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dlcp21:program [29/06/2021 17:38] – [June, 28. Astroparticle and High Energy Physics] admindlcp21:program [24/08/2021 20:19] kryukov
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-====== DLCP-2021. Scientific program (CORR1) ====== +====== DLCP-2021. Scientific program (CORR2) ====== 
 +{{ :dlcp21:close.png?200|}}
 **June 28-29, 2021** **June 28-29, 2021**
  
-//[[https://cern.zoom.us/j/69282938634?pwd=T0hkYXZvSjJIdEEzenNBNFV6N3FhQT09|ZOOM link]] to join the workshop. Meeting ID: 692 8293 8634, Passcode: 054968.//+//ZOOM//
  
 //Moscow time (MSK)// //Moscow time (MSK)//
  
 +/**
 Invited presentation - 45 min \\  Invited presentation - 45 min \\ 
 Long presentation - 30 min \\  Long presentation - 30 min \\ 
 Short presentation - 15 min Short presentation - 15 min
 +**/
  
 ===== June, 28. Astroparticle and High Energy Physics ===== ===== June, 28. Astroparticle and High Energy Physics =====
  
 ^^ 10:00-10:15  ^ **A.Haungs** \\ Welcome words ^{{ :dlcp21:dlcp21haungs.pdf |}} || ^^ 10:00-10:15  ^ **A.Haungs** \\ Welcome words ^{{ :dlcp21:dlcp21haungs.pdf |}} ||
-|| 10:15-11:00  | <del>**L.Kuzmichev**, SINP MSU \\ [[dlcp21/abstracts#taigastatus_results_and_perspectives|TAIGA: status, results and perspectives]]</del> - shift to 14:45| ||+|| 10:15-11:00  | <del>**L.Kuzmichev**, SINP MSU \\ TAIGA: status, results and perspectives</del> - shift to 14:45|||
 ^^ 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 \\  [[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 }} || 
-^ 12:45-14:45  ^ "ZOOM Photo", Lunch                                                                                                                                                                                                                                                                                                                                                                                                                || +^^ 12:45-14:45 Lunch^ [[dlcp21:pictures|"ZOOM Photo"]] || 
-| 14:45-15:30  | **L.Kuzmichev**, SINP MSU \\ [[dlcp21/abstracts#taigastatus_results_and_perspectives|TAIGA: status, results and perspectives]]                                                                                                                                                                                                                                                                                                   ||   +|| 14:45-15:30  | **L.Kuzmichev**, SINP MSU \\ [[dlcp21/abstracts#taigastatus results and perspectives|TAIGA: status, results and perspectives]]|{{ :dlcp21:dlcp21-kuzmichev.pdf |}}  || 
-| 15:30-15:45  | **A.Zaborenko**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Application of deep learning technique to an analysis of hard scattering processes at colliders|Application of deep learning technique to an analysis of hard scattering processes at colliders]]                                                                                                                        | {{ :dlcp21:dlcp21-zaborenko-v2.pdf }}      || +|| 15:30-15:45  | **A.Zaborenko**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Application of deep learning technique to an analysis of hard scattering processes at colliders|Application of deep learning technique to an analysis of hard scattering processes at colliders]]|{{ :dlcp21:dlcp21-zaborenko-v2.pdf }} || 
-| 15:45-16:00  | **A.Vlaskina**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Using convolutional neural network for analysis of HiSCORE events|Using convolutional neural network for analysis of HiSCORE events]]                                                                                                                                                                                     | {{ :dlcp21:dlcp2021-vlaskina-v2.pdf }}     || +|| 15:45-16:00  | **A.Vlaskina**, Faculty of Physics, MSU \\ [[dlcp21:abstracts#Using convolutional neural network for analysis of HiSCORE events|Using convolutional neural network for analysis of HiSCORE events]]| {{ :dlcp21:dlcp2021-vlaskina-v2.pdf }} || 
-^ 16:00-16:30  ^ Coffee break                                                                                                                                                                                                                                                                                                                                                                                                                       || +^^ 16:00-16:30  ^ Coffee break^ || 
-| 16:30-16:45  | **V.Tokareva**, IAP KIT \\  [[dlcp21:abstracts#Using modern machine learning methods on KASCADE data for science and education|Using modern machine learning methods on KASCADE data for science and education]]                                                                                                                                                                        | {{ :dlcp21:dlcp21-tokareva.pdf }}          || +|| 16:30-16:45  | **V.Tokareva**, IAP KIT \\  [[dlcp21:abstracts#Using modern machine learning methods on KASCADE data for science and education|Using modern machine learning methods on KASCADE data for science and education]]|{{ :dlcp21:dlcp21-tokareva.pdf }} || 
-| 16:45-17:00  | **P.Bezyazeekov**, API ISU \\ [[dlcp21:abstracts#Legacy of Tunka-Rex software and data|Legacy of Tunka-Rex software and data]]                                                                                                                                                                                                                                                                                                   ||   +|| 16:45-17:00  | **P.Bezyazeekov**, API ISU \\ [[dlcp21:abstracts#Legacy of Tunka-Rex software and data|Legacy of Tunka-Rex software and data]]|{{ :dlcp21:dlcp21-bezyazeekov.pdf |}} || 
-| 17:00-17:15  | **Ju.Dubenskaya**, SINP MSU \\ [[dlcp21:abstracts#Modeling images of proton events for the TAIGA project using a generative adversarial network: features of the network architecture and the learning process|Modeling images of proton events for the TAIGA project using a generative adversarial network: features of the network architecture and the learning process]]           | {{ :dlcp21:dlcp2021-jdubenskaya.pdf }}     ||+|| 17:00-17:15  | **Ju.Dubenskaya**, SINP MSU \\ [[dlcp21:abstracts#Modeling images of proton events for the TAIGA project using a generative adversarial network: features of the network architecture and the learning process|Modeling images of proton events for the TAIGA project using a generative adversarial network: features of the network architecture and the learning process]]|{{ :dlcp21:dlcp2021-jdubenskaya.pdf }} ||
  
