Amol Bhagat | Big Data Security | Best Researcher Award

9
Research Award Review

How would you rate the nominee's research excellence?

Dr. Amol Bhagat | Big Data Security | Best Researcher Award

Manager Business Incubation at Prof Ram Meghe College of Engineering and Management, Badnera Amravati | India

Dr. Amol Prakash Bhagat is an accomplished academic and innovator serving as Assistant Professor, Manager–Business Incubator, and Programme Coordinator–IEDC at Ram Meghe College of Engineering & Management, Badnera, Amravati. With over 18 years of teaching experience, he has made significant contributions in Data Science, Artificial Intelligence, Machine Learning, Digital Signal Processing, and Medical Image Processing. Dr. Bhagat has authored 100+ publications, filed 38 patents (7 granted), published 10 books, and guided numerous postgraduate and doctoral scholars. He has secured multiple high-value research grants from DST, NITI Aayog, and MSME, and is recognized with prestigious awards such as the Start-Up NIDHI Award (DST EDII) and IETE Higher Technical Proficiency Award. As a mentor for initiatives like Smart India Hackathon and Atal Tinkering Labs, he actively fosters innovation and entrepreneurship.

Professional Profile:

Education: 

Dr. Amol Prakash Bhagat holds a Ph.D. in Information Technology, complemented by an M.Tech in Computer Science & Engineering and a B.E. in Information Technology. His strong academic foundation in computing, engineering, and advanced research underpins his extensive contributions to the fields of data science, artificial intelligence, and digital signal processing.

Experience:

With over 18 years of teaching experience and 8 years dedicated to research, Dr. Bhagat has successfully guided 25 M.E./M.Tech students to completion and serves as a Ph.D. supervisor at Sant Gadge Baba Amravati University. He has also contributed 1.5 years in the industry, bringing practical expertise to his academic work. Beyond teaching and research, he has held key leadership roles, including Coordinator of the Department of Science and Technology-funded Innovation & Entrepreneurship Development Centre (IEDC), Manager of the MSME Business Incubator, and Nodal Officer for the Atal Ranking of Institutions on Innovation Achievements (ARIIA). His professional service includes active participation as a Technical Programme Committee Member in over 30 international conferences, reviewer for leading publishers such as Elsevier, IEEE, and Springer, Chairperson in 15+ conferences, and delivering more than 150 expert lectures as a resource person.

Research Interest:

Data Science, Artificial Intelligence, Machine Learning, Digital Signal Processing, Soft Computing, Data Analytics, Medical Image Processing, Image Segmentation, Content-Based Image Retrieval, Cybersecurity in Wireless Networks, and Innovation-Driven Entrepreneurship.

Publications Top Noted:

  1. Medical Images: Formats, Compression Techniques and DICOM Image Retrieval – A Survey
    Year: 2012 | Citations: 40

  2. Classification and Analysis of Clustering Algorithms for Large Datasets
    Year: 2015 | Citations: 20

  3. A Detection and Prevention of Wormhole Attack in Homogeneous Wireless Sensor Network
    Year: 2016 | Citations: 19

  4. Six Sigma DMAIC Literature Review
    Year: 2015 | Citations: 19

  5. Design and Development of Systems for Image Segmentation and Content-Based Image Retrieval
    Year: 2012 | Citations: 17

Conclusion:

Dr. Amol Bhagat’s exceptional research productivity, innovation-driven mindset, and proven leadership in big data security and AI applications make him a highly deserving candidate for the Best Researcher Award. His strong patent portfolio, grant acquisition record, and dedication to nurturing talent align perfectly with the award’s vision of recognizing transformative contributions. With expanded international collaborations and global outreach, Dr. Bhagat is poised to further advance the frontiers of data-driven security and innovation, cementing his status as a global leader in the field.

Huy Dinh | Artificial Intelligence | Best Researcher Award

9
Research Award Review

How would you rate the nominee's research excellence?

Mr. Huy Dinh | Artificial Intelligence | Best Researcher Award

Huy Dinh at Stanford University Department of Orthopaedic Surgery | United States

Huy G. Dinh, BS is a physician-scientist in training at the Stanford University School of Medicine, combining expertise in bioengineering, computational modeling, and artificial intelligence to advance medical diagnostics and patient care. His research spans AI-assisted motion analysis, computational hemodynamics, and predictive modeling of musculoskeletal and vascular diseases. A recipient of the Cognitive Scientist Best Researcher Award and the MedScholars Discovery Grant, Mr. Dinh has authored multiple peer-reviewed publications and presented at leading conferences, reflecting a deep commitment to translational research at the intersection of engineering and medicine.

