Machine learning has the potential to dramatically accelerate high-throughput approaches to materials design, as demonstrated by successes in biomolecular design and hard materials design. However, in the search for new soft materials exhibiting properties and performance beyond those previously achieved, machine learning approaches are frequently limited by two shortcomings. First, because they are intrinsically interpolative, they are better suited to the optimization of properties within the known range of accessible behavior than to the discovery of new materials with extremal behavior. Second, they require large pre-existing data sets, which are frequently unavailable and prohibitively expensive to produce. Here we describe a new strat...
Abstract Machine learning models of material properties accelerate materials discovery, reproducing ...
During last decades the efficiency of the different architectures of evolutionary algorithms in comp...
Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by ...
Materials science is undergoing a revolution, generating valuable new materials such as flexible sol...
A crucial task in polymer chemistry is the formulation of materials which satisfy strict property co...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
The design of engineering materials satisfying different performance criteria is an important proble...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
Designing complex, dynamic yet multi-functional materials and devices is challenging because the des...
Materials science is of fundamental significance to science and technology because our industrial ba...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by ...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Abstract Evolutionary design has gained significant attention as a useful tool to accelerate the des...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Abstract Machine learning models of material properties accelerate materials discovery, reproducing ...
During last decades the efficiency of the different architectures of evolutionary algorithms in comp...
Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by ...
Materials science is undergoing a revolution, generating valuable new materials such as flexible sol...
A crucial task in polymer chemistry is the formulation of materials which satisfy strict property co...
Challenges in natural sciences can often be phrased as optimization problems. Machine learning techn...
The design of engineering materials satisfying different performance criteria is an important proble...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
Designing complex, dynamic yet multi-functional materials and devices is challenging because the des...
Materials science is of fundamental significance to science and technology because our industrial ba...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by ...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Abstract Evolutionary design has gained significant attention as a useful tool to accelerate the des...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Abstract Machine learning models of material properties accelerate materials discovery, reproducing ...
During last decades the efficiency of the different architectures of evolutionary algorithms in comp...
Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by ...