  
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 ||11:40-11:55| **A.O.Efitorov**, SINP MSU \\ [[dlcp21:abstracts#Use of conditional generative adversarial networks to improve representativity of data in optical spectroscopy|Use of conditional generative adversarial networks to improve representativity of data in optical spectroscopy]]|{{ :dlcp21:dlcp21-efitorov.pdf |}} || ||11:40-11:55| **A.O.Efitorov**, SINP MSU \\ [[dlcp21:abstracts#Use of conditional generative adversarial networks to improve representativity of data in optical spectroscopy|Use of conditional generative adversarial networks to improve representativity of data in optical spectroscopy]]|{{ :dlcp21:dlcp21-efitorov.pdf |}} ||
 ||11:55-12:10| **I.Isaev**, SINP MSU \\ [[dlcp21:abstracts#Neural network solution of inverse problems of geological prospecting with discrete output|Neural network solution of inverse problems of geological prospecting with discrete output]]|{{ :dlcp21:dlcp21-isaev.pdf |}} || ||11:55-12:10| **I.Isaev**, SINP MSU \\ [[dlcp21:abstracts#Neural network solution of inverse problems of geological prospecting with discrete output|Neural network solution of inverse problems of geological prospecting with discrete output]]|{{ :dlcp21:dlcp21-isaev.pdf |}} ||
-||12:10-12:25|**<del>A.Naumov</del> R.Rybka**, National Research Centre “Kurchatov Institute” \\ [[dlcp21:abstracts#The Russian language corpus and a neural network to analyse Internet tweet reports about Covid-19|The Russian language corpus and a neural network to analyse Internet tweet reports about Covid-19]]| || +||12:10-12:25|**<del>A.Naumov</del> R.Rybka**, National Research Centre “Kurchatov Institute” \\ [[dlcp21:abstracts#The Russian language corpus and a neural network to analyse Internet tweet reports about Covid-19|The Russian language corpus and a neural network to analyse Internet tweet reports about Covid-19]]|{{ :dlcp21:dlcp21-rybka.pdf |}} || 
 ||12:25-12:40|**A.A. Selivanov**, NRC «Kurchatov Institute» \\ [[dlcp21:abstracts#EVALUATION OF MACHINE LEARNING METHODS FOR RELATION EXTRACTION BETWEEN DRUG ADVERSE EFFECTS AND MEDICATIONS IN RUSSIAN TEXTS OF INTERNET USER REVIEWS|EVALUATION OF MACHINE LEARNING METHODS FOR RELATION EXTRACTION BETWEEN DRUG ADVERSE EFFECTS AND MEDICATIONS IN RUSSIAN TEXTS OF INTERNET USER REVIEWS]]|{{ :dlcp21:dlcp21-selivanov.pdf |}} ||  ||12:25-12:40|**A.A. Selivanov**, NRC «Kurchatov Institute» \\ [[dlcp21:abstracts#EVALUATION OF MACHINE LEARNING METHODS FOR RELATION EXTRACTION BETWEEN DRUG ADVERSE EFFECTS AND MEDICATIONS IN RUSSIAN TEXTS OF INTERNET USER REVIEWS|EVALUATION OF MACHINE LEARNING METHODS FOR RELATION EXTRACTION BETWEEN DRUG ADVERSE EFFECTS AND MEDICATIONS IN RUSSIAN TEXTS OF INTERNET USER REVIEWS]]|{{ :dlcp21:dlcp21-selivanov.pdf |}} || 
 ||12:40-12:55|**N.V.Abasov**, Melentiev Energy Systems Institute SB RAS \\ [[dlcp21:abstracts#The technology of long-term forecasting of water inflow into reservoirs using a multi-parameter neural network|The technology of long-term forecasting of water inflow into reservoirs using a multi-parameter neural network]]|{{ :dlcp21:dlcp21-abasov.pdf |}} ||  ||12:40-12:55|**N.V.Abasov**, Melentiev Energy Systems Institute SB RAS \\ [[dlcp21:abstracts#The technology of long-term forecasting of water inflow into reservoirs using a multi-parameter neural network|The technology of long-term forecasting of water inflow into reservoirs using a multi-parameter neural network]]|{{ :dlcp21:dlcp21-abasov.pdf |}} || 
-^^12:55-14:45^"ZOOM Photo", Lunch^ ||+^^12:55-14:45^ Lunch^[[dlcp21:pictures|"ZOOM Photo"]] ||
 ||14:45-16:00|**Round table: Machine learning in Modern Physics** \\ Moderator: A.Kryukov, SINP MSU| || ||14:45-16:00|**Round table: Machine learning in Modern Physics** \\ Moderator: A.Kryukov, SINP MSU| ||
 ^^16:00^**Close workshop**^ || ^^16:00^**Close workshop**^ ||
  
  
dlcp21/program.txt · Last modified: 24/08/2021 20:22 by kryukov