sydney-machine-learning / Bayesianneuralnetworks-MCMC-tutorialLinks
Bayesian neural networks via MCMC: tutorial
☆61Updated last year
Alternatives and similar repositories for Bayesianneuralnetworks-MCMC-tutorial
Users that are interested in Bayesianneuralnetworks-MCMC-tutorial are comparing it to the libraries listed below
Sorting:
- Source code of: "Manifold learning-based polynomial chaos expansions for high-dimensional surrogate models".☆38Updated 3 years ago
- ☆200Updated 10 months ago
- PDE-VAE: Variational Autoencoder for Extracting Interpretable Physical Parameters from Spatiotemporal Systems using Unsupervised Learning☆36Updated 4 years ago
- Multi-fidelity Bayesian Optimization via Deep Neural Nets☆35Updated 5 years ago
- Multi-Output Gaussian Process Toolkit☆183Updated 8 months ago
- Python Library for Generalized Gaussian Process Modeling☆27Updated 10 months ago
- ☆44Updated 8 years ago
- Flexible and efficient tools for high-dimensional approximation, scientific machine learning and uncertainty quantification.☆68Updated this week
- The code enables to perform Bayesian inference in an efficient manner through the use of Hamiltonian Neural Networks (HNNs), Deep Neural …☆16Updated 3 years ago
- Code and files related to random side projects☆21Updated 4 years ago
- UQpy (Uncertainty Quantification with python) is a general purpose Python toolbox for modeling uncertainty in physical and mathematical s…☆343Updated 2 months ago
- Numerical Gaussian Processes for Time-dependent and Non-linear Partial Differential Equations☆69Updated 5 years ago
- ☆10Updated 4 years ago
- SINDy (Sparse Identification of Nonlinear Dynamics) algorithms☆79Updated 3 years ago
- ☆40Updated 2 years ago
- An interpretable data-driven framework for building generative reduced order models with embedded uncertainty quantification☆47Updated 2 weeks ago
- ☆50Updated 2 years ago
- mathLab mirror of Python Dynamic Mode Decomposition☆113Updated 11 months ago
- Physics-Constrained Bayesian Neural Network for Fluid Flow Reconstruction with Sparse and Noisy Data☆50Updated 5 years ago
- when using, please cite "Bayesian Physics-Informed Neural Networks for real-world nonlinear dynamical systems", CMAME, https://doi.org/1…☆83Updated 3 years ago
- The public repository about our joint FINN research project☆38Updated 3 years ago
- ☆21Updated 5 years ago
- ☆63Updated last year
- Introduction to Uncertainty Quantification☆258Updated 3 years ago
- A computational framework for finding symbolic expressions from physical datasets.☆61Updated 2 years ago
- Bayesian optimized physics-informed neural network for parameter estimation☆33Updated last year
- AL4PDE: A Benchmark for Active Learning for Neural PDE Solvers☆29Updated 8 months ago
- Example code for paper: Automatic Differentiation to Simultaneously Identify Nonlinear Dynamics and Extract Noise Probability Distributio…☆61Updated 3 years ago
- Code for "Nonlinear stochastic modeling with Langevin regression" J. L. Callaham, J.-C. Loiseau, G. Rigas, and S. L. Brunton☆27Updated 3 years ago
- PySensors is a Python package for sparse sensor placement☆110Updated last week