--- description: Rules for model evaluation and interpretation scripts in chemistry ML projects, emphasizing appropriate metrics, error analysis, and visualization techniques. globs: evaluation/**/*.py --- - Use appropriate metrics for chemistry tasks (e.g., RMSE, R², ROC AUC, enrichment factor). - Implement techniques for model interpretability (e.g., SHAP values, integrated gradients). - Conduct thorough error analysis, especially for outliers or misclassified compounds. - Visualize results using chemistry-specific plotting libraries (e.g., RDKit's drawing utilities).