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Combining machine learning and computational chemistry for predictive insights into chemical systems
Machine learning models are poised to make a transformative impact on chemical sciences
by dramatically accelerating computational algorithms and amplifying insights available from …
by dramatically accelerating computational algorithms and amplifying insights available from …
Computational discovery of transition-metal complexes: from high-throughput screening to machine learning
Transition-metal complexes are attractive targets for the design of catalysts and functional
materials. The behavior of the metal–organic bond, while very tunable for achieving target …
materials. The behavior of the metal–organic bond, while very tunable for achieving target …
Understanding the diversity of the metal-organic framework ecosystem
Millions of distinct metal-organic frameworks (MOFs) can be made by combining metal
nodes and organic linkers. At present, over 90,000 MOFs have been synthesized and over …
nodes and organic linkers. At present, over 90,000 MOFs have been synthesized and over …
Big-data science in porous materials: materials genomics and machine learning
By combining metal nodes with organic linkers we can potentially synthesize millions of
possible metal–organic frameworks (MOFs). The fact that we have so many materials opens …
possible metal–organic frameworks (MOFs). The fact that we have so many materials opens …
The role of machine learning in the understanding and design of materials
Develo** algorithmic approaches for the rational design and discovery of materials can
enable us to systematically find novel materials, which can have huge technological and …
enable us to systematically find novel materials, which can have huge technological and …
High-throughput screening of covalent organic frameworks for carbon capture using machine learning
Postcombustion carbon capture provides a high-potential pathway to reduce anthropogenic
CO2 emissions in the short term. In this respect, nanoporous materials, such as covalent …
CO2 emissions in the short term. In this respect, nanoporous materials, such as covalent …
Molecular and heterogeneous water oxidation catalysts: recent progress and joint perspectives
The development of reliable water oxidation catalysts (WOCs) is essential for implementing
artificial photosynthesis on a large technological scale. WOC research has evolved into two …
artificial photosynthesis on a large technological scale. WOC research has evolved into two …
Machine learning reveals key ion selectivity mechanisms in polymeric membranes with subnanometer pores
Designing single-species selective membranes for high-precision separations requires a
fundamental understanding of the molecular interactions governing solute transport. Here …
fundamental understanding of the molecular interactions governing solute transport. Here …
Automated in silico design of homogeneous catalysts
M Foscato, VR Jensen - ACS catalysis, 2020 - ACS Publications
Catalyst discovery is increasingly relying on computational chemistry, and many of the
computational tools are currently being automated. The state of this automation and the …
computational tools are currently being automated. The state of this automation and the …
Accurate multiobjective design in a space of millions of transition metal complexes with neural-network-driven efficient global optimization
The accelerated discovery of materials for real world applications requires the achievement
of multiple design objectives. The multidimensional nature of the search necessitates …
of multiple design objectives. The multidimensional nature of the search necessitates …