Skip to main content

Utilities for writing pandoc filters in python

Project description

A python module for writing pandoc filters

What are pandoc filters?

Pandoc filters are pipes that read a JSON serialization of the Pandoc AST from stdin, transform it in some way, and write it to stdout. They can be used with pandoc (>= 1.12) either using pipes

pandoc -t json -s | ./caps.py | pandoc -f json

or using the --filter (or -F) command-line option.

pandoc --filter ./caps.py -s

For more on pandoc filters, see the pandoc documentation under --filter and the tutorial on writing filters.

For an alternative library for writing pandoc filters, with a more “Pythonic” design, see panflute.

Compatibility

Pandoc 1.16 introduced link and image attributes to the existing caption and target arguments, requiring a change in pandocfilters that breaks backwards compatibility. Consequently, you should use:

  • pandocfilters version <= 1.2.4 for pandoc versions 1.12–1.15, and

  • pandocfilters version >= 1.3.0 for pandoc versions >= 1.16.

Pandoc 1.17.3 (pandoc-types 1.17.*) introduced a new JSON format. pandocfilters 1.4.0 should work with both the old and the new format.

Installing

Run this inside the present directory:

python setup.py install

Or install from PyPI:

pip install pandocfilters

Available functions

The main functions pandocfilters exports are

  • walk(x, action, format, meta)

    Walk a tree, applying an action to every object. Returns a modified tree. An action is a function of the form action(key, value, format, meta), where:

    • key is the type of the pandoc object (e.g. ‘Str’, ‘Para’)

    • value is the contents of the object (e.g. a string for ‘Str’, a list of inline elements for ‘Para’)

    • format is the target output format (as supplied by the format argument of walk)

    • meta is the document’s metadata

    The return of an action is either:

    • None: this means that the object should remain unchanged

    • a pandoc object: this will replace the original object

    • a list of pandoc objects: these will replace the original object; the list is merged with the neighbors of the original objects (spliced into the list the original object belongs to); returning an empty list deletes the object

  • toJSONFilter(action)

    Like toJSONFilters, but takes a single action as argument.

  • toJSONFilters(actions)

    Generate a JSON-to-JSON filter from stdin to stdout

    The filter:

    • reads a JSON-formatted pandoc document from stdin

    • transforms it by walking the tree and performing the actions

    • returns a new JSON-formatted pandoc document to stdout

    The argument actions is a list of functions of the form action(key, value, format, meta), as described in more detail under walk.

    This function calls applyJSONFilters, with the format argument provided by the first command-line argument, if present. (Pandoc sets this by default when calling filters.)

  • applyJSONFilters(actions, source, format="")

    Walk through JSON structure and apply filters

    This:

    • reads a JSON-formatted pandoc document from a source string

    • transforms it by walking the tree and performing the actions

    • returns a new JSON-formatted pandoc document as a string

    The actions argument is a list of functions (see walk for a full description).

    The argument source is a string encoded JSON object.

    The argument format is a string describing the output format.

    Returns a new JSON-formatted pandoc document.

  • stringify(x)

    Walks the tree x and returns concatenated string content, leaving out all formatting.

  • attributes(attrs)

    Returns an attribute list, constructed from the dictionary attrs.

How to use

Most users will only need toJSONFilter. Here is a simple example of its use:

#!/usr/bin/env python

"""
Pandoc filter to convert all regular text to uppercase.
Code, link URLs, etc. are not affected.
"""

from pandocfilters import toJSONFilter, Str

def caps(key, value, format, meta):
  if key == 'Str':
    return Str(value.upper())

if __name__ == "__main__":
  toJSONFilter(caps)

Examples

The examples subdirectory in the source repository contains the following filters. These filters should provide a useful starting point for developing your own pandocfilters.

abc.py

Pandoc filter to process code blocks with class abc containing ABC notation into images. Assumes that abcm2ps and ImageMagick’s convert are in the path. Images are put in the abc-images directory.

caps.py

Pandoc filter to convert all regular text to uppercase. Code, link URLs, etc. are not affected.

blockdiag.py

Pandoc filter to process code blocks with class “blockdiag” into generated images. Needs utils from http://blockdiag.com.

comments.py

Pandoc filter that causes everything between <!-- BEGIN COMMENT --> and <!-- END COMMENT --> to be ignored. The comment lines must appear on lines by themselves, with blank lines surrounding

deemph.py

Pandoc filter that causes emphasized text to be displayed in ALL CAPS.

deflists.py

Pandoc filter to convert definition lists to bullet lists with the defined terms in strong emphasis (for compatibility with standard markdown).

gabc.py

Pandoc filter to convert code blocks with class “gabc” to LaTeX \gabcsnippet commands in LaTeX output, and to images in HTML output.

graphviz.py

Pandoc filter to process code blocks with class graphviz into graphviz-generated images.

lilypond.py

Pandoc filter to process code blocks with class “ly” containing Lilypond notation.

metavars.py

Pandoc filter to allow interpolation of metadata fields into a document. %{fields} will be replaced by the field’s value, assuming it is of the type MetaInlines or MetaString.

myemph.py

Pandoc filter that causes emphasis to be rendered using the custom macro \myemph{...} rather than \emph{...} in latex. Other output formats are unaffected.

plantuml.py

Pandoc filter to process code blocks with class plantuml to images. Needs plantuml.jar from http://plantuml.com/.

ditaa.py

Pandoc filter to process code blocks with class ditaa to images. Needs ditaa.jar from http://ditaa.sourceforge.net/.

theorem.py

Pandoc filter to convert divs with class="theorem" to LaTeX theorem environments in LaTeX output, and to numbered theorems in HTML output.

tikz.py

Pandoc filter to process raw latex tikz environments into images. Assumes that pdflatex is in the path, and that the standalone package is available. Also assumes that ImageMagick’s convert is in the path. Images are put in the tikz-images directory.

API documentation

By default most filters use get_filename4code to create a directory ...-images to save temporary files. This directory doesn’t get removed as it can be used as a cache so that later pandoc runs don’t have to recreate files if they already exist. The directory is generated in the current directory.

If you prefer to have a clean directory after running pandoc filters, you can set an environment variable PANDOCFILTER_CLEANUP to any non-empty value such as 1 which forces the code to create a temporary directory that will be removed by the end of execution.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pandocfilters-1.5.1.tar.gz (8.5 kB view details)

Uploaded Source

Built Distribution

pandocfilters-1.5.1-py2.py3-none-any.whl (8.7 kB view details)

Uploaded Python 2 Python 3

File details

Details for the file pandocfilters-1.5.1.tar.gz.

File metadata

  • Download URL: pandocfilters-1.5.1.tar.gz
  • Upload date:
  • Size: 8.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.7

File hashes

Hashes for pandocfilters-1.5.1.tar.gz
Algorithm Hash digest
SHA256 002b4a555ee4ebc03f8b66307e287fa492e4a77b4ea14d3f934328297bb4939e
MD5 438dc6900e1f62bd333b8e97df691b39
BLAKE2b-256 706f3dd4940bbe001c06a65f88e36bad298bc7a0de5036115639926b0c5c0458

See more details on using hashes here.

File details

Details for the file pandocfilters-1.5.1-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for pandocfilters-1.5.1-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 93be382804a9cdb0a7267585f157e5d1731bbe5545a85b268d6f5fe6232de2bc
MD5 5b88e4a3dbe620cc9b4a6e7e505d953d
BLAKE2b-256 efaf4fbc8cab944db5d21b7e2a5b8e9211a03a79852b1157e2c102fcc61ac440

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page