LGMay 29, 2025

Critical Batch Size Revisited: A Simple Empirical Approach to Large-Batch Language Model Training

AI2
arXiv:2505.23971v312 citationsh-index: 28
Originality Incremental advance
AI Analysis

This work addresses a practical bottleneck in efficiently training large language models, offering an incremental improvement over existing methods.

The paper tackles the problem of determining the optimal batch size for large-scale language model training by introducing an empirical method to directly measure the critical batch size (CBS) and showing that it evolves over training, starting near zero and plateauing. Applying this to OLMo models, they demonstrate that batch size warmup based on CBS trends reduces gradient steps by 43% while achieving slightly better loss.

The right batch size is important when training language models at scale: a large batch size is necessary for fast training, but a batch size that is too large will harm token efficiency. To navigate this tradeoff, McCandlish et al. (2018) suggest that a critical batch size (CBS), below which training will not substantially degrade loss, can be estimated based on the gradient noise scale during training. While their method has been adopted in practice, e.g., when training GPT-3, strong assumptions are required to justify gradient noise as a proxy for the CBS, which makes it unclear whether their approach should be trusted in practice, limiting its applicability. In this paper, we introduce a simple, empirical approach to directly measure the CBS and show how the CBS evolves over training. Applying our approach to the OLMo models, we find that CBS is near 0 at initialization, increases rapidly at first, and then plateaus as training progresses. Furthermore, we find that this trend holds across different model sizes (1B and 7B), suggesting CBS from small training runs can inform larger-scale training runs. Our findings about how the CBS changes over training motivate batch size warmup as a natural way to reliably train language models at large batch size: start the batch size small and increase it as the CBS grows. To validate this claim, we use batch size warmup to train OLMo 1B to slightly better loss than the original training run with 43% fewer gradient steps. This shows how our framework can be applied to reliably train language models at larger batch sizes, increasing data parallelism without compromising performance.

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