posted by organizer: kuhail || 743 views || tracked by 1 users: [display]

Unleashing User Innovation 2024 : Multidisciplinary Perspectives on End-User Development and Generative AI

FacebookTwitterLinkedInGoogle

Link: https://drkuhail.com/cfp_unleashing.html
 
When Jan 1, 2024 - Dec 31, 2024
Where N/A
Submission Deadline Feb 15, 2024
Notification Due Mar 15, 2024
Final Version Due Jul 15, 2024
Categories    end-user development   generative ai   prompt engineering
 

Call For Papers

We are thrilled to announce the launch of our new upcoming book titled "Unleashing User Innovation: Multidisciplinary Perspectives on End-User Development and Generative AI." to be published by Taylor & Francis.

We cordially invite researchers, academics, professionals, and industry experts to contribute their chapter(s) to this book.

This book aims to explore the rapidly evolving landscape of End-User Development (EUD) and its intersection with Generative Artificial Intelligence (Gen AI) technologies. We seek contributions from researchers and practitioners in the field who can share their valuable insights, research findings, and experiences in this area.

The main goal of this book is to examine new and innovative approaches in the field of EUD and Gen AI. It takes a comprehensive approach to examine various theories, tools, models, and frameworks utilized in different contexts within various application domains/disciplines. The aim is not only to showcase various techniques but also to illuminate how they can be effective in their diverse contexts, e.g., coding, academic writing, summarization, to mention but a few. By delving deeply into these various and diverse experiences, the book is expected to offer a rich collection of insights that can inspire researchers and knowledge seekers in EUD and Gen AI.

Highlights

- Book Title: Unleashing User Innovation: Multidisciplinary Perspectives on End-User -
- Development and Generative AI.
- To be published by CRC Press, Taylor & Francis Group.
- All Taylor & Francis publications have a direct feed to WoS and Scopus
- No publication charges.

Editors

- Mohammad Amin Kuhail, PhD Associate Professor, Zayed University
- Mostafa Mohamad, PhD Associate Professor, Zayed University
- Rawad Hammad, PhD Lecturer, University of East London
- Mohammed Bahja, PhD Lecturer, University of Birmingham

Topics

We are particularly interested in chapters that explore the latest trends, challenges, and opportunities in EUD and generative AI. Whether you are a seasoned researcher, a practitioner, a Ph.D. scholar, an industry expert, or an aspiring researcher, we invite you to share your unique perspectives and insights.

Your contribution can fall under the following topics:

Theme 1: Introduction to End-User Development

- End-user Development History and Classification
- Landscape, Architecture, and Current Platforms of End-User Development
- Latest Trends of End-User Development

Theme 2: Applications of End-User Development

- Empowering Clinicians and Patients in Healthcare
- Personalized Learning and Educational Applications
- Customized Consumer Service Experiences
- Application in the Internet of Things (IoT) Environments

Theme 3: Exploring AI and Prompt Engineering in End-User Development

- NLP and Prompt Engineering for AI Chatbots
- AutoML for Custom Machine Learning Models
- ML-Driven Visual Programming Environments
- Generative AI in Web Development
- Generative AI in Game Development
- Generative AI for Immersive Experiences
- Generative AI for Education
- Generative AI for Business

Theme 4: Challenges of End-User Development

- Usability and User Experience Challenges
- Security and Privacy Challenges
- Ethical Concerns in End-User Development

Submissions

All submissions will be peer-reviewed, and the accepted chapters will be published in the book. This is an excellent opportunity to contribute to the ongoing discourse on EUD and generative AI and showcase your expertise. We look forward to receiving your submissions and thank you in advance for your interest.

Chapters should succinctly capture the essence of your proposed chapter, aligning with one of the listed topics. Please ensure that your work is original, unpublished, and not under consideration elsewhere. Submissions should be well-researched, evidence-based, and contribute to the existing body of knowledge in the field. We welcome theoretical and empirical contributions, case studies, and practical applications.

Abstracts can be submitted https://forms.gle/8eag5mCnZvbWMV6t5

Author guidelines for submission can be found https://www.routledge.com/our-customers/authors/publishing-guidelines.

Deadlines

- Abstract Submission Deadline: Feb 15, 2024
- Notification of Acceptance: Mar 15, 202
- Full Chapter Submission: Jul 15, 2024
- Peer Review Feedback: Aug 15, 2024
- Final Chapter Submission: Sep 15, 2024

Inquiries

- For inquiries, please get in touch with Dr. Kuhail (mohammad.kuhail@zu.ac.ae)

Related Resources

Good-Data@AAAI 2025   AAAI 2025 Workshop on Preparing Good Data for Generative AI: Challenges and Approaches (Good-Data)
EMERGING 2025   The Seventeenth International Conference on Emerging Networks and Systems Intelligence
ACDL 2025   8th Advanced Course on Data Science & Machine Learning
CENTRIC 2025   The Eighteenth International Conference on Advances in Human-oriented and Personalized Mechanisms, Technologies, and Services
GenAI in Biology 2024   Generative AI in Computational Biology and Bioinformatics (Special Issue on CSBJ)
HUCAPP 2025   9th International Conference on Human Computer Interaction Theory and Applications
COMNET SI - GenXAI for Internet 2024   Elsevier Computer Networks - Special Issue on Generative and Explainable AI for Internet Traffic and Network Architectures
SCSN 2025   The 13th IEEE International Workshop on Semantic Computing for Social Networking: from user information to social knowledge and ethical AI
IUI 2024   ACM Conference on Intelligent User Interfaces
GenAI and LVMs for Biometrics 2025   IEEE Transactions on Biometrics, Behavior, and Identity Science (T-BIOM) Special Issue on Generative AI and Large Vision-Language Models for Biometrics