mirror of
				https://github.com/explosion/spaCy.git
				synced 2025-11-04 09:57:26 +03:00 
			
		
		
		
	
		
			
				
	
	
		
			373 lines
		
	
	
		
			17 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
			
		
		
	
	
			373 lines
		
	
	
		
			17 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
//- 💫 DOCS > USAGE > PROCESSING PIPELINES > CUSTOM COMPONENTS
 | 
						||
 | 
						||
p
 | 
						||
    |  A component receives a #[code Doc] object and can modify it – for example,
 | 
						||
    |  by using the current weights to make a prediction and set some annotation
 | 
						||
    |  on the document. By adding a component to the pipeline, you'll get access
 | 
						||
    |  to the #[code Doc] at any point #[strong during processing] – instead of
 | 
						||
    |  only being able to modify it afterwards.
 | 
						||
 | 
						||
+aside-code("Example").
 | 
						||
    def my_component(doc):
 | 
						||
        # do something to the doc here
 | 
						||
        return doc
 | 
						||
 | 
						||
+table(["Argument", "Type", "Description"])
 | 
						||
    +row
 | 
						||
        +cell #[code doc]
 | 
						||
        +cell #[code Doc]
 | 
						||
        +cell The #[code Doc] object processed by the previous component.
 | 
						||
 | 
						||
    +row("foot")
 | 
						||
        +cell returns
 | 
						||
        +cell #[code Doc]
 | 
						||
        +cell The #[code Doc] object processed by this pipeline component.
 | 
						||
 | 
						||
p
 | 
						||
    |  Custom components can be added to the pipeline using the
 | 
						||
    |  #[+api("language#add_pipe") #[code add_pipe]] method. Optionally, you
 | 
						||
    |  can either specify a component to add it #[strong before or after], tell
 | 
						||
    |  spaCy to add it #[strong first or last] in the pipeline, or define a
 | 
						||
    |  #[strong custom name]. If no name is set and no #[code name] attribute
 | 
						||
    |  is present on your component, the function name is used.
 | 
						||
 | 
						||
+code("Adding pipeline components").
 | 
						||
    def my_component(doc):
 | 
						||
        print("After tokenization, this doc has %s tokens." % len(doc))
 | 
						||
        if len(doc) < 10:
 | 
						||
            print("This is a pretty short document.")
 | 
						||
        return doc
 | 
						||
 | 
						||
    nlp = spacy.load('en')
 | 
						||
    nlp.add_pipe(my_component, name='print_info', first=True)
 | 
						||
    print(nlp.pipe_names) # ['print_info', 'tagger', 'parser', 'ner']
 | 
						||
    doc = nlp(u"This is a sentence.")
 | 
						||
 | 
						||
p
 | 
						||
    |  Of course, you can also wrap your component as a class to allow
 | 
						||
    |  initialising it with custom settings and hold state within the component.
 | 
						||
    |  This is useful for #[strong stateful components], especially ones which
 | 
						||
    |  #[strong depend on shared data].
 | 
						||
 | 
						||
+code.
 | 
						||
    class MyComponent(object):
 | 
						||
        name = 'print_info'
 | 
						||
 | 
						||
        def __init__(self, vocab, short_limit=10):
 | 
						||
            self.vocab = vocab
 | 
						||
            self.short_limit = short_limit
 | 
						||
 | 
						||
        def __call__(self, doc):
 | 
						||
            if len(doc) < self.short_limit:
 | 
						||
                print("This is a pretty short document.")
 | 
						||
            return doc
 | 
						||
 | 
						||
    my_component = MyComponent(nlp.vocab, short_limit=25)
 | 
						||
    nlp.add_pipe(my_component, first=True)
 | 
						||
 | 
						||
+h(3, "custom-components-attributes")
 | 
						||
    |  Extension attributes on #[code Doc], #[code Span] and #[code Token]
 | 
						||
    +tag-new(2)
 | 
						||
 | 
						||
p
 | 
						||
    |  As of v2.0, spaCy allows you to set any custom attributes and methods
 | 
						||
    |  on the #[code Doc], #[code Span] and #[code Token], which become
 | 
						||
    |  available as #[code Doc._], #[code Span._] and #[code Token._] – for
 | 
						||
    |  example, #[code Token._.my_attr]. This lets you store additional
 | 
						||
    |  information relevant to your application, add new features and
 | 
						||
    |  functionality to spaCy, and implement your own models trained with other
 | 
						||
    |  machine learning libraries. It also lets you take advantage of spaCy's
