首页> 外文会议>Internet Measurement Conference >Identifying and Analyzing High Impact Routing Events with PathMiner
【24h】

Identifying and Analyzing High Impact Routing Events with PathMiner

机译:用Pathminer识别和分析高冲击路由事件

获取原文

摘要

Understanding the dynamics of the interdomain routing system is challenging. One reason is that a single routing or policy change can have far reaching and complex effects. Connecting observed behavior with its underlying causes is made even more difficult by the amount of noise in the BGP system. In this paper we address these challenges by presenting PathMiner, a system to extract large scale routing events from background noise and identify the AS or link responsible for the event. PathMiner is distinguished from previous work in its ability to identify and analyze large-scale events that may re-occur many times over long timescales. The central idea behind PathMiner is that although a routing change at one AS may induce large-scale, complex responses in other ASes, the correlation among those responses (in space and time) helps to isolate the relevant set of responses from background noise, and makes the cause much easier to identify. Hence, PathMiner has two components: an algorithm for mining large scale coordinated changes from routing tables, and an algorithm for identifying the network element (AS or link) responsible for the set of coordinated changes. We describe the implementation and validation of PathMiner. We show that it is scalable, being able to extract significant events from multiple years of routing data at a daily granularity. Finally, using PathMiner we study interdomain routing over past 9 years and use it to characterize the presence of large scale routing events and to identify the responsible network elements.
机译:了解跨域路由系统的动态是具有挑战性的。一个原因是单个路由或政策变化可能具有深远和复杂的效果。通过BGP系统中的噪声量变得更加困难地将观察到的行为与其潜在的原因进行更加困难。在本文中,我们通过呈现Pathminer,一个系统来解决这些挑战,该挑战是从背景噪声中提取大规模路由事件的系统,并识别负责事件的AS或链接。派对者与以前的工作区别于其能够识别和分析可能重新发生的大规模事件,这些事件在长时间尺度中可能重新发生。 Pathminer背后的核心思想是,尽管在一个可能引起大规模的路由变化,但在其他原因中可能引起大规模的复杂响应,但这些响应(空间和时间)之间的相关性有助于与背景噪音隔离相关的响应集,以及使得其原因更容易识别。因此,Pathminer有两个组件:一种用于从路由表中挖掘大规模协调变化的算法,以及用于识别负责该组协调变化的网络元素(AS或链接)的算法。我们描述了散文人的实施和验证。我们表明它是可扩展的,能够以每日粒度从多年的路由数据中提取重要事件。最后,使用Pathminer在过去9年中学习exterdomain路由,并使用它来表征大规模路由事件的存在并识别负责网络元素。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号