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LLM4Mat-bench: benchmarking large language models for materials property prediction

Andre Niyongabo Rubungo, Kangming Li, Jason Hattrick‐Simpers, Adji Bousso Dieng

2025Machine Learning Science and Technology13 citationsDOIOpen Access PDF

Abstract

Abstract Large language models (LLMs) are increasingly being used in materials science. However, little attention has been given to benchmarking and standardized evaluation for LLM-based materials property prediction, which hinders progress. We present LLM4Mat-Bench, the largest benchmark to date for evaluating the performance of LLMs in predicting the properties of crystalline materials. LLM4Mat-Bench contains about 1.9 M crystal structures in total, collected from 10 publicly available materials data sources, and 45 distinct properties. LLM4Mat-Bench features different input modalities: crystal composition, CIF, and crystal text description, with 4.7 M, 615.5 M, and 3.1B tokens in total for each modality, respectively. We use LLM4Mat-Bench to fine-tune models with different sizes, including LLM-Prop and MatBERT, and provide zero-shot and few-shot prompts to evaluate the property prediction capabilities of LLM-chat-like models, including Llama, Gemma, and Mistral. The results highlight the challenges of general-purpose LLMs in materials science and the need for task-specific predictive models and task-specific instruction-tuned LLMs in materials property prediction 7 7 The Benchmark and code can be found at: https://github.com/vertaix/LLM4Mat-Bench . .

Topics & Concepts

BenchmarkingProperty (philosophy)Computer scienceNatural language processingBusinessPhilosophyMarketingEpistemologyMachine Learning in Materials ScienceManufacturing Process and Optimization