Machine Learning Approach for Energy Consumption Prediction in Datacenters

Abdelhak Merizig, Toufik Bendahmane, Soltane Merzoug, O. Kazar
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引用次数: 4

Abstract

Cloud Computing represents the ideal solution for end-users either small medium enterprises or simple clients. This solution is given as a for clients to go from classic service concept to oriented service concept. Moreover, this paradigm collects a set of operations which made them a complex task to the managers. Since the coming of the Cloud Computing encourages service providers to deploy their services. These enormous services need some infrastructure services that are located in datacenters in order to execute them. Due to this use, Cloud infrastructure owners are concerned by the huge energy consumed during this execution. This problematic will affect the use of costs for the services providers. To tackle this problem, in this work, we present several models presented in machine learning methods in order to predict the energy to be consumed for the next use. These forecasts could help the infrastructure providers to propose a plan and some analytics to eliminate the waste of used resources during the execution of services. The implementation of this model has been provided in order to evaluate our system. The obtained results demonstrate the effectiveness of our proposed system.
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数据中心能耗预测的机器学习方法
云计算代表了最终用户(中小型企业或简单客户)的理想解决方案。该解决方案是为客户从经典服务概念向面向服务概念过渡提供的。此外,该范例收集了一组操作,这使它们成为管理人员的复杂任务。由于云计算的出现鼓励服务提供商部署他们的服务。这些庞大的服务需要一些位于数据中心的基础设施服务来执行它们。由于这种使用,云基础设施所有者担心执行过程中消耗的巨大能源。这一问题将影响服务提供者的使用成本。为了解决这个问题,在这项工作中,我们提出了几个机器学习方法中的模型,以预测下一次使用所消耗的能量。这些预测可以帮助基础设施提供商提出计划和一些分析,以消除服务执行期间使用资源的浪费。为了对我们的系统进行评估,给出了该模型的实现。实验结果证明了系统的有效性。
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