MABeeskow / GebPy

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.

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Python 3.7 License: LGPL v3

developed by Maximilian Alexander Beeskow

GebPy is an open-source, Python-based tool for the synthetic generation of geological data with focus on minerals, rocks and stratigraphy. The main assumption of GepPy is that all rock properties are determined by the mineral assemblage besides structural features. GebPy can be used for educational purposes, for example by the generation of mineralogical data that could be then further investigated in specific diagrams or in well log analysis courses after creating different stratigraphic sequences.
GebPy is a one-man project and can still contain some technical bugs or some wrong assumptions, but it is driven by a huge motivation and has the goal to improve the knowledge and understanding of different geological aspects that are (actually) focused on mineralogy, rocks and stratigraphy.

πŸš€ Installation

Actually, GebPy can only be installed by cloning this repository. An alternative solution will be found in the future.

πŸ’» Resources

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πŸ’­ Citing GebPy

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πŸ’Ž Mineral data

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πŸͺ¨ Rock data

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🏞️ Stratigraphic data

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πŸ“š References

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About

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.

License:GNU Lesser General Public License v3.0


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