Loading...
International projects source: SICRIS

Plasma Exascale-Performance Simulations CoE - Pushing flagship plasma simulations codes to tackle exascale-enabled Grand Challenges via performance optimisation and codesign

Keywords
Flagship Plasma Simulations, Exascale, Extreme Scale, Extreme Data, Heterogeneous Systems, Co-design, EPI
Organisations (1) , Researchers (21)
0782  University of Ljubljana, Faculty of Mechanical Engineering
no. Code Name and surname Research area Role Period No. of publicationsNo. of publications
1.  23180  PhD Janez Benedičič  Mechanical design  Researcher  2023 - 2026  134 
2.  57495  Leon Bogdanović    Researcher  2026 
3.  53102  PhD Matic Brank  Mechanical design  Researcher  2023 - 2026  35 
4.  53298  PhD Stefan Costea  Mechanical design  Researcher  2023 - 2026  107 
5.  21415  Metod Čuk  Mechanical design  Researcher  2025 - 2026  36 
6.  23289  PhD Ivan Demšar  Mechanical design  Researcher  2025 - 2026  72 
7.  59545  Aleš Durjava  Mechanical design  Researcher  2024 
8.  21174  PhD Aleksander Grm  Mechanics  Researcher  2024 - 2026  78 
9.  32770  PhD Tadej Kanduč  Mathematics  Researcher  2024  68 
10.  12725  PhD Leon Kos  Mechanical design  Leader of the participating RO  2023 - 2026  317 
11.  30680  PhD Jernej Kovačič  Mechanical design  Researcher  2025 - 2026  275 
12.  32265  PhD Simon Kulovec  Mechanical design  Researcher  2026  96 
13.  37988  PhD Bor Mojškerc  Manufacturing technologies and systems  Researcher  2023 - 2024  35 
14.  61543  Nermina Nuhanović  Mechanical design  Researcher  2026 
15.  58740  Luka Samsa  Mechanical design  Researcher  2023 - 2026  11 
16.  33069  PhD Pavel Tomšič  Mechanical design  Researcher  2026  78 
17.  51899  PhD Uroš Urbas  Mechanical design  Researcher  2026  28 
18.  52700  PhD Ivona Vasileska  Mechanical design  Researcher  2023 - 2026  59 
19.  25450  PhD Nikola Vukašinović  Mechanical design  Researcher  2024  245 
20.  61706  Blaž Zgonec  Mechanical design  Researcher  2025 - 2026 
21.  59570  Aljaž Žafran  Mechanical design  Researcher  2026 
Abstract
Plasma science has been at the forefront of HPC for several decades, driving and at the same time benefiting greatly from innovative hardware and software developments. The overall goal of Plasma-PEPSC is to take this development to the next level, enabling scientific breakthroughs in plasma science Grand Challenges through exascale computing and extreme-scale data analytics. Specifically, we aim to enable unprecedented simulations on current pre-exascale and future exascale platforms in Europe to control plasma-material interfaces, optimize magnetically confined fusion plasmas, design next-generation plasma accelerators and predict space plasma dynamics in the Earth’s magnetosphere. We achieve these goals by maximizing the parallel performance and efficiency of four European flagship plasma codes with a large user base: BIT, GENE, PIConGPU, and Vlasiator. Here, we will build on algorithmic advances (regarding load balancing, resilience, and data compression) as well as on programming model and library developments (MPI, accelerator and data movement APIs and runtimes, in-situ data analysis). We ensure an integrated HPC software engineering approach for deploying, verifying, and validating extreme-scale kinetic plasma simulations that can serve as a community standard. We will establish a continuous and integrated co-design methodology to provide/receive direct input to/from the design and development of the EPI Processor and accelerator, will exploit synergies through collaborations with other CoEs, EuroHPC, and Competence Centers for cross-fertilization, adoption and full exploitation of the Plasma-PEPSC codes. Plasma-PEPSC brings together an exceptional, interdisciplinary group of highly-recognized leading scientists from academia, research centres, and HPC centres, with decades of experience in algorithmic and method developments, extreme-scale plasma simulations, and application optimizations with high involvement in strategic EuroHPC projects and initiatives.
Views history
Favourite