Baha Ihnaini | Computer Science | Outstanding Contribution Award

Dr. Baha Ihnaini | Computer Science | Outstanding Contribution Award

Assistant Professor at Wenzhou-Kean University, China

Dr. Baha Ihnaini is an accomplished academic and researcher in computer science with expertise spanning artificial intelligence, data science, machine learning, and natural language processing. His scholarly work has addressed significant challenges in sentiment analysis, medical diagnostics, disease prediction, and misinformation detection, with publications in respected journals and international conferences. Notably, he has contributed to developing Arabic lexicons for sentiment analysis, enhancing AI-driven healthcare solutions, and advancing transfer learning models for predictive analytics. Alongside his research, Dr. Ihnaini has demonstrated a strong commitment to teaching, covering a wide range of computer science courses and mentoring students in senior projects. His service on academic committees and involvement in curriculum development highlight his leadership and dedication to institutional growth. With a record of impactful research, effective teaching, and professional service, Dr. Ihnaini stands out as a valuable contributor to his field and a strong candidate for academic recognition.

Professional Profile 

Google Scholar | Scopus Profile | ORCID Profile 

Education

Dr. Baha Ihnaini holds a Ph.D. in Computer Science with a specialization in Data Science from Universiti Utara Malaysia, where his research focused on developing an expandable Arabic lexicon and sentiment analysis rules for social media text. He also earned a Master of Science in Management Information Systems from The Arab Academy for Banking and Financial Sciences, equipping him with a strong foundation in both technical and managerial aspects of information technology. His academic journey began with a Bachelor’s degree in Computer Engineering from Philadelphia University in Jordan, providing him with comprehensive knowledge of hardware, software, and systems engineering. This multidisciplinary educational background has enabled Dr. Ihnaini to integrate advanced computational methods with practical problem-solving approaches, particularly in the areas of machine learning, natural language processing, and data-driven applications. His academic credentials reflect a balance between rigorous technical expertise and applied research in emerging fields of computing.

Experience

Dr. Ihnaini has accumulated rich professional experience as an educator, researcher, and academic leader across several institutions. He currently serves as an Assistant Professor of Computer Science at Wenzhou-Kean University, where he teaches a broad range of courses, from foundational programming and systems to advanced research in computer science. His roles extend beyond teaching, as he actively contributes to academic committees focused on curriculum development, faculty hiring, and student support. Prior to this, he served as an Adjunct Professor at Al Ain University and BTEC Abu Dhabi, as well as a Lecturer at Al Khawarizmi International College, where he guided student projects and curriculum design. Earlier in his career, he worked as a Research Officer at Universiti Utara Malaysia’s InterNetWorks Research Lab, where he played a pivotal role in advancing sentiment analysis for Arabic text. Collectively, his experience reflects a strong commitment to research, teaching excellence, and academic service.

Research Focus

Dr. Ihnaini’s research focuses on artificial intelligence, machine learning, data science, and natural language processing, with an emphasis on solving real-world problems through intelligent systems. A significant part of his work has concentrated on Arabic sentiment analysis, where he developed innovative linguistic resources and computational models to improve text classification accuracy. His recent research extends to medical AI, including predictive modeling for diseases such as diabetic retinopathy, Alzheimer’s disease, and vitamin D deficiency, showcasing his ability to merge computer science with healthcare applications. He has also contributed to the advancement of fake news detection, stock market prediction using sentiment data, and multimodal semantic similarity. His interdisciplinary approach highlights the versatility of data-driven methods and their societal impact, from enhancing healthcare systems to improving digital communication analysis. Through these diverse but interconnected research directions, Dr. Ihnaini continues to contribute to both theoretical advancements and practical innovations in computer science.

Award and Honor

Dr. Ihnaini has earned recognition for his scholarly contributions through research publications in reputable international journals and conferences, with several works indexed in Scopus and well-regarded platforms. His achievements include developing novel computational methods for sentiment analysis, interdisciplinary research in healthcare prediction models, and the application of advanced machine learning techniques to real-world problems. His role as a key contributor to collaborative projects with international researchers further reflects the recognition of his expertise and the impact of his work. Beyond research, his commitment to education and service has been acknowledged within the institutions he has served, particularly through his involvement in curriculum innovation and student mentorship. While formal distinctions are highlighted through his publication record and conference participation, his career trajectory itself demonstrates consistent recognition as a capable scholar and educator. His growing research visibility and international collaborations continue to strengthen his candidacy for prestigious awards and honors.

