Task Scheduling for Multi-Objective Optimization in a Cloud Computing Environment

Authors

  • Agrawal A Dept. of Computer Engineering, IET, Devi Ahilya Vishwavidyalaya, Indore- India

Keywords:

Cloud Computing, Task Scheduling, Grey Wolf Optimization, Multi Objective Optimization, Execution Time, Reduced Cost

Abstract

Scheduling is the process of allocating cloud resources to several users in accordance with a predetermined schedule. Proper parallel operations planning is necessary to achieve good performance in scattered conditions. Work scheduling must take a number of limits and objectives into account in order to create meaningful schedules in the cloud environment. The difficulty of task mapping given the resources at hand is categorised as an NP-hard problem. Cloud computing's Quality of Service (QoS) problem has to be overcome before it can be deemed successful. Resource allocation is crucial when it comes to tasks with performance Optimization restrictions. The only way to effectively accomplish crucial objectives in cloud computing including high performance, high profit, high utilization, scalability, provision efficiency, and economy is by using an effective task scheduling system. This article suggests a framework based on the Grey Wolf Optimization, Particle Swarm Optimization, and Flower Pollination Algorithms for efficient job scheduling in a cloud computing environment. Job scheduling is done by Grey Wolf Optimization to shorten execution times and lower costs.

References

M. Joundy, S. Sarhan, S. Elmougy, "Task Scheduling Algorithms In Cloud Computing: A Comparative Study," International Journal of Intelligent Computing and Information Science, VOL.15, NO. 4 OCTOBER 2015

Sung Ho Jang et. al., The Study of Genetic Algorithm-based Task Scheduling for Cloud Computing, International Journal of Control and Automation 5(4):157-162 Dec 2012.

Hu Xu-Huai et. al., "An IPSO Algorithm for Grid Task Scheduling Based on Satisfaction Rate," IHMSC '09. International Conference on Intelligent Human-Machine Systems and Cybernetics, 2009.

S. S. Kim, J. H. Byeon, H. Liu, A. Abraham, and S. McLoone, “Optimal job scheduling in grid computing using efficient binary artificial bee colony optimization,” Soft Computing, vol. 17, no. 5, pp. 867–882, 2013.

https://scholarworks.wmich.edu/cgi/viewcontent.cgi?article = 1661&context=masters_theses

N. J. Kansal and I. Chana, “Artificial bee colony based energy-aware resource utilization technique for cloud computing,” Concurrency and Computation: Practice and Experience, vol. 27, no. 5, pp. 1207–1225, 2015.

X. Chen and D. Long, "Task scheduling of cloud computing using integrated particle swarm algorithm and ant colony algorithm," Clust. Comput., pp. 1-9, 2017.

Jasti, V., Zamani, A., Arumugam, K., Naved, M., Pallathadka, H., & Sammy, F. et al. (2022). Computational Technique Based on Machine Learning and Image Processing for Medical Image Analysis of Breast Cancer Diagnosis. Security And Communication Networks, 2022, 1-7. doi: 10.1155/2022/1918379

Mondal, B., Dasgupta, K., Dutta, P.: Load balancing in cloud computing using stochastic hill climbing-a soft computing approach. Procedia Technol. 4, 783–789 (2012)

Abdi, S., Motamedi, S.A., Sharifian, S.: Task scheduling using modified PSO algorithm in cloud computing environment. In: International Conference on Machine Learning, Electrical and Mechanical Engineering (ICMLEME’2014) Jan. 8–9, Dubai (UAE) (2014)

I. Damakoa, et. Al. i, “Efficient and scalable ACO-based task scheduling for green cloud computing environment,” in 2017 IEEE International Conference on Smart Cloud (SmartCloud), pp. 66–71, New York, NY, USA, 2017.

A. Alireza, “PSO with adaptive mutation and inertia weight and its application in parameter estimation of dynamic systems,” Acta Automatica Sinica, vol. 37, no. 5, pp. 541–549, 2011.

Chitra, Madhusudhanan, Sakthidharan & Saravanan 2014, ‘Local minima jump PSO for workflow scheduling in cloud computing environments’, In Advances in computer science and its applications, vol. 19, no. 3, pp. 222-234.

Kamalam Balasubramani , Karnan Marcus, "A Study on Flower Pollination Algorithm and Its Applications",International Journal of Application or Innovation in Engineering & Management, Vol. 3, Issue11, Nov. 2014.

Downloads

Published

2025-11-12

How to Cite

[1]
A. Agrawal, “Task Scheduling for Multi-Objective Optimization in a Cloud Computing Environment”, Int. J. Comp. Sci. Eng., vol. 5, no. 12, pp. 339–343, Nov. 2025.

Issue

Section

Research Article