🏠 Strona Główna
Benchmarki
📊 Wszystkie benchmarki 🦖 Dinozaur v1 🦖 Dinozaur v2 ✅ Aplikacje To-Do List 🎨 Kreatywne wolne strony 🎯 FSACB - Ostateczny pokaz 🌍 Benchmark tłumaczeń
Modele
🏆 Top 10 modeli 🆓 Darmowe modele 📋 Wszystkie modele ⚙️ Kilo Code
Zasoby
💬 Biblioteka promptów 📖 Słownik AI 🔗 Przydatne linki
Advanced

Customer Churn Prediction Pipeline

#data-science #machine-learning #python #statistics

Design a machine learning pipeline for feature engineering and model evaluation.

Design a comprehensive machine learning pipeline to predict customer churn for a telecommunications company. Detail the feature engineering process, specifying how you would handle categorical variables, missing data, and class imbalance. Select three appropriate models (e.g., Random Forest, XGBoost, Logistic Regression) and describe a cross-validation strategy to evaluate them. Define the evaluation metrics you would prioritize (e.g., Recall vs. Precision) and justify your choice based on the business cost of false negatives versus false positives.