spaCy/website/docs/api/top-level.md

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Top-level Functions
spacy
spacy
displacy
displacy
registry
registry
Loggers
loggers
Readers
readers
Batchers
batchers
Data & Alignment
gold
Utility Functions
util

spaCy

spacy.load

Load a pipeline using the name of an installed package, a string path or a Path-like object. spaCy will try resolving the load argument in this order. If a pipeline is loaded from a string name, spaCy will assume it's a Python package and import it and call the package's own load() method. If a pipeline is loaded from a path, spaCy will assume it's a data directory, load its config.cfg and use the language and pipeline information to construct the Language class. The data will be loaded in via Language.from_disk.

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.

Example

nlp = spacy.load("en_core_web_sm") # package
nlp = spacy.load("/path/to/pipeline") # string path
nlp = spacy.load(Path("/path/to/pipeline")) # pathlib Path

nlp = spacy.load("en_core_web_sm", exclude=["parser", "tagger"])
Name Description
name Pipeline to load, i.e. package name or path. Union[str, Path]
keyword-only
disable Names of pipeline components to disable. Disabled pipes will be loaded but they won't be run unless you explicitly enable them by calling nlp.enable_pipe. List[str]
exclude 3 Names of pipeline components to exclude. Excluded components won't be loaded. List[str]
config 3 Optional config overrides, either as nested dict or dict keyed by section value in dot notation, e.g. "components.name.value". Union[Dict[str, Any], Config]
RETURNS A Language object with the loaded pipeline. Language

Essentially, spacy.load() is a convenience wrapper that reads the pipeline's config.cfg, uses the language and pipeline information to construct a Language object, loads in the model data and weights, and returns it.

### Abstract example
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

spacy.blank

Create a blank pipeline of a given language class. This function is the twin of spacy.load().

Example

nlp_en = spacy.blank("en")   # equivalent to English()
nlp_de = spacy.blank("de")   # equivalent to German()
Name Description
name ISO code of the language class to load. str
keyword-only
vocab 3 Optional shared vocab to pass in on initialization. If True (default), a new Vocab object will be created. Union[Vocab, bool].
config 3 Optional config overrides, either as nested dict or dict keyed by section value in dot notation, e.g. "components.name.value". Union[Dict[str, Any], Config]
meta 3 Optional meta overrides for nlp.meta. Dict[str, Any]
RETURNS An empty Language object of the appropriate subclass. Language

spacy.info

The same as the info command. Pretty-print information about your installation, installed pipelines and local setup from within spaCy.

Example

spacy.info()
spacy.info("en_core_web_sm")
markdown = spacy.info(markdown=True, silent=True)
Name Description
model Optional pipeline, i.e. a package name or path (optional). Optional[str]
keyword-only
markdown Print information as Markdown. bool
silent Don't print anything, just return. bool

spacy.explain

Get a description for a given POS tag, dependency label or entity type. For a list of available terms, see glossary.py.

Example

spacy.explain("NORP")
# Nationalities or religious or political groups

doc = nlp("Hello world")
for word in doc:
   print(word.text, word.tag_, spacy.explain(word.tag_))
# Hello UH interjection
# world NN noun, singular or mass
Name Description
term Term to explain. str
RETURNS The explanation, or None if not found in the glossary. Optional[str]

spacy.prefer_gpu

Allocate data and perform operations on GPU, if available. If data has already been allocated on CPU, it will not be moved. Ideally, this function should be called right after importing spaCy and before loading any pipelines.

Example

import spacy
activated = spacy.prefer_gpu()
nlp = spacy.load("en_core_web_sm")
Name Description
gpu_id Device index to select. Defaults to 0. int
RETURNS Whether the GPU was activated. bool

spacy.require_gpu

Allocate data and perform operations on GPU. Will raise an error if no GPU is available. If data has already been allocated on CPU, it will not be moved. Ideally, this function should be called right after importing spaCy and before loading any pipelines.

Example

import spacy
spacy.require_gpu()
nlp = spacy.load("en_core_web_sm")
Name Description
gpu_id Device index to select. Defaults to 0. int
RETURNS True bool

displaCy

As of v2.0, spaCy comes with a built-in visualization suite. For more info and examples, see the usage guide on visualizing spaCy.

displacy.serve

Serve a dependency parse tree or named entity visualization to view it in your browser. Will run a simple web server.

