title |
teaser |
tag |
source |
Language |
A text-processing pipeline |
class |
spacy/language.py |
Usually you'll load this once per process as nlp
and pass the instance around
your application. The Language
class is created when you call
spacy.load()
and contains the shared vocabulary
and language data, optional model data loaded from a
model package or a path, and a
processing pipeline containing components like
the tagger or parser that are called on a document in order. You can also add
your own processing pipeline components that take a Doc
object, modify it and
return it.
Language.__init__
Initialize a Language
object.
Example
from spacy.vocab import Vocab
from spacy.language import Language
nlp = Language(Vocab())
from spacy.lang.en import English
nlp = English()
Name |
Type |
Description |
vocab |
Vocab |
A Vocab object. If True , a vocab is created via Language.Defaults.create_vocab . |
make_doc |
callable |
A function that takes text and returns a Doc object. Usually a Tokenizer . |
meta |
dict |
Custom meta data for the Language class. Is written to by models to add model meta data. |
RETURNS |
Language |
The newly constructed object. |
Language.__call__
Apply the pipeline to some text. The text can span multiple sentences, and can
contain arbitrary whitespace. Alignment into the original string is preserved.
Example
doc = nlp("An example sentence. Another sentence.")
assert (doc[0].text, doc[0].head.tag_) == ("An", "NN")
Name |
Type |
Description |
text |
str |
The text to be processed. |
disable |
list |
Names of pipeline components to disable. |
RETURNS |
Doc |
A container for accessing the annotations. |
Language.pipe
Process texts as a stream, and yield Doc
objects in order. This is usually
more efficient than processing texts one-by-one.
Example
texts = ["One document.", "...", "Lots of documents"]
for doc in nlp.pipe(texts, batch_size=50):
assert doc.is_parsed
Name |
Type |
Description |
texts |
iterable |
A sequence of strings. |
as_tuples |
bool |
If set to True , inputs should be a sequence of (text, context) tuples. Output will then be a sequence of (doc, context) tuples. Defaults to False . |
batch_size |
int |
The number of texts to buffer. |
disable |
list |
Names of pipeline components to disable. |
component_cfg 2.1 |
dict |
Config parameters for specific pipeline components, keyed by component name. |
n_process 2.2.2 |
int |
Number of processors to use, only supported in Python 3. Defaults to 1 . |
YIELDS |
Doc |
Documents in the order of the original text. |
Language.update
Update the models in the pipeline.
Example
for raw_text, entity_offsets in train_data:
doc = nlp.make_doc(raw_text)
gold = GoldParse(doc, entities=entity_offsets)
nlp.update([doc], [gold], drop=0.5, sgd=optimizer)
Name |
Type |
Description |
docs |
iterable |
A batch of Doc objects or strings. If strings, a Doc object will be created from the text. |
golds |
iterable |
A batch of GoldParse objects or dictionaries. Dictionaries will be used to create GoldParse objects. For the available keys and their usage, see GoldParse.__init__ . |
drop |
float |
The dropout rate. |
sgd |
callable |
An optimizer. |
losses |
dict |
Dictionary to update with the loss, keyed by pipeline component. |
component_cfg 2.1 |
dict |
Config parameters for specific pipeline components, keyed by component name. |
Language.evaluate
Evaluate a model's pipeline components.
Example
scorer = nlp.evaluate(docs_golds, verbose=True)
print(scorer.scores)
Name |
Type |
Description |
docs_golds |
iterable |
Tuples of Doc and GoldParse objects, such that the Doc objects contain the predictions and the GoldParse objects the correct annotations. Alternatively, (text, annotations) tuples of raw text and a dict (see simple training style). |
verbose |
bool |
Print debugging information. |
batch_size |
int |
The batch size to use. |
scorer |
Scorer |
Optional Scorer to use. If not passed in, a new one will be created. |
component_cfg 2.1 |
dict |
Config parameters for specific pipeline components, keyed by component name. |
RETURNS |
Scorer |
The scorer containing the evaluation scores. |
Language.begin_training
Allocate models, pre-process training data and acquire an optimizer.
