资源供应的基于利用率的预测模型

K. Rajaram, M. Malarvizhi
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引用次数: 5

摘要

资源发放是指选择、部署和管理资源,以保证应用程序的性能。高效的资源供应是一个具有挑战性的问题,因为它本质上是动态的,需要支持具有不同性能需求的应用程序。为了为具有不同需求且必须满足预期性能的应用程序提供足够的资源,需要预测正确的资源集。为实现这一目标,本工作建立了资源供应预测模型。预测模型通过使用部署在Amazon EC2环境中的基准电子商务应用程序(即TPC-W)创建的数据集进行训练。实验结果表明,对于同一数据集,基于线性回归的预测模型的准确率为70%,支持向量回归的准确率为68%,而多层感知器的准确率为90%。
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Utilization based prediction model for resource provisioning
Resource provisioning refers to the selection, deployment and management of resources to ensure guaranteed performance for the applications. Efficient resource provisioning is a challenging problem since it is dynamic in nature and requires supporting applications with different performance requirements. In order to provide adequate resources for applications with different requirements that must satisfy expected performance, it is required to predict correct set of resources. Towards this objective, a prediction model for resource provisioning has been developed in this work. The prediction model is trained by the dataset that is created using a benchmark e-Commerce application namely TPC-W that is deployed in Amazon EC2 environment. The experimental results show that the prediction model based on Linear regression exhibits 70 percentage of accuracy, Support Vector Regression shows 68 percentage of accuracy, whereas Multilayer perceptron exhibits 90 percentage of accuracy for the same dataset.
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