A novel Mission in Exascale CFD The innovation study STRAUSS, short for “Scalable Task-Parallel Multigrid Solvers” is led by Dr. Niclas Jansson from KTH Royal Institute of Technology and aims to develop highly scalable algorithms to handle the computational challenges posed by exascale systems, particularly for Computational Fluid Dynamics (CFD). Through innovations in parallelism and algorithmic efficiency, the project aims to unlock the potential of European supercomputers like LUMI and Leonardo. Dr. Jansson gave an
The exaSIMPLE project addresses critical challenges in high-performance computing (HPC) and computational fluid dynamics (CFD). Led by Dr. Guilherme Vaz, exaSIMPLE embeds machine learning (ML) directly into CFD algorithms based on the SIMPLE algorithm, which has remained largely unchanged for decades. BlueOASIS, the project coordinator, is leading the development with a focus on CFD, AI, and scientific programming, ensuring smooth project management and coordination. INESC-TEC, a prominent research institute in Portugal, provides invaluable HPC resources,
ISOLV-BSE: Advancing the Solution of Structured Pseudo-Hermitian Matrices for Exascale Computing
Category: Article
As computational power moves towards the exascale era, the complexity of scientific simulations continues to increase. A key challenge facing many scientific applications is the efficient and accurate solution of large-scale eigenvalue problems. One such effort to address this challenge is our ISOLV-BSE innovation study. Led by José E. Román from the Universitat Politècnica de València, ISOLV-BSE targets an important class of problems involving structured pseudo-Hermitian matrices in the context of the Bethe-Salpeter Equation (BSE)
CBM4scale: Transforming Graph Neural Networks with Compressed Binary Matrix Algorithms to Advance Exacale Computing
Category: Article
As we approach the exascale era in high-performance computing, the need for innovative algorithms that can efficiently handle massive datasets and complex computations is increasing. The CBM4scale innovation study focuses on the development of a novel matrix compression format and associated algorithms to improve the performance of Graph Neural Networks (GNNs) and other scientific applications on exascale systems. In a recent interview, Prof. Dr. Siegfried Benkner, co-principal investigator of CBM4scale and head of the Scientific
Commencing on February 1, Inno4scale initiated 22 Innovation Studies across Europe, focusing on computational fluid dynamics, materials science, artificial intelligence, and other critical domains. These studies, spanning a maximum of 12 months, aim to translate mathematical concepts into novel algorithms feasible with exascale systems, showcasing their potential through proof-of-concept demonstrations. The EuroHPC Joint Undertaking has provided funding for the Inno4scale initiative, targeting the development of applications capable of fully exploiting the computational power of the