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A model for predicting resources for on-premise applications

机译:一种预测内部内部应用程序资源的模型

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Accurate prediction of resources is a challenging problem in any environment. Effective provisioning of resources for on-premise applications with varied performance requirements requires an accurate prediction of resources. Towards this objective, a prediction model, namely. Multilayer Perceptron has been proposed in this work. The prediction model is trained using a dataset generated from TPC-W benchmark based online application and tested for new requirements. Its prediction accuracy has been compared with that of two other prediction models such as Linear Regression and Support Vector Regression. The Multilayer perceptron model is found to exhibit a better accuracy of 91.8 percentage.
机译:准确预测资源是任何环境中有挑战性的问题。有关具有各种性能要求的内部内部应用程序的资源有效地提供资源需要准确地预测资源。朝着这个目标,一种预测模型,即。在这项工作中提出了多层的感知者。使用基于TPC-W基准的在线应用程序生成的数据集进行预测模型,并测试了新要求。它的预测精度与两个其他预测模型(例如线性回归和支持向量回归)的预测精度进行了比较。发现多层的Perceptron模型表现出更好的准确度为91.8个百分点。

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