Hierarchical Multi-agent Large Language Model Reasoning for Autonomous Functional Materials Discovery
By: Samuel Rothfarb , Megan C. Davis , Ivana Matanovic and more
Potential Business Impact:
AI designs and tests new materials faster.
Artificial intelligence is reshaping scientific exploration, but most methods automate procedural tasks without engaging in scientific reasoning, limiting autonomy in discovery. We introduce Materials Agents for Simulation and Theory in Electronic-structure Reasoning (MASTER), an active learning framework where large language models autonomously design, execute, and interpret atomistic simulations. In MASTER, a multimodal system translates natural language into density functional theory workflows, while higher-level reasoning agents guide discovery through a hierarchy of strategies, including a single agent baseline and three multi-agent approaches: peer review, triage-ranking, and triage-forms. Across two chemical applications, CO adsorption on Cu-surface transition metal (M) adatoms and on M-N-C catalysts, reasoning-driven exploration reduces required atomistic simulations by up to 90% relative to trial-and-error selection. Reasoning trajectories reveal chemically grounded decisions that cannot be explained by stochastic sampling or semantic bias. Altogether, multi-agent collaboration accelerates materials discovery and marks a new paradigm for autonomous scientific exploration.
Similar Papers
Autonomous Inorganic Materials Discovery via Multi-Agent Physics-Aware Scientific Reasoning
Materials Science
AI invents new materials by planning and doing experiments.
From AI for Science to Agentic Science: A Survey on Autonomous Scientific Discovery
Machine Learning (CS)
AI now does science experiments by itself.
From LLM Reasoning to Autonomous AI Agents: A Comprehensive Review
Artificial Intelligence
Organizes AI tests and tools for better understanding.