Benyou Wang | Language Models | Best Researcher Award

Mr. Benyou Wang | Language Models | Best Researcher Award

School of Data Science at The Chinese University of Hong Kong, Shenzhen, China

Professional Profile

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Summary

Dr. Benyou Wang is an Assistant Professor jointly appointed in the School of Data Science and the School of Medicine at The Chinese University of Hong Kong, Shenzhen. He is also a Vice Director at the Center for Medical Artificial Intelligence and a Principal Investigator (PI) of multiple projects related to large language models (LLMs) and healthcare AI. Dr. Wang is a recipient of the prestigious Marie Skłodowska-Curie Fellowship and has spearheaded the development of "HuatuoGPT," the first large-scale medical LLM successfully deployed across 11 public hospitals in Shenzhen, impacting over half a million residents. His work bridges scientific innovation, real-world implementation, and industrial transformation, earning widespread media and institutional acclaim.

Educational Background

Dr. Wang earned his Ph.D. in Information Science and Technology from the University of Padua, Italy (2018–2022), funded by the EU's Marie Skłodowska-Curie Actions. He holds an M.Sc. in Computer Science from Tianjin University, China (2014–2017), where he specialized in pattern recognition and intelligent systems, and a B.Sc. in Software Engineering from Hubei University of Automotive Technology (2010–2014). He completed his secondary education at the prestigious Huanggang Middle School in Hubei Province.

Professional Experience

Dr. Wang began his career as an associate researcher at Tencent and later joined the University of Padua as a full-time Marie Curie Researcher. He has held visiting research appointments at institutions like the University of Montreal, University of Amsterdam, University of Copenhagen, and the Chinese Academy of Sciences. He interned at Huawei’s Noah’s Ark Lab and has delivered numerous invited talks worldwide. Since 2022, he has been teaching and leading research at CUHK-Shenzhen while supervising multiple Ph.D. and undergraduate students.

Research Interests

Dr. Wang’s research focuses on large language models (LLMs), their applications in vertical domains like healthcare and multilingual systems, quantum-inspired natural language processing, and information retrieval. He is deeply involved in the development of explainable AI, multimodal LLMs, and efficient LLM training. His work often explores the theoretical foundations of LLM alignment and evaluation and has recently expanded into medical reasoning and visual-language integration.

Author Metrics

Dr. Wang has authored over 40 peer-reviewed papers in top-tier venues such as ICLR, NeurIPS, ICML, NAACL, ACL, EMNLP, SIGIR, and AAAI. As of April 2024, his Google Scholar profile reports over 4,965 citations and an H-index of 37. He is the first or corresponding author on several high-impact studies and is actively engaged as a reviewer and Area Chair for major NLP and ML conferences.

Awards and Honors

Dr. Wang has received multiple Best Paper Awards, including at ICLR Financial AI 2025, NLPCC 2022, NAACL 2019, and SIGIR 2017. He was honored with the Huawei Spark Award (presented by Ren Zhengfei), and his HuatuoGPT project has been recognized in national strategic AI deployment plans. He also earned funding from Tencent’s Rhino-Bird Project, Huawei’s AI Top 100 Universities Program, and CCF-DiDi’s Gaia Scholar Initiative. His work has been featured in Nature, CCTV, Financial Times, and Global Times, among others.

Publication Top Notes

1. Learning from Peers in Reasoning Models

Authors: T. Luo, W. Du, J. Bi, S. Chung, Z. Tang, H. Yang, M. Zhang, B. Wang
Venue: arXiv preprint arXiv:2505.07787
Year: 2025
Summary:
This paper proposes a novel peer-learning framework where multiple large language models (LLMs) interact to enhance their reasoning abilities. By sharing intermediate reasoning steps and critiques, the models improve logical consistency and performance across various reasoning tasks.

2. Pushing the Limit of LLM Capacity for Text Classification

Authors: Y. Zhang, M. Wang, Q. Li, P. Tiwari, J. Qin
Venue: Companion Proceedings of the ACM on Web Conference 2025, pp. 1524–1528
Year: 2025
Summary:
The study investigates the potential of large language models for multi-class text classification without traditional fine-tuning. Using prompt engineering and strategic data augmentation, the authors demonstrate competitive or superior performance compared to classical approaches.

3. Beyond Binary: Towards Fine-Grained LLM-Generated Text Detection via Role Recognition and Involvement Measurement

Authors: Z. Cheng, L. Zhou, F. Jiang, B. Wang, H. Li
Venue: Proceedings of the ACM on Web Conference 2025, pp. 2677–2688
Year: 2025
Summary:
This work moves beyond binary classification of AI-generated text and introduces a fine-grained detection system that recognizes multiple roles and the degree of AI involvement. The proposed model offers better insights into collaborative human-AI authored content.

