--- title: Car vs Bike Classification emoji: 🏎️🏍️ colorFrom: blue colorTo: indigo sdk: docker app_port: 7860 pinned: false --- # Car vs Bike Classifier A high-performance, portable image classification system with a premium "Glassmorphism" interface. ## 🚀 Quick Start 1. **Double-click `RUN_PROJECT.bat`** in the `C:\CNN` folder. 2. The script will automatically: - Train the Scikit-learn model (if missing). - Start the Unified Flask Server. 3. Open your browser to: **[http://localhost:8000](http://localhost:8000)** ## ✨ Features - **Integrated Architecture**: Frontend and Backend served by a single Flask process. - **Premium Design**: Modern, responsive UI with glassmorphism effects. - **Portable Environment**: Includes Python 3.11 with all dependencies pre-installed. - **High Speed**: Optimized Scikit-learn model for instant classification. ## 🤗 Hugging Face Space Deployment This project is optimized for deployment as a Docker Space on Hugging Face. 1. Create a new Space on [Hugging Face](https://huggingface.co/new-space). 2. Select **Docker** as the SDK. 3. Push your project files to the Space: - Make sure `Dockerfile`, `backend/`, and `car_bike_model.pkl` are included. 4. The space will automatically build and deploy the app on port 7860. Alternatively, use the included assistant for a standard upload (if not using Docker): 1. Open a terminal in the project folder. 2. Run: `HF_ASSISTANT.bat auth login` (you will need your HF Token). 3. Run: `HF_ASSISTANT.bat upload Afnaan08/CarvsBike .` --- *Created with ❤️ for AI research and development.*