METASYMBO: Multi-Agent Language-Guided Metamaterial Discovery via Symbolic Latent Evolution
arXiv cs.AI / 5/1/2026
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Key Points
- The paper proposes MetaSymbO, a multi-agent framework that uses natural-language design intent to guide metamaterial discovery without requiring explicit numerical property targets from the start.
- MetaSymbO employs three roles—Designer (intent interpretation and scaffold retrieval), Generator (candidate synthesis in a disentangled latent space), and Supervisor (fast, property-aware feedback for iterative refinement).
- The method introduces symbolic-driven latent evolution, using programmable operators over disentangled latent factors to compose, modify, and refine microstructures at inference time.
- Experiments report strong improvements in structural validity (up to 34% in symmetry and nearly 98% in periodicity) and better language-guidance scores (about 6–7%), while keeping high structural novelty versus advanced reasoning LLM baselines.
- Real-world case studies, including auxetic and high-stiffness metamaterial design, indicate the approach is practical for early-stage, constraint-poor exploration guided by qualitative goals.
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