Professional Profile:

Education: 

  • Doctor of Medicine (MD) – Stanford University School of Medicine, Stanford, CA

  • Bachelor of Science in Bioengineering – University of California, Los Angeles (UCLA), Los Angeles, CA

Experience:

Mr. Dinh’s professional journey bridges clinical research, teaching, and emergency medical services. At Stanford’s Ladd Lab, he develops novel AI-driven motion analysis tools for assessing hand function and investigates radiographic patterns to predict osteoarthritis progression. His earlier work at UCLA’s Chien Lab focused on fluid simulations of vascular disease and predictive models for aneurysm progression. Beyond research, he has served as a Teaching Assistant in Orthopaedic Surgery, an EMT providing acute care across Southern California, and a campus leader organizing large-scale cultural and academic events.

Research Interest:

  • Artificial Intelligence in Medicine – AI-assisted motion capture, predictive analytics, and interpretable models for clinical decision-making

  • Computational Hemodynamics – Patient-specific simulations of vascular flow and disease progression

  • Musculoskeletal Imaging – Quantitative radiographic analysis and shape modeling in osteoarthritis

  • Medical Device Development – Integrating engineering principles into novel diagnostic tools

Publications Top Noted:

1. Proof of Concept and Validation of Single-Camera AI-Assisted Live Thumb Motion Capture

  • Year: 2025

2. Examining the Utility of 2D DSA for Carotid Stenosis Hemodynamic Pressure Analysis

  • Year: 2023

3. Image-Derived Metrics Quantifying Hemodynamic Instability Predicted Growth of Unruptured Intracranial Aneurysms

  • Year: 2022

4. Reconstruction of Carotid Stenosis Hemodynamics Based on Guidewire Pressure Data and Computational Modeling

  • Year: 2022

5. Patient-Specific Analyses Reveal Differences in Hemodynamic and Morphological Parameters Between Growing and Stable Unruptured Intracranial Aneurysms

  • Year: 2022

Conclusion:

Mr. Huy Dinh’s pioneering contributions in AI-driven medical diagnostics make him an outstanding candidate for the Best Researcher Award in Artificial Intelligence. His ability to integrate engineering innovation with clinical needs positions him as a transformative figure in the future of personalized medicine. With continued focus on expanding collaborations, translating research into clinical practice, and contributing to the ethical evolution of AI in healthcare, he is poised to make lasting global contributions. His record of excellence and innovation strongly supports his recognition with this award.

Xiaoling Shu | Large Language Models | Best Researcher Award

Xiaoling Shu | Large Language Models | Best Researcher Award

Ms. Xiaoling Shu, Northwest Normal University , China.

Xiaoling Shu is a dedicated researcher and graduate student at Northwest Normal University in Lanzhou, China. Her work focuses on the innovative application of large language models (LLMs) and natural language processing (NLP) techniques in the fault diagnosis of mine hoists, contributing to the advancement of hyper-relational knowledge graphs. Xiaoling’s research explores hierarchical reinforcement learning and link prediction methods, emphasizing their role in enhancing industrial operations. Passionate about the intersection of technology and practical problem-solving, she has authored multiple impactful publications. Outside her academic pursuits, Xiaoling is inspired by the rich historical and cultural heritage of Tianshui. 🌟📚

Publication Profiles

Orcid

Education and Experience

  • 🎓 Graduate Student in Progress (Computer Science and Engineering)
    Northwest Normal University, Lanzhou, China (Since 1999-02)
  • 🔬 Researcher in Mine Hoist Fault Analysis and Knowledge Graphs
    Specializing in advanced NLP and hierarchical learning techniques.

Suitability For The Award

Ms. Xiaoling Shu, a graduate student at Northwest Normal University, specializes in applying large language models and natural language processing for fault diagnosis in mine hoists. Her innovative research, including hyper-relational knowledge graphs and reinforcement learning, contributes significantly to advancements in fault prediction and analysis. Ms. Shu’s impactful work positions her as a deserving candidate for the Best Researcher Award.

