The DeepMind paper that introduced Chinchilla revealed that we've been using way too many parameters and not enough data for large language models. There's immense returns to scaling up training data size, but we may be running out of high-quality data to train on. This could be a major bottleneck for future AI progress.
Summary: AGI isn't super likely to come super soon. People should be working on stuff that saves humanity in worlds where AGI comes in 20 or 50 years, in addition to stuff that saves humanity in worlds where AGI comes in the next 10 years.
Thanks to Alexander Gietelink Oldenziel, Abram Demski, Daniel Kokotajlo, Cleo Nardo, Alex Zhu, and Sam Eisenstat for related conversations.
By "AGI" I mean the thing that has very large effects on the world (e.g., it kills everyone) via the same sort of route that humanity has large effects on the world. The route is where you figure out how to figure stuff out, and you figure a lot of stuff out using your figure-outers, and then the stuff you...
ARC has teamed up with AIcrowd to launch the ARC White-Box Estimation Challenge, a contest to improve upon our estimation algorithms for random MLPs. The warm-up round begins this week, and later rounds will have a total prize pool of at least $100,000.
We are very grateful to Sharada Mohanty, Sneha Nanavati, Dipam Chakraborty and everyone else at AIcrowd for working with us to host this contest, as well as to Paul Rosu for testing the contest and to Harshita Khera for operational support.
Our challenge follows the same setup as our recent paper on wide random MLPs: we consider MLPs
where the activation function
To begin with, we are fixing the width
It looks to me that the pre-grading "smoke-test" has a flop cap that is well below 6.8e10, it's perhaps at 1e10? So for me submissions at 0.1x the cap are getting through but larger flop counts are failing.
(Update: it's now fixed, thanks!)
Alignment is often conceptualized as AIs helping humans achieve their goals: AIs that increase people’s agency and empowerment; AIs that are helpful, corrigible, and/or obedient; AIs that avoid manipulating people. But that last one—manipulation—points to a challenge for all these desiderata: a human’s goals are themselves under-determined and manipulable, and it’s awfully hard to pin down a principled distinction between changing people’s goals in a good way (“providing counsel”, “providing information”, “sharing ideas”) versus a bad way (“manipulating”, “brainwashing”).
The manipulability of human desires is hardly a new observation in the alignment literature, but it remains unsolved (see lit review in §3 below).
In this post I will propose an explanation of how we humans intuitively conceptualize the distinction between guidance (good) vs manipulation (bad), in case it...
...Yet another example is @abramdemski’s “Vingean agency” (2022) (following earlier work by Yudkowsky). He starts from a place very close to the human intuitions in §2 above, i.e. “agency” is when you can predict the outcome but not the actions leading to those outcomes. Then he hints at an intriguing idea that maybe we can just make that formal! I.e., maybe I was too quick to dismiss that kind of thing above using terms like “messed-up ontology”. (As Abram writes: “I also think it's possible that Vingean agency can be extended to be ‘the’ definition of agenc
As AI models become increasingly capable and autonomous, keeping them safely aligned with human intentions is critical. Extending our previous work on evaluating scheming capabilities, we introduce complementary approaches to test whether AI models would sabotage their own safeguards, if given the opportunity.
Our new papers focus on propensity for scheming: when models are deployed as coding agents, will they take opportunities to undermine the safeguards designed to oversee them? We tackle this using two complementary testing methods: automated auditing using simulated agentic environments, and scheming honeypot evaluations based on real internal alignment research codebases.
Figure 1. Overview of the Gram auditing pipeline and an example of Gemini’s overeagerness.
Our first paper introduces Gram (Gauging Realistic Agentic Misbehavior), an automated auditing framework that uses simulated agentic environments to evaluate sabotage risk.
Gram builds...
We did not try measuring prompted eval awareness (distinguishing between eval / deployment transcripts). I expect that the unprompted eval awareness rate is higher in the AISI paper because a) their evaluation settings use external codebases modified to approximate internal Anthropic codebases (while we use internal Google codebases directly), and b) Claude models are more eval aware than Gemini models.
I think this is a solid partial example of what I call confrontation-worthy empathy: https://www.youtube.com/watch?v=QYVOxn-Ndxw