gptools: Scalable Gaussian Process Inference with Stan
Dublin Core
Title
gptools: Scalable Gaussian Process Inference with Stan
Description
Gaussian processes (GPs) are sophisticated distributions to model functional data. Whilst theoretically appealing, they are computationally cumbersome except for small datasets. We implement two methods for scaling GP inference in Stan: First, a general sparse approximation using a directed acyclic dependency graph; second, a fast, exact method for regularly spaced data modeled by GPs with stationary kernels using the fast Fourier transform. Based on benchmark experiments, we offer guidance for practitioners to decide between different methods and parameterizations. We consider two real-world examples to illustrate the package. The implementation follows Stan's design and exposes performant inference through a familiar interface. Full posterior inference for ten thousand data points is feasible on a laptop in less than 20 seconds. Details on how to get started using the popular interfaces cmdstanpy for Python and cmdstanr for R are provided.
Creator
Till Hoffmann, Jukka-Pekka Onnela
Source
https://www.jstatsoft.org/article/view/v112i02
Publisher
OJS/PKP
Date
29 MARET 2025
Contributor
FAJAR BAGUS W
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Till Hoffmann, Jukka-Pekka Onnela, “gptools: Scalable Gaussian Process Inference with Stan,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/9836.