The re-kindled fascination in machine learning (ML), observed over the last few decades, has also percolated into natural sciences and engineering. ML algorithms are now used in scientific computing, as well as in data-mining and processing. In this paper, we provide a review of the state-of-the-art in ML for computational science and engineering. We discuss ways of using ML to speed up or improve the quality of simulation techniques such as computational fluid dynamics, molecular dynamics, and structural analysis. We explore the ability of ML to produce computationally efficient surrogate models of physical applications that circumvent the need for the more expensive simulation techniques entirely. We also discuss how ML can be used to pro...
Classical molecular dynamics (MD) simulations will be able to reach sampling in the second timescale...
In this P erspective, we outline the progress and potential of machine learning for the physical sci...
Machine learning (ML) methods are of rapidly growing interest for materials modeling, and yet, the u...
The re-kindled fascination in machine learning (ML), observed over the last few decades, has also pe...
The re-kindled fascination in machine learning (ML), observed over the last few decades, has also pe...
Machine learning (ML) is a broad, flexible suite of applied statistics tools combined with optimizat...
International audienceThe field of fluid mechanics is rapidly advancing, driven by unprecedentedvolu...
The use of computational algorithms, implemented on a computer, to extract information from data has...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
Machine learning (ML) methods are being used in almost every conceivable area of electronic structur...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
International audienceMachine learning (ML) encompasses a broad range of algorithms and modeling too...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
This work came out of a CECAM discussion meeting.International audienceMachine learning encompasses ...
Machine learning encompasses tools and algorithms that are now becoming popular in almost all scient...
Classical molecular dynamics (MD) simulations will be able to reach sampling in the second timescale...
In this P erspective, we outline the progress and potential of machine learning for the physical sci...
Machine learning (ML) methods are of rapidly growing interest for materials modeling, and yet, the u...
The re-kindled fascination in machine learning (ML), observed over the last few decades, has also pe...
The re-kindled fascination in machine learning (ML), observed over the last few decades, has also pe...
Machine learning (ML) is a broad, flexible suite of applied statistics tools combined with optimizat...
International audienceThe field of fluid mechanics is rapidly advancing, driven by unprecedentedvolu...
The use of computational algorithms, implemented on a computer, to extract information from data has...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
Machine learning (ML) methods are being used in almost every conceivable area of electronic structur...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
International audienceMachine learning (ML) encompasses a broad range of algorithms and modeling too...
Artificial intelligence (AI) has been referred to as the “fourth paradigm of science,” and as part o...
This work came out of a CECAM discussion meeting.International audienceMachine learning encompasses ...
Machine learning encompasses tools and algorithms that are now becoming popular in almost all scient...
Classical molecular dynamics (MD) simulations will be able to reach sampling in the second timescale...
In this P erspective, we outline the progress and potential of machine learning for the physical sci...
Machine learning (ML) methods are of rapidly growing interest for materials modeling, and yet, the u...