List of resources for mineral exploration and machine learning, generally with useful code and examples.
-
Updated
Nov 5, 2024
List of resources for mineral exploration and machine learning, generally with useful code and examples.
Basin and Landscape Dynamics model
Stratigraphic pick prediction via supervised machine-learning
python port of the USGS bedforms software tool
GebPy is a Python-based, open source tool for the generation of geological data of minerals, rocks and complete lithological sequences. The data can be generated randomly or with respect to user-defined constraints, for example a specific element concentration within minerals and rocks or the order of units within a complete lithological profile.
R package for archaeological stratigraphy and chronological sequences
Badlands workshop & examples
Stratrigraphy simulation solver for the GeoStats.jl framework
Badlands pre & post-processing
Repository of upcoming abstract submission deadlines for geoscience conferences
Python package to simulate wave-dominated shallow-marine environments using Storms (2003)'s BarSim
Markov chain simulator in a sequence stratigraphic framework
Well logs correlation using dynamic time warping
A simple reactjs module for creating graphical representations of stratigraphies
Plot stratigraphic columns with python.
Docker image for badlands
a paleocurrent plotter for plotting a histogram and a rose diagram out of paleocurrent direction values given in azimuth degrees
An R-function that makes plotting geological depth/age data easy
Estimate Age-Depth Models and Transform Data
Add a description, image, and links to the stratigraphy topic page so that developers can more easily learn about it.
To associate your repository with the stratigraphy topic, visit your repo's landing page and select "manage topics."