spaCy/website/docs/usage/models.jade

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//- 💫 DOCS > USAGE > MODELS
include ../../_includes/_mixins
p
| As of v1.7.0, models for spaCy can be installed as #[strong Python packages].
| This means that they're a component of your application, just like any
| other module. They're versioned and can be defined as a dependency in your
| #[code requirements.txt]. Models can be installed from a download URL or
| a local directory, manually or via #[+a("https://pypi.python.org/pypi/pip") pip].
| Their data can be located anywhere on your file system.
+aside("Important note")
| If you're upgrading to spaCy v1.7.x or v2.x, you need to
| #[strong download the new models]. If you've trained statistical models
| that use spaCy's annotations, you should #[strong retrain your models]
| after updating spaCy. If you don't retrain, you may suffer train/test
| skew, which might decrease your accuracy.
+quickstart(QUICKSTART_MODELS, "Quickstart", "Install a default model, get the code to load it from within spaCy and an example to test it. For more options, see the section on available models below.")
for models, lang in MODELS
- var package = (models.length == 1) ? models[0] : models.find(function(m) { return m.def })
+qs({lang: lang}) python -m spacy download #{lang}
+qs({lang: lang}, "divider")
+qs({lang: lang, load: "module"}, "python") import #{package.id}
+qs({lang: lang, load: "module"}, "python") nlp = #{package.id}.load()
+qs({lang: lang, load: "spacy"}, "python") nlp = spacy.load('#{lang}')
+qs({lang: lang, config: "example"}, "python") doc = nlp(u"#{EXAMPLE_SENTENCES[lang]}")
+qs({lang: lang, config: "example"}, "python") print([(w.text, w.pos_) for w in doc])
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+h(2, "available") Available models
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include _models-list
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+h(2, "download") Downloading models
+aside("Downloading models in spaCy < v1.7")
| In older versions of spaCy, you can still use the old download commands.
| This will download and install the models into the #[code spacy/data]
| directory.
+code.o-no-block.
python -m spacy.en.download all
python -m spacy.de.download all
python -m spacy.en.download glove
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| The old models are also #[+a(gh("spacy") + "/tree/v1.6.0") attached to the v1.6.0 release].
| To download and install them manually, unpack the archive, drop the
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| contained directory into #[code spacy/data].
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p
| The easiest way to download a model is via spaCy's
| #[+api("cli#download") #[code download]] command. It takes care of
| finding the best-matching model compatible with your spaCy installation.
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- var models = Object.keys(MODELS).map(function(lang) { return "python -m spacy download " + lang })
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+code(false, "bash").
# out-of-the-box: download best-matching default model
#{Object.keys(MODELS).map(function(l) {return "python -m spacy download " + l}).join('\n')}
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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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p
| The download command will #[+a("#download-pip") install the model] via
| pip, place the package in your #[code site-packages] directory and create
| a #[+a("#usage") shortcut link] that lets you load the model by a custom
| name. The shortcut link will be the same as the model name used in
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| #[code spacy.download].
+code(false, "bash").
pip install spacy
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python -m spacy download en
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+code.
import spacy
nlp = spacy.load('en')
doc = nlp(u'This is a sentence.')
+h(3, "download-pip") Installation via pip
p
| To download a model directly using #[+a("https://pypi.python.org/pypi/pip") pip],
| simply point #[code pip install] to the URL or local path of the archive
| 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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| link and copy it to your clipboard.
+code(false, "bash").
# 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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# with local file
pip install /Users/you/en_core_web_md-1.2.0.tar.gz
p
| By default, this will install the model into your #[code site-packages]
| directory. You can then use #[code spacy.load()] to load it via its
| package name, create a #[+a("#usage-link") shortcut link] to assign it a
| custom name, or #[+a("usage-import") import it] explicitly as a module.
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| If you need to download models as part of an automated process, we
| recommend using pip with a direct link, instead of relying on spaCy's
| #[+api("cli#download") #[code download]] command.
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+h(3, "download-manual") Manual download and installation
p
| In some cases, you might prefer downloading the data manually, for
| example to place it into a custom directory. You can download the model
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| via your browser from the #[+a(gh("spacy-models")) latest releases], or configure
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| your own download script using the URL of the archive file. The archive
| consists of a model directory that contains another directory with the
| model data.
