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Quantum Optimization Quantum Machine Learning

Quantum Differential Cryptanalysis

arXiv
Authors: Qing Zhou, Songfeng Lu, Zhigang Zhang, Jie Sun

Year

2018

Paper ID

23149

Status

Preprint

Abstract Read

~2 min

Abstract Words

81

Citations

N/A

Abstract

In this paper, we propose a quantum version of the differential cryptanalysis which offers a quadratic speedup over the existing classical one and show the quantum circuit implementing it. The quantum differential cryptanalysis is based on the quantum minimum/maximum-finding algorithm, where the values to be compared and filtered are obtained by calling the quantum counting algorithm. Any cipher which is vulnerable to the classical differential cryptanalysis based on counting procedures can be cracked more quickly under this quantum differential attack.

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  • In this paper, we propose a quantum version of the differential cryptanalysis which offers a quadratic speedup over the existing classical one and show the quantum circuit...

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