Applying the representational power of machine learning to the prediction of complex fluid dynamics has been a relevant subject of study for years. However, the amount of available fluid simulation data does not match the notoriously high requirements of machine learning methods. Researchers have typically addressed this issue by generating their own datasets, preventing a consistent evaluation of their proposed approaches. Our work introduces a generation procedure for synthetic multi-modal fluid simulations datasets. By leveraging a GPU implementation, our procedure is also efficient enough that no data needs to be exchanged between users, except for configuration files required to reproduce the dataset. Furthermore, our procedure allows ...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
We propose MVDream, a multi-view diffusion model that is able to generate geometrically consistent m...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
This paper presents a novel generative model to synthesize fluid simulations from a set of reduced p...
Generating large volume hydrodynamical simulations for cosmological observables is a computationally...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
Recent works on learning-based frameworks for Lagrangian (i.e., particle-based) fluid simulation, th...
Figure 1: The obtained results using our regression forest method, capable of simulating millions of...
Optimization and uncertainty quantification have been playing an increasingly important role in comp...
In recent years, deep learning has opened countless research opportunities across many different dis...
This dataset contains 10,000 fluid flow and heat transfer simulations in U-bend shapes. Each of them...
Machine learning is rapidly becoming a core technology for scientific computing, with numerous oppor...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This master thesis explores ways to apply geometric deep learning to the field of numerical simulati...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
We propose MVDream, a multi-view diffusion model that is able to generate geometrically consistent m...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
This paper presents a novel generative model to synthesize fluid simulations from a set of reduced p...
Generating large volume hydrodynamical simulations for cosmological observables is a computationally...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
Recent works on learning-based frameworks for Lagrangian (i.e., particle-based) fluid simulation, th...
Figure 1: The obtained results using our regression forest method, capable of simulating millions of...
Optimization and uncertainty quantification have been playing an increasingly important role in comp...
In recent years, deep learning has opened countless research opportunities across many different dis...
This dataset contains 10,000 fluid flow and heat transfer simulations in U-bend shapes. Each of them...
Machine learning is rapidly becoming a core technology for scientific computing, with numerous oppor...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This master thesis explores ways to apply geometric deep learning to the field of numerical simulati...
Historically, numerical analysis has formed the backbone of supercomputing for decades by applying m...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
We propose MVDream, a multi-view diffusion model that is able to generate geometrically consistent m...
This paper studies the cooperative learning of two generative flow models, in which the two models a...