this work was done by Tamsin Leake and Julia Persson at Orthogonal.
thanks to mesaoptimizer for his help putting together this post.
what does the QACI plan for formal-goal alignment actually look like when formalized as math? in this post, we'll be presenting our current formalization, which we believe has most critical details filled in.
in this first part, we'll be defining a collection of mathematical constructs which we'll be using in the rest of the post.
we'll be assuming basic set theory notation; in particular, is the set of tuples whose elements are respectively members of the sets , , and , and for , is the set of tuples of elements, all members of .
is the set of booleans and...
This post is heavy on math but light on explaining what it's even trying to do. For example, why does this incorporate cryptographic signing? A very unorthodox choice, that I cannot see any purpose for.
What does QACI even stand for? It's not in this post or the summary of Orthogonal. Is this esoteric on purpose?
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...
Thanks for sharing, very interesting.
One thing that jumps out at me is that Total Research Transparency is to some extent the opposite of cybersecurity hardening to prevent hacking. The fact that there are plausible arguments for both suggests to me that we have a lot of uncertainty about what policies we should be pursuing. And this in turn would seem to suggest that we should favour corrigible plans that can be amended later, which seems like an argument against Total Research Transparency: once we have enacted it, we can no longer put that particular genie back in the bottle.
As discussed in Intro to Brain-Like-AGI Safety, I’m working on the technical alignment problem for a hypothetical future “brain-like AGI”, with a particular focus on treating human innate social and moral drives as a possible jumping-off point for our technical alignment approach.
After all, if it’s possible for humans to do stuff that ultimately leads to a good future, then it’s probably also possible for sufficiently human-like AGIs to do stuff that ultimately leads to a good future. Or if it’s not possible for humans to do stuff that ultimately leads to a good future, then we’re screwed no matter what. But assuming it’s possible, the “sufficiently human-like AGIs” would certainly need to have good prosocial motivations. What code do we write that would...
- If we don’t lock in certain current values (e.g. torture is bad), then we can’t reason about what the AGI will want to do in the future, given radical changes in technology and understanding.
- If we do lock in certain current values (e.g. torture is bad), then we’re not only forestalling the possibility of future moral growth and development, but also building something that’s fragile and brittle in the face of radical changes in technology and understanding.
I've been thinking about something related, and my current favored solution is building AI that has a...
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 think that a large part of this is an ugh-field and learned helplessness around politics. But this can be taught. I see more and more people with technical backgrounds shifting to advocacy organizations, and they often do very well and can be highly productive if they are on the right team, especially when paired with people with experience in institutional engagement who may have less technical knowledge of AI safety.
I started lookin at what it doesn't react to, too.
It reacted to "evolution", "mating", "evolved", "genetics", "condoms", "erect penis" but not to "sex" or "sexuality".
It reacts to "intermittent fasting", "body fat", "eating" but not consistently or strongly to "food".