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Juliane Mueller - Adaptive Computing and multi-fidelity learning - IPAM at UCLA

Recorded 04 May 2023. Juliane Mueller of the National Renewable Energy Laboratory presents "Adaptive Computing and multi-fidelity learning" at IPAM's workshop for Complex Scientific Workflows at Extreme Computational Scales.
Abstract: We describe our ongoing research in adaptive computing. Our goal is to use a combination of low- and high-fidelity simulation models to enable computationally efficient optimization and uncertainty quantification. We develop optimization formulations that take into account the compute resources currently available, which act as a constraint with regards to the fidelity level simulation we can run while maximizing information gain. We will discuss a few application examples that can benefit from this approach, especially when considering challenges arising in scaling up experiments and simulations.
Learn more online at: hhttp://www.ipam.ucla.edu/programs/workshops/workshop-iii-complex-scientific-workflows-at-extreme-computational-scales/

Видео Juliane Mueller - Adaptive Computing and multi-fidelity learning - IPAM at UCLA канала Institute for Pure & Applied Mathematics (IPAM)
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Информация о видео
5 мая 2023 г. 3:57:07
00:49:24
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