2021
DOI: 10.48550/arxiv.2105.11738
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FENXI: Deep-learning Traffic Analytics at the Edge

Massimo Gallo,
Alessandro Finamore,
Gwendal Simon
et al.

Abstract: Live traffic analysis at the first aggregation point in the ISP network enables the implementation of complex traffic engineering policies but is limited by the scarce processing capabilities, especially for Deep Learning (DL) based analytics. The introduction of specialized hardware accelerators i.e., Tensor Processing Unit (TPU), offers the opportunity to enhance processing capabilities of network devices at the edge. Yet, to date, no packet processing pipeline is capable of offering DL-based analysis capabi… Show more

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