spaCy/website/docs/usage/processing-pipelines.md

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Language Processing Pipelines vectors-similarity
How Pipelines Work
pipelines
Custom Components
custom-components
Extension Attributes
custom-components-attributes
Plugins & Wrappers
plugins

import Pipelines101 from 'usage/101/_pipelines.md'

How pipelines work

spaCy makes it very easy to create your own pipelines consisting of reusable components this includes spaCy's default tagger, parser and entity recognizer, but also your own custom processing functions. A pipeline component can be added to an already existing nlp object, specified when initializing a Language class, or defined within a model package.

When you load a model, spaCy first consults the model's 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:

meta.json (excerpt)

{
  "name": "example_model",
  "lang": "en",
  "description": "Example model for spaCy",
  "pipeline": ["tagger", "parser"]
}
  1. Load the language class and data for the given ID via get_lang_class and initialize it. The Language class contains the shared vocabulary, tokenization rules and the language-specific annotation scheme.
  2. Iterate over the pipeline names and create each component using create_pipe, which looks them up in Language.factories.
  3. Add each pipeline component to the pipeline in order, using add_pipe.
  4. Make the model data available to the Language class by calling from_disk with the path to the model data directory.

So when you call this...

nlp = spacy.load("en")

... the model tells spaCy to use the language "en" and the pipeline ["tagger", "parser", "ner"]. spaCy will then initialize spacy.lang.en.English, and create each pipeline component and add it to the processing pipeline. It'll then load in the model's data from its data directory and return the modified Language class for you to use as the nlp object.

Fundamentally, a spaCy model consists of three components: the weights, i.e. binary data loaded in from a directory, a pipeline of functions called in order, and language data like the tokenization rules and annotation scheme. All of this is specific to each model, and defined in the model's meta.json for example, a Spanish NER model requires different weights, language data and pipeline components than an English parsing and tagging model. This is also why the pipeline state is always held by the Language class. spacy.load puts this all together and returns an instance of Language with a pipeline set and access to the binary data:

### spacy.load under the hood
lang = "en"
pipeline = ["tagger", "parser", "ner"]
data_path = "path/to/en_core_web_sm/en_core_web_sm-2.0.0"

cls = spacy.util.get_lang_class(lang)   # 1. Get Language instance, e.g. English()
nlp = cls()                             # 2. Initialize it
for name in pipeline:
    component = nlp.create_pipe(name)   # 3. Create the pipeline components
    nlp.add_pipe(component)             # 4. Add the component to the pipeline
nlp.from_disk(model_data_path)          # 5. Load in the binary data

When you call nlp on a text, spaCy will tokenize it and then call each component on the Doc, in order. Since the model data is loaded, the components can access it to assign annotations to the Doc object, and subsequently to the Token and Span which are only views of the Doc, and don't own any data themselves. All components return the modified document, which is then processed by the component next in the pipeline.

### The pipeline under the hood
doc = nlp.make_doc(u"This is a sentence")   # create a Doc from raw text
for name, proc in nlp.pipeline:             # iterate over components in order
    doc = proc(doc)                         # apply each component

The current processing pipeline is available as nlp.pipeline, which returns a list of (name, component) tuples, or nlp.pipe_names, which only returns a list of human-readable component names.

print(nlp.pipeline)
# [('tagger', <spacy.pipeline.Tagger>), ('parser', <spacy.pipeline.DependencyParser>), ('ner', <spacy.pipeline.EntityRecognizer>)]
print(nlp.pipe_names)
# ['tagger', 'parser', 'ner']

Built-in pipeline components

spaCy ships with several built-in pipeline components that are also available in the Language.factories. This means that you can initialize them by calling nlp.create_pipe with their string names and require them in the pipeline settings in your model's meta.json.

