Prof. Dr. Saleh Albahli | Artificial Intelligence | Best Researcher Award

Prof. Dr. Saleh Albahli | Artificial Intelligence | Best Researcher Award

Qassim University, Saudi Arabia.

Dr. Saleh Albahli is a highly accomplished academic and researcher specializing in Digital Transformation, Data Science, and Artificial Intelligence. Currently an Associate Professor and Vice-Dean of Information Technology Deanship at Qassim University, he is known for spearheading transformative digital initiatives, leading enterprise architecture projects, and contributing to cutting-edge research in machine learning and deep learning. His work is globally recognized, ranking him among the top 2% of scientists in AI research worldwide.

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🎓 Education

Dr. Saleh Albahli holds a Ph.D. in Computer Science with distinction from Kent State University, USA (2016), showcasing his expertise in advanced computational methodologies and research excellence. He earned a Master’s degree in Information Technology with distinction from The University of Newcastle, Australia (2010), highlighting his dedication to mastering cutting-edge IT solutions. His academic journey began with a Bachelor’s degree in Computer Science from King Saud University, Saudi Arabia (2004), laying a strong foundation for his accomplished career in technology and innovation.

💼 Experience

Dr. Saleh Albahli has built an illustrious career, currently serving as an Associate Professor in the Department of IT at Qassim University since 2020, where he contributes to advancing education and research. Concurrently, he holds dual leadership roles as Vice-Dean of IT Deanship and Director of Enterprise Architecture & Digital Transformation at Qassim University, spearheading transformative initiatives to enhance technological frameworks and drive digital innovation.

Previously, Dr. Albahli gained international experience as a Senior System Analyst at Cleveland Clinic, USA (2015–2016), where he developed cutting-edge systems to optimize healthcare operations. He also served as a Lecturer at Kent State University, USA (2015–2016), imparting knowledge and fostering academic growth. Earlier in his career, he worked as an Oracle Developer and Apps DBA at Riyadh Bank and Integrated Telecom Company in Saudi Arabia (2005–2007), honing his technical expertise in database systems and enterprise applications.

🔬 Research Interests

Digital Transformation and its integration with enterprise architecture

Machine Learning and Deep Learning Pipelines

Big Data Analytics, Data Governance, and Predictive Analytics

Artificial Intelligence Applications in healthcare and business

Process Optimization in technology-driven environments

🏆 Awards & Recognitions

Ranked among the top 2% of scientists globally in AI research (2022)

First Place in Digital Transformation (Qiyas) – Qassim University (2022, 2023)

ISO certifications in 22301, 20000, and 27001 for excellence in IT management

📚 Selected Publications 

Efficient Hyperparameter Tuning for Predicting Student Performance with Bayesian Optimization
Albahli, S.
Multimedia Tools and Applications, 2024, 83(17), pp. 52711–52735.
This study introduces a Bayesian optimization approach to enhance hyperparameter tuning for predictive models in educational datasets, achieving improved accuracy and efficiency. (Citations: 4)

MedNet: Medical Deepfakes Detection Using an Improved Deep Learning Approach
Albahli, S., Nawaz, M.
Multimedia Tools and Applications, 2024, 83(16), pp. 48357–48375.
This paper presents MedNet, a novel deep learning framework tailored to detect medical deepfakes, ensuring the integrity of critical healthcare data. (Citations: 4)

Opinion Mining for Stock Trend Prediction Using Deep Learning
Albahli, S., Nazir, T.
Multimedia Tools and Applications, 2024.
Leveraging deep learning techniques, this research focuses on sentiment analysis to predict stock trends, demonstrating robust performance metrics. (Citations: 0)

An Improved DenseNet Model for Prediction of Stock Market Using Stock Technical Indicators
Albahli, S., Nazir, T., Nawaz, M., Irtaza, A.
Expert Systems with Applications, 2023, 232, 120903.
This work proposes enhancements to DenseNet architectures for stock market predictions based on technical indicators, achieving notable predictive accuracy. (Citations: 10)

A Circular Box-Based Deep Learning Model for the Identification of Signet Ring Cells from Histopathological Images
Albahli, S., Nazir, T.
Bioengineering, 2023, 10(10), 1147.
This open-access study develops a circular box-based deep learning model for the accurate detection of signet ring cells in histopathological images, aiding cancer diagnosis.

 

 

 

Manisha Kasar | Artificial Intelligence | Best Researcher Award

Dr. Manisha Kasar | Artificial Intelligence | Best Researcher Award

Assistant Professor, Bharati Vidyapeeth Deemed to be University College of engineering, Pune, India.

Dr. Manisha M. Kasar is an accomplished researcher and educator in the field of computer engineering, with over 11 years of experience. Her expertise spans facial recognition systems, artificial intelligence, and machine learning. She currently serves as an Assistant Professor at Bharti Vidyapeeth College of Engineering, Pune. Dr. Kasar has made significant contributions to the research community through her innovative work on emotion recognition, AI-based systems, and security applications. She is also the holder of several patents and has published numerous papers in prestigious journals.

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Education 🎓

Dr. Kasar holds a Ph.D. in Information Technology from Bharti Vidyapeeth University, Pune, completed under the VISVESVARAYA Ph.D. Scheme in 2021. She also earned her M.Tech in Computer Engineering from NMIMS in 2014, and a B.E. in Computer Engineering from NMU in 2009. Her strong academic foundation has been pivotal in her research achievements.

Experience 💼

With over 11 years of experience, Dr. Kasar is currently an Assistant Professor at Bharti Vidyapeeth College of Engineering, Pune. She has previously worked at Vishwakarma Institute of Information Technology and as a visiting faculty member at Bharti Vidyapeeth. Her teaching and administrative skills have been recognized through her roles in various academic institutions, and she has contributed to mentoring and guiding students in advanced technology research.

Research Interest 🔍

Dr. Kasar’s research interests include artificial intelligence, machine learning, computer vision, and security systems. Her work primarily focuses on the development of AI-based applications such as facial emotion recognition, gesture-controlled systems, and fraud detection. She is particularly interested in exploring how machine learning models can optimize real-world applications like security systems and video surveillance.

Awards & Patents 🏆

Dr. Kasar is the holder of two significant patents:

Smart Mirror System with Infrared Blaster.

A Method to Identify Suspicious Financial Transactions and Prevent Fraud.

Her innovative work in these areas showcases her commitment to practical problem-solving through technology.

Publications  📚

Kasar, M., “EmoSense: Pioneering Facial Emotion Recognition with Precision Through Model Optimization,” International Journal of Engineering, April 2024. Cited by 1 article. link

Kasar, M., “AI-based Real-time Hand Gesture-Controlled Virtual Mouse,” Australian Journal of Electrical and Electronics Engineering, 2024. Cited by 0 articles. link

Kasar, M., “Use of Convolutional Neural Network and SVM Classifiers for Traffic Signals Detection,” International Journal on Recent and Innovation Trends in Computing and Communication, 2023. Cited by 3 articles. link