Team > Johannes Seiferth, M.Sc.


Faculty of Mathematics, Physics and Computer Sciences
Chair for Applied Computer Science II - Parallel and distributed Systems
PROJECTS

Faculty of Mathematics, Physics and Computer Sciences
Chair for Applied Computer Science II - Parallel and distributed Systems
Publications
2022
Hacker, Oliver; Korch, Matthias; Seiferth, Johannes
A Motivating Case Study on Code Variant Selection by Reinforcement Learning
High Performance Computing : Proceedings
Cham : Springer, 2022. - page 293-312 . - (Lecture Notes in Computer Science; 13289)
doi:10.1007/978-3-031-07312-0_15 ...
2021
Alappat, Christie L.; Seiferth, Johannes; Hager, Georg; Korch, Matthias; Rauber, Thomas; Wellein, Gerhard
YaskSite : Stencil Optimization Techniques Applied to Explicit ODE Methods on Modern Architectu ...
2021 IEEE/ACM International Symposium on Code Generation and Optimization (CGO) : Proceedings
Piscataway, NJ , 2021. - page 174-186
doi:10.1109/CGO51591.2021.9370316 ...
2020
Seiferth, Johannes; Korch, Matthias; Rauber, Thomas
Offsite Autotuning Approach : Performance Model Driven Autotuning Applied to Parallel Explicit ...
High Performance Computing
Cham : Springer, 2020. - page 370-390 . - (Lecture Notes in Computer Science; 12151)
doi:10.1007/978-3-030-50743-5_19 ...
2019
Scherg, Markus; Seiferth, Johannes; Korch, Matthias; Rauber, Thomas
Performance Prediction of Explicit ODE Methods on Multi-Core Cluster Systems
Proceedings of the 2019 ACM/SPEC International Conference on Performance Engineering
New York, NY : ACM, 2019. - page 139-150
doi:10.1145/3297663.3310306 ...
2018
Seiferth, Johannes; Alappat, Christie L.; Korch, Matthias; Rauber, Thomas
Applicability of the ECM Performance Model to Explicit ODE Methods on Current Multi-core Proces ...
High Performance Computing
Cham : Springer, 2018. - page 163-183
doi:10.1007/978-3-319-92040-5_9 ...

Faculty of Mathematics, Physics and Computer Sciences
Chair for Applied Computer Science II - Parallel and distributed Systems
Johannes Seiferth, M.Sc.
Building Applied Computer Science (AI)
Room 2.11
Phone: +49 (0)921 / 55-7707
E-mail: johannes.seiferth@uni-bayreuth.de