Research on Task Scheduling Model of Ant Colony Optimization Cloud Computing Platform for Online Practical Customer-training Application

被引:0
作者
Wang, Hongtao [1 ]
机构
[1] School of Electronic and Communication Engineering, Jilin Technology College of Electronic Information, Jilin
关键词
ACO optimization; Cloud computing; Online practical training; Task scheduling;
D O I
10.5573/IEIESPC.2024.13.3.243
中图分类号
学科分类号
摘要
With the continuous development of internet information technology, cloud-computing task-scheduling platform technology is gradually maturing. Cloud computing is profoundly changing every aspect of people's lives and providing many conveniences. With the application of cloud computing in more fields, more extensive applications and efficient task scheduling algorithms have become increasingly important. This research focuses on the problem of task-scheduling methods for cloud computing platforms in customer-oriented online training systems. Based on the optimization of the ant colony algorithm, an ant colony optimization (ACO) cloud-computing task-scheduling algorithm is proposed. The research results indicate that when the number of tasks is 300, the makespan value of the optimized ant colony cloud scheduling algorithm (OACC) is 340, that of the discrete firefly algorithm (DFA) is 350, that of multi-objective differential evolution (MODE) is 380, and that of improved group search optimization (IGSO) is 409. The overall performance of OACC was 20.3% higher than that of IGSO. OACC maintained a low and stable degree of imbalance (DI) in different task count tests. At a task volume of 300, the overall utility evaluation of the ACO cloud-computing task-scheduling algorithm was 146, which is 31.5% higher than ACO, 18.7% higher than TACO, and 8.1% higher than LB-AACO. The experimental results meet expectations and indicate that the OACC cloud-computing task-scheduling algorithm proposed in the study has high task-processing ability and efficiency and is capable of scheduling tasks on cloud computing platforms for customer-oriented online training systems. Copyrights © 2024 The Institute of Electronics and Information Engineers.
引用
收藏
页码:243 / 253
页数:10
相关论文
共 19 条
[1]  
Rjoub G., Bentahar J., Wahab O. A., Big Trust Scheduling: trust-aware big data task scheduling approach in cloud computing environments, Future generation computer systems, 110, pp. 1079-1097, (2019)
[2]  
Pirozmand P., Hosseinabadi A. A. R., Farrokhzad M., Et al., Multi - objective hybrid genetic algorithm for task scheduling problem in cloud computing, Neural computing & applications, 34, 2022, pp. 2497-2497, (2022)
[3]  
Li K., Jia L., Shi X., A Study into Cloud Computing Task Scheduling Based on BIAS Algorithm, Journal of Internet Technology, pp. 1375-1383, (2021)
[4]  
Zeedan M., Attiya G., El-Fishawy N., A Hybrid Approach for Task Scheduling Based Particle Swarm and Chaotic Strategies in Cloud Computing Environment, Parallel Processing Letters, 32, pp. 2250001-2250001, (2022)
[5]  
Alsaidy S. A., Abbood A. D., Sahib M. A., Heuristic initialization of PSO task scheduling algorithm in cloud computing, Journal of King Saud University - Computer and Information Sciences, 34, pp. 2370-2382, (2020)
[6]  
Bulchandani N., Chourasia U., Agrawal S., Et al., A Survey on task scheduling algorithms in cloud computing, 9, pp. 460-468, (2020)
[7]  
Sv A., Pk B., Vmax C., Et al., Hybrid electro search with genetic algorithm for task scheduling in cloud computing – ScienceDirect, Ain Shams Engineering Journal, 12, pp. 631-639, (2020)
[8]  
Wu Z., Xiong J., A Novel Task-Scheduling Algorithm of Cloud Computing Based on Particle Swarm Optimization, International Journal of Gaming and Computer-Mediated Simulations, 13, pp. 1-15, (2021)
[9]  
Smith N., Online training is the future and evolving all the time, The Lighting Journal, 85, pp. 50-50, (2020)
[10]  
Majumder M., Gaur U., Singh K., Et al., Impact of COVID-19 pandemic on radiology education, training, and practice: A narrative review, World Journal of Radiology, 13, pp. 354-370, (2021)