A good person to follow if you care about what deployment-minded safety work looks like inside a frontier lab, especially around moderation, image systems, and system-card style evaluation.
Researcher Profile
Editor reviewedPamela Mishkin
Instruction following, alignment
Researcher at OpenAI
A useful person to study for the policy-and-deployment side of frontier AI, especially where product releases need a more explicit hazard and misuse analysis.
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Labs
About This Page
This profile is meant to help you get oriented quickly: why this researcher matters, what to read first, and where to explore next.
Last reviewed
March 18, 2026
Known For
The ideas, systems, and research directions that make this person worth knowing.
01
Hazard analysis for code models
02
Safety and deployment policy for generative systems
03
Research around how advanced models should be evaluated before release
04
Instruction following, alignment
05
Training language models to follow instructions with human feedback
06
OpenAI
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Canonical papers, project pages, or repositories that anchor this profile.
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