 | 
						||
    |  data structures and the #[code Doc] object as the "single source of
 | 
						||
    |  truth".
 | 
						||
 | 
						||
+aside("Why ._?")
 | 
						||
    |  Writing to a #[code ._] attribute instead of to the #[code Doc] directly
 | 
						||
    |  keeps a clearer separation and makes it easier to ensure backwards
 | 
						||
    |  compatibility. For example, if you've implemented your own #[code .coref]
 | 
						||
    |  property and spaCy claims it one day, it'll break your code. Similarly,
 | 
						||
    |  just by looking at the code, you'll immediately know what's built-in and
 | 
						||
    |  what's custom – for example, #[code doc.sentiment] is spaCy, while
 | 
						||
    |  #[code doc._.sent_score] isn't.
 | 
						||
 | 
						||
p
 | 
						||
    |  There are three main types of extensions, which can be defined using the
 | 
						||
    |  #[+api("doc#set_extension") #[code Doc.set_extension]],
 | 
						||
    |  #[+api("span#set_extension") #[code Span.set_extension]] and
 | 
						||
    |  #[+api("token#set_extension") #[code Token.set_extension]] methods.
 | 
						||
 | 
						||
+list("numbers")
 | 
						||
    +item #[strong Attribute extensions].
 | 
						||
        |  Set a default value for an attribute, which can be overwritten
 | 
						||
        |  manually at any time. Attribute extensions work like "normal"
 | 
						||
        |  variables and are the quickest way to store arbitrary information
 | 
						||
        |  on a #[code Doc], #[code Span] or #[code Token]. Attribute defaults
 | 
						||
        |  behaves just like argument defaults
 | 
						||
        |  #[+a("http://docs.python-guide.org/en/latest/writing/gotchas/#mutable-default-arguments") in Python functions],
 | 
						||
        |  and should not be used for mutable values like dictionaries or lists.
 | 
						||
 | 
						||
        +code-wrapper
 | 
						||
            +code.
 | 
						||
                Doc.set_extension('hello', default=True)
 | 
						||
                assert doc._.hello
 | 
						||
                doc._.hello = False
 | 
						||
 | 
						||
    +item #[strong Property extensions].
 | 
						||
        |  Define a getter and an optional setter function. If no setter is
 | 
						||
        |  provided, the extension is immutable. Since the getter and setter
 | 
						||
        |  functions are only called when you #[em retrieve] the attribute,
 | 
						||
        |  you can also access values of previously added attribute extensions.
 | 
						||
        |  For example, a #[code Doc] getter can average over #[code Token]
 | 
						||
        |   attributes. For #[code Span] extensions, you'll almost always want
 | 
						||
        |  to use a property – otherwise, you'd have to write to
 | 
						||
        |  #[em every possible] #[code Span] in the #[code Doc] to set up the
 | 
						||
        |  values correctly.
 | 
						||
 | 
						||
        +code-wrapper
 | 
						||
            +code.
 | 
						||
                Doc.set_extension('hello', getter=get_hello_value, setter=set_hello_value)
 | 
						||
                assert doc._.hello
 | 
						||
                doc._.hello = 'Hi!'
 | 
						||
 | 
						||
    +item #[strong Method extensions].
 | 
						||
        |  Assign a function that becomes available as an object method. Method
 | 
						||
        |  extensions are always immutable. For more details and implementation
 | 
						||
        |  ideas, see
 | 
						||
        |  #[+a("/usage/examples#custom-components-attr-methods") these examples].
 | 
						||
 | 
						||
        +code-wrapper
 | 
						||
            +code.o-no-block.
 | 
						||
                Doc.set_extension('hello', method=lambda doc, name: 'Hi {}!'.format(name))
 | 
						||
                assert doc._.hello('Bob') == 'Hi Bob!'
 | 
						||
 | 
						||
p
 | 
						||
    |  Before you can access a custom extension, you need to register it using
 | 
						||
    |  the #[code set_extension] method on the object you want
 | 
						||
    |  to add it to, e.g. the #[code Doc]. Keep in mind that extensions are
 | 
						||
    |  always #[strong added globally] and not just on a particular instance.
 | 
						||
    |  If an attribute of the same name
 | 
						||
    |  already exists, or if you're trying to access an attribute that hasn't
 | 
						||
