Zhengyi Yao | Artificial Intelligence | Best Researcher Award

Mr. Zhengyi Yao | Artificial Intelligence | Best Researcher Award

Sichuan Normal University |China

Zhengyi Yao, from Neijiang, Sichuan, China, is a dedicated researcher affiliated with Sichuan Normal University, holding both bachelor’s and master’s degrees in Computer Science and Technology. His work primarily focuses on the Internet of Things (IoT), cybersecurity, cryptography, and artificial intelligence (AI). With a growing presence in academic publishing, he has contributed to several high-impact journals indexed in SCI and Scopus. Mr. Yao has demonstrated a strong commitment to advancing secure, intelligent systems, particularly in logistics and industrial applications. His interdisciplinary approach blends theoretical research with practical implementation, contributing to emerging technologies such as blockchain-enabled IIoT and quantum cryptography. In addition to publishing five journal articles and securing seven patents, he actively contributes to the field through applied innovations aimed at enhancing privacy protection and data security. As a passionate technologist, Mr. Yao is continually exploring transformative solutions in smart systems, emphasizing the ethical and secure integration of AI in modern digital infrastructure.

Profile

Education

Zhengyi Yao completed his academic training at Sichuan Normal University, earning both his bachelor’s and master’s degrees in Computer Science and Technology. His undergraduate studies provided a solid foundation in software development, algorithms, and system architecture, while his postgraduate work emphasized advanced topics such as artificial intelligence, cybersecurity, and cryptographic methods. During his graduate years, he engaged deeply with interdisciplinary studies, aligning computer science with real-world applications in logistics, IoT, and secure communication systems. His academic performance has been marked by consistent excellence and a proactive engagement in research-driven projects. While enrolled, he also explored the practical aspects of emerging technologies, developing tools and frameworks to support digital transformation in industrial systems. His education has been instrumental in shaping his scientific outlook, fostering a commitment to ethical innovation and robust digital security. These academic experiences continue to inform his contributions to academic research and patent development in the tech and security domains.

Experience

Zhengyi Yao has gained substantial experience as a researcher and innovator in the fields of IoT, cybersecurity, cryptography, and AI. While at Sichuan Normal University, he actively participated in multiple collaborative research efforts that examined the integration of blockchain with IIoT systems and privacy-focused AI applications in logistics. Despite limited consultancy and editorial appointments, his practical contributions are demonstrated through five SCI/Scopus-indexed journal publications and seven patents. He has co-authored research tackling challenges in smart logistics security, 5G-based blockchain sensors, and quantum cryptography, showcasing his capability to bridge theoretical and applied computing. Through independent and team-driven efforts, Mr. Yao has contributed to designing secure systems that support data integrity and user privacy in dynamic industrial environments. His hands-on research experience, supported by solid academic training, underpins his drive to innovate in secure computing technologies and has positioned him as a promising young professional in China’s growing digital research landscape

Research Focus

Zhengyi Yaoโ€™s research centers on the intersection of emerging technologies like IoT, blockchain, AI, and cybersecurity, with a strong focus on intelligent logistics systems. He explores secure device communication, privacy-preserving data protocols, and cryptographic models for industrial systems. His work on blockchain-enabled IIoT platforms aims to fortify command operations against cyber threats, while his investigations into quantum cryptography are pushing the boundaries of next-generation digital security. One of his key contributions is the development of 5G-based universal blockchain smart sensors, combining speed, scalability, and trust for dynamic logistics applications. His research also examines how AI can be ethically and securely integrated into cyber-physical environments to optimize data flow, user privacy, and system integrity. Through published works and patented innovations, he is shaping solutions to critical security challenges facing smart logistics and industrial platforms. His forward-thinking approach promotes safer, more resilient infrastructures in an increasingly connected digital world.

Publications

Sensitive Data Privacy Protection of Carrier in Intelligent Logistics System
Year: 2024
Citation:2

Blockchain-enabled device command operation security for Industrial Internet of Things
Year: 2023
Citation:12

5G-BSS: 5G-Based Universal Blockchain Smart Sensors
Year: 2022
Citation:2

Conclusion

Zhengyi Yao exemplifies the qualities of a dedicated and innovative researcher, with notable contributions to smart logistics, cybersecurity, and cryptographic technologies. His blend of academic rigor and applied invention positions him as a rising leader in secure digital systems.

