mdzaheerjk/Collaborative-Filtering-Recommendation-System
The End-to-End Recommender System is a machine learning-based application designed to recommend books to users based on collaborative filtering. The project encompasses a complete MLOps pipeline, including data ingestion, validation, transformation, model training, and a web-based user interface for interaction.
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Jan 27, 2026
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