Abalo39/Machine_learning_at_scale
Scalable MovieLens 20M recommender system. Features Power-Law EDA, Matrix Factorization (ALS), Neural Collaborative Filtering (NCF), and t-SNE latent visualization.
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Jupyter Notebook
License
MIT
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Last pushed
Jan 22, 2026
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