Metadata-Version: 2.1
Name: spacy-conll
Version: 3.0.0rc3
Summary: A custom pipeline component for spaCy that can convert any parsed Doc and its sentences into CoNLL-U format. Also provides a command line entry point.
Home-page: https://github.com/BramVanroy/spacy_conll
Author: Bram Vanroy
Author-email: bramvanroy@hotmail.com
License: BSD 2
Project-URL: Bug Reports, https://github.com/BramVanroy/spacy_conll/issues
Project-URL: Source, https://github.com/BramVanroy/spacy_conll
Keywords: nlp spacy spacy-extension conll conllu tagging parsing stanza spacy_stanza udpipe spacy_udpipe
Platform: UNKNOWN
Classifier: Development Status :: 5 - Production/Stable
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Scientific/Engineering
Classifier: Topic :: Text Processing
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Operating System :: OS Independent
Requires-Python: >=3.6
Description-Content-Type: text/x-rst
Requires-Dist: spacy (>=3.0.1)
Requires-Dist: dataclasses ; python_version < "3.7"
Provides-Extra: all
Requires-Dist: pandas ; extra == 'all'
Requires-Dist: spacy-udpipe (>=1.0.0) ; extra == 'all'
Requires-Dist: spacy-stanza (>=1.0.0) ; extra == 'all'
Provides-Extra: dev
Requires-Dist: pandas ; extra == 'dev'
Requires-Dist: spacy-udpipe (>=1.0.0) ; extra == 'dev'
Requires-Dist: spacy-stanza (>=1.0.0) ; extra == 'dev'
Requires-Dist: pytest ; extra == 'dev'
Requires-Dist: flake8 ; extra == 'dev'
Requires-Dist: isort ; extra == 'dev'
Requires-Dist: black ; extra == 'dev'
Requires-Dist: pygments ; extra == 'dev'
Provides-Extra: parsers
Requires-Dist: spacy-udpipe (>=1.0.0) ; extra == 'parsers'
Requires-Dist: spacy-stanza (>=1.0.0) ; extra == 'parsers'
Provides-Extra: pd
Requires-Dist: pandas ; extra == 'pd'

===========================================================
Parsing to CoNLL with spaCy, spacy-stanza, and spacy-udpipe
===========================================================

**This is a pre-release for the upcoming v3 of the library. If you experience any problems with it, please open a new**
`issue`_

**The last version to support spaCy v2 can be found** `here`_

This module allows you to parse text into `CoNLL-U format`_. You can use it as a command line tool, or embed it in your
own scripts by adding it as a custom pipeline component to a spaCy, ``spacy-stanza``, or ``spacy-udpipe``
pipeline. It also provides an easy-to-use function to quickly initialize a parser as well as a ConllParser class
with built-in functionality to parse files or text.

Note that the module simply takes a parser's output and puts it in a formatted string adhering to the linked ConLL-U
format. The output tags depend on the spaCy model used. If you want Universal Depencies tags as output, I advise you to
use this library in combination with `spacy-stanza`_, which is a spaCy interface using ``stanza`` and its
models behind the scenes. Those models use the Universal Dependencies formalism and yield state-of-the-art performance.
``stanza`` is a new and improved version of ``stanfordnlp``. As an alternative to the Stanford models, you can use the
spaCy wrapper for ``UDPipe``, `spacy-udpipe`_, which is slightly less accurate than ``stanza`` but much faster.

.. _`issue`: https://github.com/BramVanroy/spacy_conll/issues
.. _`here`: https://github.com/BramVanroy/spacy_conll/tree/v2.1.0
.. _`CoNLL-U format`: https://universaldependencies.org/format.html
.. _`spacy-stanza`: https://github.com/explosion/spacy-stanza
.. _`spacy-udpipe`: https://github.com/TakeLab/spacy-udpipe

Installation
============
By default, this package automatically installs only `spaCy`_ as dependency.

Because `spaCy's models`_ are not necessarily trained on Universal Dependencies conventions, their output labels are
not UD either. By using ``spacy-stanza`` or ``spacy-udpipe``, we get the easy-to-use interface of spaCy as a wrapper
around ``stanza`` and ``UDPipe`` respectively, including their models that *are* trained on UD data.

