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Forecasting short-term data center network traffic load with convolutional neural networks

机译:卷积神经网络预测短期数据中心网络流量

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摘要

Efficient resource management in data centers is of central importance to content service providers as 90 percent of the network traffic is expected to go through them in the coming years. In this context we propose the use of convolutional neural networks (CNNs) to forecast short-term changes in the amount of traffic crossing a data center network. This value is an indicator of virtual machine activity and can be utilized to shape the data center infrastructure accordingly. The behaviour of network traffic at the seconds scale is highly chaotic and therefore traditional time-series-analysis approaches such as ARIMA fail to obtain accurate forecasts. We show that our convolutional neural network approach can exploit the non-linear regularities of network traffic, providing significant improvements with respect to the mean absolute and standard deviation of the data, and outperforming ARIMA by an increasingly significant margin as the forecasting granularity is above the 16-second resolution. In order to increase the accuracy of the forecasting model, we exploit the architecture of the CNNs using multiresolution input distributed among separate channels of the first convolutional layer. We validate our approach with an extensive set of experiments using a data set collected at the core network of an Internet Service Provider over a period of 5 months, totalling 70 days of traffic at the one-second resolution.
机译:数据中心中有效的资源管理对于内容服务提供商至关重要,因为预计未来几年中90%的网络流量将通过它们。在这种情况下,我们建议使用卷积神经网络(CNN)来预测跨数据中心网络的流量的短期变化。该值是虚拟机活动的指标,可用于相应地调整数据中心基础架构。网络流量的秒级行为非常混乱,因此传统的时间序列分析方法(如ARIMA)无法获得准确的预测。我们证明了我们的卷积神经网络方法可以利用网络流量的非线性规律,在数据的平均绝对和标准偏差方面提供了显着的改进,并且由于预测粒度高于ARIMA而在ARIMA方面的表现越来越显着。 16秒分辨率。为了提高预测模型的准确性,我们使用分布在第一卷积层各个通道之间的多分辨率输入来开发CNN的体系结构。我们使用一组在Internet服务提供商的核心网络上收集的数据集,在5个月的时间内进行了广泛的实验,验证了我们的方法,以1秒钟的分辨率,总共产生了70天的流量。

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