Named Entity Recognition API used by TEI Publisher

Overview

TEI Publisher Named Entity Recognition API

This repository contains the API used by TEI Publisher's web-annotation editor to detect entities in the input text.

Named entity recognition is based on spaCy and python. Within TEI Publisher the services communicate as follows:

  1. TEI Publisher extracts the plain text of a TEI document, remembering the original position of each text fragment within the TEI XML
  2. The plain text is sent to the /entities endpoint of the named entity recognition API, which returns a JSON array of the entities found
  3. TEI Publisher re-maps each received entity back to its position in the original TEI XML and creates an annotation, which is inserted into the web annotation editor

Installation

  1. Install dependencies by running

    pip3 install -r requirements.txt

  2. Download one or more trained spaCy pipelines, e.g. for German:

    python -m spacy download en_core_web_sm

  3. Start the service with

    uvicorn main:app --reload --port 8001

8001 is the default port configured in TEI Publisher.

API Documentation

You can view the API documentation here: http://localhost:8001/docs

Owner
e-editiones.org
e-editiones is an international society to promote open standards and free software for digital editions with a focus on TEI-Publisher
e-editiones.org
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