My post on leaving Google DeepMind tells a story. In contrast, this Framework is a question of mechanism design and negotiation posture. I quite enjoyed optimizing this Framework against its organizational and practical constraints. The original considerations were:
...Good red lines: Rule out the questionable use cases (autonomous targeting without human control, untargeted profiling) while allowing trustworthy ones like missile defense. Avoid the weaknesses flagged in legal analysis of Anthropic’s red lines.
Robust red lines: [Google] Cloud would push deals through any loophole, Google Legal seemed unlikely to tighten my drafting, and the Pentagon wouldn’t want terms at all. The language had to hold under pressure, with auditing that respected classification and operational security.
Minimal trust assumptions: I made the Chief Scientist the single root of trust that everything else
Starting when children are fairly young, usually around 1 year of age, we adults begin the work of aligning them to our values. We teach them to say “please”, not to hit, to ask for what they want instead of screaming, and much else. We do this primarily via exogenous methods, using a combination of punishments and rewards, that molds their behavior by encouraging good behaviors and discouraging bad ones.
Such operant conditioning works because children have many instinctive behaviors that make them alignable. They want their parents to love them, for their friends to like them, and for almost anyone to help them if they feel they can be trusted. And so combined with exogenous alignment efforts by teachers and peers that continue through the school years,...
For the past year, we at the AI Futures Project have been sinking most of our time into our next big scenario. Now it’s done!
It’s called AI 2040: Plan A.
It’s called Plan A because it’s a recommendation, not a prediction. It’s what we think should happen, not what will happen, though we think it’s plausible enough to aim for.
It’s called AI 2040 because in it, they delay the creation of superintelligence to 2040. It would have happened much sooner (in 2030, to be precise) if not for decisive action on the part of the US and Chinese governments.
As with AI 2027, summaries don’t really do it justice, since the whole point was to be detailed and comprehensive and work things out step by step rather than rely on high-level abstractions like doom or utopia.
Read the scenario at ai-2040.com. You can...
I like that the space governance plan supplement acknowledges that defining torture and slavery are hard problems that ASI could potentially help with:
It might take non-trivial reflection by advanced ASI to figure out the precise bounds of this.
And in the sidenote it gives examples of difficult subproblems or dependencies that would need solved in order to do this, like "What exactly are negatively-valenced experiences?" But I have a couple of problems with the rest of the scenario given this:
A bunch of conceptual reasoning tasks involve very subjective judgments, which makes them poorly suited for benchmarking AI capabilities. For example, it seems unreasonable to benchmark how well AIs can predict the probability of misaligned AI takeover. Perhaps instead we should measure capabilities by explicitly instructing the AI to predict a specified person’s judgment on this kind of question.
(This quick document is aimed at people interested in benchmarking beneficial, urgent, and neglected conceptual reasoning capabilities. I don’t argue for this direction here, but in short it’s broadly aimed at making it so that at a given level of AI R&D speedup, AIs are less sloppy. See also here, here, here, and here.)
For conceptual tasks with hard-to-resolve disagreement, it's unclear if judgment prediction is a suitable methodology for...
I heard that Mythos preview was about as good at answering MCQs about Ryan Greenblatt’s views than Ryan was. The MCQs were generated based on some of Ryan’s unpublished writing.
FYI, I think this was downstream of the questions being messed up and confusing such that this benchmark didn't have that much signal.
Preface for LessWrong: When I think back on my most cherished memories of this community, I return to those honoring defiance in pursuit of goodness:
I cannot return to you and say “I defied and then I won.” But I’m at least here to say “I defied.”
I recommend reading this article on my website since the embeds and typography work better there: click here.
In January, Department of Homeland Security (DHS) officers...
Do you know what your plans are now?
Motivation: If we want to move from Plan D to Plan A or S, I believe the first step is to collectively agree on the problem. We are far from it, and there is a lot we can do.
Abstract:
I like this quote from Buck Shlegeris: "Five years ago I thought of misalignment risk from AIs as a really hard problem that you'd need some really galaxy-brained fundamental insights to resolve. Whereas now, to me the situation feels a lot more like we just really know a list of 40 things where, if you did them — none of which seem that hard — you'd probably be able to not have very much of your problem. But I've just also updated drastically downward on how many things AI companies have the time/appetite to do."
I vaguely recall @Buck having clarified thi...
Finally got a chance to read @Steven Byrnes recent post https://www.lesswrong.com/posts/rKdS7i4StaMmFzYRo/notes-on-technical-alignment-via-human-like-social-drives after I posted this, and I'd endorse it as the kind of research towards endogenous alignment I think we need more of.