Brain-on-Switch: Towards Advanced Intelligent Network Data Plane via NN-Driven Traffic Analysis at Line-Speed
arxiv(2024)
摘要
The emerging programmable networks sparked significant research on
Intelligent Network Data Plane (INDP), which achieves learning-based traffic
analysis at line-speed. Prior art in INDP focus on deploying tree/forest models
on the data plane. We observe a fundamental limitation in tree-based INDP
approaches: although it is possible to represent even larger tree/forest tables
on the data plane, the flow features that are computable on the data plane are
fundamentally limited by hardware constraints. In this paper, we present BoS to
push the boundaries of INDP by enabling Neural Network (NN) driven traffic
analysis at line-speed. Many types of NNs (such as Recurrent Neural Network
(RNN), and transformers) that are designed to work with sequential data have
advantages over tree-based models, because they can take raw network data as
input without complex feature computations on the fly. However, the challenge
is significant: the recurrent computation scheme used in RNN inference is
fundamentally different from the match-action paradigm used on the network data
plane. BoS addresses this challenge by (i) designing a novel data plane
friendly RNN architecture that can execute unlimited RNN time steps with
limited data plane stages, effectively achieving line-speed RNN inference; and
(ii) complementing the on-switch RNN model with an off-switch transformer-based
traffic analysis module to further boost the overall performance. We implement
a prototype of BoS using a P4 programmable switch as our data plane, and
extensively evaluate it over multiple traffic analysis tasks. The results show
that BoS outperforms state-of-the-art in both analysis accuracy and
scalability.
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