概要
The Clustering skill enables Claude to perform sophisticated unsupervised learning tasks, helping developers identify meaningful patterns within complex, unlabeled datasets. It provides a standardized framework for implementing popular algorithms like K-Means, DBSCAN, and HDBSCAN, alongside dimensionality reduction techniques like PCA and UMAP for data visualization. By incorporating automated validation metrics and anomaly detection patterns, this skill ensures that data discovery processes are statistically rigorous, scalable, and ready for production environments.