deepGP

Uncertainty model

Software implementing probabilistic models for uncertainty estimation in data analysis

Deep Gaussian Processes in matlab

GitHub

90 stars
30 watching
43 forks
Language: MATLAB
last commit: about 3 years ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
sheffieldml/multigp Software for modeling and prediction with multiple output Gaussian processes 48
sheffieldml/gpmat A Matlab toolbox providing implementations of Gaussian processes and other machine learning tools. 132
sheffieldml/vargplvm A software project implementing Bayesian GP-LVM with variational approximations and automatic dimensionality detection. 74
jaxgaussianprocesses/gpjax Provides a low-level interface to Gaussian process models in JAX for flexible extension and customisation 461
dfm/tinygp A lightweight library for building Gaussian Process models in Python 296
google/edward2 A tool for writing probabilistic models and manipulating their computation 679
jonghyunharrylee/pypcga Software library for inverse modeling of subsurface systems using geostatistical methods 24
da-southampton/redgpt A library providing a pre-trained language model for natural language inference tasks using a transformer architecture. 62
pgm-lab/inferpy A high-level API for probabilistic modeling with a focus on ease of use and scalability 147
google-deepmind/recurrentgemma An implementation of a fast and efficient language model architecture 607
rlouf/mcx Tools and methods for Bayesian deep learning using probabilistic programming. 325
locuslab/e2e-model-learning Develops an approach to learning probabilistic models in stochastic optimization problems 200
matlab-deep-learning/transformer-models An implementation of deep learning transformer models in MATLAB 206
google-deepmind/distrax A library of probability distributions and bijectors with a focus on readability, extensibility, and compatibility with existing frameworks. 536
thepaw/probab A tool for generating and manipulating probabilistic models in code. 20