* implement textcat resizing for TextCatCNN * resizing textcat in-place * simplify code * ensure predictions for old textcat labels remain the same after resizing (WIP) * fix for softmax * store softmax as attr * fix ensemble weight copy and cleanup * restructure slightly * adjust documentation, update tests and quickstart templates to use latest versions * extend unit test slightly * revert unnecessary edits * fix typo * ensemble architecture won't be resizable for now * use resizable layer (WIP) * revert using resizable layer * resizable container while avoid shape inference trouble * cleanup * ensure model continues training after resizing * use fill_b parameter * use fill_defaults * resize_layer callback * format * bump thinc to 8.0.4 * bump spacy-legacy to 3.0.6
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Language Processing Pipelines | /usage/embeddings-transformers |
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import Pipelines101 from 'usage/101/_pipelines.md'
Processing text
When you call nlp
on a text, spaCy will tokenize it and then call each
component on the Doc
, in order. It then returns the processed Doc
that you
can work with.
doc = nlp("This is a text")
When processing large volumes of text, the statistical models are usually more
efficient if you let them work on batches of texts. spaCy's
nlp.pipe
method takes an iterable of texts and yields
processed Doc
objects. The batching is done internally.
texts = ["This is a text", "These are lots of texts", "..."]
- docs = [nlp(text) for text in texts]
+ docs = list(nlp.pipe(texts))
- Process the texts as a stream using
nlp.pipe
and buffer them in batches, instead of one-by-one. This is usually much more efficient. - Only apply the pipeline components you need. Getting predictions from the
model that you don't actually need adds up and becomes very inefficient at
scale. To prevent this, use the
disable
keyword argument to disable components you don't need – either when loading a pipeline, or during processing withnlp.pipe
. See the section on disabling pipeline components for more details and examples.
In this example, we're using nlp.pipe
to process a
(potentially very large) iterable of texts as a stream. Because we're only
accessing the named entities in doc.ents
(set by the ner
component), we'll
disable all other components during processing. nlp.pipe
yields Doc
objects,
so we can iterate over them and access the named entity predictions:
✏️ Things to try
- Also disable the
"ner"
component. You'll see that thedoc.ents
are now empty, because the entity recognizer didn't run.
### {executable="true"}
import spacy
texts = [
"Net income was $9.4 million compared to the prior year of $2.7 million.",
"Revenue exceeded twelve billion dollars, with a loss of $1b.",
]
nlp = spacy.load("en_core_web_sm")
for doc in nlp.pipe(texts, disable=["tok2vec", "tagger", "parser", "attribute_ruler", "lemmatizer"]):
# Do something with the doc here
print([(ent.text, ent.label_) for ent in doc.ents])
When using nlp.pipe
, keep in mind that it returns a
generator that
yields Doc
objects – not a list. So if you want to use it like a list, you'll
have to call list()
on it first:
- docs = nlp.pipe(texts)[0] # will raise an error
+ docs = list(nlp.pipe(texts))[0] # works as expected
You can use the as_tuples
option to pass additional context along with each
doc when using nlp.pipe
. If as_tuples
is True
, then
the input should be a sequence of (text, context)
tuples and the output will
be a sequence of (doc, context)
tuples. For example, you can pass metadata in
the context and save it in a custom attribute:
### {executable="true"}
import spacy
from spacy.tokens import Doc
if not Doc.has_extension("text_id"):
Doc.set_extension("text_id", default=None)
text_tuples = [
("This is the first text.", {"text_id": "text1"}),
("This is the second text.", {"text_id": "text2"})
]
nlp = spacy.load("en_core_web_sm")
doc_tuples = nlp.pipe(text_tuples, as_tuples=True)
docs = []
for doc, context in doc_tuples:
doc._.text_id = context["text_id"]
docs.append(doc)
for doc in docs:
print(f"{doc._.text_id}: {doc.text}")
Multiprocessing
spaCy includes built-in support for multiprocessing with
nlp.pipe
using the n_process
option:
# Multiprocessing with 4 processes
docs = nlp.pipe(texts, n_process=4)
# With as many processes as CPUs (use with caution!)
docs = nlp.pipe(texts, n_process=-1)
Depending on your platform, starting many processes with multiprocessing can add
a lot of overhead. In particular, the default start method spawn
used in
macOS/OS X (as of Python 3.8) and in Windows can be slow for larger models
because the model data is copied in memory for each new process. See the
Python docs on multiprocessing
for further details.
For shorter tasks and in particular with spawn
, it can be faster to use a
smaller number of processes with a larger batch size. The optimal batch_size
setting will depend on the pipeline components, the length of your documents,
the number of processes and how much memory is available.
# Default batch size is `nlp.batch_size` (typically 1000)
docs = nlp.pipe(texts, n_process=2, batch_size=2000)
Multiprocessing is not generally recommended on GPU because RAM is too limited.
If you want to try it out, be aware that it is only possible using spawn
due
to limitations in CUDA.
In Linux, transformer models may hang or deadlock with multiprocessing due to an
issue in PyTorch. One
suggested workaround is to use spawn
instead of fork
and another is to limit
the number of threads before loading any models using
torch.set_num_threads(1)
.
