Since their introduction in 1949 Feynman's diagrams have proven over time to be the most precise and intuitive way of approaching quantum field theory, quantum statistical mechanics, and many-body physics. Feynman's diagrams approach is used in many physical problems, as they are able to simplify complex formalism and provide efficient tools for numerical simulations. The Diagrammatic Monte Carlo (DMC) technique is one such computational methods, which stands tall among the most precise approximation-free Markov Chain integration methods. Still, As all Monte Carlo approaches, the main limitation of DMC is the huge computational cost. Thus, in this thesis work, we aimed to reduce the computational time by proposing new ways of constructi...
AbstractDiagrammatic Monte Carlo (DiagMC) is a numeric technique that allows one to calculate quanti...
The recent introduction of machine learning techniques, especially normalizing flows, for the sampli...
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...
Diagrammatic Monte Carlo (DiagMC) is a numeric technique that allows one to calculate quantities spe...
The bold diagrammatic Monte Carlo (BDMC) method performs an unbiased sampling of Feyn- man\u27s diag...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
An acceleration of continuous time quantum Monte Carlo (CTQMC) methods is a potentially interesting ...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
We examine the zero-temperature Metropolis Monte Carlo (MC) algorithm as a tool for training a neura...
Na przykładzie dwuwymiarowego modelu Isinga pokazujemy, że w algorytmach typu Markov Chain Monte Car...
Differentiable programming has emerged as a key programming paradigm empowering rapid developments o...
Markov Chain Monte Carlo (MCMC) methods are a class of algorithms for sampling from a desired probab...
In the wake of the growing popularity of machine learning in particle physics, this work finds a new...
AbstractDiagrammatic Monte Carlo (DiagMC) is a numeric technique that allows one to calculate quanti...
The recent introduction of machine learning techniques, especially normalizing flows, for the sampli...
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...
Diagrammatic Monte Carlo (DiagMC) is a numeric technique that allows one to calculate quantities spe...
The bold diagrammatic Monte Carlo (BDMC) method performs an unbiased sampling of Feyn- man\u27s diag...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
An acceleration of continuous time quantum Monte Carlo (CTQMC) methods is a potentially interesting ...
We describe a multi-disciplinary project to use machine learning techniques based on neural networks...
We examine the zero-temperature Metropolis Monte Carlo (MC) algorithm as a tool for training a neura...
Na przykładzie dwuwymiarowego modelu Isinga pokazujemy, że w algorytmach typu Markov Chain Monte Car...
Differentiable programming has emerged as a key programming paradigm empowering rapid developments o...
Markov Chain Monte Carlo (MCMC) methods are a class of algorithms for sampling from a desired probab...
In the wake of the growing popularity of machine learning in particle physics, this work finds a new...
AbstractDiagrammatic Monte Carlo (DiagMC) is a numeric technique that allows one to calculate quanti...
The recent introduction of machine learning techniques, especially normalizing flows, for the sampli...
Monte Carlo (MC) simulations are essential computational approaches with widespread use throughout a...