Dr. DEBADATTA NAIK | network Analysis | Best Researcher Award

Dr. DEBADATTA NAIK | network Analysis | Best Researcher Award

Dr. DEBADATTA NAIK, Researcher cum Teacher, VIZJA University, Poland.

Dr. Debadatta Naik is a passionate educator, researcher, and expert in Computer Science & Engineering, specializing in social network analysis, community detection, and distributed computing. Currently pursuing a Ph.D. at the prestigious Indian Institute of Technology (ISM), Dhanbad, he has built an academic and research profile that reflects deep proficiency in designing computational strategies for social network analysis. In over a decade of teaching and research experience across institutions in Odisha, he has inspired countless students. As an avid programmer and researcher, he is proficient in C, C++, and Python, making significant contributions to computational theory and network dynamics.

Publication Profile

Scopus

ORCID

🎓 Education Background

Dr. Debadatta Naik holds a Ph.D. in Computer Science & Engineering from the Indian Institute of Technology (ISM), Dhanbad (2017–2024), specializing in computational strategies for social network analysis. Prior to this, he earned an M.Tech. from the National Institute of Technology, Rourkela (2015–2017), focusing on centrality approaches for community detection in social networks. He graduated with a B.Tech. in Information Technology from V.S.S.U.T. (formerly UCE Burla), Sambalpur, in 2007. This strong academic background has laid a solid foundation for his research and teaching career, making him a leading contributor in this field.

👔 Professional Experience

With over a decade of teaching and research experience, Dr. Debadatta Naik has served as a lecturer at Raajdhani Engineering College, Bhubaneswar (2010–2015), and GITA, Bhubaneswar (2007–2008). Currently pursuing doctoral research, he is an integral collaborator with VIZJA University, Warsaw, Poland, exploring advances in social network analysis. His expertise spans programming languages (C, C++), database technologies (MySQL), and theoretical subjects like the theory of computation, data structures, and compiler design. A trusted educator and reviewer, he has conducted reviews for reputable journals such as Social Network Analysis and Mining, Scientific Review, and the Computing Journal.

🏅 Awards and Honors

Throughout his academic and professional journey, Dr. Debadatta Naik has been recognized for excellence. He received a Ph.D. Fellowship (2017–2022) and an M.Tech. Fellowship (2015–2017) from the Government of India through GATE scores of 303 and 477, respectively. During his undergraduate years, he secured first positions in athletic meets and distinguished himself in painting, sketching, and calligraphy competitions at V.S.S.U.T. He was a Golden Jubilee Torch Bearer and served as the ART and Photography Secretary, making significant contributions to campus life. These accomplishments reflect his multidisciplinary talents and commitment to excellence.

🔍 Research Focus

Dr. Debadatta Naik’s research focuses on social network analysis, community detection, link prediction, and workflow scheduling. He develops computational strategies for extracting insights from massive social networks, leveraging tools like Hadoop and MapReduce. His work has been published in top journals such as Simulation Modelling Practice and Theory, Journal of Ambient Intelligence and Humanized Computing, Cluster Computing, and Expert Systems with Applications. By exploring innovative approaches like Quantum-PSO and hybrid optimization methods, he aims to optimize the performance and scalability of complex network analytics for cloud environments, making a significant impact in both academia and industry.

✅ Conclusion

With a solid academic background, deep teaching experience, and a strong research record, Dr. Debadatta Naik has established himself as a dedicated educator and prolific researcher. His work advances the understanding of social network dynamics, while his active role in peer review and collaborative research showcases his ongoing contribution to the scientific community. As he continues to expand the frontiers of computational social network analysis and workflow scheduling, he inspires the next generation of engineers and researchers to pursue excellence and innovation in computer science.

📑 Publication Top Notes

  1. Hgwomultiqos: A hybrid grey wolf optimization approach for qos‑constrained workflow scheduling in iaas clouds.
    Simulation Modelling Practice and Theory, 2025
    Cited by: Forthcoming

  2. Enhanced link prediction using sentiment attribute and community detection.
    Journal of Ambient Intelligence and Humanized Computing, 2023
    Cited by: 7

  3. Quantum‑pso based unsupervised clustering of users in social networks using attributes.
    Cluster Computing, 2023
    Cited by: 3

  4. Parallel and distributed paradigms for community detection in social networks: A methodological review.
    Expert Systems with Applications, 2022
    Cited by: 24

  5. Map‑reduce‑based centrality detection in social networks: An algorithmic approach.
    Arabian Journal for Science and Engineering, 2020
    Cited by: 21

  6. Genetic algorithm‑based community detection in large‑scale social networks.
    Neural Computing and Applications, 2020
    Cited by: 48

  7. Mr‑ibc: Mapreduce‑based incremental betweenness centrality in large‑scale complex networks.
    Social Network Analysis and Mining, 2020
    Cited by: 19

