Parametric Synthesis of Computational Circuits for Complex Quantum
Algorithms
- URL: http://arxiv.org/abs/2209.09903v1
- Date: Tue, 20 Sep 2022 06:25:47 GMT
- Title: Parametric Synthesis of Computational Circuits for Complex Quantum
Algorithms
- Authors: Cesar Borisovich Pronin, Andrey Vladimirovich Ostroukh
- Abstract summary: The purpose of our quantum synthesizer is enabling users to implement quantum algorithms using higher-level commands.
The proposed approach for implementing quantum algorithms has a potential application in the field of machine learning.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: At the moment, quantum circuits are created mainly by manually placing logic
elements on lines that symbolize quantum bits. The purpose of creating Quantum
Circuit Synthesizer "Naginata" was due to the fact that even with a slight
increase in the number of operations in a quantum algorithm, leads to the
significant increase in size of the corresponding quantum circuit. This causes
serious difficulties both in creating and debugging these quantum circuits. The
purpose of our quantum synthesizer is enabling users an opportunity to
implement quantum algorithms using higher-level commands. This is achieved by
creating generic blocks for frequently used operations such as: the adder,
multiplier, digital comparator (comparison operator), etc. Thus, the user could
implement a quantum algorithm by using these generic blocks, and the quantum
synthesizer would create a suitable circuit for this algorithm, in a format
that is supported by the chosen quantum computation environment. This approach
greatly simplifies the processes of development and debugging a quantum
algorithm. The proposed approach for implementing quantum algorithms has a
potential application in the field of machine learning, in this regard, we
provided an example of creating a circuit for training a simple neural network.
Neural networks have a significant impact on the technological development of
the transport and road complex, and there is a potential for improving the
reliability and efficiency of their learning process by utilizing quantum
computation, through the introduction of quantum computing.
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