Research Scientist at Google DeepMind. Creator of the Alignment Newsletter. http://rohinshah.com/
Rohin Shah
I wish when you wrote these comments you acknowledged that some people just actually think that we can substantially reduce risk via what you call “marginalist” approaches. Not everyone agrees that you have to deeply understand intelligence from first principles else everyone dies. Depending on how you choose your reference class, I’d guess most people disagree with that.
Imo the vast, vast majority of progress in the world happens via “marginalist” approaches, so if you do think you can win via “marginalist” approaches you should generally bias towards them.
Ah yeah, I think with that one the audiences were “researchers heavily involved in AGI Safety” (LessWrong) and “ML researchers with some interest in reward hacking / safety” (Medium blog)
We mostly just post more informal stuff directly to LessWrong / Alignment Forum (see e.g. our interp updates).
Having a separate website doesn’t seem that useful to readers. I generally see the value proposition of a separate website as attaching the company’s branding to the post, which helps the company build a better reputation. It can also help boost the reach of an individual piece of research, but this is a symmetric weapon, and so applying it to informal research seems like a cost to me, not a benefit. Is there some other value you see?
(Incidentally, I would not say that our blog is targeted towards laypeople. I would say that it’s targeted towards researchers in the safety community who have a small amount of time to spend and so aren’t going to read a full paper. E.g. this post spends a single sentence explaining what scheming is and then goes on to discuss research about it; that would absolutely not work in a piece targeting laypeople.)
AI capabilities progress is smooth, sure, but it’s a smooth exponential.
In what sense is AI capabilities a smooth exponential? What units are you using to measure this? Why can’t I just take the log of it and call that “AI capabilities” and then say it is a smooth linear increase?
That means that the linear gap in intelligence between the previous model and the next model keeps increasing rather than staying constant, which I think suggests that this problem is likely to keep getting harder and harder rather than stay “so small” as you say.
It seems like the load-bearing thing for you is that the gap between models gets larger, so let’s try to operationalize what a “gap” might be.
We could consider the expected probability that AI_{N+1} would beat AI_N on a prompt (in expectation over a wide variety of prompts). I think this is close-to-equivalent to a constant gap in ELO score on LMArena.[1] Then “gap increases” would roughly mean that the gap in ELO scores on LMArena between subsequent model releases would be increasing. I don’t follow LMArena much but my sense is that LMArena top scores have been increasing relatively linearly w.r.t time and sublinearly w.r.t model releases (just because model releases have become more frequent). In either case I don’t think this supports an “increasing gap” argument.
Personally I prefer to look at benchmark scores. The Epoch Capabilities Index (which I worked on) can be handwavily thought of as ELO scores based on benchmark performance. Importantly, the data that feeds into it does not mention release date at all—we put in only benchmark performance numbers to estimate capabilities, and then plot it against release date after the fact. It also suggests AI capabilities as operationalized by handwavy-ELO are increasing linearly over time.
I guess the most likely way in which you might think capabilities are exponential is by looking at the METR time horizons result? Of course you could instead say that capabilities are linearly increasing by looking at log time horizons instead. It’s not really clear which of these units you should use.
Mostly I think you should not try to go from the METR results to “are gaps in intelligence increasing or staying constant” but if I had to opine on this: the result says that you have a constant doubling time T for the time horizon. One way to think about this is that the AI at time 2T can do work at 50% success rate that AI at time T could do at 25% probability if you provide a decomposition into two pieces each of time T (each of which it completes with probability 50%). I kinda feel like this suggests more like “constant gap” rather than “increasing gap”.
Note that I do expect the first two trends to become superlinear eventually via an intelligence explosion, and the METR trend to become superexponential / superlinear (depending on units) probably some time before that (though probably we will just become unable to measure it well). But your claim seems to be about current progress, and for current progress I think it’s basically not true that the gap between successive models is increasing rather than staying constant.
Even in the intelligence explosion, capabilities progress is only superlinear w.r.t time, I expect it would still behave in the same way w.r.t inputs like compute and labor (where automated researchers should also count as labor). I’m not sure how I expect it to behave w.r.t successive model generations, partly because I’m not sure “successive model generations” will even be a sensible abstraction at that point. In any case, I don’t expect that to be particularly important in assessing the chances of success of a bootstrapping-type plan.
I am overall skeptical that the CoT will be that useful (since it’s not clear to me that a model doing AI safety research sabotage has to put that in the CoT).
