Search Results for author: Jonathan S. Gómez

Found 2 papers, 0 papers with code

A deep learning approach to halo merger tree construction

no code implementations31 May 2022 Sandra Robles, Jonathan S. Gómez, Adín Ramírez Rivera, Nelson D. Padilla, Diego Dujovne

A key ingredient for semi-analytic models (SAMs) of galaxy formation is the mass assembly history of haloes, encoded in a tree structure.

A Halo Merger Tree Generation and Evaluation Framework

no code implementations22 Jun 2019 Sandra Robles, Jonathan S. Gómez, Adín Ramírez Rivera, Jenny A. González, Nelson D. Padilla, Diego Dujovne

Our aim is to provide a new framework for halo merger tree generation that takes advantage of the results of large volume simulations, with a modest computational cost.

Generative Adversarial Network

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