    |  been registered, spaCy will raise an #[code AttributeError].
 | 
						||
 | 
						||
+code("Example").
 | 
						||
    from spacy.tokens import Doc, Span, Token
 | 
						||
 | 
						||
    fruits = ['apple', 'pear', 'banana', 'orange', 'strawberry']
 | 
						||
    is_fruit_getter = lambda token: token.text in fruits
 | 
						||
    has_fruit_getter = lambda obj: any([t.text in fruits for t in obj])
 | 
						||
 | 
						||
    Token.set_extension('is_fruit', getter=is_fruit_getter)
 | 
						||
    Doc.set_extension('has_fruit', getter=has_fruit_getter)
 | 
						||
    Span.set_extension('has_fruit', getter=has_fruit_getter)
 | 
						||
 | 
						||
+aside-code("Usage example").
 | 
						||
    doc = nlp(u"I have an apple and a melon")
 | 
						||
    assert doc[3]._.is_fruit      # get Token attributes
 | 
						||
    assert not doc[0]._.is_fruit
 | 
						||
    assert doc._.has_fruit        # get Doc attributes
 | 
						||
    assert doc[1:4]._.has_fruit   # get Span attributes
 | 
						||
 | 
						||
p
 | 
						||
    |  Once you've registered your custom attribute, you can also use the
 | 
						||
    |  built-in #[code set], #[code get] and #[code has] methods to modify and
 | 
						||
    |  retrieve the attributes. This is especially useful it you want to pass in
 | 
						||
    |  a string instead of calling #[code doc._.my_attr].
 | 
						||
 | 
						||
+table(["Method", "Description", "Valid for", "Example"])
 | 
						||
    +row
 | 
						||
        +cell #[code ._.set()]
 | 
						||
        +cell Set a value for an attribute.
 | 
						||
        +cell Attributes, mutable properties.
 | 
						||
        +cell #[code.u-break token._.set('my_attr', True)]
 | 
						||
 | 
						||
    +row
 | 
						||
        +cell #[code ._.get()]
 | 
						||
        +cell Get the value of an attribute.
 | 
						||
        +cell Attributes, mutable properties, immutable properties, methods.
 | 
						||
        +cell #[code.u-break my_attr = span._.get('my_attr')]
 | 
						||
 | 
						||
    +row
 | 
						||
        +cell #[code ._.has()]
 | 
						||
        +cell Check if an attribute exists.
 | 
						||
        +cell Attributes, mutable properties, immutable properties, methods.
 | 
						||
        +cell #[code.u-break doc._.has('my_attr')]
 | 
						||
 | 
						||
+infobox("How the ._ is implemented")
 | 
						||
    |  Extension definitions – the defaults, methods, getters and setters you
 | 
						||
    |  pass in to #[code set_extension] – are stored in class attributes on the
 | 
						||
    |  #[code Underscore] class. If you write to an extension attribute, e.g.
 | 
						||
    |  #[code doc._.hello = True], the data is stored within the
 | 
						||
    |  #[+api("doc#attributes") #[code Doc.user_data]] dictionary. To keep the
 | 
						||
    |  underscore data separate from your other dictionary entries, the string
 | 
						||
    |  #[code "._."] is placed before the name, in a tuple.
 | 
						||
 | 
						||
+h(4, "component-example1") Example: Custom sentence segmentation logic
 | 
						||
 | 
						||
p
 | 
						||
    |  Let's say you want to implement custom logic to improve spaCy's sentence
 | 
						||
    |  boundary detection. Currently, sentence segmentation is based on the
 | 
						||
    |  dependency parse, which doesn't always produce ideal results. The custom
 | 
						||
    |  logic should therefore be applied #[strong after] tokenization, but
 | 
						||
    |  #[strong before] the dependency parsing – this way, the parser can also
 | 
						||
    |  take advantage of the sentence boundaries.
 | 
						||
 | 
						||
+code.
 | 
						||
    def sbd_component(doc):
 | 
						||
        for i, token in enumerate(doc[:-2]):
 | 
						||
            # define sentence start if period + titlecase token
 | 
						||
            if token.text == '.' and doc[i+1].is_title:
 | 
						||
                doc[i+1].sent_start = True
 | 
						||
        return doc
 | 
						||
 | 
						||
    nlp = spacy.load('en')
 | 
						||
    nlp.add_pipe(sbd_component, before='parser')  # insert before the parser
 | 
						||
 | 
						||
+h(4, "component-example2")
 | 
						||
    |  Example: Pipeline component for entity matching and tagging with
 | 
						||
    |  custom attributes
 | 
						||
 | 
						||
p
 | 
						||
    |  This example shows how to create a spaCy extension that takes a
