• This repository has been archived on 19/Sep/2018
  • Stars
    star
    197
  • Rank 197,722 (Top 4 %)
  • Language
    CSS
  • License
    MIT License
  • Created about 8 years ago
  • Updated over 6 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

๐Ÿ’ฅ displaCy-ent.js: An open-source named entity visualiser for the modern web

displaCy ENT: A modern named entity visualiser

โš ๏ธ As of v2.0.0, the displaCy visualizers are now integrated into the core library. See here for more details on how to visualize a Doc object from within spaCy. We're also working on a new suite of tools for serving and testing spaCy models. The code of the standalone visualizers will still be available on GitHub, just not actively maintained.

Data exploration is an important part of effective named entity recognition because systems often make common unexpected errors that are easily fixed once identified. Despite the apparent simplicity of the task, automatic named entity recognition systems still make many errors, unless trained on examples closely tailored to the use-case. Check out the demo to visualise spaCy's guess at the named entities in the document. You can filter the displayed types, to only show the annotations you're interested in.

To read more about displaCy-ent.js, check out the blog post.

npm

Run the demo

This demo is implemented in Jade (aka Pug), an extensible templating language that compiles to HTML, and is built or served by Harp. To serve it locally on http://localhost:9000, simply run:

sudo npm install --global harp
git clone https://github.com/explosion/displacy-ent
cd displacy-ent
harp server

The demo is written in ECMAScript 6. For full, cross-browser compatibility, make sure to use a compiler like Babel. For more info, see this compatibility table.

Using displacy-ent.js

To use displaCy ENT in your project, include displacy-ent.js from GitHub or via npm:

npm install displacy-ent

Then initialize a new instance specifying the API and settings:

const displacy = new displaCyENT('http://localhost:8000', {
    container: '#displacy',
    defaultText: 'When Sebastian Thrun started working on self-driving cars at Google in 2007, few people outside of the company took him seriously.',
    defaultEnts: ['person', 'org', 'date']
});

Our service that produces the input data is open source, too. You can find it at spacy-services.

The following settings are available:

Setting Description Default
container element to display text in, can be any query selector #displacy
defaultText text used if displaCy ENT is run without text specified 'When Sebastian Thrun started working on self-driving cars at Google in 2007, few people outside of the company took him seriously.'
defaultModel model used if displaCy ENT is run without model specified 'en'
defaultEnts array of entities highlighted in text ['person', 'org', 'gpe', 'loc', 'product']
onStart function to be executed on start of server request false
onSuccess callback function to be executed on successful server response false
onRender callback function to be executed when visualisation has rendered false
onError function to be executed if request fails false

Visualising Entities

The parse(text, model, ents) method renders a text for a given set of entities in the container.

const text = 'When Sebastian Thrun started working on self-driving cars at Google in 2007, few people outside of the company took him seriously.';
const model = 'en';
const ents = ['person', 'org', 'date'];

displacy.parse(text, model, ents);

Rendering Entities Manually

Alternatively, you can use render() to manually render a text and its entity spans for a given set of entities:

const text = 'When Sebastian Thrun started working on self-driving cars at Google in 2007, few people outside of the company took him seriously.';
const spans = [ { end: 20, start: 5, type: "PERSON" }, { end: 67, start: 61, type: "ORG" }, { end: 75, start: 71, type: "DATE" } ];
const ents = ['person', 'org', 'gpe', 'loc', 'product'];

displacy.render(text, spans, ents);

How it works

displaCy ENT uses only the <mark> element with data attributes and custom CSS styling. No additional, visible content or markup is added to your input text and no JavaScript is required to display the entities.

Here's an example of the markup:

<div class="entities">
    When <mark data-entity="person">Sebastian Thrun</mark> started working on self-driving cars at
    <mark data-entity="org">Google</mark> in <mark data-entity="date">2007</mark>, few people outside of the
    company took him seriously.
</div>

And here is the CSS it needs to display the entity labels:

.entities {
    line-height: 2;
}

[data-entity] {
    padding: 0.25em 0.35em;
     margin: 0px 0.25em;
     line-height: 1;
     display: inline-block;
     border-radius: 0.25em;
     border: 1px solid;
}

[data-entity]::after {
    box-sizing: border-box;
    content: attr(data-entity);
    font-size: 0.6em;
    line-height: 1;
    padding: 0.35em;
    border-radius: 0.35em;
    text-transform: uppercase;
    display: inline-block;
    vertical-align: middle;
    margin: 0px 0px 0.1rem 0.5rem;
}

