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Main Authors: Gundlach, Hans, Lynch, Jayson, Thompson, Neil
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.07931
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author Gundlach, Hans
Lynch, Jayson
Thompson, Neil
author_facet Gundlach, Hans
Lynch, Jayson
Thompson, Neil
contents The past decade has seen incredible scaling of AI systems by a few companies, leading to inequality in AI model performance. This paper argues that, contrary to prevailing intuition, the diminishing returns to compute scaling will lead to a convergence of AI model capabilities. In other words, meek models (those with limited computation budget) shall inherit the earth, approaching the performance level of the best models overall. We develop a model illustrating that under a fixed-distribution next-token objective, the marginal capability returns to raw compute shrink substantially. Given current scaling practices, we argue that these diminishing returns are strong enough that even companies that can scale their models exponentially faster than other organizations will eventually have little advantage in capabilities. As part of our argument, we give several reasons that proxies like training loss differences capture important capability measures using evidence from benchmark data and theoretical performance models. In addition, we analyze empirical data on the capability difference of AI models over time. Finally, in light of the increasing ability of meek models, we argue that AI strategy and policy require reexamination, and we outline the areas this shift will affect.
format Preprint
id arxiv_https___arxiv_org_abs_2507_07931
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Meek Models Shall Inherit the Earth
Gundlach, Hans
Lynch, Jayson
Thompson, Neil
Artificial Intelligence
Computers and Society
I.2.0; K.4.1
The past decade has seen incredible scaling of AI systems by a few companies, leading to inequality in AI model performance. This paper argues that, contrary to prevailing intuition, the diminishing returns to compute scaling will lead to a convergence of AI model capabilities. In other words, meek models (those with limited computation budget) shall inherit the earth, approaching the performance level of the best models overall. We develop a model illustrating that under a fixed-distribution next-token objective, the marginal capability returns to raw compute shrink substantially. Given current scaling practices, we argue that these diminishing returns are strong enough that even companies that can scale their models exponentially faster than other organizations will eventually have little advantage in capabilities. As part of our argument, we give several reasons that proxies like training loss differences capture important capability measures using evidence from benchmark data and theoretical performance models. In addition, we analyze empirical data on the capability difference of AI models over time. Finally, in light of the increasing ability of meek models, we argue that AI strategy and policy require reexamination, and we outline the areas this shift will affect.
title Meek Models Shall Inherit the Earth
topic Artificial Intelligence
Computers and Society
I.2.0; K.4.1
url https://arxiv.org/abs/2507.07931