Predicting Credit Default Risk, A Full-Stack Data Science Project
This in-depth blog covers a complete machine learning pipeline built to predict credit default risk. It uses real-world financial data, advanced models (XGBoost, Random Forest), and ends with a deployed Streamlit application. The entire project is publicly available via GitHub and includes thorough evaluation and hyperparameter tuning steps.
Continue Reading