tesscube
is a package designed to help you obtain TESS data by cutting it out of the FFI cubes at the Barbara A. Mikulski Archive for Space Telescopes (MAST).
tesscube
works with data that is available in the cloud, and will return TESS data in formats similar to the NASA TESS official mission products. You do not need any login credentials to use tesscube, and can use this tool by pip installing either on your local machine or in the cloud.
Note
Data formats tesscube will return astropy native objects, including astropy.fits.HDUList objects, and astropy.wcs.WCS objects. You can work with these directly, or load them into lightkurve.
The easiest way to install tesscube
and all of its dependencies is to use the pip
command.
To install tesscube
, run the following command in a terminal window:
$ python -m pip install tesscube --upgrade
The --upgrade
flag is optional, but recommended if you already
have tesscube
installed and want to upgrade to the latest version.
Depending on the specific Python environment, you may need to replace python
with the correct Python interpreter, e.g., python3
.
You can work with an FFI cube by loading it using a sector, camera, and CCD number.
from tesscube import TESSCube
cube = TESSCube(sector=1, camera=1, ccd=4)
You can obtain an FFI image by indexing into a cube
from tesscube import TESSCube
cube = TESSCube(sector=1, camera=1, ccd=4)
ffi = cube[300]
This will return an astropy.fits.HDUList
You can obtain a TPF in two ways, either you can either pass a pixel position
from tesscube import TESSCube
from astropy.coordinates import SkyCoord
corner = (1282, 1750)
cube = TESSCube(sector=1, camera=1, ccd=4)
tpf = cube.get_tpf(corner, shape=(10, 11))
Or you can pass an astropy SkyCoord object containing the RA and Dec of the target
from tesscube import TESSCube
from astropy.coordinates import SkyCoord
coord = SkyCoord.from_name("AU Mic")
cube = TESSCube(sector=1, camera=1, ccd=4)
tpf = cube.get_tpf(coord, shape=(10, 11))
Alternatively, you can index into the cube like so:
from tesscube import TESSCube
cube = TESSCube(sector=1, camera=1, ccd=4)
tpf = cube[:, 401:410, 503:510]
Both will return an astropy.fits.HDUList, with a file format similar to the official mission products.
You can obtain a lower time resolution by either passing in a frame_bin parameter, which will downsample the resultant TPF,
from tesscube import TESSCube
from astropy.coordinates import SkyCoord
corner = (1282, 1750)
cube = TESSCube(sector=1, camera=1, ccd=4)
tpf = cube.get_tpf(corner, shape=(10, 11), frame_bin=10)
Or you can slice the cube, which will return a downsampled TPF
from tesscube import TESSCube
cube = TESSCube(sector=1, camera=1, ccd=4)
tpf = cube[::10, 401:410, 503:510]
Both will return an astropy.fits.HDUList, with a file format similar to the official mission products, with the time resolution reduced by a factor of 10.
tesscube
is an open-source, community driven package.
We welcome users to contribute and develop new features for lksearch.
For further information, please see the Lightkurve Community guidelines.
If you find tesscube
useful in your research, please cite it and give us a GitHub star!
If you use Lightkurve for work or research presented in a publication, we request the following acknowledgment or citation:
This research made use of Lightkurve, a Python package for Kepler and TESS data analysis (Lightkurve Collaboration, 2018).
See full citation instuctions, including dependencies, in the Lightkurve documentation.
tesscube
is an open source community project created by the TESS Science Support Center.
The best way to contact us is to open an issue or to e-mail tesshelp@bigbang.gsfc.nasa.gov.
- Please include a self-contained example that fully demonstrates your problem or question.
- Initial v1.0.0 release of tesscube.