Example

import spacy
from spacy import displacy
nlp = spacy.load("en_core_web_sm")
doc1 = nlp("This is a sentence.")
doc2 = nlp("This is another sentence.")
displacy.serve([doc1, doc2], style="dep")
Name Description
docs Document(s) or span(s) to visualize. Union[Iterable[Union[Doc, Span]], Doc, Span]
style Visualization style, "dep" or "ent". Defaults to "dep". str
page Render markup as full HTML page. Defaults to True. bool
minify Minify HTML markup. Defaults to False. bool
options Visualizer-specific options, e.g. colors. Dict[str, Any]
manual Don't parse Doc and instead expect a dict or list of dicts. See here for formats and examples. Defaults to False. bool
port Port to serve visualization. Defaults to 5000. int
host Host to serve visualization. Defaults to "0.0.0.0". str

displacy.render

Render a dependency parse tree or named entity visualization.

Example

import spacy
from spacy import displacy
nlp = spacy.load("en_core_web_sm")
doc = nlp("This is a sentence.")
html = displacy.render(doc, style="dep")
Name Description
docs Document(s) or span(s) to visualize. Union[Iterable[Union[Doc, Span]], Doc, Span]
style Visualization style, "dep" or "ent". Defaults to "dep". str
page Render markup as full HTML page. Defaults to True. bool
minify Minify HTML markup. Defaults to False. bool
options Visualizer-specific options, e.g. colors. Dict[str, Any]
manual Don't parse Doc and instead expect a dict or list of dicts. See here for formats and examples. Defaults to False. bool
jupyter Explicitly enable or disable "Jupyter mode" to return markup ready to be rendered in a notebook. Detected automatically if None (default). Optional[bool]
RETURNS The rendered HTML markup. str

Visualizer options

The options argument lets you specify additional settings for each visualizer. If a setting is not present in the options, the default value will be used.

Dependency Visualizer options

Example

options = {"compact": True, "color": "blue"}
displacy.serve(doc, style="dep", options=options)
Name Description
fine_grained Use fine-grained part-of-speech tags (Token.tag_) instead of coarse-grained tags (Token.pos_). Defaults to False. bool
add_lemma 2.2.4 Print the lemmas in a separate row below the token texts. Defaults to False. bool
collapse_punct Attach punctuation to tokens. Can make the parse more readable, as it prevents long arcs to attach punctuation. Defaults to True. bool
collapse_phrases Merge noun phrases into one token. Defaults to False. bool
compact "Compact mode" with square arrows that takes up less space. Defaults to False. bool
color Text color (HEX, RGB or color names). Defaults to "#000000". str
bg Background color (HEX, RGB or color names). Defaults to "#ffffff". str
font Font name or font family for all text. Defaults to "Arial". str
offset_x Spacing on left side of the SVG in px. Defaults to 50. int
arrow_stroke Width of arrow path in px. Defaults to 2. int
arrow_width Width of arrow head in px. Defaults to 10 in regular mode and 8 in compact mode. int
arrow_spacing Spacing between arrows in px to avoid overlaps. Defaults to 20 in regular mode and 12 in compact mode. int
word_spacing Vertical spacing between words and arcs in px. Defaults to 45. int
distance Distance between words in px. Defaults to 175 in regular mode and 150 in compact mode. int

Named Entity Visualizer options

Example

options = {"ents": ["PERSON", "ORG", "PRODUCT"],
           "colors": {"ORG": "yellow"}}
displacy.serve(doc, style="ent", options=options)
Name Description
ents Entity types to highlight or None for all types (default). Optional[List[str]]
colors Color overrides. Entity types should be mapped to color names or values. Dict[str, str]
template 2.2 Optional template to overwrite the HTML used to render entity spans. Should be a format string and can use {bg}, {text} and {label}. See templates.py for examples. Optional[str]

By default, displaCy comes with colors for all entity types used by spaCy's trained pipelines. If you're using custom entity types, you can use the colors setting to add your own colors for them. Your application or pipeline package can also expose a spacy_displacy_colors entry point to add custom labels and their colors automatically.

registry

spaCy's function registry extends Thinc's registry and allows you to map strings to functions. You can register functions to create architectures, optimizers, schedules and more, and then refer to them and set their arguments in your config file. Python type hints are used to validate the inputs. See the Thinc docs for details on the registry methods and our helper library catalogue for some background on the concept of function registries. spaCy also uses the function registry for language subclasses, model architecture, lookups and pipeline component factories.

