Mr. Huixian Lin – Deep Learning – Best Researcher Award

Mr. Huixian Lin - Deep Learning - Best Researcher Award

Guangdong Ocean University - China

Author Profile

SCOPUS

Summary

Mr. Huixian Lin is a dedicated full-time teacher at Guangdong Ocean University with a master's degree in Computer Science and Technology. His academic focus lies in image processing, machine learning, and the integration of power electronics in intelligent systems. He has made notable contributions, including enhancing the YOLOv5s model for degraded image detection and publishing three SCI-indexed research papers. His teaching and research work reflects a commitment to advancing practical, AI-driven solutions in real-world environments.

Early academic pursuits

Mr. Huixian Lin began his academic journey with a strong inclination toward computational sciences. His commitment to technological excellence led him to pursue a Master of Science degree in Computer Science and Technology from Guangdong Ocean University, completed in 2023. During his academic training, he cultivated a keen interest in image processing, deep learning machine learning, and system optimization. His foundational knowledge in applied mathematics, algorithms, and power electronics laid a strong base for future research and teaching.

Professional endeavors

Since 2023, Mr. Lin has been serving as a full-time teacher at the College of Mathematics and Computer Science, Guangdong Ocean University. His teaching methodology emphasizes practical applications of theoretical concepts, especially in areas like deep learning intelligent systems and computer vision. In his short tenure, he has made significant strides in mentoring undergraduate students and guiding them through hands-on research in modern computing fields, including power electronics applications in automation systems.

Contributions and research focus

Mr. Lin’s most notable academic contribution is his proposed improvement of the YOLOv5s model, targeting enhanced detection of degraded images—a challenge in both surveillance and industrial inspection sectors. His research integrates advanced machine learning with classical image processing techniques. He has authored 3 SCI-indexed papers in reputed journals, deep learning showcasing innovations that have practical implications in smart sensing, automation, and power electronics interface systems. These contributions reflect a commitment to solving real-world problems using intelligent technology frameworks.

Impact and influence

Mr. Lin's work has been recognized within academic circles for its technical accuracy and applicability. His adaptations to image recognition models have improved reliability in noisy environments, offering benefits to sectors like security surveillance, medical diagnostics, and automated inspection systems. As a young academic, deep learning his influence is growing, especially among peers focusing on embedded systems, AI algorithms, and sensor-integrated power electronics.

Academic citations

Although at an early stage of his academic journey, Mr. Lin's publications have begun to attract citations in related research fields. His work is cited for contributions to degraded image classification, neural network efficiency optimization, deep learning and algorithm adaptability in constrained environments. This emerging scholarly attention suggests a promising trajectory in the years ahead.

Legacy and future contributions

Looking ahead, Mr. Lin aspires to build a legacy in the intersection of artificial intelligence, image processing, and real-time computing. He aims to extend his research toward more adaptive and energy-efficient machine learning models with industrial deployment in mind. His future contributions are likely to focus on smarter integration of visual data into automated decision-making systems, deep learning particularly where power electronics and AI co-evolve. Through his ongoing role at Guangdong Ocean University, he is poised to nurture future innovators and push the boundaries of applied computing.

Notable Publications

Effective superpixel sparse representation classification method with multiple features and L 0smoothing for hyperspectral images.

Conclusion

In the early stages of his academic career, Mr. Huixian Lin has already made a meaningful impact through research and instruction. His innovative approach to machine learning and image recognition, especially when combined with power electronics, positions him as a promising figure in the field. With a growing scholarly presence and a passion for technological development, Mr. Lin is set to contribute significantly to the future of smart computing and interdisciplinary research.

Mr. Abubakar Adamu – Computer Science and Artificial Intelligence – Best Paper Award

Mr. Abubakar Adamu - Computer Science and Artificial Intelligence - Best Paper Award

Federal University of Technology Minna Nigeria and University of Malaya - Malaysia

Author Profile

ORCID

Summary

Adamu Abubakar is an emerging researcher and academic with a strong foundation in computer science, artificial intelligence, and telecommunications. his educational background, which includes a master's degree with distinction and an ongoing phd, reflects his dedication to academic excellence and technical mastery. professionally, he has blended academic teaching with significant industry experience at leading telecom firms, giving him a well-rounded perspective on both theoretical and practical aspects of technology.

His research interests focus on the integration of artificial intelligence into telecommunication systems, with a growing emphasis on the role of power electronics in optimizing network infrastructure and improving service delivery. his involvement in global research networks like vodan demonstrates his commitment to using technology for societal benefit.

Early academic pursuits

Adamu Abubakar began his academic journey with a bachelor’s degree in computer science from usman danfodio university sokoto, nigeria, where he laid a solid foundation in computing principles and information technology. his pursuit of excellence continued with a master of technology (m.tech) in computer science at the federal university of technology minna, where he graduated with distinction. Computer Science and Artificial Intelligence his master's thesis focused on developing an enhanced self-service software model tailored for the nigerian telecommunication sector, integrating concepts applicable in power electronics systems through efficient data processing and control mechanisms.

