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Learning at the Edge: Smart Content Delivery in Real World Mobile Social Networks

机译:边缘学习:现实世界中的移动社交网络中的智能内容交付

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摘要

The explosive growth of network traffic in recent years is largely attributed to the rising demand of content delivery in mobile networks. MSN has become the top mobile application, ranked by the number of daily active users and the daily time spent by users. This introduces new challenges for content delivery due to highly dynamic distribution of mobile users and their requests for content. It is important for content providers to understand how edge users' mobility and their consumed social content can affect the network traffic in the underlying content distribution network. To study this problem, we present a machine learning based framework for predicting the dynamics of content demands of MSN users at the network edge. It employs a smart content delivery scheme to dynamically deliver the content to users according to their future demands as predicted. We compare four regression models in predicting the number of requests to certain content. Then we evaluate the performance of the smart content delivery scheme over a real-world commercial content distribution network for WeChat.
机译:近年来,网络流量的爆炸性增长主要归因于移动网络中内容交付需求的增长。 MSN已成为顶级移动应用程序,按每日活动用户数和用户每天花费的时间进行排名。由于移动用户及其内容请求的高度动态分布,这为内容交付带来了新的挑战。对于内容提供商来说,了解边缘用户的移动性及其所消费的社交内容如何影响基础内容分发网络中的网络流量非常重要。为了研究此问题,我们提出了一种基于机器学习的框架,用于预测网络边缘MSN用户的内容需求动态。它采用了智能内容交付方案,可以根据用户的预期未来动态地将内容交付给用户。我们在预测对某些内容的请求数量时比较了四个回归模型。然后,我们评估微信在实际的商业内容分发网络上的智能内容分发方案的性能。

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