13 November 2024
ONLINE
Europe/Vienna timezone

Date:  13 November 2024, 10:00 - 12:00 CET  Price:  Free (for eligible participants)  
Location:  Online (Zoom)  Target audience:  Industry, academia, public sector
Language: English Organisers:  EuroCC Austria & VSC

Overview

For a long time, supercomputing was the undisputed captain of weather forecasting, expertly navigating through complex simulations of all kinds. But recently, a new first officer has taken the helm: Machine Learning (ML) is currently revolutionising weather and climate predictions by delivering more accurate results in less time.

In this webinar, you will get unique insights into how AI is revolutionising weather and climate forecasts. Join us to learn about:

  • the latest advancements and potential of Machine Learning for weather and climate
  • how the Austrian supercomputer Vienna Scientific Cluster helps to accurately predict maritime wave height for better ship routing systems, and 
  • the data-driven forecasting system AIFS from the European Centre for Medium-Range Weather Forecasts (ECMWF).

Agenda 

10:00   Welcome       
Eva Gergely   
        
Project manager and team lead at Vienna University Computer Center, dept. IT-Support for research
   
10:10 The Rise of Machine Learning in Weather Prediction       
Irene Schicker     
      
Irene Schicker studied meteorology in Vienna and Innsbruck and wrote her PhD in high resolution numerical weather prediction. In the past decade, she focused on machine learning methods for weather forecasting and renewable energy applications as well as detection of adverse weather events. She works at the Austrian Met service GeoSphere Austria, leading national projects and participates in international collaborations.   

Machine learning (ML) is revolutionizing weather prediction, enhancing the accuracy and efficiency of traditional forecasting models as well as being weather model emulators. Vast improvements have been made in the past few years, recently even enabling the general public in running a low resolution forecasting model at a whim. This presentation explores key advancements in ML weather prediction and emulators, highlighting the potential to transform climate science, (renewable) energy management, and disaster preparedness.
   
10:35 

Oceanographic predictions: How HPC can help train reliable AI models    
Paraskevi Vourlioti       

Dr. Paraskevi Vourlioti is the Chief Technical Officer at Neuralio A.I., responsible for leading projects in climate-driven land evaluation and renewable energy solutions. She holds a PhD in Meteorology from the University of Cologne, specializing in data assimilation and short-term weather forecasts for energy applications. With a strong background in AI, HPC, and operational weather forecasting, she has contributed to various EU projects, ESA tenders and authored numerous publications in meteorology and renewable energy. For this project, she carried out research in collaboration with AlongRoute Data I.K.E., which specialises in oceanography and marine weather forecasting.

HPC is transforming oceanographic forecasting by enabling the development of reliable AI models. This talk highlights how the Vienna Scientific Cluster (VSC5) helped us train advanced GNN-GRU models to predict Significant Wave Height (SWH) with highly accurate six-hour forecasts. Discover how HPC is accelerating ocean predictions and improving maritime decision-making. The work was carried out following a strategic partnership between two deep-tech startups, namely AlongRoute Data I.K.E. and Neuralio A.I..

   
11:00 

AIFS: a data-driven probabilistic weather forecasting system   
Mariana Clare   
      
Mariana Clare is a researcher at the European Centre for Medium Range Weather Forecasts (ECMWF), where she works on building a machine learning model for weather forecasting. She is particularly interested in how to capture the model uncertainty in these data-driven approaches. She recently received a PhD from Imperial College London, focussing on developing advanced numerical and statistical techniques to quantify uncertainty in coastal ocean models. By training she is a mathematician, having done her undergraduate degree in Mathematics at the University of Oxford.   

AI is driving progress in many fields and weather forecasting is no exception. The past few years have seen several data-driven weather forecasting models that are comparable in skill to leading traditional models. Over the past year, ECMWF has been developing its own data-driven forecasting system, the AIFS. This talk will give an overview of AIFS and discuss its performance for a few significant weather events. It will also showcase ongoing research efforts at ECMWF, including data-driven probabilistic ensemble forecasting, and learning to predict directly from observations.

   
11:25 Q&A + open end
   

Webinar format

This webinar will be delivered as a LIVE ONLINE WEBINAR (using Zoom).

Prices and eligibility

This webinar is funded by the EuroCC 2 project. Therefore, the webinar is open and free of charge for participants from industry, academia and public administration from the Member States (MS) of the European Union (EU) and Associated/Other Countries to the Horizon 2020 programme.

Registration

Register here


Organisers

    

EuroCC Austria National Competence Centre for Supercomputing, Big Data Analytics and Artificial Intelligence helps businesses, academia and the public sector to adopt and leverage advanced computing technologies. It is coordinated by Advanced Computing Austria (ACA) with the University of Vienna, TU Wien and the University of Natural Resources and Life Sciences (BOKU), in close cooperation with business incubator INiTS.  

VSC Research Center, TU Wien is a collaboration of Austrian universities that provides supercomputing resources and support to scientists and researchers.


Acknowledgements

This webinar is funded by the EuroCC 2 project.

The project has received funding from the European High-Performance Computing Joint Undertaking (JU) under grant agreement No 101101903. The JU receives support from the Digital Europe Programme and Austria, Belgium, Bulgaria, Croatia, Cyprus, Czech Republic, Denmark, Estonia, Finland, France, Germany, Greece, Hungary, Iceland, Ireland, Italy, Latvia, Lithuania, Luxembourg, Montenegro, Netherlands, North Macedonia, Norway, Poland, Portugal, Romania, Serbia, Slovakia, Slovenia, Spain, Sweden, and Türkiye.

Additional funding for the project comes from the Austrian federal ministries BMBWF and BMK.


Surveys
There is an open survey.