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JOURNALS // Numerical methods and programming // Archive

Num. Meth. Prog., 2024 Volume 25, special issue, Pages 30–45 (Mi vmp1141)

Methods and algorithms of computational mathematics and their applications

Feynman integral reduction: balanced reconstruction of sparse rational functions and implementation on supercomputers in a co-design approach

A. V. Smirnova, Mao Zengb

a Lomonosov Moscow State University, Research Computing Center
b University of Edinburgh, Higgs Centre for Theoretical Physics

Abstract: Integration-by-parts (IBP) reduction is one of the essential steps in evaluating Feynman integrals. A modern approach to IBP reduction uses modular arithmetic evaluations at the specific numerical values of parameters with subsequent reconstruction of the analytic rational coefficients. Due to the large number of sample points needed, problems at the frontier of science require an application of supercomputers. In this article, we present a rational function reconstruction method that fully takes advantage of sparsity, combining the balanced reconstruction method and the Zippel method. Additionally, to improve the efficiency of the finite-field IBP reduction runs, at each run several numerical probes are computed simultaneously, which allows to decrease the resource overhead. We describe what performance issues one encounters on the way to an efficient implementation on supercomputers, and how one should co-design the algorithm and the supercomputer infrastructure. We present characteristic examples of IBP-reduction in the case of massless two-loop fourand five-point Feynman diagrams using a development version of FIRE and give illustrative examples mimicking the reduction of coefficients appearing in scattering amplitudes for post-Minkowskian gravitational binary dynamics.

Keywords: Feynman integrals, computer algebra, calculation optimization, supercomputer codesign.

Received: 08.10.2024

Language: English

DOI: 10.26089/NumMet.2024s03



© Steklov Math. Inst. of RAS, 2025