This project is an overview of the Spotify Weekly Top 200 Charts and how music streaming was affected during Covid-19
Objective: We set out to identify any change in trends within Spotify Top 200 music streaming charts from 2019 to 2020 due to world events such as, the Covid-19 pandemic.
Hypothesis: Music streaming volume is likely to increase and patterns in users’ music selection will shift to more tracks that are lower in energy, less dancible, and overall have a more sorrowful mood.
- Python
- Pandas
- Matplotlib
- Seaborn
- Spotify API
- Squarify
- Pull and merge weekly CSVs from Spotify.
- Created a spotify client to be utilized to make API calls to retrieve additional data including Spotify audio features.
- Perform comparative analysis between 2019 and 2020 datasets.
- Analyze Genres.
- Perform Audio Analysis and determine any correlation between Spotify audio features.
- Compare any changes in audio features between 3 countries that drastically different pandemic response measures.
- Indentify any trends for an individual track within the Top 200 Chart.
Our data shows a 6.5% (1.9 billion) decrease in streams in 2020. Albeit having fewer streams 2020 showed an increase in total artists (+24), tracks (+111), and 70 total genres (+212%) in the Top 200.
Next we show the differences between Spotify's elements and features. A further look is taken into Danceabitlity and Energy because of their positive correlation.
Radar, Bar, and Desity plots are used to show the Music Moods and distribution in the first 6 months of 2020 for the United States, Italy, and Sweden. These three countries were picked based on the decisions on how to handle the Covid 19 pandemic.
We chose to take a deep dive into the artist The Weeknd and his single 'Blinding Lights' about how other factors can affect streams. The charts follow the release dates and performances throughout the year.
All created CSV files are saved in output_Data and all visuals are saved in output_plots