mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-16 14:47:16 +03:00
83 lines
3.4 KiB
Plaintext
83 lines
3.4 KiB
Plaintext
//- 💫 DOCS > USAGE > SPACY 101 > PIPELINES
|
||
|
||
p
|
||
| When you call #[code nlp] on a text, spaCy first tokenizes the text to
|
||
| produce a #[code Doc] object. The #[code Doc] is then processed in several
|
||
| different steps – this is also referred to as the
|
||
| #[strong processing pipeline]. The pipeline used by the
|
||
| #[+a("/models") default models] consists of a tagger, a parser and an
|
||
| entity recognizer. Each pipeline component returns the processed
|
||
| #[code Doc], which is then passed on to the next component.
|
||
|
||
+graphic("/assets/img/pipeline.svg")
|
||
include ../../assets/img/pipeline.svg
|
||
|
||
+aside
|
||
| #[strong Name:] ID of the pipeline component.#[br]
|
||
| #[strong Component:] spaCy's implementation of the component.#[br]
|
||
| #[strong Creates:] Objects, attributes and properties modified and set by
|
||
| the component.
|
||
|
||
+table(["Name", "Component", "Creates", "Description"])
|
||
+row
|
||
+cell #[strong tokenizer]
|
||
+cell #[+api("tokenizer") #[code Tokenizer]]
|
||
+cell #[code Doc]
|
||
+cell Segment text into tokens.
|
||
|
||
+row("divider")
|
||
+cell #[strong tagger]
|
||
+cell #[+api("tagger") #[code Tagger]]
|
||
+cell #[code Doc[i].tag]
|
||
+cell Assign part-of-speech tags.
|
||
|
||
+row
|
||
+cell #[strong parser]
|
||
+cell #[+api("dependencyparser") #[code DependencyParser]]
|
||
+cell
|
||
| #[code Doc[i].head],
|
||
| #[code Doc[i].dep],
|
||
| #[code Doc.sents],
|
||
| #[code Doc.noun_chunks]
|
||
+cell Assign dependency labels.
|
||
|
||
+row
|
||
+cell #[strong ner]
|
||
+cell #[+api("entityrecognizer") #[code EntityRecognizer]]
|
||
+cell #[code Doc.ents], #[code Doc[i].ent_iob], #[code Doc[i].ent_type]
|
||
+cell Detect and label named entities.
|
||
|
||
+row
|
||
+cell #[strong textcat]
|
||
+cell #[+api("textcategorizer") #[code TextCategorizer]]
|
||
+cell #[code Doc.cats]
|
||
+cell Assign document labels.
|
||
|
||
+row("divider")
|
||
+cell #[strong ...]
|
||
+cell #[+a("/usage/processing-pipelines#custom-components") custom components]
|
||
+cell #[code Doc._.xxx], #[code Token._.xxx], #[code Span._.xxx]
|
||
+cell Assign custom attributes, methods or properties.
|
||
|
||
p
|
||
| The processing pipeline always #[strong depends on the statistical model]
|
||
| and its capabilities. For example, a pipeline can only include an entity
|
||
| recognizer component if the model includes data to make predictions of
|
||
| entity labels. This is why each model will specify the pipeline to use
|
||
| in its meta data, as a simple list containing the component names:
|
||
|
||
+code(false, "json").
|
||
"pipeline": ["tagger", "parser", "ner"]
|
||
|
||
p
|
||
| Although you can mix and match pipeline components, their
|
||
| #[strong order and combination] is usually important. Some components may
|
||
| require certain modifications on the #[code Doc] to process it. As the
|
||
| processing pipeline is applied, spaCy encodes the document's internal
|
||
| #[strong meaning representations] as an array of floats, also called a
|
||
| #[strong tensor]. This includes the tokens and their context, which is
|
||
| required for the first component, the tagger, to make predictions of the
|
||
| part-of-speech tags. Because spaCy's models are neural network models,
|
||
| they only "speak" tensors and expect the input #[code Doc] to have
|
||
| a #[code tensor].
|