In this account, we discuss the use of genetic algorithms in the inverse design process of homogeneous catalysts for chemical transformations. We describe the main components of evolutionary experiments, specifically the nature of the fitness function to optimize, the library of molecular fragments from which potential catalysts are assembled, and the settings of the genetic algorithm itself. While not exhaustive, this review summarizes the key challenges and characteristics of our own (i.e., NaviCatGA) and other GAs for the discovery of new catalysts
Biocatalysis is based on the application of natural catalysts for new purposes, for which the enzyme...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
The continuing development of high throughput experiments (HTE) in the field of catalysis has dramat...
This paper uses microfluidics to implement genetic algorithms (GA) to discover new homogeneous catal...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
In this minireview, we overview a computational pipeline developed within the framework of NCCR Cata...
A library of catalysts was designed for asymmetric-hydrogen transfer to acetophenone. At first, the ...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Catalyst discovery is increasingly relying on computational chemistry, and many of the computational...
Genetic algorithm is an optimization technique based on Darwin evolution theory. In last years its a...
Artificial metalloenzymes have received increasing attention over the last decade as a possible solu...
The performance in heterogeneous catalysis is an example of a complex materials function, governed b...
Generating molecules, both in a directed and undirected fashion, is a huge part of the drug discover...
Biocatalysis is based on the application of natural catalysts for new purposes, for which the enzyme...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
The continuing development of high throughput experiments (HTE) in the field of catalysis has dramat...
This paper uses microfluidics to implement genetic algorithms (GA) to discover new homogeneous catal...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
In this minireview, we overview a computational pipeline developed within the framework of NCCR Cata...
A library of catalysts was designed for asymmetric-hydrogen transfer to acetophenone. At first, the ...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Catalyst discovery is increasingly relying on computational chemistry, and many of the computational...
Genetic algorithm is an optimization technique based on Darwin evolution theory. In last years its a...
Artificial metalloenzymes have received increasing attention over the last decade as a possible solu...
The performance in heterogeneous catalysis is an example of a complex materials function, governed b...
Generating molecules, both in a directed and undirected fashion, is a huge part of the drug discover...
Biocatalysis is based on the application of natural catalysts for new purposes, for which the enzyme...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
The continuing development of high throughput experiments (HTE) in the field of catalysis has dramat...