From Idea to Execution: Spotify's Discover Weekly

Chris Johnson
Chris JohnsonEngineering Manager - Recommendations and Personalization
From Idea to
Execution: Spotify’s
Discover Weekly
Chris Johnson :: @MrChrisJohnson
Edward Newett :: @scaladaze
DataEngConf • NYC • Nov 2015
Or: 5 lessons in building
recommendation products at scale
Who are We??
Chris Johnson Edward Newett
Spotify in Numbers
• Started in 2006, now available in 58 markets
• 75+ Million active users, 20 Million paying subscribers
• 30+ Million songs, 20,000 new songs added per day
• 1.5 Billion user generated playlists
• 1 TB user data logged per day
• 1,700 node Hadoop cluster
• 10,000+ Hadoop jobs run daily
Challenge: 30M songs… how do we recommend
music to users?
Discover
Radio
Related Artists
Discover Weekly
• Started in 2006, now available in 58 markets
• 75+ Million active users, 20 Million paying subscribers
• 30+ Million songs, 20,000 new songs added per day
• 1.5 Billion user generated playlists
• 1 TB user data logged per day
• 1,700 node Hadoop cluster
• 10,000+ Hadoop jobs run daily
The Road to
Discover Weekly
2013 :: Discover Page v1.0
• Personalized News Feed of
recommendations
• Artists, Album Reviews, News
Articles, New Releases, Upcoming
Concerts, Social
Recommendations, Playlists…
• Required a lot of attention and
digging to engage with
recommendations
• No organization of content
2014 :: Discover Page v2.0
• Recommendations grouped into
strips (a la Netflix)
• Limited to Albums and New
Releases
• More organized than News-Feed
but still requires active
interaction
Insight: users spending more time on
editorial Browse playlists than Discover.
Idea: combine the
personalized experience
of Discover with the lean-
back ease of Browse
Meanwhile… 2014 Year In Music
Play it forward: Same content as the
Discover Page but.. a playlist
Lesson 1:
Be data driven from
start to finish
Slide from Dan McKinley - Etsy
2008 2012 2015
• Reach: How many users are you reaching
• Depth: For the users you reach, what is the
depth of reach.
• Retention: For the users you reach, how many
do you retain?
Define success metrics BEFORE you
release your test
• Reach: DW WAU / Spotify WAU
• Depth: DW Time Spent / Spotify WAU
• Retention: DW week-over-week retention
Discover Weekly Key Success Metrics
2008 2012 2015
Slide from Dan McKinley - Etsy
Step 1: Prototype (employee test)
Step 1: Prototype (employee test)
Results of Employee Test were very positive!
2008 2012 2015
Slide from Dan McKinley - Etsy
Step 2: Release AB Test to 1% of Users
Google Form 1% Results
Personalized image resulted in 10% lift in WAU
• Initial 0.5% user test
• 1% Spaceman image
• 1% Personalized
image
Lesson 2:
Reuse existing
infrastructure in creative
ways
Discover Weekly Data Flow
Recommendation
Models
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0
0 0 1 0 0 1 0 0
1 0 0 0 1 0 0 1
•Aggregate all (user, track) streams into a large matrix
•Goal: Approximate binary preference matrix by inner product of 2 smaller matrices by minimizing the
weighted RMSE (root mean squared error) using a function of plays, context, and recency as weight
X YUsers
Songs
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
•
• = user latent factor vector
• = item latent factor vector
[1] Hu Y. & Koren Y. & Volinsky C. (2008) Collaborative Filtering for Implicit Feedback Datasets 8th IEEE International Conference on Data Mining
Implicit Matrix Factorization
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0
0 0 1 0 0 1 0 0
1 0 0 0 1 0 0 1
•Aggregate all (user, track) streams into a large matrix
•Goal: Model probability of user playing a song as logistic, then maximize log likelihood of binary
preference matrix, weighting positive observations by a function of plays, context, and recency
X YUsers
Songs
• = bias for user
• = bias for item
• = regularization parameter
• = user latent factor vector
• = item latent factor vector
[2] Johnson C. (2014) Logistic Matrix Factorization for Implicit Feedback Data NIPS Workshop on Distributed Matrix Computations
Can also use Logistic Loss!
NLP Models on News and Blogs
Playlist itself is a
document
Songs in
playlist are
words
NLP Models work great on Playlists!
[3] http://benanne.github.io/2014/08/05/spotify-cnns.html
Deep Learning on Audio
•normalized item-vectors
Songs in a Latent Space representation
•user-vector in same space
Songs in a Latent Space representation
Lesson 3:
Don’t scale until
you need to
Scaling to 100%: Rollout Challenges
‣Create and publish 75M playlists every week
‣Downloading and processing Facebook images
‣Language translations
Scaling to 100%: Weekly refresh
‣Time sensitive updates
‣Refresh 75M playlists every Sunday night
‣Take timezones into account
Discover Weekly publishing flow
From Idea to Execution: Spotify's Discover Weekly
From Idea to Execution: Spotify's Discover Weekly
From Idea to Execution: Spotify's Discover Weekly
What’s next?
Iterating on content
quality and interface
enhancements
Iterating on quality and adding a feedback loop.
DW feedback comes at the expense of presentation bias.
Lesson 4:
Users know best. In the
end, AB Test everything!
Lesson 5 (final lesson!):
Empower bottom-up
innovation in your org and
amazing things will happen.
Thank You!
(btw, we’re hiring Machine Learning and
Data Engineers, come chat with us!)
1 of 50

