Quantum Machine Learning
Concepts, Algorithms, and Applications
-
GET 10% OFF
- Publisher's listprice GBP 78.99
-
37 737 Ft (35 940 Ft + 5% VAT)
The price is estimated because at the time of ordering we do not know what conversion rates will apply to HUF / product currency when the book arrives. In case HUF is weaker, the price increases slightly, in case HUF is stronger, the price goes lower slightly.
- Discount 10% (cc. 3 774 Ft off)
- Discounted price 33 963 Ft (32 346 Ft + 5% VAT)
33 963 Ft
Availability
Not yet published.
Why don't you give exact delivery time?
Delivery time is estimated on our previous experiences. We give estimations only, because we order from outside Hungary, and the delivery time mainly depends on how quickly the publisher supplies the book. Faster or slower deliveries both happen, but we do our best to supply as quickly as possible.
Product details:
- Edition number 1
- Publisher Auerbach Publications
- Date of Publication 23 April 2026
- ISBN 9781041144656
- Binding Paperback
- No. of pages348 pages
- Size 234x156 mm
- Language English
- Illustrations 71 Illustrations, black & white; 71 Line drawings, black & white; 33 Tables, black & white 700
Categories
Short description:
The book explores quantum computing's transformative impact on artificial intelligence and machine learning. Beyond theoretical knowledge, the book emphasizes practical implementation and offers code samples and real-world case studies.
MoreLong description:
In the exploration of new frontiers in data-driven solutions, the potential of quantum-enhanced machine learning has become too important to overlook. Quantum machine learning, though still in its formative stages, holds the promise to tackle some of the most complex problems that lie beyond the reach of classical computing. Quantum Machine Learning: Concepts, Algorithms, and Applications is a guide to understanding such quantum principles as superposition and entanglement and how they can enhance learning algorithms and data-processing capabilities. The book features a carefully structured progression from foundational concepts and core algorithms to application-driven case studies and emerging directions for future exploration.
The book provides a broad and in-depth treatment of topics ranging from quantum data encoding and quantum neural networks to hybrid models and optimization frameworks. Emphasis has also been placed on real-world use cases and the practical tools available for implementation, thereby ensuring that this book serves not only as a reference but also as a springboard for experimentation and innovation. Highlights include the following:
- Implementing quantum neural networks on near-term quantum hardware
- Quantum variational optimization for machine learning
- Quantum-accelerated neural imputations with large language models
- Emerging trends, addressing hardware limitations, algorithm optimization, and ethical considerations
This book serves as both a primer and an advanced guide by providing essential knowledge for understanding and implementing quantum-enhanced AI solutions in various professional contexts. It equips readers to become active participants in the quantum revolution transforming machine learning.
MoreTable of Contents:
1. Introduction to Quantum Computing 2. Principles, Algorithms, and Technologies behind Quantum Computing 3. An Overview of Machine Learning: Concepts, Algorithms, and Practices 4. Quantum Information Theory 5. Quantum Machine Learning from Theory to Data-Driven Implementations 6. A Mathematical Perspective on Quantum Information Theory 7. Quantum Neural Networks 8. Implementing Quantum Neural Networks on Near-Term Quantum Hardware 9. A Comparative Analysis of Classical and Quantum Approaches for Heart Attack Prediction 10. Quantum Optimization for Machine Learning 11. Quantum Variational Optimization for Machine Learning 12. Latest Developments in Quantum Optimization for Machine Learning 13. Quantum Generative Adversarial Networks 14. Heart Disease Prediction Analysis using Quantum-Enhanced Features with Classical and Quantum Machine Learning Models 15. Quantum-Accelerated Neural Imputation with Large Language Models (LLMs) 16. Quantum Key Distribution Beyond 5G and 6G: Hybrid Integrations, Testbeds, and Future Directions
More