@maxxxzdn: Today we release Mosaic, a probabilistic weather model that shifts the Pareto frontier of ML weather forecasting. It ma…
Summary
Mosaic is a probabilistic weather model that matches state-of-the-art skill while generating a 24-member, 10-day global forecast in under 12 seconds on a single H100.
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Cached at: 05/22/26, 03:41 AM
🌍Today we release Mosaic, a probabilistic weather model that shifts the Pareto frontier of ML weather forecasting.
It matches the skill of state-of-the-art models while generating a 24-member, 10-day global forecast in under 12 s on a single H100.
Thread! https://t.co/t8MsTPYju7
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