 | 
						||
    |  terminology list (in this case, single- and multi-word company names),
 | 
						||
    |  matches the occurences in a document, labels them as #[code ORG] entities,
 | 
						||
    |  merges the tokens and sets custom #[code is_tech_org] and
 | 
						||
    |  #[code has_tech_org] attributes. For efficient matching, the example uses
 | 
						||
    |  the #[+api("phrasematcher") #[code PhraseMatcher]] which accepts
 | 
						||
    |  #[code Doc] objects as match patterns and works well for large
 | 
						||
    |  terminology lists. It also ensures your patterns will always match, even
 | 
						||
    |  when you customise spaCy's tokenization rules. When you call #[code nlp]
 | 
						||
    |  on a text, the custom pipeline component is applied to the #[code Doc]
 | 
						||
 | 
						||
+github("spacy", "examples/pipeline/custom_component_entities.py", 500)
 | 
						||
 | 
						||
p
 | 
						||
    |  Wrapping this functionality in a
 | 
						||
    |  pipeline component allows you to reuse the module with different
 | 
						||
    |  settings, and have all pre-processing taken care of when you call
 | 
						||
    |  #[code nlp] on your text and receive a #[code Doc] object.
 | 
						||
 | 
						||
+h(4, "component-example3")
 | 
						||
    |  Example: Pipeline component for GPE entities and country meta data via a
 | 
						||
    |  REST API
 | 
						||
 | 
						||
p
 | 
						||
    |  This example shows the implementation of a pipeline component
 | 
						||
    |  that fetches country meta data via the
 | 
						||
    |  #[+a("https://restcountries.eu") REST Countries API] sets entity
 | 
						||
    |  annotations for countries, merges entities into one token and
 | 
						||
    |  sets custom attributes on the #[code Doc], #[code Span] and
 | 
						||
    |  #[code Token] – for example, the capital, latitude/longitude coordinates
 | 
						||
    |  and even the country flag.
 | 
						||
 | 
						||
+github("spacy", "examples/pipeline/custom_component_countries_api.py", 500)
 | 
						||
 | 
						||
p
 | 
						||
    |  In this case, all data can be fetched on initialisation in one request.
 | 
						||
    |  However, if you're working with text that contains incomplete country
 | 
						||
    |  names, spelling mistakes or foreign-language versions, you could also
 | 
						||
    |  implement a #[code like_country]-style getter function that makes a
 | 
						||
    |  request to the search API endpoint and returns the best-matching
 | 
						||
    |  result.
 | 
						||
 | 
						||
+h(4, "custom-components-usage-ideas") Other usage ideas
 | 
						||
 | 
						||
+list
 | 
						||
    +item
 | 
						||
        |  #[strong Adding new features and hooking in models]. For example,
 | 
						||
        |  a sentiment analysis model, or your preferred solution for
 | 
						||
        |  lemmatization or sentiment analysis. spaCy's built-in tagger,
 | 
						||
        |  parser and entity recognizer respect annotations that were already
 | 
						||
        |  set on the #[code Doc] in a previous step of the pipeline.
 | 
						||
    +item
 | 
						||
        |  #[strong Integrating other libraries and APIs]. For example, your
 | 
						||
        |  pipeline component can write additional information and data
 | 
						||
        |  directly to the #[code Doc] or #[code Token] as custom attributes,
 | 
						||
        |  while making sure no information is lost in the process. This can
 | 
						||
        |  be output generated by other libraries and models, or an external
 | 
						||
        |  service with a REST API.
 | 
						||
    +item
 | 
						||
        |  #[strong Debugging and logging]. For example, a component which
 | 
						||
        |  stores and/or exports relevant information about the current state
 | 
						||
        |  of the processed document, and insert it at any point of your
 | 
						||
        |  pipeline.
 | 
						||
 | 
						||
+infobox("Developing third-party extensions")
 | 
						||
    |  The new pipeline management and custom attributes finally make it easy
 | 
						||
    |  to develop your own spaCy extensions and plugins and share them with
 | 
						||
    |  others. Extensions can claim their own #[code ._] namespace and exist as
 | 
						||
    |  standalone packages. If you're developing a tool or library and want to
