This course empowers learners to design, develop, and evaluate movie recommendation systems using real-world data and Python programming. Tailored for data enthusiasts and aspiring machine learning developers, the course introduces the practical applications of recommender systems across modern digital platforms such as Netflix, Amazon, and YouTube.

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This module introduces learners to the core concepts and implementation of a movie recommendation engine using Python. It begins by contextualizing the significance of recommender systems in modern digital platforms and then guides learners through setting up their development environment, importing essential libraries, and exploring fundamental recommendation techniques. Through a blend of conceptual overview and hands-on coding, learners will develop both a simple popularity-based recommender and a more advanced content-based filtering system using movie metadata.
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已于 Jul 18, 2025审阅
Smart, efficient engine delivering spot-on movie suggestions.
已于 Aug 5, 2025审阅
Smart, fast, personalized movie picks—highly recommended!
已于 Aug 19, 2025审阅
Built smart movie recommendations using data-driven ML techniques.







