Galmoss: A package for GPU-accelerated Galaxy Profile Fitting

Autor: Chen, Mi, de Souza, Rafael S., Xu, Quanfeng, Shen, Shiyin, Chies-Santos, Ana L., Ye, Renhao, Canossa-Gosteinski, Marco A., Cong, Yanping
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: We introduce galmoss, a python-based, torch-powered tool for two-dimensional fitting of galaxy profiles. By seamlessly enabling GPU parallelization, galmoss meets the high computational demands of large-scale galaxy surveys, placing galaxy profile fitting in the LSST-era. It incorporates widely used profiles such as the S\'ersic, Exponential disk, Ferrer, King, Gaussian, and Moffat profiles, and allows for the easy integration of more complex models. Tested on 8,289 galaxies from the Sloan Digital Sky Survey (SDSS) g-band with a single NVIDIA A100 GPU, galmoss completed classical S\'ersic profile fitting in about 10 minutes. Benchmark tests show that galmoss achieves computational speeds that are 6 $\times$ faster than those of default implementations.
Comment: 12 pages, 8 figures, Accepted for publication in A&C
Databáze: arXiv