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Quantum Computing Algorithms

You're reading from   Quantum Computing Algorithms Discover how a little math goes a long way

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Product type Paperback
Published in Sep 2023
Publisher Packt
ISBN-13 9781804617373
Length 342 pages
Edition 1st Edition
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Author (1):
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Barry Burd Barry Burd
Author Profile Icon Barry Burd
Barry Burd
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Table of Contents (19) Chapters Close

Preface 1. Introduction to Quantum Computing 2. Part 1 Nuts and Bolts FREE CHAPTER
3. Chapter 1: New Ways to Think about Bits 4. Chapter 2: What Is a Qubit? 5. Chapter 3: Math for Qubits and Quantum Gates 6. Chapter 4: Qubit Conspiracy Theories 7. Part 2 Making Qubits Work for You
8. Chapter 5: A Fanciful Tale about Cryptography 9. Chapter 6: Quantum Networking and Teleportation 10. Part 3 Quantum Computing Algorithms
11. Chapter 7: Deutsch’s Algorithm 12. Chapter 8: Grover’s Algorithm 13. Chapter 9: Shor’s Algorithm 14. Part 4 Beyond Gate-Based Quantum Computing
15. Chapter 10: Some Other Directions for Quantum Computing 16. Assessments 17. Index 18. Other Books You May Enjoy

Summary

Grover’s algorithm speeds up the search of an unordered list. We represent a list of size N with n qubits, where N = 2n. Eventually, when we measure the qubits, we see a combination of n bits. Each possible combination stands for an element in the list. Each step of Grover’s algorithm increases the probability that the measurement outcome represents the target of our search.

The optimal number of steps depends on the number of elements in our unordered list. Each step of Grover’s algorithm makes approximately the same number increase in the target combination’s amplitude. Since an amplitude is the square root of a probability, the optimal number of steps grows with {"mathml":"<math style=\"font-family:stix;font-size:16px;\" xmlns=\"http://www.w3.org/1998/Math/MathML\"><mstyle mathsize=\"16px\"><msqrt><mi>N</mi></msqrt></mstyle></math>"}. That’s better than a classical search, where the optimal number of steps grows with N.

Grover’s search can be useful when it’s easy to verify that a particular element is the search target but difficult to find the search target among all the choices. Problems...

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