Chen-Wiegart, Yu-chen KarenYu-chen KarenChen-WiegartHuber, NorbertNorbertHuberYager, KevinKevinYager2025-06-022025-06-022025-05-14MRS Bulletin 50 (5): 629-640 (2025)https://hdl.handle.net/11420/55749The development of nanoporous metals and metallic composites through dealloying processes presents significant opportunities in materials engineering. However, designing multicomponent precursor alloys and establishing corresponding processing methods that yield predictable compositions and nanostructures remain a complex challenge. This article explores how machine learning (ML)-augmented computational and experimental methodologies can tackle these challenges by predicting precursor alloy compositions, final nanoporous structures, and mechanical properties, while integrating ML-enabled autonomous experimentation for material design and quantification. We highlight recent advancements in applying ML to nanostructured materials design via dealloying and discuss how techniques from other nanomaterial designs can be adapted for improved control over morphological and compositional outcomes in nanoporous and nanocomposite materials. Furthermore, we explore the role of ML in autonomous synchrotron x-ray experimentation, enabling real-time feedback between modeling and experimental setups. ML-driven approaches to microstructure characterization and mechanical property prediction are also examined, with a focus on modeling and advanced imaging techniques such as three-dimensional nanotomography. Finally, this article outlines future directions for ML-enhanced materials science, emphasizing the exploration of high-dimensional parameter spaces and the incorporation of materials kinetics into processing and property evaluation, ultimately advancing the design of nanoporous structures and materials science.en1938-1425MRS bulletin20255629640SpringerArtificial intelligence | Autonomous | Hierarchical | Machine learning | Morphology | Nanostructure | Porosity | X-ray tomographyTechnology::600: TechnologyMachine learning approaches for intentional materials engineeringJournal Article10.1557/s43577-025-00908-9Journal Article