Large-scale electrification is vital to addressing the climate crisis, but several scientific and technological challenges remain to fully electrify both the chemical industry and transportation. In both of these areas, new electrochemical materials will be critical, but their development currently relies heavily on human-time-intensive experimental trial and error and computationally expensive first-principles, meso-scale and continuum simulations. We present an automated workflow, AutoMat, that accelerates these computational steps by introducing both automated input generation and management of simulations across scales from first principles to continuum device modeling. Furthermore, we show how to seamlessly integrate multi-fidelity pre...
In chemistry, the procurement of data for the training of machine learning models is often an intrac...
Similar to advancements gained from big data in genomics, security, internet of things, and e‐commer...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
Mitigating the climate crisis requires a rapid transition towards lower carbon energy. Catalyst mate...
The implementation of automation and machine learning surrogatization within closed-loop computation...
Design and implementation of efficient and cost-effective electrochemical devices is a complex chall...
There is an increasing need in our society to achieve faster advances in Science to tackle urgent pr...
The ongoing revolution of the natural sciences by the advent of machine learning and artificial inte...
In this work, we introduce a novel workflow that couples robotics to machine-learning for efficient ...
The transition towards carbon-neutral electricity is one of the biggest game changers in addressing ...
Accelerating materials research by integrating automation with artificial intelligence is increasing...
Friday, February 12, 2021; 3:00 p.m. Remote; Dr. Oleksandr Voznyy, Assistant Professor, Department o...
International audienceElectrochemical systems function via interconversion of electric charge and ch...
The discovery and development of novel materials in the field of energy are essential to accelerate ...
With the growing availability of data within various scientific domains, generative models hold enor...
In chemistry, the procurement of data for the training of machine learning models is often an intrac...
Similar to advancements gained from big data in genomics, security, internet of things, and e‐commer...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
Mitigating the climate crisis requires a rapid transition towards lower carbon energy. Catalyst mate...
The implementation of automation and machine learning surrogatization within closed-loop computation...
Design and implementation of efficient and cost-effective electrochemical devices is a complex chall...
There is an increasing need in our society to achieve faster advances in Science to tackle urgent pr...
The ongoing revolution of the natural sciences by the advent of machine learning and artificial inte...
In this work, we introduce a novel workflow that couples robotics to machine-learning for efficient ...
The transition towards carbon-neutral electricity is one of the biggest game changers in addressing ...
Accelerating materials research by integrating automation with artificial intelligence is increasing...
Friday, February 12, 2021; 3:00 p.m. Remote; Dr. Oleksandr Voznyy, Assistant Professor, Department o...
International audienceElectrochemical systems function via interconversion of electric charge and ch...
The discovery and development of novel materials in the field of energy are essential to accelerate ...
With the growing availability of data within various scientific domains, generative models hold enor...
In chemistry, the procurement of data for the training of machine learning models is often an intrac...
Similar to advancements gained from big data in genomics, security, internet of things, and e‐commer...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...