基于工作负载和机器分类的云中负载平衡和均衡资源利用的资源分配框架

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Avnish Thakur, Major Singh Goraya
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引用次数: 0

摘要

本文提出了一种基于工作负载和机器分类的资源分配框架,用于平衡活动物理机器之间的负载,并以平衡的方式利用它们的不同资源容量。工作负载(本质上是独立的和非抢占性的任务)在物理机器上分配资源,其资源可用性补充了任务的资源需求。基于仿真的实验使用CloudSim模拟器执行三组不同的任务,包括10000、20000和30000个任务。在模拟运行的不同调度周期中测量活动物理机器之间的负载不平衡度量和它们所考虑的资源容量(即CPU和RAM)之间的利用率不平衡度量。仿真结果表明,所提出的资源分配方法在平衡活动物理机之间的负载和平衡利用其不同资源容量方面优于所比较的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Workload and Machine Categorization-Based Resource Allocation Framework for Load Balancing and Balanced Resource Utilization in the Cloud
This paper proposes a workload and machine categorization based resource allocation framework for balancing the load across active physical machines as well as utilizing their different resource capacities in a balanced manner. The workload, essentially independent and non-preemptive tasks are allocated resources on the physical machines whose resource availability complements the resource requirement of tasks. Simulation based experiments are performed using CloudSim simulator to execute three different set of tasks comprising 10000, 20000, and 30000 number of tasks. The metric of load imbalance across active physical machines and the metric of utilization imbalance among their considered resource capacities (i.e., CPU and RAM) are measured in different scheduling cycles of a simulation run. Simulation results show that the proposed resource allocation method outperforms the compared methods in terms of balancing the load across active physical machines and utilizing their different resource capacities in a balanced manner.
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来源期刊
CiteScore
1.70
自引率
10.00%
发文量
24
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