소개
The SHAP skill provides a comprehensive framework for model interpretability and explainability, leveraging game theory-based Shapley values to demystify machine learning outputs. It offers specialized guidance for tree-based models, deep learning, and black-box systems, enabling developers to compute feature attributions and generate diagnostic visualizations like beeswarm and waterfall plots. Use this skill to build trust in your models, debug unexpected behaviors, analyze fairness, and implement production-ready explainable AI (XAI) workflows across any major framework including XGBoost, TensorFlow, and PyTorch.