Building-Block Aware Generative Modeling for 3D Crystals of Metal Organic Frameworks
By: Chenru Duan , Aditya Nandy , Sizhan Liu and more
Potential Business Impact:
Designs new materials for better batteries.
Metal-organic frameworks (MOFs) marry inorganic nodes, organic edges, and topological nets into programmable porous crystals, yet their astronomical design space defies brute-force synthesis. Generative modeling holds ultimate promise, but existing models either recycle known building blocks or are restricted to small unit cells. We introduce Building-Block-Aware MOF Diffusion (BBA MOF Diffusion), an SE(3)-equivariant diffusion model that learns 3D all-atom representations of individual building blocks, encoding crystallographic topological nets explicitly. Trained on the CoRE-MOF database, BBA MOF Diffusion readily samples MOFs with unit cells containing 1000 atoms with great geometric validity, novelty, and diversity mirroring experimental databases. Its native building-block representation produces unprecedented metal nodes and organic edges, expanding accessible chemical space by orders of magnitude. One high-scoring [Zn(1,4-TDC)(EtOH)2] MOF predicted by the model was synthesized, where powder X-ray diffraction, thermogravimetric analysis, and N2 sorption confirm its structural fidelity. BBA-Diff thus furnishes a practical pathway to synthesizable and high-performing MOFs.
Similar Papers
EGMOF: Efficient Generation of Metal-Organic Frameworks Using a Hybrid Diffusion-Transformer Architecture
Materials Science
Creates new materials with just the right features.
Mofasa: A Step Change in Metal-Organic Framework Generation
Machine Learning (CS)
Creates new materials to clean air and store gases.
System of Agentic AI for the Discovery of Metal-Organic Frameworks
Materials Science
AI designs new materials that can be made.