Example

from typing import Iterator
import spacy

@spacy.registry.schedules("waltzing.v1")
def waltzing() -> Iterator[float]:
    i = 0
    while True:
        yield i % 3 + 1
        i += 1
Registry name Description
architectures Registry for functions that create model architectures. Can be used to register custom model architectures and reference them in the config.cfg.
batchers Registry for training and evaluation data batchers.
callbacks Registry for custom callbacks to modify the nlp object before training.
displacy_colors Registry for custom color scheme for the displacy NER visualizer. Automatically reads from entry points.
factories Registry for functions that create pipeline components. Added automatically when you use the @spacy.component decorator and also reads from entry points.
initializers Registry for functions that create initializers.
languages Registry for language-specific Language subclasses. Automatically reads from entry points.
layers Registry for functions that create layers.
loggers Registry for functions that log training results.
lookups Registry for large lookup tables available via vocab.lookups.
losses Registry for functions that create losses.
misc Registry for miscellaneous functions that return data assets, knowledge bases or anything else you may need.
optimizers Registry for functions that create optimizers.
readers Registry for training and evaluation data readers like Corpus.
schedules Registry for functions that create schedules.
tokenizers Registry for tokenizer factories. Registered functions should return a callback that receives the nlp object and returns a Tokenizer or a custom callable.

spacy-transformers registry

The following registries are added by the spacy-transformers package. See the Transformer API reference and usage docs for details.

Example

import spacy_transformers

@spacy_transformers.registry.annotation_setters("my_annotation_setter.v1")
def configure_custom_annotation_setter():
    def annotation_setter(docs, trf_data) -> None:
       # Set annotations on the docs

    return annotation_setter
Registry name Description
span_getters Registry for functions that take a batch of Doc objects and return a list of Span objects to process by the transformer, e.g. sentences.
annotation_setters Registry for functions that create annotation setters. Annotation setters are functions that take a batch of Doc objects and a FullTransformerBatch and can set additional annotations on the Doc.

Loggers

A logger records the training results. When a logger is created, two functions are returned: one for logging the information for each training step, and a second function that is called to finalize the logging when the training is finished. To log each training step, a dictionary is passed on from the spacy train, including information such as the training loss and the accuracy scores on the development set.

There are two built-in logging functions: a logger printing results to the console in tabular format (which is the default), and one that also sends the results to a Weights & Biases dashboard. Instead of using one of the built-in loggers listed here, you can also implement your own.

ConsoleLogger

Example config

[training.logger]
@loggers = "spacy.ConsoleLogger.v1"

Writes the results of a training step to the console in a tabular format.

$ python -m spacy train config.cfg
 Using CPU
 Loading config and nlp from: config.cfg
 Pipeline: ['tok2vec', 'tagger']
 Start training
 Training. Initial learn rate: 0.0

E     #        LOSS TOK2VEC   LOSS TAGGER   TAG_ACC   SCORE
---   ------   ------------   -----------   -------   ------
  1        0           0.00         86.20      0.22     0.00
  1      200           3.08      18968.78     34.00     0.34
  1      400          31.81      22539.06     33.64     0.34
  1      600          92.13      22794.91     43.80     0.44
  1      800         183.62      21541.39     56.05     0.56
  1     1000         352.49      25461.82     65.15     0.65
  1     1200         422.87      23708.82     71.84     0.72
  1     1400         601.92      24994.79     76.57     0.77
  1     1600         662.57      22268.02     80.20     0.80
  1     1800        1101.50      28413.77     82.56     0.83
  1     2000        1253.43      28736.36     85.00     0.85
  1     2200        1411.02      28237.53     87.42     0.87
  1     2400        1605.35      28439.95     88.70     0.89

Note that the cumulative loss keeps increasing within one epoch, but should start decreasing across epochs.

