The recently proposed Genetic expert guided learning (GEGL) framework has demonstrated impressive performances on several \textit{de novo} molecular design tasks. Despite the displayed state-of-the art results, the proposed system relies on an expert-designed Genetic expert. Although hand-crafted experts allow to navigate the chemical space efficiently, designing such experts requires a significant amount of effort and might contain inherent biases which can potentially slow down convergence or even lead to sub-optimal solutions. In this research, we propose a novel genetic expert named \textit{InFrag} which is free of design rules and can generate new molecules by combining promising molecular fragments. Fragments are obtained by using an ...
Abstract Evolutionary design has gained significant attention as a useful tool to accelerate the des...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
De novo molecular design attempts to search over the chemical space for molecules with the desired p...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Drug development is a protracted and expensive process. One of the main challenges indrug discovery ...
The design of molecules with bespoke chemical properties has wide-ranging applications in materials ...
In this account, we discuss the use of genetic algorithms in the inverse design process of homogeneo...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
A main challenge in drug discovery is finding molecules with a desirable balance of multiple propert...
© 2020 American Chemical Society. All rights reserved. The discovery of functional molecules is an e...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
A main challenge in drug discovery is finding molecules with a desirable balance of multiple propert...
Generating molecules, both in a directed and undirected fashion, is a huge part of the drug discover...
Computer-based de-novo design of functional molecules is one of the most prominent challenges in che...
Abstract Evolutionary design has gained significant attention as a useful tool to accelerate the des...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
De novo molecular design attempts to search over the chemical space for molecules with the desired p...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
Drug development is a protracted and expensive process. One of the main challenges indrug discovery ...
The design of molecules with bespoke chemical properties has wide-ranging applications in materials ...
In this account, we discuss the use of genetic algorithms in the inverse design process of homogeneo...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
A main challenge in drug discovery is finding molecules with a desirable balance of multiple propert...
© 2020 American Chemical Society. All rights reserved. The discovery of functional molecules is an e...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
A main challenge in drug discovery is finding molecules with a desirable balance of multiple propert...
Generating molecules, both in a directed and undirected fashion, is a huge part of the drug discover...
Computer-based de-novo design of functional molecules is one of the most prominent challenges in che...
Abstract Evolutionary design has gained significant attention as a useful tool to accelerate the des...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
The training of molecular models of quantum mechanical properties based on statistical machine learn...