English

Analyzing Machine Learning Performance in a Hybrid Quantum Computing and HPC Environment

Emerging Technologies 2024-07-11 v1 Machine Learning Quantum Physics

Abstract

We explored the possible benefits of integrating quantum simulators in a "hybrid" quantum machine learning (QML) workflow that uses both classical and quantum computations in a high-performance computing (HPC) environment. Here, we used two Oak Ridge Leadership Computing Facility HPC systems, Andes (a commodity-type Linux cluster) and Frontier (an HPE Cray EX supercomputer), along with quantum computing simulators from PennyLane and IBMQ to evaluate a hybrid QML program -- using a "ground up" approach. Using 1 GPU on Frontier, we found ~56% and ~77% speedups when compared to using Frontier's CPU and a local, non-HPC system, respectively. Analyzing performance on a larger dataset using multiple threads, the Frontier GPUs performed ~92% and ~48% faster than the Andes and Frontier CPUs, respectively. More impressively, this is a ~226% speedup over a local, non-HPC system's runtime using the same simulator and number of threads. We hope that this proof of concept will motivate more intensive hybrid QC/HPC scaling studies in the future.

Keywords

Cite

@article{arxiv.2407.07294,
  title  = {Analyzing Machine Learning Performance in a Hybrid Quantum Computing and HPC Environment},
  author = {Samuel T. Bieberich and Michael A. Sandoval},
  journal= {arXiv preprint arXiv:2407.07294},
  year   = {2024}
}

Comments

7 pages, 8 figures

R2 v1 2026-06-28T17:35:05.339Z