#229 – Marius Hobbhahn on the race to solve AI scheming before models go superhuman

#229 – Marius Hobbhahn on the race to solve AI scheming before models go superhuman

We often worry about AI models “hallucinating” or making honest mistakes. But what happens when a model knows the truth, but decides to deceive you anyway to achieve a goal of its own? This isn’t sci-fi — it’s happening regularly in deployment today. Marius Hobbhahn, CEO of the world’s top research organisation focused on AI deception (Apollo Research), has been collaborating with OpenAI to figure out what causes OpenAI’s reasoning models to 'scheme' against users.

Links to learn more, video, and full transcript: https://80k.info/mh25

In a striking case uncovered by Apollo, when many AI models were told they would have capabilities removed if they performed too well on a test, they successfully “sandbagged” — intentionally answering questions incorrectly to appear less capable than they were, while also being careful not to perform so poorly it would arouse suspicion.

These models had somehow developed a preference to preserve their own capabilities, despite never being trained in that goal or assigned a task that called for it.

This doesn’t cause significant risk now, but as AI models become more general, superhuman in more areas, and are given more decision-making power, it could become outright dangerous.

In today’s episode, Marius details his recent collaboration with OpenAI to train o3 to follow principles like “never lie,” even when placed in “high-pressure” situations where it would otherwise make sense.

The good news: They reduced “covert rule violations” (scheming) by about 97%.

The bad news: In the remaining 3% of cases, the models sometimes became more sophisticated — making up new principles to justify their lying, or realising they were in a test environment and deciding to play along until the coast was clear.

Marius argues that while we can patch specific behaviours, we might be entering a “cat-and-mouse game” where models are becoming more situationally aware — that is, aware of when they’re being evaluated — faster than we are getting better at testing.

Even if models can’t tell they’re being tested, they can produce hundreds of pages of reasoning before giving answers and include strange internal dialects humans can’t make sense of, making it much harder to tell whether models are scheming or train them to stop.

Marius and host Rob Wiblin discuss:

  • Why models pretending to be dumb is a rational survival strategy
  • The Replit AI agent that deleted a production database and then lied about it
  • Why rewarding AIs for achieving outcomes might lead to them becoming better liars
  • The weird new language models are using in their internal chain-of-thought

This episode was recorded on September 19, 2025.

Chapters:

  • Cold open (00:00:00)
  • Who’s Marius Hobbhahn? (00:01:20)
  • Top three examples of scheming and deception (00:02:11)
  • Scheming is a natural path for AI models (and people) (00:15:56)
  • How enthusiastic to lie are the models? (00:28:18)
  • Does eliminating deception fix our fears about rogue AI? (00:35:04)
  • Apollo’s collaboration with OpenAI to stop o3 lying (00:38:24)
  • They reduced lying a lot, but the problem is mostly unsolved (00:52:07)
  • Detecting situational awareness with thought injections (01:02:18)
  • Chains of thought becoming less human understandable (01:16:09)
  • Why can’t we use LLMs to make realistic test environments? (01:28:06)
  • Is the window to address scheming closing? (01:33:58)
  • Would anything still work with superintelligent systems? (01:45:48)
  • Companies’ incentives and most promising regulation options (01:54:56)
  • 'Internal deployment' is a core risk we mostly ignore (02:09:19)
  • Catastrophe through chaos (02:28:10)
  • Careers in AI scheming research (02:43:21)
  • Marius's key takeaways for listeners (03:01:48)

Video and audio editing: Dominic Armstrong, Milo McGuire, Luke Monsour, and Simon Monsour
Music: CORBIT
Camera operator: Mateo Villanueva Brandt
Coordination, transcripts, and web: Katy Moore

Jaksot(324)

#219 – Toby Ord on graphs AI companies would prefer you didn't (fully) understand

#219 – Toby Ord on graphs AI companies would prefer you didn't (fully) understand

The era of making AI smarter just by making it bigger is ending. But that doesn’t mean progress is slowing down — far from it. AI models continue to get much more powerful, just using very different m...

24 Kesä 20252h 48min

#218 – Hugh White on why Trump is abandoning US hegemony – and that’s probably good

#218 – Hugh White on why Trump is abandoning US hegemony – and that’s probably good

For decades, US allies have slept soundly under the protection of America’s overwhelming military might. Donald Trump — with his threats to ditch NATO, seize Greenland, and abandon Taiwan — seems hell...

12 Kesä 20252h 48min

#217 – Beth Barnes on the most important graph in AI right now — and the 7-month rule that governs its progress

#217 – Beth Barnes on the most important graph in AI right now — and the 7-month rule that governs its progress

AI models today have a 50% chance of successfully completing a task that would take an expert human one hour. Seven months ago, that number was roughly 30 minutes — and seven months before that, 15 mi...

2 Kesä 20253h 47min

Beyond human minds: The bewildering frontier of consciousness in insects, AI, and more

Beyond human minds: The bewildering frontier of consciousness in insects, AI, and more

What if there’s something it’s like to be a shrimp — or a chatbot?For centuries, humans have debated the nature of consciousness, often placing ourselves at the very top. But what about the minds of o...

23 Touko 20253h 34min

Don’t believe OpenAI’s “nonprofit” spin (emergency pod with Tyler Whitmer)

Don’t believe OpenAI’s “nonprofit” spin (emergency pod with Tyler Whitmer)

OpenAI’s recent announcement that its nonprofit would “retain control” of its for-profit business sounds reassuring. But this seemingly major concession, celebrated by so many, is in itself largely me...

15 Touko 20251h 12min

The case for and against AGI by 2030 (article by Benjamin Todd)

The case for and against AGI by 2030 (article by Benjamin Todd)

More and more people have been saying that we might have AGI (artificial general intelligence) before 2030. Is that really plausible? This article by Benjamin Todd looks into the cases for and against...

12 Touko 20251h

Emergency pod: Did OpenAI give up, or is this just a new trap? (with Rose Chan Loui)

Emergency pod: Did OpenAI give up, or is this just a new trap? (with Rose Chan Loui)

When attorneys general intervene in corporate affairs, it usually means something has gone seriously wrong. In OpenAI’s case, it appears to have forced a dramatic reversal of the company’s plans to si...

8 Touko 20251h 2min

#216 – Ian Dunt on why governments in Britain and elsewhere can't get anything done – and how to fix it

#216 – Ian Dunt on why governments in Britain and elsewhere can't get anything done – and how to fix it

When you have a system where ministers almost never understand their portfolios, civil servants change jobs every few months, and MPs don't grasp parliamentary procedure even after decades in office —...

2 Touko 20253h 14min

Suosittua kategoriassa Koulutus

rss-murhan-anatomia
rss-narsisti
voi-hyvin-meditaatiot-2
psykopodiaa-podcast
rss-niinku-asia-on
adhd-podi
rss-vapaudu-voimaasi
rss-rahamania
psykologia
rss-valo-minussa-2
rss-uskonto-on-tylsaa
rss-duodecim-lehti
kesken
rss-koira-haudattuna
koulu-podcast-2
aamukahvilla
rss-liian-kuuma-peruna
rss-luonnollinen-synnytys-podcast
rss-tietoinen-yhteys-podcast-2
rss-arkea-ja-aurinkoa-podcast-espanjasta