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  "headline": "AI for Climate Science: Weather Prediction and Earth System Modeling",
  "description": "AI is revolutionizing climate science: deep learning weather models now match or exceed physics-based forecasting while running 100-1000x faster. From 10-day global forecasts to high-resolution downscaling, AI tools are accelerating climate adaptation and mitigation.",
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      "name": "Accurate medium-range global weather forecasting with 3D neural networks (Pangu-Weather)",
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