Ivelina Georgieva | Theoretical Chemistry | Research Excellence Award

Prof. Ivelina Georgieva | Theoretical Chemistry | Research Excellence Award

Institute of General and Inorganic Chemistry, Bulgarian Academy of Sciences, Bulgaria

Prof. Ivelina Georgieva earned her MSc in Inorganic and Analytical Chemistry in 1989 and an MSc in Methods of Chemistry Teaching in 1994 from Sofia University, Bulgaria, followed by a Ph.D. in Inorganic Chemistry in 2001 from the Institute of General and Inorganic Chemistry, Bulgarian Academy of Sciences, with a thesis on Pt(II) and Pd(II) complexes with antitumor properties. She served as Associate Professor in Theoretical Chemistry at IGIC–BAS from 2009 to 2021 and has been Professor since 2021. Since 2016, she has been Head of the Laboratory of Theoretical and Computational Chemistry, and she previously served as Chair of the IGIC Colloquium (2012–2016) and Scientific Secretary (2017–2024). Her main research areas include theoretical and computational chemistry, molecular design, photochemistry, molecular and periodic structures, and functional materials. She has completed international specializations and collaborations in Spain, Austria, the Czech Republic, and China, working with leading scientists such as Prof. H. Lischka, Prof. A. Aquino, Prof. D. Tunega, and Prof. M. Sodupe. Her academic career reflects strong contributions to advanced computational studies and international scientific cooperation.

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Jan Bocianowski | Biometry | Research Excellence Award

Prof. Dr. Jan Bocianowski | Biometry | Research Excellence Award

Poznan University of Life Sciences, Poland

Prof. Dr. Jan Bocianowski is a distinguished scholar in agricultural sciences with a strong foundation in mathematics and computer science, having earned his Master of Science from Adam Mickiewicz University in Poznań with a thesis on combinatorial BIB systems, and a vocational background as a Mechanical Technician specializing in automation and mechanization of metallurgical processes. He obtained his Doctor of Agricultural Sciences in Agronomy from the Institute of Plant Genetics, Polish Academy of Sciences, and later achieved habilitation in agricultural sciences with specialization in biometry at Poznań University of Life Sciences, focusing on methods for estimating effects of non-allelic loci interaction based on phenotypic and molecular data. In 2025, he was appointed Professor of Agricultural Sciences in the discipline of Agriculture and Horticulture and has been serving at the Department of Mathematical and Statistical Methods, Poznań University of Life Sciences, in various roles since 1998, progressing from assistant to full professor. He has authored or co-authored 571 scientific publications, including 357 on the Philadelphia List, contributed to 240 national and international conference reports, participated in over 100 seminars and conferences, and serves as editor in 22 scientific journals, being recognized six times since 2020 among the top 2% most cited scientists worldwide. His teaching experience spans from specialized courses in experimental design and plant genetics to tutorials in mathematics, IT, and applied computer science for students across diverse fields such as Food Technology, Biotechnology, Agriculture, and Environmental Protection. Prof. Bocianowski has undertaken numerous scholarships and research internships internationally, including in Italy, Norway, and Croatia, and has received multiple awards for scientific achievements from the Rector of Poznań University of Life Sciences. He has been actively involved in organizing scientific seminars and conferences, serving on scientific and faculty councils, recruitment and electoral committees, and national research program teams. His international engagement includes membership in advisory committees such as the IEECP Conference in Silicon Valley and active participation in the Scientific Committee of symposiums on quantitative genetics and crop breeding. He also holds leadership roles in strategic and disciplinary scientific councils, contributing to the advancement of agriculture and horticulture research and education, reflecting a career that integrates high-level scientific research, teaching, organizational service, and international collaboration.

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Nirmal Varghese Babu | Artificial Intelligence | Best Researcher Award 

Dr. Nirmal Varghese Babu | Artificial Intelligence | Best Researcher Award 

Dr. Nirmal Varghese Babu | Karunya Institute of Technology and Sciences | India

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Early Academic Pursuits

Dr. Nirmal Varghese Babu began his academic journey with a strong inclination toward computer science and technology. He completed his B.Tech in Information Technology from Karunya Institute of Technology and Sciences, Coimbatore, in 2017 with a CGPA of 8.0. His passion for research and innovation in computing led him to pursue an M.Tech in Computer Science & Engineering from Amal Jyothi College of Engineering, Kanjirappally (2017–2019), graduating with an impressive CGPA of 8.72. Currently, he is pursuing a Ph.D. in Computer Science & Engineering from Karunya Institute of Technology and Sciences, expected to be completed in 2025. His academic excellence was rooted in his formative years at Mathews Mar Athanasius Residential School, Chengannur, where he built a strong foundation in analytical and computational thinking.

Professional Endeavors

Dr. Nirmal Varghese Babu is currently serving as an Assistant Professor at the School of Computer Science and Technology, Karunya Institute of Technology and Science, Coimbatore (since July 26, 2022). His professional endeavors include teaching, research, and mentoring in various areas of computer science and Artificial Intelligence. He has delivered lectures on Artificial Intelligence: Principles and Techniques, Cloud Computing for Data Analytics, AI for Games, AI for Food Processing Engineering, AI for Biotechnology, and MLOps. Alongside teaching, he mentors undergraduate students, coordinates final-year projects, and supervises academic research initiatives. His teaching methodology emphasizes experiential learning, guiding students to bridge theoretical knowledge with real-world technological applications.

