Predictive Churn Modeling: Proactive Retention

  • The Challenge: Identifying "at-risk" customers before they leave, especially in imbalanced datasets where churn is a rare but costly event.

  • The Solution: Developed a classification model (Random Forest/Logistic Regression) focusing on Precision and Recall rather than simple accuracy.

  • The Impact: Isolated churn precursors (e.g., low usage, lack of tech support sign-ups), allowing marketing teams to intervene and protect revenue.

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API Risk & Modeling

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Increasing Deal Win Rates