Tiny Machine Learning, Gebunden
Tiny Machine Learning
- Fundamentals, Applications and Security
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- Herausgeber:
- Rajdeep Chakraborty, Rana Majumdar, S. Balamurugan, Sheng-Lung Peng
- Verlag:
- John Wiley & Sons Inc, 09/2026
- Einband:
- Gebunden
- Sprache:
- Englisch
- ISBN-13:
- 9781394347094
- Artikelnummer:
- 12224453
- Umfang:
- 528 Seiten
- Erscheinungstermin:
- 28.9.2026
- Serie:
- Artificial Intelligence and Soft Computing for Industrial Transformation
- Hinweis
-
Achtung: Artikel ist nicht in deutscher Sprache!
Klappentext
Stay at the forefront of the embedded AI revolution by mastering the specialized hardware and software strategies needed to bring high-performance machine learning to the world's most resource-constrained devices.
TinyML (tiny machine learning), short for tiny machine learning, represents a groundbreaking intersection of machine learning and embedded systems, enabling the deployment of intelligent applications on resource-constrained devices. It empowers these devices to perform complex tasks, like image and speech recognition, locally without relying on cloud servers. This burgeoning field opens up many possibilities, from enhancing IoT devices to revolutionizing healthcare and intelligent infrastructure. As technology advances, TinyML promises to make our everyday devices more innovative, responsive, and efficient than ever before. By bringing inference to resource-constrained hardware, TinyML supports real-time decision-making while addressing critical concerns such as latency, power consumption, and data privacy. This book presents an overview of TinyML, including its core principles, applications, challenges, and future directions. It meticulously explores the fundamentals of machine learning and deep learning, providing a solid foundation for understanding how these techniques are adapted for tiny devices. By delving into the hardware, software, and algorithms that specifically cater to TinyML, the book addresses the unique challenges of running machine-learning models on devices with limited processing power and memory. Featuring expert insights and real-world case studies, this volume is an essential guide to researchers and industry professionals looking for solutions for today's resource-constrained devices.
Readers will find the volume:
- Delves into the burgeoning field of TinyML, where the power of machine learning is harnessed for resource-constrained devices;
- Serves as a comprehensive guide, equipping readers with the essential knowledge to develop and deploy TinyML applications;
- Explores the fundamentals of machine learning and deep learning, providing a solid foundation for understanding how these techniques are adapted for tiny devices;
- Introduces the hardware, software, and algorithms that specifically cater to TinyML, addressing the unique challenges of running machine-learning models on devices with limited processing power and memory.
Audience
Engineers, academics, researchers, and professionals in computer science, information technology, and electronics and communication.