Thanks to visit codestin.com
Credit goes to github.com

Skip to content

Smita401/song_recommender

 
 

Repository files navigation

Parkie's Recommendations App 🐶

Welcome to Parkie's Recommendations, a personalized music recommendation app powered by Spotify!

Authors: @Adam Nowicki @Javier Peyrere @Martin Ossandon Busch @Smita Prakas

Instructions

Open our app: https://songrecommender-bgj9w3rcghsrwe3rtqfkww.streamlit.app

Search for Your Favorite Song:

Enter the title of your favorite song in the designated text box. Optionally, you can also enter the name of the artist.

Choose the Right Song:

After entering your song preferences, click on the "Search" button. A list of matching songs will be displayed. Choose the song that best matches your preference.

Get Recommendations:

Once you select a song, Parkies will analyze its audio features to understand your taste. Based on the selected song's features, Parkies will recommend two similar tracks for you to explore. Simply sit back and enjoy your personalized recommendations!

How It Works

Audio Feature Analysis:

Parkie analyzes key audio features of the selected song, such as danceability, energy, speechiness, acousticness, instrumentalness, and valence.

Recommendation Algorithm:

Using machine learning models trained on Spotify's vast music database, Parkie identifies clusters of songs with similar audio features. It then recommends two tracks from the cluster that closely match your selected song's characteristics.

Note

Parkies Recommendations is powered by Spotify's API and utilizes machine learning models to provide personalized suggestions. For the best experience, ensure you have an active internet connection. Sit back, relax, and let Parkies guide you through a world of music tailored just for you!

Thank you for using Parkies Recommendations.

Enjoy discovering new music! 🎶

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 99.1%
  • Python 0.9%