+code("Directory structure", "yaml").
└── en_core_web_md-1.2.0.tar.gz # downloaded archive
├── meta.json # model meta data
├── setup.py # setup file for pip installation
└── en_core_web_md # model directory
├── __init__.py # init for pip installation
├── meta.json # model meta data
└── en_core_web_md-1.2.0 # model data
p
| 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
| #[+a("#usage") shortcut link] for the data directory.
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+h(2, "usage") Using models with spaCy
p
| To load a model, use #[+api("spacy#load") #[code spacy.load()]] with the
| model's shortcut link, package name or a path to the data directory:
+code.
import spacy
nlp = spacy.load('en') # load model with shortcut link "en"
nlp = spacy.load('en_core_web_sm') # load model package "en_core_web_sm"
nlp = spacy.load('/path/to/model') # load model from a directory
doc = nlp(u'This is a sentence.')
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+infobox("Tip: Preview model info")
| You can use the #[+api("cli#info") #[code info]] command or
| #[+api("spacy#info") #[code spacy.info()]] method to print a model's meta data
| before loading it. Each #[code Language] object with a loaded model also
| exposes the model's meta data as the attribute #[code meta]. For example,
| #[code nlp.meta['version']] will return the model's version.
+h(3, "usage-link") Using custom shortcut links
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p
| While previous versions of spaCy required you to maintain a data directory
| containing the models for each installation, you can now choose
| #[strong how and where you want to keep your data]. For example, you could
| download all models manually and put them into a local directory.
| Whenever your spaCy projects need a models, you create a shortcut link to
| tell spaCy to load it from there. This means you'll never end up with
| duplicate data.
p
| The #[+api("cli#link") #[code link]] command will create a symlink
| in the #[code spacy/data] directory.
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+aside("Why does spaCy use symlinks?")
| Symlinks were originally introduced to maintain backwards compatibility,
| as older versions expected model data to live within #[code spacy/data].
| However, we decided to keep using them in v2.0 instead of opting for
| a config file. There'll always be a need for assigning and saving custom
| model names or IDs. And your system already comes with a native solution
| to mapping unicode aliases to file paths: symbolic links.
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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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p
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| The first argument is the #[strong package name] (if the model was
| installed via pip), or a local path to the the #[strong model package].
| The second argument is the internal name you want to use for the model.
| Setting the #[code --force] flag will overwrite any existing links.
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+code("Examples", "bash").
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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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+infobox("Important note")
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| In order to create a symlink, your user needs the #[strong required permissions].
| If you've installed spaCy to a system directory and don't have admin
| privileges, the #[code spacy link] command may fail. The easiest solution
| is to re-run the command as admin, or use a #[code virtualenv]. For more
| info on this, see the
| #[+a("/docs/usage/#symlink-privilege") troubleshooting guide].
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+h(3, "usage-import") Importing models as modules
p
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| If you've installed a model via spaCy's downloader, or directly via pip,
| you can also #[code import] it and then call its #[code load()] method
| with no arguments:
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+code.
import en_core_web_md
nlp = en_core_web_md.load()
doc = nlp(u'This is a sentence.')
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p
| How you choose to load your models ultimately depends on personal
| preference. However, #[strong for larger code bases], we usually recommend
| native imports, as this will make it easier to integrate models with your
| existing build process, continuous integration workflow and testing
| framework. It'll also prevent you from ever trying to load a model that
| is not installed, as your code will raise an #[code ImportError]
| immediately, instead of failing somewhere down the line when calling
| #[code spacy.load()].
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+h(2, "own-models") Using your own models
p
| If you've trained your own model, for example for
| #[+a("/docs/usage/adding-languages") additional languages] or
| #[+a("/docs/usage/train-ner") custom named entities], you can save its
| state using the #[+api("language#to_disk") #[code Language.to_disk()]]
| method. To make the model more convenient to deploy, we recommend
| wrapping it as a Python package.
+infobox("Saving and loading models")
| For more information and a detailed guide on how to package your model,
| see the documentation on
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| #[+a("/docs/usage/saving-loading#models") saving and loading models].