[data-entity][data-entity="person"] {
    background: rgba(166, 226, 45, 0.2);
    border-color: rgb(166, 226, 45);
}

[data-entity][data-entity="person"]::after {
    background: rgb(166, 226, 45);
}

[data-entity][data-entity="org"] {
    background: rgba(67, 198, 252, 0.2);
    border-color: rgb(67, 198, 252);
}

[data-entity][data-entity="org"]::after {
    background: rgb(67, 198, 252);
}

[data-entity][data-entity="date"] {
    background: rgba(47, 187, 171, 0.2);
    border-color: rgb(47, 187, 171);
}

[data-entity][data-entity="date"]::after {
    background: rgb(47, 187, 171);
}

Entity labels are taken from the data-entity attribute and are rendered after the span as a CSS pseudo element.

More Repositories

1

spaCy

๐Ÿ’ซ Industrial-strength Natural Language Processing (NLP) in Python
Python
29,546
star
2

thinc

๐Ÿ”ฎ A refreshing functional take on deep learning, compatible with your favorite libraries
Python
2,813
star
3

spacy-course

๐Ÿ‘ฉโ€๐Ÿซ Advanced NLP with spaCy: A free online course
Python
2,299
star
4

sense2vec

๐Ÿฆ† Contextually-keyed word vectors
Python
1,615
star
5

spacy-models

๐Ÿ’ซ Models for the spaCy Natural Language Processing (NLP) library
Python
1,589
star
6

spacy-transformers

๐Ÿ›ธ Use pretrained transformers like BERT, XLNet and GPT-2 in spaCy
Python
1,334
star
7

projects

๐Ÿช End-to-end NLP workflows from prototype to production
Python
1,285
star
8

spacy-llm

๐Ÿฆ™ Integrating LLMs into structured NLP pipelines
Python
1,049
star
9

curated-transformers

๐Ÿค– A PyTorch library of curated Transformer models and their composable components
Python
858
star
10

spacy-streamlit

๐Ÿ‘‘ spaCy building blocks and visualizers for Streamlit apps
Python
787
star
11

spacy-stanza

๐Ÿ’ฅ Use the latest Stanza (StanfordNLP) research models directly in spaCy
Python
722
star
12

prodigy-recipes

๐Ÿณ Recipes for the Prodigy, our fully scriptable annotation tool
Jupyter Notebook
477
star
13

wasabi

๐Ÿฃ A lightweight console printing and formatting toolkit
Python
444
star
14

cymem

๐Ÿ’ฅ Cython memory pool for RAII-style memory management
Cython
436
star
15

srsly

๐Ÿฆ‰ Modern high-performance serialization utilities for Python (JSON, MessagePack, Pickle)
Python
422
star
16

displacy

๐Ÿ’ฅ displaCy.js: An open-source NLP visualiser for the modern web
JavaScript
343
star
17

lightnet

๐ŸŒ“ Bringing pjreddie's DarkNet out of the shadows #yolo
C
319
star
18

prodigy-openai-recipes

โœจ Bootstrap annotation with zero- & few-shot learning via OpenAI GPT-3
Python
318
star
19

spacy-notebooks

๐Ÿ’ซ Jupyter notebooks for spaCy examples and tutorials
Jupyter Notebook
285
star
20

spacy-services

๐Ÿ’ซ REST microservices for various spaCy-related tasks
Python
240
star
21

cython-blis

๐Ÿ’ฅ Fast matrix-multiplication as a self-contained Python library โ€“ no system dependencies!
C
215
star
22

jupyterlab-prodigy

๐Ÿงฌ A JupyterLab extension for annotating data with Prodigy
TypeScript
188
star
23

spacymoji

๐Ÿ’™ Emoji handling and meta data for spaCy with custom extension attributes
Python
180
star
24

tokenizations

Robust and Fast tokenizations alignment library for Rust and Python https://tamuhey.github.io/tokenizations/
Rust
180
star
25

wheelwright

๐ŸŽก Automated build repo for Python wheels and source packages
Python
174
star
26

