LINNA: Likelihood Inference Neural Network Accelerator
Chun-Hao To, Eduardo Rozo, Elisabeth Krause, Hao-Yi Wu, Risa H., Wechsler, Andr\'es N. Salcedo

TL;DR
LINNA is a neural network-based accelerator that significantly reduces the computational costs of Bayesian posterior inference in cosmology, enabling faster, more environmentally friendly analyses without sacrificing accuracy.
Contribution
The paper introduces LINNA, a neural network surrogate model that accelerates cosmological posterior inference, reducing costs and environmental impact while maintaining accuracy.
Findings
LINNA reduces computational costs by a factor of 8-50.
LINNA accurately reproduces DES Y1 cosmological constraints.
LINNA enables efficient sampling for LSST Y10 analyses.
Abstract
Bayesian posterior inference of modern multi-probe cosmological analyses incurs massive computational costs. For instance, depending on the combinations of probes, a single posterior inference for the Dark Energy Survey (DES) data had a wall-clock time that ranged from 1 to 21 days using a state-of-the-art computing cluster with 100 cores. These computational costs have severe environmental impacts and the long wall-clock time slows scientific productivity. To address these difficulties, we introduce LINNA: the Likelihood Inference Neural Network Accelerator. Relative to the baseline DES analyses, LINNA reduces the computational cost associated with posterior inference by a factor of 8--50. If applied to the first-year cosmological analysis of Rubin Observatory's Legacy Survey of Space and Time (LSST Y1), we conservatively estimate that LINNA will save more than US \300,000$ on energy…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
