ajshajib/dolphin
Automated pipeline for lens modelling based on lenstronomy
This tool helps astrophysicists and astronomers automatically analyze astronomical images to understand gravitational lensing. It takes raw telescope image data, often across multiple color bands, and uses AI to build detailed models of how mass is distributed in galaxy-scale lens systems. The output is a precise model of the lens and source, useful for large-scale surveys.
Use this if you need an automated, efficient way to model large samples of galaxy-galaxy or galaxy-quasar gravitational lenses from multi-band astronomical imaging data.
Not ideal if you need a purely manual or highly customized modeling approach for a very small number of unique lens systems.
Stars
23
Forks
6
Language
Jupyter Notebook
License
BSD-3-Clause
Category
Last pushed
Mar 12, 2026
Commits (30d)
0
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