
Inside the Algorithm Factory: Music Recommendations (w/ Nick Seaver)
Money 4 Nothing
The History of Information Overload
Early recommender systems imagine that the user is a kind of thwarted music enthusiast. And so this system is to sort of help you like pursue that goal, which you sort of intrinsically have. But over time from the sort of mid 90s before the present basically they're overwhelmed by music. They don't really care, they just want to hear something. It's a different kind of listener to imagine and it results in all sorts of changes in how these systems are designed because they are built with a model of their user in them.
00:00
Transcript
Play full episode
Remember Everything You Learn from Podcasts
Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.