Content area

Abstract

Cloud computing is an emerging distributed system that provides flexible and dynamically scalable computing resources for use at low cost. Task scheduling in cloud computing environment is one of the main problems that need to be addressed in order to improve system performance and increase cloud consumer satisfaction. Although there are many task scheduling algorithms, existing approaches mainly focus on minimizing the total completion time while ignoring workload balancing. Moreover, managing the quality of service (QoS) of the existing approaches still needs to be improved. In this paper, we propose a novel algorithm named MGGS (modified genetic algorithm (GA) combined with greedy strategy). The proposed algorithm leverages the modified GA algorithm combined with greedy strategy to optimize task scheduling process. Different from existing algorithms, MGGS can find an optimal solution using fewer number of iterations. To evaluate the performance of MGGS, we compared the performance of the proposed algorithm with several existing algorithms based on the total completion time, average response time, and QoS parameters. The results obtained from the experiments show that MGGS performs well as compared to other task scheduling algorithms.

Details

Title
An improved genetic algorithm using greedy strategy toward task scheduling optimization in cloud environments
Author
Zhou, Zhou 1 ; Li, Fangmin 2 ; Zhu Huaxi 3 ; Xie Houliang 3 ; Abawajy, Jemal H 4 ; Chowdhury, Morshed U 4 

 Changsha University, Department of Mathematics and Computer Science, Changsha, China (GRID:grid.448798.e); Hunan University, Department of Computer Science, Changsha, China (GRID:grid.67293.39) 
 Changsha University, Department of Mathematics and Computer Science, Changsha, China (GRID:grid.448798.e) 
 Zhangjiajie Institute of Aeronautical Engineering, Information Engineering Department, Zhangjiajie, China (GRID:grid.448798.e) 
 Deakin University, School of Information Technology, Geelong, Australia (GRID:grid.1021.2) (ISNI:0000 0001 0526 7079) 
Pages
1531-1541
Publication year
2020
Publication date
Mar 2020
Publisher
Springer Nature B.V.
ISSN
09410643
e-ISSN
14333058
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2368392482
Copyright
Neural Computing and Applications is a copyright of Springer, (2019). All Rights Reserved.