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Main Authors: Mok, Dong Hyeon, Back, Seoin, Fung, Victor, Hu, Guoxiang
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.21533
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author Mok, Dong Hyeon
Back, Seoin
Fung, Victor
Hu, Guoxiang
author_facet Mok, Dong Hyeon
Back, Seoin
Fung, Victor
Hu, Guoxiang
contents Large language models (LLMs) are becoming increasingly applied beyond natural language processing, demonstrating strong capabilities in complex scientific tasks that traditionally require human expertise. This progress has extended into materials discovery, where LLMs introduce a new paradigm by leveraging reasoning and in-context learning, capabilities absent from conventional machine learning approaches. Here, we present a Multi-Agent-based Electrocatalyst Search Through Reasoning and Optimization (MAESTRO) framework in which multiple LLMs with specialized roles collaboratively discover high-performance single atom catalysts for the oxygen reduction reaction. Within an autonomous design loop, agents iteratively reason, propose modifications, reflect on results and accumulate design history. Through in-context learning enabled by this iterative process, MAESTRO identified design principles not explicitly encoded in the LLMs' background knowledge and successfully discovered catalysts that break conventional scaling relations between reaction intermediates. These results highlight the potential of multi-agent LLM frameworks as a powerful strategy to generate chemical insight and discover promising catalysts.
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id arxiv_https___arxiv_org_abs_2602_21533
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reasoning-Driven Design of Single Atom Catalysts via a Multi-Agent Large Language Model Framework
Mok, Dong Hyeon
Back, Seoin
Fung, Victor
Hu, Guoxiang
Materials Science
Machine Learning
Large language models (LLMs) are becoming increasingly applied beyond natural language processing, demonstrating strong capabilities in complex scientific tasks that traditionally require human expertise. This progress has extended into materials discovery, where LLMs introduce a new paradigm by leveraging reasoning and in-context learning, capabilities absent from conventional machine learning approaches. Here, we present a Multi-Agent-based Electrocatalyst Search Through Reasoning and Optimization (MAESTRO) framework in which multiple LLMs with specialized roles collaboratively discover high-performance single atom catalysts for the oxygen reduction reaction. Within an autonomous design loop, agents iteratively reason, propose modifications, reflect on results and accumulate design history. Through in-context learning enabled by this iterative process, MAESTRO identified design principles not explicitly encoded in the LLMs' background knowledge and successfully discovered catalysts that break conventional scaling relations between reaction intermediates. These results highlight the potential of multi-agent LLM frameworks as a powerful strategy to generate chemical insight and discover promising catalysts.
title Reasoning-Driven Design of Single Atom Catalysts via a Multi-Agent Large Language Model Framework
topic Materials Science
Machine Learning
url https://arxiv.org/abs/2602.21533