WandbLogger

Installation

$ pip install wandb
$ wandb login

Built-in logger that sends the results of each training step to the dashboard of the Weights & Biases tool. To use this logger, Weights & Biases should be installed, and you should be logged in. The logger will send the full config file to W&B, as well as various system information such as memory utilization, network traffic, disk IO, GPU statistics, etc. This will also include information such as your hostname and operating system, as well as the location of your Python executable.

Note that by default, the full (interpolated) training config is sent over to the W&B dashboard. If you prefer to exclude certain information such as path names, you can list those fields in "dot notation" in the remove_config_values parameter. These fields will then be removed from the config before uploading, but will otherwise remain in the config file stored on your local system.

Example config

[training.logger]
@loggers = "spacy.WandbLogger.v1"
project_name = "monitor_spacy_training"
remove_config_values = ["paths.train", "paths.dev", "corpora.train.path", "corpora.dev.path"]
Name Description
project_name The name of the project in the Weights & Biases interface. The project will be created automatically if it doesn't exist yet. str
remove_config_values A list of values to include from the config before it is uploaded to W&B (default: empty). List[str]

Get started with tracking your spaCy training runs in Weights & Biases using our project template. It trains on the IMDB Movie Review Dataset and includes a simple config with the built-in WandbLogger, as well as a custom example of creating variants of the config for a simple hyperparameter grid search and logging the results.

Readers

Corpus readers are registered functions that load data and return a function that takes the current nlp object and yields Example objects that can be used for training and pretraining. You can replace it with your own registered function in the @readers registry to customize the data loading and streaming.

Corpus

The Corpus reader manages annotated corpora and can be used for training and development datasets in the DocBin (.spacy) format. Also see the Corpus class.

Example config

[paths]
train = "corpus/train.spacy"

[corpora.train]
@readers = "spacy.Corpus.v1"
path = ${paths.train}
gold_preproc = false
max_length = 0
limit = 0
Name Description
path The directory or filename to read from. Expects data in spaCy's binary .spacy format. Union[str, Path]
 gold_preproc Whether to set up the Example object with gold-standard sentences and tokens for the predictions. See Corpus for details. bool
max_length Maximum document length. Longer documents will be split into sentences, if sentence boundaries are available. Defaults to 0 for no limit. int
limit Limit corpus to a subset of examples, e.g. for debugging. Defaults to 0 for no limit. int

JsonlReader

Create Example objects from a JSONL (newline-delimited JSON) file of texts keyed by "text". Can be used to read the raw text corpus for language model pretraining from a JSONL file. Also see the JsonlReader class.

Example config

[paths]
pretrain = "corpus/raw_text.jsonl"

[corpora.pretrain]
@readers = "spacy.JsonlReader.v1"
path = ${paths.pretrain}
min_length = 0
max_length = 0
limit = 0
Name Description
path The directory or filename to read from. Expects newline-delimited JSON with a key "text" for each record. Union[str, Path]
min_length Minimum document length (in tokens). Shorter documents will be skipped. Defaults to 0, which indicates no limit. int
max_length Maximum document length (in tokens). Longer documents will be skipped. Defaults to 0, which indicates no limit. int
limit Limit corpus to a subset of examples, e.g. for debugging. Defaults to 0 for no limit. int

Batchers

A data batcher implements a batching strategy that essentially turns a stream of items into a stream of batches, with each batch consisting of one item or a list of items. During training, the models update their weights after processing one batch at a time. Typical batching strategies include presenting the training data as a stream of batches with similar sizes, or with increasing batch sizes. See the Thinc documentation on schedules for a few standard examples.

Instead of using one of the built-in batchers listed here, you can also implement your own, which may or may not use a custom schedule.

batch_by_words

Create minibatches of roughly a given number of words. If any examples are longer than the specified batch length, they will appear in a batch by themselves, or be discarded if discard_oversize is set to True. The argument docs can be a list of strings, Doc objects or Example objects.

Example config

[training.batcher]
@batchers = "spacy.batch_by_words.v1"
size = 100
tolerance = 0.2
discard_oversize = false
get_length = null
Name Description
seqs The sequences to minibatch. Iterable[Any]
size The target number of words per batch. Can also be a block referencing a schedule, e.g. compounding. Union[int, Sequence[int]]
tolerance What percentage of the size to allow batches to exceed. float
discard_oversize Whether to discard sequences that by themselves exceed the tolerated size. bool
get_length Optional function that receives a sequence item and returns its length. Defaults to the built-in len() if not set. Optional[CallableAny], int

batch_by_sequence

Example config

[training.batcher]
@batchers = "spacy.batch_by_sequence.v1"
size = 32
get_length = null

Create a batcher that creates batches of the specified size.