It seems pretty wild to go from “it is possible for an AI to subvert a technique” to “the technique will not be that useful”. Is that really what you mean? Are you bearish on all control work?
(At the object-level, I’d say that you’re drastically limiting the power of the research sabotage that can be done if the model is forced not to put any of it in the CoT, and you should be very happy about this even if the model can still do some research sabotage.)
Tbc, I also don’t expect CoT to be that useful for longer-term concerns, but that’s mostly because I expect CoTs to become extremely illegible or to stop existing altogether (partly due to my having “long” timelines; on Anthropic-level short timelines I’d be quite bullish on CoT).
- ^
Though I don’t know that much about LMArena and I expect in practice there are confounders, e.g. as they change the distribution of models that are being evaluated the meaning of the scores will change.
Just switch to log_10 space and add? Eg 10k times 300k = 1e4 * 3e5 = 3e9 = 3B. A bit slower but doesn’t require any drills.
Seb is explicitly talking about AGI and not ASI. It’s right there in the tweet.
Most people in policy and governance are not talking about what happens after an intelligence explosion. There are many voices in AI policy and governance and lots of them say dumb stuff, e.g. I expect someone has said the next generation of AIs will cause huge unemployment. Comparative advantage is indeed one reasonable thing to discuss in response to that conversation.
Stop assuming that everything anyone says about AI must clearly be a response to Yudkowsky.
GDM: Consistency Training Helps Limit Sycophancy and Jailbreaks in Gemini 2.5 Flash
it’d be fine if you held alignment constant but dialed up capabilities.
I don’t know what this means so I can’t give you a prediction about it.
I don’t really see why it’s relevant how aligned Claude is if we’re not thinking about that as part of it
I just named three reasons:
Current models do not provide much evidence one way or another for existential risk from misalignment (in contrast to frequent claims that “the doomers were right”)
Given tremendous uncertainty, our best guess should be that future models are like current models, and so future models will not try to take over, and so existential risk from misalignment is low
Some particular threat model predicted that even at current capabilities we should see significant misalignment, but we don’t see this, which is evidence against that particular threat model.
Is it relevant to the object-level question of “how hard is aligning a superintelligence”? No, not really. But people are often talking about many things other than that question.
For example, is it relevant to “how much should I defer to doomers”? Yes absolutely (see e.g. #1).
I bucket this under “given this ratio of right/wrong responses, you think a smart alignment researcher who’s paying attention can keep it in a corrigibility basin even as capability levels rise?”. Does that feel inaccurate, or, just, not how you’d exactly put it?
I’m pretty sure it is not that. When people say this it is usually just asking the question: “Will current models try to take over or otherwise subvert our control (including incompetently)?” and noticing that the answer is basically “no”.[1] What they use this to argue for can then vary:
Current models do not provide much evidence one way or another for existential risk from misalignment (in contrast to frequent claims that “the doomers were right”)
Given tremendous uncertainty, our best guess should be that future models are like current models, and so future models will not try to take over, and so existential risk from misalignment is low
Some particular threat model predicted that even at current capabilities we should see significant misalignment, but we don’t see this, which is evidence against that particular threat model.[2]
I agree with (1), disagree with (2) when (2) is applied to superintelligence, and for (3) it depends on details.
In Leo’s case in particular I don’t think he’s using the observation for much, it’s mostly just a throwaway claim that’s part of the flow of the comment, but inasmuch as it is being used it is to say something like “current AIs aren’t trying to subvert our control, so it’s not completely implausible on the face of it that the first automated alignment researcher to which we delegate won’t try to subvert our control”, which is just a pretty weak claim and seems fine, and doesn’t imply any kind of extrapolation to superintelligence. I’d be surprised if this was an important disagreement with the “alignment is hard” crowd.
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There are demos of models doing stuff like this (e.g. blackmail) but only under conditions selected highly adversarially. These look fragile enough that overall I’d still say current models are more aligned than e.g. rationalists (who under adversarially selected conditions have been known to intentionally murder people).
- ^
E.g. One naive threat model says “Orthogonality says that an AI system’s goals are completely independent of its capabilities, so we should expect that current AI systems have random goals, which by fragility of value will then be misaligned”. Setting aside whether anyone ever believed in such a naive threat model, I think we can agree that current models are evidence against such a threat model.
Which, importantly, includes every fruit of our science and technology.
