mirror of
https://github.com/explosion/spaCy.git
synced 2024-12-27 18:36:36 +03:00
354 lines
14 KiB
Plaintext
354 lines
14 KiB
Plaintext
//- 💫 DOCS > USAGE > PIPELINE
|
||
|
||
include ../../_includes/_mixins
|
||
|
||
+h(2, "101") Pipelines 101
|
||
|
||
include _spacy-101/_pipelines
|
||
|
||
+h(2, "pipelines") How pipelines work
|
||
|
||
p
|
||
| spaCy makes it very easy to create your own pipelines consisting of
|
||
| reusable components – this includes spaCy's default tensorizer, tagger,
|
||
| parser and entity regcognizer, but also your own custom processing
|
||
| functions. A pipeline component can be added to an already existing
|
||
| #[code nlp] object, specified when initialising a #[code Language] class,
|
||
| or defined within a
|
||
| #[+a("/docs/usage/saving-loading#models-generating") model package].
|
||
|
||
p
|
||
| When you load a model, spaCy first consults the model's
|
||
| #[+a("/docs/usage/saving-loading#models-generating") meta.json]. The
|
||
| meta typically includes the model details, the ID of a language class,
|
||
| and an optional list of pipeline components. spaCy then does the
|
||
| following:
|
||
|
||
+aside-code("meta.json (excerpt)", "json").
|
||
{
|
||
"name": "example_model",
|
||
"lang": "en"
|
||
"description": "Example model for spaCy",
|
||
"pipeline": ["token_vectors", "tagger"]
|
||
}
|
||
|
||
+list("numbers")
|
||
+item
|
||
| Look up #[strong pipeline IDs] in the available
|
||
| #[strong pipeline factories].
|
||
+item
|
||
| Initialise the #[strong pipeline components] by calling their
|
||
| factories with the #[code Vocab] as an argument. This gives each
|
||
| factory and component access to the pipeline's shared data, like
|
||
| strings, morphology and annotation scheme.
|
||
+item
|
||
| Load the #[strong language class and data] for the given ID via
|
||
| #[+api("util.get_lang_class") #[code get_lang_class]].
|
||
+item
|
||
| Pass the path to the #[strong model data] to the #[code Language]
|
||
| class and return it.
|
||
|
||
p
|
||
| So when you call this...
|
||
|
||
+code.
|
||
nlp = spacy.load('en')
|
||
|
||
p
|
||
| ... the model tells spaCy to use the pipeline
|
||
| #[code ["tensorizer", "tagger", "parser", "ner"]]. spaCy will then look
|
||
| up each string in its internal factories registry and initialise the
|
||
| individual components. It'll then load #[code spacy.lang.en.English],
|
||
| pass it the path to the model's data directory, and return it for you
|
||
| to use as the #[code nlp] object.
|
||
|
||
p
|
||
| When you call #[code nlp] on a text, spaCy will #[strong tokenize] it and
|
||
| then #[strong call each component] on the #[code Doc], in order.
|
||
| Components all return the modified document, which is then processed by
|
||
| the component next in the pipeline.
|
||
|
||
+code("The pipeline under the hood").
|
||
doc = nlp.make_doc(u'This is a sentence')
|
||
for proc in nlp.pipeline:
|
||
doc = proc(doc)
|
||
|
||
+h(2, "creating") Creating pipeline components and factories
|
||
|
||
p
|
||
| spaCy lets you customise the pipeline with your own components. Components
|
||
| are functions that receive a #[code Doc] object, modify and return it.
|
||
| If your component is stateful, you'll want to create a new one for each
|
||
| pipeline. You can do that by defining and registering a factory which
|
||
| receives the shared #[code Vocab] object and returns a component.
|
||
|
||
+h(3, "creating-component") Creating a component
|
||
|
||
p
|
||
| A component receives a #[code Doc] object and
|
||
| #[strong performs the actual processing] – for example, 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.
|
||
|
||
+footrow
|
||
+cell returns
|
||
+cell #[code Doc]
|
||
+cell The #[code Doc] object processed by this pipeline component.
|
||
|
||
p
|
||
| When creating a new #[code Language] class, you can pass it a list of
|
||
| pipeline component functions to execute in that order. You can also
|
||
| add it to an existing pipeline by modifying #[code nlp.pipeline] – just
|
||
| be careful not to overwrite a pipeline or its components by accident!
|
||
|
||
+code.
|
||
# Create a new Language object with a pipeline
|
||
from spacy.language import Language
|
||
nlp = Language(pipeline=[my_component])
|
||
|
||
# Modify an existing pipeline
|
||
nlp = spacy.load('en')
|
||
nlp.pipeline.append(my_component)
|
||
|
||
+h(3, "creating-factory") Creating a factory
|
||
|
||
p
|
||
| A factory is a #[strong function that returns a pipeline component].