Kihwan Nam | Artificial Intelligence | Best Faculty Award

Prof. Kihwan Nam | Artificial Intelligence | Best Faculty Award

Dr. Kihwan Nam is an Assistant Professor in the Department of Management of Technology at Korea University and the founder of Aimtory, a high-technology AI company. With a unique blend of academic expertise and entrepreneurial insight, he specializes in Artificial Intelligence (AI), particularly Generative AI, Explainable AI, and Digital Transformation. He earned his Ph.D. in Information Systems from KAIST and holds degrees in Industrial Engineering and Statistics from Korea University and Yonsei University, respectively. Dr. Nam has an extensive research record, with publications in top-tier journals such as Journal of Marketing Research, Decision Support Systems, and Knowledge-Based Systems. His professional journey includes leadership roles in startups and significant AI industry contributions. He is passionate about bridging the gap between academia and industry through impactful, data-driven solutions that transform business strategies, smart factories, and healthcare systems. Dr. Nam is a leading figure in the fusion of cutting-edge AI technologies with business innovation.

Profile

๐ŸŽ“ Education

Dr. Kihwan Namโ€™s academic background spans statistics, engineering, and management. He holds a Ph.D. in Information Systems and Management Engineering from the prestigious KAIST College of Business, where he honed his expertise in AI-driven decision support and business analytics. Prior to his doctorate, he completed his M.S. in Industrial Engineering at Korea University, acquiring strong analytical and system optimization skills. His academic journey began with a B.A. in Statistics from Yonsei University, which laid a solid foundation in data analysis and quantitative modeling. This interdisciplinary academic training enables Dr. Nam to approach complex problems from technical, managerial, and data-driven perspectives. Throughout his studies, he cultivated a deep interest in predictive modeling, econometrics, and the integration of AI technologies in organizational contexts, which continues to shape his academic and industrial research today. His educational path reflects a consistent commitment to excellence and innovation across disciplines.

๐Ÿงช Experience

Dr. Nam has a dynamic career in both academia and industry. He currently serves as Assistant Professor in the Management of Technology at Korea University, following a faculty role in Management Information Systems at Dongguk University. In industry, he is the founder of Aimtory, a company focused on cutting-edge AI solutions, and previously led Basbai, an AI solution firm, as CEO. He also co-founded Sentience, reflecting his commitment to tech entrepreneurship. His dual roles have enabled him to conduct collaborative research with top-tier companies, implement AI in real-world applications, and train future innovators. Dr. Nam’s expertise extends across AI project development, big data analytics, and digital business transformation. His work in areas like smart factories, healthcare, and financial markets underscores his versatility. His diverse experience positions him as a thought leader at the intersection of research, innovation, and enterprise AI deployment.

๐Ÿ… Awards and Honors

Dr. Kihwan Nam has received numerous prestigious accolades for his impactful research and innovation. He was honored with the Best Paper Award from the Korea Intelligent Information System Society (2017) for his work on recommender systems in retail, and again in 2019 by the Information Systems Review Society for a field experiment in recommendation design. His deep learning-based financial distress prediction study was a Best Paper Nominee at the INFORMS Data Science Workshop (2020). In 2022, he secured top honors at the Korea Gas Corporation Big Data Competition and received an innovation award from the Startup Promotion Agency for the Big-Star Solution Platform. In 2023, he earned the Best Researcher Award at Dongguk University. These recognitions reflect his excellence in both theoretical contributions and practical applications of AI, reinforcing his role as a leading figure in AI-driven business analytics and intelligent systems research.

๐Ÿ”ฌ Research Focus

Dr. Namโ€™s research lies at the intersection of Artificial Intelligence, Business Analytics, and Digital Transformation. He specializes in Generative AI, Explainable AI, LLMs, NLP, and Computer Vision, aiming to drive intelligent decision-making in sectors like healthcare, finance, and manufacturing. His core research explores predictive analytics, recommender systems, robot advisory, and econometric modeling applied to real-world business and technological challenges. By incorporating econometrics with data mining and machine learning, he investigates user behavior, personalization strategies, and large-scale business optimization. His recent projects include stock and cryptocurrency prediction, smart factory optimization, and curated recommendation engines. He is also advancing research in digital transformation (DX) and blockchain-based token economies. Dr. Nam emphasizes bridging theory and application by applying AI innovations to actual business environments, often in collaboration with international enterprises. His work is deeply rooted in the integration of robust statistical methods with scalable, real-world AI systems.

