Request patterns and caching for VoD services with recommendation systems

Samarth Gupta, Sharayu Moharir
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引用次数: 9

Abstract

Video on Demand (VoD) services like Netflix and YouTube account for ever increasing fractions of Internet traffic. It is estimated that this fraction will cross 80% in the next three years. Most popular VoD services have recommendation engines which recommend videos to users based on their viewing history, thus introducing time-correlation in user requests. Understanding and modeling this time-correlation in user requests is critical for network traffic engineering. The primary goal of this work is to use empirically observed properties of user requests to model the effect of recommendation engines on request patterns in VoD services. We propose a Markovian request model to capture the time-correlation in user requests and show that our model is consistent with the observations of existing empirical studies. Most large-scale VoD services deliver content to users via a distributed network of servers as serving users requests via geographically co-located servers reduces latency and network bandwidth consumption. The content replication policy, i.e., determining which contents to cache on the servers is a key resource allocation problem for VoD services. Recent studies show that low start-up delay is a key Quality of Service (QoS) requirement of users of VoD services. This motivates the need to pre-fetch (fetch before contents are requested) and cache content likely to be requested in the near future. Since pre-fetching leads to an increase in the network bandwidth usage, we use our Markovian model to explore the trade-offs and feasibility of implementing recommendation based pre-fetching.
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带推荐系统的VoD服务的请求模式和缓存
像Netflix和YouTube这样的视频点播(VoD)服务在互联网流量中所占的比例越来越大。据估计,这一比例将在未来三年内超过80%。大多数流行的VoD服务都有推荐引擎,根据用户的观看历史向用户推荐视频,从而在用户请求中引入时间相关性。理解和建模用户请求中的这种时间相关性对于网络流量工程至关重要。这项工作的主要目标是使用经验观察到的用户请求属性来建模推荐引擎对VoD服务中请求模式的影响。我们提出了一个马尔可夫请求模型来捕捉用户请求的时间相关性,并表明我们的模型与现有实证研究的观察结果一致。大多数大型视频点播服务通过分布式服务器网络向用户提供内容,通过地理位置相同的服务器为用户提供服务,从而减少延迟和网络带宽消耗。内容复制策略,即决定在服务器上缓存哪些内容,是VoD服务的关键资源分配问题。近年来的研究表明,低启动延迟是用户对视频点播服务质量(QoS)的关键要求。这激发了预取(在请求内容之前获取)和缓存可能在不久的将来被请求的内容的需求。由于预取会导致网络带宽使用量的增加,我们使用马尔可夫模型来探索实现基于推荐的预取的权衡和可行性。
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