Full Description
This book extends the first volume with contributions that advance the state of the art and demonstrate their impact in real-world applications. In a few years, the convergence of artificial intelligence (AI) and quantum computing has moved from speculation to concrete prototypes and tools.
Key Highlights
• Health and Precision Medicine: Deep learning and hybrid quantum-classical models support osteoporosis screening from dental radiographs, Alzheimer's staging with 3D MRI, EEG-based cognitive-state assessment, and HIV/TB biomarker classification, strengthening prevention, diagnosis, and personalized treatment.
• Education, Human-AI Interaction and Fairness: An automatic reviewer of handwritten flowcharts scales feedback in programming courses, while a benchmarking study on speaker ID and gender recognition analyzes bias; quantum granular computing provides a Hilbert-space framework for advanced teaching and research.
• Sustainable Production, Cities, and Environment: Vision systems for welding defects, cucumber disease detection, and analogue water-meter digitization improve manufacturing quality, reduce food waste, and enable transparent water management, alongside work on electric fleets, mobile robots, and sea turtle monitoring.
• Data-Centric and Trustworthy AI for the Digital Economy: GAN-based synthetic tabular data, decision-support for cryptocurrency markets, and benchmarks for intrusion detection and malware classification offer tools for scarce or volatile data, with emphasis on robustness, interpretability, and reproducible evaluation.
• Quantum Algorithms, Hardware and Software Infrastructure: Chapters address quantum optimization (QAOA, adiabatic 3-SAT), quantum error correction and superconducting devices, plus experimental QKD, while a C-to-QIR compiler and quantum granules framework provide software and conceptual support for hybrid systems.
•Optimization and Intelligent Systems: Fuzzy fractal search and fuzzy dragonfly metaheuristics optimize neural architectures and controllers and, together with dynamic hypernetworks and RL-based fleet planning, show how advanced optimization can be embedded in practical engineering workflows.
This book is aimed at researchers, graduate students, and practitioners seeking rigorous, application-oriented work at the AI-quantum interface. By linking methodological advances with SDG-aligned use cases in health, education, infrastructure, energy, and security, it offers a concise blueprint for how quantum-aware intelligent technologies can support more resilient and sustainable societies.
Contents
Cucumber Disease Inspection for Automated Quality Control in a Production Facility Based on Visual Transformers.- Artificial Intelligence-Based Image Processing for Osteoporosis Detection in Panoramic Radiograph.- Deep Learning for Multiclass Classification of Alzheimer's Disease Stages Using 3D RGB T1-Weighted MRI.- Hybrid Time-Frequency Deep Attention Network for EEG-Based Cognitive State Classification.- Variational Quantum Eigensolver for Clinical Biomarker Classification: A Hybrid Quantum-Classical Approach to HIV/TB Co-Infection and Drug Resistance Prediction.- Automatic Reviewer of Handwritten Flowcharts Structures Using CNNs.- Quantum Granular Computing: A Hilbert-Space Primer.- Speaker Identification and Gender Recognition: A Benchmarking Study of ML and DL Models.



