MOVIE RECOMMENDATION SYSTEM
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Abstract
In this digital era that we live in, Recommendation systems have become a part and parcel of our everyday lives. There are tons of options out there for everything that we do and people might find themselves in a difficult place while making a choice, ‘a perfect one!’ This is where the Recommendation Systems step in. Internet Giants such as Amazon, Netflix, YouTube, Spotify, Facebook etc can be seen using these technologies to keep their audience interested. So, through this work, we attempt to build a simple movie recommendation system employing the famous technique‘User-User Collaborative Filtering’ and design a GUI for the same.
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References
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https://aihubprojects.com/movie-recommendation-system-ai-projects/