Developments in Performance and Portability for MadGraph5_aMC@NLO
October 20, 2022 Β· Declared Dead Β· π Proceedings of 41st International Conference on High Energy physics β PoS(ICHEP2022)
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Authors
Andrea Valassi, Taylor Childers, Laurence Field, Stefan HagebΓΆck, Walter Hopkins, Olivier Mattelaer, Nathan Nichols, Stefan Roiser, David Smith
arXiv ID
2210.11122
Category
physics.comp-ph
Cross-listed
cs.SE,
hep-ex,
hep-ph
Citations
15
Venue
Proceedings of 41st International Conference on High Energy physics β PoS(ICHEP2022)
Last Checked
2 months ago
Abstract
Event generators simulate particle interactions using Monte Carlo techniques, providing the primary connection between experiment and theory in experimental high energy physics. These software packages, which are the first step in the simulation worflow of collider experiments, represent approximately 5 to 20% of the annual WLCG usage for the ATLAS and CMS experiments. With computing architectures becoming more heterogeneous, it is important to ensure that these key software frameworks can be run on future systems, large and small. In this contribution, recent progress on porting and speeding up the Madgraph5_aMC@NLO event generator on hybrid architectures, i.e. CPU with GPU accelerators, is discussed. The main focus of this work has been in the calculation of scattering amplitudes and "matrix elements", which is the computational bottleneck of an event generation application. For physics processes limited to QCD leading order, the code generation toolkit has been expanded to produce matrix element calculations using C++ vector instructions on CPUs and using CUDA for NVidia GPUs, as well as using Alpaka, Kokkos and SYCL for multiple CPU and GPU architectures. Performance is reported in terms of matrix element calculations per time on NVidia, Intel, and AMD devices. The status and outlook for the integration of this work into a production release usable by the LHC experiments, with the same functionalities and very similar user interfaces as the current Fortran version, is also described.
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