//- 💫 DOCS > USAGE > VISUALIZERS include ../../_includes/_mixins p | As of v2.0, our popular visualizers, #[+a(DEMOS_URL + "/displacy") displaCy] | and #[+a(DEMOS_URL + "displacy-ent") displaCy #[sup ENT]] are finally an | official part of the library. Visualizing a dependency parse or named | entities in a text is not only a fun NLP demo – it can also be incredibly | helpful in speeding up development and debugging your code and training | process. Instead of printing a list of dependency labels or entity spans, | you can simply pass your #[code Doc] objects to #[code displacy] and view | the visualizations in your browser, or export them as HTML files or | vector graphics. p | If you're running a #[+a("https://jupyter.org") Jupyter] notebook, | displaCy will detect this and return the markup in a format | #[+a("#jupyter") ready to be rendered and exported]. +aside("What about the old visualizers?") | Our JavaScript-based visualizers #[+src(gh("displacy")) displacy.js] and | #[+src(gh("displacy-ent")) displacy-ent.js] will still be available on | GitHub. If you're looking to implement web-based visualizations, we | generally recommend using those instead of spaCy's built-in | #[code displacy] module. It'll allow your application to perform all | rendering on the client and only rely on the server for the text | processing. The generated markup is also more compatible with modern web | standards. +h(2, "getting-started") Getting started +tag-new(2) p | The quickest way visualize #[code Doc] is to use | #[+api("displacy#serve") #[code displacy.serve]]. This will spin up a | simple web server and let you view the result straight from your browser. | displaCy can either take a single #[code Doc] or a list of #[code Doc] | objects as its first argument. This lets you construct them however you | like – using any model or modifications you like. +h(3, "dep") Visualizing the dependency parse p | The dependency visualizer, #[code dep], shows part-of-speech tags | and syntactic dependencies. +code("Dependency example"). import spacy from spacy import displacy nlp = spacy.load('en') doc = nlp(u'This is a sentence.') displacy.serve(doc, style='dep') +codepen("f0e85b64d469d6617251d8241716d55f", 370) p | The argument #[code options] lets you specify a dictionary of settings | to customise the layout, for example: +aside("Important note") | There's currently a known issue with the #[code compact] mode for | sentences with short arrows and long dependency labels, that causes labels | longer than the arrow to wrap. So if you come across this problem, | especially when using custom labels, you'll have to increase the | #[code distance] setting in the #[code options] to allow longer arcs. +table(["Name", "Type", "Description", "Default"]) +row +cell #[code compact] +cell bool +cell "Compact mode" with square arrows that takes up less space. +cell #[code False] +row +cell #[code color] +cell unicode +cell Text color (HEX, RGB or color names). +cell #[code '#000000'] +row +cell #[code bg] +cell unicode +cell Background color (HEX, RGB or color names). +cell #[code '#ffffff'] +row +cell #[code font] +cell unicode +cell Font name or font family for all text. +cell #[code 'Arial'] p | For a list of all available options, see the | #[+api("displacy#options") #[code displacy] API documentation]. +aside-code("Options example"). options = {'compact': True, 'bg': '#09a3d5', 'color': 'white', 'font': 'Source Sans Pro'} displacy.serve(doc, style='dep', options=options) +codepen("39c02c893a84794353de77a605d817fd", 360) +h(3, "ent") Visualizing the entity recognizer p | The entity visualizer, #[code ent], highlights named entities and | their labels in a text. +code("Named Entity example"). import spacy from spacy import displacy text = """But Google is starting from behind. The company made a late push into hardware, and Apple’s Siri, available on iPhones, and Amazon’s Alexa software, which runs on its Echo and Dot devices, have clear leads in consumer adoption.""" nlp = spacy.load('custom_ner_model') doc = nlp(text) displacy.serve(doc, style='ent') +codepen("a73f8b68f9af3157855962b283b364e4", 345) p The entity visualizer lets you customise the following #[code options]: +table(["Name", "Type", "Description", "Default"]) +row +cell #[code ents] +cell list +cell | Entity types to highlight (#[code None] for all types). +cell #[code None] +row +cell #[code colors] +cell dict +cell | Color overrides. Entity types in lowercase should be mapped to | color names or values. +cell #[code {}] p | If you specify a list of #[code ents], only those entity types will be | rendered – for example, you can choose to display #[code PERSON] entities. | Internally, the visualizer knows nothing about available entity types and | will render whichever spans and labels it receives. This makes it | especially easy to work with custom entity types. By default, displaCy | comes with colours for all | #[+a("/docs/api/annotation#named-entities") entity types supported by spaCy]. | If you're using custom entity types, you can use the #[code colors] | setting to add your own colours for them. +aside-code("Options example"). colors = {'ORG': 'linear-gradient(90deg, #aa9cfc, #fc9ce7)'} options = {'ents': ['ORG'], 'colors': colors} displacy.serve(doc, style='ent', options=options) +codepen("f42ec690762b6f007022a7acd6d0c7d4", 300) p | The above example uses a little trick: Since the background colour values | are added as the #[code background] style attribute, you can use any | #[+a("https://tympanus.net/codrops/css_reference/background/") valid background value] | or shorthand — including gradients and even images! +h(3, "ent-titles") Adding titles to documents p | Rendering several large documents on one page can easily become confusing. | To add a headline to each visualization, you can add a #[code title] to | its #[code user_data]. User data is never touched or modified by spaCy. +code. doc = nlp(u'This is a sentence about Google.') doc.user_data['title'] = 'This is a title' displacy.serve(doc, style='ent') p | This feature is espeically handy if you're using displaCy to compare | performance at different stages of a process, e.g. during training. Here | you could use the title for a brief description of the text example and | the number of iterations. +h(2, "render") Rendering visualizations p | If you don't need the web server and just want to generate the markup | – for example, to export it to a file or serve it in a custom | way – you can use #[+api("displacy#render") #[code displacy.render]]. | It works the same way, but returns a string containing the markup. +code("Example"). import spacy from spacy import displacy nlp = spacy.load('en') doc1 = nlp(u'This is a sentence.') doc2 = nlp(u'This is another sentence.') html = displacy.render([doc1, doc2], style='dep', page=True) p | #[code page=True] renders the markup wrapped as a full HTML page. | For minified and more compact HTML markup, you can set #[code minify=True]. | If you're rendering a dependency parse, you can also export it as an | #[code .svg] file. +aside("What's SVG?") | Unlike other image formats, the SVG (Scalable Vector Graphics) uses XML | markup that's easy to manipulate | #[+a("https://www.smashingmagazine.com/2014/11/styling-and-animating-svgs-with-css/") using CSS] or | #[+a("https://css-tricks.com/smil-is-dead-long-live-smil-a-guide-to-alternatives-to-smil-features/") JavaScript]. | Essentially, SVG lets you design with code, which makes it a perfect fit | for visualizing dependency trees. SVGs can be embedded online in an | #[code <img>] tag, or inlined in an HTML document. They're also | pretty easy to #[+a("https://convertio.co/image-converter/") convert]. +code. svg = displacy.render(doc, style='dep') output_path = Path('/images/sentence.svg') output_path.open('w', encoding='utf-8').write(svg) +infobox("Important note") | Since each visualization is generated as a separate SVG, exporting | #[code .svg] files only works if you're rendering #[strong one single doc] | at a time. (This makes sense – after all, each visualization should be | a standalone graphic.) So instead of rendering all #[code Doc]s at one, | loop over them and export them separately. +h(3, "examples-export-svg") Example: Export SVG graphics of dependency parses +code("Example"). import spacy from spacy import displacy from pathlib import Path nlp = spacy.load('en') sentences = ["This is an example.", "This is another one."] for sent in sentences: doc = nlp(sentence) svg = displacy.render(doc, style='dep') file_name = '-'.join([w.text for w in doc if not w.is_punct]) + '.svg' output_path = Path('/images/' + file_name) output_path.open('w', encoding='utf-8').write(svg) p | The above code will generate the dependency visualizations and them to | two files, #[code This-is-an-example.svg] and #[code This-is-another-one.svg]. +h(2, "jupyter") Using displaCy in Jupyter notebooks p | displaCy is able to detect whether you're working in a | #[+a("https://jupyter.org") Jupyter] notebook, and will return markup | that can be