Tanwar-12/No-Churn-Telecom
This project focuses on predicting customer churn in the telecom industry using machine learning techniques. The model is trained to identify factors that influence customer retention and accurately predict whether a customer is likely to stay or leave.
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Aug 13, 2024
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