Article 4CYJS Scaling Deep Learning for Scientific Workloads on the #1 Summit Supercomputer

Scaling Deep Learning for Scientific Workloads on the #1 Summit Supercomputer

by
Rich Brueckner
from High-Performance Computing News Analysis | insideHPC on (#4CYJS)
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Jack Wells from ORNL gave this talk at the GPU Technology Conference. "HPC centers have been traditionally configured for simulation workloads, but deep learning has been increasingly applied alongside simulation on scientific datasets. These frameworks do not always fit well with job schedulers, large parallel file systems, and MPI backends. We'll share benchmarks between native compiled versus containers on Power systems, like Summit, as well as best practices for deploying learning and models on HPC resources on scientific workflows."

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