AICLETLGJul 8, 2024

On the Limitations of Compute Thresholds as a Governance Strategy

arXiv:2407.05694v231 citationsh-index: 23
Originality Synthesis-oriented
AI Analysis

This analysis is relevant for policymakers and computer scientists, but it is incremental as it critiques existing governance approaches without proposing a fundamentally new solution.

The essay examines compute thresholds as an AI governance tool, concluding they are shortsighted and likely to fail in mitigating risk due to the uncertain and rapidly changing relationship between compute and model capabilities.

At face value, this essay is about understanding a fairly esoteric governance tool called compute thresholds. However, in order to grapple with whether these thresholds will achieve anything, we must first understand how they came to be. To do so, we need to engage with a decades-old debate at the heart of computer science progress, namely, is bigger always better? Does a certain inflection point of compute result in changes to the risk profile of a model? Hence, this essay may be of interest not only to policymakers and the wider public but also to computer scientists interested in understanding the role of compute in unlocking breakthroughs. This discussion is timely given the wide adoption of compute thresholds in both the White House Executive Orders on AI Safety (EO) and the EU AI Act to identify more risky systems. A key conclusion of this essay is that compute thresholds, as currently implemented, are shortsighted and likely to fail to mitigate risk. The relationship between compute and risk is highly uncertain and rapidly changing. Relying upon compute thresholds overestimates our ability to predict what abilities emerge at different scales. This essay ends with recommendations for a better way forward.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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