基于云的软件系统优先级和最短作业优先调度仿真的实证研究

J. Ru, J. Keung
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引用次数: 44

摘要

背景:考虑到云计算提供的动态资源分配方案,有效的调度算法对于利用这些优势非常重要。目的:本文提出了一种结合任务分组、优先级感知和SJF (short- job-first)的调度算法,以减少等待时间和制造跨度,实现资源利用率的最大化。方法:调度是在考虑网络限制、资源处理能力、等待时间等动态参数、限制条件和需求的情况下,将任务分配到最合适的资源上。该调度算法集成了任务分组、带宽感知优先级和SJF算法,旨在减少处理时间、等待时间和开销。在实验中,使用高斯分布生成任务,使用随机分布创建资源,并使用CloudSim框架在各种条件下模拟所提出的算法。然后将结果与现有算法进行比较以进行评估。结果:与已有的任务分组算法相比,所提算法的等待时间和处理时间明显减少(超过30%)。结论:该方法有效地减少了等待时间和处理时间,降低了处理成本,实现了资源的最佳利用和最小开销,减少了通信中带宽瓶颈的影响。
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An Empirical Investigation on the Simulation of Priority and Shortest-Job-First Scheduling for Cloud-Based Software Systems
Background: Given the dynamics in resource allocation schemes offered by cloud computing, effective scheduling algorithms are important to utilize these benefits. Aim: In this paper, we propose a scheduling algorithm integrated with task grouping, priority-aware and SJF (shortest-job-first) to reduce the waiting time and make span, as well as to maximize resource utilization. Method: Scheduling is responsible for allocating the tasks to the best suitable resources with consideration of some dynamic parameters, restrictions and demands, such as network restriction and resource processing capability as well as waiting time. The proposed scheduling algorithm is integrated with task grouping, prioritization of bandwidth awareness and SJF algorithm, which aims at reducing processing time, waiting time and overhead. In the experiment, tasks are generated using Gaussian distribution and resources are created using Random distribution as well as CloudSim framework is used to simulate the proposed algorithm under various conditions. Results are then compared with existing algorithms for evaluation. Results: In comparison with existing task grouping algorithms, results show that the proposed algorithm waiting time and processing time decreased significantly (over 30%). Conclusion: The proposed method effectively minimizes waiting time and processing time and reduces processing cost to achieve optimum resources utilization and minimum overhead, as well as to reduce influence of bandwidth bottleneck in communication.
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