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Towards Unbiased End-to-End Network Diagnosis

机译:迈向无偏见的端到端网络诊断

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摘要

Internet fault diagnosis is extremely important for end-users, overlay network service providers (like Akamai ), and even Internet service providers (ISPs). However, because link-level properties cannot be uniquely determined from end-to-end measurements, the accuracy of existing statistical diagnosis approaches is subject to uncertainty from statistical assumptions about the network. In this paper, we propose a novel least-biased end-to-end network diagnosis (in short, LEND) system for inferring link-level properties like loss rate. We define a minimal identifiable link sequence (MILS) as a link sequence of minimal length whose properties can be uniquely identified from end-to-end measurements. We also design efficient algorithms to find all the MILSs and infer their loss rates for diagnosis. Our LEND system works for any network topology and for both directed and undirected properties and incrementally adapts to network topology and property changes. It gives highly accurate estimates of the loss rates of MILSs, as indicated by both extensive simulations and Internet experiments. Furthermore, we demonstrate that such diagnosis can be achieved with fine granularity and in near real-time even for reasonably large overlay networks. Finally, LEND can supplement existing statistical inference approaches and provide smooth tradeoff between diagnosis accuracy and granularity.
机译:互联网故障诊断对于最终用户,覆盖网络服务提供商(例如Akamai),甚至互联网服务提供商(ISP)都极为重要。但是,由于无法从端到端的测量中唯一确定链路级别的属性,因此现有统计诊断方法的准确性会受到有关网络统计假设的不确定性的影响。在本文中,我们提出了一种新颖的最小偏见的端到端网络诊断(简称LEND)系统,用于推断链路级属性(如丢失率)。我们将最小可识别链接序列(MILS)定义为长度最小的链接序列,其属性可以从端到端的测量中唯一标识。我们还设计了有效的算法来查找所有MILS,并推断出它们的丢失率以进行诊断。我们的LEND系统适用于任何网络拓扑以及有向和无向属性,并且可以逐步适应网络拓扑和属性更改。如广泛的仿真和互联网实验所示,它可以对MILS的损失率进行高度准确的估算。此外,我们证明,即使对于相当大的覆盖网络,也可以通过细粒度和接近实时的方式实现这种诊断。最后,LEND可以补充现有的统计推断方法,并在诊断准确性和粒度之间提供平滑的折衷。

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