Abstract Physics‐driven discovery in an autonomous experiment has emerged as a dream application of machine learning in physical sciences. Here, this work develops and experimentally implements a deep kernel learning (DKL) workflow combining the correlative prediction of the target functional response and its uncertainty from the structure, and physics‐based selection of acquisition function, which autonomously guides the navigation of the image space. Compared to classical Bayesian optimization (BO) methods, this approach allows to capture the complex spatial features present in the images of realistic materials, and dynamically learn structure–property relationships. In combination with the flexible scalarizer function that allows to ascr...
The synthesis quality of artificial inorganic nanocrystals is most often assessed by transmission el...
8 pags, 8 figsThe possibility has recently been reported of using spatially resolved electron energy...
Challenging interdisciplinary applications inspire new methodological developments in data understan...
Physics-driven discovery in an autonomous experiment has emerged as a dream application of machine l...
Enabling atomic-precision mapping and manipulation of surfaces, scanning probe microscopy requires c...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
Determination of nanoparticle size and size distribution is important because these key parameters d...
This doctoral thesis covers some of my advances in electron microscopy with deep learning. Highlight...
Funding: UK Engineering and Physical Sciences Research Council through grant EP/P030017/1.Deep learn...
In computational imaging systems (e.g. tomographic systems, computational optics, magnetic resonance...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
Recent progress in machine learning methods, and the emerging availability of programmable interface...
Abstract Machine learning (ML) has become critical for post-acquisition data analysis in (scanning) ...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Scanning transmission electron microscopy (STEM) has emerged as a uniquely powerful tool for structu...
The synthesis quality of artificial inorganic nanocrystals is most often assessed by transmission el...
8 pags, 8 figsThe possibility has recently been reported of using spatially resolved electron energy...
Challenging interdisciplinary applications inspire new methodological developments in data understan...
Physics-driven discovery in an autonomous experiment has emerged as a dream application of machine l...
Enabling atomic-precision mapping and manipulation of surfaces, scanning probe microscopy requires c...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
Determination of nanoparticle size and size distribution is important because these key parameters d...
This doctoral thesis covers some of my advances in electron microscopy with deep learning. Highlight...
Funding: UK Engineering and Physical Sciences Research Council through grant EP/P030017/1.Deep learn...
In computational imaging systems (e.g. tomographic systems, computational optics, magnetic resonance...
Advances in plasmonic materials and devices have given rise to a variety of applications in photocat...
Recent progress in machine learning methods, and the emerging availability of programmable interface...
Abstract Machine learning (ML) has become critical for post-acquisition data analysis in (scanning) ...
Experimental physicists explore the fundamental nature of the universe by probing the properties of ...
Scanning transmission electron microscopy (STEM) has emerged as a uniquely powerful tool for structu...
The synthesis quality of artificial inorganic nanocrystals is most often assessed by transmission el...
8 pags, 8 figsThe possibility has recently been reported of using spatially resolved electron energy...
Challenging interdisciplinary applications inspire new methodological developments in data understan...