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			346 lines
		
	
	
		
			13 KiB
		
	
	
	
		
			Markdown
		
	
	
	
	
	
| ---
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| title: What's New in v2.3
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| teaser: New features, backwards incompatibilities and migration guide
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| menu:
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|   - ['New Features', 'features']
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|   - ['Backwards Incompatibilities', 'incompat']
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|   - ['Migrating from v2.2', 'migrating']
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| ---
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| 
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| ## New Features {#features hidden="true"}
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| 
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| spaCy v2.3 features new pretrained models for five languages, word vectors for
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| all language models, and decreased model size and loading times for models with
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| vectors. We've added pretrained models for **Chinese, Danish, Japanese, Polish
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| and Romanian** and updated the training data and vectors for most languages.
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| Model packages with vectors are about **2×** smaller on disk and load
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| **2-4×** faster. For the full changelog, see the
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| [release notes on GitHub](https://github.com/explosion/spaCy/releases/tag/v2.3.0).
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| For more details and a behind-the-scenes look at the new release,
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| [see our blog post](https://explosion.ai/blog/spacy-v2-3).
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| 
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| ### Expanded model families with vectors {#models}
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| 
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| > #### Example
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| >
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| > ```bash
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| > python -m spacy download da_core_news_sm
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| > python -m spacy download ja_core_news_sm
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| > python -m spacy download pl_core_news_sm
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| > python -m spacy download ro_core_news_sm
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| > python -m spacy download zh_core_web_sm
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| > ```
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| 
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| With new model families for Chinese, Danish, Polish, Romanian and Chinese plus
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| `md` and `lg` models with word vectors for all languages, this release provides
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| a total of 46 model packages. For models trained using
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| [Universal Dependencies](https://universaldependencies.org) corpora, the
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| training data has been updated to UD v2.5 (v2.6 for Japanese, v2.3 for Polish)
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| and Dutch has been extended to include both UD Dutch Alpino and LassySmall.
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| 
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| <Infobox>
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| 
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| **Models:** [Models directory](/models) **Benchmarks: **
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| [Release notes](https://github.com/explosion/spaCy/releases/tag/v2.3.0)
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| 
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| </Infobox>
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| 
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| ### Chinese {#chinese}
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| 
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| > #### Example
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| >
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| > ```python
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| > from spacy.lang.zh import Chinese
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| >
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| > # Load with "default" model provided by pkuseg
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| > cfg = {"pkuseg_model": "default", "require_pkuseg": True}
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| > nlp = Chinese(meta={"tokenizer": {"config": cfg}})
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| >
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| > # Append words to user dict
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| > nlp.tokenizer.pkuseg_update_user_dict(["中国", "ABC"])
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| > ```
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| 
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| This release adds support for
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| [`pkuseg`](https://github.com/lancopku/pkuseg-python) for word segmentation and
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| the new Chinese models ship with a custom pkuseg model trained on OntoNotes. The
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| Chinese tokenizer can be initialized with both `pkuseg` and custom models and
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| the `pkuseg` user dictionary is easy to customize. Note that
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| [`pkuseg`](https://github.com/lancopku/pkuseg-python) doesn't yet ship with
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| pre-compiled wheels for Python 3.8. See the
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| [usage documentation](/usage/models#chinese) for details on how to install it on
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| Python 3.8.
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| 
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| <Infobox>
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| 
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| **Models:** [Chinese models](/models/zh) **Usage: **
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| [Chinese tokenizer usage](/usage/models#chinese)
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| 
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| </Infobox>
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| 
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| ### Japanese {#japanese}
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| 
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| The updated Japanese language class switches to
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| [`SudachiPy`](https://github.com/WorksApplications/SudachiPy) for word
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| segmentation and part-of-speech tagging. Using `SudachiPy` greatly simplifies
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| installing spaCy for Japanese, which is now possible with a single command:
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| `pip install spacy[ja]`.
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| 
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| <Infobox>
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| 
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| **Models:** [Japanese models](/models/ja) **Usage:**
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| [Japanese tokenizer usage](/usage/models#japanese)
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| 
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| </Infobox>
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| 
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| ### Small CLI updates
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| 
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| - [`spacy debug-data`](/api/cli#debug-data) provides the coverage of the vectors
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|   in a base model with `spacy debug-data lang train dev -b base_model`
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| - [`spacy evaluate`](/api/cli#evaluate) supports `blank:lg` (e.g.
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|   `spacy evaluate blank:en dev.json`) to evaluate the tokenization accuracy
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|   without loading a model
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| - [`spacy train`](/api/cli#train) on GPU restricts the CPU timing evaluation to
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|   the first iteration
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| 
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| ## Backwards incompatibilities {#incompat}
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| 
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| <Infobox title="Important note on models" variant="warning">
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| 
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| If you've been training **your own models**, you'll need to **retrain** them
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| with the new version. Also don't forget to upgrade all models to the latest
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| versions. Models for earlier v2 releases (v2.0, v2.1, v2.2) aren't compatible
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| with models for v2.3. To check if all of your models are up to date, you can run
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| the [`spacy validate`](/api/cli#validate) command.
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| 
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| </Infobox>
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| 
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| > #### Install with lookups data
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| >
