English

Sign-SGD via Parameter-Free Optimization

Machine Learning 2026-02-23 v4 Optimization and Control

Abstract

Large language models have achieved major advances across domains, yet training them remains extremely resource-intensive. We revisit Sign-SGD, which serves both as a memory-efficient optimizer for single-node training and as a gradient compression mechanism for distributed learning. This paper addresses a central limitation: the effective stepsize cannot be determined a priori because it relies on unknown, problem-specific quantities. We present a parameter-free Sign-SGD that removes manual stepsize selection. We analyze the deterministic single-node case, and extend the method to stochastic single-node training and multi-node settings. We also incorporate the momentum technique into our algorithms and propose a memory-efficient variant that stores only gradient signs instead of full gradients. We evaluate our methods on pre-training LLaMA models (130M and 350M) and fine-tuning a Swin Transformer (28M). Across considered tasks, the proposed methods match the performance of tuned Sign-SGD and AdamW (grid-searched stepsizes with a cosine schedule), while avoiding tuning overhead. Employing parameter-free training yields approximately 1.5×1.5\times end-to-end speedup compared to runs with grid-searched stepsizes.

Keywords

Cite

@article{arxiv.2506.03725,
  title  = {Sign-SGD via Parameter-Free Optimization},
  author = {Daniil Medyakov and Sergey Stanko and Gleb Molodtsov and Philip Zmushko and Grigoriy Evseev and Egor Petrov and Aleksandr Beznosikov},
  journal= {arXiv preprint arXiv:2506.03725},
  year   = {2026}
}

Comments

60 pages, 7 figures, 11 tables

R2 v1 2026-07-01T02:58:36.243Z