Article 2CH78 Designing HPC & Deep Learning Middleware for Exascale Systems

Designing HPC & Deep Learning Middleware for Exascale Systems

by
Rich Brueckner
from High-Performance Computing News Analysis | insideHPC on (#2CH78)
DKPanda.jpg

DK Panda from Ohio State University presented this deck at the 2017 HPC Advisory Council Stanford Conference. "This talk will focus on challenges in designing runtime environments for exascale systems with millions of processors and accelerators to support various programming models. We will focus on MPI, PGAS (OpenSHMEM, CAF, UPC and UPC++) and Hybrid MPI+PGAS programming models by taking into account support for multi-core, high-performance networks, accelerators (GPGPUs and Intel MIC), virtualization technologies (KVM, Docker, and Singularity), and energy-awareness. Features and sample performance numbers from the MVAPICH2 libraries will be presented."

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