جزئیات کتاب
فرمت
کیندل
صفحات
641
زبان
انگلیسی
منتشر شده
Sep 30, 2022
ناشر
Springer
ISBN-10
3031117484
ISBN-13
9783031117480
توضیحات
The work explores the rapidly evolving field of federated and transfer learning, addressing the growing demand for innovative approaches to harness decentralized data. With contributions from experts in the domain, it delves into key methodologies and their applications, highlighting how these techniques can facilitate knowledge transfer across varied environments while preserving data privacy.
Numerous case studies and cutting-edge research findings illustrate the practical challenges and solutions within federated learning frameworks. Through a comprehensive examination of algorithms and their implications, readers are provided with valuable insights into optimizing learning processes and enhancing collaborative efforts in machine learning.
Numerous case studies and cutting-edge research findings illustrate the practical challenges and solutions within federated learning frameworks. Through a comprehensive examination of algorithms and their implications, readers are provided with valuable insights into optimizing learning processes and enhancing collaborative efforts in machine learning.