Mapping the future: Grainger engineers’ AI method to transform alloy properties prediction and design 

11/13/2025 Jeni Bushman

Assistant Professor Jean-Charles Stinville and researchers have developed a machine learning method called Material Spatial Intelligence that creates detailed spatial maps of metal alloys' microstructures, similar to how fingerprints uniquely identify individuals. This approach captures the complete complexity of an alloy's structure rather than reducing it to simple averages, enabling faster and more accurate prediction of how metals will perform in extreme environments, such as space applications.

Written by Jeni Bushman

Researchers from The Grainger College of Engineering have combined their fundamental knowledge of metals with new machine learning techniques to generate detailed spatial maps. Their method paves the way towards faster and more accurate autonomous material design. 

In a world of 8 billion people, there’s one thing that makes each of us unique: our fingerprints. A variety of genetic and environmental factors create tiny variations in the skin’s ridges and whorls, such that no two prints are the same. 

The spatial distribution of these subtle features makes fingerprinting a useful tool for biometric identification. With the help of modern technology, we can even unlock our personal devices using digital maps made from our skin’s unique arrangement of ridges, valleys and vascular patterns. These technologies succeed because of their ability to spatially capture the arrangement of super-fine detail.

Jean-Charles Stinville, Materials Science and Engineering assistant professor

This evolution of recognition technology is mirrored in the field of materials science, where researchers seek new and efficient ways to fully characterize materials, accelerating the discovery of additional new materials. Much like human fingerprints, the performance of metal mixtures called alloys relies on the intricate spatial arrangement of microstructural features. Traditional methods reduce this complexity into a handful of averaged values, causing each alloy to lose its distinctive “fingerprint.”

 In a recent complement of papers from the lab of Jean-Charles Stinville,, assistant professor of materials science and engineering, Illinois Grainger engineers have introduced new machine learning approaches for identifying alloy microstructures and predicting their properties rapidly. The Illinois researchers’ method will provide new avenues for faster and more efficient materials design. 

Microstructures are tiny structural features of metals that influence their strength and behavior. Scientists look to the microstructural properties of metals to assess their functionality. Metals used in propulsion devices like rockets and airplanes have special requirements. 

“We are sending these materials into increasingly extreme environments,” Stinville said. “They are exposed to intense environments; for instance, structural materials for space applications must be resistant to mechanical loading under extremely low or high temperatures. Conventional alloys don’t do as well in these conditions because their mechanical properties tend to degrade under these extreme environments. We want to find new ways to accelerate the identification of alloy chemistries and microstructures that can withstand these harsh conditions.”

The complete details of these microstructures, including small-scale influential variances called heterogeneities, cannot be easily captured by existing methods. Instead, Stinville and his colleagues used deep learning to analyze diffraction patterns, or the way electrons interact with metals. By encoding these interactions through a machine learning method onto a spatial latent representation, the researchers captured the full extent of an alloy’s microstructure and its heterogeneity — an approach Stinville calls Material Spatial Intelligence.

Electron backscatter diffraction (EBSD) maps of the investigated Inconel 718 alloys. Inverse pole figure (IPF) maps along the X direction (horizontal) are presented for a A wrought and fully recrystallized 718 alloy, and a B additively manufactured as-built 718 alloy.

“Traditionally, we have used single descriptors or average values to guide data-based alloy design,” he said. “But spatial information from local measurements over a large field of view allows us to capture microstructure heterogeneity of the alloy. Using such spatial information in a data-based model provides significant improvement in prediction accuracy and enables alloy and microstructure design.” 

Published in NPJ Computational Materials, the initial model is a machine learning approach that successfully identified microstructures and material heterogeneity in unprecedented detail. In a second paper published in Scripta Materialia, Stinville further progressed the model towards the prediction of mechanical properties using the developed approach of material spatial intelligence. This method accelerates alloy property prediction by orders of magnitude and provides a rapid fundamental understanding of structure properties in metals. 

“I started my career as an experimentalist, where I developed tools that allowed us to collect large fields of view with very high resolution,” he said. “Then I went over to the numerical side to develop machine learning tools to actually use all this spatial information. As a metallurgist, I have an understanding that metals are controlled by local properties and their heterogeneities. My unique material scientist background really helped me in developing these novel models.”

By combining high-resolution digital image correlation with alloy microstructure characterization, Stinville examined tiny regions of metal surfaces and how they deformed at a small scale when loaded. Training a new model to recognize these deformation fingerprints allowed him to reliably predict important properties like strength, fatigue life, and ductility (the ability to extend without breaking). The model significantly decreases the time for testing, lessening the time needed to evaluate new alloys. This acceleration brings the field one step closer to intelligent alloy design.

Stinville envisions a future model that works backwards from a user’s desired properties to suggest a chemical composition and microstructure that best suits the given parameters. By integrating these approaches with his group’s advances in automated characterization, Stinville’s lab is setting the stage for fully autonomous alloy design, marking their next frontier.

But even as exciting advancements loom, Stinville still marvels at his field’s early beginnings. 

“This approach unites our field’s fundamental understanding of metals with new and efficient AI database tools,” he said. “We’re not just taking these new tools and leaving behind what we’ve already learned. We’re integrating the present with the past.” 

Mathieu Calvat, Chris Beam, and Dhruv Anjaria significantly contributed to this research.

The following articles are available online: 

"Learning metal microstructural heterogeneity through spatial mapping of diffraction latent space features.' DOI: https://doi.org/10.1038/s41524-025-01770-8

‘Plasticity Encoding and Mapping during Elementary Loading for Accelerated Mechanical Properties Prediction.’ DOI: https://doi.org/10.1016/j.scriptamat.2025.117082

Illinois Grainger Engineering Affiliations 

Jean-Charles Stinville is an Illinois Grainger Engineering assistant professor of materials science and engineering in the Department of Materials Science and Engineering


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This story was published November 13, 2025.