Explore projects
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Henning Francke / YAWS
OtherYet Another Borehole SimulatorThermo-hydraulic wellbore simulator built for the geothermal well Groß Schönebeck featuring multisalt-two-phase fluid brine via BrineProp
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geomultisens / gms-index-mediator
GNU General Public License v3.0 onlyR-tree-based in-memory index for fast spatio-temporal queries for the GeoMultiSens platform
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Nima Nooshiri / pyquakeml
GNU General Public License v3.0 onlyLightweight QuakeML data parsing for Python
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sec15pub / Surrogate_playground
GNU Lesser General Public License v2.1 onlyThis is the core of the auto ML approach that does model fitting, validation, and selection mostly using caret interfaces. It was written for automatically finding suitable machine learning models for table regression tasks.
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A QGIS EnMAPBox plugin providing a GUI for the EnMAP processing tools (EnPT).
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Moment tensor inversion exercises for the Training Course "Seismology and Seismic Hazard Assessment", 2018, Accra
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sec15pub / microfacies-explorer
GNU General Public License v3.0 onlyVisual exploration of categorical states in lake sediment cores.
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sec15pub / slivisu
GNU General Public License v3.0 onlyA visual analytics tool to validate simulation models against collected data.
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GFZ's MT repository contains geophysical data sets collected with electromagnetic (EM) experiments. This GitLab project contains a demo data set (DEMO.2018) and code snippets to access the data files.
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Code for Analabs / rst-stick-slipy
GNU General Public License v3.0 or laterSoftware to analyze stick-slipping granular material within the ring shear tester used at Helmholtz Laboratory for Tectonic Modelling (HelTec). This is a Python version of a suite of MatLab scripts also found within this project.
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This is an obsolete repository with instructions and scripts to install MOOSE on GLiC (GFZ Linux Cluster).
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Code for Analabs / Stick Slip Learning
MIT LicenseSuite of scripts to analyze annular shear experiments with a machine learning approach. From a series of experiments at different conditions, specific segments are extracted, features generated and then used as input for a machine learning algorithm.
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This is the abstract booklet for the 10th EGPD 2019.
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Antoine Jacquey / LYNX
GNU Lesser General Public License v2.1 onlyLithosphere dYnamics Numerical toolboX - a MOOSE-based application
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