See https://www.scipy.org/Installing_SciPy/
Contents
It is strongly recommended that you use either a complete scientific Python distribution or binary packages on your platform if they are available, in particular on Windows and Mac OS X. You should not attempt to build SciPy if you are not familiar with compiling software from sources.
Recommended distributions are:
- Enthought Canopy (https://www.enthought.com/products/canopy/)
- Anaconda (https://www.continuum.io/anaconda)
- Python(x,y) (http://python-xy.github.io/)
- WinPython (https://winpython.github.io/)
The rest of this install documentation does summarize how to build Scipy. Note that more extensive (and possibly more up-to-date) build instructions are maintained at http://scipy.org/scipylib/building/index.html
SciPy requires the following software installed for your platform:
- Python 2.7 or >= 3.4
- NumPy >= 1.7.1
- For building from source: setuptools
- If you want to build the documentation: Sphinx >= 1.2.1
- If you want to build SciPy master or other unreleased version from source (Cython-generated C sources are included in official releases): Cython >= 0.22
There are two ways to build Scipy on Windows:
- Use Intel MKL, and Intel compilers or ifort + MSVC. This is currently the most robust method.
- Use MingwPy. This is a GCC toolchain that will be used in the future to distribute Scipy binaries on PyPi. See the MingwPy website for details.
It is recommended to use gcc or clang, both work fine. Gcc is available for free when installing Xcode, the developer toolsuite on Mac OS X. You also need a fortran compiler, which is not included with Xcode: you should use a recent gfortran from an OS X package manager (like Homebrew).
Please do NOT use gfortran from hpc.sourceforge.net, it is known to generate buggy scipy binaries.
Mac OS X includes the Accelerate framework: it should be detected without any intervention when building SciPy.
Most common distributions include all the dependencies. You will need to install a BLAS/LAPACK (all of ATLAS, OpenBLAS, MKL work fine) including development headers, as well as development headers for Python itself. Those are typically packaged as python-dev
For the latest information, see the web site:
https://www.scipy.org
Use the command:
git clone https://github.com/scipy/scipy.git
cd scipy
git clean -xdf
python setup.py install --user
Type:
cd scipy/doc
make html
Unpack SciPy-<version>.tar.gz
, change to the SciPy-<version>/
directory, and run:
python setup.py install --user
This may take several minutes to half an hour depending on the speed of your computer. To install to a user-specific location instead, run:
python setup.py install --prefix=$MYDIR
where $MYDIR is, for example, $HOME or $HOME/usr.
** Note 1: On Unix, you should avoid installing in /usr, but rather in /usr/local or somewhere else. /usr is generally 'owned' by your package manager, and you may overwrite a packaged Scipy this way.
To test SciPy after installation (highly recommended), execute in Python
>>> import scipy >>> scipy.test()
To run the full test suite use
>>> scipy.test('full')
Please note that you must have version 1.0 or later of the 'nose' test framework installed in order to run the tests. More information about nose is available on the website.
You can specify which Fortran compiler to use by using the following install command:
python setup.py config_fc --fcompiler=<Vendor> install
To see a valid list of <Vendor> names, run:
python setup.py config_fc --help-fcompiler
IMPORTANT: It is highly recommended that all libraries that scipy uses (e.g. BLAS and ATLAS libraries) are built with the same Fortran compiler. In most cases, if you mix compilers, you will not be able to import Scipy at best, have crashes and random results at worst.
When installing with python setup.py install
or a variation on that, you do
not get proper uninstall behavior for an older already installed Scipy version.
In many cases that's not a problem, but if it turns out to be an issue, you
need to manually uninstall it first (remove from e.g. in
/usr/lib/python3.4/site-packages/scipy
or
$HOME/lib/python3.4/site-packages/scipy
).
Alternatively, you can use pip install . --user
instead of python
setup.py install --user
in order to get reliable uninstall behavior.
The downside is that pip
doesn't show you a build log and doesn't support
incremental rebuilds (it copies the whole source tree to a tempdir).
If you experience problems when building/installing/testing SciPy, you can ask help from scipy-user@scipy.org or scipy-dev@scipy.org mailing lists. Please include the following information in your message:
NOTE: You can generate some of the following information (items 1-5,7) in one command:
python -c 'from numpy.f2py.diagnose import run; run()'
Platform information:
python -c 'import os, sys; print(os.name, sys.platform)' uname -a OS, its distribution name and version information etc.
Information about C,C++,Fortran compilers/linkers as reported by the compilers when requesting their version information, e.g., the output of
gcc -v g77 --version
Python version:
python -c 'import sys; print(sys.version)'
NumPy version:
python -c 'import numpy; print(numpy.__version__)'
ATLAS version, the locations of atlas and lapack libraries, building information if any. If you have ATLAS version 3.3.6 or newer, then give the output of the last command in
cd scipy/Lib/linalg python setup_atlas_version.py build_ext --inplace --force python -c 'import atlas_version'
The output of the following commands
python INSTALLDIR/numpy/distutils/system_info.py
where INSTALLDIR is, for example, /usr/lib/python3.4/site-packages/.
Feel free to add any other relevant information. For example, the full output (both stdout and stderr) of the SciPy installation command can be very helpful. Since this output can be rather large, ask before sending it into the mailing list (or better yet, to one of the developers, if asked).
In case of failing to import extension modules, the output of
ldd /path/to/ext_module.so
can be useful.