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OverviewWhat if the future of artificial intelligence was not locked behind expensive cloud subscriptions, massive data centers, or constant internet connections? What if you could build intelligent systems that think, respond, retrieve information, and automate tasks directly on local devices while maintaining speed, privacy, and control? Have you been wondering how modern applications are becoming smarter at the edge without sacrificing security or efficiency? If those questions have been on your mind, then Edge Intelligence with Local Language Models by Derrick M. Newman is the guide you have been searching for. This book takes you into the rapidly evolving world of edge intelligence and local language models with a practical, engaging, and forward-thinking approach. Instead of overwhelming you with abstract theories, it speaks directly to the challenges developers, engineers, innovators, and tech enthusiasts are facing today. How do you run AI models locally? How can intelligent systems retrieve knowledge securely without depending entirely on the cloud? How do businesses and creators automate device-level operations while reducing latency and protecting sensitive data? The answers unfold clearly, step by step, throughout this powerful resource. Have you noticed how organizations are becoming increasingly concerned about data privacy, infrastructure costs, and unreliable network dependencies? This book explores how local language models are changing the landscape by enabling secure inference directly on devices. You will discover how edge AI systems can process information faster, operate offline, and create smarter user experiences without exposing critical data to external servers. Imagine creating applications that continue functioning even when connectivity fails. Imagine building intelligent workflows that respond instantly because the computation happens right where the data lives. But this is not just about running models locally. It is about understanding the architecture, workflows, and engineering mindset required to design intelligent modern systems. Have you wanted to explore retrieval-based systems that can access the right information at the right moment? Curious about how knowledge retrieval improves decision-making and contextual awareness in AI applications? This book breaks down these concepts into understandable and actionable strategies that can be applied across industries and projects. You will also dive into device-level automation techniques that bring intelligence closer to real-world operations. Whether you are working on smart applications, enterprise systems, automation pipelines, embedded solutions, or modern AI-driven products, this book helps you understand how edge intelligence can transform the way technology interacts with users and environments. Derrick M. Newman presents complex topics in a conversational and practical manner that keeps you engaged while constantly encouraging you to think deeper. Every chapter challenges you to consider not only how these technologies work, but why they matter in a world demanding faster, safer, and more efficient AI solutions. Are you ready to move beyond traditional cloud-dependent AI models? Ready to explore secure inference, knowledge retrieval, and intelligent automation at the edge? Then this book belongs in your collection. Open the door to the next generation of AI innovation and start building smarter, faster, and more secure applications today. Full Product DetailsAuthor: Derrick M NewmanPublisher: Independently Published Imprint: Independently Published Volume: 6 Dimensions: Width: 21.60cm , Height: 1.80cm , Length: 27.90cm Weight: 0.789kg ISBN: 9798196529832Pages: 340 Publication Date: 11 May 2026 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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