LGCLOct 16, 2023

AdaLomo: Low-memory Optimization with Adaptive Learning Rate

arXiv:2310.10195v339 citationsh-index: 66Has Code
Originality Incremental advance
AI Analysis

This reduces the hardware barrier for training large language models, making it more accessible, though it is incremental as it builds on existing low-memory optimization techniques.

The paper tackles the high memory requirements for training large language models by introducing AdaLomo, a low-memory optimizer with adaptive learning rates, which achieves performance comparable to AdamW while significantly reducing memory usage.

Large language models have achieved remarkable success, but their extensive parameter size necessitates substantial memory for training, thereby setting a high threshold. While the recently proposed low-memory optimization (LOMO) reduces memory footprint, its optimization technique, akin to stochastic gradient descent, is sensitive to hyper-parameters and exhibits suboptimal convergence, failing to match the performance of the prevailing optimizer for large language models, AdamW. Through empirical analysis of the Adam optimizer, we found that, compared to momentum, the adaptive learning rate is more critical for bridging the gap. Building on this insight, we introduce the low-memory optimization with adaptive learning rate (AdaLomo), which offers an adaptive learning rate for each parameter. To maintain memory efficiency, we employ non-negative matrix factorization for the second-order moment estimation in the optimizer state. Additionally, we suggest the use of a grouped update normalization to stabilize convergence. Our experiments with instruction-tuning and further pre-training demonstrate that AdaLomo achieves results on par with AdamW, while significantly reducing memory requirements, thereby lowering the hardware barrier to training large language models. The code is accessible at https://github.com/OpenLMLab/LOMO.

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