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Discriminative Model for Google Host Load Prediction with Rich Feature Set

机译:Google主机负载预测与丰富功能集的判别模型

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Host load prediction is one of the key research issues in Cloud computing. However, due to the drastic fluctuation of the host load in the Cloud, accurately predicting the host load remains a challenge. In this paper, a discriminative model (SVM) is employed to improve upon the accuracy of host load prediction in a Cloud data center. A rich set of features are generated by function based methods and incorporated into discriminative modelling. The performance of our proposed method is empirically evaluated using a one-month trace of a Google data center with over 12000 heterogeneous hosts. The results show that the proposed method achieves a better prediction performance than some state-of-the-art methods.
机译:主机负载预测是云计算中的关键研究问题之一。但是,由于云中的主机负荷的急剧波动,准确地预测主机负荷仍然是一个挑战。在本文中,采用判别模型(SVM)来改进云数据中心中主机负荷预测的准确性。丰富的特征是由基于功能的方法生成的,并结合到鉴别性建模中。我们提出的方法的表现是使用超过12000个异构主机的Google数据中心的一个月轨迹进行了经验评估。结果表明,该方法达到了比某些最先进的方法更好的预测性能。

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