The Quantum Imitation Game: Reverse Engineering of Quantum Machine Learning Models
Archisman Ghosh, Swaroop Ghosh

TL;DR
This paper investigates the reverse engineering of quantum machine learning models, demonstrating that quantum neural networks can be reconstructed with reasonable accuracy and proposing defenses to increase the difficulty of such attacks.
Contribution
It is the first study to analyze reverse engineering of QML circuits, showing feasibility and proposing dummy gates as a defense mechanism.
Findings
Multi-qubit classifiers can be reverse-engineered with low error (~1e-2).
Adding dummy gates increases reverse engineering overhead significantly.
Reverse engineering poses a serious security threat to QML models.
Abstract
Quantum Machine Learning (QML) amalgamates quantum computing paradigms with machine learning models, providing significant prospects for solving complex problems. However, with the expansion of numerous third-party vendors in the Noisy Intermediate-Scale Quantum (NISQ) era of quantum computing, the security of QML models is of prime importance, particularly against reverse engineering, which could expose trained parameters and algorithms of the models. We assume the untrusted quantum cloud provider is an adversary having white-box access to the transpiled user-designed trained QML model during inference. Reverse engineering (RE) to extract the pre-transpiled QML circuit will enable re-transpilation and usage of the model for various hardware with completely different native gate sets and even different qubit technology. Such flexibility may not be obtained from the transpiled circuit…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
