Bayesian inference with probabilistic programming.
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Updated
Dec 22, 2024 - Julia
Bayesian inference with probabilistic programming.
Pytorch implementations of Bayes By Backprop, MC Dropout, SGLD, the Local Reparametrization Trick, KF-Laplace, SG-HMC and more
Uncertainty Toolbox: a Python toolbox for predictive uncertainty quantification, calibration, metrics, and visualization
Awesome resources on normalizing flows.
Bayesian Convolutional Neural Network with Variational Inference based on Bayes by Backprop in PyTorch.
A simple and extensible library to create Bayesian Neural Network layers on PyTorch.
A library for Bayesian neural network layers and uncertainty estimation in Deep Learning extending the core of PyTorch
Master Thesis on Bayesian Convolutional Neural Network using Variational Inference
Gaussian Processes for Experimental Sciences
A Python package for building Bayesian models with TensorFlow or PyTorch
Code for "Infinitely Deep Bayesian Neural Networks with Stochastic Differential Equations"
PyTorch implementation of "Weight Uncertainty in Neural Networks"
A Tensorflow implementation of "Bayesian Graph Convolutional Neural Networks" (AAAI 2019).
Lightning-UQ-Box: Uncertainty Quantification for Neural Networks with PyTorch and Lightning
Uncertainty quantification using Bayesian neural networks in classification (MIDL 2018, CSDA)
PyTorch Implementations of Dropout Variants
Pytorch implementation of Variational Dropout Sparsifies Deep Neural Networks
Bayesian Neural Network in PyTorch
(ICML 2022) Official PyTorch implementation of “Blurs Behave Like Ensembles: Spatial Smoothings to Improve Accuracy, Uncertainty, and Robustness”.
Code for "Depth Uncertainty in Neural Networks" (https://arxiv.org/abs/2006.08437)
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