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TrackML : A Tracking Machine Learning Challenge
doi 10.22323/1.340.0159
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Date
August 2, 2019
Authors
Tobias Golling
Sabrina Amrouche
Moritz Kiehn
Paolo Calafiura
Steven Farrell
Heather M. Gray
Victor Estrade
Cécile Germain
Vava Gligorov
Isabelle Guyon
Mikhail Hushchyn
Andrey Ustyuzhanin
Vincenzo Innocente
Andreas Salzburger
Edward Moyse
David Rousseau
Yetkin Yilmaz
Jean-roch Vlimant
Publisher
Sissa Medialab
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