PaddleScience is SDK and library for developing AI-driven scientific computing applications based on PaddlePaddle.
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Updated
Nov 25, 2024 - Python
PaddleScience is SDK and library for developing AI-driven scientific computing applications based on PaddlePaddle.
Source code of 'Deep transfer operator learning for partial differential equations under conditional shift'.
Datasets and code for results presented in the BOON paper
Code for training and inferring acoustic wave propagation in 3D
An extension of Fourier Neural Operator to finite-dimensional input and/or output spaces.
Official repo for separable operator networks -- extreme-scale operator learning for parametric PDEs.
PyTorch implemention of the Position-induced Transformer for operator learning in partial differential equations
Graph Feedforward Networks: a resolution-invariant generalisation of feedforward networks for graphical data, applied to model order reduction
Official implementation of the paper "Neural Hamilton: Can A.I. Understand Hamiltonian Mechanics?"
Nonlinear model reduction for operator learning
Code for the paper "The Random Feature Model for Input-Output Maps between Banach Spaces" (SIREV SIGEST 2024, SISC 2021)
Benchmarking Surrogates for coupled ODE systems.
Hyperbolic Learning Rate Scheduler
Code for the paper ``Error Bounds for Learning with Vector-Valued Random Features'' (NeurIPS 2023, Spotlight)
RenONet: Multiscale operator learning for complex social systems
Project Portfolio
Code required to reproduce results presented in "Probabilistic Operator Learning for Climate Model Parameterisation"
Fokker Planck based Data Assimilation method using Fourier Neural Operators as integrator
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