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A Practical Guide to Quantum Machine Learning and Quantum Optimization

You're reading from  A Practical Guide to Quantum Machine Learning and Quantum Optimization

Product type Book
Published in Mar 2023
Publisher Packt
ISBN-13 9781804613832
Pages 680 pages
Edition 1st Edition
Languages
Authors (2):
Elías F. Combarro Elías F. Combarro
Profile icon Elías F. Combarro
Samuel González-Castillo Samuel González-Castillo
Profile icon Samuel González-Castillo
View More author details

Table of Contents (27) Chapters

Preface 1. Part I: I, for One, Welcome our New Quantum Overlords
2. Chapter 1: Foundations of Quantum Computing 3. Chapter 2: The Tools of the Trade in Quantum Computing 4. Part II: When Time is Gold: Tools for Quantum Optimization
5. Chapter 3: Working with Quadratic Unconstrained Binary Optimization Problems 6. Chapter 4: Adiabatic Quantum Computing and Quantum Annealing 7. Chapter 5: QAOA: Quantum Approximate Optimization Algorithm 8. Chapter 6: GAS: Grover Adaptive Search 9. Chapter 7: VQE: Variational Quantum Eigensolver 10. Part III: A Match Made in Heaven: Quantum Machine Learning
11. Chapter 8: What Is Quantum Machine Learning? 12. Chapter 9: Quantum Support Vector Machines 13. Chapter 10: Quantum Neural Networks 14. Chapter 11: The Best of Both Worlds: Hybrid Architectures 15. Chapter 12: Quantum Generative Adversarial Networks 16. Part IV: Afterword and Appendices
17. Chapter 13: Afterword: The Future of Quantum Computing
18. Assessments 19. Bibliography
20. Index
21. Other Books You May Enjoy Appendix A: Complex Numbers
1. Appendix B: Basic Linear Algebra 2. Appendix C: Computational Complexity 3. Appendix D: Installing the Tools 4. Appendix E: Production Notes

6.3 Using GAS with Qiskit

If you want to practice what you have learned in this chapter about Grover’s search, the Dürr-Høyer algorithm, and the construction of oracles, you can try to implement your own version of GAS in Qiskit from scratch. It is not a difficult project and it can be very satisfactory. However, there is no need for that. In the Qiskit Optimization module, you can find a ready-to-use implementation of Grover Adaptive Search (we will be using version 0.4.0 of the package). Let’s see how to use it.

One additional advantage of working with Qiskit’s GAS implementation is that it accepts the optimization problem format that we used with QAOA in Section 5.2.2. The simplest way of using it is by defining a QUBO problem like the one that we can create with the following piece of code:

from qiskit_optimization.problems import QuadraticProgram 
 
qp = QuadraticProgram() 
 
qp.binary_var(’x’) 
 
qp.binary_var(’y’) 
...
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