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Improving Energy Efficiency in NFV Clouds with Machine Learning

机译:通过机器学习提高NFV云的能源效率

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Widespread deployments of Network Function Virtualization (NFV) technology will replace many physical appliances in telecommunication networks with software executed on cloud platforms. Setting compute servers continuously to high-performance operating modes is a common NFV approach for achieving predictable operations. However, this has the effect that large amounts of energy are consumed even when little traffic needs to be forwarded. The Dynamic Voltage-Frequency Scaling (DVFS) technology available in Intel processors is a known option for adapting the power consumption to the workload, but it is not optimized for network traffic processing workloads. We developed a novel control method for DVFS, based observing the ongoing traffic and online predictions using machine learning. Our results show that we can save up to 27% compared to commodity DVFS, even when including the computational overhead of machine learning.
机译:网络功能虚拟化(NFV)技术的广泛部署将用在云平台上执行的软件代替电信网络中的许多物理设备。连续将计算服务器设置为高性能操作模式是实现可预测操作的常见NFV方法。但是,这具有即使在很少的流量需要转发的情况下也消耗大量能量的效果。英特尔处理器中提供的动态电压频率调整(DVFS)技术是使功耗适应工作负载的已知选项,但它并未针对网络流量处理工作负载进行优化。我们使用机器学习来观察正在进行的流量和在线预测,从而为DVFS开发了一种新颖的控制方法。我们的结果表明,即使包括机器学习的计算开销,与商用DVFS相比,我们最多可以节省27%。

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