partial-differential-equationsscientific-machine-learningphysics-informed-neural-networksoperator-learningdeeponetphysics-informed-machine-learningdeep-operator-learning UpdatedNov 2, 2024 Python cpml-au/AlpineGP Star6 Code Issues Pull requests Symbolic regression of physical models via Genetic Programming. ...
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GPINN: Physics-informed neural network with graph embedding. arXiv, 2023. paper Yuyang Miao and Haolin Li. HAMLET: Graph transformer neural operator for partial differential equations. arXiv, 2024. paper Andrey Bryutkin, Jiahao Huang, Zhongying Deng, Guang Yang, Carola-Bibiane Schönlieb, and ...
Learning function operators with neural networks. physics-informed-ml transferlab neural-operators Updated Aug 22, 2024 Python AI4Science-WestlakeU / beno Star 24 Code Issues Pull requests [ICLR24] A boundary-embedded neural operator that incorporates complex boundary shape and inhomogeneous bounda...
Learning in infinite dimension with neural operators. Python2.1k551 neuraloperator/Geo-FNOneuraloperator/Geo-FNOPublic Geometry-Aware Fourier Neural Operator (Geo-FNO) Jupyter Notebook18147 neuraloperator/physics_informedneuraloperator/physics_informedPublic ...
DeepXDE is a library for scientific machine learning and physics-informed learning. DeepXDE includes the following algorithms: physics-informed neural network (PINN) solving different problems solving forward/inverse ordinary/partial differential equations (ODEs/PDEs) [SIAM Rev.] ...
benchmarkdeep-learningpytorchscientific-computingpartial-differential-equationsnavier-stokespdepde-solvernavier-stokes-equationsfnocnoneural-operatorml4physicsneural-operatorsml4science UpdatedApr 27, 2024 Python Python script solving the Burgers' equation (équation de Burgers) 1D by using FFT pseudo-spectral...
Universal Physics Informed Neural Network (UPINN) applied on Burger's Equation: ∂u∂t=−u∂u∂x+ν∂2u∂x2,ν=1100π,u(x,0)=−sin(πx) where the differential operator −u∂u∂x is assumed to be unknown and is approximated by a Neural Network F(u→;θF). ...
many-body-physics Star Here are 64 public repositories matching this topic... Language: All Sort: Most stars GiggleLiu / marburg Star 95 Code Issues Pull requests physics meets neural networks deep-learning monte-carlo quantum-mechanics many-body-physics Updated Nov 23, 2018 Jupyter Notebook ...
ode chemical-reaction-networks fully-connected-network surrogate-models neuralode operator-learning deeponet Updated Dec 3, 2024 Python Xiangjun-Huang / training_stiff_NODE_in_WW_modelling Star 2 Code Issues Pull requests Training stiff NODE in data-driven wastewater process modelling data-driven...