TL;DR
CosmoPower introduces neural emulators for cosmological power spectra, significantly accelerating parameter estimation in large-scale structure and CMB analyses without sacrificing accuracy, enabling rapid inference for upcoming surveys.
Contribution
It provides a suite of neural emulators that replace Boltzmann code computations, offering high accuracy and speed for cosmological parameter inference across various datasets.
Findings
Emulation error less than 0.4% for matter power spectra.
Achieves up to 10,000x speed-up in inference pipelines.
Successfully recovers fiducial cosmological constraints in tests.
Abstract
We present , a suite of neural cosmological power spectrum emulators providing orders-of-magnitude acceleration for parameter estimation from two-point statistics analyses of Large-Scale Structure (LSS) and Cosmic Microwave Background (CMB) surveys. The emulators replace the computation of matter and CMB power spectra from Boltzmann codes; thus, they do not need to be re-trained for different choices of astrophysical nuisance parameters or redshift distributions. The matter power spectrum emulation error is less than in the wavenumber range , for redshift . emulates CMB temperature, polarisation and lensing potential power spectra in the region of parameter space around the best fit values with an error of the expected shot noise for the forthcoming…
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