TY - JOUR
T1 - Shaping the Water-Harvesting Behavior of Metal-Organic Frameworks Aided by Fine-Tuned GPT Models
AU - Zheng, Zhiling
AU - Alawadhi, Ali H.
AU - Chheda, Saumil
AU - Neumann, S. Ephraim
AU - Rampal, Nakul
AU - Liu, Shengchao
AU - Nguyen, Ha L.
AU - Lin, Yen Hsu
AU - Rong, Zichao
AU - Siepmann, J. Ilja
AU - Gagliardi, Laura
AU - Anandkumar, Anima
AU - Borgs, Christian
AU - Chayes, Jennifer T.
AU - Yaghi, Omar M.
N1 - Publisher Copyright:
© 2023 American Chemical Society.
PY - 2023/12/27
Y1 - 2023/12/27
N2 - We construct a data set of metal-organic framework (MOF) linkers and employ a fine-tuned GPT assistant to propose MOF linker designs by mutating and modifying the existing linker structures. This strategy allows the GPT model to learn the intricate language of chemistry in molecular representations, thereby achieving an enhanced accuracy in generating linker structures compared with its base models. Aiming to highlight the significance of linker design strategies in advancing the discovery of water-harvesting MOFs, we conducted a systematic MOF variant expansion upon state-of-the-art MOF-303 utilizing a multidimensional approach that integrates linker extension with multivariate tuning strategies. We synthesized a series of isoreticular aluminum MOFs, termed Long-Arm MOFs (LAMOF-1 to LAMOF-10), featuring linkers that bear various combinations of heteroatoms in their five-membered ring moiety, replacing pyrazole with either thiophene, furan, or thiazole rings or a combination of two. Beyond their consistent and robust architecture, as demonstrated by permanent porosity and thermal stability, the LAMOF series offers a generalizable synthesis strategy. Importantly, these 10 LAMOFs establish new benchmarks for water uptake (up to 0.64 g g-1) and operational humidity ranges (between 13 and 53%), thereby expanding the diversity of water-harvesting MOFs.
AB - We construct a data set of metal-organic framework (MOF) linkers and employ a fine-tuned GPT assistant to propose MOF linker designs by mutating and modifying the existing linker structures. This strategy allows the GPT model to learn the intricate language of chemistry in molecular representations, thereby achieving an enhanced accuracy in generating linker structures compared with its base models. Aiming to highlight the significance of linker design strategies in advancing the discovery of water-harvesting MOFs, we conducted a systematic MOF variant expansion upon state-of-the-art MOF-303 utilizing a multidimensional approach that integrates linker extension with multivariate tuning strategies. We synthesized a series of isoreticular aluminum MOFs, termed Long-Arm MOFs (LAMOF-1 to LAMOF-10), featuring linkers that bear various combinations of heteroatoms in their five-membered ring moiety, replacing pyrazole with either thiophene, furan, or thiazole rings or a combination of two. Beyond their consistent and robust architecture, as demonstrated by permanent porosity and thermal stability, the LAMOF series offers a generalizable synthesis strategy. Importantly, these 10 LAMOFs establish new benchmarks for water uptake (up to 0.64 g g-1) and operational humidity ranges (between 13 and 53%), thereby expanding the diversity of water-harvesting MOFs.
UR - https://www.scopus.com/pages/publications/85180387563
U2 - 10.1021/jacs.3c12086
DO - 10.1021/jacs.3c12086
M3 - Article
C2 - 38090755
AN - SCOPUS:85180387563
SN - 0002-7863
VL - 145
SP - 28284
EP - 28295
JO - Journal of the American Chemical Society
JF - Journal of the American Chemical Society
IS - 51
ER -