**NOTE**: ``spacy-stanza`` and ``spacy-udpipe`` are not installed automatically as a dependency
for this library, because it might be too much overhead for those who don't need UD. If you wish to use their
functionality (e.g. better performance, real UD output), you have to install them manually or use one of the available
options as described below.

If you want to retrieve CoNLL info as a ``pandas`` DataFrame, this library will automatically export it if it detects
that ``pandas`` is installed. See the Usage section for more.

To install the library, simply use pip.

.. code:: bash

  pip install spacy_conll --pre

A number of options are available to make installation of additional dependencies easier:

.. code:: bash

  # include spacy-stanza and spacy-udpipe
  pip install spacy_conll[parsers] --pre
  # include pandas
  pip install spacy_conll[pd] --pre
  # include pandas, spacy-stanza and spacy-udpipe
  pip install spacy_conll[all] --pre
  # include pandas, spacy-stanza and spacy-udpipe and additional libaries for testing and formatting
  pip install spacy_conll[dev] --pre

.. _spaCy: https://spacy.io/usage/models#section-quickstart
.. _spaCy's models: https://spacy.io/usage/models


Usage
=====
When the :code:`ConllFormatter` is added to a spaCy pipeline, it adds CoNLL properties for :code:`Token`, sentence
:code:`Span` and :code:`Doc`. Note that arbitrary :code:`Span`'s are not included and do not receive these properties.

On all three of these levels, two custom properties are exposed by default, :code:`._.conll` and its string
representation :code:`._.conll_str`. However, if you have ``pandas`` installed, then :code:`._.conll_pd` will be added
automatically, too!

- :code:`._.conll`: raw CoNLL format
    - in :code:`Token`: a dictionary containing all the expected CoNLL fields as keys and the parsed properties as
      values.
    - in sentence :code:`Span`: a list of its tokens' :code:`._.conll` dictionaries (list of dictionaries).
    - in a :code:`Doc`: a list of its sentences' :code:`._.conll` lists (list of list of dictionaries).
- :code:`._.conll_str`: string representation of the CoNLL format
    - in :code:`Token`: tab-separated representation of the contents of the CoNLL fields ending with a newline.
    - in sentence :code:`Span`: the expected CoNLL format where each row represents a token. When
      :code:`ConllFormatter(include_headers=True)` is used, two header lines are included as well, as per the
      `CoNLL format`_.
    - in :code:`Doc`: all its sentences' :code:`._.conll_str` combined and separated by new lines.
- :code:`._.conll_pd`: ``pandas`` representation of the CoNLL format
    - in :code:`Token`: a :code:`Series` representation of this token's CoNLL properties.
    - in sentence :code:`Span`: a :code:`DataFrame` representation of this sentence, with the CoNLL names as column
      headers.
    - in :code:`Doc`: a concatenation of its sentences' :code:`DataFrame`'s, leading to a new a :code:`DataFrame` whose
      index is reset.


.. _`CoNLL format`: https://universaldependencies.org/format.html#sentence-boundaries-and-comments

You can use ``spacy_conll`` in your own Python code as a custom pipeline component, or you can use the built-in
command-line script which offers typically needed functionality. See the following section for more.

In Python
---------
This library offers the :code:`ConllFormatter` class which serves as a custom spaCy pipeline component. It can be
instantiated as follows. It is important that you import ``spacy_conll`` before adding the pipe!

.. code:: python

    import spacy_conll
    nlp = <initialise parser>
    nlp.add_pipe("conll_formatter", last=True)

Because this library supports different spaCy wrappers (``spacy``, ``stanza``, and ``udpipe``), a
convenience function is available as well. With :code:`utils.init_parser` you can easily instantiate a parser with a
single line. You can find the function's signature below. Have a look at the `source code`_ to read more about all the
possible arguments or try out the `examples`_.

**NOTE**: :code:`is_tokenized` does not work for ``spacy-udpipe`` and :code:`disable_sbd` only works for ``spacy``.
Recently, ``spacy-udpipe`` has made a change to allow pretokenized text but it depends on the input format and cannot
be fixed at initialisation of the parser. See release v0.3.0 of spacy-udpipe or `this PR`_. Using
:code:`is_tokenized` for ``spacy-stanza`` also effects sentence segmentation,  effectively
*only* splitting on new lines.

