Kriging Toolkit for Python
-
Updated
Sep 3, 2024 - Python
Kriging Toolkit for Python
GSTools - A geostatistical toolbox: random fields, variogram estimation, covariance models, kriging and much more
Fast radial basis function interpolation for large scale data
Kriging | Poisson Kriging | Variogram Analysis
This repository contains the source code for “Thompson sampling efficient multiobjective optimization” (TSEMO).
Geostatistics in Python
GammaRay: a graphical interface to GSLib and other geomodeling algorithms. *NEW* in May, 6th: Drift analysis.
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.
In this repository I publish the python code, that was part of my master thesis. The thesis can be found here, however its in German though, sry. :/
Kriging estimators for the GeoStats.jl framework
Multifidelity Kriging, Efficient Global Optimization
Mapping of groundwater level for realistic flow flowpaths using semi-automated kriging.
Implementation of image reparation and inpainting using Gaussian Conditional Simulation. Created as part of Unity Technologies research.
Generate stocastic Gaussian realization constrained to a coarse scale image.
Spatial interpolation python package
GMPE-estimation implements a one-stage estimation algorithm to estimate ground-motion prediction equations (GMPE) with spatial correlation. It also quantifies the uncertainty of spatial correlation and intensity measure predictions.
Gaussian process regression
A Rust implementation of the core algorithms of GSTools.
Add a description, image, and links to the kriging topic page so that developers can more easily learn about it.
To associate your repository with the kriging topic, visit your repo's landing page and select "manage topics."