COMP-PHIMLGGR-QCMar 18, 2020

Convergence of Artificial Intelligence and High Performance Computing on NSF-supported Cyberinfrastructure

arXiv:2003.08394v258 citations
AI Analysis

This is an incremental review summarizing recent developments to improve computational efficiency for scientific and industrial AI applications.

The paper addresses the challenge of insufficient single-GPU solutions for AI in handling big data from scientific facilities, advocating for the convergence of AI and high-performance computing to reduce time-to-insight and enable data-driven discovery.

Significant investments to upgrade and construct large-scale scientific facilities demand commensurate investments in R&D to design algorithms and computing approaches to enable scientific and engineering breakthroughs in the big data era. Innovative Artificial Intelligence (AI) applications have powered transformational solutions for big data challenges in industry and technology that now drive a multi-billion dollar industry, and which play an ever increasing role shaping human social patterns. As AI continues to evolve into a computing paradigm endowed with statistical and mathematical rigor, it has become apparent that single-GPU solutions for training, validation, and testing are no longer sufficient for computational grand challenges brought about by scientific facilities that produce data at a rate and volume that outstrip the computing capabilities of available cyberinfrastructure platforms. This realization has been driving the confluence of AI and high performance computing (HPC) to reduce time-to-insight, and to enable a systematic study of domain-inspired AI architectures and optimization schemes to enable data-driven discovery. In this article we present a summary of recent developments in this field, and describe specific advances that authors in this article are spearheading to accelerate and streamline the use of HPC platforms to design and apply accelerated AI algorithms in academia and industry.

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