Benchmarking Quantum State Transfer on Quantum Devices using
Spatio-Temporal Steering
- URL: http://arxiv.org/abs/2009.07425v4
- Date: Tue, 13 Apr 2021 02:00:42 GMT
- Title: Benchmarking Quantum State Transfer on Quantum Devices using
Spatio-Temporal Steering
- Authors: Yi-Te Huang, Jhen-Dong Lin, Huan-Yu Ku, Yueh-Nan Chen
- Abstract summary: Quantum state (QST) provides a method to send arbitrary quantum states from one system to another.
Standard benchmark of QST is the average fidelity between the prepared and received states.
We provide a benchmark which reveals the non-classicality of QST based ontemporal steering (STS)
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum state transfer (QST) provides a method to send arbitrary quantum
states from one system to another. Such a concept is crucial for transmitting
quantum information into the quantum memory, quantum processor, and quantum
network. The standard benchmark of QST is the average fidelity between the
prepared and received states. In this work, we provide a new benchmark which
reveals the non-classicality of QST based on spatio-temporal steering (STS).
More specifically, we show that the local-hidden-state (LHS) model in STS can
be viewed as the classical strategy of state transfer. Therefore, we can
quantify the non-classicality of QST process by measuring the spatio-temporal
steerability. We then apply the spatio-temporal steerability measurement
technique to benchmark quantum devices including the IBM quantum experience and
QuTech quantum inspire under QST tasks. The experimental results show that the
spatio-temporal steerability decreases as the circuit depth increases, and the
reduction agrees with the noise model, which refers to the accumulation of
errors during the QST process. Moreover, we provide a quantity to estimate the
signaling effect which could result from gate errors or intrinsic non-Markovian
effect of the devices.
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