spaCy/website/docs/usage/spacy-101.jade
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//- 💫 DOCS > USAGE > SPACY 101
include ../../_includes/_mixins
p
| Whether you're new to spaCy, or just want to brush up on some
| NLP basics and implementation details this page should have you covered.
| Each section will explain one of spaCy's features in simple terms and
| with examples or illustrations. Some sections will also reappear across
| the usage guides as a quick introcution.
+aside("Help us improve the docs")
| Did you spot a mistake or come across explanations that
| are unclear? We always appreciate improvement
| #[+a(gh("spaCy") + "/issues") suggestions] or
| #[+a(gh("spaCy") + "/pulls") pull requests]. You can find a "Suggest
| edits" link at the bottom of each page that points you to the source.
+h(2, "whats-spacy") What's spaCy?
+grid.o-no-block
+grid-col("half")
p
| spaCy is a #[strong free, open-source library] for advanced
| #[strong Natural Language Processing] (NLP) in Python.
p
| If you're working with a lot of text, you'll eventually want to
| know more about it. For example, what's it about? What do the
| words mean in context? Who is doing what to whom? What companies
| and products are mentioned? Which texts are similar to each other?
p
| spaCy is designed specifically for #[strong production use] and
| helps you build applications that process and "understand"
| large volumes of text. It can be used to build
| #[strong information extraction] or
| #[strong natural language understanding] systems, or to
| pre-process text for #[strong deep learning].
+table-of-contents
+item #[+a("#features") Features]
+item #[+a("#annotations") Linguistic annotations]
+item #[+a("#annotations-token") Tokenization]
+item #[+a("#annotations-pos-deps") POS tags and dependencies]
+item #[+a("#annotations-ner") Named entities]
+item #[+a("#vectors-similarity") Word vectors and similarity]
+item #[+a("#pipelines") Pipelines]
+item #[+a("#vocab") Vocab, hashes and lexemes]
+item #[+a("#serialization") Serialization]
+item #[+a("#training") Training]
+item #[+a("#language-data") Language data]
+item #[+a("#architecture") Architecture]
+item #[+a("#community") Community & FAQ]
+h(3, "what-spacy-isnt") What spaCy isn't
+list
+item #[strong spaCy is not a platform or "an API"].
| Unlike a platform, spaCy does not provide a software as a service, or
| a web application. It's an open-source library designed to help you
| build NLP applications, not a consumable service.
+item #[strong spaCy is not an out-of-the-box chat bot engine].
| While spaCy can be used to power conversational applications, it's
| not designed specifically for chat bots, and only provides the
| underlying text processing capabilities.
+item #[strong spaCy is not research software].
| It's built on the latest research, but it's designed to get
| things done. This leads to fairly different design decisions than
| #[+a("https://github./nltk/nltk") NLTK]
| or #[+a("https://stanfordnlp.github.io/CoreNLP/") CoreNLP], which were
| created as platforms for teaching and research. The main difference
| is that spaCy is integrated and opinionated. spaCy tries to avoid asking
| the user to choose between multiple algorithms that deliver equivalent
| functionality. Keeping the menu small lets spaCy deliver generally better
| performance and developer experience.
+item #[strong spaCy is not a company].
| It's an open-source library. Our company publishing spaCy and other
| software is called #[+a(COMPANY_URL, true) Explosion AI].
+h(2, "features") Features
p
| In the documentation, you'll come across mentions of spaCy's
| features and capabilities. Some of them refer to linguistic concepts,
| while others are related to more general machine learning functionality.
+aside
| If one of spaCy's functionalities #[strong needs a model], it means that
| you need to have one of the available
| #[+a("/docs/usage/models") statistical models] installed. Models are used
| to #[strong predict] linguistic annotations for example, if a word is
| a verb or a noun.
+table(["Name", "Description", "Needs model"])
+row
+cell #[strong Tokenization]
+cell Segmenting text into words, punctuations marks etc.
+cell #[+procon("con")]
+row
+cell #[strong Part-of-speech] (POS) #[strong Tagging]
+cell Assigning word types to tokens, like verb or noun.
