[OC] I made a visual timeline of The Beatles' White Album Sessions Visualization
![[OC] I made a visual timeline of The Beatles' White Album Sessions Visualization](/api/images/reddit-maps/1u0o8xr_1780970401303.jpg)
Data Analysis
What This Visualization Shows
This data visualization displays "[OC] I made a visual timeline of The Beatles' White Album Sessions" and provides a clear visual representation of the underlying data patterns and trends. The visualization focuses on I've started making my own visual timelines of albums from different bands and I've almost finished my timeline for the White Album. These dates were taken from session dates provided with the album re-releases, and information from [beatlesbible.com](http://beatlesbible.com) Starting with the Escher recordings in May, all songs were recorded between June and October 1968.
I've also marked related events like Yoko Ono appearing, Geoff Emerick quitting, Ringo leaving etc.
Interesting things to note:
* John worked on the harder rock version of Revolution after days of having to work on Ob-La-Di with Paul * Ringo was not present for the sessions of Back in the USSR and Dear Prudence * The faster version of Helter Skelter was done almost 2 months after the first version * Not Guilty, a Harrison song, was recorded in August with 103 takes, but left off the album. * Hey Jude and What's the New Mary Jane? were recorded during this time but not for this album. * The light purple bars denote time between sessions when songs were still unfinished
I hope you all enjoy it!
Software used: Adobe Illustrator. Everything was created by hand, all rows, columns, colored regions, text etc.
**Other Timelines I've worked on:** Beach Boys - Pet Sounds Beach Boys - SMiLE Beatles - Sgt. Pepper Beatles - Magical Mystery Tour, which allows us to understand complex relationships and insights within the data through visual storytelling.
Deep Dive into the Topic
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Data Analysis and Insights
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Significance and Applications
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About the Author

Alex Cartwright
Senior Data Visualization Expert
Alex Cartwright is a renowned data visualization specialist and infographic designer with over 15 years of experience in...