Quantum software engineering supremacy in intelligent robotics

Автор: Korenkov Vladimir, Reshetnikov Andrey, Ulyanov Sergey

Журнал: Сетевое научное издание «Системный анализ в науке и образовании» @journal-sanse

Статья в выпуске: 4, 2020 года.

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A new approach for implementing quantum massive parallel computations is presented, using methods of circuit implementation of quantum algorithmic gates. Methods for designing fast quantum operators such as superposition, entanglement, and interference are considered. The presented methods allow you to reduce the number of actions that must be performed. The implementation is presented as a support tool for SW&HW supercomputer accelerator for modeling quantum algorithms. In particular, a new quantum-genetic and quantum-fuzzy inference algorithm for intelligent robotic control has been implemented. Also, a new method for performing Grover's inference without operations with the product is presented.

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Quantum algorithm gate, hardware architecture, reduced quantum operations, classical efficient simulation, intelligent robotics

Короткий адрес: https://sciup.org/14122721

IDR: 14122721

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