rendered in a cell straight away. When you export your | notebook, the visualizations will be included as HTML. +code("Jupyter Example"). # don't forget to install a model, e.g.: python -m spacy download en import spacy from spacy import displacy doc = nlp(u'Rats are various medium-sized, long-tailed rodents.') displacy.render(doc, style='dep') doc2 = nlp(LONG_NEWS_ARTICLE) displacy.render(doc2, style='ent') +aside("Enabling or disabling Jupyter mode") | To explicitly enable or disable "Jupyter mode", you can use the | #[code jupyter] keyword argument – e.g. to return raw HTML in a notebook, | or to force Jupyter rendering if auto-detection fails. +image("/assets/img/docs/displacy_jupyter.jpg", 700, false, "Example of using the displaCy dependency and named entity visualizer in a Jupyter notebook") p | Internally, displaCy imports #[code display] and #[code HTML] from | #[code IPython.core.display] and returns a Jupyter HTML object. If you | were doing it manually, it'd look like this: +code. from IPython.core.display import display, HTML html = displacy.render(doc, style='dep') return display(HTML(html)) +h(2, "manual-usage") Rendering data manually p | You can also use displaCy to manually render data. This can be useful if | you want to visualize output from other libraries, like | #[+a("http://www.nltk.org") NLTK] or | #[+a("https://github.com/tensorflow/models/tree/master/syntaxnet") SyntaxNet]. | Simply convert the dependency parse or recognised entities to displaCy's | format and set #[code manual=True] on either #[code render()] or | #[code serve()]. +aside-code("Example"). ex = [{'text': 'But Google is starting from behind.', 'ents': [{'start': 4, 'end': 10, 'label': 'ORG'}], 'title': None}] html = displacy.render(ex, style='ent', manual=True) +code("DEP input"). { 'words': [ {'text': 'This', 'tag': 'DT'}, {'text': 'is', 'tag': 'VBZ'}, {'text': 'a', 'tag': 'DT'}, {'text': 'sentence', 'tag': 'NN'}], 'arcs': [ {'start': 0, 'end': 1, 'label': 'nsubj', 'dir': 'left'}, {'start': 2, 'end': 3, 'label': 'det', 'dir': 'left'}, {'start': 1, 'end': 3, 'label': 'attr', 'dir': 'right'}] } +code("ENT input"). { 'text': 'But Google is starting from behind.', 'ents': [{'start': 4, 'end': 10, 'label': 'ORG'}], 'title': None } +h(2, "webapp") Using displaCy in a web application p | If you want to use the visualizers as part of a web application, for | example to create something like our | #[+a(DEMOS_URL + "/displacy") online demo], it's not recommended to | simply wrap and serve the displaCy renderer. Instead, you should only | rely on the server to perform spaCy's processing capabilities, and use | #[+a(gh("displacy")) displaCy.js] to render the JSON-formatted output. +aside("Why not return the HTML by the server?") | It's certainly possible to just have your server return the markup. | But outputting raw, unsanitised HTML is risky and makes your app vulnerable to | #[+a("https://en.wikipedia.org/wiki/Cross-site_scripting") cross-site scripting] | (XSS). All your user needs to do is find a way to make spaCy return text | like #[code <script src="malicious-code.js"><script>], which | is pretty easy in NER mode. Instead of relying on the server to render | and sanitise HTML, you can do this on the client in JavaScript. | displaCy.js creates the markup as DOM nodes and will never insert raw | HTML. p | The #[code parse_deps] function takes a #[code Doc] object and returns | a dictionary in a format that can be rendered by displaCy. +code("Example"). import spacy from spacy import displacy nlp = spacy.load('en') def displacy_service(text): doc = nlp(text) return displacy.parse_deps(doc) p | Using a library like #[+a("https://falconframework.org/") Falcon] or | #[+a("http://www.hug.rest/") Hug], you can easily turn the above code | into a simple REST API that receives a text and returns a JSON-formatted | parse. In your front-end, include #[+a(gh("displacy")) displacy.js] and | initialise it with the API URL and the ID or query selector of the | container to render the visualisation in, e.g. #[code '#displacy'] for | #[code <div id="displacy">]. +code("script.js", "javascript"). var displacy = new displaCy('http://localhost:8080', { container: '#displacy' }) function parse(text) { displacy.parse(text); } p | When you call #[code parse()], it will make a request to your API, | receive the JSON-formatted parse and render it in your container. To | create an interactive experience, you could trigger this function by | a button and read the text from an #[code <input>] field.