Intrusion Detection System using ensemble learning (machine learning)

Related tags

Deep LearningIDS-ML
Overview

IDS-ML

implementation of an intrusion detection system using ensemble machine learning methods

Data set

This project is carried out using the UNSW-15 data set

Technologies

Tools

Operating Systems

  • Windows
  • Linux

Structure

  1. main.py : This is the main page of the application, it calls the functions defined in the other files. The application is launched by typing : streamlit run main.py

When launching the application, the following welcome image appears with all the features available in the IDS Home page

Owner
IT student
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