BatuhanSeremet/Spotify-DataAnalysis
Analysis and clustering of popular songs and their attributes using Spotify API.
This project helps music enthusiasts and data curious individuals understand the characteristics of popular songs. By analyzing various musical attributes, it groups similar songs together, providing insights into different music styles. You input a collection of popular songs (like the provided CSV), and it outputs clusters of songs that share common traits.
No commits in the last 6 months.
Use this if you want to explore the underlying patterns in popular music and discover how songs group together based on their acoustic features.
Not ideal if you're looking to predict future music trends or build a personalized music recommendation system.
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Last pushed
Jan 26, 2021
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