Pipelines and built-in components
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
pipeline package.
config.cfg (excerpt)
[nlp] lang = "en" pipeline = ["tok2vec", "parser"] [components] [components.tok2vec] factory = "tok2vec" # Settings for the tok2vec component [components.parser] factory = "parser" # Settings for the parser component
When you load a pipeline, spaCy first consults the
meta.json
and
config.cfg
. The config tells spaCy what language
class to use, which components are in the pipeline, and how those components
should be created. spaCy will then do the following:
- Load the language class and data for the given ID via
get_lang_class
and initialize it. TheLanguage
class contains the shared vocabulary, tokenization rules and the language-specific settings. - Iterate over the pipeline names and look up each component name in the
[components]
block. Thefactory
tells spaCy which component factory to use for adding the component withadd_pipe
. The settings are passed into the factory. - Make the model data available to the
Language
class by callingfrom_disk
with the path to the data directory.
So when you call this...
nlp = spacy.load("en_core_web_sm")
... the pipeline's config.cfg
tells spaCy to use the language "en"
and the
pipeline
["tok2vec", "tagger", "parser", "ner", "attribute_ruler", "lemmatizer"]
. 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 data from
the data directory and return the modified Language
class for you to use as
the nlp
object.
spaCy v3.0 introduces a config.cfg
, which includes more detailed settings for
the pipeline, its components and the training process.
You can export the config of your current nlp
object by calling
nlp.config.to_disk
.
Fundamentally, a spaCy pipeline package 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
language-specific settings. For example, a Spanish NER pipeline requires
different weights, language data and components than an English parsing and
tagging pipeline. 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 = ["tok2vec", "tagger", "parser", "ner", "attribute_ruler", "lemmatizer"]
data_path = "path/to/en_core_web_sm/en_core_web_sm-3.0.0"
cls = spacy.util.get_lang_class(lang) # 1. Get Language class, e.g. English
nlp = cls() # 2. Initialize it
for name in pipeline:
nlp.add_pipe(name) # 3. Add the component to the pipeline
nlp.from_disk(data_path) # 4. 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 next component in the pipeline.
### The pipeline under the hood
doc = nlp.make_doc("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)
# [('tok2vec', <spacy.pipeline.Tok2Vec>), ('tagger', <spacy.pipeline.Tagger>), ('parser', <spacy.pipeline.DependencyParser>), ('ner', <spacy.pipeline.EntityRecognizer>), ('attribute_ruler', <spacy.pipeline.AttributeRuler>), ('lemmatizer', <spacy.lang.en.lemmatizer.EnglishLemmatizer>)]
print(nlp.pipe_names)
# ['tok2vec', 'tagger', 'parser', 'ner', 'attribute_ruler', 'lemmatizer']
Built-in pipeline components
spaCy ships with several built-in pipeline components that are registered with
string names. This means that you can initialize them by calling
nlp.add_pipe
with their names and spaCy will know
how to create them. See the API documentation for a full list of
available pipeline components and component functions.
Usage
nlp = spacy.blank("en") nlp.add_pipe("sentencizer") # add_pipe returns the added component ruler = nlp.add_pipe("entity_ruler")
String name | Component | Description |
---|---|---|
tagger |
Tagger |
Assign part-of-speech-tags. |
parser |
DependencyParser |
Assign dependency labels. |
ner |
EntityRecognizer |
Assign named entities. |
entity_linker |
EntityLinker |
Assign knowledge base IDs to named entities. Should be added after the entity recognizer. |
entity_ruler |
EntityRuler |
Assign named entities based on pattern rules and dictionaries. |
textcat |
TextCategorizer |
Assign text categories: exactly one category is predicted per document. |
textcat_multilabel |
MultiLabel_TextCategorizer |
Assign text categories in a multi-label setting: zero, one or more labels per document. |
lemmatizer |
Lemmatizer |
Assign base forms to words. |
morphologizer |
Morphologizer |
Assign morphological features and coarse-grained POS tags. |
attribute_ruler |
AttributeRuler |
Assign token attribute mappings and rule-based exceptions. |
senter |
SentenceRecognizer |
Assign sentence boundaries. |
sentencizer |
Sentencizer |
Add rule-based sentence segmentation without the dependency parse. |
tok2vec |
Tok2Vec |
Assign token-to-vector embeddings. |
transformer |
Transformer |
Assign the tokens and outputs of a transformer model. |
Disabling, excluding and modifying components
If you don't need a particular component of the pipeline – for example, the tagger or the parser, you can disable or exclude it. This can sometimes make a big difference and improve loading and inference speed. There are two different mechanisms you can use:
- Disable: The component and its data will be loaded with the pipeline, but
it will be disabled by default and not run as part of the processing
pipeline. To run it, you can explicitly enable it by calling
nlp.enable_pipe
. When you save out thenlp
object, the disabled component will be included but disabled by default. - Exclude: Don't load the component and its data with the pipeline. Once the pipeline is loaded, there will be no reference to the excluded component.
Disabled and excluded component names can be provided to
spacy.load
as a list.
💡 Optional pipeline components
The
disable
mechanism makes it easy to distribute pipeline packages with optional components that you can enable or disable at runtime. For instance, your pipeline may include a statistical and a rule-based component for sentence segmentation, and you can choose which one to run depending on your use case.For example, spaCy's trained pipelines like
en_core_web_sm
contain both aparser
andsenter
that perform sentence segmentation, but thesenter
is disabled by default.
# Load the pipeline without the entity recognizer
nlp = spacy.load("en_core_web_sm", exclude=["ner"])
# Load the tagger and parser but don't enable them
nlp = spacy.load("en_core_web_sm", disable=["tagger", "parser"])
# Explicitly enable the tagger later on
nlp.enable_pipe("tagger")
As of v3.0, the disable
keyword argument specifies components to load but
disable, instead of components to not load at all. Those components can now be
specified separately using the new exclude
keyword argument.
