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dlcp21:program [24/08/2021 20:19]
kryukov
dlcp21:program [24/08/2021 20:22] (current)
kryukov
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 ^^ 11:00-11:30  ^ Coffee break ^ || ^^ 11:00-11:30  ^ Coffee break ^ ||
 || 11:30-12:00  | **P.Koundal**, IAP , KIT Karlsruhe \\ [[dlcp21:abstracts#Graph Neural Networks and application for Cosmic-Ray Analysis|Graph Neural Networks and application for Cosmic-Ray Analysis]]|{{ :dlcp21:dlcp21-koundal.pdf }} || || 11:30-12:00  | **P.Koundal**, IAP , KIT Karlsruhe \\ [[dlcp21:abstracts#Graph Neural Networks and application for Cosmic-Ray Analysis|Graph Neural Networks and application for Cosmic-Ray Analysis]]|{{ :dlcp21:dlcp21-koundal.pdf }} ||
-|| 12:00-12:15  | **E.Gres**, ISU, Irkutsk \\  [[dlcp21:abstracts#The preliminary results on analysis of TAIGA-IACT images using Convolutional Neural Networks|The preliminary results on analysis of TAIGA-IACT images using Convolutional Neural Networks]]|{{ :dlcp21:dlcp2021-gres.pdf }} ||+|| 12:00-12:15  | **E.Gres**, ISU, Irkutsk \\ A.Kryukov, SINP MSU \\  [[dlcp21:abstracts#The preliminary results on analysis of TAIGA-IACT images using Convolutional Neural Networks|The preliminary results on analysis of TAIGA-IACT images using Convolutional Neural Networks]]|{{ :dlcp21:dlcp2021-gres.pdf }} ||
 || 12:15-12:30  | **M.Vasyutina**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Gamma/hadron separation for a ground based IACT (imaging atmospheric Cherenkov telescope) in experiment TAIGA using machine learning methods Random Forest|Gamma/hadron separation for a ground based IACT (imaging atmospheric Cherenkov telescope) in experiment TAIGA using machine learning methods Random Forest]]|{{ :dlcp21:dlcp21-vasyutina.pdf }} || || 12:15-12:30  | **M.Vasyutina**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Gamma/hadron separation for a ground based IACT (imaging atmospheric Cherenkov telescope) in experiment TAIGA using machine learning methods Random Forest|Gamma/hadron separation for a ground based IACT (imaging atmospheric Cherenkov telescope) in experiment TAIGA using machine learning methods Random Forest]]|{{ :dlcp21:dlcp21-vasyutina.pdf }} ||
 || 12:30-12:45  | **S.Polyakov**, SINP MSU \\ [[dlcp21:abstracts#Performance of convolutional neural networks processing simulated IACT images in the TAIGA experiment|Performance of convolutional neural networks processing simulated IACT images in the TAIGA experiment]]|{{ :dlcp21:dlcp21-polyakov.pdf }} || || 12:30-12:45  | **S.Polyakov**, SINP MSU \\ [[dlcp21:abstracts#Performance of convolutional neural networks processing simulated IACT images in the TAIGA experiment|Performance of convolutional neural networks processing simulated IACT images in the TAIGA experiment]]|{{ :dlcp21:dlcp21-polyakov.pdf }} ||
dlcp21/program.txt ยท Last modified: 24/08/2021 20:22 by kryukov