[ascl:2107.018]
ART: A Reconstruction Tool
ART reconstructs log-probability distributions using Gaussian processes. It requires an existing MCMC chain or similar set of samples from a probability distribution, including the log-probabilities. Gaussian process regression is used for interpolating the log-probability for the rescontruction, allowing for easy resampling, importance sampling, marginalization, testing different samplers, investigating chain convergence, and other operations.
[ascl:1901.003]
CCL: Core Cosmology Library
Chisari, Nora Elisa;
Alonso, David;
Krause, Elisabeth;
Leonard, C. Daniellle;
Bull, Philip;
Neveu, Jérémy;
Villarreal, Antonia Sierra;
Singh, Sukhdeep;
McClintock, Thomas;
Ellison, John;
Du, Zilong;
Zuntz, Joe;
Mead, Alexander;
Joudaki, Shahab;
Lorenz, Christiane S.;
Troester, Tilman;
Sanchez, Javier;
Lanusse, Francois;
Ishak, Mustapha;
Hlozek, Renée;
Blazek, Jonathan;
Campagne, Jean-Eric;
Almoubayyed, Husni;
Eifler, Tim;
Kirby, Matthew;
Kirkby, David;
Plaszczynski, Stéphane;
Slosar, Anze;
Vrastil, Michal;
Wagoner, Erika L.
The Core Cosmology Library (CCL) computes basic cosmological observables and provides predictions for many cosmological quantities, including distances, angular power spectra, correlation functions, halo bias and the halo mass function through state-of-the-art modeling prescriptions. Fiducial specifications for the expected galaxy distributions for the Large Synoptic Survey Telescope (LSST) are also included, together with the capability of computing redshift distributions for a user-defined photometric redshift model. Predictions for correlation functions of galaxy clustering, galaxy-galaxy lensing and cosmic shear are within a fraction of the expected statistical uncertainty of the observables for the models and in the range of scales of interest to LSST. CCL is written in C and has a python interface.