Learning in infinite dimension with neural operators.
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Updated
Jan 2, 2025 - Python
Learning in infinite dimension with neural operators.
DeepONets, (Fourier) Neural Operators, Physics-Informed Neural Operators, and more in Julia
Code for Characterizing Scaling and Transfer Learning Behavior of FNO in SciML
Neural Operator-Assisted Computational Fluid Dynamics in PyTorch
An extension of Fourier Neural Operator to finite-dimensional input and/or output spaces.
A PyTorch implementation of MedSegDiff, a diffusion probabilistic model designed for medical image segmentation.
Code to reproduce the results in "Conditional score-based diffusion models for Bayesian inference in infinite dimensions", NeurIPS 2023
Code for the paper "The Random Feature Model for Input-Output Maps between Banach Spaces" (SIREV SIGEST 2024, SISC 2021)
Solving multiphysics-based inverse problems with learned surrogates and constraints
Implementation of Fourier Neural Operator from scratch
The first GAN-based tabular data synthesizer integrating the Fourier Neural Operator for global dependency imitation
Code for the paper ``Error Bounds for Learning with Vector-Valued Random Features'' (NeurIPS 2023, Spotlight)
Spectral Physics-informed Finite Operator Learning
[ICPR 2024] FNOReg: Resolution-Robust Medical Image Registration Method Based on Fourier Neural Operator
CFNO is a variant of Fourier Neural Operators that uses a Chebychev expansion in the vertical direction.
Fokker Planck based Data Assimilation method using Fourier Neural Operators as integrator
These works are under Prof. Akshay Joshi, Mechanical Engineering Dept., IISc Bangalore. On FNOs (Fourier Neural Networks) in multi-dimensions for material property analysis, in different circumstances.
Code for ENM5310 Final Project
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