Quantum Error Correction Quantum Error Correction
Quantum Science and Technology

Quantum Error Correction

Symmetric, Asymmetric, Synchronizable, and Convolutional Codes

    • USD 49.99
    • USD 49.99

Descripción editorial

This text presents an algebraic approach to the construction of several important families of quantum codes derived from classical codes by applying the well-known Calderbank-Shor-Steane (CSS) construction, the Hermitian, and the Steane’s enlargement construction to certain classes of classical codes. These quantum codes have good parameters and have been introduced recently in the literature. In addition, the book presents families of asymmetric quantum codes with good parameters and provides a detailed description of the procedures adopted to construct families of asymmetric quantum convolutional codes.
Featuring accessible language and clear explanations, the book is suitable for use in advanced undergraduate and graduate courses as well as for self-guided study and reference. It provides an expert introduction to algebraic techniques of code construction and, because all of the constructions are performed algebraically, it equips the reader to construct families of codes, rather than only codes with specific parameters. The text offers an abundance of worked examples, exercises, and open-ended problems to motivate the reader to further investigate this rich area of inquiry. End-of-chapter summaries and a glossary of key terms allow for easy review and reference.

GÉNERO
Técnicos y profesionales
PUBLICADO
2020
25 de junio
IDIOMA
EN
Inglés
EXTENSIÓN
240
Páginas
EDITORIAL
Springer International Publishing
VENDEDOR
Springer Nature B.V.
TAMAÑO
13.5
MB
Quantum Machine Learning Quantum Machine Learning
2023
Entanglement in Spin Chains Entanglement in Spin Chains
2022
Introduction to Quantum Computing with Q# and QDK Introduction to Quantum Computing with Q# and QDK
2022
Quantum Hybrid Electronics and Materials Quantum Hybrid Electronics and Materials
2022
Hybrid Quantum Systems Hybrid Quantum Systems
2022
Machine Learning with Quantum Computers Machine Learning with Quantum Computers
2021