We train a neural network model to predict the full phase space evolution of cosmological N-body simulations. Its success implies that the neural network model is accurately approximating the Green's function expansion that relates the initial conditions of the simulations to its outcome at later times in the deeply nonlinear regime. We test the accuracy of this approximation by assessing its performance on well understood simple cases that have either known exact solutions or well understood expansions. These scenarios include spherical configurations, isolated plane waves, and two interacting plane waves: initial conditions that are very different from the Gaussian random fields used for training. We find our model generalizes well to the...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
We make use of neural networks to accelerate the calculation of power spectra required for the analy...
First-principles-based modelings have been extremely successful in providing crucial insights and pr...
Identifying phase transitions and classifying phases of matter is central to understanding the prope...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
The field of machine learning has drawn increasing interest from various other fields due to the suc...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
We make use of neural networks to accelerate the calculation of power spectra required for the analy...
First-principles-based modelings have been extremely successful in providing crucial insights and pr...
Identifying phase transitions and classifying phases of matter is central to understanding the prope...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
The field of machine learning has drawn increasing interest from various other fields due to the suc...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Criticality can be exactly demonstrated in certain models of brain activity, yet it remains challeng...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...