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Characteristics Of Youtube Network Trafficat A Campus Network - Measurements, Models, And Implications

机译:校园网络中Youtube网络流量的特征-度量,模型和含义

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摘要

User-Generated Content has become very popular since new web services such as YouTube allow for the distribution of user-produced media content. YouTube-like services are different from existing traditional VoD services in that the service provider has only limited control over the creation of new content. We analyze how content distribution in YouTube is realized and then conduct a measurement study of YouTube traffic in a large university campus network. Based on these measurements, we analyzed the duration and the data rate of streaming sessions, the popularity of videos, and access patterns for video clips from the clients in the campus network. The analysis of the traffic shows that trace statistics are relatively stable over short-term periods while long-term trends can be observed. We demonstrate how synthetic traces can be generated from the measured traces and show how these synthetic traces can be used as inputs to trace-driven simulations. We also analyze the benefits of alternative distribution infrastructures to improve the performance of a YouTube-like VoD service. The results of these simulations show that P2P-based distribution and proxy caching can reduce network traffic significantly and allow for faster access to video clips.
机译:用户生成的内容已变得非常流行,因为YouTube等新的网络服务允许分发用户生成的媒体内容。类似YouTube的服务与现有的传统VoD服务不同之处在于,服务提供商对新内容的创建只有有限的控制权。我们分析了YouTube中内容分发的实现方式,然后对大型大学校园网络中YouTube流量进行了衡量研究。基于这些度量,我们分析了流式会话的持续时间和数据速率,视频的受欢迎程度以及来自园区网络中客户端的视频剪辑的访问模式。对流量的分析表明,跟踪统计信息在短期内相对稳定,而可以观察到长期趋势。我们演示了如何从测量的轨迹中生成合成轨迹,并展示了如何将这些合成轨迹用作轨迹驱动模拟的输入。我们还分析了替代分发基础设施的好处,以提高类似YouTube的VoD服务的性能。这些模拟的结果表明,基于P2P的分发和代理缓存可以显着减少网络流量,并允许更快地访问视频剪辑。

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