Sparkify is a music streaming service, created by Udacity to resemble the real-world datasets generated by companies such as Spotify or Pandora. Millions of users play their favorite songs through music streaming services on a daily basis.
Using the song and log datasets to create a star schema optimized for queries on song play analysis. This includes the following tables.
- songplays - records in log data associated with song plays i.e. records with page NextSong
- songplay_id, start_time, user_id, level, song_id, artist_id, session_id, location, user_agent
- users - users in the app
- user_id, first_name, last_name, gender, level
- songs - songs in music database
- song_id, title, artist_id, year, duration
- artists - artists in music database
- artist_id, name, location, latitude, longitude
- time - timestamps of records in songplays broken down into specific units
- start_time, hour, day, week, month, year, weekday
The project workspace includes six files:
test.ipynb
displays the first few rows of each table to let you check your database.create_tables.py
drops and creates your tables. You run this file to reset your tables before each time you run your ETL scripts.etl.ipynb
reads and processes a single file from song_data and log_data and loads the data into your tables. This notebook contains detailed instructions on the ETL process for each of the tables.etl.py
reads and processes files from song_data and log_data and loads them into your tables. You can fill this out based on your work in the ETL notebook.sql_queries.py
contains all your sql queries, and is imported into the last three files above.README.md
provides discussion on your project.
- Write CREATE statements in
sql_queries.py
to create each table. - Write DROP statements in
sql_queries.py
to drop each table if it exists. - Run
create_tables.py
to create your database and tables. - Run
test.ipynb
to confirm the creation of your tables with the correct columns. Make sure to click "Restart kernel" to close the connection to the database after running this notebook.
Follow instructions in the etl.ipynb
notebook to develop ETL processes for each table.
At the end of each table section, or at the end of the notebook, run test.ipynb
to confirm that records were successfully inserted into each table.
Remember to rerun create_tables.py
to reset your tables before each time you run this notebook.
- After finished implement
etl.ipynb
, implement etl.py accordingly, where we process the entire datasets. - Run
create_tables.py
before runningetl.py
to reset your tables. - Run
test.ipynb
to confirm your records were successfully inserted into each table.
artists & time | songs & users |
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