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In other notebook environments that support rendering ipywidgets interactively, such as nteract, you can use the same underlying ipywidgets support as for vscode: Install jupyter_bokeh and then use pn.extension(comms='ipywidgets'). Ensure you install jupyter_bokeh with pip install jupyter_bokeh or conda install -c bokeh jupyter_bokeh and then enable the extension with pn.extension(comms='vscode').
Miniconda install jupyter notebook code#
Visual Studio Code (VSCode) versions 206 and later support ipywidgets, and Panel objects can be used as ipywidgets since Panel 0.10 thanks to jupyter_bokeh, which means that you can now use Panel components interactively in VSCode. Either way, you should be able to have access to all of Panel’s functionality, though with a larger notebook size than with other notebook technologies that allow display code to be shared across cells. Otherwise you will need to put pn.extension() in each cell where you want to display Panel output. Panel can do this automatically when you first load the extension if you declare that you are running in Colab: pn.extension(comms='colab'). In Google Colaboratory, rendering for each notebook cell is isolated, which means that every cell must reload the Panel extension code separately. Jupyter labextension install / jupyterlab_pyviz Google Colab #