[ascl:2312.015]
SUNBIRD: Neural-network-based models for galaxy clustering
Cuesta-Lazaro, Carolina;
Paillas, Enrique;
Yuan, Sihan;
Cai, Yan-Chuan;
Nadathur, Seshadri;
Percival, Will J.;
Beutler, Florian;
de Mattia, Arnaud;
Eisenstein, Daniel;
Forero-Sanchez, Daniel;
Padilla, Nelson;
Pinon, Mathilde;
Ruhlmann-Kleider, Vanina;
Sánchez, Ariel G.;
Valogiannis, Georgios;
Zarrouk, Pauline
SUNBIRD trains neural-network-based models for galaxy clustering. It also incorporates pre-trained emulators for different summary statistics, including galaxy two-point correlation function, density-split clustering statistics, and old-galaxy cross-correlation function. These models have been trained on mock galaxy catalogs, and were calibrated to work for specific samples of galaxies. SUNBIRD implements routines with PyTorch to train new neural-network emulators.
[ascl:2106.018]
picca: Package for Igm Cosmological-Correlations Analyses
du Mas des Bourboux, Hélion;
Rich, James;
Font-Ribera, Andreu;
de Sainte Agathe, Victoria;
Farr, James;
Etourneau, Thomas;
Le Goff, Jean-Marc;
Cuceu, Andrei;
Balland, Christophe;
Bautista, Julian E.;
Blomqvist, Michael;
Brinkmann, Jonathan;
Brownstein, Joel R.;
Chabanier, Solène;
Chaussidon, Edmond;
Dawson, Kyle;
González-Morales, Alma X.;
Guy, Julien;
Lyke, Brad W.;
de la Macorra, Axel;
Mueller, Eva-Maria;
Myers, Adam D.;
Nitschelm, Christian;
Muñoz Gutiérrez, Andrea;
Palanque-Delabrouille, Nathalie;
Parker, James;
Percival, Will J.;
Pérez-Ràfols, Ignasi;
Petitjean, Patrick;
Pieri, Matthew M.;
Ravoux, Corentin;
Rossi, Graziano;
Schneider, Donald P.;
Seo, Hee-Jong;
Slosar, Anže;
Stermer, Julianna;
Vivek, M.;
Yèche, Christophe;
Youles, Samantha
picca fits continua of forests, computes correlation functions (1D and 3D) and power-spectra (1D), computes covariance matrices, and fits models for the correlation functions. This set of tools is used for the analysis of the Lyman-alpha forest sample from the extended Baryon Oscillation Spectroscopic Survey (eBOSS) and the Dark Energy Spectroscopic Instrument (DESI).
[ascl:2009.022]
Harmonia: Hybrid-basis inference for large-scale galaxy clustering
Harmonia combines clustering statistics decomposed in spherical and Cartesian Fourier bases for large-scale galaxy clustering likelihood analysis. Optimal weighting schemes for spherical Fourier analysis can also be readily implemented using the code.
[ascl:1507.004]
L-PICOLA: Fast dark matter simulation code
L-PICOLA generates and evolves a set of initial conditions into a dark matter field and can include primordial non-Gaussianity in the simulation and simulate the past lightcone at run-time, with optional replication of the simulation volume. It is a fast, distributed-memory, planar-parallel code. L-PICOLA is extremely useful for both current and next generation large-scale structure surveys.