
Tiny Machine Learning: Design Principles and Applications
Design Principles and Applications
Wiley-IEEE Press
1st Edition
Published on 6. January 2026
Book
Hardback
400 pages
978-1-394-29454-1 (ISBN)
Description
An expert compilation of on-device training techniques, regulatory frameworks, and ethical considerations of TinyML design and development
In Tiny Machine Learning: Design Principles and Applications, a team of distinguished researchers delivers a comprehensive discussion of the critical concepts, design principles, applications, and relevant issues in Tiny Machine Learning (TinyML). Expert contributors introduce a new low power resource, offering vast applications in IoT devices with system-algorithm co-design.
Tiny Machine Learning explores TinyML paradigms and enablers, TinyML for anomaly detection, and the learning panorama under TinyML. Readers will find explanations of TinyML devices and tools, power consumption and memory in IoT microcontrollers, and lightweight frameworks for TinyML. The book also describes TinyML techniques for real-time and environmental applications.
Additional topics covered in the book include:
A thorough introduction to security and privacy techniques for TinyML devices, including the implementation of novel security schemes
Incisive explorations of power consumption and memory in IoT MCUs, including ultralow-power smart IoT devices with embedded TinyML
Practical discussions of TinyML research targeting microcontrollers for data extraction and synthesis
Perfect for industry and academic researchers, scientists, and engineers, Tiny Machine Learning will also benefit lecturers and graduate students interested in machine learning.
In Tiny Machine Learning: Design Principles and Applications, a team of distinguished researchers delivers a comprehensive discussion of the critical concepts, design principles, applications, and relevant issues in Tiny Machine Learning (TinyML). Expert contributors introduce a new low power resource, offering vast applications in IoT devices with system-algorithm co-design.
Tiny Machine Learning explores TinyML paradigms and enablers, TinyML for anomaly detection, and the learning panorama under TinyML. Readers will find explanations of TinyML devices and tools, power consumption and memory in IoT microcontrollers, and lightweight frameworks for TinyML. The book also describes TinyML techniques for real-time and environmental applications.
Additional topics covered in the book include:
A thorough introduction to security and privacy techniques for TinyML devices, including the implementation of novel security schemes
Incisive explorations of power consumption and memory in IoT MCUs, including ultralow-power smart IoT devices with embedded TinyML
Practical discussions of TinyML research targeting microcontrollers for data extraction and synthesis
Perfect for industry and academic researchers, scientists, and engineers, Tiny Machine Learning will also benefit lecturers and graduate students interested in machine learning.
More details
Language
English
Place of publication
United States
Publishing group
John Wiley & Sons Inc
Target group
Professional and scholarly
College/higher education
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 231 mm
Width: 160 mm
Thickness: 47 mm
Weight
1164 gr
ISBN-13
978-1-394-29454-1 (9781394294541)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Agbotiname Lucky Imoize | Dinh-Thuan Do | Houbing Herbert Song
Tiny Machine Learning: Design Principles and Applications
E-Book
01/2026
1st Edition
Wiley
€119.99
Available for download

Agbotiname Lucky Imoize | Dinh-Thuan Do | Houbing Herbert Song
Tiny Machine Learning: Design Principles and Applications
E-Book
01/2026
1st Edition
Wiley
€119.99
Available for download
Persons
Agbotiname Imoize is a Lecturer in the Department of Electrical and Electronics Engineering at the University of Lagos, Nigeria. He is a Fulbright Fellow, the Vice Chair of the IEEE Communication Society Nigeria chapter, and a Senior Member of IEEE.
Dinh-Thuan Do, PhD, is an Assistant Professor with the School of Engineering at the University of Mount Union, USA. He is an editor of IEEE Transactions on Vehicular Technology and Computer Communications. He is a Senior Member of IEEE.
Houbing Herbert Song, PhD, IEEE Fellow, is a Professor in the Department of Information Systems, and the Department of Computer Science and Electrical Engineering and Director of the Security and Optimization for Networked Globe Laboratory (SONG Lab) at the University of Maryland, Baltimore County. He is also Co-Editor-in-Chief of IEEE Transactions on Industrial Informatics.
Dinh-Thuan Do, PhD, is an Assistant Professor with the School of Engineering at the University of Mount Union, USA. He is an editor of IEEE Transactions on Vehicular Technology and Computer Communications. He is a Senior Member of IEEE.
