

An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment

Cloud computing has now evolved as an unavoidable technology in the fields of finance, education, internet business, and nearly all organisations. The cloud resources are practically accessible to cloud users over the internet to accomplish the desired task of the cloud users. The effectiveness and...

Descripción completa

Detalles Bibliográficos
Autores principales: Paulraj, D., Sethukarasi, T., Neelakandan, S., Prakash, M., Baburaj, E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10010551/
https://www.ncbi.nlm.nih.gov/pubmed/36913423
http://dx.doi.org/10.1371/journal.pone.0282600
_version_ 1784906198022094848
author Paulraj, D.
Sethukarasi, T.
Neelakandan, S.
Prakash, M.
Baburaj, E.
author_facet Paulraj, D.
Sethukarasi, T.
Neelakandan, S.
Prakash, M.
Baburaj, E.
author_sort Paulraj, D.
collection PubMed
description Cloud computing has now evolved as an unavoidable technology in the fields of finance, education, internet business, and nearly all organisations. The cloud resources are practically accessible to cloud users over the internet to accomplish the desired task of the cloud users. The effectiveness and efficacy of cloud computing services depend on the tasks that the cloud users submit and the time taken to complete the task as well. By optimising resource allocation and utilisation, task scheduling is crucial to enhancing the effectiveness and performance of a cloud system. In this context, cloud computing offers a wide range of advantages, such as cost savings, security, flexibility, mobility, quality control, disaster recovery, automatic software upgrades, and sustainability. According to a recent research survey, more and more tech-savvy companies and industry executives are recognize and utilize the advantages of the Cloud computing. Hence, as the number of users of the Cloud increases, so did the need to regulate the resource allocation as well. However, the scheduling of jobs in the cloud necessitates a smart and fast algorithm that can discover the resources that are accessible and schedule the jobs that are requested by different users. Consequently, for better resource allocation and job scheduling, a fast, efficient, tolerable job scheduling algorithm is required. Efficient Hybrid Job Scheduling Optimization (EHJSO) utilises Cuckoo Search Optimization and Grey Wolf Job Optimization (GWO). Due to some cuckoo species’ obligate brood parasitism (laying eggs in other species’ nests), the Cuckoo search optimization approach was developed. Grey wolf optimization (GWO) is a population-oriented AI system inspired by grey wolf social structure and hunting strategies. Make span, computation time, fitness, iteration-based performance, and success rate were utilised to compare previous studies. Experiments show that the recommended method is superior.
format Online
Article
Text
id pubmed-10010551
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-100105512023-03-14 An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment Paulraj, D. Sethukarasi, T. Neelakandan, S. Prakash, M. Baburaj, E. PLoS One Research Article Cloud computing has now evolved as an unavoidable technology in the fields of finance, education, internet business, and nearly all organisations. The cloud resources are practically accessible to cloud users over the internet to accomplish the desired task of the cloud users. The effectiveness and efficacy of cloud computing services depend on the tasks that the cloud users submit and the time taken to complete the task as well. By optimising resource allocation and utilisation, task scheduling is crucial to enhancing the effectiveness and performance of a cloud system. In this context, cloud computing offers a wide range of advantages, such as cost savings, security, flexibility, mobility, quality control, disaster recovery, automatic software upgrades, and sustainability. According to a recent research survey, more and more tech-savvy companies and industry executives are recognize and utilize the advantages of the Cloud computing. Hence, as the number of users of the Cloud increases, so did the need to regulate the resource allocation as well. However, the scheduling of jobs in the cloud necessitates a smart and fast algorithm that can discover the resources that are accessible and schedule the jobs that are requested by different users. Consequently, for better resource allocation and job scheduling, a fast, efficient, tolerable job scheduling algorithm is required. Efficient Hybrid Job Scheduling Optimization (EHJSO) utilises Cuckoo Search Optimization and Grey Wolf Job Optimization (GWO). Due to some cuckoo species’ obligate brood parasitism (laying eggs in other species’ nests), the Cuckoo search optimization approach was developed. Grey wolf optimization (GWO) is a population-oriented AI system inspired by grey wolf social structure and hunting strategies. Make span, computation time, fitness, iteration-based performance, and success rate were utilised to compare previous studies. Experiments show that the recommended method is superior. Public Library of Science 2023-03-13 /pmc/articles/PMC10010551/ /pubmed/36913423 http://dx.doi.org/10.1371/journal.pone.0282600 Text en © 2023 Paulraj et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Paulraj, D.
Sethukarasi, T.
Neelakandan, S.
Prakash, M.
Baburaj, E.
An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title_full An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title_fullStr An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title_full_unstemmed An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title_short An Efficient Hybrid Job Scheduling Optimization (EHJSO) approach to enhance resource search using Cuckoo and Grey Wolf Job Optimization for cloud environment
title_sort efficient hybrid job scheduling optimization (ehjso) approach to enhance resource search using cuckoo and grey wolf job optimization for cloud environment
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10010551/
https://www.ncbi.nlm.nih.gov/pubmed/36913423
http://dx.doi.org/10.1371/journal.pone.0282600
work_keys_str_mv AT paulrajd anefficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT sethukarasit anefficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT neelakandans anefficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT prakashm anefficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT baburaje anefficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT paulrajd efficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT sethukarasit efficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT neelakandans efficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT prakashm efficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment
AT baburaje efficienthybridjobschedulingoptimizationehjsoapproachtoenhanceresourcesearchusingcuckooandgreywolfjoboptimizationforcloudenvironment