
Artificial Intelligence Using Federated Learning
Fundamentals, Challenges, and Applications
- 344 pages
- English
- ePUB (mobile friendly)
- Available on iOS & Android
Artificial Intelligence Using Federated Learning
Fundamentals, Challenges, and Applications
About this book
Federated machine learning is a novel approach to combining distributed machine learning, cryptography, security, and incentive mechanism design. It allows organizations to keep sensitive and private data on users or customers decentralized and secure, helping them comply with stringent data protection regulations like GDPR and CCPA.
Artificial Intelligence Using Federated Learning: Fundamentals, Challenges, and Applications enables training AI models on a large number of decentralized devices or servers, making it a scalable and efficient solution. It also allows organizations to create more versatile AI models by training them on data from diverse sources or domains. This approach can unlock innovative use cases in fields like healthcare, finance, and IoT, where data privacy is paramount.
The book is designed for researchers working in Intelligent Federated Learning and its related applications, as well as technology development, and is also of interest to academicians, data scientists, industrial professionals, researchers, and students.
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Information
Table of contents
- Cover
- Half Title
- Series
- Title
- Copyright
- Contents
- Preface
- About the Editors
- List of Contributors
- Chapter 1 Federated Learning: Overview, Challenges, and Ethical Considerations
- Chapter 2 In-Depth Analysis of Artificial Intelligence Practices: Robot Tutors and Federated Learning Approach in English Education
- Chapter 3 Enabling Federated Learning in the Classroom: Sociotechnical Ecosystem on Artificial Intelligence Integration in Educational Practices
- Chapter 4 Real-Time Implementation of Improved Automatic Number Plate Recognition Using Federated Learning
- Chapter 5 Fake Currency Identification Using Artificial Intelligence and Federated Learning
- Chapter 6 Blockchain-Enhanced Federated Learning for Privacy-Preserving Collaboration
- Chapter 7 Federated Learning-Based Smart Transportation Solutions: Deploying Lightweight Models on Edge Devices in the Internet of Vehicles
- Chapter 8 Application of Artificial Intelligence and Federated Learning in Petroleum Processing
- Chapter 9 Artificial Intelligence Using Federated Learning
- Chapter 10 Applications of Federated Learning in AI, IoT, Healthcare, Finance, Banking, and Cross-Domain Learning
- Chapter 11 Exploring Future Trends and Emerging Applications: A Glimpse Into Tomorrow’s Landscape
- Chapter 12 Securing Federated Deep Learning: Privacy Risks and Countermeasures
- Chapter 13 IoT Networks: Integrated Learning for Privacy-Preserving Machine Learning
- Chapter 14 Federated Query Processing for Data Integration Using Semantic Web Technologies: A Review
- Index