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Predicting and bypassing end-to-end Internet service degradations

机译:预测和绕过端到端的互联网服务降级

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We study the patterns and predictability of Internet end-to-end service degradations, where a degradation is a significant deviation of the round-trip time (RTT) between a client and a server. We use simultaneous RTT measurements collected from several locations to a large representative set of Web sites and study the duration and extent of degradations. We combine these measurements with border gateway protocol cluster information to learn on the location of the cause. We evaluate a number of predictors based upon hidden Markov models and Markov models. Predictors typically exhibit a tradeoff between two types of errors, false positives (incorrect degradation prediction) and false negatives (a degradation is not predicted). The costs of these error types is application dependent, but we capture the entire spectrum using a precision versus recall tradeoff. Using this methodology, we learn what information is most valuable for prediction (recency versus quantity of past measurements). Surprisingly, we also conclude that predictors that utilize history in a very simple way perform as well as more sophisticated ones. One important application of prediction is gateway selection, which is applicable when a local-area network is connected through multiple gateways to one or several Internet service provider. Gateway selection can boost reliability and survivability by selecting for each connection the (hopefully) best gateway. We show that gateway selection using our predictors can reduce the degradations to half of that obtained by routing all the connections through the best gateway.
机译:我们研究了互联网端到端服务的劣化的模式和可预测性,其中劣化是客户端和服务器之间的往返时间(RTT)的显着偏差。我们使用从几个位置收集到大型代表性网站的同时RTT测量,并研究降级的持续时间和程度。我们将这些测量与边界网关协议集群信息相结合,以了解原因的位置。我们基于隐藏的马尔可夫模型和马尔可夫模型评估许多预测器。预测器通常在两种类型的错误之间表现出折衷,误报(不正确的劣化预测)和假否定(未预测劣化)。这些错误类型的成本取决于应用程序,但我们使用精度与召回权衡使用精度捕获整个频谱。使用这种方法,我们了解了对预测最有价值的信息(过去测量的新数量)是什么信息。令人惊讶的是,我们还得出结论,以一种非常简单的方式和更复杂的预测者利用历史的预测变量。预测的一个重要应用是网关选择,当局域网通过多个网关连接到一个或多个互联网服务提供商时,这是适用的。门户选择可以通过选择(希望)最佳网关的每个连接选择可靠性和生存能力。我们显示使用我们的预测器的网关选择可以通过通过最佳网关路由所有连接来降低降级到一半。

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