Abstract A learning automata-based ensemble resource usage prediction algorithm for cloud computing environment
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A learning automata-based ensemble resource usage prediction algorithm for cloud computing environment

机译:基于学习自动机的云计算环境集成资源使用预测算法

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AbstractInfrastructure as a service (IaaS) providers are interested in increasing their profit by gathering more and more customers besides providing more efficiency in cloud resource usage. There are several approaches to reach the resource usage efficiency goal such as dynamic consolidation of virtual machines (VMs). Resource management techniques such as VM consolidation must be aware of the current and future resource usage of the cloud resources. Hence, applying prediction models for current cloud resource management is a must. While cloud resource usage varies widely time to time and server to server, determining the best time-series model for predicting cloud resource usage depend not only on time but the cloud resource usage trend. Thus, applying ensemble prediction algorithms that combine several prediction models can be suitable to reach the mentioned goal. In this paper, an ensemble cloud resource usage prediction algorithm based on Learning Automata (LA) theory is proposed that combines state of the art prediction models, and it determines weights for individual constituent models. The proposed algorithm predicts by combining the prediction values of all constituent models based on their performance. The extensive experiments on CPU load prediction of several VMs gathered from the dataset of the CoMon project indicated that the proposed approach outperforms other ensemble prediction algorithms.HighlightsWe proposed a LA-based ensemble resource usage prediction algorithm for cloud computing environment.We designed a framework for cloud resource management.We conducted a series of experiments in terms of prediction accuracy metrics.
机译: 摘要 基础架构即服务(IaaS)提供商除了通过提高云资源使用效率来吸引越来越多的客户外,还对提高利润感兴趣。有几种方法可以达到资源使用效率的目标,例如动态整合虚拟机(VM)。 VM整合之类的资源管理技术必须了解云资源的当前和未来资源使用情况。因此,必须将预测模型应用于当前的云资源管理。尽管云资源使用时间随服务器和服务器之间的时间变化很大,但确定最佳的时间序列模型以预测云资源使用情况不仅取决于时间,还取决于云资源使用趋势。因此,应用结合了几种预测模型的整体预测算法可能适合达到上述目标。本文提出了一种基于学习自动机(LA)理论的集成云资源使用预测算法,该算法结合了最新的预测模型,并确定各个组成模型的权重。该算法通过结合所有组成模型的预测值进行预测。从CoMon项目的数据集中收集的几种VM的CPU负载预测的大量实验表明,该方法优于其他整体预测算法。 突出显示 我们针对云计算环境提出了一种基于洛杉矶的集成资源使用预测算法。 我们设计了一个用于云资源管理的框架。 我们根据预测精度指标进行了一系列实验。 < / ce:抽象>

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