+cell #[+procon("pro")]
+row
+cell #[strong Dependency Parsing]
+cell
| Assigning syntactic dependency labels, describing the relations
| between individual tokens, like subject or object.
+cell #[+procon("pro")]
+row
+cell #[strong Lemmatization]
+cell
| Assigning the base forms of words. For example, the lemma of
| "was" is "be", and the lemma of "rats" is "rat".
+cell #[+procon("pro")]
+row
+cell #[strong Sentence Boundary Detection] (SBD)
+cell Finding and segmenting individual sentences.
+cell #[+procon("pro")]
+row
+cell #[strong Named Entity Recongition] (NER)
+cell
| Labelling named "real-world" objects, like persons, companies or
| locations.
+cell #[+procon("pro")]
+row
+cell #[strong Similarity]
+cell
| Comparing words, text spans and documents and how similar they
| are to each other.
+cell #[+procon("pro")]
+row
+cell #[strong Text classification]
+cell Assigning categories or labels to a whole document, or parts of a document.
+cell #[+procon("pro")]
+row
+cell #[strong Rule-based Matching]
+cell
| Finding sequences of tokens based on their texts and linguistic
| annotations, similar to regular expressions.
+cell #[+procon("con")]
+row
+cell #[strong Training]
+cell Updating and improving a statistical model's predictions.
+cell #[+procon("neutral")]
+row
+cell #[strong Serialization]
+cell Saving objects to files or byte strings.
+cell #[+procon("neutral")]
+h(2, "annotations") Linguistic annotations
p
| spaCy provides a variety of linguistic annotations to give you
| #[strong insights into a text's grammatical structure]. This includes the
| word types, like the parts of speech, and how the words are related to
| each other. For example, if you're analysing text, it makes a huge
| difference whether a noun is the subject of a sentence, or the object
| or whether "google" is used as a verb, or refers to the website or
| company in a specific context.
p
| Once you've downloaded and installed a #[+a("/docs/usage/models") model],
| you can load it via #[+api("spacy#load") #[code spacy.load()]]. This will
| return a #[code Language] object contaning all components and data needed
| to process text. We usually call it #[code nlp]. Calling the #[code nlp]
| object on a string of text will return a processed #[code Doc]:
+code.
import spacy
nlp = spacy.load('en')
doc = nlp(u'Apple is looking at buying U.K. startup for $1 billion')
p
| Even though a #[code Doc] is processed e.g. split into individual words
| and annotated it still holds #[strong all information of the original text],
| like whitespace characters. You can always get the offset of a token into the
| original string, or reconstruct the original by joining the tokens and their
| trailing whitespace. This way, you'll never lose any information
| when processing text with spaCy.
+h(3, "annotations-token") Tokenization
include _spacy-101/_tokenization
+infobox
| To learn more about how spaCy's tokenization rules work in detail,
| how to #[strong customise and replace] the default tokenizer and how to
| #[strong add language-specific data], see the usage guides on
| #[+a("/docs/usage/adding-languages") adding languages] and
| #[+a("/docs/usage/customizing-tokenizer") customising the tokenizer].
+h(3, "annotations-pos-deps") Part-of-speech tags and dependencies
+tag-model("dependency parse")
include _spacy-101/_pos-deps
+infobox
| To learn more about #[strong part-of-speech tagging] and rule-based
| morphology, and how to #[strong navigate and use the parse tree]
| effectively, see the usage guides on
| #[+a("/docs/usage/pos-tagging") part-of-speech tagging] and
| #[+a("/docs/usage/dependency-parse") using the dependency parse].
+h(3, "annotations-ner") Named Entities
+tag-model("named entities")
include _spacy-101/_named-entities
+infobox
| To learn more about entity recognition in spaCy, how to
| #[strong add your own entities] to a document and how to
| #[strong train and update] the entity predictions of a model, see the
| usage guides on
| #[+a("/docs/usage/entity-recognition") named entity recognition] and
| #[+a("/docs/usage/training-ner") training the named entity recognizer].
