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Federated Learning

Jim D Johnston

Narrator Jim D Johnston, Roy Williams

Publisher: Maksym Nevdokhin

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Summary

Explore the future of privacy-preserving artificial intelligence and discover how machine learning models can be trained without centralizing sensitive data. 
Federated Learning is a comprehensive and beginner-friendly guide to one of the most innovative approaches in modern artificial intelligence. Instead of collecting data in a single location, federated learning enables organizations and devices to collaboratively train machine learning models while keeping data where it is generated, improving privacy, security, and regulatory compliance. 
This book explains the principles, architectures, and real-world applications of federated learning, making complex concepts accessible to students, developers, data scientists, and technology professionals seeking to understand next-generation AI systems. 
Inside, you will discover:The fundamentals of federated learning and distributed AIHow decentralized model training worksPrivacy-preserving machine learning techniquesFederated learning architectures and communication protocolsModel aggregation and optimization strategiesSecurity challenges and defenses against adversarial attacksData governance, compliance, and regulatory considerationsApplications in healthcare, finance, mobile devices, IoT, and smart citiesFederated learning frameworks and implementation toolsEmerging trends and the future of decentralized artificial intelligence 
Federated Learning provides the essential knowledge and practical insights needed to understand and implement privacy-aware machine learning systems in an increasingly data-conscious world.
Duration: about 4 hours (03:36:44)
Publishing date: 2026-06-13; Unabridged; Copyright Year: — Copyright Statment: —