Publication Top Notes

  • Title: A smart healthcare recommendation system for multidisciplinary diabetes patients with data fusion based on deep ensemble learning
    Authors: B Ihnaini, MA Khan, TA Khan, S Abbas, MS Daoud, M Ahmad, MA Khan
    Year: 2021
    Citations: 158

  • Title: Machine Learning Empowered Software Defect Prediction System
    Authors: MS Daoud, S Aftab, M Ahmad, MA Khan, A Iqbal, S Abbas, M Iqbal, B Ihnaini
    Year: 2022
    Citations: 37

  • Title: Stock trend prediction using sentiment analysis
    Authors: Q Xiao, B Ihnaini
    Year: 2023
    Citations: 35

  • Title: Joint channel and multi-user detection empowered with machine learning
    Authors: MS Daoud, A Fatima, WA Khan, MA Khan, S Abbas, B Ihnaini, M Ahmad
    Year: 2021
    Citations: 31

  • Title: Real-time shill bidding fraud detection empowered with fussed machine learning
    Authors: WUH Abidi, MS Daoud, B Ihnaini, MA Khan, T Alyas, A Fatima, M Ahmad
    Year: 2021
    Citations: 28

  • Title: Rider weed deep residual network-based incremental model for text classification using multidimensional features and MapReduce
    Authors: HB Abdalla, AM Ahmed, SRM Zeebaree, A Alkhayyat, B Ihnaini
    Year: 2022
    Citations: 18

  • Title: Presenting and evaluating scaled extreme programming process model
    Authors: M Ibrahim, S Aftab, M Ahmad, A Iqbal, BS Khan, M Iqbal, BNS Ihnaini
    Year: 2020
    Citations: 13

  • Title: Exploring the agile family: A survey
    Authors: M Ibrahim, S Aftab, B Bakhtawar, M Ahmad, A Iqbal, N Aziz, MS Javeid, B Ihnaini
    Year: 2020
    Citations: 12

  • Title: Predicting vitamin D deficiency using optimized random forest classifier
    Authors: A Alloubani, B Abuhaija, M Almatari, G Jaradat, B Ihnaini
    Year: 2024
    Citations: 9

  • Title: Lexicon-based sentiment analysis of Arabic tweets: A survey
    Authors: B Ihnaini, M Mahmuddin
    Year: 2018
    Citations: 9

  • Title: A Severity Grading Framework for Diabetic Retinopathy Detection using Transfer Learning
    Authors: S Akhtar, S Aftab, S Kousar, A Rehman, M Ahmad, AQ Saeed, B Ihnaini
    Year: 2024
    Citations: 8

  • Title: Improving the Quality of e-Commerce Service by Implementing Combination Models with Step-by-Step, Bottom-Up Approach
    Authors: BA Hemn, G Chengwei, B Ihnaini
    Year: 2021
    Citations: 6

  • Title: Sentiment analysis of Song Dynasty classical poetry using fine-tuned large language models: a study with LLMs
    Authors: B Ihnaini, W Sun, Y Cai, Z Xu, R Sangi
    Year: 2024
    Citations: 5

  • Title: A transfer learning based framework for diabetic retinopathy detection using data fusion
    Authors: S Akhtar, S Aftab, M Ahmad, B Ihnaini
    Year: 2024
    Citations: 4

  • Title: Semantic similarity on multimodal data: A comprehensive survey with applications
    Authors: B Ihnaini, B Abuhaija, EA Mills, M Mahmuddin
    Year: 2024
    Citations: 3

Conclusion

Dr. Baha Ihnaini’s publication record reflects a strong and steadily growing research trajectory across diverse yet interconnected fields of computer science, including artificial intelligence, data science, natural language processing, and medical informatics. His works demonstrate both theoretical depth and practical applications, ranging from healthcare prediction models and fraud detection to sentiment analysis and software engineering. The high citation impact of certain publications highlights the relevance and influence of his research in the academic community, while his more recent works indicate an expanding focus on interdisciplinary applications such as healthcare and cultural text analysis using advanced AI techniques. Collectively, his contributions showcase a balance of innovation, collaboration, and societal relevance, positioning him as a researcher whose work is not only academically significant but also impactful in addressing real-world challenges. This combination of influence, diversity, and practical value strengthens his candidacy for recognition through awards and honors.

