ARC–MOF: A Diverse Database of Metal-Organic Frameworks with DFT
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Diversifying Databases of Metal Organic Frameworks for High-Throughput Computational Screening
ARC–MOF: A Diverse Database of Metal-Organic Frameworks with DFT-Derived Partial Atomic Charges and Descriptors for Machine Learning
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