Issue 12, 2025

Active learning path-dependent properties using a cloud-based materials acceleration platform

Abstract

Solid state materials are central to many modern technologies in which a given material may be exposed to a variety of environments. The material properties often vary with the sequence of environments in an irreversible manner, resulting in a quintessential path-dependency in experimental observables. While sequential learning techniques have been effectively deployed for accelerating learning of state properties of materials, they often use a consistent environment path in all experiments. To elevate such techniques for making optimal decisions in experimental investigations of path-dependent properties, we introduce an iterated expected information gain acquisition function that optimizes over entire experimental trajectories. This approach is implemented within a cloud-based Materials Acceleration Platform architecture utilizing an event-driven stateful broker coupled with remote HELAO (Hierarchical Experimental Laboratory Automation and Orchestration) instances and an AI science manager. The platform's efficacy was demonstrated through a case study optimizing multi-step spectro-electrochemical experiments to identify optically stable potential windows in (Co–Ni–Sb)Oz metal oxides. The system successfully integrated AI-driven experiment design, remote laboratory automation, and cloud-based data infrastructure, validating the platform's capability for managing complex, adaptive, path-dependent workflows in materials discovery.

Graphical abstract: Active learning path-dependent properties using a cloud-based materials acceleration platform

Supplementary files

Article information

Article type
Paper
Submitted
23 Jul 2025
Accepted
11 Oct 2025
First published
04 Nov 2025
This article is Open Access
Creative Commons BY license

Digital Discovery, 2025,4, 3674-3682

Active learning path-dependent properties using a cloud-based materials acceleration platform

D. Guevarra, M. J. Statt, K. Popovich, B. A. Rohr, J. M. Gregoire, K. Tran, S. K. Suram, J. A. Haber and W. Neiswanger, Digital Discovery, 2025, 4, 3674 DOI: 10.1039/D5DD00325C

This article is licensed under a Creative Commons Attribution 3.0 Unported Licence. You can use material from this article in other publications without requesting further permissions from the RSC, provided that the correct acknowledgement is given.

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