Dr. Woosik Lee | Computer Science | Research Excellence Award
Korea Social Security Information Service | South Korea
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Featured Publications
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Featured Publications
Feixiang Li completed his Ph.D. in Computer Science at Beijing University of Technology in June 2020. His doctoral research focused on Mobile Edge Computing and Software Defined Networks, integrating theoretical frameworks with real-world computing challenges. His academic training equipped him with a solid foundation in advanced algorithms, optimization methods, and emerging communication technologies. During his Ph.D., he began publishing in high-impact journals and enaging in collaborative research with leading scholars in the field. His academic journey reflects a strong emphasis on applied research and innovative problem-solving in the domain of network systems and intelligent computing. This solid educational background has not only shaped his technical expertise but also laid the groundwork for his ongoing contributions to both academia and industry. The combination of deep theoretical knowledge and practical insights defines his educational experience and positions him well for leading-edge research in evolving digital infrastructure and smart network systems.
After earning his Ph.D., Feixiang Li joined the 15th Research Institute of China Electronics Technology Corporation as an engineer in July 2020. His role focused on the development and optimization of network systems, with a particular emphasis on edge computing solutions and SDN architecture. In November 2022, he was promoted to Senior Engineer, reflecting recognition of his technical leadership and innovative contributions. In this capacity, Feixiang has worked on high-impact projects with national relevance, integrating academic research into practical implementations that advance China’s communication technology infrastructure. His experience bridges the gap between academic innovation and industrial application, allowing him to contribute meaningfully to both spheres. With a strong command of evolving digital technologies and hands-on experience in designing and deploying scalable systems, he continues to push the boundaries of what is technically possible in his field. His professional trajectory demonstrates steady growth, leadership, and a commitment to innovation-driven development.
Feixiang Li’s research interests lie at the intersection of Mobile Edge Computing, Software Defined Networks (SDN), and Evolutionary Algorithms. His work addresses critical challenges in network optimization, resource allocation, and intelligent control in dense communication environments. He has published influential studies on computation offloading using game theory and auction-based models, reflecting his expertise in both algorithm design and systems thinking. Feixiang is particularly interested in how emerging network paradigms like SDN and edge computing can be made more efficient and adaptive through intelligent algorithms. His research not only contributes theoretical models but also delivers practical tools for enhancing communication systems in the era of IoT and 5G. These interests position him at the forefront of digital infrastructure innovation. As networks become more complex and data-driven, his work provides scalable, intelligent solutions to meet future demands, reinforcing his role as a vital contributor to the advancement of modern communication technologies.
While specific individual awards and honors are not listed in the provided resume, Feixiang Li’s track record reflects recognition through peer-reviewed publications in high-impact journals such as IEEE Transactions on Industrial Informatics and IEEE Transactions on Mobile Computing. These publications, often co-authored with respected researchers, indicate scholarly recognition and professional credibility in the field of computer science and communication networks. His promotion to Senior Engineer at a prominent national research institute also suggests internal recognition of his expertise and leadership. Participation in major international conferences and acceptance of his work in top-tier venues serve as further evidence of his standing within the academic and professional community. Although formal awards are not explicitly mentioned, the quality, volume, and impact of his research contributions suggest a strong foundation for future honors and positions him as a valuable candidate for accolades such as the Best Researcher Award or other academic distinctions in technology and engineering.
Feixiang Li is a highly capable researcher and engineer whose work bridges academic innovation and real-world technology implementation. With a strong educational foundation, extensive experience in a national research institute, and a focused research agenda in high-impact areas like edge computing and SDNs, he stands out as a leader in his field. His publications in top-tier journals and his growing professional responsibilities underscore his commitment to advancing the state of digital communication systems. While there is room to expand his global research network and innovation leadership, his current achievements reflect a robust trajectory of growth, influence, and potential. Feixiang’s career exemplifies the integration of theoretical rigor with applied engineering, making him a strong candidate for awards and honors that recognize excellence in research and technological innovation. As he continues to evolve professionally and academically, he is well-positioned to make further meaningful contributions to the future of intelligent networked systems.
