TL;DR
CrysLLMGen is a hybrid framework combining large language models and diffusion models to improve the generation of novel, valid, and stable crystal structures with conditional control.
Contribution
This work introduces a novel hybrid approach that integrates LLMs with diffusion models for crystal material generation, leveraging their complementary strengths.
Findings
Outperforms state-of-the-art models on benchmark datasets.
Generates more stable and novel materials.
Exhibits strong conditional generation capabilities.
Abstract
Recent advances in generative modeling have shown significant promise in designing novel periodic crystal structures. Existing approaches typically rely on either large language models (LLMs) or equivariant denoising models, each with complementary strengths: LLMs excel at handling discrete atomic types but often struggle with continuous features such as atomic positions and lattice parameters, while denoising models are effective at modeling continuous variables but encounter difficulties in generating accurate atomic compositions. To bridge this gap, we propose CrysLLMGen, a hybrid framework that integrates an LLM with a diffusion model to leverage their complementary strengths for crystal material generation. During sampling, CrysLLMGen first employs a fine-tuned LLM to produce an intermediate representation of atom types, atomic coordinates, and lattice structure. While retaining…
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