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| - | =====Posters===== | ||
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| - | * **Naming convention: title of the event (city, country, dates of the event (days month year)), title of the poster, first author (name of the project/s acknowledged). ** ** file **\\ | ||
| - | * **Please keep the ascending chronological order** | ||
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| - CMIP Community Workshop 2026 (Online, March 9th-13th, 2026), Quantifying the Scientific Skill of High-Resolution Models with pyhanami, M. Alerany Solé et al. (HANAMI) {{ : | - CMIP Community Workshop 2026 (Online, March 9th-13th, 2026), Quantifying the Scientific Skill of High-Resolution Models with pyhanami, M. Alerany Solé et al. (HANAMI) {{ : | ||
| - EXPECT General Assembly (Lisbon, Portugal, 14-16 April 2026), Large potential of performance-based model weighting to improve decadal climate forecast skill, V. Verjans et al. (EXPECT, 101137656). {{library: | - EXPECT General Assembly (Lisbon, Portugal, 14-16 April 2026), Large potential of performance-based model weighting to improve decadal climate forecast skill, V. Verjans et al. (EXPECT, 101137656). {{library: | ||
| + | - EGU2026 General Assembly (Vienna, Austria, 3-8 May 2026), Improving NO₂ Episode Detection with TROPOMI: A Decomposition Approach Across Diverse Orography , Cristina Campos (UrbainAir).{{ : | ||
| + | - EGU2026 General Assembly (Vienna, Austria, 3-8 May 2026), Uncertainty-aware downscaling of NO2 surface levels in urban environments, | ||
| ==== 2025 ==== | ==== 2025 ==== | ||
| - Barcelona Deep Learning Symposium 2025 (Barcelona, Spain, Dec 17th, 2025), Historical Reconstruction and Future Projection of Land Surface Boundary Conditions. A. Mozaffari et al. {{ : | - Barcelona Deep Learning Symposium 2025 (Barcelona, Spain, Dec 17th, 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), 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. {{: | ||
| - | - Congreso de Comunicación Social de la Ciencia 2025 (Palma de Mallorca, Spain, 27-30 November 2025), How to communicate climate change? An all-in-one solution with a practical case on climate services, Clàudia Huertas et al. (CLIMA-GAP, Climateurope2), | + | - Congreso de Comunicación Social de la Ciencia 2025 (Palma de Mallorca, Spain, 27-30 November 2025), How to communicate climate change? An all-in-one solution with a practical case on climate services, Clàudia Huertas et al. (CLIMA-GAP, Climateurope2), |
| - 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), Large potential of performance-based model weighting to improve decadal climate forecast skill. V. Verjans et al. (EXPECT) {{ : | - UPCLIV Workshop (Bologna, Italy, 18-20 November 2025), Large potential of performance-based model weighting to improve decadal climate forecast skill. V. Verjans et al. (EXPECT) {{ : | ||