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📦 poetry-jupyter-plugin

overview

This is a really simple plugin to allow you to install your Poetry virtual environment as a Jupyter kernel. You may wish to do this to keep your dependencies locked down for reproducible notebooks, or to set up a single "data science" notebook for one-off calculations without fiddling about with installing packages globally or dealing with ipykernel directly.

asciicast

getting started

Install the plugin with:

$ poetry self add poetry-jupyter-plugin

Then, from within your poetry project:

$ poetry add ipykernel -G dev
$ poetry jupyter install

Remove the kernelspec with:

$ poetry jupyter remove

configuration

By default, the installed kernel will use the name of the project and a default Poetry icon. To configure these options, add this block to your pyproject.toml:

[tool.jupyter.kernel]
name = "my-cool-kernel"
display = "My cool kernel"
icon = "/path/to/icon.png"

prior art

There are other projects in this space, notably Pathbird's [poetry-kernel]. poetry-kernel installs a single kernelspec globally which then patches the virtualenv based on the specific project folder that you're running Jupyter in. This has some pros and cons over this project.

Pros:

  1. Single kernelspec, avoiding polluting the kernelspec list with lots of specs.
  2. Easy context switching between projects.

Cons:

  1. Notebooks have to be in the same folder (or a subfolder from) as the pyproject.toml folder.
  2. Requires forwarding signals from the launcher into Jupyter, introducing a layer of complexity and is brittle to changes in Jupyter protocol/underlying OS.
  3. Implicit dependency on ipykernel, and may fail to start without it.

In contrast, this project installs one kernelspec per virtualenv and leaves it up to Jupyter to launch the kernel normally without interception. This design decision also allows multiple projects to be based out of one kernel. Additionally, the tool checks for the existence of ipykernel to make sure that the kernel can be installed properly.

who?

This was written by patrick kage.