Следене
Daniel Mello Faissol
Daniel Mello Faissol
Потвърден имейл адрес: llnl.gov
Заглавие
Позовавания
Позовавания
Година
Discovering symbolic policies with deep reinforcement learning
M Landajuela, BK Petersen, S Kim, CP Santiago, R Glatt, N Mundhenk, ...
International Conference on Machine Learning, 5979-5989, 2021
922021
Taxonomies of cyber adversaries and attacks: a survey of incidents and approaches
CA Meyers, SS Powers, DM Faissol
Lawrence Livermore National Lab.(LLNL), Livermore, CA (United States), 2009
842009
Symbolic regression via neural-guided genetic programming population seeding
TN Mundhenk, M Landajuela, R Glatt, CP Santiago, DM Faissol, ...
arXiv preprint arXiv:2111.00053, 2021
702021
Deep reinforcement learning and simulation as a path toward precision medicine
BK Petersen, J Yang, WS Grathwohl, C Cockrell, C Santiago, G An, ...
Journal of Computational Biology 26 (6), 597-604, 2019
522019
Single episode policy transfer in reinforcement learning
J Yang, B Petersen, H Zha, D Faissol
arXiv preprint arXiv:1910.07719, 2019
372019
Precision medicine as a control problem: Using simulation and deep reinforcement learning to discover adaptive, personalized multi-cytokine therapy for sepsis
BK Petersen, J Yang, WS Grathwohl, C Cockrell, C Santiago, G An, ...
arXiv preprint arXiv:1802.10440, 2018
312018
Reinforcement learning for adaptive mesh refinement
J Yang, T Dzanic, B Petersen, J Kudo, K Mittal, V Tomov, JS Camier, ...
International Conference on Artificial Intelligence and Statistics, 5997-6014, 2023
302023
Rapid in silico design of antibodies targeting SARS-CoV-2 using machine learning and supercomputing
T Desautels, A Zemla, E Lau, M Franco, D Faissol
BioRxiv, 2020.04. 03.024885, 2020
292020
Timing of testing and treatment for asymptomatic diseases
E Kırkızlar, DM Faissol, PM Griffin, JL Swann
Mathematical biosciences 226 (1), 28-37, 2010
252010
Bias in Markov models of disease
DM Faissol, PM Griffin, JL Swann
Mathematical biosciences 220 (2), 143-156, 2009
172009
Timing of testing and treatment of hepatitis C and other diseases
DM Faissol, PM Griffin, JL Swann
Proceedings, 11, 2007
142007
Improving exploration in policy gradient search: Application to symbolic optimization
M Landajuela, BK Petersen, SK Kim, CP Santiago, R Glatt, TN Mundhenk, ...
arXiv preprint arXiv:2107.09158, 2021
132021
Large-scale application of free energy perturbation calculations for antibody design
F Zhu, FA Bourguet, WFD Bennett, EY Lau, KT Arrildt, BW Segelke, ...
Scientific Reports 12 (1), 12489, 2022
122022
The role of bathhouses and sex clubs in HIV transmission: findings from a mathematic model
DM Faissol, JL Swann, B Kolodziejski, PM Griffin, TL Gift
JAIDS Journal of Acquired Immune Deficiency Syndromes 44 (4), 386-394, 2007
122007
Exploitation of ambiguous cues to infer terrorist activity
KS Ni, D Faissol, T Edmunds, R Wheeler
Decision Analysis 10 (1), 42-62, 2013
92013
AbBERT: learning antibody humanness via masked language modeling
D Vashchenko, S Nguyen, A Goncalves, FL da Silva, B Petersen, ...
bioRxiv, 2022.08. 02.502236, 2022
82022
Probabilistic Characterization of Adversary Behavior in Cyber Security
CA Meyers, SS Powers, DM Faissol
Lawrence Livermore National Lab.(LLNL), Livermore, CA (United States), 2009
82009
Learning sparse symbolic policies for sepsis treatment
JF Pettit, BK Petersen, FL Silva, DB Larie, RC Cockrell, G An, DM Faissol
Lawrence Livermore National Lab.(LLNL), Livermore, CA (United States), 2021
72021
Multi-agent reinforcement learning for adaptive mesh refinement
J Yang, K Mittal, T Dzanic, S Petrides, B Keith, B Petersen, D Faissol, ...
arXiv preprint arXiv:2211.00801, 2022
62022
SARS-COV-2 Omicron variant predicted to exhibit higher affinity to ACE-2 receptor and lower affinity to a large range of neutralizing antibodies, using a rapid computational …
A Zemla, T Desautels, EY Lau, F Zhu, KT Arrildt, BW Segelke, ...
bioRxiv, 2021.12. 16.472843, 2021
42021
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Статии 1–20