I don’t think this is the right comparison, since modern science / technology is a collective effort and so can only cumulate thinking through mostly-interpretable steps. (This may also be true for AI, but if so then you get interpretability by default, at least interpretability-to-the-AIs, at which point you are very likely better off trying to build AIs that can explain that to humans.)
In contrast, I’d expect individual steps of scientific progress that happen within a single mind often are very uninterpretable (see e.g. “research taste”).
If we understood an external superhuman world-model as well as a human understands their own world-model, I think that’d obviously get us access to tons of novel knowledge.
Sure, I agree with that, but “getting access to tons of novel knowledge” is nowhere close to “can compete with the current paradigm of building AI”, which seems like the appropriate bar given you are trying to “produce a different tool powerful enough to get us out of the current mess”.
Perhaps concretely I’d wildly guess with huge uncertainty that this would involve an alignment tax of ~4 GPTs, in the sense that if you had an interpretable world model from GPT-10 similar in quality to a human’s understanding of their own world model, that would be similarly useful as GPT-6.
a human’s world-model is symbolically interpretable by the human mind containing it.
Say what now? This seems very false:
See almost anything physical (riding a bike, picking things up, touch typing a keyboard, etc). If you have a dominant hand / leg, try doing some standard tasks with the non-dominant hand / leg. Seems like if the human mind could symbolically interpret its own world model this should be much easier to do.
Basically anything to do with vision / senses. Presumably if vision was symbolically interpretable to the mind then there wouldn’t be much of a skill ladder to climb for things like painting.
Symbolic grammar usually has to be explicitly taught to people, even though ~everyone has a world model that clearly includes grammar (in the sense that they can generate grammatical sentences and identify errors in grammar)
Tbc I can believe it’s true in some cases, e.g. I could believe that some humans’ far-mode abstract world models are approximately symbolically interpretable to their mind (though I don’t think mine is). But it seems false in the vast majority of domains (if you are measuring relative to competent, experienced people in those domains, as seems necessary if you are aiming for your system to outperform what humans can do).
What exactly do you propose that a Bayesian should do, upon receiving the observation that a bounded search for examples within a space did not find any such example?
(I agree that it is better if you can instead construct a tight logical argument, but usually that is not an option.)
I also don’t find the examples very compelling:
Security mindset—Afaict the examples here are fictional
Superforecasters—In my experience, superforecasters have all kinds of diverse reasons for low p(doom), some good, many bad. The one you describe doesn’t seem particularly common.
Rethink—Idk the details here, will pass
Fatima Sun Miracle: I’ll just quote Scott Alexander’s own words in the post you link:
I will admit my bias: I hope the visions of Fatima were untrue, and therefore I must also hope the Miracle of the Sun was a fake. But I’ll also admit this: at times when doing this research, I was genuinely scared and confused. If at this point you’re also scared and confused, then I’ve done my job as a writer and successfully presented the key insight of Rationalism: “It ain’t a true crisis of faith unless it could go either way”.
[...]
I don’t think we have devastated the miracle believers. We have, at best, mildly irritated them. If we are lucky, we have posited a very tenuous, skeletal draft of a materialist explanation of Fatima that does not immediately collapse upon the slightest exposure to the data. It will be for the next century’s worth of scholars to flesh it out more fully.
Overall, I’m pleasantly surprised by how bad these examples are. I would have expected much stronger examples, since on priors I expected that many people would in fact follow EFAs off a cliff, rather than treating them as evidence of moderate but not overwhelming strength. To put it another way, I expected that your FA on examples of bad EFAs would find more and/or stronger hits than it actually did, and in my attempt to better approximate Bayesianism I am noticing this observation and updating on it.
It’s instead arguing with the people who are imagining something like “business continues sort of as usual in a decentralized fashion, just faster, things are complicated and messy, but we muddle through somehow, and the result is okay.”
The argument for this position is more like: “we never have a ‘solution’ that gives us justified confidence that the AI will be aligned, but when we build the AIs, the AIs turn out to be aligned anyway”.
You seem to instead be assuming “we don’t get a ‘solution’, and so we build ASI and all instances of ASI are mostly misaligned but a bit nice, and so most people die”. I probably disagree with that position too, but imo it’s not an especially interesting position to debate, as I do agree that building ASI that is mostly misaligned but a bit nice is a bad outcome that we should try hard to prevent.