Name Description
size The target number of items per batch. Can also be a block referencing a schedule, e.g. compounding. Union[int, Sequence[int]]
get_length Optional function that receives a sequence item and returns its length. Defaults to the built-in len() if not set. Optional[CallableAny], int

batch_by_padded

Example config

[training.batcher]
@batchers = "spacy.batch_by_padded.v1"
size = 100
buffer = 256
discard_oversize = false
get_length = null

Minibatch a sequence by the size of padded batches that would result, with sequences binned by length within a window. The padded size is defined as the maximum length of sequences within the batch multiplied by the number of sequences in the batch.

Name Description
size The largest padded size to batch sequences into. Can also be a block referencing a schedule, e.g. compounding. Union[int, Sequence[int]]
buffer The number of sequences to accumulate before sorting by length. A larger buffer will result in more even sizing, but if the buffer is very large, the iteration order will be less random, which can result in suboptimal training. int
discard_oversize Whether to discard sequences that are by themselves longer than the largest padded batch size. bool
get_length Optional function that receives a sequence item and returns its length. Defaults to the built-in len() if not set. Optional[CallableAny], int

Training data and alignment

training.offsets_to_biluo_tags

Encode labelled spans into per-token tags, using the BILUO scheme (Begin, In, Last, Unit, Out). Returns a list of strings, describing the tags. Each tag string will be in the form of either "", "O" or "{action}-{label}", where action is one of "B", "I", "L", "U". The string "-" is used where the entity offsets don't align with the tokenization in the Doc object. The training algorithm will view these as missing values. O denotes a non-entity token. B denotes the beginning of a multi-token entity, I the inside of an entity of three or more tokens, and L the end of an entity of two or more tokens. U denotes a single-token entity.

This method was previously available as spacy.gold.biluo_tags_from_offsets.

Example

from spacy.training import offsets_to_biluo_tags

doc = nlp("I like London.")
entities = [(7, 13, "LOC")]
tags = offsets_to_biluo_tags(doc, entities)
assert tags == ["O", "O", "U-LOC", "O"]
Name Description
doc The document that the entity offsets refer to. The output tags will refer to the token boundaries within the document. Doc
entities A sequence of (start, end, label) triples. start and end should be character-offset integers denoting the slice into the original string. List[Tuple[int, int, Union[str, int]]]
missing The label used for missing values, e.g. if tokenization doesn't align with the entity offsets. Defaults to "O". str
RETURNS A list of strings, describing the BILUO tags. List[str]

training.biluo_tags_to_offsets

Encode per-token tags following the BILUO scheme into entity offsets.

This method was previously available as spacy.gold.offsets_from_biluo_tags.

Example

from spacy.training import biluo_tags_to_offsets

doc = nlp("I like London.")
tags = ["O", "O", "U-LOC", "O"]
entities = biluo_tags_to_offsets(doc, tags)
assert entities == [(7, 13, "LOC")]
Name Description
doc The document that the BILUO tags refer to. Doc
entities A sequence of BILUO tags with each tag describing one token. Each tag string will be of the form of either "", "O" or "{action}-{label}", where action is one of "B", "I", "L", "U". List[str]
RETURNS A sequence of (start, end, label) triples. start and end will be character-offset integers denoting the slice into the original string. List[Tuple[int, int, str]]

training.biluo_tags_to_spans

Encode per-token tags following the BILUO scheme into Span objects. This can be used to create entity spans from token-based tags, e.g. to overwrite the doc.ents.

This method was previously available as spacy.gold.spans_from_biluo_tags.

