INCIHUSA   20883
INSTITUTO DE CIENCIAS HUMANAS, SOCIALES Y AMBIENTALES
Unidad Ejecutora - UE
artículos
Título:
Towards High-End Scalability on Biologically-Inspired Computational Models
Autor/es:
RIZZI, SILVIO; THIRUVATHUKAL, GEORGE K.; ZANUTTO, B. SILVANO; DEMATTÍES, DARÍO; WAINSELBOIM, ALEJANDRO
Revista:
Parallel Computing: Technology Trends
Editorial:
IOS Press
Referencias:
Lugar: Amsterdam; Año: 2020 vol. 36
ISSN:
0927-5452
Resumen:
The interdisciplinary field of neuroscience has made significant progress in recent decades, providing the scientific community in general with a new level of understanding on how the brain works beyond the store-and-fire model found in traditional neural networks. Meanwhile,Machine Learning (ML) based on established models has seen a surge of interest in the High Performance Computing (HPC) community, especially through the use of high-end accelerators, such as Graphical Processing Units(GPUs), including HPC clusters of same.In our work, we are motivated to exploit these high-performance computingdevelopments and understand the scaling challenges for new?biologically inspired?learning models on leadership-class HPC resources.These emerging models feature sparse and random connectivity profiles that map to more loosely-coupled parallel architectures with a large number of CPU cores per node. Contrasted with traditional ML codes, these methods exploit loosely-coupled sparse data structures as opposed to tightly-coupled dense matrix computations, which benefit from SIMD-style parallelism found on GPUs. In this paper we introduce a hybrid Message Passing Interface (MPI) and Open Multi-Processing (OpenMP) parallelization scheme to accelerate and scale our computational model based on the dynamics of cortical tissue. We ran computational tests on a leadership class visualization and analysis cluster atArgonne National Laboratory. We include a study of strong and weak scaling, where we obtained parallel efficiency measures with a minimum above 87% and a maximum above 97% for simulations of our biologically inspired neural network on up to 64 computing nodes running 8 threads each. This study shows promise of the MPI+OpenMP hybrid approach to support flexible and biologically-inspired computational experimental scenarios. In addition, we present the viability in the application of these strategies in high-end leadership computers in the future.