Unpacking METR’s findings: Does AI slow developers down?

In this episode of the Engineering Enablement podcast, host Abi Noda is joined by Quentin Anthony, Head of Model Training at Zyphra and a contributor at EleutherAI. Quentin participated in METR’s recent study on AI coding tools, which revealed that developers often slowed down when using AI—despite feeling more productive. He and Abi unpack the unexpected results of the study, which tasks AI tools actually help with, and how engineering teams can adopt them more effectively by focusing on task-level fit and developing better digital hygiene.

Where to find Quentin Anthony: 

Where to find Abi Noda:

In this episode, we cover:
(00:00) Intro
(01:32) A brief overview of Quentin’s background and current work
(02:05) An explanation of METR and the study Quentin participated in 
(11:02) Surprising results of the METR study 
(12:47) Quentin’s takeaways from the study’s results 
(16:30) How developers can avoid bloated code bases through self-reflection
(19:31) Signs that you’re not making progress with a model 
(21:25) What is “context rot”?
(23:04) Advice for combating context rot
(25:34) How to make the most of your idle time as a developer
(28:13) Developer hygiene: the case for selectively using AI tools
(33:28) How to interact effectively with new models
(35:28) Why organizations should focus on tasks that AI handles well
(38:01) Where AI fits in the software development lifecycle
(39:40) How to approach testing with models
(40:31) What makes models different 
(42:05) Quentin’s thoughts on agents 

Referenced:

Creators and Guests

Abi Noda
Host
Abi Noda
Abi is the founder and CEO of DX (getdx.com), which helps engineering leaders measure and improve developer experience. Abi formerly founded Pull Panda, which was acquired by GitHub.
Unpacking METR’s findings: Does AI slow developers down?
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