spaCy/website/docs/api/pipeline-functions.md
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Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>

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Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>
Co-authored-by: svlandeg <svlandeg@github.com>
2022-09-27 18:11:23 +09:00

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---
title: Pipeline Functions
teaser: Other built-in pipeline components and helpers
source: spacy/pipeline/functions.py
menu:
- ['merge_noun_chunks', 'merge_noun_chunks']
- ['merge_entities', 'merge_entities']
- ['merge_subtokens', 'merge_subtokens']
- ['token_splitter', 'token_splitter']
- ['doc_cleaner', 'doc_cleaner']
---
## merge_noun_chunks {#merge_noun_chunks tag="function"}
Merge noun chunks into a single token. Also available via the string name
`"merge_noun_chunks"`.
> #### Example
>
> ```python
> texts = [t.text for t in nlp("I have a blue car")]
> assert texts == ["I", "have", "a", "blue", "car"]
>
> nlp.add_pipe("merge_noun_chunks")
> texts = [t.text for t in nlp("I have a blue car")]
> assert texts == ["I", "have", "a blue car"]
> ```
<Infobox variant="warning">
Since noun chunks require part-of-speech tags and the dependency parse, make
sure to add this component _after_ the `"tagger"` and `"parser"` components. By
default, `nlp.add_pipe` will add components to the end of the pipeline and after
all other components.
</Infobox>
| Name | Description |
| ----------- | -------------------------------------------------------------------- |
| `doc` | The `Doc` object to process, e.g. the `Doc` in the pipeline. ~~Doc~~ |
| **RETURNS** | The modified `Doc` with merged noun chunks. ~~Doc~~ |
## merge_entities {#merge_entities tag="function"}
Merge named entities into a single token. Also available via the string name
`"merge_entities"`.
> #### Example
>
> ```python
> texts = [t.text for t in nlp("I like David Bowie")]
> assert texts == ["I", "like", "David", "Bowie"]
>
> nlp.add_pipe("merge_entities")
>
> texts = [t.text for t in nlp("I like David Bowie")]
> assert texts == ["I", "like", "David Bowie"]
> ```
<Infobox variant="warning">
Since named entities are set by the entity recognizer, make sure to add this
component _after_ the `"ner"` component. By default, `nlp.add_pipe` will add
components to the end of the pipeline and after all other components.
</Infobox>
| Name | Description |
| ----------- | -------------------------------------------------------------------- |
| `doc` | The `Doc` object to process, e.g. the `Doc` in the pipeline. ~~Doc~~ |
| **RETURNS** | The modified `Doc` with merged entities. ~~Doc~~ |
## merge_subtokens {#merge_subtokens tag="function" new="2.1"}
Merge subtokens into a single token. Also available via the string name
`"merge_subtokens"`. As of v2.1, the parser is able to predict "subtokens" that
should be merged into one single token later on. This is especially relevant for
languages like Chinese, Japanese or Korean, where a "word" isn't defined as a
whitespace-delimited sequence of characters. Under the hood, this component uses
the [`Matcher`](/api/matcher) to find sequences of tokens with the dependency
label `"subtok"` and then merges them into a single token.
> #### Example
>
> Note that this example assumes a custom Chinese model that oversegments and
> was trained to predict subtokens.
>
> ```python
> doc = nlp("拜托")
> print([(token.text, token.dep_) for token in doc])
> # [('拜', 'subtok'), ('托', 'subtok')]
>
> nlp.add_pipe("merge_subtokens")
> doc = nlp("拜托")
> print([token.text for token in doc])
> # ['拜托']
> ```
<Infobox variant="warning">
Since subtokens are set by the parser, make sure to add this component _after_
the `"parser"` component. By default, `nlp.add_pipe` will add components to the
end of the pipeline and after all other components.
</Infobox>
| Name | Description |
| ----------- | -------------------------------------------------------------------- |
| `doc` | The `Doc` object to process, e.g. the `Doc` in the pipeline. ~~Doc~~ |
| `label` | The subtoken dependency label. Defaults to `"subtok"`. ~~str~~ |
| **RETURNS** | The modified `Doc` with merged subtokens. ~~Doc~~ |
## token_splitter {#token_splitter tag="function" new="3.0"}
Split tokens longer than a minimum length into shorter tokens. Intended for use
with transformer pipelines where long spaCy tokens lead to input text that
exceed the transformer model max length.
> #### Example
>
> ```python
> config = {"min_length": 20, "split_length": 5}
> nlp.add_pipe("token_splitter", config=config, first=True)
> doc = nlp("aaaaabbbbbcccccdddddee")
> print([token.text for token in doc])
> # ['aaaaa', 'bbbbb', 'ccccc', 'ddddd', 'ee']
> ```
| Setting | Description |
| -------------- | --------------------------------------------------------------------- |
| `min_length` | The minimum length for a token to be split. Defaults to `25`. ~~int~~ |
| `split_length` | The length of the split tokens. Defaults to `5`. ~~int~~ |
| **RETURNS** | The modified `Doc` with the split tokens. ~~Doc~~ |
## doc_cleaner {#doc_cleaner tag="function" new="3.2.1"}
Clean up `Doc` attributes. Intended for use at the end of pipelines with
`tok2vec` or `transformer` pipeline components that store tensors and other
values that can require a lot of memory and frequently aren't needed after the
whole pipeline has run.
> #### Example
>
> ```python
> config = {"attrs": {"tensor": None}}
> nlp.add_pipe("doc_cleaner", config=config)
> doc = nlp("text")
> assert doc.tensor is None
> ```
| Setting | Description |
| ----------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
| `attrs` | A dict of the `Doc` attributes and the values to set them to. Defaults to `{"tensor": None, "_.trf_data": None}` to clean up after `tok2vec` and `transformer` components. ~~dict~~ |
| `silent` | If `False`, show warnings if attributes aren't found or can't be set. Defaults to `True`. ~~bool~~ |
| **RETURNS** | The modified `Doc` with the modified attributes. ~~Doc~~ |
## span_cleaner {#span_cleaner tag="function,experimental"}
Remove `SpanGroup`s from `doc.spans` based on a key prefix. This is used to
clean up after the [`CoreferenceResolver`](/api/coref) when it's paired with a
[`SpanResolver`](/api/span-resolver).
<Infobox title="Important note" variant="warning">
This pipeline function is not yet integrated into spaCy core, and is available
via the extension package
[`spacy-experimental`](https://github.com/explosion/spacy-experimental) starting
in version 0.6.0. It exposes the component via
[entry points](/usage/saving-loading/#entry-points), so if you have the package
installed, using `factory = "span_cleaner"` in your
[training config](/usage/training#config) or `nlp.add_pipe("span_cleaner")` will
work out-of-the-box.
</Infobox>
> #### Example
>
> ```python
> config = {"prefix": "coref_head_clusters"}
> nlp.add_pipe("span_cleaner", config=config)
> doc = nlp("text")
> assert "coref_head_clusters_1" not in doc.spans
> ```
| Setting | Description |
| ----------- | ------------------------------------------------------------------------------------------------------------------------- |
| `prefix` | A prefix to check `SpanGroup` keys for. Any matching groups will be removed. Defaults to `"coref_head_clusters"`. ~~str~~ |
| **RETURNS** | The modified `Doc` with any matching spans removed. ~~Doc~~ |