Churn Prediction Web Application
- This web application is deployed on streamlit
- I have used the dataset from IBM community datasets which was a dataset from a fictional Telco Organization
- The Dataset has features representing the demographic data for each customer, the services used or not used by the customer and the churn labels for each customer as well
- The jupyter notebook file
Churn.ipynb
has the extensive EDA and all the preprocessing steps (handling missing values, null values, categorical data and balancing of the dataset) - The model is saved in the
model.SAV
file - the data directory has the raw dataset as well as the preprocessed training features dataset, and the target dataset
- the
churn.py
file is the main file to run to view the streamlit web app
Predictions