Share
Fr. 160.00
D Gupta, Deepak Gupta, Deepak Khamparia Gupta, Aditya Khamparia, Deepa Gupta, Deepak Gupta...
Fog, Edge, and Pervasive Computing in Intelligent Iot Driven - Application
English · Hardback
Shipping usually within 3 to 5 weeks
Description
A practical guide to the design, implementation, evaluation, and deployment of emerging technologies for intelligent IoT applications
With the rapid development in artificially intelligent and hybrid technologies, IoT, edge, fog-driven, and pervasive computing techniques are becoming important parts of our daily lives. This book focuses on recent advances, roles, and benefits of these technologies, describing the latest intelligent systems from a practical point of view. Fog, Edge, and Pervasive Computing in Intelligent IoT Driven Applications is also valuable for engineers and professionals trying to solve practical, economic, or technical problems. With a uniquely practical approach spanning multiple fields of interest, contributors cover theory, applications, and design methodologies for intelligent systems. These technologies are rapidly transforming engineering, industry, and agriculture by enabling real-time processing of data via computational, resource-oriented metaheuristics and machine learning algorithms. As edge/fog computing and associated technologies are implemented far and wide, we are now able to solve previously intractable problems. With chapters contributed by experts in the field, this book:
* Describes Machine Learning frameworks and algorithms for edge, fog, and pervasive computing
* Considers probabilistic storage systems and proven optimization techniques for intelligent IoT
* Covers 5G edge network slicing and virtual network systems that utilize new networking capacity
* Explores resource provisioning and bandwidth allocation for edge, fog, and pervasive mobile applications
* Presents emerging applications of intelligent IoT, including smart farming, factory automation, marketing automation, medical diagnosis, and more
Researchers, graduate students, and practitioners working in the intelligent systems domain will appreciate this book's practical orientation and comprehensive coverage. Intelligent IoT is revolutionizing every industry and field today, and Fog, Edge, and Pervasive Computing in Intelligent IoT Driven Applications provides the background, orientation, and inspiration needed to begin.
List of contents
About the Editors xvii
List of Contributors xix
Preface xxv
Acknowledgments xxxiii
1 Fog, Edge and Pervasive Computing in Intelligent Internet of Things Driven Applications in Healthcare: Challenges, Limitations and Future Use 1
Afroj Alam, Sahar Qazi, Naiyar Iqbal, and Khalid Raza
1.1 Introduction 1
1.2 Why Fog, Edge, and Pervasive Computing? 3
1.3 Technologies Related to Fog and Edge Computing 6
1.4 Concept of Intelligent IoT Application in Smart (Fog) Computing Era 9
1.5 The Hierarchical Architecture of Fog/Edge Computing 12
1.6 Applications of Fog, Edge and Pervasive Computing in IoT-based Healthcare 15
1.7 Issues, Challenges, and Opportunity 17
1.7.1 Security and Privacy Issues 18
1.7.2 Resource Management 19
1.7.3 Programming Platform 19
1.8 Conclusion 20
Bibliography 20
2 Future Opportunistic Fog/Edge Computational Models and their Limitations 27
Sonia Singla, Naveen Kumar Bhati, and S. Aswath
2.1 Introduction 28
2.2 What are the Benefits of Edge and Fog Computing for the Mechanical Web of Things (IoT)? 32
2.3 Disadvantages 34
2.4 Challenges 34
2.5 Role in Health Care 35
2.6 Blockchain and Fog, Edge Computing 38
2.7 How Blockchain will Illuminate Human Services Issues 40
2.8 Uses of Blockchain in the Future 41
2.9 Uses of Blockchain in Health Care 42
2.10 Edge Computing Segmental Analysis 42
2.11 Uses of Fog Computing 43
2.12 Analytics in Fog Computing 44
2.13 Conclusion 44
Bibliography 44
3 Automating Elicitation Technique Selection using Machine Learning 47
Hatim M. Elhassan Ibrahim Dafallaa, Nazir Ahmad, Mohammed Burhanur Rehman, Iqrar Ahmad, and Rizwan khan
3.1 Introduction 47
3.2 Related Work 48
3.3 Model: Requirement Elicitation Technique Selection Model 52
3.3.1 Determining Key Attributes 54
3.3.2 Selection Attributes 54
3.3.2.1 Analyst Experience 55
3.3.2.2 Number of Stakeholders 55
3.3.2.3 Technique Time 56
3.3.2.4 Level of Information 56
3.3.3 Selection Attributes Dataset 56
3.3.3.1 Mapping the Selection Attributes 57
3.3.4 k-nearest Neighbor Algorithm Application 57
3.4 Analysis and Results 60
3.5 The Error Rate 61
3.6 Validation 61
3.6.1 Discussion of the Results of the Experiment 62
3.7 Conclusion 62
Bibliography 65
4 Machine Learning Frameworks and Algorithms for Fog and Edge Computing 67
