Call for Chapters: AI for Large Scale Communication Networks

Editors

R Kanthavel, University of Technology, Papua New Guinea
R Dhaya, KCG College of Technology, India
Joseph Fisher, University of Technology, Papua New Guinea, Papua New Guinea

Call for Chapters

Proposals Submission Deadline: May 26, 2024
Full Chapters Due: July 28, 2024
Submission Date: July 28, 2024

Introduction

Artificial Intelligence plays a pivotal role in computing to enabling organizations to collect, analyze, and act upon vast amount of data to create highly customized and individualized experiences for users or customers. The users can experience AI in the form of Data Collection and Processing, User Profiling, Recommendation systems, Predictive Analysis, Natural Language processing, Image and Video Analysis, Real Time Processing and Adaptive learning. On the other hand, the integration of AI in large-scale networks holds significant potential to improve performance, security, and efficiency, while enabling the development of innovative network management techniques and applications. This book further discourses the problem of customer challenges that ascend the integration of real time data and other Artificial Intelligent techniques using computing, AI communication, AI process and network scalability. It aims to provide comprehensive insights, theoretical foundations, strategies, and solutions with the help of real-time data, machine learning, and predictive analytics to acquire better information and, in turn, act appropriately on that information. This book also explores the challenges and practical approaches to the better engagement and customers satisfaction.

Objective

The content in the book is being designed with all domain computing applications of AI user experience and engagement AI to achieve significant progress. On the other hand, this book insights the large-scale networks that are prevalent in both engineered systems such as the Internet, power grid, industrial control networks, large robotic swarms, sensor networks and in natural systems like genetic networks, ecological networks, social and economic networks. The goal of AI in larger scale communication networks is to provide highly customized and relevant interactions, making the user's experience more engaging, satisfying, and efficient. AI computing in large-scale networks holds promise for solving complex optimization problems, enhancing security through cryptography, and improving machine learning algorithms. It could revolutionize areas like logistics, finance, and telecommunications by offering unprecedented computational power for tackling real-world challenges. However, significant hurdles remain, including scalability, error correction, and the development of AI algorithms tailored for network applications. This book will be covering all ongoing research perspectives to address these challenges and unlock the full potential of AI computing network characteristics in larger scale communication networks as follows: 1.Algorithm Optimization: AI techniques like machine learning can be employed to optimize AI algorithms, improving their efficiency and performance. 2. AI Machine Learning: AI computing can enhance traditional machine learning algorithms by enabling faster processing of large datasets and exploring complex patterns more efficiently. 3.AI Neural Networks: AI computing can be utilized to implement neural networks using AI states, potentially leading to more powerful and efficient models for tasks like pattern recognition and classification. 4.AI Data Analysis: AI algorithms can help analyze and interpret data generated by AI computers, extracting meaningful insights and patterns from AI states. 5.Error Correction: AI methods can aid in developing robust error correction techniques for AI computing systems, mitigating the impact of noise and errors inherent in AI hardware. 6.Optimization Problems: AI computing can be used to solve optimization problems commonly encountered in AI applications, such as in training deep learning models or optimizing resource allocation in complex systems. 7.AI-Assisted AI: AI computing can augment classical AI systems by providing specialized capabilities for specific tasks, such as solving combinatorial optimization problems or simulating AI systems. 8.Fault Tolerance: AI error correction techniques can enhance fault tolerance in network infrastructure, ensuring reliable communication and minimizing downtime. AI can also predict and mitigate network failures based on historical data and real-time monitoring. 8.Security and Cryptography: AI computing can revolutionize cryptographic techniques, and AI can play a role in developing AI-resistant cryptographic protocols and algorithms. 9.Machine Learning for Network Management: AI-driven machine learning models can automate network management tasks, such as routing optimization, load balancing, and predictive maintenance, leading to more efficient and resilient network operations. 10.AI-enhanced AI Models: AI computing can accelerate the training and inference of AI models, enabling the development of more sophisticated and accurate predictive algorithms for network performance optimization and anomaly detection. 11.Hybrid AI-Classical Approaches: Hybrid AI-classical algorithms can combine the strengths of AI and AI computing to address specific challenges in large-scale networks, such as traffic routing optimization and network topology design. 12.Data Processing: AI computing can process large datasets more quickly, enabling faster analysis of network traffic, user behavior, and performance metrics. AI techniques can extract valuable insights from this data to improve network management and decision-making. 13.Distributed Computing: AI computing can facilitate distributed computing tasks in large-scale networks by efficiently processing data across multiple nodes. AI algorithms can coordinate and optimize distributed computing processes to improve overall network performance. 14.Resource Management: AI computing can optimize resource allocation in large-scale networks, such as bandwidth allocation, energy consumption, and computational resources, to maximize efficiency and cost-effectiveness. 15.Interdisciplinary Research: The intersection of AI and AI computing requires collaboration between experts in both fields, fostering interdisciplinary research to explore novel applications and techniques.

