LIBRISTO
LIBROAMANTO
obvezno
Postanite del skupnosti ljubiteljev knjig z vsega sveta in uživajte v številnih ugodnostih. Ustvarite brezplačen račun
0
Brezplačna dostava Zásilkovna nad 69.99 €
Zbirna točka GLS 4.49 Zbirna točka DPD 2.99 Kurirska služba GLS 5.49 Kurir DPD 3.49 Kurirska služba 3.49 Zbirno mesto Express One 3.49 Zbirno mesto 3.49 Dostava preko Pošte Slovenije 3.49

Brezplačna dostava za naročila nad 69.99 € na paketomatih Pošte Slovenije.

Edge Machine Learning Mastery in Practice

Engineer Autonomous Computing Environments Through TinyML Workflows, Embedded Vision, and Performance Calibration

Jezik AngleščinaAngleščina
Knjiga Mehka
Knjiga Edge Machine Learning Mastery in Practice Hudson M. Bradson
Koda Libristo: 52532995
Založba Independently published, maj 2026
What if artificial intelligence could operate instantly without depending on distant cloud servers?... Celoten opis
? points 57 b Novo Novo
23.50
Na zalogi pri dobavitelju Odposlali bomo v 9-15 dneh

Do 30 dni za vračilo

What if artificial intelligence could operate instantly without depending on distant cloud servers? What if smart devices could analyze information, recognize patterns, and make intelligent decisions directly from compact hardware systems in real time? Have you been searching for a practical guide that explains how edge machine learning truly works beyond the hype and technical confusion? Are you curious about how TinyML, embedded vision, and autonomous computing environments are transforming industries through faster, smarter, and more efficient AI systems?

Edge Machine Learning Mastery in Practice takes you deep into the rapidly evolving world of intelligent edge computing where machine learning models operate directly on embedded devices with remarkable precision and speed. This book was created for developers, engineers, innovators, students, technology enthusiasts, and forward-thinking creators who want to understand how autonomous systems are engineered for real-world performance. Instead of overwhelming you with disconnected theories, this guide focuses on practical understanding, intelligent workflows, and performance-driven strategies that connect modern machine learning concepts with deployable embedded solutions.

Have you wondered how low-power devices perform advanced computational tasks while maintaining efficiency and responsiveness? Do you want to understand how edge systems reduce latency, optimize processing, and deliver real-time intelligence in environments where speed and reliability matter most? This book explores the foundations of TinyML workflows and demonstrates how lightweight machine learning models are designed to function effectively within constrained hardware environments.

You will also discover how embedded vision technologies are changing the future of automation, robotics, healthcare systems, industrial monitoring, smart devices, and intelligent surveillance applications. How do machines interpret visual information directly from edge devices? How are intelligent systems trained to respond to environmental data without relying entirely on centralized infrastructure? Through clear explanations and engineering-focused insights, this book helps you understand the logic behind edge-based visual intelligence and autonomous computational behavior.

Performance calibration is another critical area explored throughout this guide. Have you struggled to understand model optimization, resource management, energy efficiency, or inference performance within embedded systems? This book breaks down the essential engineering principles required to balance computational power, accuracy, and operational efficiency. You will gain valuable insight into designing systems that perform consistently under real-world conditions while maintaining scalability and responsiveness.

Perhaps you want to future-proof your technical skills in a world increasingly driven by decentralized intelligence and autonomous computing. Perhaps you are building smart applications and want to integrate machine learning directly into embedded devices. Or maybe you simply want to understand the technologies shaping the next generation of intelligent systems. Wherever your starting point may be, this book offers a focused and engaging path toward practical edge AI mastery.

The future of intelligent computing is moving rapidly toward localized decision-making, embedded automation, and real-time machine intelligence. The opportunity to understand and engineer these systems has never been more important. If you are ready to explore TinyML workflows, embedded vision systems, and performance optimization strategies that power modern edge intelligence, then this book is your gateway to practical innovation and advanced machine learning capability. Start building today.

Igralka & Poliglotka
EWA KASP za
Predvajaj video
Ewa Kasp
Libristo ima največjo izbiro tujejezične literature. Zato svoje knjige kupujem tukaj.

O knjigi

Polni naslov Edge Machine Learning Mastery in Practice
Jezik Angleščina
Vezava Knjiga - Mehka
Datum izida 2026
Število strani 326
EAN 9798198517882
Koda Libristo 52532995
Teža 759
Mere 216 x 280 x 17
Podarite to knjigo še danes
To je povsem preprosto
1 Dodajte knjigo v košarico in izberite dostavo kot darilo 2 V zameno vam bomo poslali kupon 3 Knjiga bo dostavljena na naslov obdarovanca

Prijava

Prijavite se v svoj račun. Še nimate računa Libristo? Ustvarite ga zdaj!

 
obvezno
obvezno

Še nimate računa? Izkoristite prednosti računa Libristo!

Z računom Libristo boste imeli vedno vse pod nadzorom.

Ustvarite račun Libristo
Knjižni svetovalec Libroamiko
Pozdravljeni, sem Libroamiko, vam lahko pomagam?