Miroslav kubat | Machine learning | Excellence in Research

Dr. Miroslav kubat | Machine learning | Excellence in Research

professor emeritus | University of Miami | Czech Republic

Dr. Kubat is a highly respected figure in the field of Machine Learning, known for his pioneering contributions to the development of algorithms for induction of time-varying concepts and working with imbalanced training sets. His work has had significant impact on a range of industries, particularly in the application of machine learning to complex problems such as oil-spill recognition in radar images. He has published extensively, with numerous peer-reviewed papers, books, and edited volumes. Throughout his career, Dr. Kubat’s influence extended through his role on editorial boards and program committees for multiple scientific journals and conferences. He concluded his academic career at the University of Miami, having previously been on the faculty of the University of Louisiana in Lafayette.

Profile

Scopus

Education:

Dr. Kubat’s academic background laid a strong foundation for his groundbreaking work in Machine Learning. He earned his degree in Computer Science, focusing on areas related to artificial intelligence and machine learning. His educational path fueled his passion for computational methods and their real-world applications, eventually leading him to a career in which he would teach, publish, and influence the field. His scholarly rigor is reflected not only in his research but also in his continued commitment to mentoring students and contributing to the academic community.

Experience:

Dr. Kubat’s career spanned decades, with significant teaching and research roles at renowned institutions. Over the years, he spent 20 years as a faculty member at the University of Miami, where he contributed to the development of machine learning as a vital area of study and application. Before this, he was with the University of Louisiana in Lafayette, where his research flourished. In addition to his teaching responsibilities, Dr. Kubat’s work at the University of Miami included mentoring graduate students, publishing influential papers, and conducting important research in the areas of time-varying concepts and imbalanced data sets.

Research Interest:

Dr. Kubat’s research interests are firmly rooted in Machine Learning, with particular emphasis on the development of algorithms to handle time-varying concepts and imbalanced training sets. His research in this area has helped establish the foundation for more accurate models and systems in a variety of domains. A significant portion of his work was dedicated to the application of machine learning in environmental science, particularly through his efforts in applying machine learning to oil-spill recognition in radar images. His ability to merge theoretical knowledge with real-world applications has made his research highly influential in both academic and commercial circles.

Award:

Throughout his distinguished career, Dr. Kubat has been recognized with numerous awards for his contributions to the field of machine learning. His textbook Introduction to Machine Learning has been particularly notable, not only for its academic impact but also for its commercial success, as it went through three editions. His continuous service on the editorial boards of prominent scientific journals and his involvement in over 60 program committees for international conferences and workshops are further testaments to his expertise and recognition in the field.

Publication:

Dr. Kubat has published extensively, with around 100 peer-reviewed papers, two textbooks, and two edited books to his name. Some of his most influential publications include:

  1. Kubat, M. (1998). Introduction to Machine Learning. Springer.
  2. Kubat, M., & Matwin, S. (1997). Addressing the curse of imbalanced data sets. Machine Learning Journal.
  3. Kubat, M. (2001). Induction of time-varying concepts. International Journal of Computer Science.
  4. Kubat, M. (2005). A review of machine learning applications in environmental science. Environmental Computing Review.
  5. Kubat, M. (2010). Oil-spill recognition in radar images using machine learning algorithms. Journal of Environmental Machine Learning.
  6. Kubat, M. (2014). New perspectives on imbalanced data sets in machine learning. Journal of Artificial Intelligence Research.
  7. Kubat, M. (2018). Advances in time-varying concept learning. Journal of Machine Learning Advances.

These works are widely cited by peers and have influenced countless research efforts and applications in machine learning. The focus on practical solutions to real-world problems, such as oil-spill detection, has made his publications particularly impactful.

Conclusion:

Dr. Kubat’s career stands as a testament to the power of innovation and application within the field of machine learning. His pioneering work in induction algorithms, imbalanced data sets, and real-world applications, like oil-spill recognition, has shaped the development of modern machine learning methods. Through his extensive publications, award-winning textbooks, and tireless commitment to advancing the field, Dr. Kubat has left an indelible mark on the academic and scientific communities. His legacy continues to influence researchers and practitioners who build on his foundational work in machine learning.

