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Automated Strong Gravitational Lens Modeling

Project description

PyAutoLens: Open-Source Strong Lensing

.. |nbsp| unicode:: 0xA0 :trim:

.. |code-style| image:: https://img.shields.io/badge/code%20style-black-000000.svg :target: https://github.com/psf/black

.. |arXiv| image:: https://img.shields.io/badge/arXiv-1708.07377-blue :target: https://arxiv.org/abs/1708.07377

|nbsp| |code-style| |nbsp| |arXiv|

Installation Guide <https://pyautolens.readthedocs.io/en/latest/installation/overview.html>_ | readthedocs <https://pyautolens.readthedocs.io/en/latest/index.html>_ | Overview on Binder <https://mybinder.org/v2/gh/Jammy2211/autolens_workspace/664a86aa84ddf8fdf044e2e4e7db21876ac1de91?filepath=overview.ipynb>_ | HowToLens <https://pyautolens.readthedocs.io/en/latest/howtolens/howtolens.html>_

When two or more galaxies are aligned perfectly down our line-of-sight, the background galaxy appears multiple times. This is called strong gravitational lensing and PyAutoLens makes it simple to model strong gravitational lenses, like this one:

.. image:: https://github.com/Jammy2211/PyAutoLens/blob/development/imageaxis.png

Getting Started

You can try PyAutoLens now by following the overview Jupyter Notebook on Binder <https://mybinder.org/v2/gh/Jammy2211/autolens_workspace/664a86aa84ddf8fdf044e2e4e7db21876ac1de91?filepath=overview.ipynb>_.

On readthedocs <https://pyautolens.readthedocs.io/>_ you'll find the installation guide, a complete overview of PyAutoLens's features, examples scripts, and the HowToLens Jupyter notebook tutorials <https://pyautolens.readthedocs.io/en/latest/howtolens/howtolens.html>_ which introduces new users to PyAutoLens.

API Overview

Lensing calculations are performed in PyAutoLens by building a Tracer object from LightProfile, MassProfile and Galaxy objects. Below, we create a simple strong lens system where a redshift 0.5 lens Galaxy with an EllipticalIsothermal MassProfile lenses a background source at redshift 1.0 with an EllipticalExponential LightProfile representing a disk.

.. code-block:: python

import autolens as al
import autolens.plot as aplt
from astropy import cosmology as cosmo

"""
To describe the deflection of light by mass, two-dimensional grids of (y,x) Cartesian
coordinates are used.
"""

grid = al.Grid2D.uniform(
    shape_native=(50, 50),
    pixel_scales=0.05,  # <- Conversion from pixel units to arc-seconds.
)

"""The lens galaxy has an EllipticalIsothermal MassProfile and is at redshift 0.5."""

mass = al.mp.EllipticalIsothermal(
    centre=(0.0, 0.0), elliptical_comps=(0.1, 0.05), einstein_radius=1.6
)

lens_galaxy = al.Galaxy(redshift=0.5, mass=mass)

"""The source galaxy has an EllipticalExponential LightProfile and is at redshift 1.0."""

disk = al.lp.EllipticalExponential(
    centre=(0.3, 0.2),
    elliptical_comps=(0.05, 0.25),
    intensity=0.05,
    effective_radius=0.5,
)

source_galaxy = al.Galaxy(redshift=1.0, disk=disk)

"""
We create the strong lens using a Tracer, which uses the galaxies, their redshifts
and an input cosmology to determine how light is deflected on its path to Earth.
"""

tracer = al.Tracer.from_galaxies(
    galaxies=[lens_galaxy, source_galaxy], cosmology=cosmo.Planck15
)

"""
We can use the Grid2D and Tracer to perform many lensing calculations, for example
plotting the image of the lensed source.
"""

tracer_plotter = aplt.TracerPlotter(tracer=tracer, grid=grid)
tracer_plotter.figures(image=True)

With PyAutoLens, you can begin modeling a lens in just a couple of minutes. The example below demonstrates a simple analysis which fits the lens galaxy's mass with an EllipticalIsothermal and the source galaxy's light with an EllipticalSersic.

.. code-block:: python

import autofit as af
import autolens as al
import autolens.plot as aplt

"""Load Imaging data of the strong lens from the dataset folder of the workspace."""

imaging = al.Imaging.from_fits(
    image_path="/path/to/dataset/image.fits",
    noise_map_path="/path/to/dataset/noise_map.fits",
    psf_path="/path/to/dataset/psf.fits",
    pixel_scales=0.1,
)

"""Create a mask for the data, which we setup as a 3.0" circle."""

mask = al.Mask2D.circular(
    shape_native=imaging.shape_native, pixel_scales=imaging.pixel_scales, radius=3.0
)

"""
We model the lens galaxy using an EllipticalIsothermal MassProfile and
the source galaxy using an EllipticalSersic LightProfile.
"""

lens_mass_profile = al.mp.EllipticalIsothermal
source_light_profile = al.lp.EllipticalSersic

"""
To setup these profiles as model components whose parameters are free & fitted for
we use the GalaxyModel class.
"""

lens_galaxy_model = al.GalaxyModel(redshift=0.5, mass=lens_mass_profile)
source_galaxy_model = al.GalaxyModel(redshift=1.0, disk=source_light_profile)

"""
To perform the analysis we set up a phase, which takes our galaxy models & fits
their parameters using a NonLinearSearch (in this case, Dynesty).
"""

phase = al.PhaseImaging(
    search=af.DynestyStatic(name="phase[example]",n_live_points=50),
    galaxies=dict(lens=lens_galaxy_model, source=source_galaxy_model),
)

"""
We pass the imaging dataset and mask to the phase's run function, fitting it
with the lens model & outputting the results (dynesty samples, visualization,
etc.) to hard-disk.
"""

result = phase.run(dataset=imaging, mask=mask)

"""
The results contain information on the fit, for example the maximum likelihood
model from the Dynesty parameter space search.
"""

print(result.samples.max_log_likelihood_instance)

Support

Support for installation issues, help with lens modeling and using PyAutoLens is available by raising an issue on the autolens_workspace GitHub page <https://github.com/Jammy2211/autolens_workspace/issues>. or joining the PyAutoLens Slack channel <https://pyautolens.slack.com/>, where we also provide the latest updates on PyAutoLens.

Slack is invitation-only, so if you'd like to join send an email <https://github.com/Jammy2211>_ requesting an invite.

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