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Federated Deep Learning for Healthcare: A Practical Guide with Challenges and Opportunities
Indigo
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Federated Deep Learning for Healthcare: A Practical Guide with Challenges and Opportunities
By None
Current price: $251.95


By None
Federated Deep Learning for Healthcare: A Practical Guide with Challenges and Opportunities
Current price: $251.95
Loading Inventory...
Size: Hardcover
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Indigo
This book provides a practical guide to federated deep learning for healthcare including fundamental concepts, framework, and the applications comprising domain adaptation, model distillation, and transfer learning. It covers concerns in model fairness, data bias, regulatory compliance, and ethical dilemmas. It investigates several privacy-preserving methods such as homomorphic encryption, secure multi-party computation, and differential privacy. It will enable readers to build and implement federated learning systems that safeguard private medical information.Features:
Offers a thorough introduction of federated deep learning methods designed exclusively for medical applications.
Investigates privacy-preserving methods with emphasis on data security and privacy.
Discusses healthcare scaling and resource efficiency considerations.
Examines methods for sharing information among various healthcare organizations while retaining model performance.
This book is aimed at graduate students and researchers in federated learning, data science, AI/machine learning, and healthcare.
This book provides a practical guide to federated deep learning for healthcare including fundamental concepts, framework, and the applications comprising domain adaptation, model distillation, and transfer learning. It covers concerns in model fairness, data bias, regulatory compliance, and ethical dilemmas. It investigates several privacy-preserving methods such as homomorphic encryption, secure multi-party computation, and differential privacy. It will enable readers to build and implement federated learning systems that safeguard private medical information.Features:
Offers a thorough introduction of federated deep learning methods designed exclusively for medical applications.
Investigates privacy-preserving methods with emphasis on data security and privacy.
Discusses healthcare scaling and resource efficiency considerations.
Examines methods for sharing information among various healthcare organizations while retaining model performance.
This book is aimed at graduate students and researchers in federated learning, data science, AI/machine learning, and healthcare.



















