Scaling Data-Constrained Language Models




Muennighoff, Niklas; Rush, Alexander M.; Barak, Boaz; Le Scao, Teven; Piktus, Aleksandra; Tazi, Nouamane; Pyysalo, Sampo; Wolf, Thomas; Raffel, Colin

PublisherMICROTOME PUBL

BROOKLINE

2025

Journal of Machine Learning Research

JOURNAL OF MACHINE LEARNING RESEARCH

J MACH LEARN RES

53

26

66

1532-4435

1533-7928

https://www.jmlr.org/papers/v26/24-1000.html

https://research.utu.fi/converis/portal/detail/Publication/492253404



The current trend of scaling language models involves increasing both parameter count and training data set size. Extrapolating this trend suggests that training data set size may soon be limited by the amount of text data available on the internet. Motivated by this limit, we investigate scaling language models in data-constrained regimes. Specifically, we run a large set of experiments varying the extent of data repetition and compute budget, ranging up to 900 billion training tokens and 9 billion parameter models. We find that with constrained data for a fixed compute budget, training with up to 4 epochs of repeated data yields negligible changes to loss compared to having unique data. However, with more repetition, the value of adding compute eventually decays to zero. We propose and empirically validate a scaling law for compute optimality that accounts for the decreasing value of repeated tokens and excess parameters. Finally, we experiment with approach esmitigating data scarcity, including augmenting the training data set with code data or removing commonly used filters. Models and data sets from our 400 training runs are freely available athttps://github.com/huggingface/datablations.

Last updated on 2025-05-06 at 12:33