Music Genre Classification and Recommendation

Author:

Prof. Rahul Ghode 1,Pranav Navale 2,Mayur Jadhav 2,Anirudha Chippa 2,Minal Bhandare 2

Affiliation:

1. Professor at Information Technology Department, Dhole Patil College of Engineering, Wagholi, Pune, Maharashtra, India

2. B. E. Scholar, Information Technology Department, Dhole Patil College of Engineering, Wagholi, Pune, Maharashtra, India

Abstract

There are various sorts to group the music. Classes are for the most part various classifications wherein music is partitioned. In this day and age as music industry develops quickly, there are various kinds of music sorts made. It is essential to classify the music into these classifications, yet it is mind boggling task. In past times this is done physically and prerequisite for programmed framework for type grouping emerges. As a rule, AI techniques are utilized to group music types and profound learning strategy is utilized to prepare the model yet in this undertaking, we will utilize neural organization strategies for the characterization.

Publisher

Technoscience Academy

Subject

General Medicine

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