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| > ```bash
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| > $ pip install spacy[lookups]
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| > ```
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| >
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| > You can also install
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| > [`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data)
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| > directly.
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| 
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| - If you're training new models, you'll want to install the package
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|   [`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data), which
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|   now includes both the lemmatization tables (as in v2.2) and the normalization
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|   tables (new in v2.3). If you're using pretrained models, **nothing changes**,
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|   because the relevant tables are included in the model packages.
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| - Due to the updated Universal Dependencies training data, the fine-grained
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|   part-of-speech tags will change for many provided language models. The
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|   coarse-grained part-of-speech tagset remains the same, but the mapping from
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|   particular fine-grained to coarse-grained tags may show minor differences.
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| - For French, Italian, Portuguese and Spanish, the fine-grained part-of-speech
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|   tagsets contain new merged tags related to contracted forms, such as `ADP_DET`
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|   for French `"au"`, which maps to UPOS `ADP` based on the head `"à"`. This
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|   increases the accuracy of the models by improving the alignment between
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|   spaCy's tokenization and Universal Dependencies multi-word tokens used for
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|   contractions.
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| 
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| ### Migrating from spaCy 2.2 {#migrating}
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| 
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| #### Tokenizer settings
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| 
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| In spaCy v2.2.2-v2.2.4, there was a change to the precedence of `token_match`
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| that gave prefixes and suffixes priority over `token_match`, which caused
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| problems for many custom tokenizer configurations. This has been reverted in
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| v2.3 so that `token_match` has priority over prefixes and suffixes as in v2.2.1
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| and earlier versions.
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| 
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| A new tokenizer setting `url_match` has been introduced in v2.3.0 to handle
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| cases like URLs where the tokenizer should remove prefixes and suffixes (e.g., a
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| comma at the end of a URL) before applying the match. See the full
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| [tokenizer documentation](/usage/linguistic-features#tokenization) and try out
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| [`nlp.tokenizer.explain()`](/usage/linguistic-features#tokenizer-debug) when
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| debugging your tokenizer configuration.
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| 
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| #### Warnings configuration
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| 
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| spaCy's custom warnings have been replaced with native Python
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| [`warnings`](https://docs.python.org/3/library/warnings.html). Instead of
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| setting `SPACY_WARNING_IGNORE`, use the [`warnings`
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| filters](https://docs.python.org/3/library/warnings.html#the-warnings-filter)
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| to manage warnings.
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| 
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| ```diff
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| import spacy
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| + import warnings
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| 
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| - spacy.errors.SPACY_WARNING_IGNORE.append('W007')
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| + warnings.filterwarnings("ignore", message=r"\\[W007\\]", category=UserWarning)
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| ```
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| 
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| #### Normalization tables
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| 
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| The normalization tables have moved from the language data in
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| [`spacy/lang`](https://github.com/explosion/spaCy/tree/master/spacy/lang) to the
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| package [`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data).
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| If you're adding data for a new language, the normalization table should be
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| added to `spacy-lookups-data`. See
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| [adding norm exceptions](/usage/adding-languages#norm-exceptions).
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| 
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| #### No preloaded vocab for models with vectors
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| 
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| To reduce the initial loading time, the lexemes in `nlp.vocab` are no longer
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| loaded on initialization for models with vectors. As you process texts, the
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| lexemes will be added to the vocab automatically, just as in small models
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| without vectors.
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| 
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| To see the number of unique vectors and number of words with vectors, see
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| `nlp.meta['vectors']`, for example for `en_core_web_md` there are `20000`
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| unique vectors and `684830` words with vectors:
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| 
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| ```python
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| {
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|     'width': 300,
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|     'vectors': 20000,
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|     'keys': 684830,
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|     'name': 'en_core_web_md.vectors'
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| }
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| ```
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| 
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| If required, for instance if you are working directly with word vectors rather
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| than processing texts, you can load all lexemes for words with vectors at once:
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| 
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| ```python
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| for orth in nlp.vocab.vectors:
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|     _ = nlp.vocab[orth]
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| ```
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| 
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| If your workflow previously iterated over `nlp.vocab`, a similar alternative
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| is to iterate over words with vectors instead:
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| 
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| ```diff
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| - lexemes = [w for w in nlp.vocab]
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| + lexemes = [nlp.vocab[orth] for orth in nlp.vocab.vectors]
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| ```
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| 
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| Be aware that the set of preloaded lexemes in a v2.2 model is not equivalent to
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| the set of words with vectors. For English, v2.2 `md/lg` models have 1.3M
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| provided lexemes but only 685K words with vectors. The vectors have been
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| updated for most languages in v2.2, but the English models contain the same
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| vectors for both v2.2 and v2.3.
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| 
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| #### Lexeme.is_oov and Token.is_oov
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| 
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| <Infobox title="Important note" variant="warning">
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| 
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| Due to a bug, the values for `is_oov` are reversed in v2.3.0, but this will be
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| fixed in the next patch release v2.3.1.
