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...
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...
Thanks for patiently bearing with me even though I haven’t read the whole Forethought report.
Here’s what I got out of Appendix B.
Define the outcomes:
I firmly believe that value generalisation[1]is the key to AI Alignment. That, indeed, it is necessary and almost sufficient for alignment.
But I won't be arguing that grand point today; instead, I'll focus on a specific RL example of an agent that displays value correction: it realises its current reward function is (probably) incorrect, and acts to correct it.
Thus there are:
Natural language autoencoders are meant to take in an LLM's activation vector and describe in plain text what the model is thinking. However, its training data collection involves asking Claude to guess what a model might be thinking. How robust are NLAs to these guesses? We change Claude's guesses in various ways and measure the impact on the NLA's statements as well as on reconstruction accuracy. We show that Qwen2.5-7B NLAs have some robustness to irrelevant statements and prevailing sentiments in Claude's guesses.
However, if an NLA is initialized with entirely implausible statements, it can nevertheless achieve nearly the same reconstruction accuracy as plausible-initialized NLAs while emitting 99.3% implausible statements. RL does train implausible-initialized NLAs to be slightly more plausible (increasing from 0.08% to 0.7%). But the plausibility...
(Fictional) Optimist: So you expect future artificial superintelligence (ASI) “by default”, i.e. in the absence of yet-to-be-invented techniques, to be a ruthless sociopath, happy to lie, cheat, and steal, whenever doing so is selfishly beneficial, and with callous indifference to whether anyone (including its own programmers and users) lives or dies?
Me: Yup! (Alas.)
Optimist: …Despite all the evidence right in front of our eyes from humans and LLMs.
Me: Yup!
Optimist: OK, well, I’m here to tell you: that is a very specific and strange thing to expect, especially in the absence of any concrete evidence whatsoever. There’s no reason to expect it. If you think that ruthless sociopathy is the “true core nature of intelligence” or whatever, then you should really look at yourself in a mirror and...
The first one (bootstrapping) has the issue that if the serial thinking is not 100% perfect, then it will sometimes get mistakes, and then you’re SFT’ing on the mistakes, making the model more confident in those mistakes, and then the next round of serial thinking will incorporate and build on those mistakes. Repeat a billion times in a sealed box, and I think it would spiral into nonsense—it would get dumber not smarter.
Thanks, this is helpful and not an argument i've come across before!
One quick clarification: I presume you're here talking about systemat...
We are excited to announce that Resolution (fka Sequent) has a $160M grant from Coefficient Giving (cG) to put rigorous alignment research on a (closer to) even footing with the frontier labs. We will use it to accelerate progress towards higher-confidence alignment, or to find evidence and obstacles showing why alignment is hard.
The grant is structured as a $108M base plus $52M conditional on a combination of hiring success and compute needs. The base includes a small regranting budget, which we plan to use both for high-quality non-Resolution alignment research and to give back to shared community infrastructure that we depend on. Coefficient Giving will be our sole funder to start (thank you!); our goal is to raise larger-scale funds from a mixture of sources once we...
I'm excited about people commenting on this post with questions, feedback, critiques, different proposals, etc. We'll try to monitor it and respond to many of the comments.