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Dancing with Qubits

You're reading from   Dancing with Qubits From qubits to algorithms, embark on the quantum computing journey shaping our future

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Product type Paperback
Published in Mar 2024
Publisher Packt
ISBN-13 9781837636754
Length 684 pages
Edition 2nd Edition
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Author (1):
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Robert S. Sutor Robert S. Sutor
Author Profile Icon Robert S. Sutor
Robert S. Sutor
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Table of Contents (26) Chapters Close

Preface I Foundations
Why Quantum Computing FREE CHAPTER They’re Not Old, They’re Classics More Numbers Than You Can Imagine Planes and Circles and Spheres, Oh My Dimensions 6 What Do You Mean “Probably”? II Quantum Computing
One Qubit Two Qubits, Three Wiring Up the Circuits From Circuits to Algorithms Getting Physical III Advanced Topics
Considering NISQ Algorithms Introduction to Quantum Machine Learning Questions about the Future Afterword
A Quick Reference B Notices C Production Notes Other Books You May Enjoy
References
Index
Appendices

10.5 Eigenvalue and phase estimation

The next tool we need for Shor’s factoring algorithm is a way to estimate the eigenvalues of a special unitary operation we construct.

Let U be an n-by-n square matrix with complex entries. From section 5.10, the solutions λ of the equation algorithm$phase estimation

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are the eigenvalues {λ1, …, λN} of U. Some of the λj may be equal. If a particular eigenvalue λj shows up k times among the N values, we say λj has multiplicity k. multiplicity

Each eigenvalue λj corresponds to an eigenvector vj so that

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We can take each vj to be a unit vector. When U is unitary, each λj is a complex unit.

We have so far represented an eigenvalue λ of a unitary matrix as eφi with 0 ≤ φ < 2π. We now, instead, think of the eigenvalue as e2πφi with 0 ≤ φ < 1.

This change allows...

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