License: Creative Commons Attribution 4.0 International license (CC BY 4.0)
When quoting this document, please refer to the following
DOI: 10.4230/DagRep.12.9.150
URN: urn:nbn:de:0030-drops-178125
URL: http://dagstuhl.sunsite.rwth-aachen.de/volltexte/2023/17812/
Berens, Philipp ;
Cranmer, Kyle ;
Lawrence, Neil D. ;
von Luxburg, Ulrike ;
Montgomery, Jessica
Weitere Beteiligte (Hrsg. etc.): Philipp Berens and Kyle Cranmer and Neil D. Lawrence and Ulrike von Luxburg and Jessica Montgomery
Machine Learning for Science: Bridging Data-Driven and Mechanistic Modelling (Dagstuhl Seminar 22382)
Abstract
This report documents the programme and the outcomes of Dagstuhl Seminar 22382 "Machine Learning for Science: Bridging Data-Driven and Mechanistic Modelling".
Today’s scientific challenges are characterised by complexity. Interconnected natural, technological, and human systems are influenced by forces acting across time- and spatial-scales, resulting in complex interactions and emergent behaviours. Understanding these phenomena - and leveraging scientific advances to deliver innovative solutions to improve society’s health, wealth, and well-being - requires new ways of analysing complex systems.
The transformative potential of AI stems from its widespread applicability across disciplines, and will only be achieved through integration across research domains. AI for science is a rendezvous point. It brings together expertise from AI and application domains; combines modelling knowledge with engineering know-how; and relies on collaboration across disciplines and between humans and machines. Alongside technical advances, the next wave of progress in the field will come from building a community of machine learning researchers, domain experts, citizen scientists, and engineers working together to design and deploy effective AI tools.
This report summarises the discussions from the seminar and provides a roadmap to suggest how different communities can collaborate to deliver a new wave of progress in AI and its application for scientific discovery.
BibTeX - Entry
@Article{berens_et_al:DagRep.12.9.150,
author = {Berens, Philipp and Cranmer, Kyle and Lawrence, Neil D. and von Luxburg, Ulrike and Montgomery, Jessica},
title = {{Machine Learning for Science: Bridging Data-Driven and Mechanistic Modelling (Dagstuhl Seminar 22382)}},
pages = {150--199},
journal = {Dagstuhl Reports},
ISSN = {2192-5283},
year = {2023},
volume = {12},
number = {9},
editor = {Berens, Philipp and Cranmer, Kyle and Lawrence, Neil D. and von Luxburg, Ulrike and Montgomery, Jessica},
publisher = {Schloss Dagstuhl -- Leibniz-Zentrum f{\"u}r Informatik},
address = {Dagstuhl, Germany},
URL = {https://drops.dagstuhl.de/opus/volltexte/2023/17812},
URN = {urn:nbn:de:0030-drops-178125},
doi = {10.4230/DagRep.12.9.150},
annote = {Keywords: machine learning, artificial intelligence, life sciences, physical sciences, environmental sciences, simulation, causality, modelling}
}
Keywords: |
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machine learning, artificial intelligence, life sciences, physical sciences, environmental sciences, simulation, causality, modelling |
Collection: |
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DagRep, Volume 12, Issue 9 |
Issue Date: |
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2023 |
Date of publication: |
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04.04.2023 |