Scalable ETL pipeline built with Apache PySpark to process 7,043 telecom customer records for churn analysis. PySpark version of etl-telco-churn (Pandas + MySQL).
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Updated
Mar 22, 2026 - Python
Scalable ETL pipeline built with Apache PySpark to process 7,043 telecom customer records for churn analysis. PySpark version of etl-telco-churn (Pandas + MySQL).
Machine Learning training pipeline for Telco Customer Churn prediction with MLflow tracking, hyperparameter tuning, and DagsHub integration.
Predicting telecom customer churn using machine learning and segmenting customers by churn risk to support targeted retention strategies
An automated preprocessing pipeline for Telco Customer Churn data, including cleaning, feature engineering, and CI with GitHub Actions.
End-to-end analytics pipeline (SQL → R → Tableau) for telco customer churn: KPIs, segment breakdowns, and revenue at risk.
End-to-End Customer Churn Prediction Pipeline using Scikit-learn, GridSearchCV, and Gradio. Automatically preprocesses Telco data, tunes Logistic Regression & Random Forest models, and deploys an interactive web app for real-time churn predictions.
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