R package for automation of machine learning, forecasting, model evaluation, and model interpretation
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Updated
May 25, 2024 - R
R package for automation of machine learning, forecasting, model evaluation, and model interpretation
Workshop (6 hours): Clustering (Hdbscan, LCA, Hopach), dimension reduction (UMAP, GLRM), and anomaly detection (isolation forests).
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