echowei/DeepTraffic
Deep Learning models for network traffic classification
This project helps network security professionals and IT administrators automatically identify different types of network traffic, including encrypted and malware traffic. It takes raw network data or traffic flows as input and classifies them into categories like normal browsing, specific applications, or malicious activity. Network security analysts and incident responders can use this to enhance their monitoring and threat detection capabilities.
763 stars.
Use this if you need to automatically categorize network traffic to identify application usage, detect anomalies, or pinpoint malware activity within your network.
Not ideal if you're looking for a simple network monitoring tool that provides basic traffic volume statistics without deep classification.
Stars
763
Forks
299
Language
Python
License
MPL-2.0
Category
Last pushed
Jan 30, 2026
Commits (30d)
0
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