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Main Authors: Van, Minh-Hao, Verma, Prateek, Zhao, Chen, Wu, Xintao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.20743
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author Van, Minh-Hao
Verma, Prateek
Zhao, Chen
Wu, Xintao
author_facet Van, Minh-Hao
Verma, Prateek
Zhao, Chen
Wu, Xintao
contents Foundation models (FMs) are catalyzing a transformative shift in materials science (MatSci) by enabling scalable, general-purpose, and multimodal AI systems for scientific discovery. Unlike traditional machine learning models, which are typically narrow in scope and require task-specific engineering, FMs offer cross-domain generalization and exhibit emergent capabilities. Their versatility is especially well-suited to materials science, where research challenges span diverse data types and scales. This survey provides a comprehensive overview of foundation models, agentic systems, datasets, and computational tools supporting this growing field. We introduce a task-driven taxonomy encompassing six broad application areas: data extraction, interpretation and Q\&A; atomistic simulation; property prediction; materials structure, design and discovery; process planning, discovery, and optimization; and multiscale modeling. We discuss recent advances in both unimodal and multimodal FMs, as well as emerging large language model (LLM) agents. Furthermore, we review standardized datasets, open-source tools, and autonomous experimental platforms that collectively fuel the development and integration of FMs into research workflows. We assess the early successes of foundation models and identify persistent limitations, including challenges in generalizability, interpretability, data imbalance, safety concerns, and limited multimodal fusion. Finally, we articulate future research directions centered on scalable pretraining, continual learning, data governance, and trustworthiness.
format Preprint
id arxiv_https___arxiv_org_abs_2506_20743
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Survey of AI for Materials Science: Foundation Models, LLM Agents, Datasets, and Tools
Van, Minh-Hao
Verma, Prateek
Zhao, Chen
Wu, Xintao
Machine Learning
Computational Engineering, Finance, and Science
Foundation models (FMs) are catalyzing a transformative shift in materials science (MatSci) by enabling scalable, general-purpose, and multimodal AI systems for scientific discovery. Unlike traditional machine learning models, which are typically narrow in scope and require task-specific engineering, FMs offer cross-domain generalization and exhibit emergent capabilities. Their versatility is especially well-suited to materials science, where research challenges span diverse data types and scales. This survey provides a comprehensive overview of foundation models, agentic systems, datasets, and computational tools supporting this growing field. We introduce a task-driven taxonomy encompassing six broad application areas: data extraction, interpretation and Q\&A; atomistic simulation; property prediction; materials structure, design and discovery; process planning, discovery, and optimization; and multiscale modeling. We discuss recent advances in both unimodal and multimodal FMs, as well as emerging large language model (LLM) agents. Furthermore, we review standardized datasets, open-source tools, and autonomous experimental platforms that collectively fuel the development and integration of FMs into research workflows. We assess the early successes of foundation models and identify persistent limitations, including challenges in generalizability, interpretability, data imbalance, safety concerns, and limited multimodal fusion. Finally, we articulate future research directions centered on scalable pretraining, continual learning, data governance, and trustworthiness.
title A Survey of AI for Materials Science: Foundation Models, LLM Agents, Datasets, and Tools
topic Machine Learning
Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2506.20743