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GQA-{\mu}P: The maximal parameterization update for grouped query attention

Machine Learning 2026-05-18 v1 Artificial Intelligence

Abstract

Hyperparameter transfer across model architectures dramatically reduces the amount of compute necessary for tuning large language models (LLMs). The maximal update parameterization ({\mu}P) ensures transfer through principled mathematical analysis but can be challenging to derive for new model architectures. Building on the spectral feature-learning view of Yang et al. (2023a), we make two advances. First, we promote spectral norm conditions on the weights from a heuristic to the definition of feature learning, and as a consequence arrive at the Complete-P depth and weight-decay scalings without recourse to lazy-learning. Second, we consider a modified spectral norm that preserves the valid scaling law of network weights when weight matrices are not full rank. This enables (to our knowledge, the first) derivation of {\mu}P scalings for grouped-query attention (GQA). We demonstrate the efficacy of our theoretical derivations by showing learning rate transfer across the GQA repetition hyperparameter as well as experiments regarding transfer over weight decay.

Keywords

Cite

@article{arxiv.2605.15290,
  title  = {GQA-{\mu}P: The maximal parameterization update for grouped query attention},
  author = {Kyle R. Chickering and Huijuan Wang and Mengxi Wu and Alexander Moreno and Muhao Chen and Xuezhe Ma and Daria Soboleva and Joel Hestness and Zhengzhong Liu and Eric Xing},
  journal= {arXiv preprint arXiv:2605.15290},
  year   = {2026}
}

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18 pages