Feb. 9, 2024, 5:43 a.m. | Matthew Ho Deaglan J. Bartlett Nicolas Chartier Carolina Cuesta-Lazaro Simon Ding Axel Lapel Pablo Lem

cs.LG updates on arXiv.org arxiv.org

This paper presents the Learning the Universe Implicit Likelihood Inference (LtU-ILI) pipeline, a codebase for rapid, user-friendly, and cutting-edge machine learning (ML) inference in astrophysics and cosmology. The pipeline includes software for implementing various neural architectures, training schema, priors, and density estimators in a manner easily adaptable to any research workflow. It includes comprehensive validation metrics to assess posterior estimate coverage, enhancing the reliability of inferred results. Additionally, the pipeline is easily parallelizable, designed for efficient exploration of modeling hyperparameters. …

astro-ph.co astro-ph.ga astro-ph.im cs.lg

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