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credit-risk-modelling

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End-to-end Credit Risk engine using Python. Achieved 93.04% Cross-Validated Recall and 0.98 ROC-AUC. Implemented advanced preprocessing (Log/Robust Scaling) and SMOTEENN to handle class imbalance. Champion model (Logistic Regression) provides full interpretability for strategic financial risk mitigation. 🏦📈

  • Updated Feb 1, 2026
  • Jupyter Notebook

Discover a comprehensive approach to constructing credit risk models. We employ various machine learning algorithms like LightGBM and CatBoost, alongside ensemble techniques for robust predictions. Our pipeline emphasizes data integrity, feature relevance, and model stability, crucial elements in credit risk assessment.

  • Updated Aug 15, 2024
  • Jupyter Notebook

Completed as part of the 365 Data Science Credit Risk Modeling in Python Udemy course. Developed an end-to-end credit risk modeling pipeline for consumer lending, covering data preprocessing, feature engineering, Probability of Default , Loss Given Default , Exposure at Default , scorecard development, model validation, population stability

  • Updated Jun 10, 2026
  • Jupyter Notebook

A dual-part finance and retail analytics project covering credit default prediction for companies using machine learning (Logistic Regression & Random Forest) and market risk analysis of a five-stock Indian equity portfolio using historical price and return data.

  • Updated Apr 1, 2026
  • Jupyter Notebook

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