spaCy/website/docs/usage/index.md

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Install spaCy /usage/models
Quickstart
quickstart
Instructions
installation
Troubleshooting
troubleshooting
Changelog
changelog

spaCy is compatible with 64-bit CPython 3.6+ and runs on Unix/Linux, macOS/OS X and Windows. The latest spaCy releases are available over pip and conda.

📖 Looking for the old docs?

To help you make the transition from v2.x to v3.0, we've uploaded the old website to v2.spacy.io. To see what's changed and how to migrate, see the guide on v3.0 guide.

Quickstart

import QuickstartInstall from 'widgets/quickstart-install.js'

Installation instructions

pip

Using pip, spaCy releases are available as source packages and binary wheels.

$ pip install -U spacy

Download pipelines

After installation you typically want to download a trained pipeline. For more info and available packages, see the models directory.

$ python -m spacy download en_core_web_sm

>>> import spacy
>>> nlp = spacy.load("en_core_web_sm")

To install additional data tables for lemmatization you can run pip install spacy[lookups] or install spacy-lookups-data separately. The lookups package is needed to provide normalization and lemmatization data for new models and to lemmatize in languages that don't yet come with trained pipelines and aren't powered by third-party libraries.

When using pip it is generally recommended to install packages in a virtual environment to avoid modifying system state:

$ python -m venv .env
$ source .env/bin/activate
$ pip install spacy

conda

Thanks to our great community, we've been able to re-add conda support. You can also install spaCy via conda-forge:

$ conda install -c conda-forge spacy

For the feedstock including the build recipe and configuration, check out this repository. Improvements and pull requests to the recipe and setup are always appreciated.

Upgrading spaCy

Upgrading from v2 to v3

Although we've tried to keep breaking changes to a minimum, upgrading from spaCy v2.x to v3.x may still require some changes to your code base. For details see the sections on backwards incompatibilities and migrating. Also remember to download the new trained pipelines, and retrain your own pipelines.

When updating to a newer version of spaCy, it's generally recommended to start with a clean virtual environment. If you're upgrading to a new major version, make sure you have the latest compatible trained pipelines installed, and that there are no old and incompatible packages left over in your environment, as this can often lead to unexpected results and errors. If you've trained your own models, keep in mind that your train and runtime inputs must match. This means you'll have to retrain your pipelines with the new version.

spaCy also provides a validate command, which lets you verify that all installed pipeline packages are compatible with your spaCy version. If incompatible packages are found, tips and installation instructions are printed. It's recommended to run the command with python -m to make sure you're executing the correct version of spaCy.

$ pip install -U spacy
$ python -m spacy validate

Run spaCy with GPU

As of v2.0, spaCy comes with neural network models that are implemented in our machine learning library, Thinc. For GPU support, we've been grateful to use the work of Chainer's CuPy module, which provides a numpy-compatible interface for GPU arrays.

spaCy can be installed on GPU by specifying spacy[cuda], spacy[cuda90], spacy[cuda91], spacy[cuda92], spacy[cuda100], spacy[cuda101] or spacy[cuda102]. If you know your cuda version, using the more explicit specifier allows cupy to be installed via wheel, saving some compilation time. The specifiers should install cupy.

$ pip install -U spacy[cuda92]

Once you have a GPU-enabled installation, the best way to activate it is to call spacy.prefer_gpu or spacy.require_gpu() somewhere in your script before any pipelines have been loaded. require_gpu will raise an error if no GPU is available.

import spacy

spacy.prefer_gpu()
nlp = spacy.load("en_core_web_sm")

Compile from source

The other way to install spaCy is to clone its GitHub repository and build it from source. That is the common way if you want to make changes to the code base. You'll need to make sure that you have a development environment consisting of a Python distribution including header files, a compiler, pip, virtualenv and git installed. The compiler part is the trickiest. How to do that depends on your system. See notes on Ubuntu, macOS / OS X and Windows for details.

$ python -m pip install -U pip                  # update pip
$ git clone https://github.com/explosion/spaCy  # clone spaCy
$ cd spaCy                                      # navigate into dir

$ python -m venv .env                           # create environment in .env
$ source .env/bin/activate                      # activate virtual env
$ export PYTHONPATH=`pwd`                       # set Python path to spaCy dir
$ pip install -r requirements.txt               # install all requirements
$ python setup.py build_ext --inplace           # compile spaCy

Compared to regular install via pip, the requirements.txt additionally installs developer dependencies such as Cython. See the quickstart widget to get the right commands for your platform and Python version.

  • Ubuntu: Install system-level dependencies via apt-get: sudo apt-get install build-essential python-dev git
  • macOS / OS X: Install a recent version of XCode, including the so-called "Command Line Tools". macOS and OS X ship with Python and git preinstalled.
  • Windows: Install a version of the Visual C++ Build Tools or Visual Studio Express that matches the version that was used to compile your Python interpreter.

Building an executable

The spaCy repository includes a Makefile that builds an executable zip file using pex (Python Executable). The executable includes spaCy and all its package dependencies and only requires the system Python at runtime. Building an executable .pex file is often the most convenient way to deploy spaCy, as it lets you separate the build from the deployment process.

Usage

To use a .pex file, just replace python with the path to the file when you execute your code or CLI commands. This is equivalent to running Python in a virtual environment with spaCy installed.