Target Audience

Graduate students, Post Graduate Students, Researchers, Academicians, Industrialists and Professionals, who are interested in exploring and implementing Artificial Intelligence, Machine Learning ,Network Stream, AI security and data set Forum.

Recommended Topics

Part I: Introduction to Computing Technologies in AI • Understanding AI Computing • Overview of the evolution of Personalization from Traditional Marketing to AI Computing Part II: AI Computing in Network Optimization • AI for Network Routing • AI Optimization Algorithms • AI Simulations of Large-Scale Networks . Part III: Integration of QC and Artificial Intelligence • Discussing how Organizations Collect and use Data to create User Profiles for Personalization. • Technological foundations, including Machine Learning, Big data, and Analytics. Part IV: AI Techniques in Large Scale Networks • Machine Learning for Network Analysis. • Deep Learning for Traffic Production • Reinforcement Learning for Network Management Part V: Recommendation Systems and content personalization • Different Types of Recommendation Algorithms and their Applications. • Personalized Marketing Messages • NLP Adaptive Learning Part VI: E-commerce implementation using predictive analysis by • Transforming Online Shopping Experiences • Impact Analysis of Online Shopping Experiences Part VII: Healthcare and Precision Medicine • Role of AI in healthcare using Networks • Personalized Treatment Plans and Patient Care using AI. Part VIII: Regulatory Frameworks and Standards • Overview of Regulations for Critical Infrastructure • Compliance and Conformance: Challenges and Best Practices • Privacy and Data Security Part IX: Case Studies • Machine Learning for Anomaly Detection • AI Assisted Network Security • Protecting AI Processes in a Connected World Part X: Challenges, Limitations and Future Trends: • Challenges and limitations of AI using Networks • Scalability issues in AI Computing in Large Scale Networks • Robustness and Interoperability in AI models • Algorithmic bias and Data Quality Issues. • Speculating on the future of AI Computing and Emerging Technologies

Submission Procedure

Researchers and practitioners are invited to submit on or before May 26, 2024, a chapter proposal of 1,000 to 2,000 words clearly explaining the mission and concerns of his or her proposed chapter. Authors will be notified by June 9, 2024 about the status of their proposals and sent chapter guidelines.Full chapters are expected to be submitted by July 28, 2024, and all interested authors must consult the guidelines for manuscript submissions at https://www.igi-global.com/publish/contributor-resources/before-you-write/ prior to submission. All submitted chapters will be reviewed on a double-blind review basis. Contributors may also be requested to serve as reviewers for this project.

Note: There are no submission or acceptance fees for manuscripts submitted to this book publication, AI for Large Scale Communication Networks. All manuscripts are accepted based on a double-blind peer review editorial process.

All proposals should be submitted through the eEditorial Discovery® online submission manager.



Publisher

This book is scheduled to be published by IGI Global (formerly Idea Group Inc.), an international academic publisher of the "Information Science Reference" (formerly Idea Group Reference), "Medical Information Science Reference," "Business Science Reference," and "Engineering Science Reference" imprints. IGI Global specializes in publishing reference books, scholarly journals, and electronic databases featuring academic research on a variety of innovative topic areas including, but not limited to, education, social science, medicine and healthcare, business and management, information science and technology, engineering, public administration, library and information science, media and communication studies, and environmental science. For additional information regarding the publisher, please visit https://www.igi-global.com. This publication is anticipated to be released in 2025.



Important Dates

May 26, 2024: Proposal Submission Deadline
June 9, 2024: Notification of Acceptance
July 28, 2024: Full Chapter Submission
September 1, 2024: Review Results Returned
September 29, 2024: Final Acceptance Notification
October 6, 2024: Final Chapter Submission



Inquiries

R Kanthavel
University of Technology, Papua New Guinea
kanthavel2005@gmail.com

R Dhaya
KCG College of Technology, Chennai, India.
dhayavel2005@gmail.com

Joseph Fisher
University of Technology, Papua New Guinea
joseph.fisher@pnguot.ac.pg



Classifications


Business and Management; Computer Science and Information Technology; Environmental, Agricultural, and Physical Sciences; Medical, Healthcare, and Life Sciences; Security and Forensics; Science and Engineering
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