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Parallelized inference for gravitational-wave astronomy

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posted on 2024-07-13, 09:43 authored by Colm Talbot, Rory Smith, Eric Thrane, Gregory B. Poole
Bayesian inference is the workhorse of gravitational-wave astronomy, for example, determining the mass and spins of merging black holes, revealing the neutron star equation of state, and unveiling the population properties of compact binaries. The science enabled by these inferences comes with a computational cost that can limit the questions we are able to answer. This cost is expected to grow. As detectors improve, the detection rate will go up, allowing less time to analyze each event. Improvement in low-frequency sensitivity will yield longer signals, increasing the number of computations per event. The growing number of entries in the transient catalog will drive up the cost of population studies. While Bayesian inference calculations are not entirely parallelizable, key components are embarrassingly parallel: calculating the gravitational waveform and evaluating the likelihood function. Graphical processor units (GPUs) are adept at such parallel calculations. We report on progress porting gravitational-wave inference calculations to GPUs. Using a single code - which takes advantage of GPU architecture if it is available - we compare computation times using modern GPUs (NVIDIA P100) and CPUs (Intel Gold 6140). We demonstrate speed-ups of ∼50× for compact binary coalescence gravitational waveform generation and likelihood evaluation, and more than 100× for population inference within the lifetime of current detectors. Further improvement is likely with continued development. Our python-based code is publicly available and can be used without familiarity with the parallel computing platform, CUDA.

Funding

ARC Centre of Excellence for Gravitational Wave Discovery

Australian Research Council

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Gravitational-wave astronomy: detection and beyond

Australian Research Council

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History

Available versions

PDF (Published version)

ISSN

2470-0010

Journal title

Physical Review D

Volume

100

Issue

4

Article number

article no. 043030

Publisher

American Physical Society (APS)

Copyright statement

Copyright © 2019 American Physical Society. The published version is reproduced in accordance with the copyright policy of the publisher.

Language

eng

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