基于超最小最大任务调度的云环境下高效任务调度

D. Gnanaprakasam, M. Mohanraj, T. A. S. Srinivas, S. Bhaggiaraj, Baskaran J, S. Sivankalai
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引用次数: 1

摘要

不断发展的云计算领域处理处理资源的大型任务。从应用的角度来看,大规模云计算环境下数据传输的任务调度机制研究相对较差。调度不均衡会导致流量过载、能量损失和硬件控制失效。此外,家用电器不考虑延迟减少耗电量。因此,物联网(IoT)主导了当前互联网的发展趋势。与互联网相关的大量事物(事物)创造了大量的信息,需要大量的努力和工作准备才能使其有价值。为了解决这一问题,我们提出了一种基于级联收缩优先级(CSP)的超级最小最大任务调度(HMMTS)来分配任务以优化调度。基于混合负载均衡算法的负载均衡策略的应用由切换负载均衡器(CLB)和抢占流管理器(PFM)负责,从而更好地改善了任务分配,平衡了负载,提高了响应时间。实验结果表明,在相位和随机均匀传播中,具有更好的负载均衡,更低的功耗和时间消耗率。仿真结果表明,该方法可以减少数据处理时间,实现负载中和。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Task Scheduling in Cloud Environment Based on Hyper Min Max Task Scheduling
The growing field of cloud computing deals with large tasks for processing resources. From the application point of view, the research on task scheduling mechanism of data transfer in large-scale cloud computing environment is relatively poor. Unbalanced scheduling leads to traffic overload, energy loss, and failure of hardware control. In addition, residential appliances do not consider delay reduction in power consumption. Hence, Internet of Things (IoT) dominates the current trends in the Internet. The large number of things (things) associated with the Internet creates a large amount of information that requires a lot of effort and work preparation to make it valuable. To resolve this problem, we propose a Hyper Min max task scheduling (HMMTS) based in cascade shrink priority (CSP) to allocate task to optimize the scheduling. With intent a Changeover Load Balancer (CLB) and The Preemptive Flow Manager (PFM) is responsible for the application of load balancing strategy based on the mixed load balancing algorithm improves the task allocation better to balance load to improve the response time. Experimental results have been demonstrated with respect to better load balancing, lower power rate, and time consumption rate in both phase and random uniform propagation. Simulated results performance of this process can reduce data processing time and achieve load neutralization.
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