Revealing Hidden Hierarchical Heavy Hitters in network traffic

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Abstract

The idea to enable advanced in-network monitoring functionality has been lately fostered by the advent of massive data-plane programmability. A specific example includes the detection of traffic aggregates with programmable switches, i.e., heavy hitters. So far, proposed solutions implement the mining process by partitioning the network stream in disjoint windows. This practice allows efficient implementations but comes at a well-known cost: the results are tightly coupled with the traffic and window's characteristics. This poster quantifies the limitations of disjoint time windows approaches by showing that they hardly cope with traffic dynamics. We report the results of our analysis and unveil that up to 34% of the total number of the hierarchical heavy hitters might not be detected with those approaches. This is a call for a new set of windowless-based algorithms to be implemented with the match-action paradigm.

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APA

Galea, S., Moore, A. W., Antichi, G., Bianchi, G., & Bifulco, R. (2018). Revealing Hidden Hierarchical Heavy Hitters in network traffic. In SIGCOMM 2018 - Proceedings of the 2018 Posters and Demos, Part of SIGCOMM 2018 (pp. 81–83). Association for Computing Machinery, Inc. https://doi.org/10.1145/3234200.3234226

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