Chemical space is routinely explored by machine learning methods to discover interesting molecules, before time-consuming experimental synthesizing is attempted. However, these methods often rely on a graph representation, ignoring 3D information necessary for determining the stability of the molecules. We propose a reinforcement learning (RL) approach for generating molecules in Cartesian coordinates allowing for quantum chemical prediction of the stability. To improve sample-efficiency we learn basic chemical rules from imitation learning (IL) on the GDB-11 database to create an initial model applicable for all stoichiometries. We then deploy multiple copies of the model conditioned on a specific stoichiometry in a RL setting. The models ...
We introduce machine learning models of quantum mechanical observables of atoms in molecules. Instan...
During the last decade, there is an increasing interest in applying deep learning in de novo drug de...
We introduce a machine learning model to predict atomization energies of a diverse set of organic mo...
Automating molecular design using deep reinforcement learning (RL) holds the promise of accelerating...
Computer-aided design of molecules has the potential to disrupt the field of drug and material disco...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Chemical compound space (CCS), the set of all theoretically conceivable combinations of chemical ele...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
This thesis focus on the overlap of first principle quantum methods and machine learning in computat...
The search for new molecules often involves cycles of design-make-test-analyze steps, where new mole...
Abstract This work introduces a method to tune a sequence-based generative model for molecular de no...
The computational prediction of atomistic structure is a long-standing problem in physics, chemistry...
Chemically accurate and comprehensive studies of the virtual space of all possible molecules are sev...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
We introduce machine learning models of quantum mechanical observables of atoms in molecules. Instan...
During the last decade, there is an increasing interest in applying deep learning in de novo drug de...
We introduce a machine learning model to predict atomization energies of a diverse set of organic mo...
Automating molecular design using deep reinforcement learning (RL) holds the promise of accelerating...
Computer-aided design of molecules has the potential to disrupt the field of drug and material disco...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Chemical compound space (CCS), the set of all theoretically conceivable combinations of chemical ele...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
This thesis focus on the overlap of first principle quantum methods and machine learning in computat...
The search for new molecules often involves cycles of design-make-test-analyze steps, where new mole...
Abstract This work introduces a method to tune a sequence-based generative model for molecular de no...
The computational prediction of atomistic structure is a long-standing problem in physics, chemistry...
Chemically accurate and comprehensive studies of the virtual space of all possible molecules are sev...
The training of molecular models of quantum mechanical properties based on statistical machine learn...
We introduce machine learning models of quantum mechanical observables of atoms in molecules. Instan...
During the last decade, there is an increasing interest in applying deep learning in de novo drug de...
We introduce a machine learning model to predict atomization energies of a diverse set of organic mo...