Practice and Experience using High Performance Computing and Quantum Computing to Speed-up Data Science Methods in Scientific Applications

Autor: M. Riedel, M. Book, H. Neukirchen, G. Cavallaro, A. Lintermann
Jazyk: angličtina
Rok vydání: 2022
Zdroj: IEEE 281-286 (2022). doi:10.23919/MIPRO55190.2022.9803802
45th Jubilee International Convention on Information, Communication and Electronic Technology (MIPRO), MIPRO, Opatija, Croatia, 2022-05-23-2022-05-27
DOI: 10.23919/MIPRO55190.2022.9803802
Popis: High-Performance Computing (HPC) can quickly process scientific data and perform complex calculations at extremely high speeds. A vast increase in HPC use across scientific communities is observed, especially in using parallel data science methods to speed-up scientific applications. HPC enables scaling up machine and deep learning algorithms that inherently solve optimization problems. More recently, the field of quantum machine learning evolved as another HPC related approach to speed-up data science methods. This paper will address primarily traditional HPC and partly the new quantum machine learning aspects, whereby the latter specifically focus on our experiences on using quantum annealing at the Juelich Supercomputing Centre (JSC). Quantum annealing is particularly effective for solving optimization problems like those that are inherent in machine learning methods. We contrast these new experiences with our lessons learned of using many parallel data science methods with a high number of Graphical Processing Units (GPUs). That includes modular supercomputers such as JUWELS, the fastest European supercomputer at the time of writing. Apart from practice and experience with HPC co-design applications, technical challenges and solutions are discussed, such as using interactive access via JupyterLab on typical batch-oriented HPC systems or enabling distributed training tools for deep learning on our HPC systems.
Databáze: OpenAIRE