Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization

The present paper describes a hybrid group search optimization (GSO) and center-based genetic algorithm (CBGA)-based model for task scheduling in cloud computing. The proposed hybrid model combines the GSO, which has been successful in its application in task scheduling, with the use of the CBGA. Th...

Full description

Bibliographic Details
Main Authors: Parthasarathy Sellaperumal, Venkateswaran Chinnasami Jothi
Format: Article
Language:English
Published: De Gruyter 2017-11-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2017-0388
id doaj-c05fa8466d5c46479dfe987ec1421629
record_format Article
spelling doaj-c05fa8466d5c46479dfe987ec14216292021-09-06T19:40:38ZengDe GruyterJournal of Intelligent Systems0334-18602191-026X2017-11-01291537010.1515/jisys-2017-0388Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search OptimizationParthasarathy Sellaperumal0Venkateswaran Chinnasami Jothi1Faculty of MCA, Valliammai Engineering College, Anna University, Chennai, Tamil Nadu, IndiaDepartment of MCA, Presidency College, Chennai 5, Tamil Nadu, IndiaThe present paper describes a hybrid group search optimization (GSO) and center-based genetic algorithm (CBGA)-based model for task scheduling in cloud computing. The proposed hybrid model combines the GSO, which has been successful in its application in task scheduling, with the use of the CBGA. The basic scheme of our approach is to utilize the benefits of both the GSO algorithm and CBGA excluding their disadvantages. In our work, we introduce the hybrid clouds, which are needed to determine which task to be outsourced and to what cloud provider. These choices ought to minimize the expense of running an allotment of the aggregate task on one or various public cloud providers while considering the application prerequisites, e.g. deadline constraints and data requirements. In the hybridization approach (HGSOCBGA), each dimension of a solution represents a task and the solution as a whole signifies all the task priorities. The vital issue is how to allocate the user tasks to exploit the profit of the infrastructure as a service (IaaS) provider while promising the quality of service (QoS). The generated solution proficiently assures the user-level QoS and improves the IaaS providers’ credibility and economic benefit. The HGSOCBGA method also designs the hybridization process and suitable fitness function of the corresponding task. According to the evolved results, it has been found that our algorithm always outperforms the traditional algorithms.https://doi.org/10.1515/jisys-2017-0388hybrid gso-cbgaschedulingcloud computingquality of serviceiaas providers
collection DOAJ
language English
format Article
sources DOAJ
author Parthasarathy Sellaperumal
Venkateswaran Chinnasami Jothi
spellingShingle Parthasarathy Sellaperumal
Venkateswaran Chinnasami Jothi
Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
Journal of Intelligent Systems
hybrid gso-cbga
scheduling
cloud computing
quality of service
iaas providers
author_facet Parthasarathy Sellaperumal
Venkateswaran Chinnasami Jothi
author_sort Parthasarathy Sellaperumal
title Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
title_short Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
title_full Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
title_fullStr Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
title_full_unstemmed Deadline Constrained Task Scheduling Method Using a Combination of Center-Based Genetic Algorithm and Group Search Optimization
title_sort deadline constrained task scheduling method using a combination of center-based genetic algorithm and group search optimization
publisher De Gruyter
series Journal of Intelligent Systems
issn 0334-1860
2191-026X
publishDate 2017-11-01
description The present paper describes a hybrid group search optimization (GSO) and center-based genetic algorithm (CBGA)-based model for task scheduling in cloud computing. The proposed hybrid model combines the GSO, which has been successful in its application in task scheduling, with the use of the CBGA. The basic scheme of our approach is to utilize the benefits of both the GSO algorithm and CBGA excluding their disadvantages. In our work, we introduce the hybrid clouds, which are needed to determine which task to be outsourced and to what cloud provider. These choices ought to minimize the expense of running an allotment of the aggregate task on one or various public cloud providers while considering the application prerequisites, e.g. deadline constraints and data requirements. In the hybridization approach (HGSOCBGA), each dimension of a solution represents a task and the solution as a whole signifies all the task priorities. The vital issue is how to allocate the user tasks to exploit the profit of the infrastructure as a service (IaaS) provider while promising the quality of service (QoS). The generated solution proficiently assures the user-level QoS and improves the IaaS providers’ credibility and economic benefit. The HGSOCBGA method also designs the hybridization process and suitable fitness function of the corresponding task. According to the evolved results, it has been found that our algorithm always outperforms the traditional algorithms.
topic hybrid gso-cbga
scheduling
cloud computing
quality of service
iaas providers
url https://doi.org/10.1515/jisys-2017-0388
work_keys_str_mv AT parthasarathysellaperumal deadlineconstrainedtaskschedulingmethodusingacombinationofcenterbasedgeneticalgorithmandgroupsearchoptimization
AT venkateswaranchinnasamijothi deadlineconstrainedtaskschedulingmethodusingacombinationofcenterbasedgeneticalgorithmandgroupsearchoptimization
_version_ 1717768060002107392