Quantum computations (course of lectures)
- URL: http://arxiv.org/abs/2107.08047v3
- Date: Wed, 22 Sep 2021 10:17:05 GMT
- Title: Quantum computations (course of lectures)
- Authors: Yuri I. Ozhigov
- Abstract summary: The course is devoted to a new type of computations based on quantum mechanics.
Various forms of quantum computing are considered: the Feynman gate model, fermionic and adiabatic computations.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This course of lectures has been taught for several years at the Lomonosov
Moscow State University; its modified version in 2021 is read in the Zhejiang
University (Hangzhou), in the framework of summer school on quantum computing.
The course is devoted to a new type of computations based on quantum mechanics.
Quantum computations are fundamentally different from classical ones in that
they occur in the space of so-called quantum states, and not in ordinary binary
strings. Quantum computing is a real process in which the mathematical
description is inextricably linked with quantum physics. Various forms of
quantum computing are considered: the Feynman gate model, fermionic and
adiabatic computations. A class of problems is described in which quantum
computing is not only more efficient than classical ones, but also cannot be
replaced by them. The course is designed for students of physics and
mathematics and natural science specialties as well as all those interested in
this subject. It requires familiarity with the basics of linear algebra and
mathematical analysis in the first two courses of the university.
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