.. code:: python

    def init_parser(
        model_or_lang: str,
        parser: str,
        *,
        is_tokenized: bool = False,
        disable_sbd: bool = False,
        parser_opts: Optional[Dict] = None,
        **kwargs,
    ) -> Language:

For instance, if you want to load a Dutch ``stanza`` model in silent mode with the CoNLL formatter already attached,
you can simply use the following snippet. :code:`parser_opts` is passed to the ``stanza`` pipeline initialisation
automatically. Any other keyword arguments (:code:`kwargs`), on the other hand, are passed to the :code:`ConllFormatter`
initialisation.

.. code:: python

    from spacy_conll import init_parser

    nlp = init_parser("nl", "stanza", parser_opts={"verbose": False})


The :code:`ConllFormatter` allows you to customize the extension names and you can also specify conversion maps for
the output properties.

To illustrate, here is an advanced example, showing the more complex options:

* :code:`ext_names`: changes the attribute names to a custom key by using a dictionary.
* :code:`conversion_maps`: a two-level dictionary that looks like :code:`{field_name: {tag_name: replacement}}`.
  In other words, you can specify in which field a certain value should be replaced by another. This is especially
  useful when you are not satisfied with the tagset of a model and wish to change some tags to an alternative

The example below

* shows how to manually add the component;
* changes the custom attribute :code:`conll_pd` to :code:`pandas` (:code:`conll_pd` only availabe if ``pandas`` is
  installed);
* converts any :code:`nsubj` deprel to :code:`subj`.

.. code:: python

    import spacy
    import spacy_conll


    nlp = spacy.load("en_core_web_sm")
    config = {"ext_names": {"conll_pd": "pandas"},
              "conversion_maps": {"deprel": {"nsubj": "subj"}}}
    nlp.add_pipe("conll_formatter", config=config, last=True)
    doc = nlp("I like cookies.")
    print(doc._.pandas)


This is the same as:

.. code:: python

    from spacy_conll import init_parser

    nlp = init_parser("en_core_web_sm",
                      "spacy",
                      ext_names={"conll_pd": "pandas"},
                      conversion_maps={"deprel": {"nsubj": "subj"}})
    doc = nlp("I like cookies.")
    print(doc._.pandas)



The snippets above will output a pandas DataFrame by using :code:`._.pandas` rather than the standard
:code:`._.conll_pd`, and all occurrences of "nsubj" in the deprel field are replaced by "subj".

.. code:: text

       id     form   lemma upostag xpostag                                       feats  head deprel deps           misc
    0   1        I       I    PRON     PRP  Case=Nom|Number=Sing|Person=1|PronType=Prs     2   subj    _              _
    1   2     like    like    VERB     VBP                     Tense=Pres|VerbForm=Fin     0   ROOT    _              _
    2   3  cookies  cookie    NOUN     NNS                                 Number=Plur     2   dobj    _  SpaceAfter=No
    3   4        .       .   PUNCT       .                              PunctType=Peri     2  punct    _  SpaceAfter=No


.. _`examples`: examples/
.. _`source code`: spacy_conll/utils.py
.. _`this PR`: https://github.com/TakeLab/spacy-udpipe/pull/19


Command line
------------

Upon installation, a command-line script is added under tha alias :code:`parse-as-conll`. You can use it to parse a
string or file into CoNLL format given a number of options.

.. code:: bash

    > parse-as-conll -h
    usage: parse-as-conll [-h] [-f INPUT_FILE] [-a INPUT_ENCODING] [-b INPUT_STR] [-o OUTPUT_FILE]
                      [-c OUTPUT_ENCODING] [-s] [-t] [-d] [-e] [-j N_PROCESS] [-v]
                      [--ignore_pipe_errors] [--no_split_on_newline]
                      model_or_lang {spacy,stanza,udpipe}

    Parse an input string or input file to CoNLL-U format using a spaCy-wrapped parser. The output
    can be written to stdout or a file, or both.

    positional arguments:
      model_or_lang         Model or language to use. SpaCy models must be pre-installed, stanza
                            and udpipe models will be downloaded automatically
      {spacy,stanza,udpipe}
                            Which parser to use. Parsers other than 'spacy' need to be installed
                            separately. For 'stanza' you need 'spacy-stanza', and for 'udpipe' the
                            'spacy-udpipe' library is required.

