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Fast inference of Boosted Decision Trees in FPGAs for particle physics

S. Summers, Giuseppe Di Guglielmo, J. Duarte, P. Harris, Duc Hoang, S. Jindariani, Edward Kreinar, Vladimir Lončar, J. Ngadiuba, M. Pierini, Dylan Rankin, N. V. Tran, Z. Wu

2020Journal of Instrumentation75 citationsDOIOpen Access PDF

Abstract

We describe the implementation of Boosted Decision Trees in the hls4ml library, which allows the translation of a trained model into FPGA firmware through an automated conversion process. Thanks to its fully on-chip implementation, hls4ml performs inference of Boosted Decision Tree models with extremely low latency. With a typical latency less than 100 ns, this solution is suitable for FPGA-based real-time processing, such as in the Level-1 Trigger system of a collider experiment. These developments open up prospects for physicists to deploy BDTs in FPGAs for identifying the origin of jets, better reconstructing the energies of muons, and enabling better selection of rare signal processes.

Topics & Concepts

FirmwareField-programmable gate arrayInferenceComputer scienceLatency (audio)Decision treeParticle physicsEmbedded systemArtificial intelligenceComputer hardwarePhysicsTelecommunicationsParticle physics theoretical and experimental studiesParticle Detector Development and PerformanceNeutrino Physics Research
Fast inference of Boosted Decision Trees in FPGAs for particle physics | Litcius