International audienceElectrochemical systems function via interconversion of electric charge and chemical species and represent promising technologies for our cleaner, more sustainable future. However, their development time is fundamentally limited by our ability to identify new materials and understand their electrochemical response. To shorten this time frame, we need to switch from the trial-and-error approach of finding useful materials to a more selective process by leveraging model predictions. Machine learning (ML) offers data-driven predictions and can be helpful. Herein we ask if ML can revolutionize the development cycle from decades to a few years. We outline the necessary characteristics of such ML implementations. Instead of ...
The electrochemical series is a useful tool in electrochemistry, but its effectiveness in materials ...
Chemical engineers rely on models for design, research, and daily decision-making, often with potent...
Machine learning (ML) is a broad, flexible suite of applied statistics tools combined with optimizat...
International audienceElectrochemical systems function via interconversion of electric charge and ch...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
Design and implementation of efficient and cost-effective electrochemical devices is a complex chall...
The transformation of the chemical industry to renewable energy and feedstock supply requires new pa...
Lithium-ion batteries (LIBs) are vital energy-storage devices in modern society. However, the perfor...
Machine-learning (ML) techniques have rapidly found applications in many domains of materials chemis...
The molecular structures synthesizable by organic chemists dictate the molecular functions they can ...
Data science, hailed as the fourth paradigm of science, is a rapidly growing field which has served ...
Similar to advancements gained from big data in genomics, security, internet of things, and e‐commer...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Chemical Engineering, 2018.Cata...
In this P erspective, we outline the progress and potential of machine learning for the physical sci...
The electrochemical series is a useful tool in electrochemistry, but its effectiveness in materials ...
Chemical engineers rely on models for design, research, and daily decision-making, often with potent...
Machine learning (ML) is a broad, flexible suite of applied statistics tools combined with optimizat...
International audienceElectrochemical systems function via interconversion of electric charge and ch...
International audienceAdvances in machine learning (ML) provide the means to bypass bottlenecks in t...
Design and implementation of efficient and cost-effective electrochemical devices is a complex chall...
The transformation of the chemical industry to renewable energy and feedstock supply requires new pa...
Lithium-ion batteries (LIBs) are vital energy-storage devices in modern society. However, the perfor...
Machine-learning (ML) techniques have rapidly found applications in many domains of materials chemis...
The molecular structures synthesizable by organic chemists dictate the molecular functions they can ...
Data science, hailed as the fourth paradigm of science, is a rapidly growing field which has served ...
Similar to advancements gained from big data in genomics, security, internet of things, and e‐commer...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Chemical Engineering, 2018.Cata...
In this P erspective, we outline the progress and potential of machine learning for the physical sci...
The electrochemical series is a useful tool in electrochemistry, but its effectiveness in materials ...
Chemical engineers rely on models for design, research, and daily decision-making, often with potent...
Machine learning (ML) is a broad, flexible suite of applied statistics tools combined with optimizat...