Ford Fulkerson和Newey West基于回归的数据通信云计算动态负载平衡

Q1 Mathematics
Prabhakara B. K., Chandrakant Naikodi, Suresh L.
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引用次数: 0

摘要

在云计算(Cloud Computing, CC)环境中,负载均衡是指对虚拟机资源进行优化的过程。CC环境中的负载平衡是用于确保不可区分的工作负载分配和有效利用资源的分析方法之一。这是因为只有确保动态工作负载的有效平衡,才能获得更高的用户满意度和最优的资源分配,从而提高云应用程序的性能。此外,负载平衡的一个重要目标是任务调度,因为使用云的客户机数量激增会导致不适当的作业调度。因此,必须解决围绕任务调度的问题。本文提出了一种CC环境下基于Ford Fulkerson和newy West回归的动态负载平衡(FF-NWRDLB)方法。FF-NWRDLB方法分为任务调度和动态负载均衡两部分。首先,将基于Ford fulkerson的任务调度应用于从个人云数据集获取的云用户请求任务。在此,采用基于任务流的Ford Fulkerson函数,保证了任务调度的高能效。计算资源之间不平衡的工作负载分配可以平稳地影响非对称科学应用程序的执行。在这种情况下,负载平衡是提高资源利用率的最重要的解决方案之一。然而,选择最佳的实现负载平衡技术并不是一件微不足道的工作。例如,选择负载平衡模型不适用于具有动态行为的环境。在这种情况下,一种基于newwey West regression的机器学习技术被设计用于在运行时以动态方式平衡负载,从而确保准确的数据通信。将FF-NWRDLB方法与最近使用马尔可夫优化和预测方案实现负载平衡的算法进行了比较。我们的实验结果表明,我们提出的FF-NWRDLB方法在CC环境下的能耗、吞吐量、延迟、带宽和任务调度效率方面优于其他最先进的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ford Fulkerson and Newey West Regression Based Dynamic Load Balancing in Cloud Computing for Data Communication
In Cloud Computing (CC) environment, load balancing refers to the process of optimizing resources of virtual machines. Load balancing in the CC environment is one of the analytical approaches utilized to ensure indistinguishable workload distribution and effective utilization of resources. This is because only by ensuring effective balance of dynamic workload results in higher user satisfaction and optimal allocation of resource, therefore improve cloud application performance. Moreover, a paramount objective of load balancing is task scheduling because surges in the number of clients utilizing cloud lead to inappropriate job scheduling. Hence, issues encircling task scheduling has to be addressed. In this work a method called, Ford Fulkerson and Newey West Regression-based Dynamic Load Balancing (FF-NWRDLB) in CC environment is proposed. The FF-NWRDLB method is split into two sections, namely, task scheduling and dynamic load balancing. First, Ford Fulkerson-based Task Scheduling is applied to the cloud user requested tasks obtained from Personal Cloud Dataset. Here, employing Ford Fulkerson function based on the flow of tasks, energy-efficient task scheduling is ensured. The execution of asymmetrical scientific applications can be smoothly influenced by an unbalanced workload distribution between computing resources. In this context load balancing signifies as one of the most significant solution to enhance utilization of resources. However, selecting the best accomplishing load balancing technique is not an insignificant piece of work. For example, selecting a load balancing model does not work in circumstances with dynamic behavior. In this context, a machine learning technique called, Newey West Regression-based dynamic load balancer is designed to balance the load in a dynamic manner at run time, therefore ensuring accurate data communication. The FF-NWRDLB method has been compared to recent algorithms that use the markov optimization and the prediction scheme to achieve load balancing. Our experimental results show that our proposed FF-NWRDLB method outperforms other state of the art schemes in terms of energy consumption, throughput, delay, bandwidth and task scheduling efficiency in CC environment.
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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