Resource Allocation Scheduling Optimization Based on Internet of Things under Cloud Platforms

Q3 Multidisciplinary Archives Des Sciences Pub Date : 2024-03-10 DOI:10.62227/as/74103
Ying Xie
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Abstract

In this paper, we explore how to optimize IoT-based resource allocation and scheduling in a cloud platform environment, focusing on improving computing resource utilization and quality of service, while reducing latency and packet loss. a model is adopted, which contains a number of edge servers and randomly generated computational tasks, taking into account the network conditions between the servers and the tasks. an objective function is established, aiming to maximize the computational resource utilization and QoS, and the corresponding constraints are proposed. Simulations are conducted using CloudSim, and the experimental results show that the total number of VoCS increases from 243.63 to 1397.71 when the scheduling demand is increased from 8 to 64, demonstrating the adaptability and efficiency of the algorithm under different demands. In addition, the algorithm is effective in dealing with both small-scale (200 tasks) and large-scale (6000 tasks) tasks. In addition, the algorithm demonstrates low load imbalance and short task completion time when dealing with both small-scale (200 tasks) and large-scale (6000 tasks) task sets, which proves its effectiveness. Ultimately, the scheduling method proposed in this study not only improves resource utilization and quality of service, but also reduces task completion time and cost.
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基于云平台下物联网的资源分配调度优化
本文探讨了如何在云平台环境下优化基于物联网的资源分配和调度,重点是提高计算资源利用率和服务质量,同时减少延迟和丢包。采用的模型包含若干边缘服务器和随机生成的计算任务,考虑了服务器和任务之间的网络条件,建立了目标函数,旨在最大化计算资源利用率和服务质量,并提出了相应的约束条件。实验结果表明,当调度需求从 8 个增加到 64 个时,VoCS 总数从 243.63 个增加到 1397.71 个,证明了该算法在不同需求下的适应性和效率。此外,该算法在处理小规模(200 个任务)和大规模(6000 个任务)任务时都很有效。此外,该算法在处理小规模(200 个任务)和大规模(6000 个任务)任务集时,都表现出较低的负载不平衡和较短的任务完成时间,证明了其有效性。最终,本研究提出的调度方法不仅提高了资源利用率和服务质量,还缩短了任务完成时间,降低了成本。
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来源期刊
Archives Des Sciences
Archives Des Sciences 综合性期刊-综合性期刊
CiteScore
1.10
自引率
0.00%
发文量
0
审稿时长
1 months
期刊介绍: Archives des Sciences est un journal scientifique multidisciplinaire et international. Les articles sont soumis à un comité de lecture.
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