2017-03-16 20:53:31 +00:00
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//- 💫 DOCS > USAGE > MODELS
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include ../../_includes/_mixins
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p
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| As of v1.7.0, models for spaCy can be installed as #[strong Python packages].
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| This means that they're a component of your application, just like any
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| other module. They're versioned and can be defined as a dependency in your
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| #[code requirements.txt]. Models can be installed from a download URL or
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| a local directory, manually or via #[+a("https://pypi.python.org/pypi/pip") pip].
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| Their data can be located anywhere on your file system. To make a model
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| available to spaCy, all you need to do is create a "shortcut link", an
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| internal alias that tells spaCy where to find the data files for a specific
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| model name.
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2017-03-17 18:26:37 +00:00
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+infobox("Important note")
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2017-03-20 17:01:51 +00:00
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| Due to improvements in the English lemmatizer in v1.7.0, you need to
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| #[strong download the new English models]. The German model is still
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| compatible. If you've trained statistical models that use spaCy's
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| annotations, you should #[strong retrain your models after updating spaCy].
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| If you don't retrain your models, you may suffer train/test skew, which
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| might decrease your accuracy.
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2017-03-17 18:26:37 +00:00
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2017-03-16 20:53:31 +00:00
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+aside-code("Quickstart").
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# Install spaCy and download English model
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pip install spacy
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python -m spacy download en
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2017-03-16 20:53:31 +00:00
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# Usage in Python
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import spacy
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nlp = spacy.load('en')
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doc = nlp(u'This is a sentence.')
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+h(2, "available") Available models
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+table(["Name", "Size", "Description"])
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2017-03-17 15:09:56 +00:00
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+row
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+cell #[code en_core_web_sm]
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+cell 50 MB
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+cell Vocab, syntax, entities, word vectors #[+tag default]
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2017-03-16 20:53:31 +00:00
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+row
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+cell #[code en_core_web_md]
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+cell 1 GB
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2017-03-16 20:53:31 +00:00
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+cell Vocab, syntax, entities, word vectors
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+row
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2017-03-17 15:09:56 +00:00
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+cell #[code en_depent_web_md]
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+cell 328 MB
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+cell Vocab, syntax, entities
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2017-03-16 20:53:31 +00:00
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+row
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+cell #[code en_vectors_glove_md]
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2017-03-17 15:09:56 +00:00
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+cell 727 MB
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2017-03-16 20:53:31 +00:00
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+cell
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| #[+a("http://nlp.stanford.edu/projects/glove/") GloVe] Common
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| Crawl vectors
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+row
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+cell #[code de_core_news_md]
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+cell 645 MB
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2017-03-16 20:53:31 +00:00
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+cell Vocab, syntax, entities, word vectors #[+tag default]
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p
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2017-03-16 21:09:43 +00:00
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| Models are now available as #[code .tar.gz] archives #[+a(gh("spacy-models")) from GitHub],
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2017-03-16 20:53:31 +00:00
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| attached to individual releases. They can be downloaded and loaded manually,
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| or using spaCy's #[code download] and #[code link] commands. All models
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| follow the naming convention of #[code [language]_[type]_[genre]_[size]].
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2017-03-16 21:09:43 +00:00
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+button(gh("spacy-models") + "/releases", true, "primary") View models
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2017-03-16 20:53:31 +00:00
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+h(2, "download") Downloading models
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+aside("Downloading models in spaCy < v1.7")
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| In older versions of spaCy, you can still use the old download commands.
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| This will download and install the models into the #[code spacy/data]
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| directory.
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+code.o-no-block.
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python -m spacy.en.download all
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python -m spacy.de.download all
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python -m spacy.en.download glove
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2017-03-17 16:01:16 +00:00
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| The old models are also #[+a(gh("spacy") + "/tree/v1.6.0") attached to the v1.6.0 release].
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| To download and install them manually, unpack the archive, drop the
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| contained directory into #[code spacy/data] and load the model via
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| #[code spacy.load('en')] or #[code spacy.load('de')].
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p
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| The easiest way to download a model is via spaCy's #[code download]
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| command. It takes care of finding the best-matching model compatible with
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| your spaCy installation.
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+code(false, "bash").
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# out-of-the-box: download best-matching default model
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python -m spacy download en
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python -m spacy download de
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2017-03-16 20:53:31 +00:00
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# download best-matching version of specific model for your spaCy installation
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python -m spacy download en_core_web_md
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# download exact model version (doesn't create shortcut link)
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python -m spacy download en_core_web_md-1.2.0 --direct
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2017-03-16 20:53:31 +00:00
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p
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| The download command will #[+a("#download-pip") install the model] via
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| pip, place the package in your #[code site-packages] directory and create
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| a #[+a("#usage") shortcut link] that lets you load the model by name. The
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| shortcut link will be the same as the model name used in
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| #[code spacy.download].
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+code(false, "bash").
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pip install spacy
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2017-03-18 14:24:42 +00:00
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python -m spacy download en
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2017-03-16 20:53:31 +00:00
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+code.
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import spacy
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nlp = spacy.load('en')
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doc = nlp(u'This is a sentence.')
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+h(3, "download-pip") Installation via pip
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p
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| To download a model directly using #[+a("https://pypi.python.org/pypi/pip") pip],
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| simply point #[code pip install] to the URL or local path of the archive
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| file. To find the direct link to a model, head over to the
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| #[+a(gh("spacy-models") + "/releases") model releases], right click on the archive
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2017-03-16 20:53:31 +00:00
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| link and copy it to your clipboard.
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+code(false, "bash").