Prashant Awasthi | Artificial Intelligence and Machine Learning | Best Researcher Award

Mr. Prashant Awasthi | Artificial Intelligence and Machine Learning | Best Researcher Award

Tech Architecture Manager at Accenture LLP, United States

Mr. Prashant Awasthi is a seasoned technology leader and researcher with extensive experience in Generative AI, DevOps, Cloud Computing, and Machine Learning. With a strong professional background in managing large-scale projects for global clients, he has consistently bridged advanced research with practical industry applications. His contributions to academia include multiple publications in reputed journals and international conferences on diverse topics such as AI, cloud computing, IoT security, cryptocurrencies, and human activity recognition. Beyond publishing, he has played active roles as a reviewer, session chair, and invited speaker at global conferences, demonstrating his recognition and influence within the research community. He is also a member of IEEE and IAENG, further reflecting his engagement with international scientific networks. Known for his technical expertise, leadership, and dedication, Mr. Awasthi continues to make meaningful contributions that advance innovation and knowledge, establishing him as a strong candidate for research recognition and awards.

Professional Profile 

Google Scholar | Scopus Profile

Education

Mr. Prashant Awasthi has built a strong educational foundation that supports his extensive professional and research career. His academic journey reflects a balance between theoretical learning and practical application, with a focus on computer science, information technology, and software engineering. Throughout his education, he developed expertise in programming, system design, and emerging technologies, which laid the groundwork for his later specialization in cloud computing, DevOps, and artificial intelligence. His continuous learning mindset is evident in his pursuit of globally recognized professional certifications, including AWS Cloud Solutions Architect, HashiCorp Terraform, and ITIL V4. These advanced credentials demonstrate his commitment to staying updated with evolving technologies and applying them effectively in real-world environments. His academic and professional learning paths are closely integrated, allowing him to contribute significantly to both industry and research. This strong educational background has enabled him to engage in innovative research and knowledge-sharing at the global level.

Experience

Mr. Prashant Awasthi has more than eighteen years of experience in the IT industry, with a career spanning leadership roles in global organizations such as Accenture, HSBC, and Harbinger Systems. At Accenture LLP, he has served as a Tech Architecture Manager, overseeing end-to-end project lifecycles, from requirement analysis to deployment, while managing large teams and delivering solutions for Fortune 500 clients, particularly in the banking and finance sectors. His professional expertise extends across Generative AI, cloud computing, DevOps, CI/CD pipelines, software development, and middleware systems. He has consistently demonstrated strong leadership by guiding teams, driving client engagements, and ensuring the delivery of high-quality solutions. His background also includes hands-on technical skills in Java, Python, Unix/Linux, and database systems. This combination of managerial and technical expertise allows him to effectively integrate innovation into business solutions. His professional experience illustrates a successful balance between technical depth, organizational leadership, and research-driven development.

Research Focus

Mr. Prashant Awasthi’s research focus lies at the intersection of artificial intelligence, cloud computing, cybersecurity, and emerging digital technologies. His published work addresses critical areas such as reinforcement learning, heuristic algorithms, human activity recognition using CNNs, framework-agnostic JavaScript libraries, and the role of AI-powered systems like ChatGPT. He has also explored blockchain, cryptocurrencies, and IoT security frameworks, highlighting his multidisciplinary approach to solving contemporary technology challenges. His work often emphasizes integrating advanced algorithms with real-world applications, such as improving system efficiency, scalability, and security in cloud environments. He has a strong interest in sustainable and innovative computing solutions, as reflected in his research on digital twins, wireless fog-IoT networks, and environmental data analysis. By contributing to both applied and theoretical dimensions of research, he bridges academia and industry, ensuring that his work remains relevant and impactful. His focus on practical implementation ensures that his research benefits technological advancement globally.

Award and Honor

Mr. Prashant Awasthi has received recognition for his contributions to research, academia, and the professional community through various prestigious roles and honors. He has been invited as a speaker at international conferences, where he has shared his insights on artificial intelligence, machine learning, and generative AI. His expertise has also earned him appointments as a session chair and reviewer at globally recognized conferences, including events organized by Springer, Elsevier, and international academic bodies. By serving as a reviewer and technical committee member, he has contributed to maintaining research quality and supporting innovation within the global scientific community. His memberships with leading professional associations such as IEEE and IAENG further highlight his standing as a respected contributor to the field. These honors, combined with his published research in reputed journals and conferences, reflect his dedication to advancing technology and academia. His recognition underscores his credibility as a global researcher and thought leader.

