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| - NeurIPS 2025 (San Diego, US, Dec 2nd - 7th, 2025), Historical Reconstruction and Future Projection of Land Surface Boundary Conditions. A. Mozaffari et al. {{ : | - NeurIPS 2025 (San Diego, US, Dec 2nd - 7th, 2025), Historical Reconstruction and Future Projection of Land Surface Boundary Conditions. A. Mozaffari et al. {{ : | ||
| - NeurIPS 2025 (San Diego, US, Dec 2nd - 7th, 2025), A modular framework to run AI-based models from high-resolution climate projections. A. Gaya-Àvila et al. {{: | - NeurIPS 2025 (San Diego, US, Dec 2nd - 7th, 2025), A modular framework to run AI-based models from high-resolution climate projections. A. Gaya-Àvila et al. {{: | ||
| - | - E-vigilancia (Rio de Janeiro, Brasil, 25-27 November 2025), Harmonizing climate, environment and health data: an introduction to the HARMONIZE 4health toolkit D. Lührsen et al. {{ : | + | - E-vigilancia (Rio de Janeiro, Brasil, 25-27 November 2025), Harmonizing climate, environment and health data: an introduction to the HARMONIZE 4health toolkit. D. Lührsen et al. {{ : |
| - UPCLIV Workshop (Bologna, Italy, 18-20 November 2025), Quantifying atmospheric and land drivers of hot temperature extremes using explainable artificial intelligence. A. Garcia-Mesa et al. {{ : | - UPCLIV Workshop (Bologna, Italy, 18-20 November 2025), Quantifying atmospheric and land drivers of hot temperature extremes using explainable artificial intelligence. A. Garcia-Mesa et al. {{ : | ||
| - ECR IGAC 2025 (Virtual conference, 2025), Estimation of NOx emissions from point sources in Spain using TROPOMI observations and lightweight inversion methods. A. Yarce et al.{{library: | - ECR IGAC 2025 (Virtual conference, 2025), Estimation of NOx emissions from point sources in Spain using TROPOMI observations and lightweight inversion methods. A. Yarce et al.{{library: | ||