基于机器学习的节能云负载平衡架构的实证分析:定量视角

K.R. Singh, A. D. Gaikwad, S. Kamble
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引用次数: 1

摘要

在云环境中设计节能负载平衡模型需要深入分析云架构和云服务请求的性质。根据这些参数,机器学习模型的设计旨在分配最佳的资源组合来服务于给定的任务。这个任务不同于多个任务和云参数;包括任务时间、虚拟机(VM)性能、任务截止日期、能耗等。为了完成这项任务,研究人员云设计人员开发了各种各样的算法。每一种算法都旨在优化某些与负载平衡相关的参数;例如,为优化虚拟机利用率而设计的遗传算法(GA)在向虚拟机分配任务之前可能不考虑任务截止日期。然而,旨在执行截止日期感知负载平衡的算法可能无法在分配任务之前提供有效的云到任务映射。因此,研究人员很难为他们的云部署选择最好的算法。为了减少这种歧义,底层文本比较了不同的节能云负载平衡算法;并根据计算复杂度和相对能源效率来评估它们的性能。通过架构间的比较进一步扩展了性能评估;以评估给定节能应用程序的最优负载平衡器实现。因此,在参考本文后,研究人员和云系统设计人员将能够为他们给定的部署选择最佳算法实现。这将有助于减少云部署延迟,并改进特定于应用程序的负载平衡器性能。
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Empirical analysis of machine learning-based energy efficient cloud load balancing architectures: a quantitative perspective
Design of energy efficient load balancing models in cloud environments requires in-depth analysis of the cloud architecture and nature of requests served by the cloud. Depending upon these parameters, machine learning models are designed which aim at assigning best possible resource combination to serve the given tasks. This assignment varies w.r.t. multiple task and cloud parameters; which include task time, virtual machine (VM) performance, task deadline, energy consumption, etc. In order to perform this task, a wide variety of algorithms are developed by researchers cloud designers. Each of these algorithms aim at optimizing certain load balancing related parameters; for instance, a Genetic Algorithm (GA) designed for optimization of VM utilization might not consider task deadline before task allocation to the VMs. While, algorithms aimed at performing deadline aware load balancing might not provide effective cloud-to-task-mapping before allocation of tasks. Thus, it becomes difficult for researchers to select the best possible algorithms for their cloud deployment. In order to reduce this ambiguity, the underlying text compares different energy efficient cloud load balancing algorithms; and evaluates their performance in terms of computational complexity, and relative energy efficiency. This performance evaluation is further extended via inter architecture comparison; in order to evaluate the most optimum load balancer implementation for a given energy efficient application. Thus, after referring this text, researchers and cloud system designers will be able to select optimum algorithmic implementations for their given deployment. This will assist in reducing cloud deployment delay, and improving application specific load balancer performance.
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