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Paper page - AutoMAT: A Hierarchical Framework for Autonomous Alloy Discovery
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arxiv:2507.16005

AutoMAT: A Hierarchical Framework for Autonomous Alloy Discovery

Published on Jul 21, 2025
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Abstract

AutoMAT, a hierarchical framework combining large language models, CALPHAD simulations, and AI-driven search, accelerates alloy design by reducing discovery timelines and improving material properties.

Alloy discovery is central to advancing modern industry but remains hindered by the vastness of compositional design space and the costly validation. Here, we present AutoMAT, a hierarchical and autonomous framework grounded in and validated by experiments, which integrates large language models, automated CALPHAD-based simulations, and AI-driven search to accelerate alloy design. Spanning the entire pipeline from ideation to validation, AutoMAT achieves high efficiency, accuracy, and interpretability without the need for manually curated large datasets. In a case study targeting a lightweight, high-strength alloy, AutoMAT identifies a titanium alloy with 8.1% lower density and comparable yield strength relative to the state-of-the-art reference, achieving the highest specific strength among all comparisons. In a second case targeting high-yield-strength high-entropy alloys, AutoMAT achieves a 28.2% improvement in yield strength over the base alloy. In both cases, AutoMAT reduces the discovery timeline from years to weeks, illustrating its potential as a scalable and versatile platform for next-generation alloy design.

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