Title: A Deep Reinforcement Learning-Based Topology Optimisation Method for Distributed Trial Networks
Authors: Zhuo Wang, Mingzhe Liu, Feixiang Li, Honglei Yin
Year: 2025
Title: A Transformer-GRU-Based Edge Computing Method for Vessel Trajectory Prediction
Authors: Yuhao Su, Mingzhe Liu, Feixiang Li, Honglei Yin, Chao Fang
Year: 2025
Title: Constant-Time Discrete Gaussian Sampling for Edge Computing Based on DPWGAN
Authors: Jingbin Shi, Ning Li, Feixiang Li, Mingzhe Liu, Xige Zhang
Year: 2025
Title: Semi-supervised Remote Sensing Image Classification for Edge Computing via Contrastive Learning
Authors: Pengquan Liao, Ning Li, Mingzhe Liu, Kai Qu, Feixiang Li, Jinyi Chen
Year: 2025
Title: Collaborative Computation Offloading and Resource Management in Space–Air–Ground Integrated Networking
Authors: Feixiang Li, Kai Qu, Mingzhe Liu, Ning Li, Tian Sun
Journal: Electronics
Year: 2024
Title: Intelligent Computation Offloading Mechanism with Content Cache in Mobile Edge Computing
Authors: Feixiang Li, Chao Fang, Mingzhe Liu, Ning Li, Tian Sun
Journal: Electronics
Year: 2023
Title: Auction Design for Edge Computation Offloading in SDN-Based Ultra Dense Networks
Authors: Feixiang Li, Haipeng Yao, Jun Du, Chunxiao Jiang, Zhu Han, Yunjie Liu
Journal: IEEE Transactions on Mobile Computing
Year: 2022
Title: Stackelberg Game-Based Computation Offloading in Social and Cognitive IIoT
Authors: Feixiang Li, Haipeng Yao, Jun Du, Chunxiao Jiang, Yi Qian
Journal: IEEE Transactions on Industrial Informatics
Year: 2020
Title: Multi-Controller Resource Management for Software-Defined Wireless Networks
Authors: Feixiang Li, Xiaobin Xu, Haipeng Yao, Jingjing Wang, Chunxiao Jiang, Song Guo
Journal: IEEE Communications Letters
Year: 2019
Citations: 18 (Scopus)
Title: Bat Algorithm with Principal Component Analysis
Authors: Zhihua Cui, Feixiang Li, Wensheng Zhang
Journal: International Journal of Machine Learning and Cybernetics
Year: 2019
Professor at Hebei MINZU Normal University, China
Yanming Zhao is a distinguished Professor at Hebei University of Nationalities, specializing in visual computing and deep neural networks. With a commitment to advancing technology and innovation, he has made significant contributions to the field of computer application technology, evidenced by his extensive research and numerous publications. 🌟
Profile
Yanming graduated with a Master’s degree in Computer Application Technology from the School of Information at Shenyang University of Technology in 2010. His academic background laid a solid foundation for his future research endeavors and leadership in academia.
As a Master’s Supervisor and experienced researcher, Professor Zhao has participated in over nine provincial-level research projects and has consulted on over 500 industry projects. His work not only showcases his expertise but also his dedication to bridging the gap between academia and industry.
Professor Zhao’s research primarily focuses on visual computing and deep neural networks. He has developed innovative algorithms, including the visual selectivity-based 3D graph convolutional algorithm (VS-3DGCN), aimed at enhancing point cloud segmentation performance and addressing key challenges in 3D graph convolutional algorithms.
Throughout his career, Yanming has received numerous accolades, including the title of Excellent Scientific and Technological Worker in Hebei Province and Outstanding Expert Managed by Chengde City. These awards reflect his significant contributions to the scientific community and his leadership in research.
Professor Zhao has published more than 30 academic papers in esteemed journals, such as:
These contributions have garnered a total citation index of 102 times, illustrating the impact of his work on the research community. 📚🔗
In summary, Professor Yanming Zhao stands out as a leading figure in the fields of visual computing and deep learning. His extensive research, numerous publications, and accolades make him a deserving candidate for the Best Researcher Award. His ongoing commitment to innovation and excellence continues to inspire colleagues and students alike.
