Welcome to the Network Anomaly Detection project! ππ‘οΈ
This project leverages advanced supervised and unsupervised learning techniques, coupled with meticulous feature selection and model experimentation, to achieve an outstanding 99.7% accuracy in detecting network anomalies on the dataset: https://www.kaggle.com/datasets/sampadab17/network-intrusion-detection/code.
Supervised & Unsupervised Learning: Employing both approaches for comprehensive anomaly detection.
Extensive Model Experimentation: Exploration of various models to identify the most effective ones.
Feature Selection Techniques: Meticulous selection methods to enhance model performance.
Data Visualizations: Beautiful visualizations using synthetic network traffic data for insightful analysis ππ».
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Clone the repository to your local machine.
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Install the necessary dependencies listed in the requirements file.
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Explore the Jupyter notebooks to dive into the code and visualize the data.
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Experiment with different models and feature selection techniques to enhance detection accuracy.
Integration of real-time data streaming for dynamic anomaly detection and Deployment of the model in production environments for continuous monitoring.
Let's make networks safer together! ππ