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Getting started materials for DataJoint - with Calcium Imaging, Electrophysiology, Machine Learning examples

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DataJoint interactive tutorial with GitHub Codespace

Interactive tutorials on the DataJoint framework, in Python. Throughout this set of tutorials, you will learn

  • DataJoint basics (~1 hour)

    • Create schemas/tables
    • Table tiers (Lookup, Manual, Imported, Computed)
    • Insert entries and view entries in tables
    • Table dependency and data integrity
    • Query operations
      • Restriction - &
      • Join - *
      • Projection - .proj()
      • Aggregation - .aggr()
    • Fetch operations
      • Retrieve everything
      • Retrieve primary key - .fetch("KEY")
      • Retrieve selective attributes
    • Delete operations
  • DataJoint advanced topics (~1 hour)

    • Imported and Computed tables
    • make() function
    • .populate() for automated computation
    • .populate(reserve_jobs=True) for parallelization

Interactive Tutorial

The easiest way to learn DataJoint is to use the tutorial notebooks within the included interactive environment configured using DevContainer.

Launch Environment

Here are some options that provide a great experience:

  • Cloud-based IDE: (recommended)
    • Launch using GitHub Codespaces using the + option which will Create codespace on main in the codebase repository on your fork with default options. For more control, see the ... where you may create New with options....
    • Build time for a codespace is ~5m. This is done infrequently and cached for convenience.
    • Start time for a codespace is ~30s. This will pull the built codespace from cache when you need it.
    • Tip: Each month, GitHub renews a free-tier quota of compute and storage. Typically we run into the storage limits before anything else since Codespaces consume storage while stopped. It is best to delete Codespaces when not actively in use and recreate when needed. We'll soon be creating prebuilds to avoid larger build times. Once any portion of your quota is reached, you will need to wait for it to be reset at the end of your cycle or add billing info to your GitHub account to handle overages.
    • Tip: GitHub auto names the codespace but you can rename the codespace so that it is easier to identify later.
  • Local IDE:
    • Ensure you have Git
    • Ensure you have Docker
    • Ensure you have VSCode
    • Install the Dev Containers extension
    • git clone the codebase repository and open it in VSCode
    • Use the Dev Containers extension to Reopen in Container (More info in the Getting started included with the extension)

You will know your environment has finished loading once you either see a terminal open related to Running postStartCommand with a final message: Done or the README.md is opened in Preview.

Instructions

  1. We recommend you start by navigating to the notebooks directory on the left panel and go through the 00-Getting_Started/01-DataJoint Basics - Interactive.ipynb Jupyter notebook. Execute the cells in the notebooks to begin your walk through of the tutorial.

  2. Once you are done, see the options available to you in the menu in the bottom-left corner. For example, in Codespace you will have an option to Stop Current Codespace but when running DevContainer on your own machine the equivalent option is Reopen folder locally. By default, GitHub will also automatically stop the Codespace after 30 minutes of inactivity.

If you are new to GitHub and run into any errors, please contact us via email at support@datajoint.com. If you are experienced with GitHub, please create an issue on the upstream repository or if you'd like help contribute, feel free to create a pull request. Please include a thorough explanantion of the error and/or proposed solution.

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Getting started materials for DataJoint - with Calcium Imaging, Electrophysiology, Machine Learning examples

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