Associate Professor, American University of Ras Al Khaimah, United Arab Emirates
Dr. Osama Sohaib is an Associate Professor of Business Analytics at the American University of Ras al Khaimah, UAE. He holds a Ph.D. in Information Systems from the University of Technology Sydney, Australia. With over 15 years of teaching experience, Dr. Sohaib is dedicated to educating and mentoring undergraduate and postgraduate students in information systems, focusing on the intersection of technology and business. 🌍📚
Dr. Sohaib earned his Ph.D. in Information Systems in 2015 from the University of Technology Sydney, Australia. He is currently pursuing a Master of Business Analytics at the University of Queensland and holds a Graduate Certificate in Applied Artificial Intelligence from Charles Sturt University. His academic journey also includes a Master of Science in Computer Science, a Postgraduate Diploma in Information Management, and a Bachelor of Science in Software Development. 🎓📖
With over 15 years of experience in academia, Dr. Sohaib has held various positions, including Associate Professor at the American University of Ras al Khaimah and Lecturer at the University of Technology Sydney. He has also taught at Macquarie University and the University of New South Wales. His roles have included supervising research students, coordinating academic programs, and contributing to funded projects in business information systems. 💼👨🏫
Dr. Sohaib’s research interests encompass business information systems, e-services, digital privacy, digital transformation, business intelligence, decision-making, and applied machine learning. His work aims to enhance service effectiveness across various sectors, including digital business, healthcare, education, and government, with a strong emphasis on the ethical and societal implications of technology. 💡🔍
Dr. Sohaib has received multiple accolades, including the “Research of the Year” award from the School of Business at AURAK for his exceptional research contributions in 2023 and 2024. He was also honored with the “Best Paper Award” at the 25th International Conference on Information Systems Development in 2016 for his work on web content accessibility. 🏆🌟
Assessing Web Content Accessibility of E-Commerce Websites for People with Disabilities
Best Paper Award, 2016
Link to Publication | 2016 | Journal of Information Systems Development | Cited by: 120
Digital Privacy in the Age of Big Data and Machine Learning: People’s Expectations and Experiences
Link to Publication | 2022 | International Journal of Information Management | Cited by: 85
Factors Influencing Continuance Intention in Augmented Reality Platforms
Link to Publication | 2023 | Journal of Business Research | Cited by: 45
Opportunities and Challenges in the Implementation of AI in Accounting and Auditing Software
Link to Publication | 2024 | International Journal of Accounting Information Systems | Cited by: 10
The Effect of Individual’s Technological Belief and Usage on their Absorptive Capacity towards their Learning Behaviour in the Learning Environment
Link to Publication | 2020 | Computers & Education | Cited by: 30
Data Scientist at Makerere University, School of Public Health, Uganda
Alex Mirugwe is a highly skilled Data Scientist with over 4 years of experience, specializing in applying machine learning and AI to healthcare challenges, particularly in HIV, cancer, and tuberculosis diagnostics. He has a proven track record of developing data-driven solutions that improve patient outcomes in resource-constrained settings. His research has been published in several peer-reviewed journals, and he is proficient in a wide range of data science tools and methodologies. Alex also contributes to academia as an Assistant Lecturer and is involved in curriculum development and student mentoring in computer science.
Profile:
Alex Mirugwe holds an MSc in Data Science from the University of Cape Town, South Africa, completed in 2021, where he conducted research on automated bird detection using machine learning. His academic performance was strong, with a GPA of 74.52%. Prior to this, he earned a BSc in Computer Engineering from Makerere University, Uganda, in 2019, graduating with a CGPA of 4.18/5.0. His undergraduate dissertation focused on developing a low-cost wireless TV audio transceiver, reflecting his early interest in applying engineering principles to real-world problems. His educational background combines technical proficiency in computer science with a strong emphasis on data science and machine learning applications.
Alex Mirugwe is a highly skilled data scientist with over four years of experience applying machine learning and AI to healthcare challenges, particularly in diagnosing HIV, cancer, and tuberculosis. He has successfully developed predictive models to improve patient care and outcomes in resource-limited settings, such as creating algorithms for cervical cancer screening and reducing HIV patient data duplication. His work spans both practical implementation and academic research, with multiple publications on AI-driven health interventions. In addition to his research, Alex is an experienced educator, teaching data science and machine learning courses at the university level.
Alex Mirugwe’s research focuses on leveraging data science and machine learning to address critical healthcare challenges, particularly in resource-constrained settings. His work encompasses developing predictive models for patient care in HIV treatment, enhancing cervical cancer screening accuracy through AI algorithms, and analyzing public sentiment during health crises, such as the Ebola outbreak. Additionally, he explores various applications of AI in public health, including improving tuberculosis detection and reducing data duplication in electronic medical records. Overall, his research aims to harness advanced data analytics to improve patient outcomes and inform public health strategies, making significant contributions to the field of healthcare data science.
Alex Mirugwe presents an impressive and well-rounded portfolio, with extensive experience in applying machine learning and AI to tackle critical healthcare challenges. His achievements, particularly in HIV care and cancer screening, demonstrate his ability to leverage data science for real-world health outcomes. While he has a strong research and technical background, focusing on leadership, broadening his research scope, and contributing to systemic policy changes could bolster his case further. He is a strong candidate for the Best Researcher Award, especially within the domain of AI-driven healthcare solutions in resource-constrained settings.