Installation steps¶
silx supports most operating systems, different version of the Python programming language. While numpy is the only mandatory dependency, graphical widgets require Qt, management of data files requires h5py and fabio, and high performance data-analysis code on GPU requires pyopencl.
This table summarized the the support matrix of silx v0.7:
System | Python vers. | Qt and its bindings |
Windows | 3.5, 3.6 | PyQt5.6+ |
MacOS | 2.7, 3.5-3.6 | PyQt5.6+ |
Linux | 2.7, 3.4-3.6 | PyQt4.8+, PyQt5.3+ |
For all platform, you can install silx from the source, see Installing from source.
To install silx in a Virtual Environment, there is short version here-after and a longer description :ref:`silx-venv.
Dependencies¶
The GUI widgets depend on the following extra packages:
- A Qt binding: either PyQt5, PyQt4, PySide, or PySide2
- matplotlib
- PyOpenGL
- IPython and qt_console
for the
silx.gui.console
widget.
Tools for reading and writing files depend on the following packages:
silx.opencl further depends on OpenCL and the following packages to :
The complete list of dependencies with the minimal version is described in the requirement.txt at the top level of the source package.
Build dependencies¶
In addition to run-time dependencies, building silx requires a C/C++ compiler, numpy and cython (optional).
On Windows it is recommended to use Python 3.5, because with previous versions of Python, it might be difficult to compile extensions (i.e. binary modules).
This project uses Cython (version > 0.21) to generate C files. Cython is now mandatory to build silx from the development branch and is only needed when compiling binary modules.
The complete list of dependencies for building the package, including its documentation, is described in the requirement-dev.txt at the top level of the source package.
Linux¶
If NumPy is not installed on your system, you need to install it first, preferably with the package manager of your system. If you cannot use the package manager of your system (which requires the root access), please refer to the Virtual Environment procedure.
On Linux, you can install silx in your home directory
pip install silx --user
Note
Replace the pip
command with pip3
to install silx or any other library for Python 3.
Note
This installs silx without the optional dependencies.
To install silx on Debian or Ubuntu systems, see Installing a Debian package. This method requires sudo privileges, but has the benefit of installing dependencies in a simple way.
CentOS 7 RPM packages and Fedora 23 rpm packages are provided by the Max IV institute at Lund, Sweden.
An Arch Linux (AUR) package is provided by Leonid Bloch.
You can also choose to compile and install silx from it’s sources: see Installing from source.
Note
The Debian packages python-silx and python3-silx will not install executables (silx view, silx convert ...). Please install the silx package.
Installing a Debian package¶
Debian 8 (Jessie) packages are available on http://www.silx.org/pub/debian/ for amd64 computers. To install it, you need to download this file
http://www.silx.org/pub/debian/silx.list
and copy it into the /etc/apt/source.list.d folder.
Then run apt-get update
and apt-get install python-silx
wget http://www.silx.org/pub/debian/silx.list
sudo cp silx.list /etc/apt/sources.list.d
sudo apt-get update
sudo apt-get install python-silx python3-silx silx
Note
The packages are built automatically, hence not signed. You have to accept the installation of non-signed packages.
If the packages are not installed, it might be due to the priority list. You can display the priority list using apt-cache policy python-silx. If the Pin-number of silx.org is too low compared to other sources: download http://www.silx.org/pub/debian/silx.pref into /etc/apt/preferences.d and start the update/install procedure again.
Virtual Environment¶
Virtual environments are self-contained directory tree that contains a Python installation for a particular version of Python, plus a number of additional packages. They do require administrator privileges, nor root access.
To create a virtual environment, decide upon a directory where you want to place it (for example myenv), and run the venv module as a script with the directory path:
python3 -m venv myenv
This will create the myenv directory if it doesn’t exist, and also create directories inside it containing a copy of the Python interpreter, the standard library, and various supporting files.
Once you’ve created a virtual environment, you may activate it.