Publication Top Notes

Title: Framework-Agnostic JavaScript Component Libraries: Benefits, Implementation Strategies, and Commercialization Models
Authors: KK Gupta, P Awasthi, M Shaik, PR Kaveri
Year: 2024
Citations: 6

Title: ChatGPT: The Power Of AI
Authors: P Awasthi, DPR Kaveri
Year: 2023
Citations: 2

Title: Effect of Prompt Engineering on Education Sector: A Mixed Case Study
Authors: P Awasthi
Year: 2021
Citations: 2

Title: Evaluating the Need of Reinforcement Learning by Implementing Heuristic Algorithms with Its Load Balancing and Performance Testing in Cloud
Authors: KDPA Prathamesh Vijay Lahande, Parag Ravikant Kaveri, Vinay Chavan
Year: 2025

Title: Explainability and Interpretability of Large Language Models in Critical Applications
Authors: PA Vinod Goje, Rohit Jarubula, Sai Krishna Kalakonda
Year: 2025

Title: Real-Time Human Motion Behaviour Recognition Using Deep Learning Models
Authors: P Awasthi
Year: 2025

Title: Integrating Human Motion Dynamics in CNN Architecture to Recognize Human Activity from Different Camera Angles
Authors: KK Gupta, JH Lee, PR Kaveri, P Awasthi
Year: 2025

Title: Seasonal Variations and Water Quality Dynamics: Analysis of Kanota Dam in Relation to WHO Standards
Authors: DK Meena, S Singh, SK Singh, V Pandey, RS Rana, B Sajan, P Awasthi, et al.
Year: 2024

Title: History, Current, and Prospective of Bitcoin and Cryptocurrency
Authors: MD Prashant Awasthi
Year: 2024

Conclusion

Mr. Prashant Awasthi’s publication record reflects a strong blend of technical innovation, academic contribution, and interdisciplinary research. His works span critical areas such as artificial intelligence, machine learning, cloud computing, blockchain, and applied deep learning, highlighting both depth and versatility. With multiple papers published in reputed conferences and journals, along with growing citation impact, his research demonstrates recognition and relevance in the scholarly community. Additionally, his contributions as a sole author and as part of collaborative teams show his ability to lead as well as integrate within diverse research environments. While some of his recent works are yet to accumulate citations, they address timely and impactful topics that are likely to gain traction in the coming years. Overall, his research portfolio establishes him as a promising and impactful contributor to academia and industry, making him a strong candidate for recognition in awards and honors related to research excellence.

Xiaolin Yang | Machine learning | Best Researcher Award

Dr. Xiaolin Yang | Machine learning | Best Researcher Award

China university of mining and technology, China

📈 Xiaolin Yang is a highly skilled Business Analyst with a Ph.D. in Mineral Process Engineering and specialized expertise in mineral separation and industrial production optimization. Known for his analytical approach and technical knowledge, Xiaolin currently serves as a Postdoctoral Researcher at Henan Investment Group, where he provides valuable industry insights, investment assessments, and strategies for process improvement. His background in machine learning and image analysis supports his innovative contributions to mineral processing.

Publication Profile

ORCID

Education

🎓 Xiaolin Yang completed his Bachelor’s degree in Mineral Process Engineering at China University of Mining and Technology (2015-2019) and later earned a Doctorate in the same field from the same institution (2019-2024). His research spans mineral separation techniques, machine learning applications, and image analysis, all aimed at advancing processing efficiency.

Experience

💼 Xiaolin is currently a Postdoctoral Researcher at Henan Investment Group, where he contributes to industry research, investment evaluation, and production optimization. His role includes preparing assessment reports, providing strategic investment guidance, managing project feasibility studies, and enhancing industrial production processes.

Research Focus

🔬 Xiaolin’s research focuses on mineral processing, applying machine learning and image analysis to improve separation processes and equipment. His studies advance understanding of mineral properties and optimization techniques, contributing to the field’s progression toward smarter, data-driven methodologies.

Awards and Honors

🏅 Xiaolin has been recognized for his contributions to mineral process engineering, having published in prominent journals like Journal of Materials Research and Technology and Expert Systems with Applications. His work on froth image analysis and coal flotation ash determination highlights his dedication to innovation in mineral processing.

Publication Highlights

A comparative study on the influence of mono, di, and trivalent cations on chalcopyrite and pyrite flotation (2021). Published in Journal of Materials Research and Technology [Cited by 50 articles].

Ash determination of coal flotation concentrate by analyzing froth image using a novel hybrid model based on deep learning algorithms and attention mechanism (2022). Published in Energy [Cited by 35 articles].

Multi-scale neural network for accurate determination of the ash content of coal flotation concentrate using froth images (2024). Published in Expert Systems with Applications [Cited by 20 articles].