The development of artificial intelligence (AI) methods is rapidly proceeding. Analyzing and processing big data require high computational power and scalable AI solutions. Therefore, it becomes mandatory to develop entirely new workflows from current applications that efficiently run on future high-performance computing (HPC) architectures at Exascale.
The European Center of Excellence in Exascale Computing "Research on AI- and Simulation-Based Engineering at Exascale" (CoE RAISE) started on Jan. 01, 2021, with a total budget of around €5 million. The project brings together eleven full partners and two third parties with expertise in AI and HPC. RAISE will be the excellent enabler for novel intertwined AI/HPC methods, which will be advanced along representative use cases, covering a wide spectrum of academic and industrial applications of societal importance, e.g. wind energy, wetting hydrodynamics, manufacturing, physics, turbomachinery, or aerospace.
CoE RAISE aims at closing the gap in full loops using forward simulation models and AI-based inverse inference models with novel hardware technologies, i.e. Modular Supercomputing Architectures and Quantum Annealing. Best practices, support, and education for industry, SMEs, academia, and HPC centers on Tier-2 level and below will be developed. They will be provided to RAISE's European network to attract new user communities for which a business will offer services around these new technologies.
The main objectives of CoE RAISE are to
• develop innovative AI methods on heterogeneous HPC architectures capable of scaling towards Exascale;
• generalize developments for selected representative simulation codes and data-driven workflows for universal application;
• ensure knowledge and technology transfer to industry, SMEs, and academia, and with respect to AI and HPC, to less developed countries and computing centers;
• provide corresponding training and education, and support, qualifying code and workflows for execution on heterogeneous/modular systems towards Exascale;
• create a European network of contact points to provide infrastructural and knowledge access, consulting, and further services to user communities from industry, SMEs, and academia with less developed expertise in AI and HPC;
• develop a business plan to ensure long-term sustainability, financial independence, and continuous extension of services beyond the horizon of the project;
• connect to existing European projects to exploit synergies, avoid redundancy, exploit co-design opportunities, and exchange knowledge.