This is Dockerized- ML - Based Web App Created by Christofel Goenawan where the features are :
- Machine Learning Model Created in Python in the Web
- REST API to Use the Machine Learning Model
- Contain Vary Machine Learning Models and Its Versions
- A/B Testing Features for Models Development
- Containerized Application in Docker
- Simple Automatic Testing for Machine Learning Model and Pages
To create this Web- App User used Piotr Plonski's Paper as references.
The Web App is build using Python , Django , and Flask Programming Languages. The Machine Learning Models contained here are:
- Random Forest Classifier
- XGBoost Classifier
- K - Neighbors Classifier
In this Project Writer used Adult Income's Dataset as dataset.
- ( Optional ) Git Platform in Local PC to Pull and Update the Codes ( for Windows's User Git Must be Installed First )
- Python Version 3.6 ( Don't Use Python 3.7 )
- Docker Engine Installed ( for Windows's User Docker Must be Installed First )
- Python Packages as Written in requirements.txt
- The Web App Can be seen in Photos Folder.
- For more information kindly reach me through : christofel04@gmail.com