 

Xingyan Chen | Computer Networks | Best Researcher Award

Assoc. Prof. Dr. Xingyan Chen | Computer Networks | Best Researcher Award

Associate Professor, Southwestern University of Finance and Economics, China

Dr. Chen Xingyan is an esteemed Associate Professor at the School of Computer and Artificial Intelligence, Southwestern University of Finance and Economics. He holds a Ph.D. in Engineering from Beijing University of Posts and Telecommunications 🎓. His research spans generative AI applications, large language models, distributed computing networks, multimedia communication, and reinforcement learning 🤖. With over 30 publications in top-tier journals and conferences, including IEEE INFOCOM, IEEE TMC, IEEE TMM, and IEEE TCSVT, Dr. Chen has made significant contributions to advancing AI-driven networked systems. He has led multiple national and provincial research projects, making him a distinguished figure in AI and computing research.

Publication Profile

🎓 Education

Dr. Chen Xingyan earned his Ph.D. in Engineering from Beijing University of Posts and Telecommunications, where he specialized in AI-driven multimedia communication and networked computing. His academic journey has been marked by excellence in research, leading to impactful contributions in distributed AI and reinforcement learning applications 📡.

💼 Experience

Dr. Chen is currently an Associate Professor at Southwestern University of Finance and Economics, where he actively engages in cutting-edge research and mentorship. He has been a principal investigator for several prestigious projects, including the NSFC Youth Fund and Sichuan Provincial Natural Science Fund. His consultancy work with leading tech firms like Huawei and China Electronics Technology Group further highlights his industry influence. Additionally, Dr. Chen has played a pivotal role in research projects related to 5G streaming, blockchain-based cloud computing, and immersive video transmission 🎥.

🏆 Awards and Honors

Dr. Chen has been recognized for his groundbreaking research with several prestigious grants and awards. He has received funding from the National Natural Science Foundation of China and the Sichuan Provincial Science and Technology Department. His expertise in AI and multimedia systems has earned him notable accolades in academia and industry 🏅.

🔬 Research Focus

Dr. Chen’s research is centered on generative AI, multimedia communication, federated learning, and reinforcement learning. His work on immersive video transmission, cloud-edge computing, and blockchain-enhanced computing frameworks has been widely cited and influential. He continues to innovate in the field, developing AI-driven methodologies for large-scale distributed networks and next-generation communication systems 🌐.

🔚 Conclusion

Dr. Chen Xingyan stands at the forefront of AI-driven computing and multimedia systems, making substantial contributions through innovative research and industry collaborations. His work in AI, distributed computing, and multimedia communication has not only advanced theoretical knowledge but also influenced practical applications in 5G, blockchain, and federated learning. With a strong research portfolio, prestigious awards, and impactful industry partnerships, Dr. Chen continues to shape the future of AI-powered networked systems 🚀.

🔗 Publications

Towards Optimal Customized Architecture for Heterogeneous Federated Learning with Contrastive Cloud-Edge Model Decoupling. IEEE Transactions on Computers. [Cited by 15] 🔗

A Novel Adaptive 360° Livestreaming with Graph Representation Learning-based FoV Prediction. IEEE Transactions on Emerging Topics in Computing. [Cited by 12] 🔗

A Federated Transmission Framework for Panoramic Livecast with Reinforced Variational Inference. IEEE Transactions on Multimedia. [Cited by 20] 🔗

A Multi-user Cost-efficient Crowd-assisted VR Content Delivery Solution in 5G-and-beyond Heterogeneous Networks. IEEE Transactions on Mobile Computing. [Cited by 18] 🔗

A Universal Transcoding and Transmission Method for Livecast with Networked Multi-Agent Reinforcement Learning. IEEE INFOCOM. [Cited by 25] 🔗

Augmented Queue-Based Transmission and Transcoding Optimization for Livecast Services Based on Cloud-Edge-Crowd Integration. IEEE Transactions on Circuits and Systems for Video Technology. [Cited by 22] 🔗

Learning Bi-typed Multi-relational Heterogeneous Graph via Dual Hierarchical Attention Networks. IEEE Transactions on Knowledge and Data Engineering. [Cited by 30] 🔗

BC-Mobile Device Cloud: A Blockchain-Based Decentralized Truthful Framework for Mobile Device Cloud. IEEE Transactions on Industrial Informatics. [Cited by 17] 🔗

Differential Privacy Oriented Distributed Online Learning for Mobile Social Video Prefetching. IEEE Internet of Things Journal. [Cited by 19] 🔗

Optimal Information Centric Caching in 5G Device-to-Device Communications. IEEE Transactions on Circuits and Systems for Video Technology. [Cited by 23] 🔗

BC-MetaCast: A Blockchain-enhanced Intelligent Computing Framework for Metaverse Livecast. IEEE Network. [Cited by 14] 🔗