用于异质催化剂的生成式预训练变换器

IF 14.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Journal of the American Chemical Society Pub Date : 2024-11-22 DOI:10.1021/jacs.4c11504
Dong Hyeon Mok, Seoin Back
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引用次数: 0

摘要

发现新型和有前途的材料是化学和材料科学领域的一项重要挑战,传统的方法包括试错法和机器学习驱动的逆向设计法。最近的研究表明,基于转换器的语言模型可用作材料生成模型,以扩展化学空间并探索具有所需特性的材料。在这项工作中,我们引入了催化剂生成预训练变换器(CatGPT),经过训练后可从广阔的化学空间生成无机催化剂结构的字符串表示。CatGPT 不仅在生成有效、准确的催化剂结构方面表现出很高的性能,而且还是通过文本调节和微调生成所需催化剂类型的基础模型。举例来说,我们使用为筛选双电子氧还原反应(2e-ORR)催化剂而设计的二元合金催化剂数据集对预训练 CatGPT 进行了微调,并生成了专门用于 2e-ORR 的催化剂结构。我们的工作证明了生成语言模型作为催化剂发现生成工具的潜力。
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Generative Pretrained Transformer for Heterogeneous Catalysts
Discovery of novel and promising materials is a critical challenge in the field of chemistry and material science, traditionally approached through methodologies ranging from trial-and-error to machine-learning-driven inverse design. Recent studies suggest that transformer-based language models can be utilized as material generative models to expand the chemical space and explore materials with desired properties. In this work, we introduce the catalyst generative pretrained transformer (CatGPT), trained to generate string representations of inorganic catalyst structures from a vast chemical space. CatGPT not only demonstrates high performance in generating valid and accurate catalyst structures but also serves as a foundation model for generating the desired types of catalysts by text-conditioning and fine-tuning. As an example, we fine-tuned the pretrained CatGPT using a binary alloy catalyst data set designed for screening two-electron oxygen reduction reaction (2e-ORR) catalyst and generated catalyst structures specialized for 2e-ORR. Our work demonstrates the potential of generative language models as generative tools for catalyst discovery.
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来源期刊
CiteScore
24.40
自引率
6.00%
发文量
2398
审稿时长
1.6 months
期刊介绍: The flagship journal of the American Chemical Society, known as the Journal of the American Chemical Society (JACS), has been a prestigious publication since its establishment in 1879. It holds a preeminent position in the field of chemistry and related interdisciplinary sciences. JACS is committed to disseminating cutting-edge research papers, covering a wide range of topics, and encompasses approximately 19,000 pages of Articles, Communications, and Perspectives annually. With a weekly publication frequency, JACS plays a vital role in advancing the field of chemistry by providing essential research.
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