|
||
| It's called with the #[code Vocab] object, to give it access to the
|
||
| shared data between components – for example, the strings, morphology,
|
||
| vectors or annotation scheme. Factories are useful for creating
|
||
| #[strong stateful components], especially ones which
|
||
| #[strong depend on shared data].
|
||
|
||
+aside-code("Example").
|
||
def my_factory(vocab):
|
||
# load some state
|
||
def my_component(doc):
|
||
# process the doc
|
||
return doc
|
||
return my_component
|
||
|
||
+table(["Argument", "Type", "Description"])
|
||
+row
|
||
+cell #[code vocab]
|
||
+cell #[code Vocab]
|
||
+cell
|
||
| Shared data between components, including strings, morphology,
|
||
| vectors etc.
|
||
|
||
+footrow
|
||
+cell returns
|
||
+cell callable
|
||
+cell The pipeline component.
|
||
|
||
p
|
||
| By creating a factory, you're essentially telling spaCy how to get the
|
||
| pipeline component #[strong once the vocab is available]. Factories need to
|
||
| be registered via #[+api("spacy#set_factory") #[code set_factory()]] and
|
||
| by assigning them a unique ID. This ID can be added to the pipeline as a
|
||
| string. When creating a pipeline, you're free to mix strings and
|
||
| callable components:
|
||
|
||
+code.
|
||
spacy.set_factory('my_factory', my_factory)
|
||
nlp = Language(pipeline=['my_factory', my_other_component])
|
||
|
||
p
|
||
| If spaCy comes across a string in the pipeline, it will try to resolve it
|
||
| by looking it up in the available factories. The factory will then be
|
||
| initialised with the #[code Vocab]. Providing factory names instead of
|
||
| callables also makes it easy to specify them in the model's
|
||
| #[+a("/docs/usage/saving-loading#models-generating") meta.json]. If you're
|
||
| training your own model and want to use one of spaCy's default components,
|
||
| you won't have to worry about finding and implementing it either – to use
|
||
| the default tagger, simply add #[code "tagger"] to the pipeline, and
|
||
| #[strong spaCy will know what to do].
|
||
|
||
|
||
+infobox("Important note")
|
||
| Because factories are #[strong resolved on initialisation] of the
|
||
| #[code Language] class, it's #[strong not possible] to add them to the
|
||
| pipeline afterwards, e.g. by modifying #[code nlp.pipeline]. This only
|
||
| works with individual component functions. To use factories, you need to
|
||
| create a new #[code Language] object, or generate a
|
||
| #[+a("/docs/usage/saving-loading#models-generating") model package] with
|
||
| a custom pipeline.
|
||
|
||
+h(2, "example1") Example: Custom sentence segmentation logic
|
||
|
||
+aside("Real-world examples")
|
||
| To see real-world examples of pipeline factories and components in action,
|
||
| you can have a look at the source of spaCy's built-in components, e.g.
|
||
| the #[+src(gh("spacy")) tagger], #[+src(gh("spacy")) parser] or
|
||
| #[+src(gh("spacy")) entity recognizer].
|
||
|
||
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
|
||
|
||
p
|
||
| In this case, we simply want to add the component to the existing
|
||
| pipeline of the English model. We can do this by inserting it at index 0
|
||
| of #[code nlp.pipeline]:
|
||
|
||
+code.
|
||
nlp = spacy.load('en')
|
||
nlp.pipeline.insert(0, sbd_component)
|
||
|
||
p
|
||
| When you call #[code nlp] on some text, spaCy will tokenize it to create
|
||
| a #[code Doc] object, and first call #[code sbd_component] on it, followed
|
||
| by the model's default pipeline.
|
||
|
||
+h(2, "example2") Example: Sentiment model
|
||
|
||
p
|
||
| Let's say you have trained your own document sentiment model on English
|
||
| text. After tokenization, you want spaCy to first execute the
|
||
| #[strong default tensorizer], followed by a custom
|
||
| #[strong sentiment component] that adds a #[code .sentiment]
|
||
| property to the #[code Doc], containing your model's sentiment precition.
|
||
|
||
p
|
||
| Your component class will have a #[code from_disk()] method that spaCy
|
||
| calls to load the model data. When called, the component will compute
|
||
| the sentiment score, add it to the #[code Doc] and return the modified
|
||
| document. Optionally, the component can include an #[code update()] method
|
||
| to allow training the model.
|
||
|
||
+code.