Houbing Herbert Song, PhD, IEEE Fellow, is a Professor in the Department of Information Systems, and the Department of Computer Science and Electrical Engineering and Director of the Security and Optimization for Networked Globe Laboratory (SONG Lab) at the University of Maryland, Baltimore County. He is also Co-Editor-in-Chief of IEEE Transactions on Industrial Informatics.
Editor
University of Lagos, Nigeria
University of Mount Union, Alliance, OH
University of Maryland, MD, USA
Content
Chapter 1 Introduction to TinyML
Francisca Onyiyechi Nwokoma, Chidi Ukamaka Betrand, Juliet Nnenna Odii, Euphemia Chioma Nwokorie, and Euphemia Chioma Nwokorie
Chapter 2 Learning Panorama Under TinyML
Ikechukwu Ignatius Ayogu, Euphemia Chioma Nwokorie, Juliet Nnenna Odii, Francisca Onyiyechi Nwokoma, and Chidi Ukamaka Betrand
Chapter 3 TinyML for Anomaly Detection
Richard Govada Joshua, Peter Anuoluwapo Gbadega, Agbotiname Lucky Imoize, and Samuel Oluwatobi Tofade
Chapter 4 TinyML Power Consumption and Memory in IoT MCUs
Peter Anuoluwapo Gbadega, Agbotiname Lucky Imoize, Richard Govada Joshua, and Samuel Oluwatobi Tofade
Chapter 5 Efficient Data Cleaning and Anomaly Detection in IoT Devices Using TinyCleanEDF
Ilker Kara
Chapter 6 TinyML devices and tools
Abeeb Akorede Bello, Agbotiname Lucky Imoize, and Agbotiname Lucky Imoize
Chapter 7 Privacy-Preserving Techniques in TinyML for IoT
Oleksandr Kuznetsov, Emanuele Frontoni, Kateryna Kuznetsova, Marco Arnesano, and Pavlo Usik
Chapter 8 Enhancing Cybersecurity in TinyML with Lightweight Cryptographic Algorithms
Oleksandr Kuznetsov, Roman Minailenko, and Aigul Shaikhanova
Chapter 9 Tiny Machine Learning for Enhanced Edge Intelligence
Emmanuel Alozie, Agbotiname Lucky Imoize, Hawau I. Olagunju, Nasir Faruk, Salisu Garba, and Ayobami P. Olatunji
Francisca Onyiyechi Nwokoma, Chidi Ukamaka Betrand, Juliet Nnenna Odii, Euphemia Chioma Nwokorie, and Euphemia Chioma Nwokorie
Chapter 2 Learning Panorama Under TinyML
Ikechukwu Ignatius Ayogu, Euphemia Chioma Nwokorie, Juliet Nnenna Odii, Francisca Onyiyechi Nwokoma, and Chidi Ukamaka Betrand
Chapter 3 TinyML for Anomaly Detection
Richard Govada Joshua, Peter Anuoluwapo Gbadega, Agbotiname Lucky Imoize, and Samuel Oluwatobi Tofade
Chapter 4 TinyML Power Consumption and Memory in IoT MCUs
Peter Anuoluwapo Gbadega, Agbotiname Lucky Imoize, Richard Govada Joshua, and Samuel Oluwatobi Tofade
Chapter 5 Efficient Data Cleaning and Anomaly Detection in IoT Devices Using TinyCleanEDF
Ilker Kara
Chapter 6 TinyML devices and tools
Abeeb Akorede Bello, Agbotiname Lucky Imoize, and Agbotiname Lucky Imoize
Chapter 7 Privacy-Preserving Techniques in TinyML for IoT
Oleksandr Kuznetsov, Emanuele Frontoni, Kateryna Kuznetsova, Marco Arnesano, and Pavlo Usik
Chapter 8 Enhancing Cybersecurity in TinyML with Lightweight Cryptographic Algorithms
Oleksandr Kuznetsov, Roman Minailenko, and Aigul Shaikhanova
Chapter 9 Tiny Machine Learning for Enhanced Edge Intelligence
Emmanuel Alozie, Agbotiname Lucky Imoize, Hawau I. Olagunju, Nasir Faruk, Salisu Garba, and Ayobami P. Olatunji