Machine learning for science: mathematics at the interface of data-driven and mechanistic modelling. Abstracts from the workshop held June 11--16, 2023 (Q6188877)
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scientific article; zbMATH DE number 7787233
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Machine learning for science: mathematics at the interface of data-driven and mechanistic modelling. Abstracts from the workshop held June 11--16, 2023 |
scientific article; zbMATH DE number 7787233 |
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Machine learning for science: mathematics at the interface of data-driven and mechanistic modelling. Abstracts from the workshop held June 11--16, 2023 (English)
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12 January 2024
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Summary: Rapid progress in machine learning is enabling scientific advances across a range of disciplines. However, the utility of machine learning for science remains constrained by its current inability to translate insights from data about the dynamics of a system to new scientific knowledge about why those dynamics emerge, as traditionally represented by physical modelling. Mathematics is the interface that bridges data-driven and physical models of the world and can provide a foundation for delivering such knowledge. This workshop convened researchers working across domains with a shared interest in mathematics, machine learning, and their application in the sciences, to explore how tools of mathematics can help build machine learning tools for scientific discovery.
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