English

Efficient Distributed Optimization under Heavy-Tailed Noise

Machine Learning 2025-08-15 v2

Abstract

Distributed optimization has become the default training paradigm in modern machine learning due to the growing scale of models and datasets. To mitigate communication overhead, local updates are often applied before global aggregation, resulting in a nested optimization approach with inner and outer steps. However, heavy-tailed stochastic gradient noise remains a significant challenge, particularly in attention-based models, hindering effective training. In this work, we propose TailOPT, an efficient framework designed to address heavy-tailed noise by leveraging adaptive optimization or clipping techniques. We establish convergence guarantees for the TailOPT framework under heavy-tailed noise with potentially unbounded gradient variance and local updates. Among its variants, we highlight a memory and communication efficient instantiation which we call Bi2ClipBi^2Clip, which performs coordinate-wise clipping at both the inner and outer optimizers, achieving adaptive-like performance (e.g., Adam) without the cost of maintaining or transmitting additional gradient statistics. Empirically, TailOPT, including Bi2ClipBi^2Clip, demonstrates superior performance on several language tasks and models, outperforming state-of-the-art methods.

Keywords

Cite

@article{arxiv.2502.04164,
  title  = {Efficient Distributed Optimization under Heavy-Tailed Noise},
  author = {Su Hyeong Lee and Manzil Zaheer and Tian Li},
  journal= {arXiv preprint arXiv:2502.04164},
  year   = {2025}
}

Comments

Accepted to ICML 2025

R2 v1 2026-06-28T21:34:56.506Z