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PyNLPl, pronounced as 'pineapple', is a Python library for Natural Language Processing. It contains various modules useful for common, and less common, NLP tasks. PyNLPl can be used for basic tasks such as the extraction of n-grams and frequency lists, and to build simple language model. There are also more complex data types and algorithms. Mor…

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PyNLPl - Python Natural Language Processing Library

https://travis-ci.org/proycon/pynlpl.svg?branch=master Documentation Status http://applejack.science.ru.nl/lamabadge.php/pynlpl

PyNLPl, pronounced as 'pineapple', is a Python library for Natural Language Processing. It contains various modules useful for common, and less common, NLP tasks. PyNLPl can be used for basic tasks such as the extraction of n-grams and frequency lists, and to build simple language model. There are also more complex data types and algorithms. Moreover, there are parsers for file formats common in NLP (e.g. FoLiA/Giza/Moses/ARPA/Timbl/CQL). There are also clients to interface with various NLP specific servers. PyNLPl most notably features a very extensive library for working with FoLiA XML (Format for Linguistic Annotatation).

The library is a divided into several packages and modules. It works on Python 2.7, as well as Python 3.

The following modules are available:

  • pynlpl.datatypes - Extra datatypes (priority queues, patterns, tries)
  • pynlpl.evaluation - Evaluation & experiment classes (parameter search, wrapped progressive sampling, class evaluation (precision/recall/f-score/auc), sampler, confusion matrix, multithreaded experiment pool)
  • pynlpl.formats.cgn - Module for parsing CGN (Corpus Gesproken Nederlands) part-of-speech tags
  • pynlpl.formats.folia - Extensive library for reading and manipulating the documents in FoLiA format (Format for Linguistic Annotation).
  • pynlpl.formats.fql - Extensive library for the FoLiA Query Language (FQL), built on top of pynlpl.formats.folia. FQL is currently documented here.
  • pynlpl.formats.cql - Parser for the Corpus Query Language (CQL), as also used by Corpus Workbench and Sketch Engine. Contains a convertor to FQL.
  • pynlpl.formats.giza - Module for reading GIZA++ word alignment data
  • pynlpl.formats.moses - Module for reading Moses phrase-translation tables.
  • pynlpl.formats.sonar - Largely obsolete module for pre-releases of the SoNaR corpus, use pynlpl.formats.folia instead.
  • pynlpl.formats.timbl - Module for reading Timbl output (consider using python-timbl instead though)
  • pynlpl.lm.lm - Module for simple language model and reader for ARPA language model data as well (used by SRILM).
  • pynlpl.search - Various search algorithms (Breadth-first, depth-first, beam-search, hill climbing, A star, various variants of each)
  • pynlpl.statistics - Frequency lists, Levenshtein, common statistics and information theory functions
  • pynlpl.textprocessors - Simple tokeniser, n-gram extraction

Installation

Download and install the latest stable version directly from the Python Package Index with pip install pynlpl (or pip3 for Python 3 on most systems). For global installations prepend sudo.

Alternatively, clone this repository and run python setup.py install (or python3 setup.py install for Python 3 on most system. Prepend sudo for global installations.

This software may also be found in the certain Linux distributions, such as the latest versions as Debian/Ubuntu, as python-pynlpl and python3-pynlpl. PyNLPL is also included in our LaMachine distribution.

Documentation

API Documentation can be found here.

About

PyNLPl, pronounced as 'pineapple', is a Python library for Natural Language Processing. It contains various modules useful for common, and less common, NLP tasks. PyNLPl can be used for basic tasks such as the extraction of n-grams and frequency lists, and to build simple language model. There are also more complex data types and algorithms. Mor…

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