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Analyzing & Reducing the Need for Learning Rate Warmup in GPT Training

Machine Learning 2024-11-01 v1

Abstract

Learning Rate Warmup is a popular heuristic for training neural networks, especially at larger batch sizes, despite limited understanding of its benefits. Warmup decreases the update size Δwt=ηtut\Delta \mathbf{w}_t = \eta_t \mathbf{u}_t early in training by using lower values for the learning rate ηt\eta_t. In this work we argue that warmup benefits training by keeping the overall size of Δwt\Delta \mathbf{w}_t limited, counteracting large initial values of ut\mathbf{u}_t. Focusing on small-scale GPT training with AdamW/Lion, we explore the following question: Why and by which criteria are early updates ut\mathbf{u}_t too large? We analyze different metrics for the update size including the 2\ell_2-norm, resulting directional change, and impact on the representations of the network, providing a new perspective on warmup. In particular, we find that warmup helps counteract large angular updates as well as a limited critical batch size early in training. Finally, we show that the need for warmup can be significantly reduced or eliminated by modifying the optimizer to explicitly normalize ut\mathbf{u}_t based on the aforementioned metrics.

Cite

@article{arxiv.2410.23922,
  title  = {Analyzing & Reducing the Need for Learning Rate Warmup in GPT Training},
  author = {Atli Kosson and Bettina Messmer and Martin Jaggi},
  journal= {arXiv preprint arXiv:2410.23922},
  year   = {2024}
}

Comments

Accepted to NeurIPS 2024

R2 v1 2026-06-28T19:42:53.073Z