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Essential Mathematics for Quantum Computing

You're reading from   Essential Mathematics for Quantum Computing A beginner's guide to just the math you need without needless complexities

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Product type Paperback
Published in Apr 2022
Publisher Packt
ISBN-13 9781801073141
Length 252 pages
Edition 1st Edition
Languages
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Author (1):
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Leonard S. Woody III Leonard S. Woody III
Author Profile Icon Leonard S. Woody III
Leonard S. Woody III
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Introduction
2. Chapter 1: Superposition with Euclid FREE CHAPTER 3. Chapter 2: The Matrix 4. Section 2: Elementary Linear Algebra
5. Chapter 3: Foundations 6. Chapter 4: Vector Spaces 7. Chapter 5: Using Matrices to Transform Space 8. Section 3: Adding Complexity
9. Chapter 6: Complex Numbers 10. Chapter 7: EigenStuff 11. Chapter 8: Our Space in the Universe 12. Chapter 9: Advanced Concepts 13. Section 4: Appendices
14. Other Books You May Enjoy Appendix 1: Bra–ket Notation 1. Appendix 2: Sigma Notation 2. Appendix 3: Trigonometry 3. Appendix 4: Probability 4. Appendix 5: References

Singular value decomposition

Singular Value Decomposition (SVD) is probably the most famous decomposition you can do for linear operators and matrices. It is at the core of search engines and machine learning algorithms. Additionally, it can be used on any type of matrix, even rectangular ones. However, we will only look at square matrices.

Succinctly stated, it guarantees that for any matrix A, it can be decomposed into three matrices:

Whereas U is a unitary matrix, Σ (sigma) is a diagonal matrix with what is known as the singular values of A on its diagonal, and V is also a unitary matrix. It should be noted that this decomposition is not unique, and different matrices can be used for U, Σ, and V.

Let's look at an example. We have the following matrix A:

Without going through the math, I'm going to tell you that SVD can be used to get this decomposition:

Let's make sure...

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