+h(2, "vectors-similarity") Word vectors and similarity
+tag-model("vectors")
include _spacy-101/_similarity
include _spacy-101/_word-vectors
+infobox
| To learn more about word vectors, how to #[strong customise them] and
| how to load #[strong your own vectors] into spaCy, see the usage
| guide on
| #[+a("/docs/usage/word-vectors-similarities") using word vectors and semantic similarities].
+h(2, "pipelines") Pipelines
include _spacy-101/_pipelines
+infobox
| To learn more about #[strong how processing pipelines work] in detail,
| how to enable and disable their components, and how to
| #[strong create your own], see the usage guide on
| #[+a("/docs/usage/language-processing-pipeline") language processing pipelines].
+h(2, "vocab") Vocab, hashes and lexemes
include _spacy-101/_vocab
+h(2, "serialization") Serialization
include _spacy-101/_serialization
+infobox
| To learn more about #[strong serialization] and how to
| #[strong save and load your own models], see the usage guide on
| #[+a("/docs/usage/saving-loading") saving, loading and data serialization].
+h(2, "training") Training
include _spacy-101/_training
+infobox
| To learn more about #[strong training and updating] models, how to create
| training data and how to improve spaCy's named entity recognition models,
| see the usage guides on #[+a("/docs/usage/training") training] and
| #[+a("/docs/usage/training-ner") training the named entity recognizer].
+h(2, "language-data") Language data
include _spacy-101/_language-data
+infobox
| To learn more about the individual components of the language data and
| how to #[strong add a new language] to spaCy in preparation for training
| a language model, see the usage guide on
| #[+a("/docs/usage/adding-languages") adding languages].
+h(2, "architecture") Architecture
include _spacy-101/_architecture.jade
+h(2, "community") Community & FAQ
p
| We're very happy to see the spaCy community grow and include a mix of
| people from all kinds of different backgrounds computational
| linguistics, data science, deep learning, research and more. If you'd
| like to get involved, below are some answers to the most important
| questions and resources for further reading.
+h(3, "faq-help-code") Help, my code isn't working!
p
| Bugs suck, and we're doing our best to continuously improve the tests
| and fix bugs as soon as possible. Before you submit an issue, do a
| quick search and check if the problem has already been reported. If
| you're having installation or loading problems, make sure to also check
| out the #[+a("/docs/usage#troubleshooting") troubleshooting guide]. Help
| with spaCy is available via the following platforms:
+aside("How do I know if something is a bug?")
| Of course, it's always hard to know for sure, so don't worry we're not
| going to be mad if a bug report turns out to be a typo in your
| code. As a simple rule, any C-level error without a Python traceback,
| like a #[strong segmentation fault] or #[strong memory error],
| is #[strong always] a spaCy bug.#[br]#[br]
| Because models are statistical, their performance will never be
| #[em perfect]. However, if you come across
| #[strong patterns that might indicate an underlying issue], please do
| file a report. Similarly, we also care about behaviours that
| #[strong contradict our docs].
+table(["Platform", "Purpose"])
+row
+cell #[+a("https://stackoverflow.com/questions/tagged/spacy") StackOverflow]
+cell
| #[strong Usage questions] and everything related to problems with
| your specific code. The StackOverflow community is much larger
| than ours, so if your problem can be solved by others, you'll
| receive help much quicker.
+row
+cell #[+a("https://gitter.im/" + SOCIAL.gitter) Gitter chat]
+cell
| #[strong General discussion] about spaCy, meeting other community
| members and exchanging #[strong tips, tricks and best practices].
| If we're working on experimental models and features, we usually
| share them on Gitter first.
+row
+cell #[+a(gh("spaCy") + "/issues") GitHub issue tracker]
+cell
| #[strong Bug reports] and #[strong improvement suggestions], i.e.
| everything that's likely spaCy's fault. This also includes
| problems with the models beyond statistical imprecisions, like
| patterns that point to a bug.
+infobox
| Please understand that we won't be able to provide individual support via
| email. We also believe that help is much more valuable if it's shared
| publicly, so that #[strong more people can benefit from it]. If you come
| across an issue and you think you might be able to help, consider posting
| a quick update with your solution. No matter how simple, it can easily
| save someone a lot of time and headache and the next time you need help,
| they might repay the favour.