Example
optimizer = nlp.begin_training(gold_tuples)
Name |
Type |
Description |
gold_tuples |
iterable |
Gold-standard training data. |
component_cfg 2.1 |
dict |
Config parameters for specific pipeline components, keyed by component name. |
**cfg |
- |
Config parameters (sent to all components). |
RETURNS |
callable |
An optimizer. |
Language.use_params
Replace weights of models in the pipeline with those provided in the params
dictionary. Can be used as a context manager, in which case, models go back to
their original weights after the block.
Example
with nlp.use_params(optimizer.averages):
nlp.to_disk("/tmp/checkpoint")
Name |
Type |
Description |
params |
dict |
A dictionary of parameters keyed by model ID. |
**cfg |
- |
Config parameters. |
Language.preprocess_gold
Can be called before training to pre-process gold data. By default, it handles
nonprojectivity and adds missing tags to the tag map.
Name |
Type |
Description |
docs_golds |
iterable |
Tuples of Doc and GoldParse objects. |
YIELDS |
tuple |
Tuples of Doc and GoldParse objects. |
Language.create_pipe
Create a pipeline component from a factory.
Example
parser = nlp.create_pipe("parser")
nlp.add_pipe(parser)
Name |
Type |
Description |
name |
str |
Factory name to look up in Language.factories . |
config |
dict |
Configuration parameters to initialize component. |
RETURNS |
callable |
The pipeline component. |
Language.add_pipe
Add a component to the processing pipeline. Valid components are callables that
take a Doc
object, modify it and return it. Only one of before
, after
,
first
or last
can be set. Default behavior is last=True
.
Example
def component(doc):
# modify Doc and return it return doc
nlp.add_pipe(component, before="ner")
nlp.add_pipe(component, name="custom_name", last=True)
Name |
Type |
Description |
component |
callable |
The pipeline component. |
name |
str |
Name of pipeline component. Overwrites existing component.name attribute if available. If no name is set and the component exposes no name attribute, component.__name__ is used. An error is raised if the name already exists in the pipeline. |
before |
str |
Component name to insert component directly before. |
after |
str |
Component name to insert component directly after: |
first |
bool |
Insert component first / not first in the pipeline. |
last |
bool |
Insert component last / not last in the pipeline. |
Language.has_pipe
Check whether a component is present in the pipeline. Equivalent to
name in nlp.pipe_names
.
Example
nlp.add_pipe(lambda doc: doc, name="component")
assert "component" in nlp.pipe_names
assert nlp.has_pipe("component")
Name |
Type |
Description |
name |
str |
Name of the pipeline component to check. |
RETURNS |
bool |
Whether a component of that name exists in the pipeline. |
Language.get_pipe
Get a pipeline component for a given component name.
Example
parser = nlp.get_pipe("parser")
custom_component = nlp.get_pipe("custom_component")
Name |
Type |
Description |
name |
str |
Name of the pipeline component to get. |
RETURNS |
callable |
The pipeline component. |
Language.replace_pipe
Replace a component in the pipeline.
Example
nlp.replace_pipe("parser", my_custom_parser)
Name |
Type |
Description |
name |
str |
Name of the component to replace. |
component |
callable |
The pipeline component to insert. |
Language.rename_pipe
Rename a component in the pipeline. Useful to create custom names for
pre-defined and pre-loaded components. To change the default name of a component
added to the pipeline, you can also use the name
argument on
add_pipe
.
Example
nlp.rename_pipe("parser", "spacy_parser")
Name |
Type |
Description |
old_name |
str |
Name of the component to rename. |
new_name |
str |
New name of the component. |
Language.remove_pipe
Remove a component from the pipeline. Returns the removed component name and
component function.
Example
name, component = nlp.remove_pipe("parser")
assert name == "parser"
Name |
Type |
Description |
name |
str |
Name of the component to remove. |
RETURNS |
tuple |
A (name, component) tuple of the removed component. |
Language.select_pipes
Disable one or more pipeline components. If used as a context manager, the
pipeline will be restored to the initial state at the end of the block.
Otherwise, a DisabledPipes
object is returned, that has a .restore()
method
you can use to undo your changes. You can specify either disable
(as a list or
string), or enable
. In the latter case, all components not in the enable
list, will be disabled.
