基于动态优先级和优化技术的云环境下高效任务调度

D. Singh, A. Mittal
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引用次数: 0

摘要

云计算是一个新兴的领域过程,它承担着处理资源的巨大任务。从应用的角度来看,对大型云计算环境下数据传输任务调度机制的研究还有待加强。调度不均衡会导致流量负载、能量损失和硬件控制失效。此外,没有考虑居民设备减少功耗延迟。因此,物联网(IoT)主导着互联网的现代趋势。与互联网相关的大量事物(对象)产生了大量的信息,这些信息需要大量的努力和任务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)的动态多级任务调度(DMLTS)来分配任务以优化调度。战术负载平衡器(TLB)和抢占式流量管理器(PFM)负责应用基于混合负载平衡算法的负载平衡策略,以更好地改善任务分配,从而平衡负载以提高响应时间。实验结果表明,在相位和随机均匀传播中都具有较好的负载均衡,较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 a Cloud Environment based on Dynamic Priority and Optimized Technique
Cloud computing is an emerging field process with an enormous task of handling resources. From an application perspective, the study of task scheduling mechanisms for data transfer in large cloud computing environments needs to be performed better. Unbalanced scheduling leads to traffic load, energy loss, and hardware control failure. In addition, residents' devices are not considered to reduce power consumption delay. So, the Internet of things (IoT) rules the modern trends of the Internet. The enormous number of things (objects), which are associated with the Internet, produces a large amount of information that needs a ton of exertion and task preparation to make it valuable. To resolve this problem, we propose a dynamic multi-level task scheduling (DMLTS) based on cascade shrink priority (CSP) to allocate the task to optimize the scheduling. With intent, a Tactical Load Balancer (TLB) and The Preemptive Flow Manager (PFM) are responsible for applying a load balancing strategy based on the mixed load balancing algorithm to improve the task allocation better to balance the load to improve the response time. Experimental results have been demonstrated concerning 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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