.. _installation-instructions: ======================= Installing scikit-learn ======================= There are different ways to install scikit-learn: * :ref:`Install the latest official release `. This is the best approach for most users. It will provide a stable version and pre-built packages are available for most platforms. * Install the version of scikit-learn provided by your :ref:`operating system or Python distribution `. This is a quick option for those who have operating systems or Python distributions that distribute scikit-learn. It might not provide the latest release version. * :ref:`Building the package from source `. This is best for users who want the latest-and-greatest features and aren't afraid of running brand-new code. This is also needed for users who wish to contribute to the project. .. _install_official_release: Installing the latest release ============================= .. raw:: html .. div:: install-instructions .. tab-set:: :class: tabs-os .. tab-item:: Windows :class-label: tab-4 .. tab-set:: :class: tabs-package-manager .. tab-item:: pip :class-label: tab-6 :sync: package-manager-pip Install the 64-bit version of Python 3, for instance from the `official website `__. Now create a `virtual environment (venv) `_ and install scikit-learn. Note that the virtual environment is optional but strongly recommended, in order to avoid potential conflicts with other packages. .. prompt:: powershell python -m venv sklearn-env sklearn-env\Scripts\activate # activate pip install -U scikit-learn In order to check your installation, you can use: .. prompt:: powershell python -m pip show scikit-learn # show scikit-learn version and location python -m pip freeze # show all installed packages in the environment python -c "import sklearn; sklearn.show_versions()" .. tab-item:: conda :class-label: tab-6 :sync: package-manager-conda .. include:: ./install_instructions_conda.rst .. tab-item:: MacOS :class-label: tab-4 .. tab-set:: :class: tabs-package-manager .. tab-item:: pip :class-label: tab-6 :sync: package-manager-pip Install Python 3 using `homebrew `_ (`brew install python`) or by manually installing the package from the `official website `__. Now create a `virtual environment (venv) `_ and install scikit-learn. Note that the virtual environment is optional but strongly recommended, in order to avoid potential conflicts with other packges. .. prompt:: bash python -m venv sklearn-env source sklearn-env/bin/activate # activate pip install -U scikit-learn In order to check your installation, you can use: .. prompt:: bash python -m pip show scikit-learn # show scikit-learn version and location python -m pip freeze # show all installed packages in the environment python -c "import sklearn; sklearn.show_versions()" .. tab-item:: conda :class-label: tab-6 :sync: package-manager-conda .. include:: ./install_instructions_conda.rst .. tab-item:: Linux :class-label: tab-4 .. tab-set:: :class: tabs-package-manager .. tab-item:: pip :class-label: tab-6 :sync: package-manager-pip Python 3 is usually installed by default on most Linux distributions. To check if you have it installed, try: .. prompt:: bash python3 --version pip3 --version If you don't have Python 3 installed, please install `python3` and `python3-pip` from your distribution's package manager. Now create a `virtual environment (venv) `_ and install scikit-learn. Note that the virtual environment is optional but strongly recommended, in order to avoid potential conflicts with other packages. .. prompt:: bash python3 -m venv sklearn-env source sklearn-env/bin/activate # activate pip3 install -U scikit-learn In order to check your installation, you can use: .. prompt:: bash python3 -m pip show scikit-learn # show scikit-learn version and location python3 -m pip freeze # show all installed packages in the environment python3 -c "import sklearn; sklearn.show_versions()" .. tab-item:: conda :class-label: tab-6 :sync: package-manager-conda .. include:: ./install_instructions_conda.rst Using an isolated environment such as pip venv or conda makes it possible to install a specific version of scikit-learn with pip or conda and its dependencies independently of any previously installed Python packages. In particular under Linux it is discouraged to install pip packages alongside the packages managed by the package manager of the distribution (apt, dnf, pacman...). Note that you should always remember to activate the environment of your choice prior to running any Python command whenever you start a new terminal session. If you have not installed NumPy or SciPy yet, you can also install these using conda or pip. When using pip, please ensure that *binary wheels* are used, and NumPy and SciPy are not recompiled from source, which can happen when using particular configurations of operating system and hardware (such as Linux on a Raspberry Pi). Scikit-learn plotting capabilities (i.e., functions starting with `plot\_` and classes ending with `Display`) require Matplotlib. The examples require Matplotlib and some examples require scikit-image, pandas, or seaborn. The minimum version of scikit-learn dependencies are listed below along with its purpose. .. include:: min_dependency_table.rst .. warning:: Scikit-learn 0.20 was the last version to support Python 2.7 and Python 3.4. Scikit-learn 0.21 supported Python 3.5-3.7. Scikit-learn 0.22 supported Python 3.5-3.8. Scikit-learn 0.23-0.24 required