Skip to content

etchsaleh/Suggestify

Repository files navigation

Suggestify

Discover new music.

SUGGESTIFY is a music recommendation desktop application written in Java that provides artist recommendations based on the user's current favorites. The recommender system is implemented using a matrix factorization method named Alternating Least Squares (ALS) which uses a 360k user dataset from last.fm® containing the top 50 most played artists as well as the number of times that artist was played per user. The application later interacts with Spotify® using the official API to create a playlist consisting of top tracks by suggested artists. Suggestify Demo