Example

from spacy.training import biluo_tags_to_spans

doc = nlp("I like London.")
tags = ["O", "O", "U-LOC", "O"]
doc.ents = biluo_tags_to_spans(doc, tags)
Name Description
doc The document that the BILUO tags refer to. Doc
entities A sequence of BILUO tags with each tag describing one token. Each tag string will be of the form of either "", "O" or "{action}-{label}", where action is one of "B", "I", "L", "U". List[str]
RETURNS A sequence of Span objects with added entity labels. List[Span]

Utility functions

spaCy comes with a small collection of utility functions located in spacy/util.py. Because utility functions are mostly intended for internal use within spaCy, their behavior may change with future releases. The functions documented on this page should be safe to use and we'll try to ensure backwards compatibility. However, we recommend having additional tests in place if your application depends on any of spaCy's utilities.

util.get_lang_class

Import and load a Language class. Allows lazy-loading language data and importing languages using the two-letter language code. To add a language code for a custom language class, you can register it using the @registry.languages decorator.

Example

for lang_id in ["en", "de"]:
    lang_class = util.get_lang_class(lang_id)
    lang = lang_class()
Name Description
lang Two-letter language code, e.g. "en". str
RETURNS The respective subclass. Language

util.lang_class_is_loaded

Check whether a Language subclass is already loaded. Language subclasses are loaded lazily to avoid expensive setup code associated with the language data.

Example

lang_cls = util.get_lang_class("en")
assert util.lang_class_is_loaded("en") is True
assert util.lang_class_is_loaded("de") is False
Name Description
name Two-letter language code, e.g. "en". str
RETURNS Whether the class has been loaded. bool

util.load_model

Load a pipeline from a package or data path. If called with a string name, spaCy will assume the pipeline is a Python package and import and call its load() method. If called with a path, spaCy will assume it's a data directory, read the language and pipeline settings from the config.cfg and create a Language object. The model data will then be loaded in via Language.from_disk.

Example

nlp = util.load_model("en_core_web_sm")
nlp = util.load_model("en_core_web_sm", exclude=["ner"])
nlp = util.load_model("/path/to/data")
Name Description
name Package name or path. str
vocab 3 Optional shared vocab to pass in on initialization. If True (default), a new Vocab object will be created. Union[Vocab, bool].
disable Names of pipeline components to disable. Disabled pipes will be loaded but they won't be run unless you explicitly enable them by calling nlp.enable_pipe. List[str]
exclude 3 Names of pipeline components to exclude. Excluded components won't be loaded. List[str]
config 3 Config overrides as nested dict or flat dict keyed by section values in dot notation, e.g. "nlp.pipeline". Union[Dict[str, Any], Config]
RETURNS Language class with the loaded pipeline. Language

util.load_model_from_init_py

A helper function to use in the load() method of a pipeline package's __init__.py.

Example

from spacy.util import load_model_from_init_py

def load(**overrides):
    return load_model_from_init_py(__file__, **overrides)
Name Description
init_file Path to package's __init__.py, i.e. __file__. Union[str, Path]
vocab 3 Optional shared vocab to pass in on initialization. If True (default), a new Vocab object will be created. Union[Vocab, bool].
disable Names of pipeline components to disable. Disabled pipes will be loaded but they won't be run unless you explicitly enable them by calling nlp.enable_pipe. List[str]
exclude 3 Names of pipeline components to exclude. Excluded components won't be loaded. List[str]
config 3 Config overrides as nested dict or flat dict keyed by section values in dot notation, e.g. "nlp.pipeline". Union[Dict[str, Any], Config]
RETURNS Language class with the loaded pipeline. Language

util.load_config

Load a pipeline's config.cfg from a file path. The config typically includes details about the components and how they're created, as well as all training settings and hyperparameters.

Example

config = util.load_config("/path/to/config.cfg")
print(config.to_str())
Name Description
path Path to the pipeline's config.cfg. Union[str, Path]
overrides Optional config overrides to replace in loaded config. Can be provided as nested dict, or as flat dict with keys in dot notation, e.g. "nlp.pipeline". Dict[str, Any]
interpolate Whether to interpolate the config and replace variables like ${paths.train} with their values. Defaults to False. bool
RETURNS The pipeline's config. Config

util.load_meta

Get a pipeline's meta.json from a file path and validate its contents. The meta typically includes details about author, licensing, data sources and version.

Example

meta = util.load_meta("/path/to/meta.json")
Name Description
path Path to the pipeline's meta.json. Union[str, Path]
RETURNS The pipeline's meta data. Dict[str, Any]

util.get_installed_models

List all pipeline packages installed in the current environment. This will include any spaCy pipeline that was packaged with spacy package. Under the hood, pipeline packages expose a Python entry point that spaCy can check, without having to load the nlp object.

