What It Takes to Get Hired and Survive


TL;DR

  • Inside Access: Prakhar Agarwal, an applied researcher who has worked at Apple, OpenAI, and Meta Superintelligence Labs, revealed what hiring and daily life at frontier AI labs actually look like.
  • Hiring Signal: Meta and OpenAI test candidates on their ability to identify and quantify gaps in current AI models, prioritizing demonstrated judgment over academic credentials.
  • Work Culture: Researchers at these labs are expected to self-direct from day one, defining their own problems and priorities without a traditional management hierarchy.
  • Talent War: The flow of researchers between Meta and OpenAI continues in both directions, underscoring how scarce frontier AI talent truly is.

Forget the PhD. The skill Meta Superintelligence Labs tests in interviews – according to a researcher who moved there from OpenAI – is the ability to find gaps in current AI models and quantify them. Prakhar Agarwal, an applied researcher who has worked at Apple, OpenAI, and now Meta’s elite research division, revealed these insights in a first-person account published by Business Insider.

The piece offers some of the deepest public detail yet into what it takes to get in – and what happens once you do. The core lesson: these labs want researchers who can define what problems are worth solving, not just execute on ones they’re given.

“Once you’re in, you’re pretty much thrown in the deep end. You define your own problems and try to come up with solutions. At OpenAI and Meta, they spend a lot of time hiring smart people. You need to tell them what needs to be done, rather than the other way round.”

Prakhar Agarwal, Applied Researcher at Meta Superintelligence Labs (via Business Insider)

What this signals is a fundamental inversion of the traditional employer-employee relationship. Rather than organizations directing talent, these labs engineer conditions where leading researchers self-select for fit – and self-select out when they cannot operate without structure. The implication: the interview is less a test of knowledge than a test of self-awareness about how you work.

Life Inside the Lab

That “deep end” is not a metaphor. For those accustomed to conventional tech roles – defined OKRs, assigned projects, a manager with a product roadmap – life at an elite AI lab is a genuine culture shock. Agarwal describes the day-to-day as governed by high autonomy and flexible structure, with no traditional management hierarchy telling researchers what to build next.

Identifying what gap to close, deciding whether that gap is worth closing, and executing on the solution are all the researcher’s responsibility. A new hire might spend weeks evaluating whether a problem is real before writing a single line of code. That prolonged ambiguity is by design, not oversight.