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Reliable and resource preserving emulation for Bayesian model inference

<!--HTML-->As a result of the observed discrepancies within the $\Lambda \mathrm{CDM}$ model, a lot of work is being done to reconcile the observations from the early and late universe with new cosmological models. The resulting model testing is often based on inference algorithms that depend...

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Autor principal: Günther, Sven
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2860690
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author Günther, Sven
author_facet Günther, Sven
author_sort Günther, Sven
collection CERN
description <!--HTML-->As a result of the observed discrepancies within the $\Lambda \mathrm{CDM}$ model, a lot of work is being done to reconcile the observations from the early and late universe with new cosmological models. The resulting model testing is often based on inference algorithms that depend on a large number of computationally intensive simulations that conclude in large computational efforts. In our work we show that it is possible to substantially reduce the number of computations by emulating the simulation and interpolating between individual simulations. We demonstrate this by emulating the widely used linearized Boltzmann Einstein solver $\mathrm{CLASS}$ utilizing cosmology inspired neural networks. This intuition of the underlying physical effects allows us to keep the network sizes shallow and lightweight which results in fast evaluation and training. Additionally we use dynamic switching between the emulator and the full simulation to keep the used parameter range of the emulator as narrow as possible, still remaining accurate in the most relevant parameter region. This results in small training sets and ,thus, a faster adoption and training of this emulator for new models of interest. The code with example scripts on usage is publicly available under the name $\mathrm{CLASSNET}$.
id cern-2860690
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28606902023-06-02T21:37:31Zhttp://cds.cern.ch/record/2860690engGünther, SvenReliable and resource preserving emulation for Bayesian model inferenceThird EuCAPT Annual SymposiumEucapt Conferences<!--HTML-->As a result of the observed discrepancies within the $\Lambda \mathrm{CDM}$ model, a lot of work is being done to reconcile the observations from the early and late universe with new cosmological models. The resulting model testing is often based on inference algorithms that depend on a large number of computationally intensive simulations that conclude in large computational efforts. In our work we show that it is possible to substantially reduce the number of computations by emulating the simulation and interpolating between individual simulations. We demonstrate this by emulating the widely used linearized Boltzmann Einstein solver $\mathrm{CLASS}$ utilizing cosmology inspired neural networks. This intuition of the underlying physical effects allows us to keep the network sizes shallow and lightweight which results in fast evaluation and training. Additionally we use dynamic switching between the emulator and the full simulation to keep the used parameter range of the emulator as narrow as possible, still remaining accurate in the most relevant parameter region. This results in small training sets and ,thus, a faster adoption and training of this emulator for new models of interest. The code with example scripts on usage is publicly available under the name $\mathrm{CLASSNET}$.oai:cds.cern.ch:28606902023
spellingShingle Eucapt Conferences
Günther, Sven
Reliable and resource preserving emulation for Bayesian model inference
title Reliable and resource preserving emulation for Bayesian model inference
title_full Reliable and resource preserving emulation for Bayesian model inference
title_fullStr Reliable and resource preserving emulation for Bayesian model inference
title_full_unstemmed Reliable and resource preserving emulation for Bayesian model inference
title_short Reliable and resource preserving emulation for Bayesian model inference
title_sort reliable and resource preserving emulation for bayesian model inference
topic Eucapt Conferences
url http://cds.cern.ch/record/2860690
work_keys_str_mv AT gunthersven reliableandresourcepreservingemulationforbayesianmodelinference
AT gunthersven thirdeucaptannualsymposium