Fiat Lux:不同数据集的IPv6分配

Amanda Hsu, Frank H. Li, P. Pearce
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引用次数: 1

摘要

IPv6的采用持续增长,占谷歌全球客户流量的40%以上。虽然无处不在的IPv4地址空间使其相对更容易理解,但广泛而较少研究的IPv6地址空间激发了各种详细收集和分析IPv6属性的方法的工作,其中许多工作使用来自特定数据源的知识作为回答研究问题的镜头。尽管做了这样的工作,但在诸如不同研究任务的适当前缀大小等基本属性上仍然存在问题。我们的工作填补了这一知识空白,从底层开始分析IPv6地址空间的分配,同时使用来自众多数据源的数据和知识,旨在确定如何利用IPv6地址信息进行各种研究任务。利用来自RIRs、路由数据和命中列表的WHOIS数据,我们强调了根据数据源和检查方法在分配大小和结构属性方面的根本差异。我们关注每个数据集提供的不同视角,以及这些数据集在一起时的不相交、异构性质。我们还利用基于图的分析方法对这些数据集进行分析,使我们能够得出关于何时以及如何交叉数据集及其效用的结论。每个数据集视角的差异不是由于数据集问题,而是源于rir和IPv6提供商之间各种不同的结构和部署行为。鉴于这些不一致,我们讨论了网络地址划分、最佳实践以及对未来IPv6测量和分析项目的考虑。
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Fiat Lux: Illuminating IPv6 Apportionment with Different Datasets
IPv6 adoption continues to grow, making up more than 40% of client traffic to Google globally. While the ubiquity of the IPv4 address space makes it comparably easier to understand, the vast and less studied IPv6 address space motivates a variety of works detailing methodology to collect and analyze IPv6 properties, many of which use knowledge from specific data sources as a lens for answering research questions. Despite such work, questions remain on basic properties such as the appropriate prefix size for different research tasks. Our work fills this knowledge gap by presenting an analysis of the apportionment of the IPv6 address space from the ground-up, using data and knowledge from numerous data sources simultaneously, aimed at identifying how to leverage IPv6 address information for a variety of research tasks. Utilizing WHOIS data from RIRs, routing data, and hitlists, we highlight fundamental differences in apportionment sizes and structural properties depending on data source and examination method. We focus on the different perspectives each dataset offers and the disjoint, heterogeneous nature of these datasets when taken together. We additionally leverage a graph-based analysis method for these datasets that allows us to draw conclusions regarding when and how to intersect the datasets and their utility. The differences in each dataset's perspective is not due to dataset problems but rather stems from a variety of differing structural and deployment behaviors across RIRs and IPv6 providers alike. In light of these inconsistencies, we discuss network address partitioning, best practices, and considerations for future IPv6 measurement and analysis projects.
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