Music Recommender System Using Pyspark

提供方
Coursera Project Network
在此指导项目中,您将:

Learn how to setup the google colab for distributed data processing

Learn how aggregate a pyspark dataframe to have the data needed for our machine learning model

Learn how to use StringIndexer to convert a String (categorical) column into Unique Integral column

Learn how to create ALS model for Recommender System

Clock1 hour
Intermediate中级
Cloud无需下载
Video分屏视频
Comment Dots英语(English)
Laptop仅限桌面

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.

您要培养的技能

Programming ModelAlgorithmsAlgorithm TrainingPySpark

分步进行学习

在与您的工作区一起在分屏中播放的视频中,您的授课教师将指导您完成每个步骤:

  1. Prepare the Google Colab for distributed data processing

  2. Mounting our Google Drive into Google Colab environment

  3. Importing csv file of our Dataset (4 Gb) into pySpark dataframe

  4. Dropping some useless columns and nan Values in our dataframe

  5. Performing an Aggregation to prepare the data

  6. Learn how to use StringIndexer to convert a String (categorical) column into Unique Integral column

  7. Creating ALS model for Recommender System

指导项目工作原理

您的工作空间就是浏览器中的云桌面,无需下载

在分屏视频中,您的授课教师会为您提供分步指导

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