Dennis Wayo Sven Groppe Wayo Quantum Machine Learning Codebook

Quantum Machine Learning Codebook

von Dennis Wayo Sven Groppe

Build Hybrid Models with PennyLane, Cirq, and Qiskit in Notebooks

Preis unbekannt

Buch in deiner Nähe kaufen


...oder deine aktuelle Postleitzahl eingeben:
oder

Beschreibung

This book covers an end-to-end, build-first path into practical quantum machine learning. It begins with foundational concepts explained in plain language, then moves through trainable variational classifiers, quantum kernel methods, and Born-style generative models. It continues with hybrid deep-learning workflows and simulator-to-hardware transition practices, and concludes with a full capstone and reproducibility playbook. Every chapter is tied to runnable notebooks so readers can execute, modify, and verify each method directly.

The text is designed for readers who want working systems, not theory alone. It shows how to structure experiments, control variance, compare against strong classical baselines, and report results with technical honesty. Special focus is given to shot management, cross-framework parity, transpilation effects, and cost-aware evaluation so that claims remain methodologically defensible.

Across the chapters, the same modeling ideas are translated across PennyLane, Cirq, and Qiskit to promote portability beyond any single stack. The result is a practical reference for learners and practitioners who need to design, train, evaluate, and communicate hybrid quantum-classical models under real engineering constraints.


This book covers an end-to-end, build-first path into practical quantum machine learning. It begins with foundational concepts explained in plain language, then moves through trainable variational classifiers, quantum kernel methods, and Born-style generative models. It continues with hybrid deep-learning workflows and simulator-to-hardware transition practices, and concludes with a full capstone and reproducibility playbook. Every chapter is tied to runnable notebooks so readers can execute, modify, and verify each method directly. The text is designed for readers who want working systems, not theory alone. It shows how to structure experiments, control variance, compare against strong classical baselines, and report results with technical honesty. Special focus is given to shot management, cross-framework parity, transpilation effects, and cost-aware evaluation so that claims remain methodologically defensible. Across the chapters, the same modeling ideas are translated across PennyLane, Cirq, and Qiskit to promote portability beyond any single stack. The result is a practical reference for learners and practitioners who need to design, train, evaluate, and communicate hybrid quantum-classical models under real engineering constraints.  
Run-ready notebooks pair every chapter so you execute complete workflows instantly without pseudocode gaps Multi-framework fluency across PennyLane, Cirq & Qiskit reduces lock-in and sharpens real-world transferability Reproducible end-to-end rigor from foundations to hardware-aware execution with cost/quality trade-off guidance

Autor*in

Dennis Wayo

Themen in »Quantum Machine Learning Codebook«

quantum machine learning variational quantum classifier VQC quantum kernels quantum feature maps Born machine generative quantum models hybrid quantum-classical models PennyLane Cirq Qiskit reproducible notebooks NISQ shot-based evaluation quantum model benchmarking

Stimmen zu »Quantum Machine Learning Codebook«

Details

ISBN: 9783032337849
Verlag: Springer International Publishing
Erscheinung: 25.09.2026

Link teilen


Über buchnah.de | Die Buchhandlungen | Die Verlage | Impressum & Kontakt | Datenschutz | Presse


Auf dieser Seite kannst Du Buchhandlungen in der Nähe finden