Autor(en): Ruelmann, Hannes
Geveler, Markus
Ribbrock, Dirk
Zajac, Peter
Turek, Stefan
Titel: Basic Machine Learning Approaches for the Acceleration of PDE Simulations and Realization in the FEAT3 Software
Sprache (ISO): en
Zusammenfassung: In this paper we present a holistic software approach based on the FEAT3 software for solving multidimensional PDEs with the Finite Element Method that is built for a maximum of performance, scalability, maintainability and extensibilty. We introduce basic paradigms how modern computational hardware architectures such as GPUs are exploited in a numerically scalable fashion. We show, how the framework is extended to make even the most recent advances on the hardware market accessible to the framework, exemplified by the ubiquitous trend to customize chips for Machine Learning. We can demonstrate that for a numerically challenging model problem, artificial neural networks can be used while preserving a classical simulation solution pipeline through the incorporation of a neural network preconditioner in the linear solver
URI: http://hdl.handle.net/2003/38462
http://dx.doi.org/10.17877/DE290R-20381
Erscheinungsdatum: 2019-12
Enthalten in den Sammlungen:Ergebnisberichte des Instituts für Angewandte Mathematik

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