Skip to main content

Fancy Profile UI for jupyterhub-kubespawner

Project description

jupyterhub-fancy-profiles

A react based, fancy implementation of user selectable profiles for use with jupyterhub-kubespawner.

Screenshot showing an image selector

Features

  1. Interpret a profileList given to kubespawner, and render a better looking and more featureful selector. This includes descriptions for various options, as well as better descriptions for allowing users to 'write-in' a choice.

  2. If enabled, interact with a binderhub deployed as a JupyterHub service to allow users to dynamically build images they want to use, without requiring it to be pre-built.

Limitations

  1. While multiple profile_options are supported, only a single profile is supported.

  2. The forms values don't remember their previous state upon refresh

How to use

Using with z2jh

This package can be used with any installation of KubeSpawner, but is most commonly used with an installation of z2jh. It requires installing jupyterhub-fancy-profiles in the hub image used by z2jh.

As a convenience, we build and push docker images that can be automatically used with z2jh!

  1. Look at the list of available tags and find a tag that matches the version of z2jh you are using.

  2. Use this image in the z2jh config. In the values.yaml file you pass to helm, use the following:

    hub:
      image:
        name: quay.io/yuvipanda/z2jh-hub-with-fancy-profiles
        tag: <tag-from-the-list>
      extraConfig:
        01-enable-fancy-profiles: |
          from jupyterhub_fancy_profiles import setup_ui
          setup_ui(c)
    
  3. Run a helm upgrade and you should have fancy profiles enabled!

Using directly with KubeSpawner

After the package is installed, you can have kubespawner use the templates shipped with this package to provide appropriate UI, by adding the following snippet to your jupyterhub_config.py file:

from jupyterhub_fancy_profiles import setup_ui
setup_ui(c)

The setup_ui function will setup all the appropriate config as needed. Currently, it will:

  1. Setup extra templates to be made available to kubespawner, to render the base HTML for profile_list.
  2. Setup extra HTTP handlers, primarily for serving our static assets.

What is in here?

The primary contents are:

  1. jupyterhub_fancy_profiles/templates contains jinja2 templates, primarily HTML for constructing the form itself. This can contain multiple templates that are composed together using all of jinja2's composition features (like include)
  2. src/ contains JS and CSS that are packaged via standard frontend bundling tools (webpack and babel), outputing assets into jupyterhub_fancy_profiles/static/. This allows us to use standard frontend tooling to write JS & CSS - for example, xterm.js can be used without many complications.

Why React?

/* If this file gets over 200 lines of code long (not counting docs / comments), start using a framework

(from the BinderHub JS Source Code)

Dear Reader, the file did get more than 200 lines long, but alas there was no time to start using a framework. Lesson learnt from that is we should use a very lightweight framework right from the start, something mainstream that can attract frontend devs without being so fancy that nobody else can work on it. Given the size and complexity of this - a complex UI but only a single page - plain react without typescript seems the correct choice. We will not make this into a super-heavy, complex application - just a fairly simple one that uses react.

Making a Release

We have automation set up to make releases to PyPI. We should release early and often!

  1. On your local checkout, make sure you are up to date with the main branch

    git checkout main
    git stash
    git pull upstream main # or git pull origin main, as needed
    
  2. Create a new git tag, with the version of the release.

    git tag -a v<version-number>
    

    Leave a simple message here. While ideally a changelog would also be nice, at a minimum simply say Version <version-number>

  3. Push your tag to GitHub

    git push origin --tags
    
  4. That's it! A new release should be on PyPI shortly.

Comparisons to the BinderHub UI

The BinderHub project provides a frontend that also allows end users to build images and launch them. How do you determine when to use that UI vs jupyterhub-fancy-profiles (with Dynamic Image Building integration)?

This project is still young, and these guidelines may change over time.

The primary question is one of intent.

Are you building a persistent JupyterHub with many functions (persistent home directories, multiple profiles for images, resource requirements, strong access control, etc) that also happens to need a way for users to dynamically build their own images? Then use jupyterhub-fancy-profiles with BinderHub integration.

Are you building an ephemeral JupyterHub where users may click a link and that immediately puts them in an ephemeral interactive compute session with a particular environment and particular content? Use the BinderHub UI.

A useful rubric here is to look for persistent home directory storage. If your users want that, you probably want to use jupyterhub-fancy-profiles with BinderHub integration. If not, the BinderHub UI is more likely to be used.

Funding

Funded in part by GESIS in cooperation with NFDI4DS 460234259 and CESSDA.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

jupyterhub_fancy_profiles-0.3.7.tar.gz (1.3 MB view details)

Uploaded Source

Built Distribution

jupyterhub_fancy_profiles-0.3.7-py3-none-any.whl (990.6 kB view details)

Uploaded Python 3

File details

Details for the file jupyterhub_fancy_profiles-0.3.7.tar.gz.

File metadata

File hashes

Hashes for jupyterhub_fancy_profiles-0.3.7.tar.gz
Algorithm Hash digest
SHA256 9b4473727b924a25b1eb9e5aa93ffdb23bc5e4959b618d13a0167ab7051f6d84
MD5 c1ed9430e1a5502e751b617479f91600
BLAKE2b-256 09e193c4fe6db8d7511e17de42210ed957315f09558fad4cfff102359a1fd743

See more details on using hashes here.

Provenance

The following attestation bundles were made for jupyterhub_fancy_profiles-0.3.7.tar.gz:

Publisher: release.yaml on yuvipanda/jupyterhub-fancy-profiles

Attestations:

File details

Details for the file jupyterhub_fancy_profiles-0.3.7-py3-none-any.whl.

File metadata

File hashes

Hashes for jupyterhub_fancy_profiles-0.3.7-py3-none-any.whl
Algorithm Hash digest
SHA256 37a239f49201b1515212f3e02e518b28a924361c10cea379f769ef606ef9c57a
MD5 cb10b0b55ba86284a67365e1f0bd550b
BLAKE2b-256 af80ed7d97fe7d6ff97013e392e1f53f486717c40834126a0d7e5bb2deefce2e

See more details on using hashes here.

Provenance

The following attestation bundles were made for jupyterhub_fancy_profiles-0.3.7-py3-none-any.whl:

Publisher: release.yaml on yuvipanda/jupyterhub-fancy-profiles

Attestations:

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page