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Main Authors: Zhang, Qizhen, Garg, Ankush, Foerster, Jakob, Chatterji, Niladri, Malik, Kshitiz, Lewis, Mike
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.02400
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author Zhang, Qizhen
Garg, Ankush
Foerster, Jakob
Chatterji, Niladri
Malik, Kshitiz
Lewis, Mike
author_facet Zhang, Qizhen
Garg, Ankush
Foerster, Jakob
Chatterji, Niladri
Malik, Kshitiz
Lewis, Mike
contents Large-scale pretraining datasets drive the success of large language models (LLMs). However, these web-scale corpora inevitably contain large amounts of noisy data due to unregulated web content or randomness inherent in data. Although LLM pretrainers often speculate that such noise contributes to instabilities in large-scale LLM pretraining and, in the worst cases, loss divergence, this phenomenon remains poorly understood.In this work, we present a systematic empirical study of whether noisy data causes LLM pretraining divergences and how it does so. By injecting controlled synthetic uniformly random noise into otherwise clean datasets, we analyze training dynamics across model sizes ranging from 480M to 5.2B parameters. We show that noisy data indeed induces training loss divergence, and that the probability of divergence depends strongly on the noise type, amount of noise, and model scale. We further find that noise-induced divergences exhibit activation patterns distinct from those caused by high learning rates, and we provide diagnostics that differentiate these two failure modes. Together, these results provide a large-scale, controlled characterization of how noisy data affects loss divergence in LLM pretraining.
format Preprint
id arxiv_https___arxiv_org_abs_2602_02400
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle An Empirical Study on Noisy Data and LLM Pretraining Loss Divergence
Zhang, Qizhen
Garg, Ankush
Foerster, Jakob
Chatterji, Niladri
Malik, Kshitiz
Lewis, Mike
Machine Learning
Large-scale pretraining datasets drive the success of large language models (LLMs). However, these web-scale corpora inevitably contain large amounts of noisy data due to unregulated web content or randomness inherent in data. Although LLM pretrainers often speculate that such noise contributes to instabilities in large-scale LLM pretraining and, in the worst cases, loss divergence, this phenomenon remains poorly understood.In this work, we present a systematic empirical study of whether noisy data causes LLM pretraining divergences and how it does so. By injecting controlled synthetic uniformly random noise into otherwise clean datasets, we analyze training dynamics across model sizes ranging from 480M to 5.2B parameters. We show that noisy data indeed induces training loss divergence, and that the probability of divergence depends strongly on the noise type, amount of noise, and model scale. We further find that noise-induced divergences exhibit activation patterns distinct from those caused by high learning rates, and we provide diagnostics that differentiate these two failure modes. Together, these results provide a large-scale, controlled characterization of how noisy data affects loss divergence in LLM pretraining.
title An Empirical Study on Noisy Data and LLM Pretraining Loss Divergence
topic Machine Learning
url https://arxiv.org/abs/2602.02400