On Windows, run:
myenv\\Scripts\\activate.bat
On Unix or MacOS, run:
source myenv/bin/activate
You can install, upgrade, and remove packages using a program called pip within your virtual environment.
pip install numpy
pip install -r https://github.com/silx-kit/silx/raw/0.7/requirements.txt
pip install silx
Windows¶
The simple way of installing the silx library on Windows is to type the following commands in a command prompt:
pip install silx
Note
This installs silx without the optional dependencies. Instructions on how to install dependencies are given in the Installing dependencies section.
This assumes you have Python and pip installed and configured. If you don’t, read the following sections.
Installing Python¶
Download and install Python from python.org.
We recommend that you install the 64bits version of Python, which is not the default version suggested on the Python website. The 32bits version is limited to 2 GB of memory, and also we don’t provide a binary wheel for it. This means that you would have to install silx from its sources, which requires you to install a C compiler first.
We also encourage you to use Python 3.5 or newer, former versions are no more officially supported.
Configure Python as explained on docs.python.org to add the python installation directory to your PATH environment variable.
Alternative Scientific Python stacks exists, such as WinPython or Anaconda. They all offer most of the scientific packages already installed which makes the installation of dependencies much easier.
Using pip¶
Configure your PATH environment variable to include the pip installation directory, the same way as described for Python.
The pip installation directory will likely be C:\Python35\Scripts\
.
Then you will be able to use all pip commands listed in following in a command prompt.
Installing dependencies¶
All dependencies may be simply installed with pip:
.. code-block:: bash
pip install -r https://github.com/silx-kit/silx/raw/0.7/requirements.txt
Installing silx¶
Provided numpy is installed, you can install silx with:
.. code-block:: bash
pip install silx
MacOS¶
While Apple ships Python 2.7 by default on their operating systems, we recommand using Python 3.5 or newer to ease the installation of the Qt library. This can simply be performed by:
pip install -r https://github.com/silx-kit/silx/raw/0.7/requirements.txt
Then install silx with:
pip install silx
This should work without issues, as binary wheels of silx are provided on PyPi.
Installing from source¶
Building silx from the source requires some Build dependencies which may be installed using:
pip install -r https://github.com/silx-kit/silx/raw/0.7/requirements-dev.txt
Building from source¶
Source package of silx releases can be downloaded from the pypi project page.
After downloading the silx-x.y.z.tar.gz archive, extract its content:
tar xzvf silx-x.y.z.tar.gz
Alternatively, you can get the latest source code from the master branch of the git repository: https://github.com/silx-kit/silx
You can now build and install silx from its sources:
cd silx-x.y.z
pip uninstall -y silx
pip install . [--user]
Known issues¶
There are specific issues related to MacOSX. If you get this error:
UnicodeDecodeError: 'ascii' codec can't decode byte 0xc3 in position 1335: ordinal not in range(128)
This is related to the two environment variable LC_ALL and LANG not defined (or wrongly defined to UTF-8). To set the environment variable, type on the command line:
export LC_ALL=en_US.UTF-8
export LANG=en_US.UTF-8
Advanced build options¶
In case you want more control over the build procedure, the build command is:
python setup.py build
There are few advanced options to setup.py build
:
--no-cython
: Prevent Cython (even if installed) to re-generate the C source code. Use the one provided by the development team.--no-openmp
: Recompiles the Cython code without OpenMP support (default for MacOSX).--openmp
: Recompiles the Cython code with OpenMP support (default for Windows and Linux).
Run the test suite of silx (may take a couple of minutes):
python run_tests.py
Package the built into a wheel and install it:
python setup.py bdist_wheel
pip install dist/silx*.whl
To build the documentation, using Sphinx:
python setup.py build build_doc
Testing¶
To run the tests of an installed version of silx, from the python interpreter, run:
import silx.test
silx.test.run_tests()
To run the test suite of a development version, use the run_tests.py script at the root of the source project.
python ./run_tests.py