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Pre-trained neural networks for encrypted traffic classification

Project description

The goal of this project is to provide neural network architectures for traffic classification and their pre-trained weights.

The newest network architecture is named Multi-modal CESNET v2 (mm-CESNET-v2) and is visualized in the following picture. See the getting started page and models reference for more information.

:frog: :frog: See a related project CESNET DataZoo providing large TLS and QUIC traffic datasets. :frog: :frog:

:notebook: :notebook: Example Jupyter notebooks are included in a separate CESNET Traffic Classification Examples repo. :notebook: :notebook:

Multi-modal CESNET v2

Installation

Install the package from pip with:

pip install cesnet-models

or for editable install with:

pip install -e git+https://github.com/CESNET/cesnet-models

Papers

Models from the following papers are included:

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