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Abstract

Conference Title: 2025 IEEE International Conference on Quantum Computing and Engineering (QCE)

Conference Start Date: 2025 Aug. 30

Conference End Date: 2025 Sept. 5

Conference Location: Albuquerque, NM, USA

Quantum Machine Learning (QML) systems inherit vulnerabilities from classical machine learning while introducing new attack surfaces rooted in the physical and algorithmic layers of quantum computing. Despite a growing body of research on individual attack vectors - ranging from adversarial poisoning and evasion to circuit-level backdoors, side-channel leakage, and model extraction - these threats are often analyzed in isolation, with unrealistic assumptions about attacker capabilities and system environments. This fragmentation hampers the development of effective, holistic defense strategies. In this work, we argue that QML security requires more structured modeling of the attack surface, capturing not only individual techniques but also their relationships, prerequisites, and potential impact across the QML pipeline. We propose adapting kill chain models, widely used in classical IT and cybersecurity, to the quantum machine learning context. Such models allow for structured reasoning about attacker objectives, capabilities, and possible multi-stage attack paths - spanning reconnaissance, initial access, manipulation, persistence, and exfiltration. Based on extensive literature analysis, we present a detailed taxonomy of QML attack vectors mapped to corresponding stages in a quantum-aware kill chain framework that is inspired by the MITRE ATLAS for classical machine learning. We highlight interdependencies between physical-level threats (like side-channel leakage and crosstalk faults), data and algorithm manipulation (such as poisoning or circuit backdoors), and privacy attacks (including model extraction and training data inference). This work provides a foundation for more realistic threat modeling and proactive security-in-depth design in the emerging field of quantum machine learning.

Details

Business indexing term
Title
Entangled Threats: A Unified Kill Chain Model for Quantum Machine Learning Security
Author
Debus, Pascal 1 ; Wendlinger, Maximilian 1 ; Kilian Tscharke 1 ; Herr, Daniel 2 ; Brugmann, Cedric 2 ; Ohl De Mello, Daniel 2 ; Ulmanis, Juris 3 ; Alexander, Erhard 3 ; Schmidt, Arthur 4 ; Petsch, Fabian 4 

 Fraunhofer Institute for Applied and Integrated Security (AISEC),Garching near Munich,Germany 
 d-fine (GmbH),Frankfurt,Germany 
 Alpine Quantum Technologies (AQT) GmbH,Innsbruck,Austria 
 Federal Office for Information Security (BSI),Bonn,Germany 
Pages
1653-1664
Number of pages
12
Publication year
2025
Publication date
2025
Publisher
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
Place of publication
Piscataway
Country of publication
United States
Source type
Conference Paper
Language of publication
English
Document type
Conference Proceedings
Publication history
 
 
Online publication date
2025-12-01
Publication history
 
 
   First posting date
01 Dec 2025
ProQuest document ID
3278707014
Document URL
https://www.proquest.com/conference-papers-proceedings/entangled-threats-unified-kill-chain-model/docview/3278707014/se-2?accountid=208611
Copyright
Copyright The Institute of Electrical and Electronics Engineers, Inc. (IEEE) 2025
Last updated
2025-12-04
Database
ProQuest One Academic