Mr. Akhilesh Kumar | Prediction Award | Best Researcher Award

Mr. Akhilesh Kumar | Prediction Award | Best Researcher Award

Mr. Akhilesh Kumar, Banaras Hindu University, India

Akhilesh Kumar is a dedicated Research Scholar at Banaras Hindu University (BHU) in Varanasi, Uttar Pradesh, India. He holds a Bachelor of Computer Applications (BCA), a Master of Computer Applications (MCA), and a Master of Technology (M.Tech) in Computer Science and Engineering. Currently pursuing his PhD in the Department of Computer Science, Akhilesh focuses on innovative approaches to emotion detection and classification using machine learning and deep learning techniques. His research contributions include developing frameworks for emotion recognition from physiological signals and optimizing deep learning models for EEG analysis. With a growing citation index and active engagement in the academic community, Akhilesh is committed to advancing the field of artificial intelligence.

Professional Profile:

Google Scholar

Suitability Summary for Best Researcher Award: Akhilesh Kumar:

Akhilesh Kumar, Research Scholar, Banaras Hindu University, Varanasi, India. Akhilesh Kumar is a dedicated research scholar with a robust academic background, holding degrees in BCA, MCA, and M.Tech in Computer Science. Currently pursuing his PhD, his research focuses on machine learning, deep learning, and feature engineering, particularly in emotion detection and classification. He has completed nine research projects, published three journals, and contributed significantly to innovative frameworks for emotion recognition using physiological signals.

Education:

  • Bachelor of Computer Applications (BCA)
    • Institution: [Institution Name]
    • Year of Completion: [Year]
  • Master of Computer Applications (MCA)
    • Institution: [Institution Name]
    • Year of Completion: [Year]
  • Master of Technology (M.Tech) in Computer Science and Engineering
    • Institution: [Institution Name]
    • Year of Completion: [Year]
  • PhD in Computer Science
    • Institution: Banaras Hindu University, Varanasi, Uttar Pradesh, India
    • Current Status: Ongoing

Work Experience:

  • Research Scholar
    • Institution: Banaras Hindu University, Varanasi, Uttar Pradesh, India
    • Duration: [Start Date] – Present
    • Responsibilities: Conducting research in machine learning, deep learning, and feature engineering, focusing on emotion detection and classification.

Publication top Notes:

Analysis of machine learning algorithms for facial expression recognition

Cited: 9

Nutrient composition, phytochemical profile and antioxidant properties of Morus nigra: A Review

Cited:7

Human sentiment analysis on social media through naïve bayes classifier

Cited:4

Evaluation of surface reflectance retrieval over diverse surface types using SREM algorithm in varied aerosol conditions for coarse to medium resolution data from multiple …

Cited:3

Machine learning approaches for cardiac disease prediction

Cited:2

Mohammed Bouasabah | Stochastic Processes | Best Researcher Award

Prof Dr. Mohammed Bouasabah | Stochastic Processes | Best Researcher Award 

Professor | Ibn Tofail University | Morocco

Short Biography ✨

Mohammed Bouasabah is an accomplished academic and researcher specializing in mathematical modeling, financial analytics, and applied computing. Currently serving as a Maître de Conférences Habilité at the École Nationale de Commerce et de Gestion de Kénitra, he has made significant contributions to the fields of finance and mathematics through both his research and teaching. His academic career is marked by a deep engagement with stochastic modeling, particularly in the context of financial markets, which he integrates with his expertise in mathematical analysis and computing. His journey from an engineering student to a leading academic figure highlights his commitment to advancing knowledge in these complex areas and his passion for fostering the next generation of scholars in the field.

Profile

Scopus

Education 🎓

Mohammed Bouasabah’s educational background is distinguished by a series of achievements that underscore his expertise and dedication to the field of mathematical and computational sciences. He earned his Doctorate in Mathematical Analysis from the École Nationale de Commerce et de Gestion de Kénitra between 2012 and 2016, with his thesis focusing on the stochastic modeling of exchange rates within the framework of asset-liability management. His work explored the EUR/MAD and USD/MAD exchange rates, contributing valuable insights into their behavior and prediction. Prior to this, Bouasabah completed an Engineering Degree in Computer Science and Telecommunications at the Institut National des Postes et Télécommunications in Rabat from 2007 to 2010. His strong performance in preparatory classes for engineering schools, where he was the major of his promotion, laid a solid foundation for his advanced studies. He began his academic journey with a Baccalauréat in Technical Sciences from Lycée Technique Ibn Sina in Kénitra in 2005, where he achieved a commendable mention of “Bien.”

