A pythonic interface for radio astronomy interferometry data
Project description
pyuvdata
pyuvdata defines a pythonic interface to interferometric data sets. Currently pyuvdata supports reading and writing of miriad, uvfits, CASA measurement sets and uvh5 files and reading of FHD (Fast Holographic Deconvolution) visibility save files, SMA Mir files and MWA correlator FITS files.
API documentation and a tutorial is hosted on ReadTheDocs.
Motivation
The main goals are:
- To provide a high quality, well documented path to convert between data formats
- Support the direct use of datasets from python with minimal software
- Provide precise data definition via both human readable code and high quality online documentation
Package Details
pyuvdata has four major user classes:
- UVData: supports interferometric data (visibilities) and associated metadata
- UVCal: supports interferometric calibration solutions (antenna-based) and associated metadata (Note that this is a fairly new object, consider it to be a beta version)
- UVBeam: supports primary beams (E-field or power) and associated metadata (Note that this is a fairly new object, consider it to be a beta version)
- UVFlag: A class to handle the manipulation and combination of flags for data sets. Also can convert raw data quality metrics into flags using thresholding. (This object is very new and experimental. Consider it to be a beta version)
UVData File standard notes
- miriad has been thoroughly tested with aipy-style miriad files and minimally tested with ATCA files
- uvfits conforms to AIPS memo 117 (as of March 2020). It is tested against FHD, CASA, and AIPS. However AIPS is limited to <80 antennas and CASA uvfits import does not seem to support >255 antennas. Users with data sets containing > 255 antennas should use the measurement set writer instead.
- CASA measurement sets, primarily conforming to CASA Memo 229, with some elements taken from the proposed v3.0 format documented in CASA Memo 264. Measurement sets are tested against
VLA and MWA data sets, (the latter filled via cotter), with some manual verification
haven been performed against ALMA and SMA data sets, the latter filled using the
importuvfits
task of CASA. tested against ALMA-filled datasets and with SMA datasets - uvh5 is an HDF5-based file format defined by the HERA collaboration, details in the uvh5 memo. Note that this is a somewhat new format, so it may evolve a bit but we will strive to make future versions backwards compatible with the current format. It is probably not compatible with other interferometric HDF5 files defined by other groups.
- FHD (read-only support, tested against MWA and PAPER data)
- MIR (read-only support, though experimental write functions are available, tested against SMA data)
- MWA correlator FITS files (read-only support, tested against Cotter outputs and FHD)
UVCal file formats
- calh5: a new format defined in pyuvdata, details to come in a forthcoming memo.
- Measurement Set calibration files (read and write, gains/delay/bandpass supported, beta version). Tested against a limited set of SMA, LWA, and VLA calibration files generated in CASA.
- calfits: a custom format defined in pyuvdata, details in the calfits_memo. Note that this format was recently defined and may change in coming versions, based on user needs. Consider it to be a beta version, but we will strive to make future versions backwards compatible with the current format.
- FHD calibration files (read-only support)
UVBeam file formats
- regularly gridded fits for both E-field and power beams
- non-standard HEALPix fits for both E-field and power beams (in an ImageHDU rather than a binary table to support frequency, polarization and E-field vector axes)
- read support for CST beam text files, with a defined yaml file format for metadata, details here: cst settings file
Under Development
- UVCal: object and calfits file format (beta version)
- UVBeam: object and beamfits file format (beta version)
- UVFlag: object and HDF5 file format. (beta version)
- Mir: object (part of UVData class) (beta version)
- MirParser: object and python interface for MIR file format (beta version)
Known Issues and Planned Improvements
- UVBeam: support phased-array antenna beams (e.g. MWA beams).
- UVFlag: Adding requires a high level knowledge of individual objects. (see issue #653)
For details see the issue log.
Community Guidelines
Contributions to this package to add new file formats or address any of the issues in the issue log are very welcome, as are bug reports and feature requests. Please see our guide on contributing
Telescopes
pyuvdata has been used with data from the following telescopes. If you use it on data from a telescope we don't have listed here please let us know how it went via an issue! We would like to make pyuvdata generally useful to the community for as many telescopes as possible.
- MWA
- HERA
- PAPER
- LWA
- ALMA
- VLA
- ATCA
- SMA
Versioning
We use a generation.major.minor
version number format. We use the generation
number for very significant improvements or major rewrites, the major
number
to indicate substantial package changes (intended to be released every 3-4 months)
and the minor
number to release smaller incremental updates (intended to be
released approximately monthly and which usually do not include breaking API
changes). We do our best to provide a significant period (usually 2 major
generations) of deprecation warnings for all breaking changes to the API.
We track all changes in our changelog.
History
pyuvdata was originally developed in the low frequency 21cm community to support the development of and interchange of data between calibration and foreground subtraction pipelines. Particular focus has been paid to supporting drift and phased array modes.
Citation
Please cite pyuvdata by citing our JOSS paper:
Hazelton et al, (2017), pyuvdata: an interface for astronomical interferometeric datasets in python, Journal of Open Source Software, 2(10), 140, doi:10.21105/joss.00140
Installation
Simple installation via conda is available for users, developers should follow the directions under Developer Installation below.
For simple installation, the latest stable version is available via conda
(preferred: conda install -c conda-forge pyuvdata
) or pip (pip install pyuvdata
).
