The purpose of this project is to build and ETL pipeline for a Data Lake hosted on Amazon S3
-
Install Python 3.x.
-
This project is build with conda instead of pip. Install anaconda or modify the script to make use of pip.
The compagny Sparkify need to analyses theirs data to better know the way users (free/paid) use theirs services. With this data model we will be able to ask question like When? Who? Where? and What? about the data. The task is to build an ETL Pipeline that extract data from a S3, wrangle them in memory with Spark and write it back to S3 for analysis.
This data model is called a start schema data model. At it's aim is a Fact Table -songplays- that containg fact on song play like user agent, location, session or user's level and then have columns of foreign keys (FK) of 4 dimension tables :
- Songs table with data about songs
- Artists table
- Users table
- Time table
This model enable search with the minimum SQL JOIN possible and enable fast read queries.
Few steps
- Run etl.py to wrangle the data