Currently, he is enrolled in a phd program in computer science and artificial intelligence at the federal university of technology minna. additionally, he has undertaken a phd mobility attachment program at the university of malaya, malaysia, further expanding his exposure to global research practices. he also holds a postgraduate diploma in education from the national teachers institute, reflecting his dedication to academic mentorship and teaching excellence.

Professional endeavors

Adamu Abubakar's professional career is marked by significant teaching, research, and managerial responsibilities. he presently serves as a lecturer i at ibrahim badamasi babangida university, lapai, where he teaches courses such as data communication, networking, artificial intelligence, and computer architecture. he actively supervises final-year projects, providing guidance that connects theoretical concepts with practical applications, including emerging technologies such as power electronics in telecommunication systems.

Prior to his academic role, he accumulated valuable industry experience at leading telecommunication firms in nigeria, including mtn nigeria limited and zain nigeria limited. Computer Science and Artificial Intelligence his positions in customer service and distribution management honed his leadership, technical, and organizational skills, critical in both corporate operations and academic settings.

Contributions and research focus

Adamu Abubakar’s research interests lie primarily in artificial intelligence and telecommunication technologies. his academic and industry experiences have positioned him to explore intelligent systems design, network optimization, Computer Science and Artificial Intelligence and data-driven solutions to enhance telecom services. he also emphasizes the potential applications of power electronics in smart grid communication systems and energy-efficient telecommunication infrastructure.

As a data steward in the virus outbreak data network (vodan) africa & asia covid-19 volunteer network, he contributed to data management and system analysis, reinforcing his commitment to impactful scientific research.

Impact and influence

Adamu Abubakar’s dual expertise in academia and the telecommunications industry allows him to bridge the gap between theoretical knowledge and practical solutions. his teaching impacts undergraduate and postgraduate students, inspiring the next generation of nigerian computer scientists. Computer Science and Artificial Intelligence his involvement in technological research related to artificial intelligence and power electronics has the potential to shape more efficient telecom and computing infrastructures in africa and beyond.

Academic cites

Adamu Abubakar’s master's thesis on enhanced self-service models for nigerian telecom networks remains a relevant citation for researchers developing customer-oriented software systems in developing regions. ongoing collaborations through his phd programs and attachments are expected to yield publications contributing to fields like machine learning, Computer Science and Artificial Intelligence network optimization, and the integration of power systems and power electronics in information technology.

Legacy and future contributions highlight

With a vision focused on blending artificial intelligence with telecommunication advancements, adamu abubakar aims to make long-lasting contributions to nigeria’s digital infrastructure. he is committed to further exploring the synergy between ai-driven network systems and power electronics, ensuring sustainable, energy-efficient, and intelligent telecom solutions. Computer Science and Artificial Intelligence his legacy will likely include not only scholarly publications but also the cultivation of students and professionals well-versed in next-generation technologies.

Notable Publications

  1. Title: Systematic literature review and bibliometric analysis of pipeline monitoring and leakage detection techniques
    Authors: Adamu Abubakar; Opeyemi Aderiike Abisoye; Isiaq Oludare Alabi; Adepoju Solomon; Ishaq Oyebisi Oyefolahan
    Journal: Discover Mechanical Engineering

  1. Title: Exploring the Integration of a Patient Generated Health Data in a FAIR Digital Health System in Low-Resourced Settings: A User-Centered Approach
    Authors: Abdullahi Abubakar Kawu; Rens Kievit; Adamu Abubakar; Mirjam Van Reisen; Dympna O'Sullivan; Lucy Hederman
    Conference: ACM International Conference (Proceedings)

Conclusion

Adamu Abubakar's career trajectory showcases a harmonious balance of teaching, research, and industrial practice. his expertise positions him to make impactful contributions to the fields of ai-driven telecommunication systems and power electronics applications in emerging markets. looking ahead, he is set to influence the development of energy-efficient, intelligent technologies that will shape nigeria's digital future and inspire the next generation of tech innovators.

Dr. Liping Zhang – Optimization, Machine Learing, Scientific Computing – Best Researcher Award

Dr. Liping Zhang - Optimization, Machine Learing, Scientific Computing - Best Researcher Award

Tsinghua University - China

Author Profile

GOOGLE SCHOLAR

Summary

Liping Zhang, a distinguished professor at Tsinghua university, has built a remarkable career grounded in mathematical sciences, operations research, and tensor optimization. her early academic training from qufu normal university and the chinese academy of sciences laid a strong theoretical base, later enriched by international research experiences in taiwan and hong kong. over the years, she has contributed significantly to tensor decomposition, low-rank optimization, and eigenvalue problem-solving—areas that also have potential impact in emerging technologies such as power electronics. her leadership in prestigious national and enterprise-funded projects reflects both her academic rigor and her practical problem-solving capabilities in data processing and algorithm design. recognized by multiple scientific awards, zhang’s work continues to influence fields where computational efficiency and advanced mathematical modeling are critical.

