cygrid
- Version: 2.0
- Authors: Benjamin Winkel, Lars Flöer, Daniel Lenz
- User manual:
stable <https://bwinkel.github.io/cygrid/stable/>
__ |
developer <https://bwinkel.github.io/cygrid/latest/>
__
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:target: https://pypi.python.org/pypi/cygrid
:alt: PyPI tag
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Project Status
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:target: https://travis-ci.org/bwinkel/cygrid
:alt: cygrid's Travis CI Status
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:alt: cygrid's AppVeyor CI Status
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:alt: cygrid's Coveralls Status
Cygrid
is already used in several "production" systems, for example it was
utilized for two major 21-cm HI surveys, EBHIS and HI4PI. Nevertheless,
we cannot guarantee that it's completely bug-free. We kindly invite you to
use the library and we are grateful for feedback. Note, that work on the documentation is still ongoing.
Purpose
cygrid
allows to resample a number of spectra (or data points) to a regular
grid - a data cube - using any valid astronomical FITS/WCS projection (see
http://docs.astropy.org/en/stable/wcs/).
The method is a based on serialized convolution with finite gridding kernels.
Currently, only Gaussian (radial-symmetric or elliptical) kernels are provided
(which has the drawback of slight degradation of the effective resolution).
The algorithm has very small memory footprint, allows easy parallelization,
and is very fast.
A detailed description of the algorithm is given in Winkel, Lenz & Flöer (2016) <http://adsabs.harvard.edu/abs/2016A%26A...591A..12W>
_, which we
kindly ask to be used as reference if you found cygrid
useful for your
research.
Features
- Supports any WCS projection system as target.
- Conserves flux.
- Low memory footprint.
- Scales very well on multi-processor/core platforms.
Installation
We highly recommend to use cygrid
with the Anaconda Python distribution <https://www.anaconda.com/>
_, in which
case installiation is as easy as ::
conda install -c conda-forge cygrid
Otherwise, you should install cygrid via pip
::
python -m pip install cygrid
The installation is also possible from source, but you'll need a C++
compiler. Download the tar.gz-file, extract (or clone from GitHub) and
execute (in project directory)::
python -m pip install .
Dependencies
We kept the dependencies as minimal as possible. The following packages are
required:
Python 3.8
or later (cygrid
versions prior to v1.0 support Python 2.7
)NumPy 1.13
or laterCython 3
or later (if you want to build cygrid
yourself)Astropy 4.0
or later
(Older versions of these libraries may work, but we didn't test this!)
If you want to run the notebooks yourself, you will also need the Jupyter
server, matplotlib and wcsaxes packages. To run the tests, you'll need HealPy.
Note, for compiling the C-extension, openmp is used for parallelization and
some C++11 language features are necessary. If you use gcc, for example, you
need at least version 4.8 otherwise the setup-script will fail. It is highly
recommended to use Anaconda, which offers the proper compilers for many
platforms.
Usage
Minimal example
Using cygrid
is extremely simple. Just define a FITS header (with valid
WCS), define gridding kernel and run the grid function:
.. code-block:: python
from astropy.io import fits
import cygrid
# read-in data
glon, glat, signal = get_data(...)
# define target FITS/WCS header
header = {
'NAXIS': 3,
'NAXIS1': 101,
'NAXIS2': 101,
'NAXIS3': 1024,
'CTYPE1': 'GLON-SFL',
'CTYPE2': 'GLAT-SFL',
'CDELT1': -0.1,
'CDELT2': 0.1,
'CRPIX1': 51,
'CRPIX2': 51,
'CRVAL1': 12.345,
'CRVAL2': 3.14,
}
# prepare gridder
kernelsize_sigma = 0.2
kernel_type = 'gauss1d'
kernel_params = (kernelsize_sigma, )
kernel_support = 3 * kernelsize_sigma
hpx_maxres = kernelsize_sigma / 2
mygridder = cygrid.WcsGrid(header)
mygridder.set_kernel(
kernel_type,
kernel_params,
kernel_support,
hpx_maxres
)
# do the gridding
mygridder.grid(glon, glat, signal)
# query result and store to disk
data_cube = mygridder.get_datacube()
fits.writeto(
'example.fits',
header=header, data=data_cube
)
More use-cases and tutorials
Check out the user manual <https://bwinkel.github.io/cygrid/latest/>
_ or the
Jupyter tutorial notebooks <https://github.com/bwinkel/cygrid/tree/master/notebooks>
_
in the repository for further examples of how to use cygrid
. Note that you
can only view the notebooks on GitHub, if you want to edit something
it is necessary to clone the repository or download a notebook to run it on
your machine.
Who do I talk to?
If you encounter any problems or have questions, do not hesitate to raise an
issue or make a pull request. Moreover, you can contact the devs directly:
Preferred citation method
Please cite our paper <http://adsabs.harvard.edu/abs/2016A%26A...591A..12W>
_
if you use cygrid
for your projects.
.. code-block:: latex
@ARTICLE{2016A&A...591A..12W,
author = {{Winkel}, B. and {Lenz}, D. and {Fl{\"o}er}, L.},
title = "{Cygrid: A fast Cython-powered convolution-based gridding module for Python}",
journal = {\aap},
archivePrefix = "arXiv",
eprint = {1604.06667},
primaryClass = "astro-ph.IM",
keywords = {methods: numerical, techniques: image processing},
year = 2016,
month = jun,
volume = 591,
eid = {A12},
pages = {A12},
doi = {10.1051/0004-6361/201628475},
adsurl = {http://adsabs.harvard.edu/abs/2016A%26A...591A..12W},
adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}