Solidx74/Customer-Churn-Analysis-and-Prediction-System
A web-based machine learning app built with Python Flask and Random Forest that predicts whether a telecom customer is likely to churn, showing both prediction and confidence. Perfect for exploring feature engineering, ML deployment, and business analytics.
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Jupyter Notebook
License
MIT
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Last pushed
Mar 24, 2026
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