This project aims to predict the prices of cars using machine learning (ML) and deep learning (DL) techniques. The project utilizes a dataset containing features of various cars such as make, model, year, mileage, and other relevant attributes. We have implemented both traditional ML models and DL models to predict car prices
Machine Learning Models:
Deep Learning Models:
Full-Stack Implementation:
The project is organized into the following directories:
Setup Environment:
pip install -r requirements.txt
.Training Models:
notebooks/
directory for EDA and model development.Web Application:
PFE/Website
directory.npm install
to install frontend dependencies.npm run dev
.Testing:
Dana Amine (@DanaAmine): Data Scientist and ML/Dl model development ,
Belkacemi Abderrahim (@Rahim444): Full-Stack Developer, Web application front end implementation and web scraping
Mama Maroua (@romy-ma): backend developer ,web application backend implementation
Hermez Abderrahim (@Hermez-anderrahim): Full-stack Developer , web application Frontend implementation and UI/UX design
Imane Belbachir (@imane-belbachir) : Front end Developer and UI/UX designer , front end implementation and UI/UX design
Graba chakib (@Chakibceran22): backend developer and 3D designer , backend implementaion and 3d models design
This project is licensed under the USTHB License - see the LICENSE file for details.