Quantum Computing. Melanie Swan
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Название: Quantum Computing

Автор: Melanie Swan

Издательство: Ingram

Жанр: Физика

Серия: Between Science and Economics

isbn: 9781786348227

isbn:

СКАЧАТЬ measure of the number of states and ways in which a dynamic system can move, whether this “motion” is considered in physical space or in an abstract space of configurations.

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       Chapter 3

       Quantum Computing: Basic Concepts

      … it seems that the laws of physics present no barrier to reducing the size of computers until bits are the size of atoms, and quantum behavior holds sway

      — Richard P. Feynman (1985)

       Abstract

      Quantum computing is a research frontier in physical science with a focus on developing information СКАЧАТЬ