talshapira/ODE-Flow
Based on the paper "Fast and lean encrypted Internet traffic classification," in Computer Communications, by S. Roy, T. Shapira and Y. Shavitt
This helps network analysts or security professionals quickly identify the type of encrypted internet traffic passing through their systems. It takes raw network packet data, specifically packet sizes and the time between packets, and tells you what application or service is generating that traffic, even if it's encrypted. This allows for faster insights into network usage and potential security threats.
No commits in the last 6 months.
Use this if you need to classify encrypted network traffic very quickly, with good accuracy, using only a small number of consecutive packets from one direction of a flow.
Not ideal if you require the absolute highest accuracy at all costs and have ample time and computational resources for a slower, more data-intensive classification method.
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Language
Jupyter Notebook
License
MIT
Category
Last pushed
May 28, 2022
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