 | 
						||
    |  make it easy for others to use it with spaCy and add it to their
 | 
						||
    |  pipeline, all you have to do is expose a function that takes a
 | 
						||
    |  #[code Doc], modifies it and returns it. For more details and
 | 
						||
    |  #[strong best practices], see the section on
 | 
						||
    |  #[+a("#extensions") developing spaCy extensions].
 | 
						||
 | 
						||
+h(3, "custom-components-user-hooks") User hooks
 | 
						||
 | 
						||
p
 | 
						||
    |  While it's generally recommended to use the #[code Doc._], #[code Span._]
 | 
						||
    |  and #[code Token._] proxies to add your own custom attributes, spaCy
 | 
						||
    |  offers a few exceptions to allow #[strong customising the built-in methods]
 | 
						||
    |  like #[+api("doc#similarity") #[code Doc.similarity]] or
 | 
						||
    |  #[+api("doc#vector") #[code Doc.vector]]. with your own hooks, which can
 | 
						||
    |  rely on statistical models you train yourself. For instance, you can
 | 
						||
    |  provide your own on-the-fly sentence segmentation algorithm or document
 | 
						||
    |  similarity method.
 | 
						||
 | 
						||
p
 | 
						||
    |  Hooks let you customize some of the behaviours of the #[code Doc],
 | 
						||
    |  #[code Span] or #[code Token] objects by adding a component to the
 | 
						||
    |  pipeline. For instance, to customize the
 | 
						||
    |  #[+api("doc#similarity") #[code Doc.similarity]] method, you can add a
 | 
						||
    |  component that sets a custom function to
 | 
						||
    |  #[code doc.user_hooks['similarity']]. The built-in #[code Doc.similarity]
 | 
						||
    |  method will check the #[code user_hooks] dict, and delegate to your
 | 
						||
    |  function if you've set one. Similar results can be achieved by setting
 | 
						||
    |  functions to #[code Doc.user_span_hooks] and #[code Doc.user_token_hooks].
 | 
						||
 | 
						||
+aside("Implementation note")
 | 
						||
    |  The hooks live on the #[code Doc] object because the #[code Span] and
 | 
						||
    |  #[code Token] objects are created lazily, and don't own any data. They
 | 
						||
    |  just proxy to their parent #[code Doc]. This turns out to be convenient
 | 
						||
    |  here — we only have to worry about installing hooks in one place.
 | 
						||
 | 
						||
+table(["Name", "Customises"])
 | 
						||
    +row
 | 
						||
        +cell #[code user_hooks]
 | 
						||
        +cell
 | 
						||
            +api("doc#vector") #[code Doc.vector]
 | 
						||
            +api("doc#has_vector") #[code Doc.has_vector]
 | 
						||
            +api("doc#vector_norm") #[code Doc.vector_norm]
 | 
						||
            +api("doc#sents") #[code Doc.sents]
 | 
						||
 | 
						||
    +row
 | 
						||
        +cell #[code user_token_hooks]
 | 
						||
        +cell
 | 
						||
            +api("token#similarity") #[code Token.similarity]
 | 
						||
            +api("token#vector") #[code Token.vector]
 | 
						||
            +api("token#has_vector") #[code Token.has_vector]
 | 
						||
            +api("token#vector_norm") #[code Token.vector_norm]
 | 
						||
            +api("token#conjuncts") #[code Token.conjuncts]
 | 
						||
 | 
						||
    +row
 | 
						||
        +cell #[code user_span_hooks]
 | 
						||
        +cell
 | 
						||
            +api("span#similarity") #[code Span.similarity]
 | 
						||
            +api("span#vector") #[code Span.vector]
 | 
						||
            +api("span#has_vector") #[code Span.has_vector]
 | 
						||
            +api("span#vector_norm") #[code Span.vector_norm]
 | 
						||
            +api("span#root") #[code Span.root]
 | 
						||
 | 
						||
+code("Add custom similarity hooks").
 | 
						||
    class SimilarityModel(object):
 | 
						||
        def __init__(self, model):
 | 
						||
            self._model = model
 | 
						||
 | 
						||
        def __call__(self, doc):
 | 
						||
            doc.user_hooks['similarity'] = self.similarity
 | 
						||
            doc.user_span_hooks['similarity'] = self.similarity
 | 
						||
            doc.user_token_hooks['similarity'] = self.similarity
 | 
						||
 | 
						||
        def similarity(self, obj1, obj2):
 | 
						||
            y = self._model([obj1.vector, obj2.vector])
 | 
						||
            return float(y[0])
 |