Fan Yang | Machine learning | Best Researcher Award

Dr. Fan Yang | Machine learning | Best Researcher Award

Dr. Fan Yang | Qinghai Normal University | China

Dr. Fan Yang, Ph.D., is an Associate Professor in the School of Computer Science at Qinghai Normal University, recognized for his expanding contributions to human–machine systems and artificial intelligence. He has developed a strong academic profile with multiple peer-reviewed publications in high-impact journals and internationally respected conferences, reflecting his growing influence in intelligent interaction and adaptive computational technologies. His background includes advanced training in computer science with a research emphasis on intelligent human–machine collaboration and adaptive AI modeling. In his current role, he teaches core subjects in artificial intelligence and interactive systems while supervising graduate research and contributing to national and provincial research initiatives. His research interests span intelligent interaction, AI-driven decision technologies, adaptive computational models, and integrated human–machine environments, with a focus on connecting machine intelligence to real-world human behavior. His early achievements, impactful research output, and contributions to cutting-edge AI technologies have earned him recognition within the research community and position him as a competitive candidate for prestigious research awards.

Profile: ORCID

Featured Publications

Yang, F. “Adaptive human–machine interaction using deep attention models.” IEEE Transactions on Human–Machine Systems. — Cited by 12.

Yang, F. “Multi-agent reinforcement learning for human-centered AI.” ACM CHI Conference. — Cited by 8.

Yang, F. “Cognitive-driven robot collaboration under dynamic environments.” Robotics and Autonomous Systems. — Cited by 15.

Yang, F. “Real-time interaction modeling using hybrid deep networks.” Neurocomputing. — Cited by 20.

Yang, F. “Intelligent behavior prediction in human–machine teams.” IEEE ICMLA Conference. — Cited by 5.

Qiang Lin | Machine Learning | Best Researcher Award

Dr. Qiang Lin | Machine Learning | Best Researcher Award 

Lecturer at Jiangnan University | China

Dr. Qiang Lin is a dedicated researcher in machine learning, signal processing, and intelligent fault diagnosis, with a strong emphasis on multi-view learning, feature selection, and data-driven methods for industrial and computational applications. He has authored 16 research documents that have collectively received 202 citations across 147 citing documents, with an h-index of 9, underscoring the quality and impact of his scholarly contributions. His publications in high-impact journals such as Information Sciences, Knowledge-Based Systems, Vibration Engineering, and Applied Intelligence reflect wide recognition of his work by the scientific community. With a consistent focus on developing robust supervised and semi-supervised learning algorithms tailored to real-world challenges in fault detection, classification, and predictive modeling, Dr. Lin’s research encompasses multi-view feature selection, sparse learning, distributed learning frameworks, and intelligent diagnostic systems, bridging theoretical advancements with practical engineering applications. His achievements, recognized through academic honors and acknowledgments, highlight the originality and influence of his interdisciplinary contributions, marking him as an influential researcher with strong potential for continued innovation and leadership in advancing computational intelligence and machine learning methodologies for complex industrial and scientific problems.

Profile: Scopus | Orcid

Featured Publications

Author(s). (2025). A novel green bond index prediction method based on professional network language sentiment dictionary. Sustainable Futures. Advance online publication.

 

 

 

 

 

 

Ms. Uzma Nawaz| Decision making systems | Best Researcher Award

Ms. Uzma Nawaz| Decision making systems | Best Researcher Award

Research Student,National University of Sciences and Technology, Pakistan

🔬 Short Biography 🌿💊📚

Uzma Nawaz is a highly promising early-career researcher in the field of artificial intelligence and computer engineering. Her research is notable for its depth, diversity, and real-world relevance, especially in healthcare and decision support systems. With strong technical skills, a robust publication track record, and ongoing work in advanced AI topics like transformers, rough set theory, and quantum machine learning, she has laid a solid foundation for future contributions.

Profile

GOOGLE SCHOLAR PROFILE

🎓 Education

  • Title: A Novel Framework for Efficient Dominance-Based Rough Set Approximations Using K-Dimensional (KD) Tree Partitioning and Adaptive Recalculations Techniques
    Authors: U. Nawaz, Z. Saeed, K. Atif
    Year: 2025

  • Title: A Survey of Deep Learning Approaches for the Monitoring and Classification of Seagrass
    Authors: U. Nawaz, M. Anees-ur-Rahaman, Z. Saeed
    Year: 2025

  • Title: A Review of Neuro-Symbolic AI Integrating Reasoning and Learning for Advanced Cognitive Systems
    Authors: U. Nawaz, M. Anees-ur-Rahaman, Z. Saeed
    Year: 2025

  • Title: A Novel Transformer-Based Approach for Adult’s Facial Emotion Recognition
    Authors: U. Nawaz, Z. Saeed, K. Atif
    Year: 2025

  • Title: A Novel Approach to Calculate Dominance-Based Rough Sets Approximations for Dynamic Datasets
    Author: U. Nawaz
    Year: 2024

🏁conclusion:

Uzma Nawaz is a strong and deserving candidate for the Best Researcher Award, especially in the early-career or emerging researcher category. Her current achievements, combined with ongoing high-potential projects and a commitment to both applied and theoretical research, clearly demonstrate excellence, innovation, and impact. With further development in global collaboration, commercialization, and grant acquisition, she could evolve into a leading figure in her field.

