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arxiv: 2008.09210 · v1 · pith:MYJTXCCT · submitted 2020-08-20 · physics.comp-ph · hep-ex

Studying the potential of Graphcore IPUs for applications in Particle Physics

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classification physics.comp-ph hep-ex
keywords ipusparticlephysicsapplicationsgpusgraphcoreimplementedadditionally
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This paper presents the first study of Graphcore's Intelligence Processing Unit (IPU) in the context of particle physics applications. The IPU is a new type of processor optimised for machine learning. Comparisons are made for neural-network-based event simulation, multiple-scattering correction, and flavour tagging, implemented on IPUs, GPUs and CPUs, using a variety of neural network architectures and hyperparameters. Additionally, a K\'{a}lm\'{a}n filter for track reconstruction is implemented on IPUs and GPUs. The results indicate that IPUs hold considerable promise in addressing the rapidly increasing compute needs in particle physics.

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