    optional arguments:
      -h, --help            show this help message and exit
      -f INPUT_FILE, --input_file INPUT_FILE
                            Path to file with sentences to parse. Has precedence over 'input_str'.
                            (default: None)
      -a INPUT_ENCODING, --input_encoding INPUT_ENCODING
                            Encoding of the input file. Default value is system default. (default:
                            cp1252)
      -b INPUT_STR, --input_str INPUT_STR
                            Input string to parse. (default: None)
      -o OUTPUT_FILE, --output_file OUTPUT_FILE
                            Path to output file. If not specified, the output will be printed on
                            standard output. (default: None)
      -c OUTPUT_ENCODING, --output_encoding OUTPUT_ENCODING
                            Encoding of the output file. Default value is system default. (default:
                            cp1252)
      -s, --disable_sbd     Whether to disable spaCy automatic sentence boundary detection. In
                            practice, disabling means that every line will be parsed as one
                            sentence, regardless of its actual content. When 'is_tokenized' is
                            enabled, 'disable_sbd' is enabled automatically (see 'is_tokenized').
                            Only works when using 'spacy' as 'parser'. (default: False)
      -t, --is_tokenized    Whether your text has already been tokenized (space-seperated). Setting
                            this option has as an important consequence that no sentence splitting
                            at all will be done except splitting on new lines. So if your input is
                            a file, and you want to use pretokenised text, make sure that each line
                            contains exactly one sentence. (default: False)
      -d, --include_headers
                            Whether to include headers before the output of every sentence. These
                            headers include the sentence text and the sentence ID as per the CoNLL
                            format. (default: False)
      -e, --no_force_counting
                            Whether to disable force counting the 'sent_id', starting from 1 and
                            increasing for each sentence. Instead, 'sent_id' will depend on how
                            spaCy returns the sentences. Must have 'include_headers' enabled.
                            (default: False)
      -j N_PROCESS, --n_process N_PROCESS
                            Number of processes to use in nlp.pipe(). -1 will use as many cores as
                            available. Might not work for a 'parser' other than 'spacy' depending
                            on your environment. (default: 1)
      -v, --verbose         Whether to always print the output to stdout, regardless of
                            'output_file'. (default: False)
      --ignore_pipe_errors  Whether to ignore a priori errors concerning 'n_process' By default we
                            try to determine whether processing works on your system and stop
                            execution if we think it doesn't. If you know what you are doing, you
                            can ignore such pre-emptive errors, though, and run the code as-is,
                            which will then throw the default Python errors when applicable.
                            (default: False)
      --no_split_on_newline
                            By default, the input file or string is split on newlines for faster
                            processing of the split up parts. If you want to disable that behavior,
                            you can use this flag. (default: False)

For example, parsing a single line, multi-sentence string:

.. code:: bash

    >  parse-as-conll en_core_web_sm spacy --input_str "I like cookies. What about you?" --include_headers
    # sent_id = 1
    # text = I like cookies.
    1       I       I       PRON    PRP     Case=Nom|Number=Sing|Person=1|PronType=Prs      2       nsubj   _       _
    2       like    like    VERB    VBP     Tense=Pres|VerbForm=Fin 0       ROOT    _       _
    3       cookies cookie  NOUN    NNS     Number=Plur     2       dobj    _       SpaceAfter=No
    4       .       .       PUNCT   .       PunctType=Peri  2       punct   _       _

    # sent_id = 2
    # text = What about you?
    1       What    what    PRON    WP      _       2       dep     _       _
    2       about   about   ADP     IN      _       0       ROOT    _       _
    3       you     you     PRON    PRP     Case=Acc|Person=2|PronType=Prs  2       pobj    _       SpaceAfter=No
    4       ?       ?       PUNCT   .       PunctType=Peri  2       punct   _       SpaceAfter=No

For example, parsing a large input file and writing output to a given output file, using four processes (multiprocessing
might be only supported in ``spacy``):

.. code:: bash

    > parse-as-conll en_core_web_sm spacy --input_file large-input.txt --output_file large-conll-output.txt --include_headers --disable_sbd -j 4


=======
Credits
=======
Based on the `initial work by rgalhama`_.

.. _initial work by rgalhama: https://github.com/rgalhama/spaCy2CoNLLU


