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Topological ordering based iterative TCAM rule compression using bi-partite graphs

机译:基于二部图的基于拓扑排序的迭代TCAM规则压缩

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For fast packet classification, the de-facto industry standard is to use Ternary Content Addressable Memory (TCAM) chips where each chip stores one classifier rule and a given packet is checked against all such rules in parallel. In spite of the TCAM advantages, for a large number of rules, the TCAM deployment becomes expensive and the power consumption increases significantly. Therefore, it is desirable to reduce the number of TCAM rules while retaining the original classification semantics. In this work, we present efficient graph-based algorithms and data structures that allow us to capture the rule ordering relationships and iteratively compress the TCAM rules. Through extensive experiments, we show that our algorithm achieves 75% reduction of firewall rule sets on an average and even achieves an additional 24% compression on the output rule set of the state-of-the-art solutions.
机译:对于快速的数据包分类,事实上的行业标准是使用三元内容可寻址存储器(TCAM)芯片,其中每个芯片存储一个分类器规则,并针对所有此类规则并行检查给定的数据包。尽管具有TCAM的优势,但对于大量规则而言,TCAM部署变得昂贵,并且功耗显着增加。因此,希望在保留原始分类语义的同时减少TCAM规则的数量。在这项工作中,我们提出了有效的基于图的算法和数据结构,使我们能够捕获规则顺序关系并迭代压缩TCAM规则。通过广泛的实验,我们证明了我们的算法平均将防火墙规则集减少了75%,甚至对最新解决方案的输出规则集也实现了24%的额外压缩。

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