Abstract
AbstractQuantum computing promises a disruptive impact on machine learning algorithms, taking advantage of the exponentially large Hilbert space available. However, it is not clear how to scale quantum machine learning (QML) to industrial-level applications. This paper investigates the scalability and noise resilience of quantum generative learning applications. We consider the training performance in the presence of statistical noise due to finite-shot noise statistics and quantum noise due to decoherence to analyze the scalability of QML methods. We employ rigorous benchmarking techniques to track progress and identify challenges in scaling QML algorithms, and show how characterization of QML systems can be accelerated, simplified, and made reproducible when the QUARK framework is used. We show that QGANs are not as affected by the curse of dimensionality as QCBMs and to which extent QCBMs are resilient to noise.
Funder
Bundesministerium für Bildung und Forschung
Ludwig-Maximilians-Universität München
Publisher
Springer Science and Business Media LLC
Reference40 articles.
1. Proctor T, Rudinger K, Young K, Nielsen E, Blume-Kohout R (2022) Measuring the capabilities of quantum computers. Nat Phys 18(1):75–79
2. Erhard A, Wallman JJ, Postler L, Meth M, Stricker R, Martinez EA, Schindler P, Monz T, Emerson J, Blatt R (2019) Characterizing large-scale quantum computers via cycle benchmarking. Nat Commun 10(1):5347
3. Blume-Kohout Robin, Young Kevin C (2020) A volumetric framework for quantum computer benchmarks. Quantum 4:362
4. Mills Daniel, Sivarajah Seyon, Scholten Travis L, Duncan Ross (2021) Application-motivated, holistic benchmarking of a full quantum computing stack. Quantum 5:415
5. Resch Salonik, Karpuzcu Ulya R (2021) Benchmarking quantum computers and the impact of quantum noise. ACM Comput Surv 54(7):07
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