We propose a parallel (distributed) version of the spectral proper ortho...
This study focuses on the use of model and data fusion for improving the...
Differentiable fluid simulators are increasingly demonstrating value as
...
Deep learning is increasingly becoming a promising pathway to improving ...
Motivated by the computational difficulties incurred by popular deep lea...
Classical problems in computational physics such as data-driven forecast...
The goal of this work is to address two limitations in autoencoder-based...
Data-driven turbulence modeling is experiencing a surge in interest foll...
Deep reinforcement learning (DRL) is a promising outer-loop intelligence...
Deep neural networks are powerful predictors for a variety of tasks. How...
We aim to reconstruct the latent space dynamics of high dimensional syst...
We use Gaussian stochastic weight averaging (SWAG) to assess the model-f...
Wind farm design primarily depends on the variability of the wind turbin...
We introduce PyParSVD[https://github.com/Romit-Maulik/PyParSVD], a
Pytho...
In this work, we propose a method to learn probability distributions usi...
In this article, we outline the development of a general-purpose Python-...
Achieving accurate and robust global situational awareness of a complex
...
Non-intrusive reduced-order models (ROMs) have recently generated
consid...
Rapid simulations of advection-dominated problems are vital for multiple...