vFetch:视频预取使用伪订阅和用户通道亲和在YouTube

Christian Koch, Benedikt Lins, Amr Rizk, R. Steinmetz, D. Hausheer
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引用次数: 3

摘要

视频流占固定和移动网络流量的最大份额。然而,预测预计这一数字将进一步增长。特别是对于连接到蜂窝网络的移动设备,高QoE视频流可能是一个挑战,因为用户数据量是计量的,最终是有限的。此外,连接质量可能会有很大差异。预取视频是缓解这个问题的一种方法。在这里,用户可能会提前观看的视频会在用户的智能手机上预取,例如,当用户连接WiFi时。然而,这种方法只有在预取各自用户感兴趣的视频时才能有效。这构成了一个主要的估计和预测挑战。为此,本文提出了三个贡献:首先,对用户视频请求行为进行了为期数月的用户研究,得出了有价值的见解。其次,我们提出了一种新的隐私保护预取框架,称为vFetch,它基于用户对YouTube频道的亲和力来预取视频。第三,基于跟踪的评估和参数研究证明了vFetch的效率,对于50gb缓存的命中率为50%。
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vFetch: Video prefetching using pseudo subscriptions and user channel affinity in YouTube
Video streaming is responsible for the largest portion of traffic in fixed and mobile networks. Yet, forecasts expect this amount to grow further. Especially for mobile devices connected to cellular networks, high QoE video streaming can be a challenge as the user data volume is metered and eventually limited. Also, the connection quality may vary severely. Prefetching videos is an approach to mitigate this issue. Here, videos that the user is likely to watch in advance are prefetched on the user's smartphone, e.g., while he is connected to WiFi. However, this approach can only be efficient if only the videos that are interesting for the respective user are prefetched. This constitutes a major estimation and prediction challenge. To this end, this paper presents three contributions: First, a user study over multiple months that draws valuable insights on the user video request behavior. Second, we propose a novel privacy-preserving prefetching framework denoted vFetch that prefetches videos based, e.g., on the user's affinity of YouTube channels. Third, a trace-based evaluation and parameter study that demonstrates vFetch's efficiency with a hit rate of ∼50% for a 50 GB cache.
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