DREAMS: Density Functional Theory Based Research Engine for Agentic Materials Simulation
Ziqi Wang, Hongshuo Huang, Hancheng Zhao, Changwen Xu, Shang Zhu, Jan Janssen, Venkatasubramanian Viswanathan

TL;DR
DREAMS is an automated, multi-agent framework that leverages large language models to perform high-fidelity DFT simulations for materials discovery, reducing human intervention and improving accuracy.
Contribution
It introduces a hierarchical LLM-based system for DFT simulations that automates structure generation, convergence testing, and error handling, advancing towards autonomous materials discovery.
Findings
Achieved sub-1% error on lattice-constant benchmark
Reproduced expert-level adsorption energy differences
Validated uncertainty quantification with Bayesian sampling
Abstract
Materials discovery relies on high-throughput, high-fidelity simulation techniques such as Density Functional Theory (DFT), which require years of training, extensive parameter fine-tuning and systematic error handling. To address these challenges, we introduce the DFT-based Research Engine for Agentic Materials Screening (DREAMS), a hierarchical, multi-agent framework for DFT simulation that combines a central Large Language Model (LLM) planner agent with domain-specific LLM agents for atomistic structure generation, systematic DFT convergence testing, High-Performance Computing (HPC) scheduling, and error handling. In addition, a shared canvas helps the LLM agents to structure their discussions, preserve context and prevent hallucination. We validate DREAMS capabilities on the Sol27LC lattice-constant benchmark, achieving average errors below 1\% compared to the results of human DFT…
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