21 KiB
title | tag | teaser |
---|---|---|
Pipe | class | Base class for trainable pipeline components |
This class is a base class and not instantiated directly. Trainable pipeline
components like the EntityRecognizer
or
TextCategorizer
inherit from it and it defines the
interface that components should follow to function as trainable components in a
spaCy pipeline. See the docs on
writing trainable components
for how to use the Pipe
base class to implement custom components.
Why is Pipe implemented in Cython?
The
Pipe
class is implemented in a.pyx
module, the extension used by Cython. This is needed so that other Cython classes, like theEntityRecognizer
can inherit from it. But it doesn't mean you have to implement trainable components in Cython – pure Python components like theTextCategorizer
can also inherit fromPipe
.
%%GITHUB_SPACY/spacy/pipeline/pipe.pyx
Pipe.__init__
Example
from spacy.pipeline import Pipe from spacy.language import Language class CustomPipe(Pipe): ... @Language.factory("your_custom_pipe", default_config={"model": MODEL}) def make_custom_pipe(nlp, name, model): return CustomPipe(nlp.vocab, model, name)
Create a new pipeline instance. In your application, you would normally use a
shortcut for this and instantiate the component using its string name and
nlp.add_pipe
.
Name | Description |
---|---|
vocab |
The shared vocabulary. |
model |
The Thinc Model powering the pipeline component. |
name |
String name of the component instance. Used to add entries to the losses during training. |
**cfg |
Additional config parameters and settings. Will be available as the dictionary Pipe.cfg and is serialized with the component. |
Pipe.__call__
Apply the pipe to one document. The document is modified in place, and returned.
This usually happens under the hood when the nlp
object is called on a text
and all pipeline components are applied to the Doc
in order. Both
__call__
and pipe
delegate to the
predict
and
set_annotations
methods.
Example
doc = nlp("This is a sentence.") pipe = nlp.add_pipe("your_custom_pipe") # This usually happens under the hood processed = pipe(doc)
Name | Description |
---|---|
doc |
The document to process. |
RETURNS | The processed document. |
Pipe.pipe
Apply the pipe to a stream of documents. This usually happens under the hood
when the nlp
object is called on a text and all pipeline components are
applied to the Doc
in order. Both __call__
and
pipe
delegate to the predict
and
set_annotations
methods.
Example
pipe = nlp.add_pipe("your_custom_pipe") for doc in pipe.pipe(docs, batch_size=50): pass
Name | Description |
---|---|
stream |
A stream of documents. |
keyword-only | |
batch_size |
The number of documents to buffer. Defaults to 128 . |
YIELDS | The processed documents in order. |
Pipe.initialize
Initialize the component for training. get_examples
should be a function that
returns an iterable of Example
objects. The data examples are
used to initialize the model of the component and can either be the full
training data or a representative sample. Initialization includes validating the
network,
inferring missing shapes and
setting up the label scheme based on the data. This method is typically called
by Language.initialize
.
This method was previously called begin_training
.
Example
pipe = nlp.add_pipe("your_custom_pipe") pipe.initialize(lambda: [], pipeline=nlp.pipeline)
Name | Description |
---|---|
get_examples |
Function that returns gold-standard annotations in the form of Example objects. |
keyword-only | |
nlp |
The current nlp object. Defaults to None . |
Pipe.predict
Apply the component's model to a batch of Doc
objects, without
modifying them.
This method needs to be overwritten with your own custom predict
method.
Example
pipe = nlp.add_pipe("your_custom_pipe") scores = pipe.predict([doc1, doc2])
Name | Description |
---|---|
docs |
The documents to predict. |
RETURNS | The model's prediction for each document. |
Pipe.set_annotations
Modify a batch of Doc
objects, using pre-computed scores.
This method needs to be overwritten with your own custom set_annotations
method.
Example
pipe = nlp.add_pipe("your_custom_pipe") scores = pipe.predict(docs) pipe.set_annotations(docs, scores)
Name | Description |
---|---|
docs |
The documents to modify. |
scores |
The scores to set, produced by Tagger.predict . |
Pipe.update
Learn from a batch of Example
objects containing the
predictions and gold-standard annotations, and update the component's model.
Example
pipe = nlp.add_pipe("your_custom_pipe") optimizer = nlp.initialize() losses = pipe.update(examples, sgd=optimizer)
Name | Description |
---|---|
examples |
A batch of Example objects to learn from. |
keyword-only | |
drop |
The dropout rate. |
set_annotations |
Whether or not to update the Example objects with the predictions, delegating to set_annotations . |
sgd |
An optimizer. Will be created via create_optimizer if not set. |
losses |
Optional record of the loss during training. Updated using the component name as the key. |
RETURNS | The updated losses dictionary. |
Pipe.rehearse
Perform a "rehearsal" update from a batch of data. Rehearsal updates teach the current model to make predictions similar to an initial model, to try to address the "catastrophic forgetting" problem. This feature is experimental.
Example
pipe = nlp.add_pipe("your_custom_pipe") optimizer = nlp.resume_training() losses = pipe.rehearse(examples, sgd=optimizer)
Name | Description |
---|---|
examples |
A batch of Example objects to learn from. |
keyword-only | |
drop |
The dropout rate. |
sgd |
An optimizer. Will be created via create_optimizer if not set. |
losses |
Optional record of the loss during training. Updated using the component name as the key. |
RETURNS | The updated losses dictionary. |
Pipe.get_loss
Find the loss and gradient of loss for the batch of documents and their predicted scores.