Python 3.6 or newer. Scikit-learn 1.0 supported Python 3.7-3.10. Scikit-learn 1.1, 1.2 and 1.3 support Python 3.8-3.12 Scikit-learn 1.4 requires Python 3.9 or newer. .. _install_by_distribution: Third party distributions of scikit-learn ========================================= Some third-party distributions provide versions of scikit-learn integrated with their package-management systems. These can make installation and upgrading much easier for users since the integration includes the ability to automatically install dependencies (numpy, scipy) that scikit-learn requires. The following is an incomplete list of OS and python distributions that provide their own version of scikit-learn. Alpine Linux ------------ Alpine Linux's package is provided through the `official repositories `__ as ``py3-scikit-learn`` for Python. It can be installed by typing the following command: .. prompt:: bash sudo apk add py3-scikit-learn Arch Linux ---------- Arch Linux's package is provided through the `official repositories `_ as ``python-scikit-learn`` for Python. It can be installed by typing the following command: .. prompt:: bash sudo pacman -S python-scikit-learn Debian/Ubuntu ------------- The Debian/Ubuntu package is split in three different packages called ``python3-sklearn`` (python modules), ``python3-sklearn-lib`` (low-level implementations and bindings), ``python-sklearn-doc`` (documentation). Note that scikit-learn requires Python 3, hence the need to use the `python3-` suffixed package names. Packages can be installed using ``apt-get``: .. prompt:: bash sudo apt-get install python3-sklearn python3-sklearn-lib python-sklearn-doc Fedora ------ The Fedora package is called ``python3-scikit-learn`` for the python 3 version, the only one available in Fedora. It can be installed using ``dnf``: .. prompt:: bash sudo dnf install python3-scikit-learn NetBSD ------ scikit-learn is available via `pkgsrc-wip `_: https://pkgsrc.se/math/py-scikit-learn MacPorts for Mac OSX -------------------- The MacPorts package is named ``py-scikits-learn``, where ``XY`` denotes the Python version. It can be installed by typing the following command: .. prompt:: bash sudo port install py39-scikit-learn Anaconda and Enthought Deployment Manager for all supported platforms --------------------------------------------------------------------- `Anaconda `_ and `Enthought Deployment Manager `_ both ship with scikit-learn in addition to a large set of scientific python library for Windows, Mac OSX and Linux. Anaconda offers scikit-learn as part of its free distribution. Intel Extension for Scikit-learn -------------------------------- Intel maintains an optimized x86_64 package, available in PyPI (via `pip`), and in the `main`, `conda-forge` and `intel` conda channels: .. prompt:: bash conda install scikit-learn-intelex This package has an Intel optimized version of many estimators. Whenever an alternative implementation doesn't exist, scikit-learn implementation is used as a fallback. Those optimized solvers come from the oneDAL C++ library and are optimized for the x86_64 architecture, and are optimized for multi-core Intel CPUs. Note that those solvers are not enabled by default, please refer to the `scikit-learn-intelex `_ documentation for more details on usage scenarios. Direct export example: .. prompt:: python >>> from sklearnex.neighbors import NearestNeighbors Compatibility with the standard scikit-learn solvers is checked by running the full scikit-learn test suite via automated continuous integration as reported on https://github.com/intel/scikit-learn-intelex. If you observe any issue with `scikit-learn-intelex`, please report the issue on their `issue tracker `__. WinPython for Windows --------------------- The `WinPython `_ project distributes scikit-learn as an additional plugin. Troubleshooting =============== If you encounter unexpected failures when installing scikit-learn, you may submit an issue to the `issue tracker `_. Before that, please also make sure to check the following common issues. .. _windows_longpath: Error caused by file path length limit on Windows ------------------------------------------------- It can happen that pip fails to install packages when reaching the default path size limit of Windows if Python is installed in a nested location such as the `AppData` folder structure under the user home directory, for instance:: C:\Users\username>C:\Users\username\AppData\Local\Microsoft\WindowsApps\python.exe -m pip install scikit-learn Collecting scikit-learn ... Installing collected packages: scikit-learn ERROR: Could not install packages due to an OSError: [Errno 2] No such file or directory: 'C:\\Users\\username\\AppData\\Local\\Packages\\PythonSoftwareFoundation.Python.3.7_qbz5n2kfra8p0\\LocalCache\\local-packages\\Python37\\site-packages\\sklearn\\datasets\\tests\\data\\openml\\292\\api-v1-json-data-list-data_name-australian-limit-2-data_version-1-status-deactivated.json.gz' In this case it is possible to lift that limit in the Windows registry by using the ``regedit`` tool: #. Type "regedit" in the Windows start menu to launch ``regedit``. #. Go to the ``Computer\HKEY_LOCAL_MACHINE\SYSTEM\CurrentControlSet\Control\FileSystem`` key. #. Edit the value of the ``LongPathsEnabled`` property of that key and set it to 1. #. Reinstall scikit-learn (ignoring the previous broken installation): .. prompt:: powershell pip install --exists-action=i scikit-learn