Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout all areas of science. We present a method for accelerating lattice MC simulations using fully connected and convolutional artificial neural networks that are trained to perform local and global moves in configuration space, respectively. Both networks take local spacetime MC configurations as input features and can, therefore, be trained using samples generated by conventional MC runs on smaller lattices before being utilized for simulations on larger systems. This approach is benchmarked for the case of determinant quantum Monte Carlo (DQMC) studies of the two-dimensional Holstein model. We find that both artificial neural networks are capabl...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
An acceleration of continuous time quantum Monte Carlo (CTQMC) methods is a potentially interesting ...
Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout a...
Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout a...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
International audienceWe introduce methodologies for highly scalable quantum Monte Carlo simulations...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
An acceleration of continuous time quantum Monte Carlo (CTQMC) methods is a potentially interesting ...
Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout a...
Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout a...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
International audienceWe introduce methodologies for highly scalable quantum Monte Carlo simulations...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
Numerical lattice quantum chromodynamics studies of the strong interaction are important in many asp...
An acceleration of continuous time quantum Monte Carlo (CTQMC) methods is a potentially interesting ...