mirror of https://github.com/explosion/spaCy.git
272 lines
10 KiB
Plaintext
272 lines
10 KiB
Plaintext
---
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title: Trained Models & Pipelines
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teaser: Downloadable trained pipelines and weights for spaCy
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menu:
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- ['Quickstart', 'quickstart']
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- ['Conventions', 'conventions']
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- ['Pipeline Design', 'design']
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---
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{/* TODO: include interactive demo */}
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### Quickstart {hidden="true"}
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> #### 📖 Installation and usage
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>
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> For more details on how to use trained pipelines with spaCy, see the
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> [usage guide](/usage/models).
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<QuickstartModels id="quickstart" />
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## Package naming conventions {id="conventions"}
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In general, spaCy expects all pipeline packages to follow the naming convention
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of `[lang]_[name]`. For spaCy's pipelines, we also chose to divide the name into
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three components:
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1. **Type:** Capabilities (e.g. `core` for general-purpose pipeline with
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tagging, parsing, lemmatization and named entity recognition, or `dep` for
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only tagging, parsing and lemmatization).
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2. **Genre:** Type of text the pipeline is trained on, e.g. `web` or `news`.
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3. **Size:** Package size indicator, `sm`, `md`, `lg` or `trf`.
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`sm` and `trf` pipelines have no static word vectors.
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For pipelines with default vectors, `md` has a reduced word vector table with
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20k unique vectors for ~500k words and `lg` has a large word vector table
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with ~500k entries.
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For pipelines with floret vectors, `md` vector tables have 50k entries and
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`lg` vector tables have 200k entries.
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For example, [`en_core_web_sm`](/models/en#en_core_web_sm) is a small English
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pipeline trained on written web text (blogs, news, comments), that includes
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vocabulary, syntax and entities.
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### Package versioning {id="model-versioning"}
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Additionally, the pipeline package versioning reflects both the compatibility
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with spaCy, as well as the model version. A package version `a.b.c` translates
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to:
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- `a`: **spaCy major version**. For example, `2` for spaCy v2.x.
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- `b`: **spaCy minor version**. For example, `3` for spaCy v2.3.x.
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- `c`: **Model version**. Different model config: e.g. from being trained on
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different data, with different parameters, for different numbers of
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iterations, with different vectors, etc.
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For a detailed compatibility overview, see the
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[`compatibility.json`](https://github.com/explosion/spacy-models/tree/master/compatibility.json).
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This is also the source of spaCy's internal compatibility check, performed when
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you run the [`download`](/api/cli#download) command.
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## Trained pipeline design {id="design"}
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The spaCy v3 trained pipelines are designed to be efficient and configurable.
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For example, multiple components can share a common "token-to-vector" model and
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it's easy to swap out or disable the lemmatizer. The pipelines are designed to
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be efficient in terms of speed and size and work well when the pipeline is run
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in full.
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When modifying a trained pipeline, it's important to understand how the
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components **depend on** each other. Unlike spaCy v2, where the `tagger`,
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`parser` and `ner` components were all independent, some v3 components depend on
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earlier components in the pipeline. As a result, disabling or reordering
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components can affect the annotation quality or lead to warnings and errors.
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Main changes from spaCy v2 models:
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- The [`Tok2Vec`](/api/tok2vec) component may be a separate, shared component. A
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component like a tagger or parser can
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[listen](/api/architectures#Tok2VecListener) to an earlier `tok2vec` or
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`transformer` rather than having its own separate tok2vec layer.
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- Rule-based exceptions move from individual components to the
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`attribute_ruler`. Lemma and POS exceptions move from the tokenizer exceptions
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to the attribute ruler and the tag map and morph rules move from the tagger to
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the attribute ruler.
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- The lemmatizer tables and processing move from the vocab and tagger to a
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separate `lemmatizer` component.
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### CNN/CPU pipeline design {id="design-cnn"}
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![Components and their dependencies in the CNN pipelines](/images/pipeline-design.svg)
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In the `sm`/`md`/`lg` models:
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- The `tagger`, `morphologizer` and `parser` components listen to the `tok2vec`
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component. If the lemmatizer is trainable (v3.3+), `lemmatizer` also listens
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to `tok2vec`.
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- The `attribute_ruler` maps `token.tag` to `token.pos` if there is no
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`morphologizer`. The `attribute_ruler` additionally makes sure whitespace is
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tagged consistently and copies `token.pos` to `token.tag` if there is no
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tagger. For English, the attribute ruler can improve its mapping from
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`token.tag` to `token.pos` if dependency parses from a `parser` are present,
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but the parser is not required.
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- The `lemmatizer` component for many languages requires `token.pos` annotation
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from either `tagger`+`attribute_ruler` or `morphologizer`.
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- The `ner` component is independent with its own internal tok2vec layer.
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#### CNN/CPU pipelines with floret vectors
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The Croatian, Finnish, Korean, Slovenian, Swedish and Ukrainian `md` and `lg`
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pipelines use [floret vectors](/usage/v3-2#vectors) instead of default vectors.
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If you're running a trained pipeline on texts and working with [`Doc`](/api/doc)
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objects, you shouldn't notice any difference with floret vectors. With floret
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vectors no tokens are out-of-vocabulary, so
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[`Token.is_oov`](/api/token#attributes) will return `False` for all tokens.
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If you access vectors directly for similarity comparisons, there are a few
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differences because floret vectors don't include a fixed word list like the
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vector keys for default vectors.
