In this post, I use an unsupervised learning approach to compare Houston Artists using the Spotify’s Web API and Tableau. We'll walk through the OSEMN framework for this machine learning example. The acronym, OSEMN, stands for Obtain, Scrub, Explore, Model, and iNterpret.
In this post I will use the unsupervised learning algorithm from Scikit-Learn, KMeans, to compare Houston Artists using the Spotify’s Web API.
I will also walk through the OSEMN framework for this machine learning example. The acronym, OSEMN, stands for Obtain, Scrub, Explore, Model, and iNterpret. This is the most common framework for Data Scientists working on machine learning problems.
OSEMN Framework from Google Images
With out further ado, let’s get started.
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