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Service Adoption and Pricing of Content Delivery Network (CDN) Services

机译:内容交付网络(CDN)服务的服务采用和定价

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摘要

Content delivery networks (CDNs) are a vital component of the Internet's content delivery value chain, servicing nearly a third of the Internet's most popular content sites. However, in spite of their strategic importance, little is known about the optimal pricing policies or adoption drivers of CDNs. We address these questions using analytic models of CDN pricing and adoption under Markovian traffic and extend the results to bursty traffic using numerical simulations. nnWhen traffic is Markovian, we find that CDNs should provide volume discounts to content providers. In addition, the optimal pricing policy entails lower emphasis on value-based pricing and greater emphasis on cost-based pricing as the relative density of content providers with high outsourcing costs increases. However, when traffic is bursty and content providers have varying levels of traffic burstiness, volume discounts may be suboptimal and may even be replaced by volume taxes. Finally, when there is heterogeneity in burstiness across content providers, a pricing policy that accounts for both the mean and variance in traffic such as percentile-based pricing is more profitable than traditional volume-based pricing (metering bytes delivered in a given time window). This finding is in contrast to the current practices of many CDN firms that use traditional volume-based pricing.
机译:内容交付网络(CDN)是Internet内容交付价值链的重要组成部分,为Internet上近三分之一的最受欢迎内容站点提供服务。但是,尽管具有战略重要性,但对于CDN的最佳定价政策或采用驱动因素知之甚少。我们使用马尔可夫流量下的CDN定价和采用分析模型来解决这些问题,并使用数值模拟将结果扩展到突发流量。当流量为马尔可夫流量时,我们发现CDN应该为内容提供商提供批量折扣。另外,随着具有高外包成本的内容提供商的相对密度增加,最优定价策略需要较少强调基于价值的定价,而更加强调基于成本的定价。但是,当流量突发并且内容提供商的流量突发程度有所不同时,批量折扣可能不是最佳选择,甚至可能被批量税代替。最后,当内容提供商之间的突发性存在异质性时,同时考虑流量均值和方差的定价策略(例如基于百分比的定价)比传统的基于数量的定价(在给定的时间窗口内计量字节)更有利可图。这一发现与许多使用传统的基于数量的定价的CDN公司的当前实践形成对比。

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