//- 💫 DOCS > USAGE > SPACY 101 include ../../_includes/_mixins +h(2, "features") Features +aside | If one of spaCy's functionalities #[strong needs a model], it means that | you need to have one our 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 +cell #[+procon("con")] +row +cell #[strong Part-of-speech Tagging] +cell +cell #[+procon("pro")] +row +cell #[strong Dependency Parsing] +cell +cell #[+procon("pro")] +row +cell #[strong Sentence Boundary Detection] +cell +cell #[+procon("pro")] +row +cell #[strong Named Entity Recongition] (NER) +cell +cell #[+procon("pro")] +row +cell #[strong Rule-based Matching] +cell +cell #[+procon("con")] +row +cell #[strong Similarity] +cell +cell #[+procon("pro")] +row +cell #[strong Training] +cell +cell #[+procon("neutral")] +row +cell #[strong Serialization] +cell +cell #[+procon("neutral")] +h(2, "annotations") Linguistic annotations p | spaCy provides a variety of linguistic annotations to give you insights | into a text's grammatical structure. This includes the word types, | i.e. the parts of speech, and how the words are related to each other. | For example, if you're analysing text, it makes a #[em 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. This way, you'll never lose any information | when processing text with spaCy. +h(3, "annotations-token") Tokenization include _spacy-101/_tokenization +h(3, "annotations-pos-deps") Part-of-speech tags and dependencies +tag-model("dependency parse") include _spacy-101/_pos-deps +h(3, "annotations-ner") Named Entities +tag-model("named entities") include _spacy-101/_named-entities +h(2, "vectors-similarity") Word vectors and similarity +tag-model("vectors") include _spacy-101/_similarity include _spacy-101/_word-vectors +h(2, "pipelines") Pipelines include _spacy-101/_pipelines +h(2, "serialization") Serialization include _spacy-101/_serialization +h(2, "architecture") Architecture +image include ../../assets/img/docs/architecture.svg .u-text-right +button("/assets/img/docs/architecture.svg", false, "secondary").u-text-tag View large graphic +table(["Name", "Description"]) +row +cell #[+api("language") #[code Language]] +cell | A text-processing pipeline. Usually you'll load this once per | process as #[code nlp] and pass the instance around your application. +row +cell #[+api("doc") #[code Doc]] +cell A container for accessing linguistic annotations. +row +cell #[+api("span") #[code Span]] +cell A slice from a #[code Doc] object. +row +cell #[+api("token") #[code Token]] +cell | An individual token — i.e. a word, punctuation symbol, whitespace, | etc. +row +cell #[+api("lexeme") #[code Lexeme]] +cell | An entry in the vocabulary. It's a word type with no context, as | opposed to a word token. It therefore has no part-of-speech tag, | dependency parse etc. +row +cell #[+api("vocab") #[code Vocab]] +cell | A lookup table for the vocabulary that allows you to access | #[code Lexeme] objects. +row +cell #[code Morphology] +cell +row +cell #[+api("stringstore") #[code StringStore]] +cell Map strings to and from integer IDs. +row +row +cell #[+api("tokenizer") #[code Tokenizer]] +cell | Segment text, and create #[code Doc] objects with the discovered | segment boundaries. +row +cell #[+api("tagger") #[code Tagger]] +cell Annotate part-of-speech tags on #[code Doc] objects. +row +cell #[+api("dependencyparser") #[code DependencyParser]] +cell Annotate syntactic dependencies on #[code Doc] objects. +row +cell #[+api("entityrecognizer") #[code EntityRecognizer]] +cell | Annotate named entities, e.g. persons or products, on #[code Doc] | objects. +row +cell #[+api("matcher") #[code Matcher]] +cell | Match sequences of tokens, based on pattern rules, similar to | regular expressions. +h(3, "architecture-other") Other +table(["Name", "Description"]) +row +cell #[+api("goldparse") #[code GoldParse]] +cell Collection for training annotations. +row +cell #[+api("goldcorpus") #[code GoldCorpus]] +cell | An annotated corpus, using the JSON file format. Manages | annotations for tagging, dependency parsing and NER.