kwankoravich/capturing_CO2_working_cap_MOFs
This project is a part of competition of Thailand Machine Learning for Chemistry Competition (TMLCC 2021) regarding predict the gas adsorption ability of metal-organic frameworks using machine learning.
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Oct 20, 2021
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