IlijaMihajlovic/Random-Forest-Classification
This project demonstrates how to build a Random Forest Classifier to predict music genres using audio feature data from Spotify. The model is trained on a curated subset of the spotify_tracks.csv dataset, focusing on popular genres such as pop, country, hip-hop, rock, latin, edm and more.
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Jun 13, 2025
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