Muon optimizer outperforms AdamW in ViT training on two image datasets, with gains that depend on data augmentation strength and are linked to wider singular-value spread in QKV gradients and prevention of late-training mode collapse in MLP blocks.
Svd-vit: Does svd make vision transformers attend more to the foreground?arXiv preprint arXiv:2602.02765, 2026
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Muon in Vision Transformers: Optimizer-Recipe Interactions and Gradient Spectra
Muon optimizer outperforms AdamW in ViT training on two image datasets, with gains that depend on data augmentation strength and are linked to wider singular-value spread in QKV gradients and prevention of late-training mode collapse in MLP blocks.