Owaiskhan9654/Sony-R.I.S.E-India-Hackathon-3rd-Place-Solution
Recent Sony RISE Research Team India organized and this is my Solution in which I secured 3rd Position. Recommender systems are among the most popular applications of data science today. They are used to predict the "rating" or "preference" that a user would give to an item. In this Challenge I have computed and extracted several Features in order to Build this Hybrid Collaborative Recommender System
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Feb 12, 2026
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