As a shortcut, you can use the nlp.select_pipes
context manager to temporarily disable certain components for a given block. At
the end of the with
block, the disabled pipeline components will be restored
automatically. Alternatively, select_pipes
returns an object that lets you
call its restore()
method to restore the disabled components when needed. This
can be useful if you want to prevent unnecessary code indentation of large
blocks.
### Disable for block
# 1. Use as a context manager
with nlp.select_pipes(disable=["tagger", "parser", "lemmatizer"]):
doc = nlp("I won't be tagged and parsed")
doc = nlp("I will be tagged and parsed")
# 2. Restore manually
disabled = nlp.select_pipes(disable="ner")
doc = nlp("I won't have named entities")
disabled.restore()
If you want to disable all pipes except for one or a few, you can use the
enable
keyword. Just like the disable
keyword, it takes a list of pipe
names, or a string defining just one pipe.
# Enable only the parser
with nlp.select_pipes(enable="parser"):
doc = nlp("I will only be parsed")
The nlp.pipe
method also supports a disable
keyword
argument if you only want to disable components during processing:
for doc in nlp.pipe(texts, disable=["tagger", "parser", "lemmatizer"]):
# Do something with the doc here
Finally, 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")
The Language
object exposes different attributes
that let you inspect all available components and the components that currently
run as part of the pipeline.
Example
nlp = spacy.blank("en") nlp.add_pipe("ner") nlp.add_pipe("textcat") assert nlp.pipe_names == ["ner", "textcat"] nlp.disable_pipe("ner") assert nlp.pipe_names == ["textcat"] assert nlp.component_names == ["ner", "textcat"] assert nlp.disabled == ["ner"]
Name | Description |
---|---|
nlp.pipeline |
(name, component) tuples of the processing pipeline, in order. |
nlp.pipe_names |
Pipeline component names, in order. |
nlp.components |
All (name, component) tuples, including disabled components. |
nlp.component_names |
All component names, including disabled components. |
nlp.disabled |
Names of components that are currently disabled. |
Sourcing components from existing pipelines
Pipeline components that are independent can also be reused across pipelines.
Instead of adding a new blank component, you can also copy an existing component
from a trained pipeline by setting the source
argument on
nlp.add_pipe
. The first argument will then be
interpreted as the name of the component in the source pipeline – for instance,
"ner"
. This is especially useful for
training a pipeline because it lets you mix
and match components and create fully custom pipeline packages with updated
trained components and new components trained on your data.
When reusing components across pipelines, keep in mind that the vocabulary, vectors and model settings must match. If a trained pipeline includes word vectors and the component uses them as features, the pipeline you copy it to needs to have the same vectors available – otherwise, it won't be able to make the same predictions.
In training config
Instead of providing a
factory
, component blocks in the training config can also define asource
. The string needs to be a loadable spaCy pipeline package or path.[components.ner] source = "en_core_web_sm" component = "ner"
By default, sourced components will be updated with your data during training. If you want to preserve the component as-is, you can "freeze" it if the pipeline is not using a shared
Tok2Vec
layer:[training] frozen_components = ["ner"]
### {executable="true"}
import spacy
# The source pipeline with different components
source_nlp = spacy.load("en_core_web_sm")
print(source_nlp.pipe_names)
# Add only the entity recognizer to the new blank pipeline
nlp = spacy.blank("en")
nlp.add_pipe("ner", source=source_nlp)
print(nlp.pipe_names)
Analyzing pipeline components
The nlp.analyze_pipes
method analyzes the
components in the current pipeline and outputs information about them like the
attributes they set on the Doc
and Token
, whether
they retokenize the Doc
and which scores they produce during training. It will
also show warnings if components require values that aren't set by previous
component – for instance, if the entity linker is used but no component that
runs before it sets named entities. Setting pretty=True
will pretty-print a
table instead of only returning the structured data.
✏️ Things to try
- Add the components
"ner"
and"sentencizer"
before the"entity_linker"
. The analysis should now show no problems, because requirements are met.
### {executable="true"}
import spacy
nlp = spacy.blank("en")
nlp.add_pipe("tagger")
# This is a problem because it needs entities and sentence boundaries
nlp.add_pipe("entity_linker")
analysis = nlp.analyze_pipes(pretty=True)
### Structured
{
"summary": {
"tagger": {
"assigns": ["token.tag"],
"requires": [],
"scores": ["tag_acc", "pos_acc", "lemma_acc"],
"retokenizes": false
},
"entity_linker": {
"assigns": ["token.ent_kb_id"],
"requires": ["doc.ents", "doc.sents", "token.ent_iob", "token.ent_type"],
"scores": [],
"retokenizes": false
}
},
"problems": {
"tagger": [],
"entity_linker": ["doc.ents", "doc.sents", "token.ent_iob", "token.ent_type"]
},
"attrs": {
"token.ent_iob": { "assigns": [], "requires": ["entity_linker"] },
"doc.ents": { "assigns": [], "requires": ["entity_linker"] },
"token.ent_kb_id": { "assigns": ["entity_linker"], "requires": [] },
"doc.sents": { "assigns": [], "requires": ["entity_linker"] },
"token.tag": { "assigns": ["tagger"], "requires": [] },
"token.ent_type": { "assigns": [], "requires": ["entity_linker"] }
}
}
### Pretty
============================= Pipeline Overview =============================
# Component Assigns Requires Scores Retokenizes
- ------------- --------------- -------------- ----------- -----------
0 tagger token.tag tag_acc False
1 entity_linker token.ent_kb_id doc.ents nel_micro_f False
doc.sents nel_micro_r
token.ent_iob nel_micro_p
token.ent_type
================================ Problems (4) ================================
⚠ 'entity_linker' requirements not met: doc.ents, doc.sents,
token.ent_iob, token.ent_type
The pipeline analysis is static and does not actually run the components. This means that it relies on the information provided by the components themselves. If a custom component declares that it assigns an attribute but it doesn't, the pipeline analysis won't catch that.
