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Keywords: Foundations of Data Science

and Authors: Anton Nekrutenko

and Resource type: e-learning

7 e-learning materials found
  • e-learning

    Introduction to sequencing with Python (part one)

    • beginner
    Software engineering Foundations of Data Science jupyter-notebook
  • e-learning

    Introduction to sequencing with Python (part two)

    • beginner
    Software engineering Foundations of Data Science jupyter-notebook
  • e-learning

    Data manipulation with Pandas

    • beginner
    Software engineering Foundations of Data Science jupyter-notebook
  • e-learning

    Introduction to sequencing with Python (part three)

    • beginner
    Software engineering Foundations of Data Science jupyter-notebook
  • e-learning

    Introduction to sequencing with Python (part four)

    • beginner
    Software engineering Foundations of Data Science jupyter-notebook
  • e-learning

    A (very) brief history of genomics

    • beginner
    Software engineering Foundations of Data Science
  • e-learning

    Versioning your code and data with git

    • beginner
    Software engineering Foundations of Data Science
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TeSS has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 676559.