Usage

# Option 1: Import and initialize
from spacy.pipeline import EntityRuler
ruler = EntityRuler(nlp)
nlp.add_pipe(ruler)

# Option 2: Using nlp.create_pipe
sentencizer = nlp.create_pipe("sentencizer")
nlp.add_pipe(sentencizer)
String name Component Description
tagger Tagger Assign part-of-speech-tags.
parser DependencyParser Assign dependency labels.
ner EntityRecognizer Assign named entities.
textcat TextCategorizer Assign text categories.
entity_ruler EntityRuler Assign named entities based on pattern rules.
sentencizer SentenceSegmenter Add rule-based sentence segmentation without the dependency parse.
merge_noun_chunks merge_noun_chunks Merge all noun chunks into a single token. Should be added after the tagger and parser.
merge_entities merge_entities Merge all entities into a single token. Should be added after the entity recognizer.
merge_subtokens merge_subtokens Merge subtokens predicted by the parser into single tokens. Should be added after the parser.

Disabling and modifying pipeline components

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 spacy.load, Language.from_disk or the nlp object itself as a list:

nlp = spacy.load("en", disable=["parser", "tagger"])
nlp = English().from_disk("/model", disable=["ner"])

You can also use the remove_pipe method to remove pipeline components from an existing pipeline, the rename_pipe method to rename them, or the replace_pipe method to replace them with a custom component entirely (more details on this in the section on custom components.

nlp.remove_pipe("parser")
nlp.rename_pipe("ner", "entityrecognizer")
nlp.replace_pipe("tagger", my_custom_tagger)

Since spaCy v2.0 comes with better support for customizing the processing pipeline components, the parser, tagger and entity keyword arguments have been replaced with disable, which takes a list of pipeline component names. This lets you disable pre-defined components when loading a model, or initializing a Language class via from_disk.

- nlp = spacy.load('en', tagger=False, entity=False)
- doc = nlp(u"I don't want parsed", parse=False)

+ nlp = spacy.load('en', disable=['ner'])
+ nlp.remove_pipe('parser')
+ doc = nlp(u"I don't want parsed")

Creating custom pipeline components

A component receives a 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 Doc at any point during processing instead of only being able to modify it afterwards.

Example

def my_component(doc):
   # do something to the doc here
   return doc
Argument Type Description
doc Doc The Doc object processed by the previous component.
RETURNS Doc The Doc object processed by this pipeline component.

Custom components can be added to the pipeline using the add_pipe method. Optionally, you can either specify a component to add it before or after, tell spaCy to add it first or last in the pipeline, or define a custom name. If no name is set and no name attribute is present on your component, the function name is used.

Example

nlp.add_pipe(my_component)
nlp.add_pipe(my_component, first=True)
nlp.add_pipe(my_component, before="parser")
Argument Type Description
last bool If set to True, component is added last in the pipeline (default).
first bool If set to True, component is added first in the pipeline.
before unicode String name of component to add the new component before.
after unicode String name of component to add the new component after.

Example: A simple pipeline component

The following component receives the Doc in the pipeline and prints some information about it: the number of tokens, the part-of-speech tags of the tokens and a conditional message based on the document length.

✏️ Things to try

  1. Add the component first in the pipeline by setting first=True. You'll see that the part-of-speech tags are empty, because the component now runs before the tagger and the tags aren't available yet.
  2. Change the component name or remove the name argument. You should see this change reflected in nlp.pipe_names.
  3. Print nlp.pipeline. You'll see a list of tuples describing the component name and the function that's called on the Doc object in the pipeline.
### {executable="true"}
import spacy

def my_component(doc):
    print("After tokenization, this doc has {} tokens.".format(len(doc)))
    print("The part-of-speech tags are:", [token.pos_ for token in doc])
    if len(doc) < 10:
        print("This is a pretty short document.")
    return doc

nlp = spacy.load("en_core_web_sm")
nlp.add_pipe(my_component, name="print_info", last=True)
print(nlp.pipe_names)  # ['print_info', 'tagger', 'parser', 'ner']
doc = nlp(u"This is a sentence.")

Of course, you can also wrap your component as a class to allow initializing it with custom settings and hold state within the component. This is useful for stateful components, especially ones which depend on shared data. In the following example, the custom component EntityMatcher can be initialized with nlp object, a terminology list and an entity label. Using the PhraseMatcher, it then matches the terms in the Doc and adds them to the existing entities.