Creating custom pipeline components
A pipeline component is a function that receives a Doc
object, modifies it and
returns 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
from spacy.language import Language @Language.component("my_component") 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. |
The @Language.component
decorator lets you turn a
simple function into a pipeline component. It takes at least one argument, the
name of the component factory. You can use this name to add an instance of
your component to the pipeline. It can also be listed in your pipeline config,
so you can save, load and train pipelines using your 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 | Description |
---|---|
last |
If set to True , component is added last in the pipeline (default). |
first |
If set to True , component is added first in the pipeline. |
before |
String name or index to add the new component before. |
after |
String name or index to add the new component after. |
As of v3.0, components need to be registered using the
@Language.component
or
@Language.factory
decorator so spaCy knows that a
function is a component. nlp.add_pipe
now takes the
string name of the component factory instead of the component function. This
doesn't only save you lines of code, it also allows spaCy to validate and track
your custom components, and make sure they can be saved and loaded.
- ruler = nlp.create_pipe("entity_ruler")
- nlp.add_pipe(ruler)
+ ruler = nlp.add_pipe("entity_ruler")
Examples: Simple stateless pipeline components
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. The
@Language.component
decorator lets you register the
component under the name "info_component"
.
✏️ Things to try
- 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.- Change the component
name
or remove thename
argument. You should see this change reflected innlp.pipe_names
.nlp.pipeline
. You'll see a list of tuples describing the component name and the function that's called on theDoc
object in the pipeline.- Change the first argument to
@Language.component
, the name, to something else. spaCy should now complain that it doesn't know a component of the name"info_component"
.
### {executable="true"}
import spacy
from spacy.language import Language
@Language.component("info_component")
def my_component(doc):
print(f"After tokenization, this doc has {len(doc)} tokens.")
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("info_component", name="print_info", last=True)
print(nlp.pipe_names) # ['tagger', 'parser', 'ner', 'print_info']
doc = nlp("This is a sentence.")
Here's another example of a pipeline component that implements custom logic to improve the sentence boundaries set by the dependency parser. 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
[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.- Remove the
else
block. All other tokens will now haveis_sent_start
set toNone
(missing value), the parser will assign sentence boundaries in between.
### {executable="true"}
import spacy
from spacy.language import Language
@Language.component("custom_sentencizer")
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("This is. A sentence. | This is. Another sentence.")
for sent in doc.sents:
print(sent.text)
Component factories and stateful components
Component factories are callables that take settings and return a pipeline
component function. This is useful if your component is stateful and if you
need to customize their creation, or if you need access to the current nlp
object or the shared vocab. Component factories can be registered using the
@Language.factory
decorator and they need at least
two named arguments that are filled in automatically when the component is
added to the pipeline:
Example
from spacy.language import Language @Language.factory("my_component") def my_component(nlp, name): return MyComponent()
Argument | Description |
---|---|
nlp |
The current nlp object. Can be used to access the shared vocab. |
name |
The instance name of the component in the pipeline. This lets you identify different instances of the same component. |
All other settings can be passed in by the user via the config
argument on
nlp.add_pipe
. The
@Language.factory
decorator also lets you define a
default_config
that's used as a fallback.
### With config {highlight="4,9"}
import spacy
from spacy.language import Language
@Language.factory("my_component", default_config={"some_setting": True})
def my_component(nlp, name, some_setting: bool):
return MyComponent(some_setting=some_setting)
nlp = spacy.blank("en")
nlp.add_pipe("my_component", config={"some_setting": False})
The @Language.component
decorator is essentially a
shortcut for stateless pipeline components that don't need any settings.
This means you don't have to always write a function that returns your function
if there's no state to be passed through – spaCy can just take care of this for
you. The following two code examples are equivalent:
# Statless component with @Language.factory
@Language.factory("my_component")
def create_my_component():
def my_component(doc):
# Do something to the doc
return doc
return my_component
# Stateless component with @Language.component
@Language.component("my_component")
def my_component(doc):
# Do something to the doc
return doc
Yes, the @Language.factory
decorator can be added to
a function or a class. If it's added to a class, it expects the __init__
method to take the arguments nlp
and name
, and will populate all other
arguments from the config. That said, it's often cleaner and more intuitive to
make your factory a separate function. That's also how spaCy does it internally.
Language-specific factories
There are many use cases where you might want your pipeline components to be
language-specific. Sometimes this requires entirely different implementation per
language, sometimes the only difference is in the settings or data. spaCy allows
you to register factories of the same name on both the Language
base
class, as well as its subclasses like English
or German
. Factories are
resolved starting with the specific subclass. If the subclass doesn't define a
component of that name, spaCy will check the Language
base class.
Here's an example of a pipeline component that overwrites the normalized form of
a token, the Token.norm_
with an entry from a language-specific lookup table.