There are some optional dependencies that are required for specific functionality, which will not be installed automatically by conda or pip. See Dependencies for details on installing optional dependencies.
Dependencies
Required:
- astropy >= 6.0
- docstring_parser>=0.15
- h5py >= 3.4
- numpy >= 1.23
- pyerfa >= 2.0.1.1
- python >= 3.10
- pyyaml >= 5.4.1
- scipy >= 1.8
- setuptools_scm >= 8.1
Optional:
- astropy-healpix >= 1.0.2 (for working with beams in HEALPix formats)
- astroquery >= 0.4.4 (for enabling phasing to ephemeris objects using JPL-Horizons)
- hdf5plugin >= 3.2.0 (for enabling bitshuffle and other hdf5 compression filters in uvh5 files)
- lunarsky >=0.2.5 (for working with simulated datasets for lunar telescopes)
- novas and novas_de405 (for using the NOVAS library for astrometry)
- python-casacore >= 3.5.2 (for working with CASA measurement sets)
The numpy and astropy versions are important, so make sure these are up to date.
We suggest using conda to install all the dependencies. If you want to install
python-casacore and astropy-healpix, you'll need to add conda-forge as a channel
(conda config --add channels conda-forge
).
If you do not want to use conda, the packages are also available on PyPI
(python-casacore may require more effort, see details for that package below).
You can install the optional dependencies via pip by specifying an option
when you install pyuvdata, as in pip install pyuvdata[healpix]
which will install all the required packages for using the HEALPix functionality
in pyuvdata. The options that can be passed in this way are:
[astroquery
, casa
, cst
, hdf5_compression
, healpix
, lunar
, novas
, all
, test
,
doc
, dev
]. The first set (astroquery
, casa
, cst
, hdf5_compression
,
healpix
, lunar
, novas
) enable various specific functionality while all
will install all
optional dependencies. The last three (test
, doc
, dev
) may be useful for developers
of pyuvdata.
Installing python-casacore
python-casacore requires the casacore c++ libraries. It can be installed easily
using conda (python-casacore
on conda-forge).
If you do not want to use conda, the casacore c++ libraries are available for ubuntu through the kern suite. On OSX, casacore is available through the ska-sa brew tap. The python-casacore library (with manual install instructions) is available at https://github.com/casacore/python-casacore
Developer Installation
Clone the repository using
git clone https://github.com/RadioAstronomySoftwareGroup/pyuvdata.git
Navigate into the pyuvdata directory and run pip install .
(note that python setup.py install
does not work).
Note that this will attempt to automatically install any missing dependencies.
If you use anaconda or another package manager you might prefer to first install
the dependencies as described in Dependencies.
To install without dependencies, run pip install --no-deps .
To compile the binary extension modules such that you can successfully run
import pyuvdata
from the top-level directory of your Git checkout, run:
python setup.py build_ext --inplace
If you want to do development on pyuvdata, in addition to the other dependencies you will need the following packages:
- pytest >= 6.2
- pytest-cases >= 3.8.3
- pytest-cov
- cython >=3.0
- coverage
- pre-commit
- matplotlib
- sphinx
- pypandoc
One other package, pytest-xdist, is not required, but can be used to speed up running
the test suite by running tests in parallel. To use it call pytest with the
-n auto
option.
One way to ensure you have all the needed packages is to use the included
environment.yaml
file to create a new environment that will
contain all the optional dependencies along with dependencies required for
testing and development (conda env create -f environment.yaml
).
Alternatively, you can specify test
, doc
, or dev
when installing pyuvdata
(as in pip install pyuvdata[dev]
) to install the packages needed for testing
(including coverage and linting) and documentation development;
dev
includes everything in test
and doc
.
To use pre-commit to prevent committing code that does not follow our style, you'll
need to run pre-commit install
in the top level pyuvdata
directory.
Tests
Uses the pytest
package to execute test suite.
From the source pyuvdata directory run pytest
or python -m pytest
.
Testing of UVFlag
module requires the pytest-cases
plug-in.
API
The primary interface to data from python is via the UVData object. It provides import functionality from all supported file formats (UVFITS, Miriad, UVH5, FHD, CASA measurement sets, SMA Mir, MWA correlator FITS) and export to UVFITS, Miriad, CASA measurement sets and UVH5 formats and can be interacted with directly. Similarly, the primary calibration, beam, and flag interfaces are via the UVCal, UVBeam, and UVflag objects. The attributes of the UVData, UVCal, UVBeam, and UVFlag objects are described in the UVData Parameters, UVCal Parameters, UVBeam Parameters and UVFlag Parameters pages on ReadTheDocs.
Maintainers
pyuvdata is maintained by the RASG Managers, which currently include:
- Adam Beardsley (Winona State University)
- Bryna Hazelton (University of Washington)
- Garrett "Karto" Keating (Smithsonian Astrophysical Observatory)
- Daniel Jacobs (Arizona State University)
- Matt Kolopanis (Arizona State University)
- Paul La Plante (University of Nevada, Las Vegas)
- Jonathan Pober (Brown University)
Please use the channels discussed in the guide on contributing for code-related discussions. You can contact us privately if needed at rasgmanagers@gmail.com.
Acknowledgments
Support for pyuvdata was provided by NSF awards #1835421 and #1835120.
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