Device- and Locality-Specific Fingerprinting of Shared NISQ Quantum Computers

Abstract

Fingerprinting of quantum computer devices is a new threat that poses a challenge to shared, cloud-based quantum computers. Fingerprinting can allow adversaries to map quantum computer infrastructures, uniquely identify cloud-based devices which otherwise have no public identifiers, and it can assist other adversarial attacks. This work shows idle tomography-based fingerprinting method based on crosstalk-induced errors in NISQ quantum computers. The device- and locality-specific fingerprinting results show prediction accuracy values of 99.1% and 95.3%, respectively.

Publication
In 10th International Workshop on Hardware and Architectural Support for Security and Privacy (HASP), 2021.
Shuwen Deng
Shuwen Deng
Assistant Professor