devbassey/Telco-Customer-Church-Analysis-Project
This project uses machine learning and data analysis on the IBM Telco dataset to predict customer churn, uncover its key drivers, and translate insights into actionable strategies for reducing customer loss and protecting revenue.
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Mar 26, 2026
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