Professional Development

Xiaoling Shu is continuously advancing her expertise in cutting-edge computational techniques, leveraging the power of large language models and NLP. Her work integrates artificial intelligence with industrial fault diagnostics, focusing on predictive algorithms and hyper-relational knowledge graphs. With an eye on technological evolution, she engages in workshops, seminars, and collaborations aimed at fostering innovation in hierarchical reinforcement learning. Xiaoling’s dedication to problem-solving has earned her a place among emerging experts in AI-driven industrial applications. Beyond her academic endeavors, she actively participates in cross-disciplinary exchanges to promote innovative thinking in fault diagnosis systems. 🚀🖥️

Research Focus

Xiaoling Shu’s research is centered on applying advanced computational models to optimize fault diagnosis systems for mine hoists. Her focus includes utilizing large language models to construct hyper-relational knowledge graphs, enabling precise and efficient fault analysis. She explores hierarchical reinforcement learning techniques to enhance decision-making in industrial operations and develops methodologies like HyperKGLinker for effective link prediction. Her work aligns with the broader goal of integrating AI with practical applications, addressing complex challenges in mining industries. Xiaoling’s innovative approach contributes to smarter, safer, and more reliable industrial systems. 🤖⚙️

Awards and Honors

  • 🏅 Best Research Contribution Award for advancements in NLP-based fault diagnostics.
  • 🏆 Innovation in AI Award for hyper-relational knowledge graph applications.
  • 🎖️ Outstanding Researcher for publications on hierarchical reinforcement learning.
  • 📜 Certificate of Excellence for contributions to link prediction methods.
  • 🌟 Technology Pioneer Award for integrating LLMs in industrial applications.

Publication Top Notes

  • 📘 “Utilizing Large Language Models for Hyper Knowledge Graph Construction in Mine Hoist Fault Analysis” – 2024, cited by 0,  ✍️
  • 📕 “Research on Fault Diagnosis of Mine Hoists Based on Hierarchical Reinforcement Learning” – 2024, cited by 0. 

Dr. Jianhuan Cen | AI for Science Awards | Best Researcher Award

Dr. Jianhuan Cen | AI for Science Awards | Best Researcher Award

Dr. Jianhuan Cen, Sun Yat-sen University, China

Dr. Jianhuan Cen holds a master’s degree in Computational Mathematics and a bachelor’s degree in Information and Computing Science from Sun Yat-sen University, where he has consistently excelled academically and earned multiple scholarships. His research has made significant strides in AI model benchmarking for molecular property prediction and crystal structure prediction using diffusion models, showcasing his ability to integrate deep learning with scientific computation. Dr. Cen’s work has implications for material science and molecular simulation. He is known for his collaborative spirit and leadership in various research projects and software development efforts, and his versatility is evident from his involvement in programming problem review and testing school OJ websites.

Professional Profile:

Scopus
Google Scholar

Educational Background:

Dr. Cen has a robust academic foundation, with a master’s degree in Computational Mathematics and a bachelor’s degree in Information and Computing Science from Sun Yat-sen University, a leading institution in China. He has excelled academically and received multiple scholarships for his achievements.

Technical Skills and Contributions:

He has extensive hands-on experience in distributed computing, high-performance computing, and algorithm implementation using C/C++, Python, and Matlab. Dr. Cen’s project experience includes:

Implementing Locality Sensitive Hashing (LSH) on distributed clusters using Hadoop and Spark.

Developing a Non-Volatile Memory (NVM) based linear hash index, showcasing expertise in advanced database systems and memory environments.

Research Impact:

Dr. Cen has contributed to various high-impact projects, including AI model benchmarking for molecular property prediction and crystal structure prediction using diffusion models. His interdisciplinary work bridges the gap between deep learning and scientific computation, which could have broad applications in areas like material science and molecular simulation.

Collaboration and Leadership:

He has been involved in multiple research projects and collaborative software development efforts, indicating strong teamwork and leadership capabilities. He has also reviewed programming problems and tested school OJ websites, demonstrating his versatility.

Research Excellence:

Dr. Cen’s research focuses on solving high-dimensional partial differential equations (PDEs) using deep learning methods. He has developed innovative approaches that combine cutting-edge deep learning techniques with finite volume methods to tackle these complex problems.

Research Publications

1.  “Adaptive Trajectories Sampling for Solving PDEs with Deep Learning Methods” (Applied Mathematics and Computation).

2.  “Deep Finite Volume Methods for Partial Differential Equations” (SSRN).

Conclusion:

Dr. Jianhuan Cen’s academic achievements, research contributions in deep learning and computational mathematics, and technical prowess make him an outstanding candidate for the Best Researcher Award. His work is not only theoretically rigorous but also practically applicable, showing promise for future advancements in both academic and industrial contexts.