4. UCL-Bench: A Chinese User-Centric Legal Benchmark for Large Language Models

Authors: R. Gan, D. Feng, C. Zhang, Z. Lin, H. Jia, H. Wang, Z. Cai, L. Cui, Q. Xie, ... B. Wang (et al.)
Venue: Findings of the Association for Computational Linguistics: NAACL 2025, pp. 7945–7988
Year: 2025
Summary:
This paper introduces UCL-Bench, a comprehensive legal benchmark in Chinese designed for evaluating LLMs in real-world legal advisory tasks. It emphasizes user intent, fairness, and practical utility, and serves as a tool for the responsible deployment of legal AI systems.

5. Huatuo-26M: A Large-scale Chinese Medical QA Dataset

Authors: X. Wang, J. Li, S. Chen, Y. Zhu, X. Wu, Z. Zhang, X. Xu, J. Chen, J. Fu, X. Wan, ... B. Wang (et al.)
Venue: Findings of the Association for Computational Linguistics: NAACL 2025, pp. 3828–3848
Year: 2025
Summary:
Huatuo-26M is a massive, high-quality Chinese medical question-answering dataset with 26 million entries. It supports the development of specialized medical LLMs like HuatuoGPT, which has been implemented in clinical settings and widely adopted across hospitals in Shenzhen.

Conclusion

Dr. Benyou Wang exemplifies the modern researcher's ideal, seamlessly combining technical depth, interdisciplinary application, global engagement, and measurable societal impact. His pioneering contributions—such as the development and real-world deployment of HuatuoGPT in healthcare, the creation of multilingual LLM benchmarks, and innovative work on fine-grained AI-generated content detection—underscore his leadership in advancing language model research. With a proven trajectory of sustained excellence, high-impact publications, and international recognition, Dr. Wang is not only a strong nominee but also a front-runner for the Best Researcher Award in Language Models. His continued expansion into global collaboration and theoretical grounding promises to shape the future landscape of natural language processing.

Esha Aftab – Neural Models – Best Researcher Award

Esha Aftab – Neural Models – Best Researcher Award

Ms. Esha Aftab  distinguished academic and researcher in the field Neural Models.  She possesses a strong foundation in various undergraduate courses such as Introduction to Computing, Object-Oriented Programming (C++), Data Structures and Algorithms, Database Systems, Digital Logic Design, and Design and Analysis of Algorithms. Her technical proficiencies encompass a wide range of technologies and languages including C#, ASP, .NET Framework, PRISM Framework, MATLAB, MS SQL Server 2005, Oracle, Java, JavaScript, Java ME, and OpenGL.

🌐 Professional Profiles

Educations📚📚📚

She is currently pursuing her PhD at Punjab University College of Information Technology, with a focus on advancing her knowledge and expertise in her field. Prior to this, she completed her M.Sc in Computer Science at Lahore University of Management Sciences (LUMS) in 2012, achieving a commendable CGPA of 3.66 out of 4.0. Her academic journey commenced with a Bachelor’s degree in Computer Science from the National University of Computer & Emerging Sciences (NU-FAST), Lahore, where she graduated in 2009 with an impressive CGPA of 3.74 out of 4.0. Her educational background reflects a consistent dedication to academic excellence and a strong commitment to her field of study.

Work Experience

She has amassed a wealth of experience across academia and industry. Currently serving as an Assistant Professor at Punjab University College of Information Technology (PUCIT) since 2019, her role involves conducting programming and technical courses, with a particular focus on subjects such as Data Structures, Algorithms, and Machine Learning. Prior to this, she held the position of Lecturer at NUCES-FAST from 2012 to 2019, where she contributed significantly to the academic environment. Additionally, she served as Visiting Faculty in 2012, delivering the ‘Applied Programming’ course for MSc students. Her industry experience includes a stint as a Software Engineer at Techlogix Pvt. Limited from 2009 to 2010, where she was involved in designing and developing automated business processes for clients like Ufone, Motorola, and Nestle. Her projects ranged from enterprise application integration for Ufone using IBM WebSphere Integration Developer to implementing automated business processes for Motorola using Savvion BPM Software and devising algorithms for Nestle’s Milk Balancing System. She adeptly utilized various development tools such as Microsoft Visual Studio 2008, Silverlight, Telerik Toolkit, and .Net Framework to deliver innovative solutions across her diverse roles.