It's registered twice under the name "token_normalizer"
– once using
@English.factory
and once using @German.factory
:
### {executable="true"}
from spacy.lang.en import English
from spacy.lang.de import German
class TokenNormalizer:
def __init__(self, norm_table):
self.norm_table = norm_table
def __call__(self, doc):
for token in doc:
# Overwrite the token.norm_ if there's an entry in the data
token.norm_ = self.norm_table.get(token.text, token.norm_)
return doc
@English.factory("token_normalizer")
def create_en_normalizer(nlp, name):
return TokenNormalizer({"realise": "realize", "colour": "color"})
@German.factory("token_normalizer")
def create_de_normalizer(nlp, name):
return TokenNormalizer({"daß": "dass", "wußte": "wusste"})
nlp_en = English()
nlp_en.add_pipe("token_normalizer") # uses the English factory
print([token.norm_ for token in nlp_en("realise colour daß wußte")])
nlp_de = German()
nlp_de.add_pipe("token_normalizer") # uses the German factory
print([token.norm_ for token in nlp_de("realise colour daß wußte")])
Under the hood, language-specific factories are added to the
factories
registry prefixed with the language code,
e.g. "en.token_normalizer"
. When resolving the factory in
nlp.add_pipe
, spaCy first checks for a
language-specific version of the factory using nlp.lang
and if none is
available, falls back to looking up the regular factory name.
Example: Stateful component with settings
This example shows a stateful pipeline component for handling acronyms:
based on a dictionary, it will detect acronyms and their expanded forms in both
directions and add them to a list as the custom doc._.acronyms
extension attribute. Under the hood, it uses
the PhraseMatcher
to find instances of the phrases.
The factory function takes three arguments: the shared nlp
object and
component instance name
, which are passed in automatically by spaCy, and a
case_sensitive
config setting that makes the matching and acronym detection
case-sensitive.
✏️ Things to try
- Change the
config
passed tonlp.add_pipe
and set"case_sensitive"
toTrue
. You should see that the expanded acronym for "LOL" isn't detected anymore.- Add some more terms to the
DICTIONARY
and update the processed text so they're detected.- Add a
name
argument tonlp.add_pipe
to change the component name. Printnlp.pipe_names
to see the change reflected in the pipeline.- Print the config of the current
nlp
object withprint(nlp.config.to_str())
and inspect the[components]
block. You should see an entry for the acronyms component, referencing the factoryacronyms
and the config settings.
### {executable="true"}
from spacy.language import Language
from spacy.tokens import Doc
from spacy.matcher import PhraseMatcher
import spacy
DICTIONARY = {"lol": "laughing out loud", "brb": "be right back"}
DICTIONARY.update({value: key for key, value in DICTIONARY.items()})
@Language.factory("acronyms", default_config={"case_sensitive": False})
def create_acronym_component(nlp: Language, name: str, case_sensitive: bool):
return AcronymComponent(nlp, case_sensitive)
class AcronymComponent:
def __init__(self, nlp: Language, case_sensitive: bool):
# Create the matcher and match on Token.lower if case-insensitive
matcher_attr = "TEXT" if case_sensitive else "LOWER"
self.matcher = PhraseMatcher(nlp.vocab, attr=matcher_attr)
self.matcher.add("ACRONYMS", [nlp.make_doc(term) for term in DICTIONARY])
self.case_sensitive = case_sensitive
# Register custom extension on the Doc
if not Doc.has_extension("acronyms"):
Doc.set_extension("acronyms", default=[])
def __call__(self, doc: Doc) -> Doc:
# Add the matched spans when doc is processed
for _, start, end in self.matcher(doc):
span = doc[start:end]
acronym = DICTIONARY.get(span.text if self.case_sensitive else span.text.lower())
doc._.acronyms.append((span, acronym))
return doc
# Add the component to the pipeline and configure it
nlp = spacy.blank("en")
nlp.add_pipe("acronyms", config={"case_sensitive": False})
# Process a doc and see the results
doc = nlp("LOL, be right back")
print(doc._.acronyms)
Initializing and serializing component data
Many stateful components depend on data resources like dictionaries and
lookup tables that should ideally be configurable. For example, it makes
sense to make the DICTIONARY
in the above example an argument of the
registered function, so the AcronymComponent
can be re-used with different
data. One logical solution would be to make it an argument of the component
factory, and allow it to be initialized with different dictionaries.
config.cfg
[components.acronyms.data] # 🚨 Problem: you don't want the data in the config lol = "laugh out loud" brb = "be right back"
@Language.factory("acronyms", default_config={"data": {}, "case_sensitive": False})
def create_acronym_component(nlp: Language, name: str, data: Dict[str, str], case_sensitive: bool):
# 🚨 Problem: data ends up in the config file
return AcronymComponent(nlp, data, case_sensitive)
However, passing in the dictionary directly is problematic, because it means
that if a component saves out its config and settings, the
config.cfg
will include a dump of the entire data,
since that's the config the component was created with. It will also fail if the
data is not JSON-serializable.
Option 1: Using a registered function
- ✅ Pros: can load anything in Python, easy to add to and configure via config
- ❌ Cons: requires the function and its dependencies to be available at runtime
If what you're passing in isn't JSON-serializable – e.g. a custom object like a
model – saving out the component config becomes
impossible because there's no way for spaCy to know how that object was
created, and what to do to create it again. This makes it much harder to save,
load and train custom pipelines with custom components. A simple solution is to
register a function that returns your resources. The
registry lets you map string names to functions
that create objects, so given a name and optional arguments, spaCy will know how
to recreate the object. To register a function that returns your custom
dictionary, you can use the @spacy.registry.misc
decorator with a single
argument, the name:
What's the misc registry?
The
registry
provides different categories for different types of functions – for example, model architectures, tokenizers or batchers.misc
is intended for miscellaneous functions that don't fit anywhere else.
