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elbow-method

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Unsupervised Machine Learning-Netflix Recommender recommends Netflix movies and TV shows based on a user's favorite movie or TV show. It uses a a K-Means Clustering model to make these recommendations. These models use information about movies and TV shows such as their plot descriptions and genres to make suggestions.

  • Updated Jul 8, 2022
  • Jupyter Notebook

Unsupervised Machine Learning-Netflix Recommender recommends Netflix movies and TV shows based on a user's favorite movie or TV show. It uses a a K-Means Clustering model to make these recommendations. These models use information about movies and TV shows such as their plot descriptions and genres to make suggestions.

  • Updated Mar 12, 2024
  • Jupyter Notebook

The project creates a robust song recommendation system using K-means clustering with Spotify data. By grouping songs based on musical attributes like danceability, energy, and acousticness, personalized recommendations will be generated, enhancing user satisfaction and engagement in music discovery.

  • Updated Mar 24, 2024
  • Jupyter Notebook

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