AutoMOOSE: An Agentic AI for Autonomous Phase-Field Simulation
Sukriti Manna, Henry Chan, Subramanian K.R.S. Sankaranarayanan

TL;DR
AutoMOOSE is an agentic AI framework that automates phase-field simulations, reducing expert intervention, improving efficiency, and ensuring physical consistency, thus enabling AI-driven materials discovery.
Contribution
The paper introduces AutoMOOSE, a novel multi-agent system that automates the entire phase-field simulation process with natural language prompts and autonomous failure correction.
Findings
Achieves 1.8x speedup in simulation runs.
Matches 50% of input file structure exactly, 33% functionally.
Recovers grain coarsening kinetics with high accuracy.
Abstract
Multiphysics simulation frameworks such as MOOSE provide rigorous engines for phase-field materials modeling, yet adoption is constrained by the expertise required to construct valid input files, coordinate parameter sweeps, diagnose failures, and extract quantitative results. We introduce AutoMOOSE, an open-source agentic framework that orchestrates the full simulation lifecycle from a single natural-language prompt. AutoMOOSE deploys a five-agent pipeline in which the Input Writer coordinates six sub-agents and the Reviewer autonomously corrects runtime failures without user intervention. A modular plugin architecture enables new phase-field formulations without modifying the core framework, and a Model Context Protocol (MCP) server exposes the workflow as ten structured tools for interoperability with any MCP-compatible client. Validated on a four-temperature copper grain growth…
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Taxonomy
TopicsSolidification and crystal growth phenomena · Machine Learning in Materials Science · Metallurgical Processes and Thermodynamics
