Design of an energy efficiency model and architecture for cloud management using prediction models

A. Nguyen, Alexandru-Adrian Tantar, P. Bouvry, E. Talbi
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引用次数: 1

Abstract

In this paper, we present a new energy efficiency model and architecture for cloud management based on a prediction model with Gaussian Mixture Models. The methodology relies on a distributed agent model and the validation will be performed on OpenStack. This paper intends to be a position paper, the implementation and experimental run will be conducted in future work. The design concept leverages the prediction model by providing a full architecture binding the resource demands, the predictions and the actual cloud environment (Openstack). The prediction analysis feeds the power-aware agents that run on the compute nodes in order to turn the nodes into sleep mode when the load state is low to reduce the energy consumption of the data center.
使用预测模型设计用于云管理的能源效率模型和架构
本文基于高斯混合模型的预测模型,提出了一种新的云管理能效模型和体系结构。该方法依赖于分布式代理模型,验证将在OpenStack上执行。本文拟作为一份立场文件,将在今后的工作中进行实施和试运行。设计概念通过提供一个完整的架构来绑定资源需求、预测和实际的云环境(Openstack),从而利用预测模型。预测分析为运行在计算节点上的功率感知代理提供信息,以便在负载状态较低时将节点转为休眠模式,从而降低数据中心的能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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