基于知识的集成随机森林和LSTM模型的云资源利用预测技术

K. Valarmathi, S. Kanaga Suba Raja
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引用次数: 5

摘要

由于动态和业务关键工作负载,云数据中心资源使用的未来计算是一项令人兴奋的任务。通过历史观察准确预测云资源的使用情况,有助于有效地将任务与资源对齐,估算云服务器的容量,应用密集的自动扩展和控制资源使用。由于对资源的不精确预测会导致云中的资源供应不足或不足。本文旨在以一种更积极的方式解决这一问题。大多数现有的预测模型都是基于单一的工作负载模式,不适合处理特殊的工作负载。研究人员利用现代模型动态分析CPU利用率,从而准确估计数据中心CPU利用率,从而解决了这一问题。提出的设计利用基于集成随机森林-长短期记忆的深度体系结构模型进行资源估计。该设计基于历史观测对数据进行预处理和训练。通过一个真实的云数据集对该方法进行了分析。经验解释表明,所提出的设计优于先前的方法,因为它在资源利用方面的准确性提高了30%-60%。
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Resource utilization prediction technique in cloud using knowledge based ensemble random forest with LSTM model
Future computation of cloud datacenter resource usage is a provoking task due to dynamic and Business Critic workloads. Accurate prediction of cloud resource utilization through historical observation facilitates, effectively aligning the task with resources, estimating the capacity of a cloud server, applying intensive auto-scaling and controlling resource usage. As imprecise prediction of resources leads to either low or high provisioning of resources in the cloud. This paper focuses on solving this problem in a more proactive way. Most of the existing prediction models are based on a mono pattern of workload which is not suitable for handling peculiar workloads. The researchers address this problem by making use of a contemporary model to dynamically analyze the CPU utilization, so as to precisely estimate data center CPU utilization. The proposed design makes use of an Ensemble Random Forest-Long Short Term Memory based deep architectural models for resource estimation. This design preprocesses and trains data based on historical observation. The approach is analyzed by using a real cloud data set. The empirical interpretation depicts that the proposed design outperforms the previous approaches as it bears 30%–60% enhanced accuracy in resource utilization.
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