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- If your workflow iterates over the vector keys, you need to use an external
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word list instead:
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```diff
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- lexemes = [nlp.vocab[orth] for orth in nlp.vocab.vectors]
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+ lexemes = [nlp.vocab[word] for word in external_word_list]
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```
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- [`Vectors.most_similar`](/api/vectors#most_similar) is not supported because
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there's no fixed list of vectors to compare your vectors to.
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### Transformer pipeline design {id="design-trf"}
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In the transformer (`trf`) pipelines, the `tagger`, `parser` and `ner` (if
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present) all listen to the `transformer` component. The `attribute_ruler` and
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`lemmatizer` have the same configuration as in the CNN models.
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For spaCy v3.0-v3.6, `trf` pipelines use
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[`spacy-transformers`](https://github.com/explosion/spacy-transformers) and the
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transformer output in `doc._.trf_data` is a
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[`TransformerData`](/api/transformer#transformerdata) object.
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For spaCy v3.7+, `trf` pipelines use
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[`spacy-curated-transformers`](https://github.com/explosion/spacy-curated-transformers)
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and `doc._.trf_data` is a
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[`DocTransformerOutput`](/api/curatedtransformer#doctransformeroutput) object.
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### Modifying the default pipeline {id="design-modify"}
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For faster processing, you may only want to run a subset of the components in a
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trained pipeline. The `disable` and `exclude` arguments to
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[`spacy.load`](/api/top-level#spacy.load) let you control which components are
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loaded and run. Disabled components are loaded in the background so it's
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possible to reenable them in the same pipeline in the future with
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[`nlp.enable_pipe`](/api/language/#enable_pipe). To skip loading a component
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completely, use `exclude` instead of `disable`.
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#### Disable part-of-speech tagging and lemmatization
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To disable part-of-speech tagging and lemmatization, disable the `tagger`,
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`morphologizer`, `attribute_ruler` and `lemmatizer` components.
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```python
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# Note: English doesn't include a morphologizer
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nlp = spacy.load("en_core_web_sm", disable=["tagger", "attribute_ruler", "lemmatizer"])
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nlp = spacy.load("en_core_web_trf", disable=["tagger", "attribute_ruler", "lemmatizer"])
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```
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<Infobox variant="warning" title="Rule-based and POS-lookup lemmatizers require
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Token.pos">
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The lemmatizer depends on `tagger`+`attribute_ruler` or `morphologizer` for a
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number of languages. If you disable any of these components, you'll see
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lemmatizer warnings unless the lemmatizer is also disabled.
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**v3.3**: Catalan, English, French, Russian and Spanish
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**v3.0-v3.2**: Catalan, Dutch, English, French, Greek, Italian, Macedonian,
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Norwegian, Polish, Russian and Spanish
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</Infobox>
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#### Use senter rather than parser for fast sentence segmentation
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If you need fast sentence segmentation without dependency parses, disable the
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`parser` use the `senter` component instead:
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```python
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nlp = spacy.load("en_core_web_sm")
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nlp.disable_pipe("parser")
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nlp.enable_pipe("senter")
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```
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The `senter` component is ~10× faster than the parser and more accurate
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than the rule-based `sentencizer`.
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#### Switch from trainable lemmatizer to default lemmatizer
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Since v3.3, a number of pipelines use a trainable lemmatizer. You can check
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whether the lemmatizer is trainable:
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```python
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nlp = spacy.load("de_core_web_sm")
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assert nlp.get_pipe("lemmatizer").is_trainable
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```
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If you'd like to switch to a non-trainable lemmatizer that's similar to v3.2 or
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earlier, you can replace the trainable lemmatizer with the default non-trainable
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lemmatizer:
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```python
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# Requirements: pip install spacy-lookups-data
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nlp = spacy.load("de_core_web_sm")
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# Remove existing lemmatizer
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nlp.remove_pipe("lemmatizer")
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# Add non-trainable lemmatizer from language defaults
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# and load lemmatizer tables from spacy-lookups-data
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nlp.add_pipe("lemmatizer").initialize()
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```
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#### Switch from rule-based to lookup lemmatization
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For the Dutch, English, French, Greek, Macedonian, Norwegian and Spanish
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pipelines, you can swap out a trainable or rule-based lemmatizer for a lookup
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lemmatizer:
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```python
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# Requirements: pip install spacy-lookups-data
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nlp = spacy.load("en_core_web_sm")
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nlp.remove_pipe("lemmatizer")
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nlp.add_pipe("lemmatizer", config={"mode": "lookup"}).initialize()
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```
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#### Disable everything except NER
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For the non-transformer models, the `ner` component is independent, so you can
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disable everything else:
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```python
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nlp = spacy.load("en_core_web_sm", disable=["tok2vec", "tagger", "parser", "attribute_ruler", "lemmatizer"])
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```
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In the transformer models, `ner` listens to the `transformer` component, so you
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can disable all components related tagging, parsing, and lemmatization.
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```python
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nlp = spacy.load("en_core_web_trf", disable=["tagger", "parser", "attribute_ruler", "lemmatizer"])
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```
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#### Move NER to the end of the pipeline
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<Infobox title="For v3.0.x models only" variant="warning">
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As of v3.1, the NER component is at the end of the pipeline by default.
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</Infobox>
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For access to `POS` and `LEMMA` features in an `entity_ruler`, move `ner` to the
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end of the pipeline after `attribute_ruler` and `lemmatizer`:
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```python
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# load without NER
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nlp = spacy.load("en_core_web_sm", exclude=["ner"])
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# source NER from the same pipeline package as the last component
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nlp.add_pipe("ner", source=spacy.load("en_core_web_sm"))
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# insert the entity ruler
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nlp.add_pipe("entity_ruler", before="ner")
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```
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