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Quantum Computing Experimentation with Amazon Braket

You're reading from   Quantum Computing Experimentation with Amazon Braket Explore Amazon Braket quantum computing to solve combinatorial optimization problems

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Product type Paperback
Published in Jul 2022
Publisher Packt
ISBN-13 9781800565265
Length 420 pages
Edition 1st Edition
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Author (1):
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Alex Khan Alex Khan
Author Profile Icon Alex Khan
Alex Khan
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Table of Contents (19) Chapters Close

Preface 1. Introduction
2. Section 1: Getting Started with Amazon Braket FREE CHAPTER
3. Chapter 1: Setting Up Amazon Braket 4. Chapter 2: Braket Devices Explained 5. Chapter 3: User Setup, Tasks, and Understanding Device Costs 6. Chapter 4: Writing Your First Amazon Braket Code Sample 7. Section 2: Building Blocks for Real-World Use Cases
8. Chapter 5: Using a Quantum Annealer – Developing a QUBO Function and Applying Constraints 9. Chapter 6: Using Gate-Based Quantum Computers – Qubits and Quantum Circuits 10. Chapter 7: Using Gate Quantum Computers – Basic Quantum Algorithms 11. Chapter 8: Using Hybrid Algorithms – Optimization Using Gate-Based Quantum Computers 12. Chapter 9: Running QAOA on Simulators and Amazon Braket Devices 13. Section 3: Real-World Use Cases
14. Chapter 10: Amazon Braket Hybrid Jobs, PennyLane, and other Braket Features 15. Chapter 11: Single-Objective Optimization Use Case 16. Chapter 12: Multi-Objective Optimization Use Case 17. Other Books You May Enjoy Appendix: Knapsack BQM Derivation

Summary

In this chapter, we focused on implementing the Quantum Approximate Optimization Algorithm (QAOA), a hybrid algorithm. We started by using the phase adder circuit from Chapter 7, Using Gate Quantum Computers – Basic Quantum Algorithms, which has been modified for addition and subtraction. We used this to create a circuit that can sample all the possible solutions of an objective function. We found that this method provides equal probabilities of the different solutions and required a substantially large number of qubits and gate depth. To find the minimum value more efficiently, for optimization applications, it is necessary to be able to efficiently sample the lowest cost. We went over the concepts of how QAOA works and how its parameters impact the performance of the algorithm. We discussed that, in practice, the algorithm uses a classical optimization application to find the optimal parameters, and that this process is repeated in a few cycles to find the optimal...

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