### Registered function for assets {highlight="1"}
@spacy.registry.misc("acronyms.slang_dict.v1")
def create_acronyms_slang_dict():
dictionary = {"lol": "laughing out loud", "brb": "be right back"}
dictionary.update({value: key for key, value in dictionary.items()})
return dictionary
In your default_config
(and later in your
training config), you can now refer to the function
registered under the name "acronyms.slang_dict.v1"
using the @misc
key. This
tells spaCy how to create the value, and when your component is created, the
result of the registered function is passed in as the key "dictionary"
.
config.cfg
[components.acronyms] factory = "acronyms" [components.acronyms.data] @misc = "acronyms.slang_dict.v1"
- default_config = {"dictionary:" DICTIONARY}
+ default_config = {"dictionary": {"@misc": "acronyms.slang_dict.v1"}}
Using a registered function also means that you can easily include your custom
components in pipelines that you train. To make sure spaCy
knows where to find your custom @misc
function, you can pass in a Python file
via the argument --code
. If someone else is using your component, all they
have to do to customize the data is to register their own function and swap out
the name. Registered functions can also take arguments, by the way, that can
be defined in the config as well – you can read more about this in the docs on
training with custom code.
Option 2: Save data with the pipeline and load it in once on initialization
- ✅ Pros: lets components save and load their own data and reflect user changes, load in data assets before training without depending on them at runtime
- ❌ Cons: requires more component methods, more complex config and data flow
Just like models save out their binary weights when you call
nlp.to_disk
, components can also serialize any
other data assets – for instance, an acronym dictionary. If a pipeline component
implements its own to_disk
and from_disk
methods, those will be called
automatically by nlp.to_disk
and will receive the path to the directory to
save to or load from. The component can then perform any custom saving or
loading. If a user makes changes to the component data, they will be reflected
when the nlp
object is saved. For more examples of this, see the usage guide
on serialization methods.
About the data path
The
path
argument spaCy passes to the serialization methods consists of the path provided by the user, plus a directory of the component name. This means that when you callnlp.to_disk("/path")
, theacronyms
component will receive the directory path/path/acronyms
and can then create files in this directory.
### Custom serialization methods {highlight="6-7,9-11"}
import srsly
class AcronymComponent:
# other methods here...
def to_disk(self, path, exclude=tuple()):
srsly.write_json(path / "data.json", self.data)
def from_disk(self, path, exclude=tuple()):
self.data = srsly.read_json(path / "data.json")
return self
Now the component can save to and load from a directory. The only remaining
question: How do you load in the initial data? In Python, you could just
call the pipe's from_disk
method yourself. But if you're adding the component
to your training config, spaCy will need to know how
to set it up, from start to finish, including the data to initialize it with.
While you could use a registered function or a file loader like
srsly.read_json.v1
as an argument of the
component factory, this approach is problematic: the component factory runs
every time the component is created. This means it will run when creating
the nlp
object before training, but also every a user loads your pipeline. So
your runtime pipeline would either depend on a local path on your file system,
or it's loaded twice: once when the component is created, and then again when
the data is by from_disk
.
### config.cfg [components.acronyms.data] # 🚨 Problem: Runtime pipeline depends on local path @readers = "srsly.read_json.v1" path = "/path/to/slang_dict.json"
### config.cfg [components.acronyms.data] # 🚨 Problem: this always runs @misc = "acronyms.slang_dict.v1"
@Language.factory("acronyms", default_config={"data": {}, "case_sensitive": False})
def create_acronym_component(nlp: Language, name: str, data: Dict[str, str], case_sensitive: bool):
# 🚨 Problem: data will be loaded every time component is created
return AcronymComponent(nlp, data, case_sensitive)
To solve this, your component can implement a separate method, initialize
,
which will be called by nlp.initialize
if
available. This typically happens before training, but not at runtime when the
pipeline is loaded. For more background on this, see the usage guides on the
config lifecycle and
custom initialization.
A component's initialize
method needs to take at least two named
arguments: a get_examples
callback that gives it access to the training
examples, and the current nlp
object. This is mostly used by trainable
components so they can initialize their models and label schemes from the data,
so we can ignore those arguments here. All other arguments on the method can
be defined via the config – in this case a dictionary data
.
config.cfg
[initialize.components.my_component] [initialize.components.my_component.data] # ✅ This only runs on initialization @readers = "srsly.read_json.v1" path = "/path/to/slang_dict.json"
### Custom initialize method {highlight="5-6"}
class AcronymComponent:
def __init__(self):
self.data = {}
def initialize(self, get_examples=None, nlp=None, data={}):
self.data = data
When nlp.initialize
runs before training (or when
you call it in your own code), the
[initialize]
block of the config is
loaded and used to construct the nlp
object. The custom acronym component will
then be passed the data loaded from the JSON file. After training, the nlp
object is saved to disk, which will run the component's to_disk
method. When
the pipeline is loaded back into spaCy later to use it, the from_disk
method
will load the data back in.
Python type hints and validation
spaCy's configs are powered by our machine learning library Thinc's
configuration system, which supports
type hints and even
advanced type annotations
using pydantic
. If your component
factory provides type hints, the values that are passed in will be checked
against the expected types. If the value can't be cast to an integer, spaCy
will raise an error. pydantic
also provides strict types like StrictFloat
,
which will force the value to be an integer and raise an error if it's not – for
instance, if your config defines a float.
If you're not using
strict types,
values that can be cast to the given type will still be accepted. For
example, 1
can be cast to a float
or a bool
type, but not to a
List[str]
. However, if the type is
StrictFloat
,
only a float will be accepted.