$ ./spacy.pex my_script.py
$ ./spacy.pex -m spacy info
$ git clone https://github.com/explosion/spaCy
$ cd spaCy
$ make

You can configure the build process with the following environment variables:

Variable Description
SPACY_EXTRAS Additional Python packages to install alongside spaCy with optional version specifications. Should be a string that can be passed to pip install. See Makefile for defaults.
PYVER The Python version to build against. This version needs to be available on your build and runtime machines. Defaults to 3.6.
WHEELHOUSE Directory to store the wheel files during compilation. Defaults to ./wheelhouse.

Run tests

spaCy comes with an extensive test suite. In order to run the tests, you'll usually want to clone the repository and build spaCy from source. This will also install the required development dependencies and test utilities defined in the requirements.txt.

Alternatively, you can find out where spaCy is installed and run pytest on that directory. Don't forget to also install the test utilities via spaCy's requirements.txt:

$ python -c "import os; import spacy; print(os.path.dirname(spacy.__file__))"
$ pip install -r path/to/requirements.txt
$ python -m pytest [spacy directory]

Calling pytest on the spaCy directory will run only the basic tests. The flag --slow is optional and enables additional tests that take longer.

$ python -m pip install -U pytest               # update pytest
$ python -m pytest [spacy directory]            # basic tests
$ python -m pytest [spacy directory] --slow     # basic and slow tests

Troubleshooting guide

This section collects some of the most common errors you may come across when installing, loading and using spaCy, as well as their solutions.

Help us improve this guide

Did you come across a problem like the ones listed here and want to share the solution? You can find the "Suggest edits" button at the bottom of this page that points you to the source. We always appreciate pull requests!

No compatible package found for [lang] (spaCy vX.X.X).

This usually means that the trained pipeline you're trying to download does not exist, or isn't available for your version of spaCy. Check the compatibility table to see which packages are available for your spaCy version. If you're using an old version, consider upgrading to the latest release. Note that while spaCy supports tokenization for a variety of languages, not all of them come with trained pipelines. To only use the tokenizer, import the language's Language class instead, for example from spacy.lang.fr import French.

no such option: --no-cache-dir

The download command uses pip to install the pipeline packages and sets the --no-cache-dir flag to prevent it from requiring too much memory. This setting requires pip v6.0 or newer. Run pip install -U pip to upgrade to the latest version of pip. To see which version you have installed, run pip --version.

sre_constants.error: bad character range

In v2.1, spaCy changed its implementation of regular expressions for tokenization to make it up to 2-3 times faster. But this also means that it's very important now that you run spaCy with a wide unicode build of Python. This means that the build has 1114111 unicode characters available, instead of only 65535 in a narrow unicode build. You can check this by running the following command:

$ python -c "import sys; print(sys.maxunicode)"

If you're running a narrow unicode build, reinstall Python and use a wide unicode build instead. You can also rebuild Python and set the --enable-unicode=ucs4 flag.

ValueError: unknown locale: UTF-8

This error can sometimes occur on OSX and is likely related to a still unresolved Python bug. However, it's easy to fix: just add the following to your ~/.bash_profile or ~/.zshrc and then run source ~/.bash_profile or source ~/.zshrc. Make sure to add both lines for LC_ALL and LANG.

$ export LC_ALL=en_US.UTF-8
$ export LANG=en_US.UTF-8
Import Error: No module named spacy

This error means that the spaCy module can't be located on your system, or in your environment. Make sure you have spaCy installed. If you're using a virtual environment, make sure it's activated and check that spaCy is installed in that environment otherwise, you're trying to load a system installation. You can also run which python to find out where your Python executable is located.

ImportError: No module named 'en_core_web_sm'

As of spaCy v1.7, all trained pipelines can be installed as Python packages. This means that they'll become importable modules of your application. If this fails, it's usually a sign that the package is not installed in the current environment. Run pip list or pip freeze to check which pipeline packages you have installed, and install the correct package if necessary. If you're importing a package manually at the top of a file, make sure to use the full name of the package.

command not found: spacy

This error may occur when running the spacy command from the command line. spaCy does not currently add an entry to your PATH environment variable, as this can lead to unexpected results, especially when using a virtual environment. Instead, spaCy adds an auto-alias that maps spacy to python -m spacy]. If this is not working as expected, run the command with python -m, yourself for example python -m spacy download en_core_web_sm. For more info on this, see the download command.

AttributeError: 'module' object has no attribute 'load'

While this could technically have many causes, including spaCy being broken, the most likely one is that your script's file or directory name is "shadowing" the module e.g. your file is called spacy.py, or a directory you're importing from is called spacy. So, when using spaCy, never call anything else spacy.

If your training data only contained new entities and you didn't mix in any examples the model previously recognized, it can cause the model to "forget" what it had previously learned. This is also referred to as the "catastrophic forgetting problem". A solution is to pre-label some text, and mix it with the new text in your updates. You can also do this by running spaCy over some text, extracting a bunch of entities the model previously recognized correctly, and adding them to your training examples.

TypeError: unhashable type: 'list'

If you're training models, writing them to disk, and versioning them with git, you might encounter this error when trying to load them in a Windows environment. This happens because a default install of Git for Windows is configured to automatically convert Unix-style end-of-line characters (LF) to Windows-style ones (CRLF) during file checkout (and the reverse when committing). While that's mostly fine for text files, a trained model written to disk has some binary files that should not go through this conversion. When they do, you get the error above. You can fix it by either changing your core.autocrlf setting to "false", or by committing a .gitattributes file] to your repository to tell git on which files or folders it shouldn't do LF-to-CRLF conversion, with an entry like path/to/spacy/model/** -text. After you've done either of these, clone your repository again.

Changelog

import Changelog from 'widgets/changelog.js'