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688 points dheerajvs | 1 comments | | HN request time: 0.259s | source
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simonw ◴[] No.44523442[source]
Here's the full paper, which has a lot of details missing from the summary linked above: https://metr.org/Early_2025_AI_Experienced_OS_Devs_Study.pdf

My personal theory is that getting a significant productivity boost from LLM assistance and AI tools has a much steeper learning curve than most people expect.

This study had 16 participants, with a mix of previous exposure to AI tools - 56% of them had never used Cursor before, and the study was mainly about Cursor.

They then had those 16 participants work on issues (about 15 each), where each issue was randomly assigned a "you can use AI" v.s. "you can't use AI" rule.

So each developer worked on a mix of AI-tasks and no-AI-tasks during the study.

A quarter of the participants saw increased performance, 3/4 saw reduced performance.

One of the top performers for AI was also someone with the most previous Cursor experience. The paper acknowledges that here:

> However, we see positive speedup for the one developer who has more than 50 hours of Cursor experience, so it's plausible that there is a high skill ceiling for using Cursor, such that developers with significant experience see positive speedup.

My intuition here is that this study mainly demonstrated that the learning curve on AI-assisted development is high enough that asking developers to bake it into their existing workflows reduces their performance while they climb that learing curve.

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Uehreka ◴[] No.44523923[source]
> My personal theory is that getting a significant productivity boost from LLM assistance and AI tools has a much steeper learning curve than most people expect.

You hit the nail on the head here.

I feel like I’ve seen a lot of people trying to make strong arguments that AI coding assistants aren’t useful. As someone who uses and enjoys AI coding assistants, I don’t find this research angle to be… uh… very grounded in reality?

Like, if you’re using these things, the fact that they are useful is pretty irrefutable. If one thinks there’s some sort of “productivity mirage” going on here, well OK, but to demonstrate that it might be better to start by acknowledging areas where they are useful, and show that your method explains the reality we’re seeing before using that method to show areas where we might be fooling ourselves.

I can maybe buy that AI might not be useful for certain kinds of tasks or contexts. But I keep pushing their boundaries and they keep surprising me with how capable they are, so it feels like it’ll be difficult to prove otherwise in a durable fashion.

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1. rcruzeiro ◴[] No.44524627[source]
Exactly. The people who say that these assistants are useless or "not good enough" are basically burying their heads in the sand. The people who claim that there is no mirage are burying their head in the sand as well...