Curvature-based Analysis of Network Connectivity in Private Backbone Infrastructures

Loqman Salamatian, Scott Anderson, Joshua Matthews, P. Barford, W. Willinger, M. Crovella
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引用次数: 2

Abstract

The main premise of this work is that since large cloud providers can and do manipulate probe packets that traverse their privately owned and operated backbones, standard traceroute-based measurement techniques are no longer a reliable means for assessing network connectivity in large cloud provider infrastructures. In response to these developments, we present a new empirical approach for elucidating private connectivity in today's Internet. Our approach relies on using only "light-weight" ( i.e., simple, easily-interpretable, and readily available) measurements, but requires applying a "heavy-weight" or advanced mathematical analysis. In particular, we describe a new method for assessing the characteristics of network path connectivity that is based on concepts from Riemannian geometry ( i.e., Ricci curvature) and also relies on an array of carefully crafted visualizations ( e.g., a novel manifold view of a network's delay space). We demonstrate our method by utilizing latency measurements from RIPE Atlas anchors and virtual machines running in data centers of three large cloud providers to (i) study different aspects of connectivity in their private backbones and (ii) show how our manifold-based view enables us to expose and visualize critical aspects of this connectivity over different geographic scales.
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基于曲率的私有骨干基础设施网络连通性分析
这项工作的主要前提是,由于大型云提供商可以并且确实操纵穿越其私有和运营的骨干网的探测数据包,标准的基于跟踪路由的测量技术不再是评估大型云提供商基础设施中网络连接的可靠手段。针对这些发展,我们提出了一种新的实证方法来阐明当今互联网中的私人连接。我们的方法依赖于仅使用“轻量级”(即,简单的,易于解释的,并且随时可用的)测量,但需要应用“重量级”或高级数学分析。特别是,我们描述了一种评估网络路径连通性特征的新方法,该方法基于黎曼几何(即里奇曲率)的概念,并且还依赖于一系列精心制作的可视化(例如,网络延迟空间的新颖流形视图)。我们通过利用在三个大型云提供商的数据中心中运行的RIPE Atlas锚点和虚拟机的延迟测量来演示我们的方法,以(i)研究其私有主干中连接的不同方面,(ii)展示我们基于流形的视图如何使我们能够在不同的地理尺度上暴露和可视化这种连接的关键方面。
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