Telecom-Churn-Predictor and Customer-Churn-Prediction

Maintenance 13/25
Adoption 1/25
Maturity 15/25
Community 12/25
Maintenance 13/25
Adoption 0/25
Maturity 15/25
Community 0/25
Stars: 1
Forks: 1
Downloads:
Commits (30d): 0
Language: Python
License: MIT
Stars:
Forks:
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
No Package No Dependents
No Package No Dependents

About Telecom-Churn-Predictor

gattsu001/Telecom-Churn-Predictor

Predicts which telecom customers are likely to churn with 95% accuracy using engineered features from usage, billing, and support data. Implements Sturges-based binning, one-hot encoding, stratified 80/20 train-test split, and a two-level ensemble pipeline with soft voting. Achieves 94.60% accuracy, 0.8968 AUC, 0.8675 precision, 0.7423 recall.

About Customer-Churn-Prediction

JavedFazlulahF/Customer-Churn-Prediction

📊 Predict customer churn in telecom using machine learning to enhance retention strategies and drive better business outcomes.

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