As of v2.1.0, spaCy ships with the EntityRuler, a pipeline component for easy, rule-based named entity recognition. Its implementation is similar to the EntityMatcher code shown below, but it includes some additional features like support for phrase patterns and token patterns, handling overlaps with existing entities and pattern export as JSONL.

We'll still keep the pipeline component example below, as it works well to illustrate complex components. But if you're planning on using this type of component in your application, you might find the EntityRuler more convenient. See here for more details and examples.

### {executable="true"}
import spacy
from spacy.matcher import PhraseMatcher
from spacy.tokens import Span

class EntityMatcher(object):
    name = "entity_matcher"

    def __init__(self, nlp, terms, label):
        patterns = [nlp.make_doc(text) for text in terms]
        self.matcher = PhraseMatcher(nlp.vocab)
        self.matcher.add(label, None, *patterns)

    def __call__(self, doc):
        matches = self.matcher(doc)
        for match_id, start, end in matches:
            span = Span(doc, start, end, label=match_id)
            doc.ents = list(doc.ents) + [span]
        return doc

nlp = spacy.load("en_core_web_sm")
terms = (u"cat", u"dog", u"tree kangaroo", u"giant sea spider")
entity_matcher = EntityMatcher(nlp, terms, "ANIMAL")

nlp.add_pipe(entity_matcher, after="ner")

print(nlp.pipe_names)  # The components in the pipeline

doc = nlp(u"This is a text about Barack Obama and a tree kangaroo")
print([(ent.text, ent.label_) for ent in doc.ents])

Example: Custom sentence segmentation logic

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 after tokenization, but before the dependency parsing this way, the parser can also take advantage of the sentence boundaries.

✏️ Things to try

  1. Print [token.dep_ for token in doc] with and without the custom pipeline component. You'll see that the predicted dependency parse changes to match the sentence boundaries.
  2. Remove the else block. All other tokens will now have is_sent_start set to None (missing value), the parser will assign sentence boundaries in between.
### {executable="true"}
import spacy

def custom_sentencizer(doc):
    for i, token in enumerate(doc[:-2]):
        # Define sentence start if pipe + titlecase token
        if token.text == "|" and doc[i+1].is_title:
            doc[i+1].is_sent_start = True
        else:
            # Explicitly set sentence start to False otherwise, to tell
            # the parser to leave those tokens alone
            doc[i+1].is_sent_start = False
    return doc

nlp = spacy.load("en_core_web_sm")
nlp.add_pipe(custom_sentencizer, before="parser")  # Insert before the parser
doc = nlp(u"This is. A sentence. | This is. Another sentence.")
for sent in doc.sents:
    print(sent.text)

Example: Pipeline component for entity matching and tagging with custom attributes

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 occurrences in a document, labels them as ORG entities, merges the tokens and sets custom is_tech_org and has_tech_org attributes. For efficient matching, the example uses the PhraseMatcher which accepts Doc objects as match patterns and works well for large terminology lists. It also ensures your patterns will always match, even when you customize spaCy's tokenization rules. When you call nlp on a text, the custom pipeline component is applied to the Doc.

https://github.com/explosion/spaCy/tree/master/examples/pipeline/custom_component_entities.py

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 nlp on your text and receive a Doc object.

Adding factories

When spaCy loads a model via its meta.json, it will iterate over the "pipeline" setting, look up every component name in the internal factories and call nlp.create_pipe to initialize the individual components, like the tagger, parser or entity recognizer. If your model uses custom components, this won't work so you'll have to tell spaCy where to find your component. You can do this by writing to the Language.factories:

from spacy.language import Language
Language.factories["entity_matcher"] = lambda nlp, **cfg: EntityMatcher(nlp, **cfg)

You can also ship the above code and your custom component in your packaged model's __init__.py, so it's executed when you load your model. The **cfg config parameters are passed all the way down from spacy.load, so you can load the model and its components with custom settings:

nlp = spacy.load("your_custom_model", terms=(u"tree kangaroo"), label="ANIMAL")

When you load a model via its shortcut or package name, like en_core_web_sm, spaCy will import the package and then call its load() method. This means that custom code in the model's __init__.py will be executed, too. This is not the case if you're loading a model from a path containing the model data. Here, spaCy will only read in the meta.json. If you want to use custom factories with a model loaded from a path, you need to add them to Language.factories before you load the model.

