Understanding the nature and origin of collective excitations in materials is of fundamental importance for unraveling the underlying physics of a many-body system. Excitation spectra are usually obtained by measuring the dynamical structure factor, S(Q, ω), using inelastic neutron or x-ray scattering techniques and are analyzed by comparing the experimental results against calculated predictions. We introduce a data-driven analysis tool which leverages ‘neural implicit representations’ that are specifically tailored for handling spectrographic measurements and are able to efficiently obtain unknown parameters from experimental data via automatic differentiation. In this work, we employ linear spin wave theory simulations to train a machine...
International audienceA data-driven framework is presented for building magneto-elastic machine-lear...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
Simulated neutron spectra from inelastic neutron scattering on the double perovskite PCSMO. The data...
Understanding the nature and origin of collective excitations in materials is of fundamental importa...
Dataset of Linear Spin Wave Theory simulations accompanying the manuscript: Capturing dynamical corr...
Abstract Identifying the magnetic state of materials is of great interest in a wide range of applica...
Single crystal inelastic neutron scattering data contain rich information about the structure and dy...
Quantum materials research requires co-design of theory with experiments and involves demanding simu...
We present a deep machine learning algorithm to extract crystal field (CF) Stevens parameters from ...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
We apply unsupervised learning techniques to classify the different phases of the J₁-J₂ antiferromag...
Complex behavior poses challenges in extracting models from experiment. An example is spin liquid fo...
Complex behavior poses challenges in extracting models from experiment. An example is spin liquid fo...
Code repository for the research paper "Machine Learning Magnetism Classifiers from Atomic Coordinat...
Understanding spin textures in magnetic systems is extremely important to the spintronics and it is ...
International audienceA data-driven framework is presented for building magneto-elastic machine-lear...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
Simulated neutron spectra from inelastic neutron scattering on the double perovskite PCSMO. The data...
Understanding the nature and origin of collective excitations in materials is of fundamental importa...
Dataset of Linear Spin Wave Theory simulations accompanying the manuscript: Capturing dynamical corr...
Abstract Identifying the magnetic state of materials is of great interest in a wide range of applica...
Single crystal inelastic neutron scattering data contain rich information about the structure and dy...
Quantum materials research requires co-design of theory with experiments and involves demanding simu...
We present a deep machine learning algorithm to extract crystal field (CF) Stevens parameters from ...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
We apply unsupervised learning techniques to classify the different phases of the J₁-J₂ antiferromag...
Complex behavior poses challenges in extracting models from experiment. An example is spin liquid fo...
Complex behavior poses challenges in extracting models from experiment. An example is spin liquid fo...
Code repository for the research paper "Machine Learning Magnetism Classifiers from Atomic Coordinat...
Understanding spin textures in magnetic systems is extremely important to the spintronics and it is ...
International audienceA data-driven framework is presented for building magneto-elastic machine-lear...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
Simulated neutron spectra from inelastic neutron scattering on the double perovskite PCSMO. The data...