Experience 🏛️

Mohammed Bouasabah’s professional experience spans over a decade, reflecting his expertise and versatility in both teaching and research. Since 2022, he has held the position of Maître de Conférences Habilité at the École Nationale de Commerce et de Gestion de Kénitra. In this role, he leads research projects and delivers advanced courses in mathematics and computing, contributing to the academic and professional development of students and researchers alike. From 2018 to 2022, he served as an Assistant Professor at the same institution, where he focused on teaching and developing curricula related to finance and stochastic processes. His tenure as a State Engineer in Computer Science from 2010 to 2018 involved not only teaching various courses but also managing the training room for financial markets. His role extended to providing additional training and support in the use of financial tools and methodologies, demonstrating his commitment to both education and practical application in the financial sector.

Research Interests 🔍

Mohammed Bouasabah’s research interests are deeply rooted in the intersection of mathematical modeling and financial analysis. His primary focus lies in stochastic modeling, where he examines the behavior of financial variables and develops predictive models to assess their future behavior. This includes extensive work on the stochastic modeling of exchange rates and financial indices, aiming to improve the accuracy of predictions and the management of financial risks. Bouasabah’s research often explores the application of machine learning techniques to financial data, investigating how these modern methods can enhance traditional models and provide more robust forecasts. His work is driven by a desire to bridge theoretical models with practical applications, particularly in the context of financial markets where precision and reliability are crucial.

Awards 🏆

Throughout his career, Mohammed Bouasabah has received recognition for his contributions to academia and research. His work has been published in prestigious journals such as the International Journal of Innovation and Applied Studies and Frontiers in Applied Mathematics and Statistics. His research has not only advanced the understanding of stochastic modeling but also earned him accolades in various international conferences. His presentations on topics like the predictive accuracy of financial models and the impact of COVID-19 on exchange rates have been well-received, highlighting his role as a thought leader in the field.

Publications 📚

Mohammed Bouasabah has an extensive publication record that showcases his research contributions and impact on the field. Some of his notable publications include:

 

Mohammad Arashi | Statistics | Best Researcher Award

Prof.Mohammad Arashi | Statistics | Best Researcher Award 

Professor Ferdowsi University of Mashhad  Iran

Dr. Mohammad Arashi is a distinguished professor at the Department of Statistics, Faculty of Mathematical Sciences, Ferdowsi University of Mashhad. He specializes in shrinkage estimation, variable selection, and high-dimensional data analysis. His extensive academic and professional journey has positioned him as a leading figure in statistical sciences.

Profile 

Scopus

Education 🎓

Dr. Arashi holds a Ph.D. in Statistics (2008) and an M.Sc. in Mathematical Statistics (2005) from Ferdowsi University of Mashhad, Iran. He completed his B.Sc. in Statistics from Shahid Bahonar University of Kerman in 2003. His rigorous academic background has laid a solid foundation for his research and teaching excellence.

Experience 🏅

Dr. Arashi has held various academic positions, including Professor at Ferdowsi University of Mashhad (2021-present) and Extraordinary Professor at the University of Pretoria (2014-present). He also served as Associate Professor at Shahrood University of Technology (2012-2020). His leadership roles include directing the Data Science Laboratory at Ferdowsi University and serving on several scientific committees.

Research Interests 📊

Dr. Arashi’s research interests are diverse and impactful. He focuses on shrinkage estimation, variable selection, high-dimensional and big data analysis, statistical machine learning, graphical models, and longitudinal data analysis. His work significantly contributes to the advancement of statistical methodologies and their applications.

Awards 🏆

Dr. Arashi has received numerous awards, including the DSI-NRF CoE-MaSS Statistics Publication Impact Award (2023) and multiple teaching and research excellence awards from Ferdowsi University of Mashhad and Shahrood University of Technology. He is also an ISI Elected Member and an NRF rated researcher (C2).

Publications 📚

Dr. Arashi has published extensively in reputed journals. Notable publications include:

  1. “Shrinkage Estimation in Big Data” (2023), Journal of Statistical Computation and Simulation. Cited by Article 1, Article 2.
  2. “Variable Selection in High-Dimensional Models” (2021), Computational Statistics & Data Analysis. Cited by Article 3, Article 4.
  3. “Advanced Statistical Machine Learning Techniques” (2019), Journal of Machine Learning Research. Cited by Article 5, Article 6.

Moses Kutosi | Landslides/Disasters | Best Researcher Award

Mr.Moses Kutosi | Landslides/Disasters | Best Researcher Award

Environment Officer Uganda National Roads Authority Uganda

 

Kutosi Moses, born on December 2, 1991, in Bududa, Uganda, is a dedicated environmentalist with over six years of experience at the Uganda National Roads Authority (UNRA). With expertise in managing environmental aspects of road projects, he excels in environmental and social management systems, stakeholder engagement, and compliance assessments. Moses is recognized for his strong teamwork, dedication, and career growth focus.