|
||
import pickle
|
||
from pathlib import Path
|
||
|
||
class SentimentComponent(object):
|
||
def __init__(self, vocab):
|
||
self.weights = None
|
||
|
||
def __call__(self, doc):
|
||
doc.sentiment = sum(self.weights*doc.vector) # set sentiment property
|
||
return doc
|
||
|
||
def from_disk(self, path): # path = model path + factory ID ('sentiment')
|
||
self.weights = pickle.load(Path(path) / 'weights.bin') # load weights
|
||
return self
|
||
|
||
def update(self, doc, gold): # update weights – allows training!
|
||
prediction = sum(self.weights*doc.vector)
|
||
self.weights -= 0.001*doc.vector*(prediction-gold.sentiment)
|
||
|
||
p
|
||
| The factory will initialise the component with the #[code Vocab] object.
|
||
| To be able to add it to your model's pipeline as #[code 'sentiment'],
|
||
| it also needs to be registered via
|
||
| #[+api("spacy#set_factory") #[code set_factory()]].
|
||
|
||
+code.
|
||
def sentiment_factory(vocab):
|
||
component = SentimentComponent(vocab) # initialise component
|
||
return component
|
||
|
||
spacy.set_factory('sentiment', sentiment_factory)
|
||
|
||
p
|
||
| The above code should be #[strong shipped with your model]. You can use
|
||
| the #[+api("cli#package") #[code package]] command to create all required
|
||
| files and directories. The model package will include an
|
||
| #[+src(gh("spacy-dev-resources", "templates/model/en_model_name/__init__.py")) __init__.py]
|
||
| with a #[code load()] method, that will initialise the language class with
|
||
| the model's pipeline and call the #[code from_disk()] method to load
|
||
| the model data.
|
||
|
||
p
|
||
| In the model package's meta.json, specify the language class and pipeline
|
||
| IDs:
|
||
|
||
+code("meta.json (excerpt)", "json").
|
||
{
|
||
"name": "sentiment_model",
|
||
"lang": "en",
|
||
"version": "1.0.0",
|
||
"spacy_version": ">=2.0.0,<3.0.0",
|
||
"pipeline": ["tensorizer", "sentiment"]
|
||
}
|
||
|
||
p
|
||
| When you load your new model, spaCy will call the model's #[code load()]
|
||
| method. This will return a #[code Language] object with a pipeline
|
||
| containing the default tensorizer, and the sentiment component returned
|
||
| by your custom #[code "sentiment"] factory.
|
||
|
||
+code.
|
||
nlp = spacy.load('en_sentiment_model')
|
||
doc = nlp(u'I love pizza')
|
||
assert doc.sentiment
|
||
|
||
+infobox("Saving and loading models")
|
||
| For more information and a detailed guide on how to package your model,
|
||
| see the documentation on
|
||
| #[+a("/docs/usage/saving-loading#models") saving and loading models].
|
||
|
||
+h(2, "disabling") Disabling pipeline components
|
||
|
||
p
|
||
| If you don't need a particular component of the pipeline – for
|
||
| example, the tagger or the parser, you can disable loading it. This can
|
||
| sometimes make a big difference and improve loading speed. Disabled
|
||
| component names can be provided to #[+api("spacy#load") #[code spacy.load]],
|
||
| #[+api("language#from_disk") #[code Language.from_disk]] or the
|
||
| #[code nlp] object itself as a list:
|
||
|
||
+code.
|
||
nlp = spacy.load('en', disable['parser', 'tagger'])
|
||
nlp = English().from_disk('/model', disable=['tensorizer', 'ner'])
|
||
doc = nlp(u"I don't want parsed", disable=['parser'])
|
||
|
||
p
|
||
| Note that you can't write directly to #[code nlp.pipeline], as this list
|
||
| holds the #[em actual components], not the IDs. However, if you know the
|
||
| order of the components, you can still slice the list:
|
||
|
||
+code.
|
||
nlp = spacy.load('en')
|
||
nlp.pipeline = nlp.pipeline[:2] # only use the first two components
|
||
|
||
+infobox("Important note: disabling pipeline components")
|
||
.o-block
|
||
| Since spaCy v2.0 comes with better support for customising the
|
||
| processing pipeline components, the #[code parser], #[code tagger]
|
||
| and #[code entity] keyword arguments have been replaced with
|
||
| #[code disable], which takes a list of pipeline component names.
|
||
| This lets you disable both default and custom components when loading
|
||
| a model, or initialising a Language class via
|
||
| #[+api("language-from_disk") #[code from_disk]].
|
||
+code-new.
|
||
nlp = spacy.load('en', disable=['tagger', 'ner'])
|
||
doc = nlp(u"I don't want parsed", disable=['parser'])
|
||
+code-old.
|
||
nlp = spacy.load('en', tagger=False, entity=False)
|
||
doc = nlp(u"I don't want parsed", parse=False)
|