ipylivebash

ipylivebash is a library to run shell script in Jupyter with live output.

Example

%%livebash --save log.txt --save-timestamp

find .

Run find . and show the output in the Jupyter notebook and also save to log-${current_timestamp}.txt

%%livebash --ask-confirm --notify
set -e
deploy_script

Before running the deploy_script show a panel to ask for confirmation. Once it is finished, show a notification.

Features

  1. Run shell script in Jupyter with live output
  2. The output in the notebook cell is not saved in the notebook by default
  3. Support to save the output to a file. If the file already exists, it will pick another name automatically.
  4. Support to show a confirmation UI before executing the script
  5. Support to send a notification when the script finishes.

Usage

usage: livebash [-h] [--save OUTPUT_FILE] [--save-timestamp]
                [--line-limit LINE_LIMIT] [--height HEIGHT] [--ask-confirm]
                [--notify] [--keep-cell-output]

optional arguments:
  -h, --help
  --save OUTPUT_FILE    Save output to a file
  --save-timestamp      Add timestamp to the output file name
  --line-limit LINE_LIMIT
                        Restrict the no. of lines to be shown
  --height HEIGHT       Set the height of the output cell
  --ask-confirm         Ask for confirmation before execution
  --notify              Send a notification when the script finished
  --keep-cell-output    Keep the cell output

Options

–save OUTPUT_FILE

Save the output to a file.

If the file name already exists, it will add a suffix to avoid overriding the original file.

–save-timestamp

Add timestamp to the output file name.

–line-limit LINE_LIMIT

If the no. of line output exceed the limit, it may be truncated.
It will show the last 5 lines only.

–height HEIGHT

Set the height of the output cell

–ask-confirm

Ask for confirmation before execution

ask_confirm.png (392×80)

–notify

Send a notification when the script finished

–keep-cell-output

Keep the cell output such that it could be saved together with the notebook.
It can’t be used with other options like –line-limit.

Installation

You can install using pip:

pip install ipylivebash

If you are using Jupyter Notebook 5.2 or earlier, you may also need to enable
the nbextension:

jupyter nbextension enable --py [--sys-prefix|--user|--system] ipylivebash

Development Installation

Create a dev environment:

conda create -n ipylivebash-dev -c conda-forge nodejs yarn python jupyterlab
conda activate ipylivebash-dev

Install the python. This will also build the TS package.

pip install -e ".[test, examples]"

When developing your extensions, you need to manually enable your extensions with the
notebook / lab frontend. For lab, this is done by the command:

jupyter labextension develop --overwrite .
yarn run build

For classic notebook, you need to run:

jupyter nbextension install --sys-prefix --symlink --overwrite --py ipylivebash
jupyter nbextension enable --sys-prefix --py ipylivebash

Note that the --symlink flag doesn’t work on Windows, so you will here have to run
the install command every time that you rebuild your extension. For certain installations
you might also need another flag instead of --sys-prefix, but we won’t cover the meaning
of those flags here.

How to see your changes

Typescript:

If you use JupyterLab to develop then you can watch the source directory and run JupyterLab at the same time in different
terminals to watch for changes in the extension’s source and automatically rebuild the widget.

# Watch the source directory in one terminal, automatically rebuilding when needed
yarn run watch
# Run JupyterLab in another terminal
jupyter lab

After a change wait for the build to finish and then refresh your browser and the changes should take effect.

Python:

If you make a change to the python code then you will need to restart the notebook kernel to have it take effect.

GitHub

View Github