AI RESEARCH
Towards Scaling Law Analysis For Spatiotemporal Weather Data
arXiv CS.LG
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ArXi:2604.05068v1 Announce Type: new Compute-optimal scaling laws are relatively well studied for NLP and CV, where objectives are typically single-step and targets are comparatively homogeneous. Weather forecasting is harder to characterize in the same framework: autoregressive rollouts compound errors over long horizons, outputs couple many physical channels with disparate scales and predictability, and globally pooled test metrics can disagree sharply with per-channel, late-lead behavior implied by short-horizon.