+h(3, "faq-contributing") How can I contribute to spaCy?
p
| You don't have to be an NLP expert or Python pro to contribute, and we're
| happy to help you get started. If you're new to spaCy, a good place to
| start is the
| #[+a(gh("spaCy") + '/issues?q=is%3Aissue+is%3Aopen+label%3A"help+wanted+%28easy%29"') #[code help wanted (easy)] label]
| on GitHub, which we use to tag bugs and feature requests that are easy
| and self-contained. We also appreciate contributions to the docs whether
| it's fixing a typo, improving an example or adding additional explanations.
| You'll find a "Suggest edits" link at the bottom of each page that points
| you to the source.
p
| Another way of getting involved is to help us improve the
| #[+a("/docs/usage/adding-languages#language-data") language data]
| especially if you happen to speak one of the languages currently in
| #[+a("/docs/api/language-models#alpha-support") alpha support]. Even
| adding simple tokenizer exceptions, stop words or lemmatizer data
| can make a big difference. It will also make it easier for us to provide
| a statistical model for the language in the future. Submitting a test
| that documents a bug or performance issue, or covers functionality that's
| especially important for your application is also very helpful. This way,
| you'll also make sure we never accidentally introduce regressions to the
| parts of the library that you care about the most.
p
strong
| For more details on the types of contributions we're looking for, the
| code conventions and other useful tips, make sure to check out the
| #[+a(gh("spaCy", "CONTRIBUTING.md")) contributing guidelines].
+infobox("Code of Conduct")
| spaCy adheres to the
| #[+a("http://contributor-covenant.org/version/1/4/") Contributor Covenant Code of Conduct].
| By participating, you are expected to uphold this code.
+h(3, "faq-project-with-spacy")
| I've built something cool with spaCy how can I get the word out?
p
| First, congrats we'd love to check it out! When you share your
| project on Twitter, don't forget to tag
| #[+a("https://twitter.com/" + SOCIAL.twitter) @#{SOCIAL.twitter}] so we
| don't miss it. If you think your project would be a good fit for the
| #[+a("/docs/usage/showcase") showcase], #[strong feel free to submit it!]
| Tutorials are also incredibly valuable to other users and a great way to
| get exposure. So we strongly encourage #[strong writing up your experiences],
| or sharing your code and some tips and tricks on your blog. Since our
| website is open-source, you can add your project or tutorial by making a
| pull request on GitHub.
+aside("Contributing to spacy.io")
| All showcase and tutorial links are stored in a
| #[+a(gh("spaCy", "website/docs/usage/_data.json")) JSON file], so you
| won't even have to edit any markup. For more info on how to submit
| your project, see the
| #[+a(gh("spaCy", "CONTRIBUTING.md#submitting-a-project-to-the-showcase")) contributing guidelines]
| and our #[+a(gh("spaCy", "website")) website docs].
p
| If you would like to use the spaCy logo on your site, please get in touch
| and ask us first. However, if you want to show support and tell others
| that your project is using spaCy, you can grab one of our
| #[strong spaCy badges] here:
- SPACY_BADGES = ["built%20with-spaCy-09a3d5.svg", "made%20with%20❤%20and-spaCy-09a3d5.svg", "spaCy-v2-09a3d5.svg"]
+quickstart([{id: "badge", input_style: "check", options: SPACY_BADGES.map(function(badge, i) { return {id: i, title: "<img class='o-icon' src='https://img.shields.io/badge/" + badge + "' height='20'/>", checked: (i == 0) ? true : false}}) }], false, false, true)
.c-code-block(data-qs-results)
for badge, i in SPACY_BADGES
- var url = "https://img.shields.io/badge/" + badge
+code(false, "text", "star").o-no-block(data-qs-badge=i)=url
+code(false, "text", "code").o-no-block(data-qs-badge=i).
&lt;a href="#{SITE_URL}"&gt;&lt;img src="#{url}" height="20"&gt;&lt;/a&gt;
+code(false, "text", "markdown").o-no-block(data-qs-badge=i).
[![spaCy](#{url})](#{SITE_URL})