Open access peer-reviewed Edited Volume

Federated Learning - A Systematic Review

Federated Learning
Federated Learning A Systematic Review Edited by Sultan Ahmad, Meshal Alharbi, Sudan Jha, Aleem Ali and Robertas Damaševičius

Book metrics overview

2,336 Chapter Downloads

View Full Metrics

Academic Editor

Sultan Ahmad
Sultan Ahmad

Prince Sattam Bin Abdulaziz University,
Saudi Arabia

Co-editors

Meshal Alharbi
Meshal Alharbi

Prince Sattam Bin Abdulaziz University,
Saudi Arabia

Sudan Jha
Sudan Jha

Kathmandu University,
Nepal

Aleem Ali
Aleem Ali

Chandigarh University,
India

Robertas Damaševičius
Robertas Damaševičius

Kaunas University of Technology,
Lithuania

Series Editor

Andries Engelbrecht
Andries Engelbrecht

Stellenbosch University,
South Africa

Published02 April 2025

Doi10.5772/intechopen.1003284

ISBN978-1-83634-211-3

Print ISBN978-1-83634-212-0

eBook (PDF) ISBN978-1-83634-213-7

Copyright year2025

Number of pages192

Part of the book seriesArtificial Intelligence

Issn2633-1403

Read more
Order Print Copy

Edited Volume and chapters are indexed in

  • Google Scholar
  • DOAB
  • Crossref
  • Dimension
  • OpenAIRE
  • AZ ebsco
  • Worldcat
Show more

Table of Contents

Open access  chapters

2. Advancements in Machine Learning and Deep Learning for Breast Cancer Detection: A Systematic Review

By Zeba Khan, Madhavidevi Botlagunta, Gorli L. Aruna Kumari, Pranjali Malviya and Mahendran Botlagunta

45
3. Clustered Federated Learning: A Review

By Majid Morafah and Mahdi Morafah

52
14
1
36
625

IMPACT OF THIS BOOK AND ITS CHAPTERS

2,336 Total Chapter Downloads

1 Crossref Citations

Order a print copy of this book

Hardcover | Printed Full Colour

£119 (ex. VAT)*

Hardcover | Printed Full Colour

IntechOpen Author/Editor?
To get your discount, log in

FREE SHIPPING WORLDWIDE

Order & Delivery info

* Residents of European Union countries need to add a Book Value-Added Tax Rate based on their country of residence. Institutions and companies, registered as VAT taxable entities in their own EU member state, will not pay VAT by providing IntechOpen with their VAT registration number. This is made possible by the EU reverse charge method.

Instructor? Request an Exam Copy