catalogue

Super lightweight function registries for your library
Python
171
star
27

confection

๐Ÿฌ Confection: the sweetest config system for Python
Python
169
star
28

spacy-dev-resources

๐Ÿ’ซ Scripts, tools and resources for developing spaCy
Python
125
star
29

radicli

๐Ÿ•Š๏ธ Radically lightweight command-line interfaces
Python
100
star
30

spacy-lookups-data

๐Ÿ“‚ Additional lookup tables and data resources for spaCy
Python
98
star
31

spacy-experimental

๐Ÿงช Cutting-edge experimental spaCy components and features
Python
94
star
32

talks

๐Ÿ’ฅ Browser-based slides or PDFs of our talks and presentations
JavaScript
94
star
33

thinc-apple-ops

๐Ÿ Make Thinc faster on macOS by calling into Apple's native Accelerate library
Cython
90
star
34

healthsea

Healthsea is a spaCy pipeline for analyzing user reviews of supplementary products for their effects on health.
Python
87
star
35

preshed

๐Ÿ’ฅ Cython hash tables that assume keys are pre-hashed
Cython
82
star
36

weasel

๐Ÿฆฆ weasel: A small and easy workflow system
Python
62
star
37

spacy-huggingface-pipelines

๐Ÿ’ฅ Use Hugging Face text and token classification pipelines directly in spaCy
Python
61
star
38

spacy-ray

โ˜„๏ธ Parallel and distributed training with spaCy and Ray
Python
54
star
39

ml-datasets

๐ŸŒŠ Machine learning dataset loaders for testing and example scripts
Python
45
star
40

murmurhash

๐Ÿ’ฅ Cython bindings for MurmurHash2
C++
44
star
41

assets

๐Ÿ’ฅ Explosion Assets
43
star
42

spacy-huggingface-hub

๐Ÿค— Push your spaCy pipelines to the Hugging Face Hub
Python
42
star
43

wikid

Generate a SQLite database from Wikipedia & Wikidata dumps.
Python
30
star
44

vscode-prodigy

๐Ÿงฌ A VS Code extension for annotating data with Prodigy
TypeScript
30
star
45

spacy-alignments

๐Ÿ’ซ A spaCy package for Yohei Tamura's Rust tokenizations library
Python
26
star
46

spacy-vscode

spaCy extension for Visual Studio Code
Python
24
star
47

spacy-curated-transformers

spaCy entry points for Curated Transformers
Python
22
star
48

spacy-benchmarks

๐Ÿ’ซ Runtime performance comparison of spaCy against other NLP libraries
Python
20
star
49

prodigy-hf

Train huggingface models on top of Prodigy annotations
Python
19
star
50

prodigy-pdf

A Prodigy plugin for PDF annotation
Python
18
star
51

spacy-vectors-builder

๐ŸŒธ Train floret vectors
Python
17
star
52

os-signpost

Wrapper for the macOS signpost API
Cython
12
star
53

spacy-loggers

๐Ÿ“Ÿ Logging utilities for spaCy
Python
12
star
54

prodigy-evaluate

๐Ÿ”Ž A Prodigy plugin for evaluating spaCy pipelines
Python
12
star
55

prodigy-segment

Select pixels in Prodigy via Facebook's Segment-Anything model.
Python
11
star
56

curated-tokenizers

Lightweight piece tokenization library
Cython
11
star
57

conll-2012

A slightly cleaned up version of the scripts & data for the CoNLL 2012 Coreference task.
Python
10
star
58

thinc_gpu_ops

๐Ÿ”ฎ GPU kernels for Thinc
C++
9
star
59

prodigy-ann

A Prodigy pluging for ANN techniques
Python
4
star
60

prodigy-whisper

Audio transcription with OpenAI's whisper model in the loop.
Python
4
star
61

princetondh

Code for our presentation in Princeton DH 2023 April.
Jupyter Notebook
4
star
62

spacy-legacy

๐Ÿ•ธ๏ธ Legacy architectures and other registered spaCy v3.x functions for backwards-compatibility
Python
4
star
63

ec2buildwheel

Python
2
star
64

aiGrunn-2023

Materials for the aiGrunn 2023 talk on spaCy Transformer pipelines
Python
1
star
65

spacy-io-binder

๐Ÿ“’ Repository used to build Binder images for the interactive spaCy code examples
Jupyter Notebook
1
star
66

prodigy-lunr

A Prodigy plugin for document search via LUNR
Python
1
star
67

.github

:octocat: GitHub settings
1
star
68

span-labeling-datasets

Loaders for various span labeling datasets
Python
1
star
69

spacy-biaffine-parser

Python
1
star