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Client library for communicating with LaBB-CAT servers

Project description

nzilbb-labbcat

Client library for communicating with LaBB-CAT servers using Python.

e.g.

import labbcat

# Connect to the LaBB-CAT corpus
corpus = labbcat.LabbcatView("https://labbcat.canterbury.ac.nz/demo", "demo", "demo")

# Find all tokens of a word
matches = corpus.getMatches({"orthography":"quake"})

# Get the recording of that utterance
audio = corpus.getSoundFragments(matches)

# Get Praat TextGrids for the utterances
textgrids = corpus.getFragments(
    matches, ["utterance", "word","segment"],
    "text/praat-textgrid")

LaBB-CAT is a web-based linguistic annotation store that stores audio or video recordings, text transcripts, and other annotations.

Annotations of various types can be automatically generated or manually added.

LaBB-CAT servers are usually password-protected linguistic corpora, and can be accessed manually via a web browser, or programmatically using a client library like this one.

The current version of this library requires LaBB-CAT version 20220307.1126.

Documentation

Detailed documentation is available here

Basic usage

nzilbb-labbcat is available in the Python Package Index here

To install the module:

pip install nzilbb-labbcat

The following example shows how to:

  1. upload a transcript to LaBB-CAT,
  2. wait for the automatic annotation tasks to finish,
  3. extract the annotation labels, and
  4. delete the transcript from LaBB-CAT.
import labbcat

# Connect to the LaBB-CAT corpus
corpus = labbcat.LabbcatEdit("http://localhost:8080/labbcat", "labbcat", "labbcat")

# List the corpora on the server
corpora = corpus.getCorpusIds()

# List the transcript types
transcript_type_layer = corpus.getLayer("transcript_type")
transcript_types = transcript_type_layer["validLabels"]

# Upload a transcript
corpus_id = corpora[0]
transcript_type = next(iter(transcript_types))
taskId = corpus.newTranscript(
    "test/labbcat-py.test.txt", None, None, transcript_type, corpus_id, "test")

# wait for the annotation generation to finish
corpus.waitForTask(taskId)
corpus.releaseTask(taskId)

# get the "POS" layer annotations
annotations = corpus.getAnnotations("labbcat-py.test.txt", "pos")
labels = list(map(lambda annotation: annotation["label"], annotations))

# delete tha transcript from the corpus
corpus.deleteTranscript("labbcat-py.test.txt")

For batch uploading and other example code, see the examples subdirectory.

Developers

To build, test, release, and document the module, the following prerequisites are required:

  • pip3 install twine
  • pip3 install pathlib
  • apt install python3-sphinx

Unit tests

python3 -m unittest

...or for specific tests:

python3 -m unittest test.TestLabbcatAdmin

Documentation generation

cd docs
make clean
make

Publishing

rm dist/*
python3 setup.py sdist bdist_wheel
twine check dist/*
twine upload dist/*

Project details


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