Senthilkumar G, Anandamurugan S
Department of Information Technology, Kongu Engineering College, Perundurai, India.
Network. 2025 May;36(2):274-293. doi: 10.1080/0954898X.2024.2391401. Epub 2024 Sep 25.
The rapid growth of cloud computing has led to the widespread adoption of heterogeneous virtualized environments, offering scalable and flexible resources to meet diverse user demands. However, the increasing complexity and variability in workload characteristics pose significant challenges in optimizing energy consumption. Many scheduling algorithms have been suggested to address this. Therefore, a self-attention-based progressive generative adversarial network optimized with Dwarf Mongoose algorithm adopted Energy and Deadline Aware Scheduling in heterogeneous virtualized cloud computing (SAPGAN-DMA-DAS-HVCC) is proposed in this paper. Here, a self-attention based progressive generative adversarial network (SAPGAN) is proposed to schedule activities in a cloud environment with an objective function of makespan and energy consumption. Then Dwarf Mongoose algorithm is proposed to optimize the weight parameters of SAPGAN. Outcome of proposed approach SAPGAN-DMA-DAS-HVCC contains 32.77%, 34.83% and 35.76% higher right skewed makespan, 31.52%, 33.28% and 29.14% lower cost when analysed to the existing models, like task scheduling in heterogeneous cloud environment utilizing mean grey wolf optimization approach, energy and performance-efficient task scheduling in heterogeneous virtualized Energy and Performance Efficient Task Scheduling Algorithm, energy and make span aware scheduling of deadline sensitive tasks on the cloud environment, respectively.
云计算的快速发展导致异构虚拟化环境的广泛采用,它提供可扩展且灵活的资源以满足多样化的用户需求。然而,工作负载特征日益增加的复杂性和多变性给优化能源消耗带来了重大挑战。为此人们提出了许多调度算法。因此,本文提出了一种基于自注意力的渐进生成对抗网络,该网络采用矮猫鼬算法进行优化,并在异构虚拟化云计算中采用了能源与截止日期感知调度(SAPGAN-DMA-DAS-HVCC)。这里,提出了一种基于自注意力的渐进生成对抗网络(SAPGAN),以在云环境中调度活动,其目标函数是完工时间和能源消耗。然后提出了矮猫鼬算法来优化SAPGAN的权重参数。与现有模型相比,所提出的方法SAPGAN-DMA-DAS-HVCC的结果分别为右偏完工时间高出32.77%、34.83%和35.76%,成本分别降低31.52%、33.28%和29.14%,这些现有模型如利用平均灰狼优化方法的异构云环境中的任务调度、异构虚拟化环境中的能源与性能高效任务调度算法、云环境中对截止日期敏感任务的能源与完工时间感知调度。