Federated Learning with Python: Design and implement a federated learning system and develop applications using existing frameworks
by Kiyoshi Nakayama PhD (Author), George Jeno (Author)
Publisher Finelybook 出版社：Packt Publishing (October 28, 2022)
pages 页数：326 pages
Learn the essential skills for building an authentic federated learning system with Python and take your machine learning applications to the next level
Design distributed systems that can be applied to real-world federated learning applications at scale
Discover multiple aggregation schemes applicable to various ML settings and applications
Develop a federated learning system that can be tested in distributed machine learning settings
Federated learning (FL) is a paradigm-shifting technology in AI that enables and accelerates machine learning (ML), allowing you to work on private data. It has become a must-have solution for most enterprise industries, making it a critical part of your learning journey. This book helps you get to grips with the building blocks of FL and how the systems work and interact with each other using solid coding examples.
FL is more than just aggregating collected ML models and bringing them back to the distributed agents. This book teaches you about all the essential basics of FL and shows you how to design distributed systems and learning mechanisms carefully so as to synchronize the dispersed learning processes and synthesize the locally trained ML models in a consistent manner. This way, you'll be able to create a sustainable and resilient FL system that can constantly function in real-world operations. This book goes further than simply outlining FL's conceptual framework or theory, as is the case with the majority of research-related literature.
By the end of this book, you'll have an in-depth understanding of the FL system design and implementation basics and be able to create an FL system and applications that can be deployed to various local and cloud environments.
What you will learn
Discover the challenges related to centralized big data ML that we currently face along with their solutions
Understand the theoretical and conceptual basics of FL
Acquire design and architecting skills to build an FL system
Explore the actual implementation of FL servers and clients
Find out how to integrate FL into your own ML application
Understand various aggregation mechanisms for diverse ML scenarios
Discover popular use cases and future trends in FL
Who this book is for
This book is for machine learning engineers, data scientists, and artificial intelligence (AI) enthusiasts who want to learn about creating machine learning applications empowered by federated learning. You'll need basic knowledge of Python programming and machine learning concepts to get started with this book.
Table of Contents
Challenges in Big Data and Traditional AI
What Is Federated Learning?
Workings of the Federated Learning System
Federated Learning Server Implementation with Python
Federated Learning Client-Side Implementation
Running the Federated Learning System and Analyzing the Results
Introducing Existing Federated Learning Frameworks
Case Studies with Key Use Cases of Federated Learning Applications
Future Trends and Developments
Appendix, Exploring Internal Libraries