Integrating Deep Reinforcement Learning (DRL) with GAACO for Resource Scheduling in Cloud Computing

Authors

  • Fatma Rjab Almasre Department of Computer Science, Faculty of Education Ghat, Sebha University, Ghat, Libya

Keywords:

Cloud Computing, Deep Reinforcement Learning, Resource scheduling, Intelligent Resource Management.

Abstract

Efficient scheduling of resources is a major concern in cloud computing, which is mainly due to dynamic workloads, scarcity of resources and requirement for quality of service (QoS). This paper develops a hybrid dispatching model, which combines Genetic Algorithm-Ant Colony Optimization (GAACO) with Deep Reinforcement Learning (DRL). The hybrid algorithm was implemented and evaluated using CloudSim 3.0.3 to improve the adaptivity and efficiency. Experimental results demonstrate that GAACO+DRL consistently outperforms GAACO alone, reducing makespan by up to 30%, lowering average waiting time by 20–35%, improving throughput, balancing workload distribution, reducing energy consumption, and completely eliminating SLA violations. These findings highlight the effectiveness of combining met heuristic optimization with reinforcement learning to achieve stable, efficient, and scalable resource scheduling in cloud computing.

Dimensions

Published

2025-11-02

How to Cite

Fatma Rjab Almasre. (2025). Integrating Deep Reinforcement Learning (DRL) with GAACO for Resource Scheduling in Cloud Computing. African Journal of Advanced Pure and Applied Sciences (AJAPAS), 4(4), 344–353. Retrieved from https://www.aaasjournals.com/index.php/ajapas/article/view/1637

Issue

Section

Articles