🪐 Repository for the Integrated Project of the Social Networks and Marketing course at PUC-SP, focusing on AI-driven analysis and marketing strategies based on social media data
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Updated
Oct 29, 2025 - Jupyter Notebook
🪐 Repository for the Integrated Project of the Social Networks and Marketing course at PUC-SP, focusing on AI-driven analysis and marketing strategies based on social media data
🪐 2-Gradient Boosting Machines and Low-Default Modeling: A repository for research, implementation, and best practices with Gradient Boosting methods (GBM, XGBoost, LightGBM), H2O AutoML, and robust strategies for modeling extreme class imbalance ("Low Default") in data science for finance and risk.
🚀 Explore Gradient Boosting techniques and low-default modeling for financial data science, enhancing strategies for tackling extreme class imbalance.
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