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Scientific topics: Source control

and Licence: MIT License

and Include disabled: true

1 material found
  • Book, Coding, Computer Science, Computer Software, Course materials, case studies, course materials, Data Science, Documentation, E-Learning, E-learning, Education, Educational Resource, e-Learning, e-learning, educational materials, examples, FREE online course, How-to guide, handbook, hands-on tutorial, Jupyter notebook, knowledgebase, Online material, Open educational resource, online course, online modules, online tutorial, Programming, Training materials, Tutorial, tutorial, tutorials, workflow

    DES RAP Book: Reproducible Discrete-Event Simulation in Python and R

    •• Intermediate
    Computer science Data visualisation Data management FAIR data Informatics Open science Statistics and probability Version control Workflows Automated testing …
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