The following example shows a custom pipeline component for debugging. It can be
added anywhere in the pipeline and logs information about the nlp
object and
the Doc
that passes through. The log_level
config setting lets the user
customize what log statements are shown – for instance, "INFO"
will show info
logs and more critical logging statements, whereas "DEBUG"
will show
everything. The value is annotated as a StrictStr
, so it will only accept a
string value.
✏️ Things to try
- Change the
config
passed tonlp.add_pipe
to use the log level"INFO"
. You should see that only the statement logged withlogger.info
is shown.- Change the
config
passed tonlp.add_pipe
so that it contains unexpected values – for example, a boolean instead of a string:"log_level": False
. You should see a validation error.- Check out the docs on
pydantic
's constrained types and write a type hint forlog_level
that only accepts the exact string values"DEBUG"
,"INFO"
or"CRITICAL"
.
### {executable="true"}
import spacy
from spacy.language import Language
from spacy.tokens import Doc
from pydantic import StrictStr
import logging
@Language.factory("debug", default_config={"log_level": "DEBUG"})
class DebugComponent:
def __init__(self, nlp: Language, name: str, log_level: StrictStr):
self.logger = logging.getLogger(f"spacy.{name}")
self.logger.setLevel(log_level)
self.logger.info(f"Pipeline: {nlp.pipe_names}")
def __call__(self, doc: Doc) -> Doc:
is_tagged = doc.has_annotation("TAG")
self.logger.debug(f"Doc: {len(doc)} tokens, is tagged: {is_tagged}")
return doc
nlp = spacy.load("en_core_web_sm")
nlp.add_pipe("debug", config={"log_level": "DEBUG"})
doc = nlp("This is a text...")
Trainable components
spaCy's TrainablePipe
class helps you implement your own
trainable components that have their own model instance, make predictions over
Doc
objects and can be updated using spacy train
. This
lets you plug fully custom machine learning components into your pipeline.
You'll need the following:
- Model: A Thinc
Model
instance. This can be a model implemented in Thinc, or a wrapped model implemented in PyTorch, TensorFlow, MXNet or a fully custom solution. The model must take a list ofDoc
objects as input and can have any type of output. - TrainablePipe subclass: A subclass of
TrainablePipe
that implements at least two methods:TrainablePipe.predict
andTrainablePipe.set_annotations
. - Component factory: A component factory registered with
@Language.factory
that takes thenlp
object and componentname
and optional settings provided by the config and returns an instance of your trainable component.
Example
from spacy.pipeline import TrainablePipe from spacy.language import Language class TrainableComponent(TrainablePipe): def predict(self, docs): ... def set_annotations(self, docs, scores): ... @Language.factory("my_trainable_component") def make_component(nlp, name, model): return TrainableComponent(nlp.vocab, model, name=name)
Name | Description |
---|---|
predict |
Apply the component's model to a batch of Doc objects (without modifying them) and return the scores. |
set_annotations |
Modify a batch of Doc objects, using pre-computed scores generated by predict . |
By default, TrainablePipe.__init__
takes the shared vocab,
the Model
and the name of the component
instance in the pipeline, which you can use as a key in the losses. All other
keyword arguments will become available as TrainablePipe.cfg
and will also be serialized with the component.
spaCy's config system resolves the config describing
the pipeline components and models bottom-up. This means that it will
first create a Model
from a registered architecture,
validate its arguments and then pass the object forward to the component. This
means that the config can express very complex, nested trees of objects – but
the objects don't have to pass the model settings all the way down to the
components. It also makes the components more modular and lets you
swap different architectures
in your config, and re-use model definitions.
### config.cfg (excerpt)
[components]
[components.textcat]
factory = "textcat"
labels = []
# This function is created and then passed to the "textcat" component as
# the argument "model"
[components.textcat.model]
@architectures = "spacy.TextCatBOW.v2"
exclusive_classes = true
ngram_size = 1
no_output_layer = false
[components.other_textcat]
factory = "textcat"
# This references the [components.textcat.model] block above
model = ${components.textcat.model}
labels = []
Your trainable pipeline component factories should therefore always take a
model
argument instead of instantiating the
Model
inside the component. To register
custom architectures, you can use the
@spacy.registry.architectures
decorator. Also see
the training guide for details.
For some use cases, it makes sense to also overwrite additional methods to customize how the model is updated from examples, how it's initialized, how the loss is calculated and to add evaluation scores to the training output.
Name | Description |
---|---|
update |
Learn from a batch of Example objects containing the predictions and gold-standard annotations, and update the component's model. |
initialize |
Initialize the model. Typically calls into Model.initialize and can be passed custom arguments via the [initialize] config block that are only loaded during training or when you call nlp.initialize , not at runtime. |
get_loss |
Return a tuple of the loss and the gradient for a batch of Example objects. |
score |
Score a batch of Example objects and return a dictionary of scores. The @Language.factory decorator can define the default_score_weights of the component to decide which keys of the scores to display during training and how they count towards the final score. |
For more details on how to implement your own trainable components and model architectures, and plug existing models implemented in PyTorch or TensorFlow into your spaCy pipeline, see the usage guide on layers and model architectures.
Extension attributes
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.
Description
-
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
orToken
.Doc.set_extension("hello", default=True) assert doc._.hello doc._.hello = False
-
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 overToken
attributes. ForSpan
extensions, you'll almost always want to use a property – otherwise, you'd have to write to every possibleSpan
in theDoc
to set up the values correctly.Doc.set_extension("hello", getter=get_hello_value, setter=set_hello_value) assert doc._.hello doc._.hello = "Hi!"
