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Faculty of Mathematics

 

Assistant Professor in Data Intensive Science in DAMTP and the IoA, working on AI for scientific discovery.

Research: Google Scholar

Group page: astroautomata.com


[quanta magazine]

 

Publications

Hierarchical Inference of the Lensing Convergence from Photometric Catalogs with Bayesian Graph Neural Networks
JW Park, S Birrer, M Ueland, M Cranmer, A Agnello, S Wagner-Carena, PJ Marshall, A Roodman, TLDES Collaboration
– The Astrophysical Journal
(2023)
953,
178
Interpretable Symbolic Regression for Data Science: Analysis of the 2022 Competition
FO de Franca, M Virgolin, M Kommenda, MS Majumder, M Cranmer, G Espada, L Ingelse, A Fonseca, M Landajuela, B Petersen, R Glatt, N Mundhenk, CS Lee, JD Hochhalter, DL Randall, P Kamienny, H Zhang, G Dick, A Simon, B Burlacu, J Kasak, M Machado, C Wilstrup, WG La Cava
(2023)
Interpretable Machine Learning for Science with PySR and SymbolicRegression.jl
M Cranmer
(2023)
The SZ flux-mass (Y–M) relation at low-halo masses: improvements with symbolic regression and strong constraints on baryonic feedback
D Wadekar, L Thiele, JC Hill, S Pandey, F Villaescusa-Navarro, DN Spergel, M Cranmer, D Nagai, D Anglés-Alcázar, S Ho, L Hernquist
– Monthly Notices of the Royal Astronomical Society
(2023)
522,
2628
The SZ flux-mass ($Y$-$M$) relation at low halo masses: improvements with symbolic regression and strong constraints on baryonic feedback
D Wadekar, L Thiele, JC Hill, S Pandey, F Villaescusa-Navarro, DN Spergel, M Cranmer, D Nagai, D Anglés-Alcázar, S Ho, L Hernquist
(2023)
Charting Galactic Accelerations with Stellar Streams and Machine Learning
J Nibauer, V Belokurov, M Cranmer, J Goodman, S Ho
(2023)
Augmenting astrophysical scaling relations with machine learning: Application to reducing the Sunyaev-Zeldovich flux-mass scatter.
D Wadekar, L Thiele, F Villaescusa-Navarro, JC Hill, M Cranmer, DN Spergel, N Battaglia, D Anglés-Alcázar, L Hernquist, S Ho
– Proceedings of the National Academy of Sciences of the United States of America
(2023)
120,
e2202074120
Augmenting astrophysical scaling relations with machine learning: application to reducing the Sunyaev-Zeldovich flux-mass scatter
D Wadekar, L Thiele, F Villaescusa-Navarro, JC Hill, M Cranmer, DN Spergel, N Battaglia, D Anglés-Alcázar, L Hernquist, S Ho
(2023)
Robust Simulation-Based Inference in Cosmology with Bayesian Neural Networks
P Lemos, M Cranmer, M Abidi, C Hahn, M Eickenberg, E Massara, D Yallup, S Ho
(2023)
Robust simulation-based inference in cosmology with Bayesian neural networks
P Lemos, M Cranmer, M Abidi, C Hahn, M Eickenberg, E Massara, D Yallup, S Ho
– Machine Learning Science and Technology
(2023)
4,
01LT01
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Research Group

Relativity and Gravitation

Room

B2.17