Murali Mallikarjuna Rao Perumalla, Sanjay Kumar Singh, Aditya Khamparia, Anjali Goyal, and Ashish Mishra
4.1 Introduction 68
4.1.1 Fog Computing and Edge Computing 68
4.1.2 Pervasive Computing 68
4.2 Overview of Machine Learning Frameworks for Fog and Edge Computing 69
4.2.1 TensorFlow 69
4.2.2 Keras 70
4.2.3 PyTorch 70
4.2.4 TensorFlow Lite 70
4.2.4.1 Use Pre-train Models 70
4.2.4.2 Convert the Model 70
4.2.4.3 On-device Inference 71
4.2.4.4 Model Optimization 71
4.2.5 Machine Learning and Deep Learning Techniques 71
4.2.5.1 Supervised, Unsupervised and Reinforcement Learning 71
4.2.5.2 Machine Learning, Deep Learning Techniques 72
4.2.5.3 Deep Learning Techniques 75
4.2.5.4 Efficient Deep Learning Algorithms for Inference 77
4.2.6 Pros and Cons of ML Algorithms for Fog and Edge Computing 78
4.2.6.1 Advantages using
About the author
Deepak Gupta, PhD, is an Assistant Professor in the Department of Computer Science and Engineering at the Maharaja Agrasen Institute of Technology, Delhi, India. He has published 158 papers and 3 patents. He is associated with numerous professional bodies, including IEEE, ISTE, IAENG, and IACSIT. He is the convener and organizer of the ICICC, ICDAM Springer Conference Series. Aditya Khamparia, PhD, is Associate Professor of Computer Science at Lovely Professional University, Punjab, India. He has published more than 45 scientific research publications and is a member of CSI, IET, ISTE, IAENG, ACM and IACSIT.
Summary
A practical guide to the design, implementation, evaluation, and deployment of emerging technologies for intelligent IoT applications
With the rapid development in artificially intelligent and hybrid technologies, IoT, edge, fog-driven, and pervasive computing techniques are becoming important parts of our daily lives. This book focuses on recent advances, roles, and benefits of these technologies, describing the latest intelligent systems from a practical point of view. Fog, Edge, and Pervasive Computing in Intelligent IoT Driven Applications is also valuable for engineers and professionals trying to solve practical, economic, or technical problems. With a uniquely practical approach spanning multiple fields of interest, contributors cover theory, applications, and design methodologies for intelligent systems. These technologies are rapidly transforming engineering, industry, and agriculture by enabling real-time processing of data via computational, resource-oriented metaheuristics and machine learning algorithms. As edge/fog computing and associated technologies are implemented far and wide, we are now able to solve previously intractable problems. With chapters contributed by experts in the field, this book:
* Describes Machine Learning frameworks and algorithms for edge, fog, and pervasive computing
* Considers probabilistic storage systems and proven optimization techniques for intelligent IoT
* Covers 5G edge network slicing and virtual network systems that utilize new networking capacity
* Explores resource provisioning and bandwidth allocation for edge, fog, and pervasive mobile applications
* Presents emerging applications of intelligent IoT, including smart farming, factory automation, marketing automation, medical diagnosis, and more
Researchers, graduate students, and practitioners working in the intelligent systems domain will appreciate this book's practical orientation and comprehensive coverage. Intelligent IoT is revolutionizing every industry and field today, and Fog, Edge, and Pervasive Computing in Intelligent IoT Driven Applications provides the background, orientation, and inspiration needed to begin.
Product details
Authors | D Gupta, Deepak Gupta, Deepak Khamparia Gupta, Aditya Khamparia |
Assisted by | Deepa Gupta (Editor), Deepak Gupta (Editor), Gupta Deepak (Editor), Khamparia (Editor), Khamparia (Editor), Aditya Khamparia (Editor) |
Publisher | Wiley, John and Sons Ltd |
Languages | English |
Product format | Hardback |
Released | 30.11.2020 |
EAN | 9781119670070 |
ISBN | 978-1-119-67007-0 |
No. of pages | 464 |
Subjects |
Natural sciences, medicine, IT, technology
> Technology
> Electronics, electrical engineering, communications engineering
Informatik, computer science, drahtlose kommunikation, Kommunikationsnetze, Mobile & Wireless Communications, Electrical & Electronics Engineering, Elektrotechnik u. Elektronik, Communication Technology - Networks, Kommunikationsnetz, Grid & Cloud Computing, Grid- u. Cloud-Computing |
Customer reviews
No reviews have been written for this item yet. Write the first review and be helpful to other users when they decide on a purchase.
Write a review
Thumbs up or thumbs down? Write your own review.