Example
with nlp.select_pipes(disable=["tagger", "parser"]):
nlp.begin_training()
with nlp.select_pipes(enable="ner"):
nlp.begin_training()
disabled = nlp.select_pipes(disable=["tagger", "parser"])
nlp.begin_training()
disabled.restore()
As of spaCy v3.0, the disable_pipes
method has been renamed to select_pipes
:
- nlp.disable_pipes(["tagger", "parser"])
+ nlp.select_pipes(disable=["tagger", "parser"])
Name |
Type |
Description |
disable |
str / list |
Name(s) of pipeline components to disable. |
enable |
str / list |
Names(s) of pipeline components that will not be disabled. |
RETURNS |
DisabledPipes |
The disabled pipes that can be restored by calling the object's .restore() method. |
Language.to_disk
Save the current state to a directory. If a model is loaded, this will include
the model.
Example
nlp.to_disk("/path/to/models")
Name |
Type |
Description |
path |
str / Path |
A path to a directory, which will be created if it doesn't exist. Paths may be either strings or Path -like objects. |
exclude |
list |
Names of pipeline components or serialization fields to exclude. |
Language.from_disk
Loads state from a directory. Modifies the object in place and returns it. If
the saved Language
object contains a model, the model will be loaded. Note
that this method is commonly used via the subclasses like English
or German
to make language-specific functionality like the
lexical attribute getters available to the
loaded object.
Example
from spacy.language import Language
nlp = Language().from_disk("/path/to/model")
# using language-specific subclass
from spacy.lang.en import English
nlp = English().from_disk("/path/to/en_model")
Name |
Type |
Description |
path |
str / Path |
A path to a directory. Paths may be either strings or Path -like objects. |
exclude |
list |
Names of pipeline components or serialization fields to exclude. |
RETURNS |
Language |
The modified Language object. |
Language.to_bytes
Serialize the current state to a binary string.
Example
nlp_bytes = nlp.to_bytes()
Name |
Type |
Description |
exclude |
list |
Names of pipeline components or serialization fields to exclude. |
RETURNS |
bytes |
The serialized form of the Language object. |
Language.from_bytes
Load state from a binary string. Note that this method is commonly used via the
subclasses like English
or German
to make language-specific functionality
like the lexical attribute getters
available to the loaded object.
Example
from spacy.lang.en import English
nlp_bytes = nlp.to_bytes()
nlp2 = English()
nlp2.from_bytes(nlp_bytes)
Name |
Type |
Description |
bytes_data |
bytes |
The data to load from. |
exclude |
list |
Names of pipeline components or serialization fields to exclude. |
RETURNS |
Language |
The Language object. |
Attributes
Name |
Type |
Description |
vocab |
Vocab |
A container for the lexical types. |
tokenizer |
Tokenizer |
The tokenizer. |
make_doc |
callable |
Callable that takes a string and returns a Doc . |
pipeline |
list |
List of (name, component) tuples describing the current processing pipeline, in order. |
pipe_names 2 |
list |
List of pipeline component names, in order. |
pipe_labels 2.2 |
dict |
List of labels set by the pipeline components, if available, keyed by component name. |
meta |
dict |
Custom meta data for the Language class. If a model is loaded, contains meta data of the model. |
path 2 |
Path |
Path to the model data directory, if a model is loaded. Otherwise None . |
Class attributes
Name |
Type |
Description |
Defaults |
class |
Settings, data and factory methods for creating the nlp object and processing pipeline. |
lang |
str |
Two-letter language ID, i.e. ISO code. |
factories 2 |
dict |
Factories that create pre-defined pipeline components, e.g. the tagger, parser or entity recognizer, keyed by their component name. |
Serialization fields
During serialization, spaCy will export several data fields used to restore
different aspects of the object. If needed, you can exclude them from
serialization by passing in the string names via the exclude
argument.
Example
data = nlp.to_bytes(exclude=["tokenizer", "vocab"])
nlp.from_disk("./model-data", exclude=["ner"])
Name |
Description |
vocab |
The shared Vocab . |
tokenizer |
Tokenization rules and exceptions. |
meta |
The meta data, available as Language.meta . |
... |
String names of pipeline components, e.g. "ner" . |