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From Idea to Execution: Spotify's Discover Weekly

  • 1. From Idea to Execution: Spotify’s Discover Weekly Chris Johnson :: @MrChrisJohnson Edward Newett :: @scaladaze DataEngConf • NYC • Nov 2015 Or: 5 lessons in building recommendation products at scale
  • 2. Who are We?? Chris Johnson Edward Newett
  • 3. Spotify in Numbers • Started in 2006, now available in 58 markets • 75+ Million active users, 20 Million paying subscribers • 30+ Million songs, 20,000 new songs added per day • 1.5 Billion user generated playlists • 1 TB user data logged per day • 1,700 node Hadoop cluster • 10,000+ Hadoop jobs run daily
  • 4. Challenge: 30M songs… how do we recommend music to users?
  • 8. Discover Weekly • Started in 2006, now available in 58 markets • 75+ Million active users, 20 Million paying subscribers • 30+ Million songs, 20,000 new songs added per day • 1.5 Billion user generated playlists • 1 TB user data logged per day • 1,700 node Hadoop cluster • 10,000+ Hadoop jobs run daily
  • 10. 2013 :: Discover Page v1.0 • Personalized News Feed of recommendations • Artists, Album Reviews, News Articles, New Releases, Upcoming Concerts, Social Recommendations, Playlists… • Required a lot of attention and digging to engage with recommendations • No organization of content
  • 11. 2014 :: Discover Page v2.0 • Recommendations grouped into strips (a la Netflix) • Limited to Albums and New Releases • More organized than News-Feed but still requires active interaction
  • 12. Insight: users spending more time on editorial Browse playlists than Discover.
  • 13. Idea: combine the personalized experience of Discover with the lean- back ease of Browse
  • 15. Play it forward: Same content as the Discover Page but.. a playlist
  • 16. Lesson 1: Be data driven from start to finish
  • 17. Slide from Dan McKinley - Etsy 2008 2012 2015
  • 18. • Reach: How many users are you reaching • Depth: For the users you reach, what is the depth of reach. • Retention: For the users you reach, how many do you retain? Define success metrics BEFORE you release your test
  • 19. • Reach: DW WAU / Spotify WAU • Depth: DW Time Spent / Spotify WAU • Retention: DW week-over-week retention Discover Weekly Key Success Metrics
  • 20. 2008 2012 2015 Slide from Dan McKinley - Etsy
  • 21. Step 1: Prototype (employee test)
  • 22. Step 1: Prototype (employee test)
  • 23. Results of Employee Test were very positive!
  • 24. 2008 2012 2015 Slide from Dan McKinley - Etsy
  • 25. Step 2: Release AB Test to 1% of Users
  • 26. Google Form 1% Results
  • 27. Personalized image resulted in 10% lift in WAU • Initial 0.5% user test • 1% Spaceman image • 1% Personalized image
  • 31. 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Aggregate all (user, track) streams into a large matrix •Goal: Approximate binary preference matrix by inner product of 2 smaller matrices by minimizing the weighted RMSE (root mean squared error) using a function of plays, context, and recency as weight X YUsers Songs • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • = item latent factor vector [1] Hu Y. & Koren Y. & Volinsky C. (2008) Collaborative Filtering for Implicit Feedback Datasets 8th IEEE International Conference on Data Mining Implicit Matrix Factorization
  • 32. 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Aggregate all (user, track) streams into a large matrix •Goal: Model probability of user playing a song as logistic, then maximize log likelihood of binary preference matrix, weighting positive observations by a function of plays, context, and recency X YUsers Songs • = bias for user • = bias for item • = regularization parameter • = user latent factor vector • = item latent factor vector [2] Johnson C. (2014) Logistic Matrix Factorization for Implicit Feedback Data NIPS Workshop on Distributed Matrix Computations Can also use Logistic Loss!
  • 33. NLP Models on News and Blogs
  • 34. Playlist itself is a document Songs in playlist are words NLP Models work great on Playlists!
  • 36. •normalized item-vectors Songs in a Latent Space representation
  • 37. •user-vector in same space Songs in a Latent Space representation
  • 38. Lesson 3: Don’t scale until you need to
  • 39. Scaling to 100%: Rollout Challenges ‣Create and publish 75M playlists every week ‣Downloading and processing Facebook images ‣Language translations
  • 40. Scaling to 100%: Weekly refresh ‣Time sensitive updates ‣Refresh 75M playlists every Sunday night ‣Take timezones into account
  • 45. What’s next? Iterating on content quality and interface enhancements
  • 46. Iterating on quality and adding a feedback loop.
  • 47. DW feedback comes at the expense of presentation bias.
  • 48. Lesson 4: Users know best. In the end, AB Test everything!
  • 49. Lesson 5 (final lesson!): Empower bottom-up innovation in your org and amazing things will happen.
  • 50. Thank You! (btw, we’re hiring Machine Learning and Data Engineers, come chat with us!)