--- title: AI NIDS Student Project emoji: 🛡️ colorFrom: blue colorTo: green sdk: streamlit sdk_version: 1.39.0 app_file: app.py pinned: false --- # 🛡️ AI-Based Network Intrusion Detection System (Student Project) This project demonstrates how to use **Machine Learning (Random Forest)** and **Generative AI (Grok)** to detect and explain network attacks (specifically DDoS). ## 🚀 How to Use 1. **Enter API Key:** Paste your Grok API key in the sidebar (optional, for AI explanations). 2. **Train Model:** Click the "Train AI Model" button. The system loads the `Friday-WorkingHours...` dataset automatically. 3. **Simulate:** Click "Simulate Random Packet" to pick a real network packet from the test set. 4. **Analyze:** See if the model flags it as **BENIGN** or **DDoS**, and ask Grok to explain why. ## 📂 Files - `app.py`: The main Python application code. - `requirements.txt`: List of libraries used. - `Friday-WorkingHours-Afternoon-DDos.pcap_ISCX.csv`: The dataset (CIC-IDS2017 subset). ## 🎓 About Created for a university cybersecurity project to demonstrate the integration of traditional ML and LLMs in security operations.