Contributions and Research Focus

Dr. Nirmal’s research contributions revolve around Artificial Intelligence, machine learning, data analytics, and real-time systems. His M.Tech project, Multiclass Sentiment Analysis of Social Media Data using Neural Networks, explored advanced deep learning algorithms like CNN and RNN for classifying sentiment across social media platforms, specifically Twitter. This study integrated text and emoticon data for multiclass classification using one-hot encoding and neural networks. His earlier project, Real-Time Traffic Incident Detection using Social Media Data, demonstrated innovative use of Natural Language Processing to detect and analyze traffic incidents using Twitter data, integrating AI for real-time decision-making. His work exemplifies how Artificial Intelligence can transform data into actionable insights for societal and industrial benefit.

Impact and Influence

Dr. Nirmal Varghese Babu’s impact as an educator and researcher extends across academia and applied technology. At Karunya Institute, he plays a vital role in shaping the next generation of AI-driven engineers and data scientists. As a mentor and coordinator, he has successfully guided numerous B.Tech projects, fostering innovation in the domains of Artificial Intelligence, MLOps, and machine learning. His pedagogical style emphasizes research-based learning, promoting creative problem-solving and real-world application of AI. Through his leadership in academic project coordination and curriculum development, he has significantly influenced the integration of AI-based methodologies into modern engineering education.

Academic Cites

Dr. Nirmal’s academic contributions are recognized through his published works, research projects, and student-guided studies. His projects on sentiment analysis and traffic incident detection have been well-cited and appreciated within the AI and data analytics community. The relevance of his research is reflected in growing academic references to his work in areas such as neural networks, data mining, and sentiment classification. His scholarly achievements continue to inspire students and researchers pursuing advanced studies in Artificial Intelligence and computational learning.

Legacy and Future Contributions

Looking ahead, Dr. Nirmal Varghese Babu aims to expand his research in Artificial Intelligence, focusing on its integration with real-time analytics, smart systems, and cognitive computing. His future contributions are expected to advance the use of AI in multidisciplinary fields such as biotechnology, healthcare, and environmental systems. As an educator, his legacy lies in his ability to inspire and mentor young researchers, promoting a culture of innovation and ethical AI development. His ongoing research and academic leadership will undoubtedly continue to shape the evolution of AI-driven solutions and their transformative potential across industries.

Artificial Intelligence

Dr. Nirmal Varghese Babu’s expertise in Artificial Intelligence is evident through his teaching, research, and innovation in deep learning, neural networks, and data analytics. His projects and mentorship highlight the transformative role of Artificial Intelligence in addressing real-world challenges. The continued advancement of Artificial Intelligence under his guidance promises to create meaningful impact in both academic and applied technological domains.

Featured Publications

Babu, N. V., & Kanaga, E. G. M. (2022). Sentiment analysis in social media data for depression detection using artificial intelligence: A review. SN Computer Science, 3(1), 1–15. https://doi.org/10.1007/s42979-021-00921-2

Babu, D. E. G. M. K. N. V. (2022). Sentiment analysis in social media data for depression detection using artificial intelligence: A review. SN Computer Science, 3, 350.

Babu, N. V., & Rawther, F. A. (2021). Multiclass sentiment analysis in text and emoticons of Twitter data: A review. Proceedings of the Second International Conference on Networks and Advances in Computational Technologies (NetACT).

Prince, S. C., & Babu, N. V. (2024). Advancing multiclass emotion recognition with CNN-RNN architecture and illuminating module for real-time precision using facial expressions. Proceedings of the 2024 International Conference on Advances in Modern Age Technologies for Sustainable Development (AMATS).

Babu, N. V., Kanaga, E. G. M., Kattappuram, J. T., & Benny, R. V. (2023). AI-based EEG analysis for depression detection: A critical evaluation of current approaches and future directions. Proceedings of the 2023 International Conference on Computational Intelligence and Sustainable Technologies (CIST).

Babu, D. E. G. M. K. N. V. (2022). Depression analysis using electroencephalography signals and machine learning algorithms. Proceedings of the Third International Conference on Intelligent Computing Instrumentation and Control Technologies (ICICICT).

Adityasai, B., & Babu, N. V. (2024). Advancing Alzheimer’s diagnosis through transfer learning with deep MRI analysis. Proceedings of the 2024 International Conference on Advances in Modern Age Technologies for Sustainable Development (AMATS).

Babu, N. V., & Kanaga, E. G. M. (2023). Multiclass text emotion recognition in social media data. In Machine Intelligence Techniques for Data Analysis and Signal Processing (pp. 123–135). Springer.

Rawther, F. A., & Babu, N. V. (2019). User behavior analysis on social media data using sentiment analysis or opinion mining. International Research Journal of Engineering and Technology (IRJET), 6(6), 3081–3085.