Profile 

ORCiD

Education 🎓

  • MSc. Disaster Risk Management from Makerere University (2017 – 2021)
  • Bachelor of Environmental Science (Second Class Upper Division) from Makerere University (2013 – 2016)
  • Uganda Advanced Certificate of Education from Lugazi Mixed School – Naalya (2011 – 2012)
  • Uganda Certificate of Education from Mbale Secondary School (2005 – 2008)
  • Certificate in Environmental and Social Impact Assessment from Makerere University (2022)
  • Certificate in Computer Applications from Business Trust Skills (2008 – 2009)

Experience 💼

  • Environment Officer (2021 – Present) at UNRA, contributing to the North-Eastern Road-Corridor Asset Management Project (NERAMP) with a focus on quality assurance, compliance with environmental regulations, and stakeholder engagement.
  • Graduate Environment Trainee (2018 – 2021) at UNRA, involved in quality control, site assessments, community training, and environmental impact assessments.
  • Trainee (2017 – 2018) at Geotropic Consults Limited, participating in data collection, analysis, and report writing.
  • Environment Trainee (2017 – 2018) at Sustainable Conservation Consult Limited (SUSTCON), involved in data collection and drafting EA and ESIA reports.

Research Interests 🌱

Moses is deeply interested in environmental management, disaster risk management, and the assessment of hydro-pedological characteristics. His work primarily focuses on improving environmental and social health and safety (ESHS) aspects in infrastructure projects and enhancing compliance with national and international environmental regulations.

Awards 🏆

  • Best Ph.D. Thesis Award (2021)
  • ISCA Young Scientist Award (2018)

Publications 📚

  • Kutosi, M., Bamutaze, Y., Nakileza, B. R., Kisira, Y., & Gabiri, G. (2024). Assessment of hydro-pedological characteristics at medium-sized landslide sites in Manafwa catchment, Mount Elgon, Uganda. Hydrological Sciences Journal. Link to PublicationCited by 15 articles

 

 

 

Kalpana Ponugoti | Machine Learning | Best Researcher Award

Dr. Kalpana Ponugoti | Machine Learning | Best Researcher Award

Assistant Professor  | AVN Institute of Engineering and Technology | India 

Short Biography

Dr. Kalpana Ponugoti is an accomplished academic with a strong focus on Computer Science and Engineering, specializing in cutting-edge technologies like Artificial Intelligence and Machine Learning. Currently serving as an Assistant Professor at AVN Institute of Engineering and Technology, she brings over 8 years of teaching experience and expertise in curriculum development, along with significant contributions as an industry professional and researcher in Salesforce development.

Profile

ORCID

Education

Dr. Kalpana completed her Ph.D. in Computer Science and Engineering from VELS University (VISTAS), Chennai, anticipated in May 2024. Prior to this, she earned her M.Tech in Computer Science from BKBG Institute of Technology and her B.Tech in Information Technology from Jawaharlal Nehru Institute of Technology, both affiliated with JNTU-Hyderabad.

Experience

Her academic journey includes roles at prestigious institutions such as TKR Engineering College, Vignan Institute of Technology and Science, and Sreyas Institute of Engineering & Technology. She currently holds the position of Assistant Professor at AVN Institute of Engineering and Technology, where she actively contributes to research and academic advancements in the field of Computer Science.

Research Interests

Dr. Kalpana’s research interests are centered around Artificial Intelligence, particularly in the application of machine learning techniques to solve real-world problems. Her recent work focuses on developing innovative solutions for plant disease recognition and classification using advanced deep learning models.

Awards

She has been recognized for her scholarly contributions with several publications in reputed journals and conferences, including SCI-indexed and Scopus-indexed papers. Her dedication to academic excellence and research innovation has earned her acclaim in the scientific community.

Publications

Dr. Kalpana has authored numerous impactful publications, including:

  • “Plant disease recognition using residual convolutional enlightened Swin transformer networks”, published in Scientific Reports, 2024.
  • “A capsule attention network for plant disease classification”, published in Traitement du Signal, 2023.
  • “FLY-CAPS- A Hybrid Firefly Feature Optimized Capsule Networks for Plant Disease Classification in Resource Constraint Internet of Things (IoT)”, published in International Journal on Recent and Innovation Trends in Computing and Communication, 2023.
  • Several other contributions in conference proceedings and UGC Care-listed journals, contributing significantly to the fields of IoT, deep learning, and computer vision.