I believe there are people with far greater knowledge than me that can point out where I am wrong. Cause I do believe my reasoning is wrong, but I can not see why it would be highly unfeasible to train a sub-AGI intelligent AI that most likely will be aligned and able to solve AI alignment.
My assumptions are as follows:
- Current AI seems aligned to the best of its ability.
- PhD level researchers would eventually solve AI alignment if given enough time.
- PhD level intelligence is below AGI in intelligence.
- There is no clear reason why current AI using current paradigm technology would become unaligned before reaching PhD level intelligence.
- We could train AI until it reaches PhD level intelligence, and then let it solve AI Alignment, without itself needing to self improve.
The point I am least confident in, is 4, since we have no clear way of knowing at what intelligence level an AI model would become unaligned.
Multiple organisations seem to already think that training AI that solves alignment for us is the best path (e.g. superalignment).
Attached is my mental model of what intelligence different tasks require, and different people have.
Figure 1: My mental model of natural research capability RC (basically IQ with higher correlation for research capabilities), where intelligence needed to align AI is above average PhD level, but below smartest human in the world, and even further from AGI.
It’s always hard to say whether this is an alignment or capabilities problem. It’s also too contrived too offer much signal.
The overall vibe is these LLMs grasp most of our values pretty well. They give common sense answers to most moral questions. You can see them grasp Chinese values pretty well too, so n=2. It’s hard to characterize this as mostly “terrible”.
This shouldn’t be too surprising in retrospect. Our values are simple for LLMs to learn. It’s not going to disassemble cows for atoms to end racism.There are edge cases where it’s too woke, but these got quickly fixed. I don’t expect them to ever pop up again.