- https://www.nat-esm.de/services/workshops-and-trainings/events/wcrp-school-on-climate-prediction-across-timescales
- 🎓 WCRP School on Climate Prediction Across Timescales
- 2026-02-23T00:00:00+01:00
- 2026-02-27T23:59:59+01:00
- The School is designed for early-career researchers and advanced students interested in the science and applications of climate prediction.
Feb 23, 2026
to
Feb 27, 2026
(Europe/Berlin / UTC100)
Facultad de Ciencias Exactas y Naturales, Universidad de Buenos Aires, Buenos Aires, Argentina
Forecasts on sub-seasonal to inter-decadal timescales have a diverse range of applications in climate services, including disaster preparedness, and short- mid- and long-term planning. However, the complexity of methods, uncertainty assessment and ways to merge forecasts across timescales presents a significant knowledge and skill gap. The Summer School on Climate Prediction Across Timescales aims to address these gaps, and it is, designed for early-career researchers and advanced students interested in the science and application of climate predictions. The school will offer foundational and advanced lectures in the mornings and interactive, hands-on lab sessions in the afternoons.
Objectives and outcomes
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Foster understanding of key concepts including predictability, forecast skill, sources of predictability, and cross-timescale interactions
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Provide an overview of novel tools to determine the predictability and assess forecast skill.
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Introduce emerging tools in machine learning and AI for forecasting.
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Develop practical skills through interactive lab sessions focused on real data
Participants will:
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Gain new theoretical and technical skills
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Engage in group discussions and applied exercises with real (i.e. not synthetic) data.
Target Audience
The target audience of the school is: Graduate students and postdocs in atmospheric, climate, and data sciences; and junior researchers and professionals working in climate services or operational prediction. Participants are expected to have a basic background in climate science, statistics, or a related field; proficiency in Python is encouraged but not required.
Total n. of participants: 30
Prospective Lecturers
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Constantin Ardilouze, CNRM (Université de Toulouse, Météo-France, CNRS), France
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Leandro Diaz, DCAO-CIMA-IFAECI (UBA-CONICET-CNRS-IRD), Argentina
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Leon Hermanson, MetOffice, UK
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Debbie Hudson, Bureau of Meteorology, Australia
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Kirsten Mayer, NSF NCAR, USA
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William Merryfield, ECCC, Canada
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Andrea Molod, NASA, USA
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Ángel Muñoz, Barcelona Supercomputing Center (BSC), Spain
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Marisol Osman, DCAO-CIMA-IFAECI (UBA-CONICET-CNRS-IRD), Argentina
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Yuhei Takaya, Meteorological Research Institute, Japan
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Bimochan Niraula, ESMO IPO
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Sara Pasqualetto, ESMO IPO