000900881 001__ 900881
000900881 005__ 20230210112656.0
000900881 0247_ $$2CORDIS$$aG:(EU-Grant)955513$$d955513
000900881 0247_ $$2CORDIS$$aG:(EU-Call)H2020-JTI-EuroHPC-2019-1$$dH2020-JTI-EuroHPC-2019-1
000900881 0247_ $$2originalID$$acorda__h2020::955513
000900881 035__ $$aG:(EU-Grant)955513
000900881 150__ $$aMAchinE Learning for Scalable meTeoROlogy and cliMate$$y2021-04-01 - 2024-03-31
000900881 372__ $$aH2020-JTI-EuroHPC-2019-1$$s2021-04-01$$t2024-03-31
000900881 450__ $$aMAELSTROM$$wd$$y2021-04-01 - 2024-03-31
000900881 5101_ $$0I:(DE-588b)5098525-5$$2CORDIS$$aEuropean Union
000900881 680__ $$aTo develop Europe’s computer architecture of the future, MAELSTROM will co-design bespoke compute system designs for optimal application performance and energy efficiency, a software framework to optimise usability and training efficiency for machine learning at scale, and large-scale machine learning applications for the domain of weather and climate science.
The MAELSTROM compute system designs will benchmark the applications across a range of computing systems regarding energy consumption, time-to-solution, numerical precision and solution accuracy. Customised compute systems will be designed that are optimised for application needs to strengthen Europe’s high-performance computing portfolio and to pull recent hardware developments, driven by general machine learning applications, toward needs of weather and climate applications.
The MAELSTROM software framework will enable scientists to apply and compare machine learning tools and libraries efficiently across a wide range of computer systems. A user interface will link application developers with compute system designers, and automated benchmarking and error detection of machine learning solutions will be performed during the development phase. Tools will be published as open source.
The MAELSTROM machine learning applications will cover all important components of the workflow of weather and climate predictions including the processing of observations, the assimilation of observations to generate initial and reference conditions, model simulations, as well as post-processing of model data and the development of forecast products. For each application, benchmark datasets with up to 10 terabytes of data will be published online for training and machine learning tool-developments at the scale of the fastest supercomputers in the world. MAELSTROM machine learning solutions will serve as blueprint for a wide range of machine learning applications on supercomputers in the future.
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000900881 980__ $$aG
000900881 980__ $$aCORDIS
000900881 980__ $$aAUTHORITY