I feel like there are two challenges causing this. One is that it's difficult to get good data on how long the same person in the same context would have taken to do a task without AI vs with. The other is that it's tempting to time an AI with metrics like how long until the PR was opened or merged. But the AI workflow fundamentally shifts engineering hours so that a greater percentage of time is spent on refactoring, testing, and resolving issues later in the process, including after the code was initially approved and merged. I can see how it's easy for a developer to report that AI completed a task quickly because the PR was opened quickly, discounting the amount of future work that the PR created.
Developers totally spend time totally differently, though, this is a great callout! On page 10 of the paper [1], you can see a breakdown of how developers spend time when they have AI vs. not - in general, when these devs have AI, they spend a smaller % of time writing code, and a larger % of time working with AI (which... makes sense).
[1] https://metr.org/Early_2025_AI_Experienced_OS_Devs_Study.pdf