AI RESEARCH
When Does Adaptation Win? Scaling Laws for Meta-Learning in Quantum Control
arXiv CS.LG
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ArXi:2601.18973v4 Announce Type: replace Quantum hardware suffers from intrinsic device heterogeneity and environmental drift, forcing practitioners to choose between suboptimal non-adaptive controllers or costly per-device recalibration. We derive a scaling law lower bound for meta-learning showing that the adaptation gain (expected fidelity improvement from task-specific gradient steps) saturates exponentially with gradient steps and scales linearly with task variance, providing a quantitative criterion for when adaptation justifies its overhead.