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nbmanips allows you easily manipulate ipynb files

Project description

nbmanips

PyPI - License PyPI - Python Version PyPI - Wheel PyPI

A collections of utilities to manipulate IPython/Jupyter Notebooks via a python script.

Usage/Examples

Basic usage

A simple example of using nbmanips:

from nbmanips import Notebook

# Read ipynb file
nb = Notebook.read_ipynb("my_notebook.ipynb")

# delete empty cells
nb.select("empty").delete()

# save ipynb file
nb.to_ipynb("new_notebook.ipynb")

Examples of operations you can perform on a Notebook:

  • replace: Replace matching text in the selected cells
  • tag: Add metadata to the selected cells
  • erase: Erase the content of the selected cells
  • delete: Delete the selected cells
  • keep: Kepp the selected cells

Selectors

To select cells on which to apply the previous operations, you can use:

  • The cell number
nb[0].show()

# OR
nb.select(0).show()
  • A slice object
nb[1:6:2].show()

# OR 
selected_cells = slice(1, 6, 2)

nb.show(selected_cells)
  • A predefined selector. Available predefined selectors are the following:

    • code_cells / markdown_cells / raw_cells: Selects cells with the given type
    • contains: Selects Cells containing a certain text.
    • is_empty / empty: Selects empty cells
    • has_output: Checks if the cell has any output
    • has_output_type: Select cells that have a given output_type
    • has_slide_type: Select cells that have a given slide type
    • is_new_slide: Selects cells where a new slide/subslide starts
# Show Markdown Cells
nb.select('markdown_cells').show()

# Show Cells containing the equal sign
nb.select('contains', '=').show()
  • A function that takes a Cell object and returns True if the cell should be selected
# Show Cells with length > 10
nb.select(lambda cell: len(cell.source) > 10).show()
  • A list of Selectors
# Show Empty Markdown Cells
nb.select(['markdown_cells', 'is_empty']).show()

# Show Markdown or Code Cells
nb.select(['markdown_cells', 'code_cells'], type='or').show()

Export Formats

You can export the notebooks to these formats:

  • to_ipynb
  • to_html
  • to_slides (using reveal.js)
  • to_md (to markdown)
  • to_py (to python)
  • to_text (textual representation of the notebook)

Slide manipulations

You can manipulate the slides by tagging which cells to keep and which to skip. The following actions are available:

  • set_slide
  • set_subslide
  • set_skip
  • set_fragment
  • set_notes

A neat trick is to use auto_slide method to automatically create slides out of your notebook:

from nbmanips import Notebook

# Read ipynb file
nb = Notebook.read_ipynb("my_notebook.ipynb")

# Automatically create slides
nb.auto_slide()

# Export to Reveal.js slides (HTML)
nb.to_slides("new_slides.slides.html", theme='beige')

CLI

Show a notebook

To get a readable representation of the notebook

nb show my_notebook.ipynb

To show a subset of the notebook cells, you can perform a select operation:

nb select 0:3 | nb show my_notebook.ipynb

Basic usage

A simple example of using nbmanips via the cli:

# delete empty cells
nb select empty | nb delete my_notebook.ipynb --output new_notebook.ipynb

# Or equivalently:
nbmanips select empty | nbmanips delete my_notebook.ipynb --output new_notebook.ipynb

Export Formats

You can convert a notebook to the following formats:

  • html: nb convert html my_notebook.ipynb --output my_notebook.html
  • slides (using reveal.js): nb convert slides my_notebook.ipynb --output my_notebook.slides.html
  • md (to markdown): nb convert md my_notebook.ipynb --output my_notebook.md
  • py (to python): nb convert py my_notebook.ipynb --output my_notebook.py

Slide manipulations

# Automatically set slides
nb auto-slide my_notebook.ipynb

# Generate a my_notebook.slides.html file
nb convert slides my_notebook.ipynb

Or if you do not wish to modify your original notebook:

# Automatically set slides
nb auto-slide my_notebook.ipynb -o my_temp_notebook.ipynb

# Generate a my_notebook.slides.html file
nb convert slides my_temp_notebook.ipynb -o my_notebook.slides.html

If you need more details you can check the --help option:

nbmanips --help

Roadmap

  • Add Custom Templates

Project details


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