Extension attributes

As of v2.0, spaCy allows you to set any custom attributes and methods on the Doc, Span and Token, which become available as Doc._, Span._ and Token._ for example, 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 Doc object as the "single source of truth".

Writing to a ._ attribute instead of to the Doc directly keeps a clearer separation and makes it easier to ensure backwards compatibility. For example, if you've implemented your own .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, doc.sentiment is spaCy, while doc._.sent_score isn't.

Extension definitions the defaults, methods, getters and setters you pass in to set_extension are stored in class attributes on the Underscore class. If you write to an extension attribute, e.g. doc._.hello = True, the data is stored within the Doc.user_data dictionary. To keep the underscore data separate from your other dictionary entries, the string "._." is placed before the name, in a tuple.


There are three main types of extensions, which can be defined using the Doc.set_extension, Span.set_extension and Token.set_extension methods.

  1. 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 Doc, Span or Token. Attribute defaults behaves just like argument defaults in Python functions, and should not be used for mutable values like dictionaries or lists.

     Doc.set_extension("hello", default=True)
     assert doc._.hello
     doc._.hello = False
    
  2. 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 retrieve the attribute, you can also access values of previously added attribute extensions. For example, a Doc getter can average over Token attributes. For Span extensions, you'll almost always want to use a property otherwise, you'd have to write to every possible Span in the Doc to set up the values correctly.

    Doc.set_extension("hello", getter=get_hello_value, setter=set_hello_value)
    assert doc._.hello
    doc._.hello = "Hi!"
    
  3. Method extensions. Assign a function that becomes available as an object method. Method extensions are always immutable. For more details and implementation ideas, see these examples.

    Doc.set_extension("hello", method=lambda doc, name: "Hi {}!".format(name))
    assert doc._.hello("Bob") == "Hi Bob!"
    

Before you can access a custom extension, you need to register it using the set_extension method on the object you want to add it to, e.g. the Doc. Keep in mind that extensions are always 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 AttributeError.

### Example
from spacy.tokens import Doc, Span, Token

fruits = [u"apple", u"pear", u"banana", u"orange", u"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)

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

Once you've registered your custom attribute, you can also use the built-in set, get and has methods to modify and retrieve the attributes. This is especially useful it you want to pass in a string instead of calling doc._.my_attr.

When using mutable values like dictionaries or lists as the default argument, keep in mind that they behave just like mutable default arguments in Python functions. This can easily cause unintended results, like the same value being set on all objects instead of only one particular instance. In most cases, it's better to use getters and setters, and only set the default for boolean or string values.

+ Doc.set_extension('fruits', getter=get_fruits, setter=set_fruits)

- Doc.set_extension('fruits', default={})
- doc._.fruits['apple'] = u'🍎'  # all docs now have {'apple': u'🍎'}

Example: Pipeline component for GPE entities and country meta data via a REST API

This example shows the implementation of a pipeline component that fetches country meta data via the REST Countries API, sets entity annotations for countries, merges entities into one token and sets custom attributes on the Doc, Span and Token for example, the capital, latitude/longitude coordinates and even the country flag.

https://github.com/explosion/spaCy/tree/master/examples/pipeline/custom_component_countries_api.py

In this case, all data can be fetched on initialization 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 like_country-style getter function that makes a request to the search API endpoint and returns the best-matching result.

User hooks

While it's generally recommended to use the Doc._, Span._ and Token._ proxies to add your own custom attributes, spaCy offers a few exceptions to allow customizing the built-in methods like Doc.similarity or 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.