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# with external URL
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pip install #{gh("spacy-models")}/releases/download/en_core_web_md-1.2.0/en_core_web_md-1.2.0.tar.gz
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2017-03-16 20:53:31 +00:00
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# with local file
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pip install /Users/you/en_core_web_md-1.2.0.tar.gz
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p
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| By default, this will install the model into your #[code site-packages]
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| directory. You can then create a #[+a("#usage") shortcut link] for your
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| model to load it via #[code spacy.load()], or #[+a("usage-import") import it]
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| as a Python module.
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+h(3, "download-manual") Manual download and installation
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p
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| In some cases, you might prefer downloading the data manually, for
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| example to place it into a custom directory. You can download the model
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2017-03-16 21:09:43 +00:00
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| via your browser from the #[+a(gh("spacy-models")) latest releases], or configure
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2017-03-16 20:53:31 +00:00
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| your own download script using the URL of the archive file. The archive
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| consists of a model directory that contains another directory with the
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| model data.
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+code("Directory structure", "yaml").
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└── en_core_web_md-1.2.0.tar.gz # downloaded archive
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├── meta.json # model meta data
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├── setup.py # setup file for pip installation
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└── en_core_web_md # model directory
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├── __init__.py # init for pip installation
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├── meta.json # model meta data
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└── en_core_web_md-1.2.0 # model data
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p
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| You can place the model data directory anywhere on your local file system.
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| To use it with spaCy, simply assign it a name by creating a
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| #[+a("#usage") shortcut link] for the data directory.
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2017-03-16 20:53:31 +00:00
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+h(2, "usage") Using models with spaCy
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p
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| While previous versions of spaCy required you to maintain a data directory
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| containing the models for each installation, you can now choose how and
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| where you want to keep your data files. To load the models conveniently
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| from within spaCy, you can use the #[code spacy.link] command to create a
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| symlink. This lets you set up custom shortcut links for models so you can
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| load them by name.
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+code(false, "bash").
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python -m spacy link [package name or path] [shortcut] [--force]
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| The first argument is the package name (if the model was installed via
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| pip), or a local path to the the data directory. The second argument is
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| the internal name you want to use for the model. Setting the #[code --force]
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| flag will overwrite any existing links.
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+code("Examples", "bash").
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2017-03-16 22:23:35 +00:00
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# set up shortcut link to load installed package as "en_default"
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python -m spacy link en_core_web_md en_default
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# set up shortcut link to load local model as "my_amazing_model"
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python -m spacy link /Users/you/model my_amazing_model
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2017-03-16 20:53:31 +00:00
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+h(3, "usage-loading") Loading models
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2017-03-17 18:26:37 +00:00
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p
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| To load a model, use #[code spacy.load()] with the model's shortcut link.
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+code.
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import spacy
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nlp = spacy.load('en_default')
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doc = nlp(u'This is a sentence.')
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p
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| You can also use the #[info] command or #[code info()] method to print a model's meta data
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| before loading it. Each #[code Language] object returned by #[code spacy.load()]
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| also exposes the model's meta data as the attribute #[code meta].
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+code(false, "bash").
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python -m spacy info en
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# model meta data
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+code.
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import spacy
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spacy.info('en_default')
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# model meta data
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nlp = spacy.load('en_default')
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print(nlp.meta['version'])
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# 1.2.0
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+h(3, "usage-import") Importing models as modules
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| If you've installed a model via pip, you can also #[code import] it
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| directly and then call its #[code load()] method with no arguments:
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+code.
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import spacy
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import en_core_web_md
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nlp = en_core_web_md.load()
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doc = nlp(u'This is a sentence.')
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+h(2, "own-models") Using your own models
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| If you've trained your own model, for example for
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| #[+a("/docs/usage/adding-languages") additional languages], you can
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| create a shortuct link for it by pointing #[code spacy.link] to the
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| model's data directory. To allow your model to be downloaded and
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2017-03-21 10:25:01 +00:00
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| installed via pip, you'll also need to generate a package for it. You can
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| do this manually, or via the new
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| #[+a("/docs/usage/cli#package") #[code spacy package] command] that will
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| create all required files, and walk you through generating the meta data.
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2017-03-16 20:53:31 +00:00
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+infobox("Important note")
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| The model packages are #[strong not suitable] for the public
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| #[+a("https://pypi.python.org") pypi.python.org] directory, which is not
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| designed for binary data and files over 50 MB. However, if your company
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| is running an internal installation of pypi, publishing your models on
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| there can be a convenient solution to share them with your team.
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p The model directory should look like this:
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+code("Directory structure", "yaml").
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└── /
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├── MANIFEST.in # to include meta.json
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├── meta.json # model meta data
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├── setup.py # setup file for pip installation
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└── en_core_web_md # model directory
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├── __init__.py # init for pip installation
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└── en_core_web_md-1.2.0 # model data
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p
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| You can find templates for all files in our
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| #[+a(gh("spacy-dev-resouces", "templates/model")) spaCy dev resources].
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| Unless you want to customise installation and loading, the only file
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| you'll need to modify is #[code meta.json], which includes the model's
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| meta data. It will later be copied into the package and data directory.
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+code("meta.json", "json").
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{
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"name": "core_web_md",
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"lang": "en",
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"version": "1.2.0",
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"spacy_version": "1.7.0",
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"description": "English model for spaCy",
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"author": "Explosion AI",
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"email": "contact@explosion.ai",
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"license": "MIT"
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}
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p
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| Keep in mind that the directories need to be named according to the
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| naming conventions. The #[code lang] setting is also used to create the
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| respective #[code Language] class in spaCy, which will later be returned
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| by the model's #[code load()] method.
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p
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| To generate the package, run the following command from within the
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| directory. This will create a #[code .tar.gz] archive in a directory
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| #[code /dist].
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+code(false, "bash").
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python setup.py sdist
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