The algorithm behind particle methods is extremely versatile and used in a variety of applications that range from molecular dynamics to astrophysics. For continuum mechanics applications, the concept of ‘particle’ can be generalized to include discrete portions of solid and liquid matter. This study shows that it is possible to further extend the concept of ‘particle’ to include artificial neurons used in Artificial Intelligence. This produces a new class of computational methods based on ‘particle-neuron duals’ that combines the ability of computational particles to model physical systems and the ability of artificial neurons to learn from data. The method is validated with a multiphysics model of the intestine that autonomously learns ho...
脳型人工知能の実現に向けた新理論の構築に成功 --ヒントは脳のシナプスの「揺らぎ」--. 京都大学プレスリリース. 2022-10-24.Artificial intelligence using n...
Editors: Kohei Nakajima, Ingo Fischer.This book is the first comprehensive book about reservoir comp...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This paper introduces Deep Multiphysics; a common computational framework that has Discrete Multiphy...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
Over the past years, AI methods have gained much interest in particle physics experiments, concernin...
Interacting particle systems play a key role in science and engineering. Access to the governing par...
We present the Neural Physics Engine (NPE), an object-based neural network architecture for learning...
We present an end-to-end framework to learn partial differential equations that brings together init...
Synaptic plasticity allows cortical circuits to learn new tasks and to adapt to changing environment...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
<p>Neural provides machine-learning tools to accelerate and extend atomistic calculations. In versio...
A variety of machine learning problems can be unifiedly viewed as optimizing a set of variables that...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
Thesis: S.B., Massachusetts Institute of Technology, Department of Physics, 2018Cataloged from PDF v...
脳型人工知能の実現に向けた新理論の構築に成功 --ヒントは脳のシナプスの「揺らぎ」--. 京都大学プレスリリース. 2022-10-24.Artificial intelligence using n...
Editors: Kohei Nakajima, Ingo Fischer.This book is the first comprehensive book about reservoir comp...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...
This paper introduces Deep Multiphysics; a common computational framework that has Discrete Multiphy...
We demonstrate that the dynamics of neural networks (NNs) trained with gradient descent and the dyna...
Over the past years, AI methods have gained much interest in particle physics experiments, concernin...
Interacting particle systems play a key role in science and engineering. Access to the governing par...
We present the Neural Physics Engine (NPE), an object-based neural network architecture for learning...
We present an end-to-end framework to learn partial differential equations that brings together init...
Synaptic plasticity allows cortical circuits to learn new tasks and to adapt to changing environment...
The success of the current wave of artificial intelligence can be partly attributed to deep neural n...
<p>Neural provides machine-learning tools to accelerate and extend atomistic calculations. In versio...
A variety of machine learning problems can be unifiedly viewed as optimizing a set of variables that...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
Thesis: S.B., Massachusetts Institute of Technology, Department of Physics, 2018Cataloged from PDF v...
脳型人工知能の実現に向けた新理論の構築に成功 --ヒントは脳のシナプスの「揺らぎ」--. 京都大学プレスリリース. 2022-10-24.Artificial intelligence using n...
Editors: Kohei Nakajima, Ingo Fischer.This book is the first comprehensive book about reservoir comp...
Deep learning has shown great potential for modeling the physical dynamics of complex particle syste...