
Federated Learning
Ben Rizer
In an age where data privacy is paramount, "Federated Learning: The Role of Federated Learning in Shaping the Future of Privacy-Preserving AI" presents a groundbreaking exploration of how Federated Learning can revolutionize artificial intelligence while safeguarding sensitive information. This book delves deep into the intricacies of Federated Learning, a decentralized approach that enables multiple devices to collaboratively train machine learning models without sharing their raw data.
Beginning with an overview of traditional AI and its challenges, the book outlines the urgent need for privacy-preserving methodologies in our data-driven world. Readers will discover the fundamentals of Federated Learning, including its architecture, key algorithms, and the innovative frameworks that make it possible.
Through real-world case studies across various sectors—such as healthcare, finance, and IoT—this book illustrates how Federated Learning empowers organizations to harness the power of AI while maintaining the integrity and confidentiality of user data. The narrative is enriched with insights into the ethical considerations and governance frameworks necessary for responsible AI practices.
This book provides a comprehensive guide to understanding Federated Learning and its transformative potential. With practical implementation steps and a forward-looking perspective on emerging trends, "Federated Learning" is an essential resource for anyone looking to navigate the complexities of AI in a privacy-conscious landscape.
Join the journey to uncover how Federated Learning is shaping the future of artificial intelligence, paving the way for a new era of innovation that prioritizes user privacy without compromising on performance.
Duration - 3h 36m.
Author - Ben Rizer.
Narrator - Sam Finley.
Published Date - Tuesday, 14 January 2025.
Copyright - © 2025 Ben Rizer ©.
Location:
United States
Description:
In an age where data privacy is paramount, "Federated Learning: The Role of Federated Learning in Shaping the Future of Privacy-Preserving AI" presents a groundbreaking exploration of how Federated Learning can revolutionize artificial intelligence while safeguarding sensitive information. This book delves deep into the intricacies of Federated Learning, a decentralized approach that enables multiple devices to collaboratively train machine learning models without sharing their raw data. Beginning with an overview of traditional AI and its challenges, the book outlines the urgent need for privacy-preserving methodologies in our data-driven world. Readers will discover the fundamentals of Federated Learning, including its architecture, key algorithms, and the innovative frameworks that make it possible. Through real-world case studies across various sectors—such as healthcare, finance, and IoT—this book illustrates how Federated Learning empowers organizations to harness the power of AI while maintaining the integrity and confidentiality of user data. The narrative is enriched with insights into the ethical considerations and governance frameworks necessary for responsible AI practices. This book provides a comprehensive guide to understanding Federated Learning and its transformative potential. With practical implementation steps and a forward-looking perspective on emerging trends, "Federated Learning" is an essential resource for anyone looking to navigate the complexities of AI in a privacy-conscious landscape. Join the journey to uncover how Federated Learning is shaping the future of artificial intelligence, paving the way for a new era of innovation that prioritizes user privacy without compromising on performance. Duration - 3h 36m. Author - Ben Rizer. Narrator - Sam Finley. Published Date - Tuesday, 14 January 2025. Copyright - © 2025 Ben Rizer ©.
Language:
English
Opening Credits
Duration:00:00:12
Introduction
Duration:00:13:54
Chapter 1 Understanding federated learning
Duration:00:19:34
Chapter 2 The evolution of data privacy
Duration:00:25:12
Chapter 3 Architecture of federated learning
Duration:00:28:30
Chapter 4 Use cases of federated learning
Duration:00:13:01
Chapter 5 Challenges and limitations of federated learning
Duration:00:15:37
Chapter 6 Enhancing privacy through federated learning
Duration:00:39:01
Chapter 7 The future of federated learning
Duration:00:25:55
Chapter 8 Building a federated learning strategy
Duration:00:25:38
Conclusion
Duration:00:09:59
Ending Credits
Duration:00:00:13