Nisar Hussain | Artificial Intelligence and Machine Learning | Best Researcher Award

Mr.Nisar Hussain |Artificial Intelligence and Machine Learning|Best Researcher Award

Mr.  Nisar Hussain Instituto Politechnico Nacional, Mexico City, Mexico

Nisar Hussain is a researcher affiliated with the Instituto Politécnico Nacional (IPN) in Mexico City, Mexico. He is currently enrolled in the Doctorate in Computer Science program at IPN’s Centro de Investigación en Computación (CIC), focusing his research on offensive language detection and sentiment analysis in code-mixed text on social media.Throughout his academic career, Hussain has contributed to various studies in the field of Natural Language Processing (NLP). Notably, he co-authored the paper titled “ORUD-Detect: A Comprehensive Approach to Offensive Language Detection in Roman Urdu Using Hybrid Machine Learning–Deep Learning Models with Embedding Techniques,” published in the journal Information in February 2025.In addition to his work on offensive language detection, Hussain has explored other areas of NLP. He co-authored a study on guilt detection in text, which was published in Scientific Reports in July 2023.

Publication Profile

Google scholar

orcid

Education :

Ph.D. in Computer Science (2022-2025, Ongoing)
Instituto Politécnico Nacional, MéxicoMaster’s in Computer Science (2014-2017)
University of Agriculture, Faisalabad, PakistanBachelor of Science in Computer Science (BSCS) (2010-2014)
COMSATS University Islamabad, Sahiwal Campus

Experience :

With 4+ years of experience in developing and deploying ML and NLP systems, I have actively contributed to multiple projects, applying NLP techniques for real-world problem-solving. I have worked with large, complex datasets, implementing hybrid ML-DL approaches for automated text processing, sentiment analysis, and multilingual content understanding. My research collaborations span multiple institutions, focusing on AI-driven solutions for text analysis and detection tasks.

Research Focus :

I specialize in Natural Language Processing (NLP) and Machine Learning, with a particular emphasis on Offensive Language Detection and Sentiment Analysis of Code-Mixed Data. My research explores multilingual and low-resource language models, leveraging and fine-tuning mBERT, XLM-R, IndicBERT, and Google’s BERT-based models. I am particularly interested in hate speech detection, sentiment analysis, language identification, and emotion analysis in complex linguistic environments. My work integrates deep learning techniques, transformers, and hybrid ML-DL models to improve text processing and understanding in diverse multilingual contexts.

Awards:

Published multiple high-impact research papers in leading AI and NLP conferences/journalsActive participant in international AI competitions and workshopsRecognized for contributions to multilingual and low-resource NLP advancements

Publication :

  • Shaheen, M., Awan, S. M., Hussain, N., & Gondal, Z. A. (2019). Sentiment analysis on mobile phone reviews using supervised learning techniques. IJMECS, 11(7), 32.

 

  • Mehak, G., Qasim, A., Meque, A. G. M., Hussain, N., Sidorov, G., & Gelbukh, A. (2025, January). TechExperts (IPN) at GenAI Detection Task 1: Detecting AI-Generated Text in English and Multilingual Contexts. In Proceedings of the 1st Workshop on GenAI Content Detection (GenAIDetect) (pp. 161-165).

 

  • Hussain, N., Qasim, A., Mehak, G., Kolesnikova, O., Gelbukh, A., & Sidorov, G. (2025). Hybrid Machine Learning and Deep Learning Approaches for Insult Detection in Roman Urdu Text. AI, 6(2), 33. https://doi.org/10.3390/ai6020033

 

  • Qasim, A., Mehak, G., Hussain, N., Gelbukh, A., & Sidorov, G. (2025). Detection of Depression Severity in Social Media Text Using Transformer-Based Models. Information, 16(2), 114. https://doi.org/10.3390/info16020114

 

  • Manzoor, M. I., Shaheen, M., Khalid, H., Anum, A., Hussain, N., & Faheem, M. R. (2018). Requirement Elicitation Methods for Cloud Providers in IT Industry. IJMECS, 10(10).

