SSA

Fang Yu, T. V. Lakshman, Marti A. Motoyama, R. Katz, Amy M Freestone
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引用次数: 54

Abstract

New network applications like intrusion detection systems and packet-level accounting require multi-match packet classification, where all matching filters need to be reported. Ternary Content Addressable Memories (TCAMs) have been adopted to solve the multi-match classification problem due to their ability to perform fast parallel matching. However, TCAM is expensive and consumes large amounts of power. None of the previously published multi-match classification schemes is both memory and power efficient. In this paper, we develop a novel scheme that meets both requirements by using a new Set Splitting Algorithm (SSA). The main idea of SSA is that it splits filters into multiple groups and performs separate TCAM lookups into these groups. It guarantees the removal of at least half the intersections when a filter set is split into two sets, thus resulting in low TCAM memory usage. SSA also accesses filters in the TCAM only once per packet, leading to low power consumption. We compare SSA with two best known schemes: MUD [1] and Geometric Intersection- based solutions [2]. Simulation results based on the SNORT filter sets show that SSA uses approximately the same amount of TCAM memory as MUD, but yields a 75% to 95% reduction in power consumption. Compared with Geometric Intersection-based solutions, SSA uses 90% less TCAM memory and power at the cost of one additional TCAM lookup per packet.
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撒哈南的非洲
新的网络应用,如入侵检测系统和包级计费,需要多匹配包分类,其中需要报告所有匹配的过滤器。三元内容可寻址存储器(TCAMs)由于具有快速并行匹配的能力而被用于解决多匹配分类问题。然而,TCAM是昂贵的和消耗大量的电力。以前发表的多匹配分类方案中没有一个是内存和功耗都有效的。在本文中,我们利用一种新的集分割算法(SSA)开发了一种满足这两个要求的新方案。SSA的主要思想是将过滤器分成多个组,并对这些组执行单独的TCAM查找。当一个过滤器集被分成两个集时,它保证至少删除一半的交集,从而导致低TCAM内存使用。SSA还访问TCAM中的过滤器,每个数据包只访问一次,从而降低功耗。我们将SSA与两种最著名的方案进行比较:MUD[1]和基于几何相交的解决方案[2]。基于SNORT滤波器集的仿真结果表明,SSA使用的TCAM内存数量与MUD大致相同,但功耗降低了75%到95%。与基于几何相交的解决方案相比,SSA使用的TCAM内存和功耗减少了90%,代价是每个数据包增加一次TCAM查找。
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