PCL: Packet Classification with Limited Knowledge

Vitalii Demianiuk, Chen Hajaj, Kirill Kogan
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引用次数: 2

Abstract

We introduce a novel representation of packet classifiers allowing to operate on partially available input data varying dynamically. For a given packet classifier, availability of fields or complexity of field computations, and free target specific resources, the proposed infrastructure computes a classifier representation satisfying performance and robustness requirements. We show the feasibility to reconstruct a classification result in this noisy environment, allowing for the improvement of performance and the achievement of additional robustness levels of network infrastructure. Our results are supported by extensive evaluations in various settings where only a partial input is available.
有限知识下的包分类
我们引入了一种新颖的数据包分类器表示,允许对部分可用的动态输入数据进行操作。对于给定的分组分类器、字段的可用性或字段计算的复杂性,以及空闲的目标特定资源,所提出的基础结构计算出满足性能和鲁棒性要求的分类器表示。我们展示了在这种噪声环境中重建分类结果的可行性,从而提高了性能并实现了网络基础设施的额外鲁棒性水平。我们的结果得到了在只有部分输入可用的各种设置中的广泛评估的支持。
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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