โœ… Conclusion

Dr. Kihwan Nam is a visionary academic and AI entrepreneur who merges deep theoretical knowledge with practical applications, shaping the future of AI-driven digital transformation across industries through innovative research, impactful teaching, and real-world solutions

Publications

Mustaqeem Khan | Deep learning | Best Researcher Award

Assist. Prof. Dr. Mustaqeem Khan | Deep learning | Best Researcher Award

Dr. Mustaqeem Khan is an accomplished researcher and educator specializing in speech and video signal processing, with a keen focus on emotion recognition using deep learning. Recognized among the Top 2% Scientists globally (2023โ€“2024), he currently serves as an Assistant Professor at the United Arab Emirates University (UAEU). He earned his Ph.D. in Software Convergence from Sejong University, South Korea, and has authored over 40 high-impact publications in IEEE, Elsevier, Springer, and ACM. His contributions span multimodal systems, computer vision, and intelligent surveillance. With extensive experience in academia and research labs, Dr. Khan has also served as a lab coordinator, team leader, and guest editor. He actively collaborates internationally and mentors graduate students. His technical expertise includes TensorFlow, PyTorch, MATLAB, and computer vision frameworks, making him a key contributor to projects involving emotion detection, UAV surveillance, and medical imaging. He brings innovation, leadership, and academic excellence to his roles.

Profile

๐ŸŽ“ Education

Dr. Mustaqeem Khan holds a Ph.D. in Software Convergence (2022) from Sejong University, Seoul, South Korea, where he achieved an outstanding CGPA of 4.44/4.5 (98%) and earned the Outstanding Research Award. His doctoral dissertation focused on advanced studies in speech-based emotion recognition using deep learning. He completed his MS in Computer Science (2018) at Islamia College Peshawar with a Gold Medal, securing a CGPA of 3.94/4.00, and specialized in video-based human action recognition. His undergraduate degree (BSCS, 2015) was from the Institute of Business and Management Sciences, AUP Peshawar, where he developed a web-based design project. His academic background laid the foundation for his research in multimodal deep learning, AI, and signal processing. Throughout his education, Dr. Khan combined rigorous coursework with impactful research, leading to numerous publications and international recognition.

๐Ÿงช Experience

Dr. Mustaqeem Khan is currently serving as an Assistant Professor at UAEU (2025โ€“Present), focusing on teaching, research, and student supervision. From 2022 to 2024, he was a Postdoctoral Fellow and Lab Coordinator at MBZUAI, where he led AI projects like drone surveillance and collaborated with the Technical Innovation Institute. At Sejong University (2019โ€“2022), he worked as a Research Assistant and IT Lab Coordinator, guiding projects and mentoring graduate students in speech processing and energy informatics. Prior to this, he was a Lecturer (2018โ€“2019) and Research Assistant (2016โ€“2018) at Islamia College Peshawar, where he taught courses in programming, image processing, and AI. He also led computer vision and speech analytics projects. His international collaborations span institutes in South Korea, France, Saudi Arabia, and India, highlighting his global academic footprint. Dr. Khan is deeply involved in editorial roles and research supervision, embodying academic excellence and research leadership.

๐Ÿ… Awards and Honors

Dr. Mustaqeem Khan has been recognized as one of the Top 2% Scientists in the world (2023โ€“2024), a testament to his research impact. He received the Outstanding Research Award from Sejong University in 2022 and was a Gold Medalist during his MS in Computer Science at Islamia College Peshawar (2016โ€“2018). His work has earned multiple Best Paper Awards, including from the Korea Information Processing Society (2021) and Mathematics Journal (2020). He was also granted a fully funded Ph.D. scholarship at Sejong University. Dr. Khan has reviewed for over 35 reputed international journals and serves as an editor and guest editor for several leading publications, including MDPI, IEEE, and Springer journals. His patents in speech-based emotion recognition further validate his innovation. These accolades underscore his academic rigor, global recognition, and leadership in signal processing, AI, and intelligent systems.

