Omni-Masked Gradient Descent: Memory-Efficient Optimization via Mask Traversal with Improved Convergence
Abstract
Memory-efficient optimization methods have recently gained increasing attention for scaling full-parameter training of large language models under the GPU-memory bottleneck. Existing approaches either lack clear convergence guarantees, or only achieve the standard iteration complexity in the nonconvex settings. We propose Omni-Masked Gradient Descent (OMGD), an optimization method based on mask traversal for memory efficient training, and provide a nonconvex convergence analysis that establishes a strictly improved iteration complexity of for finding an -approximate stationary point. Empirically, OMGD is a lightweight, plug-and-play approach that integrates seamlessly into most mainstream optimizers, yielding consistent improvements over competitive baselines in both fine-tuning and pre-training tasks.
Cite
@article{arxiv.2603.05960,
title = {Omni-Masked Gradient Descent: Memory-Efficient Optimization via Mask Traversal with Improved Convergence},
author = {Hui Yang and Tao Ren and Jinyang Jiang and Wan Tian and Yijie Peng},
journal= {arXiv preprint arXiv:2603.05960},
year = {2026}
}