Federated Learning

£119.50

Federated Learning

A Primer for Mathematicians

Mathematical theory of computation Maths for computer scientists

Author: Mei Kobayashi

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Collection: ICIAM2023 Springer Series

Language: English

Published by: Springer

Published on: 1st August 2025

Format: LCP-protected ePub

ISBN: 9789819692231


Introduction to Federated Learning

This book serves as a primer on a secure computing framework known as federated learning. Federated learning is the study of methods to enable multiple parties to collaboratively train machine learning/AI models, while each party retains its own, raw data on-premise, never sharing it with others. This book is designed to be accessible to anyone with a background in undergraduate applied mathematics. It covers the basics of topics from computer science that are needed to understand examples of simple federated computing frameworks. It is my hope that by learning basic concepts and technical jargon from computer science, readers will be able to start collaborative work with researchers interested in secure computing.

Chapter 1: Background and Motivation

Chap. 1 provides the background and motivation for data security and federated learning and the simplest type of neural network.

Chapter 2: Multiparty Computation

Chap. 2 introduces the idea of multiparty computation (MPC) and why enhancements are needed to provide security and privacy.

Chapter 3: Edge Computing

Chap. 3 discusses edge computing, a distributed computing model in which data processing takes place on local devices, closer to where it is being generated. Advances in hardware and economies of scale have made it possible for edge computing devices to be embedded in everyday consumer products to process large volumes of data quickly and produce results in near real-time.

Chapter 4: Federated Learning Basics

Chap. 4 covers the basics of federated learning. Federated learning is a framework that enables multiple parties to collaboratively train AI models, while each party retains control of its own raw data, never sharing it with others.

Chapter 5: Attacks on Federated Learning Systems

Chap. 5 discusses two attacks that target weaknesses of federated learning systems: (1) data leakage, i.e., inferring raw data used to train an AI model by unauthorized parties, and (2) data poisoning, i.e., a cyberattack that compromises data used to train an AI model to manipulate its output.

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