AI RESEARCH
AMUSE: Anytime Muon with Stable Gradient Evaluation
arXiv CS.LG
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ArXi:2605.22432v1 Announce Type: new Modern deep learning commonly relies on AdamW with prescribed learning rate schedules, but recent works challenge both components: Schedule-Free optimization removes explicit schedules via iterate averaging, and Muon improves the update geometry by orthogonalizing momentum for matrix parameters. Despite Muon's strong empirical performance, its underlying mechanism remains partially understood. We study Muon through the river-valley loss landscape, where useful.