Early academic pursuits

Liping Zhang began her academic journey with a strong foundation in mathematics, earning her bachelor's and master's degrees from qufu normal university. her interest in operations research guided her towards doctoral studies at the academy of mathematics and systems science (amss), chinese academy of sciences. during this period, she laid the groundwork for her later contributions in optimization theory and tensor computations— Optimization, Machine Learing, Scientific Computing areas that have relevance even in interdisciplinary fields such as power electronics, where mathematical modeling plays a crucial role.

Professional endeavors

After completing her ph.d., liping zhang held postdoctoral positions at beijing jiaotong university before joining tsinghua university. her early roles as lecturer and associate professor shaped her teaching philosophy and research rigor. she also expanded her global research experience through visiting fellowships at the hong kong polytechnic university and national cheng kung university. Optimization, Machine Learing, Scientific Computing these international exposures contributed to her understanding of applied optimization techniques, which are essential in diverse engineering domains, including power electronics where multi-dimensional data processing and tensor decomposition find practical applications.

Contributions and research focus

Professor Zhang's research primarily revolves around tensor decomposition, low-rank optimization, structured tensor optimization, and eigenvalue problems of nonnegative tensors. her work contributes valuable algorithms and theoretical insights that address computational challenges in multidimensional signal processing—a field increasingly impacting technological advancements like power electronics, Optimization, Machine Learing, Scientific Computing where efficiency and precision in signal interpretation are critical. her leadership in multiple national natural science foundation of china (nsfc) projects and enterprise-supported programs underscores her pivotal role in advancing algorithmic science.

Impact and influence

Liping Zhang’s scholarly contributions have not only enhanced the mathematical understanding of tensor computations but have also influenced applied sectors reliant on high-dimensional data modeling. her research outputs bear implications for optimization in system controls, quantum computation, and data analytics—disciplines integrally tied to the evolution of power electronics systems, Optimization, Machine Learing, Scientific Computing where reliable optimization algorithms improve device performance and energy efficiency. her recognitions, such as the award from the shandong big data research association and the natural science award from the chinese ministry of education, validate the impact and relevance of her research.

Academic citations

Zhang’s research is well-cited in academic literature, reflecting her standing in the fields of operations research and tensor optimization. her works on smoothing methods, complementarity problems, and semi-infinite programming algorithms have become references for scholars working on mathematical models applicable even in technical fields like control systems and power electronics. Optimization, Machine Learing, Scientific Computing her google scholar profile lists a substantial body of publications that are foundational to both theoretical advancements and practical engineering solutions.

Legacy and future contributions highlight

As a professor at Tsinghua university, Liping Zhang continues to mentor the next generation of researchers, inspiring work in mathematical optimization, machine learning, and tensor analysis. her future research is expected to bridge theoretical innovations with emerging technologies such as artificial intelligence and quantum computing—areas that will undoubtedly intersect with power electronics as demand grows for smart, energy-efficient devices. her academic legacy is built upon a consistent pursuit of solving complex computational problems with real-world engineering applications.

Notable Publications

  1. Title: Tensors and Some Applications
    Authors: L. Zhang; L. Qi; G. Zhou
    Journal: SIAM Journal on Matrix Analysis and Applications

  1. Title: Linear convergence of an algorithm for computing the largest eigenvalue of a nonnegative tensor
    Authors: L. Zhang; L. Qi
    Journal: Numerical Linear Algebra with Applications

  1. Title: Tensor absolute value equations
    Authors: S. Du; L. Zhang; C. Chen; L. Qi
    Journal: Science China Mathematics

  1. Title: A new exchange method for convex semi-infinite programming
    Authors: L. Zhang; S.Y. Wu; M.A. López
    Journal: SIAM Journal on Optimization

  2. Title: The non-interior continuation methods for solving the P0 function nonlinear complementarity problem
    Authors: Z. Huang; J. Han; D. Xu; L. Zhang
    Journal: Science in China Series A: Mathematics

Conclusion

Liping Zhang’s research legacy demonstrates a blend of theoretical depth and practical relevance, particularly in the optimization and processing of high-dimensional data. her innovations contribute not only to operations research but also extend to applied domains like machine learning, quantum computation, and power electronics, where robust algorithms drive technological advancement. as she continues her academic journey at tsinghua university, her future work is poised to inspire further breakthroughs at the intersection of mathematical theory and real-world engineering challenges.