Example

names = util.get_installed_models()
Name Description
RETURNS The string names of the pipelines installed in the current environment. List[str]

util.is_package

Check if string maps to a package installed via pip. Mainly used to validate pipeline packages.

Example

util.is_package("en_core_web_sm") # True
util.is_package("xyz") # False
Name Description
name Name of package. str
RETURNS True if installed package, False if not. bool

util.get_package_path

Get path to an installed package. Mainly used to resolve the location of pipeline packages. Currently imports the package to find its path.

Example

util.get_package_path("en_core_web_sm")
# /usr/lib/python3.6/site-packages/en_core_web_sm
Name Description
package_name Name of installed package. str
RETURNS Path to pipeline package directory. Path

util.is_in_jupyter

Check if user is running spaCy from a Jupyter notebook by detecting the IPython kernel. Mainly used for the displacy visualizer.

Example

html = "<h1>Hello world!</h1>"
if util.is_in_jupyter():
    from IPython.core.display import display, HTML
    display(HTML(html))
Name Description
RETURNS True if in Jupyter, False if not. bool

util.compile_prefix_regex

Compile a sequence of prefix rules into a regex object.

Example

prefixes = ("§", "%", "=", r"\+")
prefix_regex = util.compile_prefix_regex(prefixes)
nlp.tokenizer.prefix_search = prefix_regex.search
Name Description
entries The prefix rules, e.g. lang.punctuation.TOKENIZER_PREFIXES. Iterable[Union[str, Pattern]]
RETURNS The regex object to be used for Tokenizer.prefix_search. Pattern

util.compile_suffix_regex

Compile a sequence of suffix rules into a regex object.

Example

suffixes = ("'s", "'S", r"(?<=[0-9])\+")
suffix_regex = util.compile_suffix_regex(suffixes)
nlp.tokenizer.suffix_search = suffix_regex.search
Name Description
entries The suffix rules, e.g. lang.punctuation.TOKENIZER_SUFFIXES. Iterable[Union[str, Pattern]]
RETURNS The regex object to be used for Tokenizer.suffix_search. Pattern

util.compile_infix_regex

Compile a sequence of infix rules into a regex object.

Example

infixes = ("…", "-", "—", r"(?<=[0-9])[+\-\*^](?=[0-9-])")
infix_regex = util.compile_infix_regex(infixes)
nlp.tokenizer.infix_finditer = infix_regex.finditer
Name Description
entries The infix rules, e.g. lang.punctuation.TOKENIZER_INFIXES. Iterable[Union[str, Pattern]]
RETURNS The regex object to be used for Tokenizer.infix_finditer. Pattern

util.minibatch

Iterate over batches of items. size may be an iterator, so that batch-size can vary on each step.

Example

batches = minibatch(train_data)
for batch in batches:
    nlp.update(batch)
Name Description
items The items to batch up. Iterable[Any]
size int / iterable
YIELDS The batches.

util.filter_spans

Filter a sequence of Span objects and remove duplicates or overlaps. Useful for creating named entities (where one token can only be part of one entity) or when merging spans with Retokenizer.merge. When spans overlap, the (first) longest span is preferred over shorter spans.

Example

doc = nlp("This is a sentence.")
spans = [doc[0:2], doc[0:2], doc[0:4]]
filtered = filter_spans(spans)
Name Description
spans The spans to filter. Iterable[Span]
RETURNS The filtered spans. List[Span]

util.get_words_and_spaces

Given a list of words and a text, reconstruct the original tokens and return a list of words and spaces that can be used to create a Doc. This can help recover destructive tokenization that didn't preserve any whitespace information.

Example

orig_words = ["Hey", ",", "what", "'s", "up", "?"]
orig_text = "Hey, what's up?"
words, spaces = get_words_and_spaces(orig_words, orig_text)
# ['Hey', ',', 'what', "'s", 'up', '?']
# [False, True, False, True, False, False]
Name Description
words The list of words. Iterable[str]
text The original text. str
RETURNS A list of words and a list of boolean values indicating whether the word at this position is followed by a space. Tuple[List[str], List[bool]]