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El. knyga: Embedded Artificial Intelligence: Real-Life Applications and Case Studies

Edited by (Assam Down Town University, India), Edited by (University of Wollongong in Dubai, UAE), Edited by (Stratesys, Madrid), Edited by (Assam Down Town University, India)
  • Formatas: 324 pages
  • Išleidimo metai: 28-Mar-2025
  • Leidėjas: Chapman & Hall/CRC
  • Kalba: eng
  • ISBN-13: 9781040304747
  • Formatas: 324 pages
  • Išleidimo metai: 28-Mar-2025
  • Leidėjas: Chapman & Hall/CRC
  • Kalba: eng
  • ISBN-13: 9781040304747

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This book explores the role of Embedded AI in revolutionising industries such as healthcare, transportation, manufacturing, retail. It begins by introducing the fundamentals of AI and embedded systems and specific challenges and opportunities.



This book explores the role of embedded AI in revolutionizing industries such as healthcare, transportation, manufacturing, and retail. It begins by introducing the fundamentals of AI and embedded systems and specific challenges and opportunities. A key focus of this book is developing efficient and effective algorithms and models for embedded AI systems, as embedded systems have limited processing power, memory, and storage. It discusses a variety of techniques for optimizing algorithms and models for embedded systems, including hardware acceleration, model compression, and quantization.

Key features:

  • Explores security experiments in emerging post-CMOS technologies using AI, including side channel attack-resistant embedded systems
  • Discusses different hardware and software platforms available for developing embedded AI applications, as well as the various techniques used to design and implement these systems
  • Considers ethical and societal implications of embedded AI vis-a-vis the need for responsible development and deployment of embedded AI systems
  • Focuses on application-based research and case studies to develop embedded AI systems for real-life applications
  • Examines high-end parallel systems to run complex AI algorithms and comprehensive functionality while maintaining portability and power efficiency

This reference book is for students, researchers, and professionals interested in embedded AI and relevant branches of computer science, electrical engineering, or artificial intelligence.

Section A: Overview of Embedded Systems and Artificial Intelligence
1.
Unleashing Intelligence at the Edge: Exploring Machine Learning in Embedded
Systems
2. Fusion of Edge Computing in AI-Enabled Embedded Technologies
3.
Developing Edge AI for Embedded Systems
4. AI at the Edge: Merging
Intelligence and Distributed Computing SECTION B: Case Studies and Practical
Applications of AI-enabled Embedded Systems
5. Transformative Impact of
AI-Enabled Embedded Systems in Financial Services: Case Studies and Practical
Applications
6. Embedded AI Approaches for Multi-organ Critical Care
Diagnostics Support and Decision making Current trends and Emerging
Scenarios
7. Embedded AI-Based Approaches for Skin Cancer Detection: Machine
Learning Techniques and Applications
8. Artificial Intelligence and Automated
Deep Learning for Medical Imaging
9. A comprehensive review on Embedded
systems security using
Machine Learning
10. Embedding Business Analysis for Successful AI-Powered
Digital Transformation
11. AI in Implementation of EDEEC protocol for 4-Level
Scalable
Heterogeneous Wireless Sensor Networks
12. Side Channel Attack-Resistant
Embedded Systems
13. Smart Irrigation System using IoT-based devices
14.
Revolutionizing Healthcare from Inside - Leveraging Expanded Reality with
Ingestible Sensors
15. Object Detection using Opencv
16. Analytical Study of
Dominating features of Intelligent Controller over Conventional Controller
SECTION C: Ethical Considerations in Embedded AI
17. Data Security and
Ethical Considerations in Embedded AI Systems
18. Security of Social Media
Content for AI-Embedded Systems: Comparative Analysis
Arpita Nath Boruah is an Assistant Professor, Programme Computer Science and Engineering in the Faculty of Engineering and Technology at Assam Down Town University, Assam, India. She earned her doctorate degree from the National Institute of Technology, Silchar, Assam, in the Department of Computer Science and Engineering. She holds an MTech degree in Computer Science and Engineering from NERIST, Arunachal Pradesh, and a bachelors degree in Computer Science and Engineering from Jorhat Engineering College, Assam. She is currently involved in research areas that include data mining, machine learning, data science, and transparent decisionmaking system. She has published several international journal articles in SCI/SCIEindexed journals from various reputed publishers and has attended many international conferences.

Mrinal Goswami earned his BTech degree in Computer Science and Engineering from the North Eastern Regional Institute of Science and Technology, India, in 2012. He earned his MTech and PhD in Computer Science and Engineering from the National Institute of Technology, Durgapur, West Bengal, India, in 2014 and 2019, respectively. He has over eight years of research and teaching experience as an assistant professor. Currently, he is with the Faculty of Engineering and Technology, Programme of Computer Science and Engineering, Assam Down Town University, Guwahati, Assam, India, and working as an Associate Professor. Before this, he was an Assistant Professor in the Department of Computer Science and Engineering at the University of Petroleum and Energy Studies (NIRF Rank 54 & NACC A accredited) and North Eastern Regional Institute Science and Technology (DeemedtobeUniversity under the Ministry of Education, Govt. of India). He is a member of the Institute of Electrical and Electronics Engineers (IEEE) and Cellular Automata India Chapter. He has published several international research articles on design, testing, security, and faulttolerance issues in digital systems, quantum dot cellular automata, quantum computing, and AI.

Manoj Kumar completed his PhD from The Northcap University and MSc (Information Security and Digital Forensics) from Technological University Dublin, Ireland, in 2013. He received a fully funded scholarship for the MTech and MSc programmes from the Irish Government and the MHRD, respectively. He has more than 13 years of research, teaching, and corporate experience. He is currently an Associate Professor of Cyber Security at the University of Wollongong in Dubai, UAE, and a Research Head for the Network and Cyber Security Cluster @UOWD. He has published over 170 articles in various journals and conferences. He published over 10 patents and delivered three international researchfunded projects. He published three authored books and eight edited books. His specializations are digital forensics, machine learning, information security, image processing, IOT, and computer networking. He is a member of numerous renowned professional bodies including IEEE, ACM, IAENG, ISTS, and UACEE. He received the Best Researcher Award in 2020, an Outstanding Scientist Award in 2021, and a Young Researcher Award in 2021 from recognized international professional societies.

Octavio LoyolaGonzalez earned his PhD in Computer Science from the National Institute of Astrophysics, Optics, and Electronics, Mexico. He has won several awards from different institutions for his research work on applied projects. Consequently, he is a member of the National System of Researchers in Mexico (Rank 1). He worked as a distinguished professor and researcher at the Tecnologico de Monterrey, Campus Puebla, for undergraduate and graduate programmes of Computer Sciences. He was a Managing Director for Altair Management Consultants, having branches in the USA, UK, Spain, and Mexico, where he led several teams of data scientists for AI and ML, business intelligence reporting, and traditional consulting. Currently, he serves as an AI Executive Consulting Manager at NTT DATA. His responsibilities include bringing in clients from the automotive, manufacturing, real estate, infrastructure, and services sectors for deals related to advanced analytics (AI & GenAI). Additionally, he oversees the operations and activities of a team of data scientists, guiding them on both technical and business strategy aspects. Furthermore, he is actively involved in publishing scientific papers and books in reputable journals to promote advancements in AI research.