Learning-aided 3D mapping
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Updated
Nov 24, 2023 - C
Learning-aided 3D mapping
Minimal Implementation of Bayesian Optimization in JAX
A minimal implementation of Gaussian process regression in PyTorch
Library for doing GPR (Gaussian Process Regression) in OCaml. Comes with a command line application.
constrained/unconstrained multi-objective bayesian optimization package.
The STK is a (not so) Small Toolbox for Kriging. Its primary focus is on the interpolation/regression technique known as kriging, which is very closely related to Splines and Radial Basis Functions, and can be interpreted as a non-parametric Bayesian method using a Gaussian Process (GP) prior.
A step-by-step guide for surrogate optimization using Gaussian Process surrogate model
SKBEL - Bayesian Evidential Learning framework built on top of scikit-learn.
Surrogate Final BH properties
Differentiable Gaussian Process implementation for PyTorch
Sparse Spectrum Gaussian Process Regression
Code and data accompanying our work on spatio-thermal depth correction of RGB-D sensors based on Gaussian Process Regression in real-time.
Modern C library handling gaussian processes
Python module providing a framework to trace individual edges in an image using Gaussian process regression.
Gaussian Process Regression for training data with noisy inputs and/or outputs
Interpolate grain boundary properties in a 5 degree-of-freedom sense via a novel distance metric.
Personal reimplementation of some ML algorithms for learning purposes
Modelling stellar activity signals with Gaussian process regression networks
Bayesian Inference. Parallel implementations of DREAM, DE-MC and DRAM.
Multi Kernel Linear Mixed Models for Complex Phenotype Prediction
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