Mitigating the climate crisis requires a rapid transition towards lower carbon energy. Catalyst materials play a crucial role in the electrochemical reactions involved in a great number of industrial processes key to this transition, such as renewable energy storage and electrofuel synthesis. To reduce the amount of energy spent on such processes, we must quickly discover more efficient catalysts to drive the electrochemical reactions. Machine learning (ML) holds the potential to efficiently model the properties of materials from large amounts of data, and thus to accelerate electrocatalyst design. The Open Catalyst Project OC20 data set was constructed to that end. However, most existing ML models trained on OC20 are still neither scalable...
Friday, February 12, 2021; 3:00 p.m. Remote; Dr. Oleksandr Voznyy, Assistant Professor, Department o...
Two-dimensional materials supported by single atom catalysis (SACs) are foreseen to replace platinum...
The implementation of automation and machine learning surrogatization within closed-loop computation...
The development of machine learned potentials for catalyst discovery has predominantly been focused ...
Large-scale electrification is vital to addressing the climate crisis, but several scientific and te...
The discovery of new catalysts is one of the significant topics of computational chemistry as it has...
Efficient catalyst screening necessitates predictive models for adsorption energy, a key property of...
In the last 50 years, increasing human populations have resulted in three times more fossil fuels co...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
We present the Open MatSci ML Toolkit: a flexible, self-contained, and scalable Python-based framewo...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
The demonstrated success of transfer learning has popularized approaches that involve pretraining mo...
Several screening studies identifying new catalysts for different reactions have been reported over ...
Designing heterogeneous catalysts that have improved activity, selectivity and reduced cost are the ...
The ongoing revolution of the natural sciences by the advent of machine learning and artificial inte...
Friday, February 12, 2021; 3:00 p.m. Remote; Dr. Oleksandr Voznyy, Assistant Professor, Department o...
Two-dimensional materials supported by single atom catalysis (SACs) are foreseen to replace platinum...
The implementation of automation and machine learning surrogatization within closed-loop computation...
The development of machine learned potentials for catalyst discovery has predominantly been focused ...
Large-scale electrification is vital to addressing the climate crisis, but several scientific and te...
The discovery of new catalysts is one of the significant topics of computational chemistry as it has...
Efficient catalyst screening necessitates predictive models for adsorption energy, a key property of...
In the last 50 years, increasing human populations have resulted in three times more fossil fuels co...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
We present the Open MatSci ML Toolkit: a flexible, self-contained, and scalable Python-based framewo...
Machine learning approaches have the potential to approximate Density Functional Theory (DFT) for at...
The demonstrated success of transfer learning has popularized approaches that involve pretraining mo...
Several screening studies identifying new catalysts for different reactions have been reported over ...
Designing heterogeneous catalysts that have improved activity, selectivity and reduced cost are the ...
The ongoing revolution of the natural sciences by the advent of machine learning and artificial inte...
Friday, February 12, 2021; 3:00 p.m. Remote; Dr. Oleksandr Voznyy, Assistant Professor, Department o...
Two-dimensional materials supported by single atom catalysis (SACs) are foreseen to replace platinum...
The implementation of automation and machine learning surrogatization within closed-loop computation...