Sanjalawe Yousef, Fraihat Salam, Al-E'mari Salam, Abualhaj Mosleh, Makhadmeh Sharif, Alzubi Emran
Information Technology Department, King Abdullah II School for Information Technology, The University of Jordan (JU), Amman, Jordan.
Artificial Intelligence Research Center (AIRC), College of Engineering and Information Technology, Ajman University, Ajman, P.O.Box, United Arab Emirates.
PLoS One. 2025 Sep 9;20(9):e0329765. doi: 10.1371/journal.pone.0329765. eCollection 2025.
The increasing dependence on cloud computing as a cornerstone of modern technological infrastructures has introduced significant challenges in resource management. Traditional load-balancing techniques often prove inadequate in addressing cloud environments' dynamic and complex nature, resulting in suboptimal resource utilization and heightened operational costs. This paper presents a novel smart load-balancing strategy incorporating advanced techniques to mitigate these limitations. Specifically, it addresses the critical need for a more adaptive and efficient approach to workload management in cloud environments, where conventional methods fall short in handling dynamic and fluctuating workloads. To bridge this gap, the paper proposes a hybrid load-balancing methodology that integrates feature selection and deep learning models for optimizing resource allocation. The proposed Smart Load Adaptive Distribution with Reinforcement and Optimization approach, SLADRO, combines Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) algorithms for load prediction, a hybrid bio-inspired optimization technique-Orthogonal Arrays and Particle Swarm Optimization (OOA-PSO)-for feature selection algorithms, and Deep Reinforcement Learning (DRL) for dynamic task scheduling. Extensive simulations conducted on a real-world dataset called Google Cluster Trace dataset reveal that the SLADRO model significantly outperforms traditional load-balancing approaches, yielding notable improvements in throughput, makespan, resource utilization, and energy efficiency. This integration of advanced techniques offers a scalable and adaptive solution, providing a comprehensive framework for efficient load balancing in cloud computing environments.
对云计算作为现代技术基础设施基石的日益依赖,给资源管理带来了重大挑战。传统的负载均衡技术往往不足以应对云环境动态复杂的特性,导致资源利用效率低下且运营成本增加。本文提出了一种新颖的智能负载均衡策略,融合先进技术以减轻这些限制。具体而言,它满足了在云环境中对更具适应性和高效性的工作负载管理方法的迫切需求,而传统方法在处理动态波动的工作负载方面存在不足。为弥合这一差距,本文提出了一种混合负载均衡方法,将特征选择与深度学习模型相结合以优化资源分配。所提出的具有强化和优化功能的智能负载自适应分配方法(SLADRO),结合了卷积神经网络(CNN)和长短期记忆(LSTM)算法进行负载预测,一种混合生物启发式优化技术——正交阵列和粒子群优化(OOA - PSO)——用于特征选择算法,以及深度强化学习(DRL)用于动态任务调度。在一个名为谷歌集群跟踪数据集的真实世界数据集上进行的广泛模拟表明,SLADRO模型显著优于传统负载均衡方法,在吞吐量、完工时间、资源利用率和能源效率方面有显著提升。这种先进技术的整合提供了一种可扩展且自适应的解决方案,为云计算环境中的高效负载均衡提供了一个全面的框架。