Toward digital design at the exascale: An overview of project ICECap

Author:

Peterson J. Luc1ORCID,Bender Tim1ORCID,Blake Robert1ORCID,Chiang Nai-Yuan1ORCID,Fernández-Godino M. Giselle1ORCID,Garcia Bryan1ORCID,Gillette Andrew1ORCID,Gunnarson Brian1ORCID,Hansen Cooper1ORCID,Hill Judy1ORCID,Humbird Kelli1ORCID,Kustowski Bogdan1ORCID,Kim Irene1ORCID,Koning Joe1ORCID,Kur Eugene1ORCID,Langer Steve1ORCID,Lee Ryan1ORCID,Lewis Katie1ORCID,Maguire Alister1ORCID,Milovich Jose1ORCID,Mubarka Yamen1ORCID,Olson Renee1ORCID,Salmonson Jay1ORCID,Schroeder Chris1ORCID,Spears Brian1ORCID,Thiagarajan Jayaraman1ORCID,Tran Ryan1ORCID,Wang Jingyi1ORCID,Weber Chris1ORCID

Affiliation:

1. Lawrence Livermore National Laboratory , Livermore, California 94550, USA

Abstract

High performance computing has entered the Exascale Age. Capable of performing over 1018 floating point operations per second, exascale computers, such as El Capitan, the National Nuclear Security Administration's first, have the potential to revolutionize the detailed in-depth study of highly complex science and engineering systems. However, in addition to these kind of whole machine “hero” simulations, exascale systems could also enable new paradigms in digital design by making petascale hero runs routine. Currently, untenable problems in complex system design, optimization, model exploration, and scientific discovery could all become possible. Motivated by the challenge of uncovering the next generation of robust high-yield inertial confinement fusion (ICF) designs, project ICECap (Inertial Confinement on El Capitan) attempts to integrate multiple advances in machine learning (ML), scientific workflows, high performance computing, GPU-acceleration, and numerical optimization to prototype such a future. Built on a general framework, ICECap is exploring how these technologies could broadly accelerate scientific discovery on El Capitan. In addition to our requirements, system-level design, and challenges, we describe some of the key technologies in ICECap, including ML replacements for multiphysics packages, tools for human-machine teaming, and algorithms for multifidelity design optimization under uncertainty. As a test of our prototype pre-El Capitan system, we advance the state-of-the art for ICF hohlraum design by demonstrating the optimization of a 17-parameter National Ignition Facility experiment and show that our ML-assisted workflow makes design choices that are consistent with physics intuition, but in an automated, efficient, and mathematically rigorous fashion.

Funder

Laboratory Directed Research and Development

Lawrence Livermore National Laboratory

Publisher

AIP Publishing

Reference38 articles.

1. See https://www.top500.org/lists/top500/2023/11/ for “ Top 500” (2024).

2. See https://asc.llnl.gov/exascale/el-capitan for “ El Capitan: Preparing for NNSA's First Exascale Machine” (2024).

3. Issues in deciding whether to use multifidelity surrogates;AIAA J.,2019

4. Transfer learning driven design optimization for inertial confinement fusion;Phys. Plasmas,2022

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