This project is a real estate price prediction web application built using Python, Flask, and machine learning. It allows users to input property details and get an estimate of the property's price based on a pre-trained machine learning model.
- Features
- Demo
- Getting Started
- Usage
- Project Structure
- Machine Learning Model
- Web Application
- Deployment
- Contributing
- License
- Real-time real estate price prediction based on user-provided property details.
- Basic web interface for user interaction.
- Integration with a pre-trained machine learning model.
- Clean and user-friendly design.
Before running the application, you need to have the following dependencies installed:
- Python 3.x
- Flask (install with
pip install Flask
)
-
Clone this repository:
git clone https://github.com/sahilshukla3003/RealEstatePricePrediction.git cd RealEstatePricePrediction
-
Install the required Python packages:
pip install -r requirements.txt
Start the Flask application:
python app.py
Open a web browser and navigate to http://localhost:5000 to access the web application.
Fill out the property details form, and click the "Predict" button to get a real estate price estimate.
app.py
: The main Flask application.templates/
: HTML templates for the web interface.static/
: Static files such as CSS and JavaScript.model/
: Contains the pre-trained machine learning model.
The real estate price prediction model is trained on a dataset of real estate properties and used to make predictions.
The web application is built with Flask, a Python web framework. It provides a user-friendly interface for users to input property details and receive price predictions.
You can deploy this application to a production environment using platforms like Heroku, AWS, or Azure. Be sure to set up a production-ready web server like Gunicorn for serving the Flask app.
Feel free to contribute to this project. You can add any specific feature and kindly request a pull request.
This project is licensed under the MIT License.