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Opiniones y comentarios de aprendices correspondientes a Music Recommender System Using Pyspark por parte de Coursera Project Network

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Nowadays, recommender systems are everywhere. for example, Amazon uses recommender systems to suggest some products that you might be interested in based on the products you've bought earlier. Or Spotify will suggest new tracks based on the songs you use to listen to every day. Most of these recommender systems use some algorithms which are based on Matrix factorization such as NMF( NON NEGATIVE MATRIX FACTORIZATION) or ALS (Alternating Least Square). So in this Project, we are going to use ALS Algorithm to create a Music Recommender system to suggest new tracks to different users based upon the songs they've been listening to. As a very important prerequisite of this course, I suggest you study a little bit about ALS Algorithm because in this course we will not cover any theoretical concepts. Note: This project works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions....
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1 - 5 de 5 revisiones para Music Recommender System Using Pyspark

por Mariana L F d A

22 de dic. de 2020

The instructor is great but the course is impossible to complete as the dataset is not available. Other students had the same issue and it was not solved apparently.


24 de nov. de 2021


por Li J

3 de mar. de 2021

Regarding to the other review says No dataset, actually, you can type the google drive link of the dataset by yourself, the link is showed in the video.

por Garigipati P

6 de oct. de 2021

easy to learn these guided projects

por Leonardo M

3 de nov. de 2022

It is just code. No interpretation of results at all.