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TopoMAS: Large Language Model Driven Topological Materials Multiagent System

Materials Science 2025-07-08 v1 Artificial Intelligence

Abstract

Topological materials occupy a frontier in condensed-matter physics thanks to their remarkable electronic and quantum properties, yet their cross-scale design remains bottlenecked by inefficient discovery workflows. Here, we introduce TopoMAS (Topological materials Multi-Agent System), an interactive human-AI framework that seamlessly orchestrates the entire materials-discovery pipeline: from user-defined queries and multi-source data retrieval, through theoretical inference and crystal-structure generation, to first-principles validation. Crucially, TopoMAS closes the loop by autonomously integrating computational outcomes into a dynamic knowledge graph, enabling continuous knowledge refinement. In collaboration with human experts, it has already guided the identification of novel topological phases SrSbO3, confirmed by first-principles calculations. Comprehensive benchmarks demonstrate robust adaptability across base Large Language Model, with the lightweight Qwen2.5-72B model achieving 94.55% accuracy while consuming only 74.3-78.4% of tokens required by Qwen3-235B and 83.0% of DeepSeek-V3's usage--delivering responses twice as fast as Qwen3-235B. This efficiency establishes TopoMAS as an accelerator for computation-driven discovery pipelines. By harmonizing rational agent orchestration with a self-evolving knowledge graph, our framework not only delivers immediate advances in topological materials but also establishes a transferable, extensible paradigm for materials-science domain.

Keywords

Cite

@article{arxiv.2507.04053,
  title  = {TopoMAS: Large Language Model Driven Topological Materials Multiagent System},
  author = {Baohua Zhang and Xin Li and Huangchao Xu and Zhong Jin and Quansheng Wu and Ce Li},
  journal= {arXiv preprint arXiv:2507.04053},
  year   = {2025}
}

Comments

13 pages,7 figures,3 tables

R2 v1 2026-07-01T03:47:43.503Z