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Federated learning systems = towards...
~
Rehman, Muhammad Habib ur.
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Federated learning systems = towards privacy-preserving distributed AI /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Federated learning systems/ edited by Muhammad Habib ur Rehman, Mohamed Medhat Gaber.
Reminder of title:
towards privacy-preserving distributed AI /
other author:
Rehman, Muhammad Habib ur.
Published:
Cham :Springer Nature Switzerland : : 2025.,
Description:
xviii, 165 p. :ill. (some col.), digital ;24 cm.
[NT 15003449]:
Chapter 1.Empowering Federated Learning for Massive Models with NVIDIA FLARE -- Chapter 2.Fed-BioMed: Open, Transparent and Trusted Federated Learning for Real-world Healthcare Applications -- Chapter 3.Client Selection in Federated Learning: Challenges, Strategies, and Contextual Considerations -- Chapter 4.A Review of Secure Gradient Compression Techniques for Federated Learning in the Internet of Medical Things -- Chapter 5.Federated Learning for Recommender Systems: Advances and perspectives -- Chapter 6.The Missing Subject in Health Federated Learning: Preventive and Personalized Care -- Chapter 7.Privacy-Enhancing Technologies for Federated Learning -- Chapter 8.Collaborative Defense: Federated Learning for Intrusion Detection Systems.
Contained By:
Springer Nature eBook
Subject:
Federated learning (Machine learning) -
Online resource:
https://doi.org/10.1007/978-3-031-78841-3
ISBN:
9783031788413
Federated learning systems = towards privacy-preserving distributed AI /
Federated learning systems
towards privacy-preserving distributed AI /[electronic resource] :edited by Muhammad Habib ur Rehman, Mohamed Medhat Gaber. - Cham :Springer Nature Switzerland :2025. - xviii, 165 p. :ill. (some col.), digital ;24 cm. - Studies in computational intelligence,v. 8321860-9503 ;. - Studies in computational intelligence ;v. 832..
Chapter 1.Empowering Federated Learning for Massive Models with NVIDIA FLARE -- Chapter 2.Fed-BioMed: Open, Transparent and Trusted Federated Learning for Real-world Healthcare Applications -- Chapter 3.Client Selection in Federated Learning: Challenges, Strategies, and Contextual Considerations -- Chapter 4.A Review of Secure Gradient Compression Techniques for Federated Learning in the Internet of Medical Things -- Chapter 5.Federated Learning for Recommender Systems: Advances and perspectives -- Chapter 6.The Missing Subject in Health Federated Learning: Preventive and Personalized Care -- Chapter 7.Privacy-Enhancing Technologies for Federated Learning -- Chapter 8.Collaborative Defense: Federated Learning for Intrusion Detection Systems.
This book dives deep into both industry implementations and cutting-edge research driving the Federated Learning (FL) landscape forward. FL enables decentralized model training, preserves data privacy, and enhances security without relying on centralized datasets. Industry pioneers like NVIDIA have spearheaded the development of general-purpose FL platforms, revolutionizing how companies harness distributed data. Alternately, for medical AI, FL platforms, such as FedBioMed, enable collaborative model development across healthcare institutions to unlock massive value. Research advances in PETs highlight ongoing efforts to ensure that FL is robust, secure, and scalable. Looking ahead, federated learning could transform public health by enabling global collaboration on disease prevention while safeguarding individual privacy. From recommendation systems to cybersecurity applications, FL is poised to reshape multiple domains, driving a future where collaboration and privacy coexist seamlessly.
ISBN: 9783031788413
Standard No.: 10.1007/978-3-031-78841-3doiSubjects--Topical Terms:
3781177
Federated learning (Machine learning)
LC Class. No.: Q325.65
Dewey Class. No.: 006.31
Federated learning systems = towards privacy-preserving distributed AI /
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edited by Muhammad Habib ur Rehman, Mohamed Medhat Gaber.
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Chapter 1.Empowering Federated Learning for Massive Models with NVIDIA FLARE -- Chapter 2.Fed-BioMed: Open, Transparent and Trusted Federated Learning for Real-world Healthcare Applications -- Chapter 3.Client Selection in Federated Learning: Challenges, Strategies, and Contextual Considerations -- Chapter 4.A Review of Secure Gradient Compression Techniques for Federated Learning in the Internet of Medical Things -- Chapter 5.Federated Learning for Recommender Systems: Advances and perspectives -- Chapter 6.The Missing Subject in Health Federated Learning: Preventive and Personalized Care -- Chapter 7.Privacy-Enhancing Technologies for Federated Learning -- Chapter 8.Collaborative Defense: Federated Learning for Intrusion Detection Systems.
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This book dives deep into both industry implementations and cutting-edge research driving the Federated Learning (FL) landscape forward. FL enables decentralized model training, preserves data privacy, and enhances security without relying on centralized datasets. Industry pioneers like NVIDIA have spearheaded the development of general-purpose FL platforms, revolutionizing how companies harness distributed data. Alternately, for medical AI, FL platforms, such as FedBioMed, enable collaborative model development across healthcare institutions to unlock massive value. Research advances in PETs highlight ongoing efforts to ensure that FL is robust, secure, and scalable. Looking ahead, federated learning could transform public health by enabling global collaboration on disease prevention while safeguarding individual privacy. From recommendation systems to cybersecurity applications, FL is poised to reshape multiple domains, driving a future where collaboration and privacy coexist seamlessly.
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Intelligent Technologies and Robotics (SpringerNature-42732)
based on 0 review(s)
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