Compressing IP forwarding tables: towards entropy bounds and beyond

G'abor R'etv'ari, János Tapolcai, Attila KHorosi, Andr'as Majd'an, Zalán Heszberger
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引用次数: 36

Abstract

Lately, there has been an upsurge of interest in compressed data structures, aiming to pack ever larger quantities of information into constrained memory without sacrificing the efficiency of standard operations, like random access, search, or update. The main goal of this paper is to demonstrate how data compression can benefit the networking community, by showing how to squeeze the IP Forwarding Information Base (FIB), the giant table consulted by IP routers to make forwarding decisions, into information-theoretical entropy bounds, with essentially zero cost on longest prefix match and FIB update. First, we adopt the state-of-the-art in compressed data structures, yielding a static entropy-compressed FIB representation with asymptotically optimal lookup. Then, we re-design the venerable prefix tree, used commonly for IP lookup for at least 20 years in IP routers, to also admit entropy bounds and support lookup in optimal time and update in nearly optimal time. Evaluations on a Linux kernel prototype indicate that our compressors encode a FIB comprising more than 440K prefixes to just about 100--400 KBytes of memory, with a threefold increase in lookup throughput and no penalty on FIB updates.
压缩IP转发表:朝着熵的界限和超越
最近,人们对压缩数据结构的兴趣激增,压缩数据结构的目标是在不牺牲标准操作(如随机访问、搜索或更新)的效率的情况下,将越来越多的信息打包到受限的内存中。本文的主要目标是通过展示如何将IP转发信息库(FIB)压缩到信息理论熵界,从而证明数据压缩如何使网络社区受益,IP路由器在做出转发决策时参考的巨大表,在最长前缀匹配和FIB更新上基本上是零成本。首先,我们采用最先进的压缩数据结构,产生静态熵压缩FIB表示,具有渐近最优查找。然后,我们重新设计了古老的前缀树,通常用于IP路由器中至少20年的IP查找,也承认熵界,并支持在最优时间查找和在接近最优时间更新。对Linux内核原型的评估表明,我们的压缩器将包含超过440K前缀的FIB编码到大约100—400kbytes的内存中,查找吞吐量增加了三倍,并且FIB更新没有损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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