๐Ÿ”ฌ Research Focus

Dr. Mustaqeem Khanโ€™s research lies at the intersection of speech signal processing, multimodal emotion recognition, and computer vision. His Ph.D. work established a foundation for deep learning-based systems capable of understanding human emotions through speech. He has since expanded his research to include age/gender detection, action recognition, violence detection, and medical image analysis using AI. His deep learning modelsโ€”ranging from CNNs to transformersโ€”have been applied across audio, video, text, and sensor-based data. Dr. Khan is particularly interested in cross-modal transformer-based architectures, edge-AI surveillance systems, and emotion recognition for smart cities. He is also exploring medical AI for fetal, retinal, and Parkinsonโ€™s disease diagnostics. His work is published in top-tier venues like IEEE Transactions, Nature Scientific Reports, and ACM. Ongoing collaborations with MBZUAI, TII, and Korean institutions focus on real-time AI applications in UAV systems, smart healthcare, and metaverse content generation.

โœ… Conclusion

Dr. Mustaqeem Khan is a globally recognized AI researcher and educator specializing in multimodal emotion recognition and computer vision, whose impactful contributions, international collaborations, and innovative deep learning applications continue to shape the fields of signal processing, smart surveillance, and healthcare technologies.

Publications

Chan-Uk Yeom | Artificial Intelligence | Best Researcher Award

Dr. Chan-Uk Yeom | Artificial Intelligence | Best Researcher Award

Dr. Chan-Uk Yeom is a Research Professor at the Research Institute of IT, Chosun University, Korea. He specializes in time series data analysis using deep learning, granular computing, adaptive neuro-fuzzy inference systems, high-dimensional data clustering, and biosignal-based biometrics. Dr. Yeom has held several research positions, including at the Division of AI Convergence College at Chosun University and the Center of IT-BioConvergence System Agriculture at Chonnam National University. His work integrates artificial intelligence, fuzzy systems, and granular models for practical applications such as healthcare, biometrics, and energy efficiency. Dr. Yeom has published extensively in high-impact journals and conferences, holds multiple patents, and has received numerous awards for his innovative research contributions. He actively teaches courses related to AI healthcare applications and electronic engineering. His collaboration and problem-solving skills have been demonstrated through his involvement in competitive AI research challenges and global innovation camps.

Professional Profile

Education

Dr. Yeom completed his entire higher education at Chosun University, Korea. He earned his Ph.D. in Engineering (2022) from the Department of Control and Instrumentation Engineering, with a dissertation on fuzzy-based granular model design using hierarchical structures under the supervision of Prof. Keun-Chang Kwak. Prior to this, he obtained his M.S. in Engineering (2017), focusing on ELM predictors using TSK fuzzy rules and random clustering, and his B.S. in Engineering (2016) in Control and Instrumentation Robotics. His academic work laid a strong foundation in machine learning, granular computing, and fuzzy inference systems, which became the core of his future research trajectory. Throughout his education, Dr. Yeom demonstrated academic excellence, leading to multiple thesis awards, and developed expertise in AI-driven applications for healthcare, energy optimization, and biometrics.

Experience

Currently, Dr. Yeom serves as a Research Professor at the Research Institute of IT, Chosun University (since January 2025). Previously, he was a Research Professor at Chosun Universityโ€™s Division of AI Convergence College (2023โ€“2024) and a Postdoctoral Researcher at the Center of IT-BioConvergence System Agriculture, Chonnam National University (2022โ€“2023). His extensive research spans user authentication technologies using multi-biosignals, brain-body interface development using AI multi-sensing, and optimization of solar-based thermal storage systems. In addition to research, Dr. Yeom has contributed to teaching undergraduate courses, including AI healthcare applications, electronic experiments, capstone design, and open-source software. He is also experienced in mentorship, student internships, and providing special employment lectures. His active participation in national and international research projects and conferences reflects his global engagement and multidisciplinary expertise in artificial intelligence, healthcare, biometrics, and advanced fuzzy models.

