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116 2022 Intruder Configurations in the Isobars: and V Tripathi, SL Tabor, PF Mantica, Y Utsuno, P Bender, J Cook, ...
Physical review letters 101 (14), 142504, 2008
73 2008 Simulation of electron-proton scattering events by a Feature-Augmented and Transformed Generative Adversarial Network (FAT-GAN) Y Alanazi, N Sato, T Liu, W Melnitchouk, P Ambrozewicz, F Hauenstein, ...
arXiv preprint arXiv:2001.11103, 2020
60 2020 Evidence for the microscopic formation of mixed-symmetry states from magnetic moment measurements V Werner, N Benczer-Koller, G Kumbartzki, JD Holt, P Boutachkov, ...
Physical Review C 78 (3), 031301, 2008
45 2008 Approaching the “island of inversion”: PC Bender, CR Hoffman, M Wiedeking, JM Allmond, LA Bernstein, ...
Physical Review C 80 (1), 014302, 2009
44 2009 Commissioning of the active-target time projection chamber J Bradt, D Bazin, F Abu-Nimeh, T Ahn, Y Ayyad, SB Novo, L Carpenter, ...
Nuclear Instruments and Methods in Physics Research Section A: Accelerators …, 2017
43 2017 Competition between normal and intruder states inside the “island of inversion” V Tripathi, SL Tabor, PF Mantica, Y Utsuno, P Bender, J Cook, ...
Physical Review C 76 (2), 021301, 2007
43 2007 AI for nuclear physics P Bedaque, A Boehnlein, M Cromaz, M Diefenthaler, L Elouadrhiri, ...
The European Physical Journal A 57, 1-27, 2021
39 2021 Excited intruder states in V Tripathi, SL Tabor, P Bender, CR Hoffman, S Lee, K Pepper, M Perry, ...
Physical Review C 77 (3), 034310, 2008
39 2008 Machine learning methods for track classification in the AT-TPC MP Kuchera, R Ramanujan, JZ Taylor, RR Strauss, D Bazin, J Bradt, ...
Nuclear Instruments and Methods in Physics Research Section A: Accelerators …, 2019
35 2019 Precision studies of QCD in the low energy domain of the EIC VD Burkert, L Elouadrhiri, A Afanasev, J Arrington, M Contalbrigo, ...
Progress in Particle and Nuclear Physics 131, 104032, 2023
33 2023 LISE++ software updates and future plans MP Kuchera, OB Tarasov, D Bazin, B Sherril, KV Tarasova
Journal of Physics: Conference Series 664 (7), 072029, 2015
21 2015 Complementary studies of and the systematics of intruder states TA Hinners, V Tripathi, SL Tabor, A Volya, PC Bender, CR Hoffman, S Lee, ...
Physical Review C 77 (3), 034305, 2008
19 2008 Bayesian neural networks for fast SUSY predictions BS Kronheim, MP Kuchera, HB Prosper, A Karbo
Physics Letters B 813, 136041, 2021
15 2021 Study of spectroscopic factors at N= 29 using isobaric analogue resonances in inverse kinematics J Bradt, Y Ayyad, D Bazin, W Mittig, T Ahn, SB Novo, BA Brown, ...
Physics Letters B 778, 155-160, 2018
15 2018 Higher-spin structures in and JM VonMoss, SL Tabor, V Tripathi, A Volya, B Abromeit, PC Bender, ...
Physical Review C 92 (3), 034301, 2015
14 2015 Plans for performance and model improvements in the LISE++ software MP Kuchera, OB Tarasov, D Bazin, BM Sherrill, KV Tarasova
Nuclear Instruments and Methods in Physics Research Section B: Beam …, 2016
13 2016 cfat-gan: Conditional simulation of electron–proton scattering events with variate beam energies by a feature augmented and transformed generative adversarial network L Velasco, E McClellan, N Sato, P Ambrozewicz, T Liu, W Melnitchouk, ...
Deep Learning Applications, Volume 3, 245-261, 2022
11 2022 TensorBNN: Bayesian inference for neural networks using TensorFlow BS Kronheim, MP Kuchera, HB Prosper
Computer Physics Communications 270, 108168, 2022
11 2022 Machine learning-based event generator for electron-proton scattering Y Alanazi, P Ambrozewicz, M Battaglieri, ANH Blin, MP Kuchera, Y Li, ...
Physical Review D 106 (9), 096002, 2022
10 2022