This method needs to be overwritten with your own custom get_loss
method.
Example
ner = nlp.add_pipe("ner") scores = ner.predict([eg.predicted for eg in examples]) loss, d_loss = ner.get_loss(examples, scores)
Name | Description |
---|---|
examples |
The batch of examples. |
scores |
Scores representing the model's predictions. |
RETURNS | The loss and the gradient, i.e. (loss, gradient) . |
Pipe.score
Score a batch of examples.
Example
scores = pipe.score(examples)
Name | Description |
---|---|
examples |
The examples to score. |
RETURNS | The scores, e.g. produced by the Scorer . |
Pipe.create_optimizer
Create an optimizer for the pipeline component. Defaults to
Adam
with default settings.
Example
pipe = nlp.add_pipe("your_custom_pipe") optimizer = pipe.create_optimizer()
Name | Description |
---|---|
RETURNS | The optimizer. |
Pipe.use_params
Modify the pipe's model, to use the given parameter values. At the end of the context, the original parameters are restored.
Example
pipe = nlp.add_pipe("your_custom_pipe") with pipe.use_params(optimizer.averages): pipe.to_disk("/best_model")
Name | Description |
---|---|
params |
The parameter values to use in the model. |
Pipe.add_label
Example
pipe = nlp.add_pipe("your_custom_pipe") pipe.add_label("MY_LABEL")
Add a new label to the pipe, to be predicted by the model. The actual
implementation depends on the specific component, but in general add_label
shouldn't be called if the output dimension is already set, or if the model has
already been fully initialized. If these conditions are violated,
the function will raise an Error. The exception to this rule is when the
component is resizable, in which case
set_output
should be called to ensure that the model is
properly resized.
This method needs to be overwritten with your own custom add_label
method.
Name | Description |
---|---|
label |
The label to add. |
RETURNS | 0 if the label is already present, otherwise 1. |
Note that in general, you don't have to call pipe.add_label
if you provide a
representative data sample to the initialize
method. In this
case, all labels found in the sample will be automatically added to the model,
and the output dimension will be
inferred automatically.
Pipe.is_resizable
Example
can_resize = pipe.is_resizable()
With custom resizing implemented by a component:
def custom_resize(model, new_nO): # adjust model return model custom_model.attrs["resize_output"] = custom_resize
Check whether or not the output dimension of the component's model can be
resized. If this method returns True
, set_output
can be
called to change the model's output dimension.
For built-in components that are not resizable, you have to create and train a
new model from scratch with the appropriate architecture and output dimension.
For custom components, you can implement a resize_output
function and add it
as an attribute to the component's model.
Name | Description |
---|---|
RETURNS | Whether or not the output dimension of the model can be changed after initialization. |
Pipe.set_output
Change the output dimension of the component's model. If the component is not
resizable, this method will raise a NotImplementedError
. If a
component is resizable, the model's attribute resize_output
will be called.
This is a function that takes the original model and the new output dimension
nO
, and changes the model in place. When resizing an already trained model,
care should be taken to avoid the "catastrophic forgetting" problem.
Example
if pipe.is_resizable(): pipe.set_output(512)
Name | Description |
---|---|
nO |
The new output dimension. |
Pipe.to_disk
Serialize the pipe to disk.
Example
pipe = nlp.add_pipe("your_custom_pipe") pipe.to_disk("/path/to/pipe")
Name | Description |
---|---|
path |
A path to a directory, which will be created if it doesn't exist. Paths may be either strings or Path -like objects. |
keyword-only | |
exclude |
String names of serialization fields to exclude. |
Pipe.from_disk
Load the pipe from disk. Modifies the object in place and returns it.
Example
pipe = nlp.add_pipe("your_custom_pipe") pipe.from_disk("/path/to/pipe")
Name | Description |
---|---|
path |
A path to a directory. Paths may be either strings or Path -like objects. |
keyword-only | |
exclude |
String names of serialization fields to exclude. |
RETURNS | The modified pipe. |
Pipe.to_bytes
Example
pipe = nlp.add_pipe("your_custom_pipe") pipe_bytes = pipe.to_bytes()
Serialize the pipe to a bytestring.
Name | Description |
---|---|
keyword-only | |
exclude |
String names of serialization fields to exclude. |
RETURNS | The serialized form of the pipe. |
Pipe.from_bytes
Load the pipe from a bytestring. Modifies the object in place and returns it.
Example
pipe_bytes = pipe.to_bytes() pipe = nlp.add_pipe("your_custom_pipe") pipe.from_bytes(pipe_bytes)
Name | Description |
---|---|
bytes_data |
The data to load from. |
keyword-only | |
exclude |
String names of serialization fields to exclude. |
RETURNS | The pipe. |
Attributes
Name | Description |
---|---|
vocab |
The shared vocabulary that's passed in on initialization. |
model |
The model powering the component. |
name |
The name of the component instance in the pipeline. Can be used in the losses. |
cfg |
Keyword arguments passed to Pipe.__init__ . Will be serialized with the component. |
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 = pipe.to_disk("/path", exclude=["vocab"])
Name | Description |
---|---|
vocab |
The shared Vocab . |
cfg |
The config file. You usually don't want to exclude this. |
model |
The binary model data. You usually don't want to exclude this. |