Yeah, that’s fair for agendas that want to directly study the circumstances that lead to scheming. Though when thinking about those agendas, I do find myself more optimistic because they likely do not have to deal with long time horizons, whereas capabilities work likely will have to engage with that.
Note many alignment agendas don’t need to actually study potential schemers. Amplified oversight can make substantial progress without studying actual schemers (but probably will face the long horizon problem). Interpretability can make lots of foundational progress without schemers, that I would expect to mostly generalize to schemers. Control can make progress with models prompted or trained to be malicious.
On reflection I think you’re right that this post isn’t doing the thing I thought it was doing, and have edited my comment.
(For reference: I don’t actually have strong takes on whether you should have chosen a different title given your beliefs. I agree that your strategy seems like a reasonable one given those beliefs, while also thinking that building a Coalition of the Concerned would have been a reasonable strategy given those beliefs. I mostly dislike the social pressure currently being applied in the direction of “those who disagree should stick to their agreements” (example) without even an acknowledgement of the asymmetricity of the request, let alone a justification for it. But I agree this post isn’t quite doing that.)
Do you agree the feedback loops for capabilities are better right now?
Yes, primarily due to the asymmetry where capabilities can work with existing systems while alignment is mostly stuck waiting for future systems, but that should be much less true by the time of DAI.
Edit: though risk could be lower in the worlds where capabilities R&D goes off the rails due to having more time for safety, depending on whether this also applies to the next actor etc.
I was thinking both of this, and also that it seems quite correlated due to lack of asymmetry. Like, 20% on exactly one going off the rails rather than zero or both seems very high to me; I feel like to get to that I would want to know about some important structural differences between the problems. (Though I definitely phrased my comment poorly for communicating that.)
I’m not really following where the disanalogy is coming from (like, why are the feedback loops better?)
Sure, AI societies could go off the rails that hurts alignment R&D but not AI R&D; they could also go off the rails in a way that hurts AI R&D and not alignment R&D. Not sure why I should expect one rather than the other.
Although on further reflection, even though the current DAI isn’t scheming, alignment work still has to be doing some worst-case type thinking about how future AIs might be scheming, whereas this is not needed for AI R&D. I don’t think this makes a big difference—usually I find worst-case conceptual thinking to be substantially easier than average-case conceptual thinking—but I could imagine that causing issues.
Ok, but it isn’t sufficient to just ensure DAI isn’t scheming, we have to also ensure it is aligned enough to hand off work and has good epistemics and is well elicited on hard to check tasks. This seems pretty hard given the huge rush, but it isn’t obviously fucked IMO, especially given the extra years from acceleration. I have some draft writing on this which should hopefully be out somewhat soon. Maybe my view is 20% chance of failure given good allocation and roughly 60% chance of failure given the default allocation (which includes stuff like the safety team not actually handing off or not seriously working on this etc)?
This seems way too pessimistic to me. At the point of DAI, capabilities work will also require good epistemics and good elicitation on hard to check tasks. The key disanalogy between capabilities and alignment work at the point of DAI is that the DAI might be scheming, but you’re in a subjunctive case where we’ve assumed the DAI is not scheming. Whence the pessimism?
(This complaint is related to Eli’s complaint)
Note I am thinking of a pretty specific subset of comments where Buck is engaging with people who he views as “extremely unreasonable MIRI partisans”. I’m not primarily recommending that Buck move those comments to private channels, usually my recommendation is to not bother commenting on that at all. If there does happen to be some useful kernel to discuss, then I’d recommend he do that elsewhere and then write something public with the actually useful stuff.
I assume you’re referring to “whole swathes of the field are not even aspiring to be the type of thing that could solve misalignment”.
Imo, chain of thought monitoring, AI control, amplified oversight, MONA, reasoning model interpretability, etc, are all things that could make the difference between “x-catastrophe via misalignment” and “no x-catastrophe via misalignment”, so I’d say that lots of our work could “solve misalignment”, though not necessarily in a way where we can know that we’ve solved misalignment in advance.
Based on Richard’s previous writing (e.g. 1, 2) I expect he sees this sort of stuff as not particularly interesting alignment research / doesn’t really help, so I jumped ahead in the conversation to that disagreement.
Sure, I broadly agree with this, and I think Neel would too. I don’t see Neel’s post as disagreeing with it, and I don’t think the list of examples that Richard gave is well described as “let’s find the cheapest 80⁄20 approach”.