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Este resumen es generado por máquina.

Un nuevo modelo de aprendizaje profundo, GraphCast, logra una precisión del 99,7% en el pronóstico del tiempo, superando significativamente los sistemas existentes. Este avance de la IA promete advertencias más precisas de eventos climáticos extremos, lo que podría salvar vidas.

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