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QuFI: a Quantum Fault Injector to Measure the Reliability of Qubits and Quantum Circuits

Authors :
Oliveira, Daniel
Giusto, Edoardo
Dri, Emanuele
Casciola, Nadir
Baheri, Betis
Guan, Qiang
Montrucchio, Bartolomeo
Rech, Paolo
Publication Year :
2022

Abstract

Quantum computing is a new technology that is expected to revolutionize the computation paradigm in the next few years. Qubits exploit the quantum physics proprieties to increase the parallelism and speed of computation. Unfortunately, besides being intrinsically noisy, qubits have also been shown to be highly susceptible to external sources of faults, such as ionizing radiation. The latest discoveries highlight a much higher radiation sensitivity of qubits than traditional transistors and identify a much more complex fault model than bit-flip. We propose a framework to identify the quantum circuits sensitivity to radiation-induced faults and the probability for a fault in a qubit to propagate to the output. Based on the latest studies and radiation experiments performed on real quantum machines, we model the transient faults in a qubit as a phase shift with a parametrized magnitude. Additionally, our framework can inject multiple qubit faults, tuning the phase shift magnitude based on the proximity of the qubit to the particle strike location. As we show in the paper, the proposed fault injector is highly flexible, and it can be used on both quantum circuit simulators and real quantum machines. We report the finding of more than 285M injections on the Qiskit simulator and 53K injections on real IBM machines. We consider three quantum algorithms and identify the faults and qubits that are more likely to impact the output. We also consider the fault propagation dependence on the circuit scale, showing that the reliability profile for some quantum algorithms is scale-dependent, with increased impact from radiation-induced faults as we increase the number of qubits. Finally, we also consider multi qubits faults, showing that they are much more critical than single faults. The fault injector and the data presented in this paper are available in a public repository to allow further analysis.<br />Comment: 13 pages, 11 figures. To be published in the 52nd Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN'22)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.07183
Document Type :
Working Paper