Technical Proficiencies
 She is adept at working in different development environments such as Linux (Ubuntu), MS Visual Studio (2008/2010), Netbeans IDE, Eclipse, Savvion BPM Software, and IBM Websphere Toolkit. Noteworthy among her major projects is her contribution to a Computer Vision Research Project focused on developing a Shape and color-based Jigsaw Puzzle Solver, achieving successful results in shape-based jigsaw piece identification and implementing piece placement algorithms using image stitching techniques. Additionally, she has contributed to a research-based project on Image Annotation, employing statistical methods to label images according to their content. Her diverse skill set and hands-on experience in both academic and research settings underscore her proficiency and versatility in the field of computer science

Academic Achievements

 Silver Medalist: 2nd position in BCS (FAST)
 Dean’s List Honor Certificate (FAST)

 

Peican Zhu -Natural language processing (NLP) – Best Researcher Award

Peican Zhu -Natural language processing (NLP)

Dr.Peican zhu   distinguished academic and researcher in the field of Natural lanuage processing. Since May 2022, he has been serving as an Associate Professor at the School of Artificial Intelligence, Optics, and Electronics (iOPEN) within Northwestern Polytechnical University. Prior to this, from March 2016 to April 2022, he held the position of Associate Professor at the School of Computer Science, specifically contributing to the Center for Multidisciplinary Convergence Computing at the same university. Throughout his tenure, he has been actively engaged in academia, making significant contributions to the field of computer science and multidisciplinary convergence computing.

Education

He pursued his academic journey with a Ph.D. from the University of Alberta, Canada, spanning from September 2011 to August 2015 under the guidance of Dr. J. Han. Following this, he continued to expand his knowledge and expertise by obtaining a Master’s degree at Northwestern Polytechnical University, China, from September 2008 to April 2011, with Dr. X. Gao as his supervisor. His educational foundation was laid during his undergraduate studies at Northwestern Polytechnical University, China, where he earned his Bachelor’s degree from September 2007 to June 2008. Throughout his educational pursuits, he has demonstrated a commitment to academic excellence and a passion for advancing his understanding in the fields of computer science and related disciplines.

Professional Profiles:

Research Interest

Social computation and network science; Complex networks; Epidemic spreading and behavior vaccination; Reliability evaluation and criticality analysis Monte Carlo simulations and stochastic analysis; Evolutionary game theory; Data Science

Honors & Awards

He has garnered several prestigious honors and awards throughout his career, underscoring his dedication and contributions to various domains. In 2014, he received a Travel Award from the Canadian Institutes of Health Research (CIHR) to attend the Canadian Bioinformatics Workshops, followed by another CIHR Travel Award in 2013 for the 11th Asia Pacific Bioinformatics Conference (APBC). Notably, from May 2014 to May 2015, he was honored with the Alberta Innovates Graduate Student Scholarship, including the AITF (Alberta Innovates Technology Futures) Top-Up Award, recognizing his outstanding achievements during his graduate studies in Alberta, Canada.

Furthermore, his excellence in the field has been acknowledged with the Qian Weichang Prize in Chinese Information Processing Science and Technology, a prestigious award he received in November 2018. Adding to his list of accolades, in March 2021, he was bestowed with the Natural Science Award of Shaanxi Province, earning the coveted First Prize No. 3. These honors underscore his significant contributions and achievements in the realms of bioinformatics, technology, and information processing.

Academic Activities

He actively engages in various academic activities, particularly as a referee for numerous peer-reviewed journals, showcasing his commitment to contributing to the scholarly community. Notably, he has served as a referee for esteemed journals such as Reliability Engineering and System Safety, Microelectronic Reliability, Chaos Solitons & Fractals, Chaos, Annals of Operations Research, Scientific Reports, BMC System Biology, Biosystems, IEEE Biomedical Circuits and Systems, IEEE Transactions on Circuits and Systems II: Express Briefs, BioMed Research International, IEEE Access, IEEE/ACM Transactions on Computational Biology and Bioinformatics, IEEE Transactions on Reliability, IEEE Transactions on Industrial Electronics, Mathematical Problems in Engineering, DATE, DFT, ECCV, KSEM, and more.

In addition to his role as a reviewer, he is an active member of prominent professional organizations, including the Institute of Electrical and Electronics Engineers (IEEE) and the Reliability Branch of the China Operational Research Society. His affiliations extend to memberships in the China Computer Federation (CCF), Chinese Society of Optimization, Overall Planning and Economic Mathematics, Chinese Association for Artificial Intelligence, Association for the Advancement of Artificial Intelligence, and the Chinese Association of Automation.

