Investigating the effect of noise channels on the quality of unitary t-designs
Conrad Strydom, Mark Tame

TL;DR
This paper examines how various noise channels affect the quality of single-qubit unitary t-designs, revealing their sensitivity varies with t, noise type, and state purity, with implications for quantum information applications.
Contribution
It provides a detailed analysis of noise effects on single-qubit t-designs, including numerical insights into their sensitivity and the equivalence of noise models for depolarising channels.
Findings
1-designs are only affected by amplitude damping.
2t-designs are more sensitive to noise than (2t-1)-designs.
Sensitivity to noise varies across the Bloch sphere, highest on pure states.
Abstract
Unitary t-designs have a wide variety of applications in quantum information theory, such as quantum data encryption and randomised benchmarking. However, experimental realisations of t-designs are subject to noise. Here we investigate the effect of noise channels on the quality of single-qubit t-designs. The noise channels we study are bit flips, phase flips, bit and phase flips, phase damping, amplitude damping, and depolarising noise. We consider two noise models: the first has noise applied before the t-design unitary operations, while the second has noise applied after the unitary operations. We show that the single-qubit 1-design is affected only by amplitude damping, while numeric results obtained for the 2-, 3-, 4-, and 5-designs suggest that a 2t-design is significantly more sensitive to noise than a (2t-1)-design and that, with the exception of amplitude damping, a…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · graph theory and CDMA systems · Computability, Logic, AI Algorithms