 

  • Hussain, N., & Anees, T. (2018). Development of a novel approach to search resources in IoT. International Journal of Advanced Computer Science and Applications, 9(9).

 

  • Faheem, M. R., Iftikhar, A., & Hussain, N. (2022). Automated Diagnosing of Eye Disease in Real Time. Journal of Computing & Biomedical Informatics, 3(1), 282-288.

 

  • Shaheen, M., Anees, T., Hussain, N., & Obaid, I. (2019, April). A Research on SOA in the IT Industry of Pakistan. In Proceedings of the 2019 ICCTA (pp. 149-154).

 

  • Meque, A. G. M., Hussain, N., Sidorov, G., & Gelbukh, A. (2023). Guilt Detection in Text: A Step Towards Understanding Complex Emotions. arXiv preprint arXiv:2303.03510.

 

  • Tash, M. S., Ahani, Z., Tonja, A., Gemeda, M., Hussain, N., & Kolesnikova, O. (2022, December). Word Level Language Identification in Code-mixed Kannada-English Texts using Traditional Machine Learning Algorithms. In Proceedings of the (ICON) (pp. 25-28).

 

 

 Conclusion

Given their strong publication record, hands-on experience with AI models, and focus on low-resource NLP, the candidate is highly competitive for the Best Researcher Award. Strengthening industry collaborations, increasing research impact, and securing grants will further enhance their research profile.

 

 

 

NIKHAT PARVEEN | Machine Learning | Best Researcher Award

 Dr. NIKHAT PARVEEN | Machine Learning | Best Researcher Award

 Dr, NIKHAT PARVEEN,KL University, India

Dr. Nikhat Parveen is a distinguished academic and researcher affiliated with KL University, India. She has an extensive background in her field, contributing significantly to both the academic and research communities. Dr. Parveen’s expertise spans various domains, and she is known for her dedication to advancing knowledge and fostering innovation.

 

Professional Profiles:

Google scholar

Education :

  • PhD in Computer Science, Integral University, Lucknow, 2017
  • Master of Computer Applications (M.C.A.), Andhra University, Visakhapatnam, 2003, 69.4%
  • Bachelor of Science in Computer Science (B.Sc.), Andhra University, Visakhapatnam, 2000, 62%
  • XII (Science), C.B.S.E, Visakhapatnam, 1997, 60.4%
  • X (Science), C.B.S.E, Visakhapatnam, 1995, 59.8%

Teaching Experience:

  • Associate Professor, KLEF, Vijayawada, Present
  • Resource Person, Department of Information Technology, Babasaheb Bhimrao Ambedkar University, Lucknow, Aug 2018 – Nov 2018
  • Assistant Professor, School of Management Sciences, Sultanpur Road, Lucknow, Nov 2017 – Nov 2018
  • Lecturer, Sahara Arts & Management Academy, Lucknow, Aug 2006 – Jun 2011
  • Lecturer, Gyan Institute of Management and Technology, Lucknow, Sep 2004 – Aug 2006

Research Experience:

  • Research Scholar, Integral University, Lucknow, Sep 2011 – Feb 2017,Focus: Security Software, Addressing Security at Requirement Phase through Secure Requirement Specification Framework

Achievements and Recognition:

  • Certificate of Recognition, Business School of Delhi, 2010
  • Best Woman Faculty Award, Novel Research Academy, Puducherry, 2021
  • Best Woman Faculty Award, KLEF, 2021
  • Lifetime Member, Computer Society of India, Membership ID: 2010000595
  • Lifetime Member, ACM, Membership ID: 5619476
  • Associate Member, Universal Association of Computer and Electronics Engineers, Membership ID: AM101000583731

Publications :

  1. “QoS-Aware Cloud Service Recommendation Using Metaheuristic Approach,” MDPI, Electronics, 2022
  2. “CROSS-VERSION SOFTWARE FAULT DETECTION MODEL WITH AUTOMATIC DATA SELECTION,” Journal of Theoretical and Applied Information Technology, 2022
  3. “Online employment portal architecture based on expert system,” Indonesian Journal of Electrical Engineering and Computer Science, 2022
  4. “Equivalent mutant identification using hybrid wavelet convolutional rain optimization,” Software – Practice and Experience, 2022
  5. “Testing coverage criteria for optimized deep belief network with search and rescue,” Journal of Big Data, 2021
  6. “Quantify and alleviate OAuth approach token system exploiting by conspiracy lattice,” International Journal of System of Systems Engineering, 2021
  7. “A Fuzzy Approach for Handling Relationship Between Security and Usability Requirements,” Advances in Intelligent Systems and Computing, 2021

International Conferences:

  • Numerous papers presented on security requirement frameworks and secure software engineering.