Hooks let you customize some of the behaviors of the Doc, Span or Token objects by adding a component to the pipeline. For instance, to customize the Doc.similarity method, you can add a component that sets a custom function to doc.user_hooks['similarity']. The built-in Doc.similarity method will check the user_hooks dict, and delegate to your function if you've set one. Similar results can be achieved by setting functions to Doc.user_span_hooks and Doc.user_token_hooks.

Implementation note

The hooks live on the Doc object because the Span and Token objects are created lazily, and don't own any data. They just proxy to their parent Doc. This turns out to be convenient here — we only have to worry about installing hooks in one place.

Name Customizes
user_hooks Doc.vector, Doc.has_vector, Doc.vector_norm, Doc.sents
user_token_hooks Token.similarity, Token.vector, Token.has_vector, Token.vector_norm, Token.conjuncts
user_span_hooks Span.similarity, Span.vector, Span.has_vector, Span.vector_norm, Span.root
### 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])

Developing plugins and wrappers

We're very excited about all the new possibilities for community extensions and plugins in spaCy v2.0, and we can't wait to see what you build with it! To get you started, here are a few tips, tricks and best practices. See here for examples of other spaCy extensions.

Usage ideas

  • 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 Doc in a previous step of the pipeline.
  • Integrating other libraries and APIs. For example, your pipeline component can write additional information and data directly to the Doc or 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.
  • 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.

Best practices

Extensions can claim their own ._ 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 Doc, modifies it and returns it.

  • Make sure to choose a descriptive and specific name for your pipeline component class, and set it as its name attribute. Avoid names that are too common or likely to clash with built-in or a user's other custom components. While it's fine to call your package "spacy_my_extension", avoid component names including "spacy", since this can easily lead to confusion.

    + name = "myapp_lemmatizer"
    - name = "lemmatizer"
    
  • When writing to Doc, Token or Span objects, use getter functions wherever possible, and avoid setting values explicitly. Tokens and spans don't own any data themselves, and they're implemented as C extension classes so you can't usually add new attributes to them like you could with most pure Python objects.

    + is_fruit = lambda token: token.text in ("apple", "orange")
    + Token.set_extension("is_fruit", getter=is_fruit)
    
    - token._.set_extension("is_fruit", default=False)
    - if token.text in ('"apple", "orange"):
    -     token._.set("is_fruit", True)
    
  • Always add your custom attributes to the global Doc, Token or Span objects, not a particular instance of them. Add the attributes as early as possible, e.g. in your extension's __init__ method or in the global scope of your module. This means that in the case of namespace collisions, the user will see an error immediately, not just when they run their pipeline.

    + from spacy.tokens import Doc
    + def __init__(attr="my_attr"):
    +     Doc.set_extension(attr, getter=self.get_doc_attr)
    
    - def __call__(doc):
    -     doc.set_extension("my_attr", getter=self.get_doc_attr)
    
  • If your extension is setting properties on the Doc, Token or Span, include an option to let the user to change those attribute names. This makes it easier to avoid namespace collisions and accommodate users with different naming preferences. We recommend adding an attrs argument to the __init__ method of your class so you can write the names to class attributes and reuse them across your component.

    + Doc.set_extension(self.doc_attr, default="some value")
    - Doc.set_extension("my_doc_attr", default="some value")
    
  • Ideally, extensions should be standalone packages with spaCy and optionally, other packages specified as a dependency. They can freely assign to their own ._ namespace, but should stick to that. If your extension's only job is to provide a better .similarity implementation, and your docs state this explicitly, there's no problem with writing to the user_hooks and overwriting spaCy's built-in method. However, a third-party extension should never silently overwrite built-ins, or attributes set by other extensions.

  • If you're looking to publish a model that depends on a custom pipeline component, you can either require it in the model package's dependencies, or if the component is specific and lightweight choose to ship it with your model package and add it to the Language instance returned by the model's load() method. For examples of this, check out the implementations of spaCy's load_model_from_init_py load_model_from_path utility functions.

