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Main Authors: Günther, Sven, Balkenhol, Lennart, Fidler, Christian, Khalife, Ali Rida, Lesgourgues, Julien, Mosbech, Markus R., Sharma, Ravi Kumar
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.13183
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author Günther, Sven
Balkenhol, Lennart
Fidler, Christian
Khalife, Ali Rida
Lesgourgues, Julien
Mosbech, Markus R.
Sharma, Ravi Kumar
author_facet Günther, Sven
Balkenhol, Lennart
Fidler, Christian
Khalife, Ali Rida
Lesgourgues, Julien
Mosbech, Markus R.
Sharma, Ravi Kumar
contents In this work, we present OLÉ, a new online learning emulator for use in cosmological inference. The emulator relies on Gaussian Processes and Principal Component Analysis for efficient data compression and fast evaluation. Moreover, OLÉ features an automatic error estimation for optimal active sampling and online learning. All training data is computed on-the-fly, making the emulator applicable to any cosmological model or dataset. We illustrate the emulator's performance on an array of cosmological models and data sets, showing significant improvements in efficiency over similar emulators without degrading accuracy compared to standard theory codes. We find that OLÉ is able to considerably speed up the inference process, increasing the efficiency by a factor of $30-350$, including data acquisition and training. Typically the runtime of the likelihood code becomes the computational bottleneck. Furthermore, OLÉ emulators are differentiable; we demonstrate that, together with the differentiable likelihoods available in the $\texttt{candl}$ library, we can construct a gradient-based sampling method which yields an additional improvement factor of 4. OLÉ can be easily interfaced with the popular samplers $\texttt{MontePython}$ and $\texttt{Cobaya}$, and the Einstein-Boltzmann solvers $\texttt{CLASS}$ and $\texttt{CAMB}$. OLÉ is publicly available at https://github.com/svenguenther/OLE .
format Preprint
id arxiv_https___arxiv_org_abs_2503_13183
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OLÉ -- Online Learning Emulation in Cosmology
Günther, Sven
Balkenhol, Lennart
Fidler, Christian
Khalife, Ali Rida
Lesgourgues, Julien
Mosbech, Markus R.
Sharma, Ravi Kumar
Cosmology and Nongalactic Astrophysics
Instrumentation and Methods for Astrophysics
In this work, we present OLÉ, a new online learning emulator for use in cosmological inference. The emulator relies on Gaussian Processes and Principal Component Analysis for efficient data compression and fast evaluation. Moreover, OLÉ features an automatic error estimation for optimal active sampling and online learning. All training data is computed on-the-fly, making the emulator applicable to any cosmological model or dataset. We illustrate the emulator's performance on an array of cosmological models and data sets, showing significant improvements in efficiency over similar emulators without degrading accuracy compared to standard theory codes. We find that OLÉ is able to considerably speed up the inference process, increasing the efficiency by a factor of $30-350$, including data acquisition and training. Typically the runtime of the likelihood code becomes the computational bottleneck. Furthermore, OLÉ emulators are differentiable; we demonstrate that, together with the differentiable likelihoods available in the $\texttt{candl}$ library, we can construct a gradient-based sampling method which yields an additional improvement factor of 4. OLÉ can be easily interfaced with the popular samplers $\texttt{MontePython}$ and $\texttt{Cobaya}$, and the Einstein-Boltzmann solvers $\texttt{CLASS}$ and $\texttt{CAMB}$. OLÉ is publicly available at https://github.com/svenguenther/OLE .
title OLÉ -- Online Learning Emulation in Cosmology
topic Cosmology and Nongalactic Astrophysics
Instrumentation and Methods for Astrophysics
url https://arxiv.org/abs/2503.13183