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| 
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| </Infobox>
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| 
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| In v2.3, `Lexeme.is_oov` and `Token.is_oov` are `True` if the lexeme does not
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| have a word vector. This is equivalent to `token.orth not in
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| nlp.vocab.vectors`.
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| 
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| Previously in v2.2, `is_oov` corresponded to whether a lexeme had stored
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| probability and cluster features. The probability and cluster features are no
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| longer included in the provided medium and large models (see the next section).
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| 
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| #### Probability and cluster features
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| 
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| > #### Load and save extra prob lookups table
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| >
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| > ```python
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| > from spacy.lang.en import English
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| > nlp = English()
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| > doc = nlp("the")
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| > print(doc[0].prob) # lazily loads extra prob table
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| > nlp.to_disk("/path/to/model") # includes prob table
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| > ```
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| 
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| The `Token.prob` and `Token.cluster` features, which are no longer used by the
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| core pipeline components as of spaCy v2, are no longer provided in the
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| pretrained models to reduce the model size. To keep these features available for
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| users relying on them, the `prob` and `cluster` features for the most frequent
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| 1M tokens have been moved to
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| [`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data) as
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| `extra` features for the relevant languages (English, German, Greek and
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| Spanish).
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| 
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| The extra tables are loaded lazily, so if you have `spacy-lookups-data`
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| installed and your code accesses `Token.prob`, the full table is loaded into the
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| model vocab, which will take a few seconds on initial loading. When you save
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| this model after loading the `prob` table, the full `prob` table will be saved
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| as part of the model vocab.
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| 
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| To load the probability table into a provided model, first make sure you have
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| `spacy-lookups-data` installed. To load the table, remove the empty provided
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| `lexeme_prob` table and then access `Lexeme.prob` for any word to load the
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| table from `spacy-lookups-data`:
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| 
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| ```diff
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| + # prerequisite: pip install spacy-lookups-data
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| import spacy
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| 
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| nlp = spacy.load("en_core_web_md")
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| 
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| # remove the empty placeholder prob table
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| + if nlp.vocab.lookups_extra.has_table("lexeme_prob"):
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| +     nlp.vocab.lookups_extra.remove_table("lexeme_prob")
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| 
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| # access any `.prob` to load the full table into the model
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| assert nlp.vocab["a"].prob == -3.9297883511
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| 
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| # if desired, save this model with the probability table included
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| nlp.to_disk("/path/to/model")
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| ```
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| 
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| If you'd like to include custom `cluster`, `prob`, or `sentiment` tables as part
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| of a new model, add the data to
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| [`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data) under
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| the entry point `lg_extra`, e.g. `en_extra` for English. Alternatively, you can
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| initialize your [`Vocab`](/api/vocab) with the `lookups_extra` argument with a
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| [`Lookups`](/api/lookups) object that includes the tables `lexeme_cluster`,
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| `lexeme_prob`, `lexeme_sentiment` or `lexeme_settings`. `lexeme_settings` is
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| currently only used to provide a custom `oov_prob`. See examples in the
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| [`data` directory](https://github.com/explosion/spacy-lookups-data/tree/master/spacy_lookups_data/data)
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| in `spacy-lookups-data`.
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| 
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| #### Initializing new models without extra lookups tables
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| 
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| When you initialize a new model with [`spacy init-model`](/api/cli#init-model),
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| the `prob` table from `spacy-lookups-data` may be loaded as part of the
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| initialization. If you'd like to omit this extra data as in spaCy's provided
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| v2.3 models, use the new flag `--omit-extra-lookups`.
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| 
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| #### Tag maps in provided models vs. blank models
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| 
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| The tag maps in the provided models may differ from the tag maps in the spaCy
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| library. You can access the tag map in a loaded model under
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| `nlp.vocab.morphology.tag_map`.
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| 
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| The tag map from `spacy.lang.lg.tag_map` is still used when a blank model is
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| initialized. If you want to provide an alternate tag map, update
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| `nlp.vocab.morphology.tag_map` after initializing the model or if you're using
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| the [train CLI](/api/cli#train), you can use the new `--tag-map-path` option to
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| provide in the tag map as a JSON dict.
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| 
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| If you want to export a tag map from a provided model for use with the train
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| CLI, you can save it as a JSON dict. To only use string keys as required by
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| JSON and to make it easier to read and edit, any internal integer IDs need to
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| be converted back to strings:
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| 
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| ```python
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| import spacy
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| import srsly
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| 
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| nlp = spacy.load("en_core_web_sm")
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| tag_map = {}
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| 
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| # convert any integer IDs to strings for JSON
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| for tag, morph in nlp.vocab.morphology.tag_map.items():
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|     tag_map[tag] = {}
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|     for feat, val in morph.items():
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|         feat = nlp.vocab.strings.as_string(feat)
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|         if not isinstance(val, bool):
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|             val = nlp.vocab.strings.as_string(val)
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|         tag_map[tag][feat] = val
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| 
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| srsly.write_json("tag_map.json", tag_map)
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| ```
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