Predicting the CO<sub>2</sub> Capture Capability of Deep Eutectic Solvents and Screening over 1000 of their Combinations Using Machine Learning
Tarek Lemaoui(Khalifa University of Science and Technology), Inas M. AlNashef(Khalifa University of Science and Technology), Manawwer Alam(King Saud University), Ahmad S. Darwish(Khalifa University of Science and Technology), Barbara Ernst(Université de Strasbourg), Fawzi Banat(Khalifa University of Science and Technology), Yacine Benguerba(University Ferhat Abbas of Setif), Soumaya Lemaoui(University Ferhat Abbas of Setif), Abir Boublia(Centre National de la Recherche Scientifique)
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