AI at the Edge: Solving Real-World Problems with Embedded Machine Learning
5.0
Reviews from our users
You Can Ask your questions from this book's AI after Login
Each download or ask from book AI costs 2 points. To earn more free points, please visit the Points Guide Page and complete some valuable actions.Introduction to "AI at the Edge: Solving Real-World Problems with Embedded Machine Learning"
Welcome to the world of edge AI, where intelligence meets efficiency, and technology transforms the boundaries of possibility. In "AI at the Edge: Solving Real-World Problems with Embedded Machine Learning", authors Daniel Situnayake and Jenny Plunkett delve into the fascinating realm of edge computing—a paradigm in artificial intelligence that enables machines to perform computations locally, rather than relying exclusively on cloud infrastructure. This book is a comprehensive guide to understanding and harnessing the power of embedded machine learning to address real-world challenges, from sustainability and healthcare to robotics and more.
Throughout this book, we aim to demystify how cutting-edge technology can fuel innovation in resource-constrained environments while providing practical insights for professionals and enthusiasts who want to bring AI outside traditional cloud-based confines. Whether you’re an experienced engineer or a curious beginner, this text offers actionable guidance, key principles, and tools to unlock the transformative potential of edge AI.
Detailed Summary of the Book
At its heart, this book is a bridge between high-level AI concepts and hands-on implementation in devices with limited computational power, memory, and connectivity. Edge AI represents a paradigm shift from centralized processing to decentralized, localized intelligence that operates directly at the point of data generation. The authors examine the lifecycle of embedded machine learning applications in detail—from data collection and preprocessing to model training, optimization, and deployment on hardware constrained edge devices.
Readers are introduced to TensorFlow Lite, a popular framework for enabling machine learning models to run efficiently on mobile and embedded platforms. Along the way, practical techniques for designing, implementing, and testing models are shared to ensure robustness in varying conditions. The book also explores the importance of balancing accuracy and efficiency when working at the edge.
With real-world case studies and examples, including applications in environmental monitoring, factory automation, and wearable devices, readers gain insights into how edge AI is solving pressing global problems. By walking through these workflows practically, this book makes edge AI approachable for innovators across industries.
Key Takeaways
- Understanding Edge Computing: Learn how edge AI differs from traditional AI and explore the benefits of localized intelligence in resource-constrained environments.
- Hands-On Implementation: Master step-by-step workflows with TensorFlow Lite and other tools for training, optimizing, and deploying machine learning models for edge devices.
- Real-World Applications: Dive into case studies of edge AI solving practical challenges, such as reducing energy consumption or enabling real-time analytics in IoT environments.
- Tools and Techniques: Gain actionable knowledge on leveraging open-source frameworks, compression techniques, and hardware acceleration to maximize edge performance.
- Future Perspectives: Explore how edge computing is reshaping industries and learn how you can contribute to this transformative trend.
Famous Quotes from the Book
"To turn data into insights, we need to embrace the constraints of the edge while pushing computational boundaries."
"Edge AI empowers machines to become smarter, faster, and more context-aware—right where decisions are made."
"The potential of embedded machine learning is unlocked not by complexity but by simplicity and efficiency."
Why This Book Matters
As artificial intelligence permeates every facet of our lives, edge AI stands out as a game-changing innovation that brings computation closer to where data is generated. Unlike cloud-based solutions, edge AI is uniquely suited to applications that demand low latency, privacy, and autonomy. From environmental sustainability to lifesaving healthcare technologies, edge AI is solving challenges that cannot wait for round-trip computations to cloud servers.
The authors' approachable writing style and expert insights make this book an essential read for professionals, students, and enthusiasts seeking to apply AI in tangible, impactful ways. By the time readers finish this book, they will have the knowledge and confidence to create intelligent systems optimized for efficiency and apply them to modern problems.
This book isn’t just a technical guide—it’s a call to innovate responsibly, using technology to empower communities while maximizing its positive social impact.
Free Direct Download
Get Free Access to Download this and other Thousands of Books (Join Now)
For read this book you need PDF Reader Software like Foxit Reader
Reviews:
5.0
Based on 1 users review
g4
April 27, 2025, 9:14 a.m.
Future of AI is in the edge devices, knowing AI in edge devices is always important skill for any AI professional. Basics of LLM and machine learning are required to understand the concepts