Moreover, he contributes to the academic community as an associate editor for journals such as Humanities & Social Sciences Communications and Heliyon. His editorial responsibilities also include serving as a guest editor for Frontiers in Physics, Complexity (Hindawi), Mathematics (mdpi), and Applied Sciences (mdpi). These diverse roles highlight his extensive involvement and leadership within the academic and research realms.

Grants

He has been actively involved in securing research grants, showcasing his leadership and expertise in various domains. As the principal investigator, he leads the Key Research and Development Program of Shaanxi Province (Grant No. 2022KW-26) from January 2022 to December 2023, focusing on the research of intelligent decision theory and its applications. Furthermore, he spearheads the National Key Research and Development Project of China (Grant No. 2020AAA0107704) from November 2021 to October 2023, dedicated to enhancing the robustness and automatic attack and defense mechanisms of AI systems.

In the realm of network populations, he serves as the principal investigator for the National Science Foundation of China (Grant No. 62073263) from January 2021 to December 2024, exploring the mechanisms of information dissemination. His earlier contributions include leading projects such as the Stochastic Analysis of Two-layered Multiplex Networks funded by the National Science Foundation for Young Scientists of China (Grant No. 61601371) from January 2017 to December 2019.

His research extends to the aerospace domain, as seen in projects like the Reliability Evaluation of Wireless Sensor Networks in Aerospace Crafts through Stochastic Analysis (Aerospace Science and Technology Fund, January 2017 – December 2017). Additionally, he delves into reliability evaluation and optimization of complex systems through the Natural Science Basic Research Plan in Shaanxi Province of China (Grant No. 2018JQ6075) from January 2018 to December 2019.

Participating as the principal investigator and project participant in various national and provincial research initiatives, he addresses diverse topics, including epidemic spreading in dynamical complex networks, game decision under incomplete information, multi-source spatio-temporal large data perception, fusion, and analysis in public security, multi-source heterogeneous large data fusion and analysis based on network public security, and key technologies of new infrastructure’s automatic network attack-defense countermeasure. These grant projects underscore his multifaceted contributions to advancing knowledge and innovation in his field.

Publication

  1. A stochastic computational approach for accurate and efficient reliability evaluation
    J Han, H Chen, J Liang, P Zhu, Z Yang, F Lombardi
    IEEE Transactions on Computers 63 (6), 1336-1350
  2. Investigation of epidemic spreading process on multiplex networks by incorporating fatal properties
    P Zhu, X Wang, S Li, Y Guo, Z Wang
    Applied Mathematics and Computation 359, 512-524- 2019
  3. Investigating the co-evolution of node reputation and edge-strategy in prisoner’s dilemma game
    P Zhu, X Wang, D Jia, Y Guo, S Li, C Chu
    Applied Mathematics and Computation 386, 125474 – 2020
  4. A stochastic approach for the analysis of dynamic fault trees with spare gates under probabilistic common cause failures
    P Zhu, J Han, L Liu, F Lombardi
    IEEE Transactions on Reliability 64 (3), 878-892 – 2015
  5. Properties and structural analyses of USA’s regional electricity market: a visibility graph network approach
    J Hu, C Xia, H Li, P Zhu, W Xiong
    Applied Mathematics and Computation 385, 125434 – 2020
  6. Lévy noise promotes cooperation in the prisoner’s dilemma game with reinforcement learning
    L Wang, D Jia, L Zhang, P Zhu, M Perc, L Shi, Z Wang
    Nonlinear Dynamics 108 (2), 1837-1845 – 2022
  7. Difference and cluster analysis on the carbon dioxide emissions in China during COVID-19 lockdown via a complex network model
    J Hu, J Chen, P Zhu, S Hao, M Wang, H Li, N Liu
    Frontiers in psychology 12, 795142 – 2022
  8. Investigating the effects of updating rules on cooperation by incorporating interactive diversity
    P Zhu, X Hou, Y Guo, J Xu, J Liu
    The European Physical Journal B 94, 1-8 – 2021
  9. Suppression of epidemic spreading process on multiplex networks via active immunization
    Z Li, P Zhu, D Zhao, Z Deng, Z Wang
    Chaos: An Interdisciplinary Journal of Nonlinear Science 29 (7) – 2019
  10. Community detection in temporal networks via a spreading process
    P Zhu, X Dai, X Li, C Gao, M Jusup, Z Wang
    Europhysics Letters 126 (4), 48001 – 2019