Energy-Efficient VM Scheduling in the Cloud Environment using Reinforcement Learning

Isha Bhandary, K. Atul, A. Athani, Somashekar Patil, D. Narayan
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Abstract

Cloud data centers consume a huge amount of energy in the form of electrical energy for their operation. They also emit carbon dioxide and impact the balance of nature. This management of exponentially increasing load and the minimization of energy use along with the impact on the environment is the biggest challenge a cloud service provider (CSP) faces. CSPs establish and maintain data center farms, which enable the delivery of cloud services to millions of clients. The reduction in energy usage by data centers while also minimizing the number of service level agreement (SLA) violations is a major challenge. In this work, we have proposed a reinforcement learning (RL)-based dynamic virtual machine (VM) consolidation mechanism wherein the host load is predicted by considering previous and current host utilization. The learning agent chooses a suitable-power mode for the hosts. Load balancing is done for the over-utilized hosts and dynamic VM consolidation is performed for the under-utilized hosts. The VM scheduling is performed using an energy-aware best fit method. Ourproposed model shows a significant drop in the number of SLA violations and energy consumption when compared to the ARIMA model.
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基于强化学习的云环境下节能虚拟机调度
云数据中心的运行需要消耗大量的电能。它们还会排放二氧化碳,影响大自然的平衡。管理指数级增长的负载和最小化能源使用以及对环境的影响是云服务提供商(CSP)面临的最大挑战。云计算服务提供商(csp)建立和维护数据中心农场,为数百万客户提供云服务。减少数据中心的能源使用,同时最大限度地减少违反服务水平协议(SLA)的次数是一个主要挑战。在这项工作中,我们提出了一种基于强化学习(RL)的动态虚拟机(VM)整合机制,其中通过考虑以前和当前的主机利用率来预测主机负载。学习代理为主机选择合适的功率模式。对利用率过高的主机执行负载均衡,对利用率不足的主机执行动态虚拟机整合。虚拟机调度采用能量感知的最佳拟合方法。与ARIMA模型相比,我们提出的模型在SLA违规次数和能源消耗方面显着下降。
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