2024
DOI: 10.1088/1748-0221/19/07/p07034
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Investigating resource-efficient neutron/gamma classification ML models targeting eFPGAs

Jyothisraj Johnson,
Billy Boxer,
Tarun Prakash
et al.

Abstract: There has been considerable interest and resulting progress in implementing machine learning (ML) models in hardware over the last several years from the particle and nuclear physics communities. A big driver has been the release of the Python package, hls4ml, which has enabled porting models specified and trained using Python ML libraries to register transfer level (RTL) code. So far, the primary end targets have been commercial field-programmable gate arrays (FPGAs) or synthesized custom blocks… Show more

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