pixell
is a library for loading, manipulating and analyzing maps stored in rectangular pixelization. It is mainly intended for use with maps of the sky (e.g. CMB intensity and polarization maps, stacks of 21 cm intensity maps, binned galaxy positions or shear) in cylindrical projection, but its core functionality is more general. It extends numpy
's ndarray
to an ndmap
class that associates a World Coordinate System (WCS) with a numpy
array. It includes tools for Fourier analysis (through numpy
or pyfftw
), spherical harmonic analysis (through ducc0) and wavelet analysis of such maps. It also provides tools for high-resolution visualization (through the Python Image Library).
- Free software: BSD license
- Documentation: https://pixell.readthedocs.io.
- Tutorials
- Python>=3.9.
- gcc/gfortran or Intel compilers (clang might not work out of the box), if compiling from source
- ducc0, healpy, Cython, astropy, numpy, scipy, matplotlib, pyyaml, h5py, Pillow (Python Image Library)
On MacOS, and other systems with non-traditional environments, you should specify the following standard environment variables:
CC
: C compiler (example:gcc
)FC
: Fortran compiler (example:gfortran
)
We recommend using gcc
installed from Homebrew to access these compilers on
MacOS, and you should make sure to point e.g. $CC
to the full path of your gcc installation,
as the gcc
name usually points to the Apple clang
install by default.
Certain parts of pixell
are parallelized using OpenMP, with the underlying ducc0
library using pthreads. By default, these libraries use the number of cores on your
system to determine the number of threads to use. If you wish to override this behaviour,
you can use two environment variables:
OMP_NUM_THREADS
will set both the number ofpixell
threads andducc0
threads.DUCC0_NUM_THREADS
will set the number of threads for theducc0
library to use, overwritingOMP_NUM_THREADS
if both are set.pixell
behaviour is not affected.
If you are using a modern chip (e.g. Apple M series chips, Intel 12th Gen or newer) that
have both efficiency and performance cores, you may wish to set OMP_NUM_THREADS
to
the number of performance cores in your system. This will ensure that the efficiency cores
are not used for the parallelized parts of pixell
and ducc0
.
You can check the threading behaviour (and the installation of pixell
) by running
the benchmark script:
$ benchmark-pixell-runner
Make sure your pip
tool is up-to-date. To install pixell
, run:
$ pip install pixell --user
This will install a pre-compiled binary suitable for your system (only Linux and Mac OS X with Python>=3.9 are supported).
If you require more control over your installation, e.g. using Intel compilers, please see the section below on compiling from source.
The easiest way to install from source is to use the pip
tool,
with the --no-binary
flag. This will download the source distribution
and compile it for you. Don't forget to make sure you have CC and FC set
if you have any problems.
For all other cases, below are general instructions.
First, download the source distribution or git clone
this repository. You
can work from master
or checkout one of the released version tags (see the
Releases section on Github). Then change into the cloned/source directory.
Once downloaded, you can install using pip install .
inside the project
directory. We use the meson
build system, which should be understood by
pip
(it will build in an isolated environment).
We suggest you then test the installation by running the unit tests. You
can do this by running pytest
.
To run an editable install, you will need to do so in a way that does not have build isolation (as the backend build system, meson and ninja, actually perform micro-builds on usage in this case):
$ pip install --upgrade pip meson ninja meson-python cython numpy
$ pip install --no-build-isolation --editable .
If you have write access to this repository, please:
- create a new branch
- push your changes to that branch
- merge or rebase to get in sync with master
- submit a pull request on github
If you do not have write access, create a fork of this repository and proceed as described above. For more details, see Contributing.