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30 materials found
  • zemZemTrainingOrg/PythonIN-86400sec

    Python script Python
  • lessons

    Python for beginners

    • beginner
    Bioinformatics Computer science Python
  • posit-dev/intro-to-shiny-for-python

    Python script Python Shiny
  • scottmreed/molecular_informatics

    Data visualisation Data science Data visualization Python
  • scottmreed/Code_withGPT_tutorial

    Python script Artificial intelligence Python
  • Graylab/DL4Proteins-notebooks

    Machine learning Artificial intelligence Machine learning Protein structure Python
  • posit-dev/py-shiny-workshop

    Python script Python Shiny
  • semacu/data-science-python

    Python script Data science Python
  • chendaniely/positconf2023-academy_python

    Python script Data science Python
  • slott56/building-skills-oo-design-book

    Python script Python
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The training portal for the photon & neutron community is supported through the European Union's Horizon 2020 research and innovation programme, under grant agreement 857641, 823852, the Horizon Europe Framework under grant agreement 101129751, and the consortium DAPHNE4NFDI in the context of the work of the NFDI e.V. under the DFG - project number 460248799.