-
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: f"Hi {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 = ["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)
Usage example
doc = nlp("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
.
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 and sets custom attributes on the Doc
and
Span
– for example, the capital, latitude/longitude coordinates and even the
country flag.
### {executable="true"}
import requests
from spacy.lang.en import English
from spacy.language import Language
from spacy.matcher import PhraseMatcher
from spacy.tokens import Doc, Span, Token
@Language.factory("rest_countries")
class RESTCountriesComponent:
def __init__(self, nlp, name, label="GPE"):
r = requests.get("https://restcountries.eu/rest/v2/all")
r.raise_for_status() # make sure requests raises an error if it fails
countries = r.json()
# Convert API response to dict keyed by country name for easy lookup
self.countries = {c["name"]: c for c in countries}
self.label = label
# Set up the PhraseMatcher with Doc patterns for each country name
self.matcher = PhraseMatcher(nlp.vocab)
self.matcher.add("COUNTRIES", [nlp.make_doc(c) for c in self.countries.keys()])
# Register attributes on the Span. We'll be overwriting this based on
# the matches, so we're only setting a default value, not a getter.
Span.set_extension("is_country", default=None)
Span.set_extension("country_capital", default=None)
Span.set_extension("country_latlng", default=None)
Span.set_extension("country_flag", default=None)
# Register attribute on Doc via a getter that checks if the Doc
# contains a country entity
Doc.set_extension("has_country", getter=self.has_country)
def __call__(self, doc):
spans = [] # keep the spans for later so we can merge them afterwards
for _, start, end in self.matcher(doc):
# Generate Span representing the entity & set label
entity = Span(doc, start, end, label=self.label)
# Set custom attributes on entity. Can be extended with other data
# returned by the API, like currencies, country code, calling code etc.
entity._.set("is_country", True)
entity._.set("country_capital", self.countries[entity.text]["capital"])
entity._.set("country_latlng", self.countries[entity.text]["latlng"])
entity._.set("country_flag", self.countries[entity.text]["flag"])
spans.append(entity)
# Overwrite doc.ents and add entity – be careful not to replace!
doc.ents = list(doc.ents) + spans
return doc # don't forget to return the Doc!
def has_country(self, doc):
"""Getter for Doc attributes. Since the getter is only called
when we access the attribute, we can refer to the Span's 'is_country'
attribute here, which is already set in the processing step."""
return any([entity._.get("is_country") for entity in doc.ents])
nlp = English()
nlp.add_pipe("rest_countries", config={"label": "GPE"})
doc = nlp("Some text about Colombia and the Czech Republic")
print("Pipeline", nlp.pipe_names) # pipeline contains component name
print("Doc has countries", doc._.has_country) # Doc contains countries
for ent in doc.ents:
if ent._.is_country:
print(ent.text, ent.label_, ent._.country_capital, ent._.country_latlng, ent._.country_flag)
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 components 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 theSpan
andToken
objects are created lazily, and don't own any data. They just proxy to their parentDoc
. This turns out to be convenient here – we only have to worry about installing hooks in one place.
Name | Customizes |
---|---|
user_hooks |
Doc.similarity , 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
from spacy.language import Language
class SimilarityModel:
def __init__(self, name: str, index: int):
self.name = name
self.index = index
def __call__(self, doc):
doc.user_hooks["similarity"] = self.similarity
doc.user_span_hooks["similarity"] = self.similarity
doc.user_token_hooks["similarity"] = self.similarity
return doc
def similarity(self, obj1, obj2):
return obj1.vector[self.index] + obj2.vector[self.index]
@Language.factory("similarity_component", default_config={"index": 0})
def create_similarity_component(nlp, name, index: int):
return SimilarityModel(name, index)
Developing plugins and wrappers
We're very excited about all the new possibilities for community extensions and plugins in spaCy, 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
orToken
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
orSpan
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
orSpan
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
orSpan
, 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 anattrs
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 theuser_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 pipeline package that depends on a custom pipeline component, you can either require it in the package's dependencies, or – if the component is specific and lightweight – choose to ship it with your pipeline package. Just make sure the
@Language.component
or@Language.factory
decorator that registers the custom component runs in your package's__init__.py
or is exposed via an entry point. -
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
andspacy-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 training.biluo_tags_to_spans
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 theToken.ent_type
andToken.ent_iob
attributes. By definition, each token can only be part of one entity, so overlapping entity spans are not allowed.
### {highlight="1,8-9"}
import your_custom_entity_recognizer
from spacy.training import biluo_tags_to_spans
from spacy.language import Language
@Language.component("custom_ner_wrapper")
def custom_ner_wrapper(doc):
words = [token.text for token in doc]
custom_entities = your_custom_entity_recognizer(words)
doc.ents = biluo_tags_to_spans(doc, custom_entities)
return doc
The custom_ner_wrapper
can then be added to a blank pipeline using
nlp.add_pipe
. You can also replace the existing
entity recognizer of a trained pipeline 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-stanza
For an example of an end-to-end wrapper for statistical tokenization, tagging and parsing, check out
spacy-stanza
. It uses a very similar approach to the example in this section – the only difference is that it fully replaces thenlp
object instead of providing a pipeline component, since it also needs to handle tokenization.
### {highlight="1,11,17-19"}
import your_custom_model
from spacy.language import Language
from spacy.symbols import POS, TAG, DEP, HEAD
from spacy.tokens import Doc
import numpy
@Language.component("custom_model_wrapper")
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.