MT-DAO: Multi-Timescale Distributed Adaptive Optimizers with Local Updates
Abstract
Training large models with distributed data parallelism (DDP) requires frequent communication of gradients across workers, which can saturate bandwidth. Infrequent communication strategies (e.g., Local SGD) reduce this overhead but, when applied to adaptive optimizers, often suffer a performance gap relative to fully synchronous DDP. We trace this gap to a time-scale mismatch: the optimizer's fast-moving momentum, tuned for frequent updates, decays too quickly to smooth gradients over long intervals, leading to noise-dominated optimization. To address this, we propose MT-DAO, a family of optimizers that employs multiple slow- and fast-moving first momenta or the gradient to track update dynamics across different time scales, for which we provide the first convergence guarantees. Empirically, for language-model pre-training, this eliminates the performance gap with DDP, outperforming infrequent-communication baselines in perplexity and reducing iso-token wall-clock time by 6-27% on Ethernet interconnects. At the 720M scale, MT-DAO reaches a target perplexity in 24% fewer steps and 35% less time than the single-momentum DDP baseline. MT-DAO enables effective cross-datacenter training and training over wide geographic areas.
Cite
Text
Iacob et al. "MT-DAO: Multi-Timescale Distributed Adaptive Optimizers with Local Updates." International Conference on Learning Representations, 2026.Markdown
[Iacob et al. "MT-DAO: Multi-Timescale Distributed Adaptive Optimizers with Local Updates." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/iacob2026iclr-mtdao/)BibTeX
@inproceedings{iacob2026iclr-mtdao,
title = {{MT-DAO: Multi-Timescale Distributed Adaptive Optimizers with Local Updates}},
author = {Iacob, Alex and Jovanovic, Andrej and Safaryan, Mher and Kurmanji, Meghdad and Sani, Lorenzo and Horváth, Samuel and Shen, William F. and Qiu, Xinchi and Lane, Nicholas D.},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/iacob2026iclr-mtdao/}
}