Machine Learning and Blockchain Challenges, Future Trends and Sustainable Technologies
Abstract
With contributions from leading researchers and industry experts, this book examines cutting-edge applications, integration models, and sustainable solutions across sectors including finance, agriculture, healthcare, IoT, and smart cities.
Chapters cover blockchain-enabled fintech operations, fraud detection, deep learningdriven intrusion detection, AI-enhanced smart contracts, and data-driven healthcare innovations. Case studies, methodologies, and future-oriented insights demonstrate how these technologies can foster secure, efficient, and sustainable ecosystems. By bridging theoretical foundations with practical implementations, this book offers readers a roadmap to navigate the opportunities and challenges shaping the next generation of intelligent, blockchain-powered systems.
Key Features
Integrates blockchain with machine learning for real-world applications.
Applies advanced analytics, automation, and AI models to enhance blockchain ecosystems.
Develops secure solutions in fintech, agriculture, healthcare, IoT, and smart cities.
Evaluates case studies and frameworks addressing challenges and vulnerabilities.
Explores sustainable, future-ready trends shaping intelligent systems.