ECMWF expands Machine Learning Project with three new partner countries
By
European Centre for Medium-Range Weather Forecasts
Summary
ECMWF has expanded its Machine Learning Project (MLP), launched in 2024, by welcoming Latvia, Slovenia, and Morocco as new partners. The collaboration, formalized through an amendment signed by ECMWF Director-General Florian Pappenberger and MET Norway Director-General Roar Skålin, aims to strengthen machine learning capabilities across national meteorological services to improve weather forecasting.
Source
Key quotes
· 2 pulledECMWF Director-General Florian Pappenberger and Director-General of MET Norway Roar Skålin have signed an amendment to the grant agreement for the Machine Learning Project (MLP).
Launched in 2024, the MLP is a collaborative initiative between ECMWF and national meteorological services to advance machine learning in weather forecasting.
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