Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
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U. Heintz | Davide Di Croce | Emanuele Usai | Bjorn Burkle | Meenakshi Narain | Michael Benjamin Andrews | Sergei Gleyzer | Manfred Paulini | Shravan Chaudhari
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