Comments (5)
Hi @kazewong,
good idea, I'm just wondering how to realize this. We could just add a table to the README with links to all the notebooks.
Other than that, is there a way to show the example notebooks in the documentation, @vincentberenz?
Best regards,
Vincent
from normalizing-flows.
@VincentStimper
There are two ways of doing this.
mkdocs-jupyter
See: https://github.com/danielfrg/mkdocs-jupyter
This allows to add a visual html representation of the notebook in the documentation.
pros: We just need to setup the configuration of mkdocs once, and then things will be updated automatically every time a notebook is modified (or added, or deleted)
cons: This looks nice, but no code can be executed.
effort: I will need to find out how to make a nice layout in the menu, should not be too hard
jupyter-cloud.gwdg.de
See: https://jupyter-cloud.gwdg.de
This is a server on which MPI employees can upload (and make public) notebook.
So we can upload the notebooks there, and provide a page in the documentation linking to them
pros: Code can be executed
cons: We need to reupload manually the notebooks everytime we update them
effort: A bit unclear how to make things public, and if dependencies package can be installed for each user.
Let me know which solution you would prefer
from normalizing-flows.
Hi @vincentberenz,
I don't think the notebooks have to be executable. For this purpose, we already have the Google Colab notebooks. Hence, the first solution sounds just right to me.
Can we leave the notebooks in the current folder outside the package folder? It would be great if you had a look at how to make a nice layout.
Best regards,
Vincent
from normalizing-flows.
Hi @kazewong,
@vincentberenz has added this feature, thanks a lot!
You're welcome to have a look at the current documentation yourself and close the issue if this is what you had in mind.
Best regards,
Vincent
from normalizing-flows.
@vincentberenz @VincentStimper Looks amazing to me. Closing this issue
from normalizing-flows.
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