    + nlp.add_pipe(my_custom_component)
    +     return nlp.from_disk(model_path)
    
  • Once you're ready to share your extension with others, make sure to add docs and installation instructions (you can always link to this page for more info). Make it easy for others to install and use your extension, for example by uploading it to PyPi. If you're sharing your code on GitHub, don't forget to tag it with spacy and spacy-extension to help people find it. If you post it on Twitter, feel free to tag @spacy_io so we can check it out.

Wrapping other models and libraries

Let's say you have a custom entity recognizer that takes a list of strings and returns their BILUO tags. Given an input like ["A", "text", "about", "Facebook"], it will predict and return ["O", "O", "O", "U-ORG"]. To integrate it into your spaCy pipeline and make it add those entities to the doc.ents, you can wrap it in a custom pipeline component function and pass it the token texts from the Doc object received by the component.

The gold.spans_from_biluo_tags is very helpful here, because it takes a Doc object and token-based BILUO tags and returns a sequence of Span objects in the Doc with added labels. So all your wrapper has to do is compute the entity spans and overwrite the doc.ents.

How the doc.ents work

When you add spans to the doc.ents, spaCy will automatically resolve them back to the underlying tokens and set the Token.ent_type and Token.ent_iob attributes. By definition, each token can only be part of one entity, so overlapping entity spans are not allowed.

### {highlight="1,6-7"}
import your_custom_entity_recognizer
from spacy.gold import offsets_from_biluo_tags

def custom_ner_wrapper(doc):
    words = [token.text for token in doc]
    custom_entities = your_custom_entity_recognizer(words)
    doc.ents = spans_from_biluo_tags(doc, custom_entities)
    return doc

The custom_ner_wrapper can then be added to the pipeline of a blank model using nlp.add_pipe. You can also replace the existing entity recognizer of a pre-trained model with nlp.replace_pipe.

Here's another example of a custom model, your_custom_model, that takes a list of tokens and returns lists of fine-grained part-of-speech tags, coarse-grained part-of-speech tags, dependency labels and head token indices. Here, we can use the Doc.from_array to create a new Doc object using those values. To create a numpy array we need integers, so we can look up the string labels in the StringStore. The doc.vocab.strings.add method comes in handy here, because it returns the integer ID of the string and makes sure it's added to the vocab. This is especially important if the custom model uses a different label scheme than spaCy's default models.

Example: spacy-stanfordnlp

For an example of an end-to-end wrapper for statistical tokenization, tagging and parsing, check out spacy-stanfordnlp. It uses a very similar approach to the example in this section the only difference is that it fully replaces the nlp object instead of providing a pipeline component, since it also needs to handle tokenization.

### {highlight="1,9,15-17"}
import your_custom_model
from spacy.symbols import POS, TAG, DEP, HEAD
from spacy.tokens import Doc
import numpy

def custom_model_wrapper(doc):
    words = [token.text for token in doc]
    spaces = [token.whitespace for token in doc]
    pos, tags, deps, heads = your_custom_model(words)
    # Convert the strings to integers and add them to the string store
    pos = [doc.vocab.strings.add(label) for label in pos]
    tags = [doc.vocab.strings.add(label) for label in tags]
    deps = [doc.vocab.strings.add(label) for label in deps]
    # Create a new Doc from a numpy array
    attrs = [POS, TAG, DEP, HEAD]
    arr = numpy.array(list(zip(pos, tags, deps, heads)), dtype="uint64")
    new_doc = Doc(doc.vocab, words=words, spaces=spaces).from_array(attrs, arr)
    return new_doc

If you create a Doc object with dependencies and heads, spaCy is able to resolve the sentence boundaries automatically. However, note that the HEAD value used to construct a Doc is the token index relative to the current token e.g. -1 for the previous token. The CoNLL format typically annotates heads as 1-indexed absolute indices with 0 indicating the root. If that's the case in your annotations, you need to convert them first:

heads = [2, 0, 4, 2, 2]
new_heads = [head - i - 1 if head != 0 else 0 for i, head in enumerate(heads)]

For more details on how to write and package custom components, make them available to spaCy via entry points and implement your own serialization methods, check out the usage guide on saving and loading.