Catalyst-Agent: Autonomous heterogeneous catalyst screening and optimization with an LLM Agent
Achuth Chandrasekhar, Janghoon Ock, Amir Barati Farimani

TL;DR
Catalyst-Agent is an LLM-powered AI system that automates catalyst screening by exploring databases, making structural modifications, and predicting reactions, significantly accelerating discovery with minimal human input.
Contribution
This work introduces Catalyst-Agent, an AI agent that integrates LLMs with chemical modeling tools for autonomous catalyst screening and optimization.
Findings
Achieves 23-34% success rate in catalyst candidate selection.
Converges on successful candidates within 1-2 trials on average.
Demonstrates potential to accelerate catalyst discovery workflows.
Abstract
The discovery of novel catalysts tailored for particular applications is a major challenge for the twenty-first century. Traditional methods for this include time-consuming and expensive experimental trial-and-error approaches in labs based on chemical theory or heavily computational first-principles approaches based on density functional theory. Recent studies show that deep learning models like graph neural networks (GNNs) can significantly speed up the screening and discovery of catalyst materials by many orders of magnitude, with very high accuracy and fidelity. In this work, we introduce Catalyst-Agent, a Model Context Protocol (MCP) server-based, LLM-powered AI agent. It can explore vast material databases using the OPTIMADE API, make structural modifications, calculate adsorption energies using Meta FAIRchem's UMA (GNN) model via FAIRchem's AdsorbML workflow and slab…
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Taxonomy
TopicsMachine Learning in Materials Science · Electrocatalysts for Energy Conversion · CO2 Reduction Techniques and Catalysts
