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Perspective: Towards sustainable exploration of chemical spaces with machine learning

Sandonas, Leonardo Medrano; Balcells, David; Bochkarev, Anton; Cole, Jacqueline M.; Deringer, Volker L.; Dobrautz, Werner; Ehrenhofer, Adrian; Frank, Thorben; Friederich, Pascal ORCID iD icon 1; Friedrich, Rico; George, Janine; Ghiringhelli, Luca ORCID iD icon 2; Caldas, Alejandra Hinostroza; Juraskova, Veronika; Kneiding, Hannes; Lysogorskiy, Yury; Margraf, Johannes T.; Türk, Hanna; von Lilienfeld, Anatole; ... mehr

Abstract:

Artificial intelligence is transforming molecular and materials science, but its growing computational and data demands raise critical sustainability challenges. In this Perspective, we examine resource considerations across the AI-driven discovery pipeline--from quantum-mechanical (QM) data generation and model training to automated, self-driving research workflows--building on discussions from the ``SusML workshop: Towards sustainable exploration of chemical spaces with machine learning'' held in Dresden, Germany. In this context, the availability of large quantum datasets has enabled rigorous benchmarking and rapid methodological progress, while also incurring substantial energy and infrastructure costs. We highlight emerging strategies to enhance efficiency, including general-purpose machine learning (ML) models, multi-fidelity approaches, model distillation, and active learning. Moreover, incorporating physics-based constraints within hierarchical workflows, where fast ML surrogates are applied broadly and high-accuracy QM methods are used selectively, can further optimize resource use without compromising reliability. ... mehr


Volltext §
DOI: 10.5445/IR/1000193401
Veröffentlicht am 19.05.2026
Originalveröffentlichung
DOI: 10.48550/arXiv.2604.00069
Cover der Publikation
Zugehörige Institution(en) am KIT Institut für Theoretische Informatik (ITI)
Scientific Computing Center (SCC)
Publikationstyp Forschungsbericht/Preprint
Publikationsjahr 2026
Sprache Englisch
Identifikator KITopen-ID: 1000193401
HGF-Programm 43.31.01 (POF IV, LK 01) Multifunctionality Molecular Design & Material Architecture
Verlag arxiv
Umfang 44 S.
Schlagwörter Machine Learning (cs.LG), Materials Science (cond-mat.mtrl-sci), Artificial Intelligence (cs.AI), I.6.1; I.6.3; I.6.5; I.6.6; I.6.8
Nachgewiesen in OpenAlex
arXiv
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