论文标题

预测私人对等的流量溢出

Predicting traffic overflows on private peering

论文作者

Rapaport, Elad, Poese, Ingmar, Zilberman, Polina, Holschke, Oliver, Puzis, Rami

论文摘要

大型内容提供商和内容分销网络运营商通常通过专用的私人对等与大型的Internet服务提供商(眼球网络)联系。这些专用网络互连的容量已提供,以符合用户实际内容需求的卷。不幸的是,在交通需求激增的情况下,例如由于某个国家/地区的内容趋势,私人互连的能力可能会耗尽,内容提供商/分销商必须通过过境提供商将多余的流量重新路由。尽管这种溢出事件很少见,但它们对内容提供商,互联网服务提供商和最终用户产生了重大负面影响。这些包括意外的延迟和中断,降低了用户体验质量,以及互联网服务提供商向公交提供商支付的直接成本。如果可以预测流量溢出事件,则互联网服务提供商将能够影响选择多余流量的路线,以降低成本并提高用户体验质量。在本文中,我们提出了一种基于深度学习模型集合的方法,以预测2-6个小时的短期范围内溢出事件,并预测将输入溢流流量的特定互连。该方法通过来自欧洲大型互联网服务提供商的2。5年的交通测量数据进行评估,导致了0.8的真实阳性率,同时保持0.05的假阳性速率。 COVID-19大流行施加的锁定降低了溢流预测准确性。然而,从2020年4月底开始,随着逐渐锁定的发布,旧车型在大流行之前进行了训练。

Large content providers and content distribution network operators usually connect with large Internet service providers (eyeball networks) through dedicated private peering. The capacity of these private network interconnects is provisioned to match the volume of the real content demand by the users. Unfortunately, in case of a surge in traffic demand, for example due to a content trending in a certain country, the capacity of the private interconnect may deplete and the content provider/distributor would have to reroute the excess traffic through transit providers. Although, such overflow events are rare, they have significant negative impacts on content providers, Internet service providers, and end-users. These include unexpected delays and disruptions reducing the user experience quality, as well as direct costs paid by the Internet service provider to the transit providers. If the traffic overflow events could be predicted, the Internet service providers would be able to influence the routes chosen for the excess traffic to reduce the costs and increase user experience quality. In this article we propose a method based on an ensemble of deep learning models to predict overflow events over a short term horizon of 2-6 hours and predict the specific interconnections that will ingress the overflow traffic. The method was evaluated with 2.5 years' traffic measurement data from a large European Internet service provider resulting in a true-positive rate of 0.8 while maintaining a 0.05 false-positive rate. The lockdown imposed by the COVID-19 pandemic reduced the overflow prediction accuracy. Nevertheless, starting from the end of April 2020 with the gradual lockdown release, the old models trained before the pandemic perform equally well.

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