Research Interests

Dr. Yeomโ€™s research integrates deep learning, granular computing, and adaptive neuro-fuzzy systems to solve complex problems in healthcare, biometrics, energy efficiency, and time series data analysis. His innovative work focuses on designing hierarchical fuzzy granular models, developing incremental granular models with particle swarm optimization, and applying AI-driven methods to biosignal-based biometric authentication. Dr. Yeom has developed cutting-edge models for predicting energy efficiency, vehicle fuel consumption, water purification processes, and disease classification from ECG signals. His contributions also extend to explainable AI, emotion recognition, and non-contact biosignal acquisition using 3D-CNN. In addition to academic publications, he has secured multiple patents related to ECG-based personal identification methods, intelligent prediction systems, and granular neural networks. His interdisciplinary approach combines theoretical modeling, real-world applications, and collaborative AI system design, advancing the fields of biomedical informatics, neuro-fuzzy computing, and healthcare convergence technologies.

Awards

Dr. Yeom has received numerous awards recognizing his academic excellence. He earned multiple Excellent Thesis Awards from prestigious conferences, including the International Conference on Next Generation Computing (ICNGC 2024), the Korea Institute of Information Technology (KIIT Autumn Conference 2024), and the Annual Conference of Korea Information Processing Society (ACK 2024). His doctoral work was recognized at Chosun Universityโ€™s 2021 Graduate School Doctoral Degree Award Ceremony. He also received the Outstanding Presentation Paper Award at the 2020 Korean Smart Media Society Spring Conference and the Excellent Thesis Award at the Korea Information Processing Society 2018 Spring Conference. Earlier, his problem-solving capabilities were showcased as a finalist and top 9 team at the 2018 AI R&D Challenge and during participation in the 2016 Global Entrepreneurship Korea Camp. These honors highlight his sustained contributions to AI research, innovation, and applied technological development.

Conclusion

Dr. Chan-Uk Yeom is a dynamic researcher whose pioneering contributions to granular computing, neuro-fuzzy systems, and AI healthcare applications demonstrate his exceptional expertise, innovative thinking, and global scientific impact, making him a valuable contributor to the advancement of next-generation intelligent systems.

ย Publications

  • A Design of CGK-Based Granular Model Using Hierarchical Structure

    Applied Sciences
    2022-03 |ย Journal articleย |ย Author
    CONTRIBUTORS:ย Chan-Uk Yeom;ย Keun-Chang Kwak
  • Adaptive Neuro-Fuzzy Inference System Predictor with an Incremental Tree Structure Based on a Context-Based Fuzzy Clustering Approach

    Applied Sciences
    2020-11 |ย Journal articleย |ย Author
    CONTRIBUTORS:ย Chan-Uk Yeom;ย Keun-Chang Kwak

Chongyuan Wang | Deep learning | Best Researcher Award

Dr. Chongyuan Wang | Deep learning | Best Researcher Award

Dr. Chongyuan Wang, a Ph.D. researcher at Hohai University, specializes in artificial intelligence ๐Ÿค– and neural computation ๐Ÿง . He completed his B.S. at Jiangsu University ๐Ÿ‡จ๐Ÿ‡ณ and M.S. in Energy and Power from Warwick University ๐Ÿ‡ฌ๐Ÿ‡ง. His research journey is centered around biologically inspired learning algorithms, with notable contributions to dendritic neuron modeling and evolutionary optimization. Through innovative algorithms like Reinforced Dynamic-grouping Differential Evolution (RDE), Dr. Wang advances the understanding of synaptic plasticity in AI systems. His patent filings and international publications reflect a strong commitment to academic innovation and impact ๐ŸŒ.

Profile

Education ๐ŸŽ“

๐ŸŽ“ B.S. in Engineering โ€“ Jiangsu University, China ๐Ÿ‡จ๐Ÿ‡ณ
๐ŸŽ“ M.S. in Energy and Power โ€“ University of Warwick, UK ๐Ÿ‡ฌ๐Ÿ‡ง (2018)
๐ŸŽ“ Ph.D. Candidate โ€“ Hohai University, majoring in Artificial Intelligence ๐Ÿค–
Dr. Wang’s educational path bridges engineering and intelligent systems. His strong technical foundation and global exposure foster advanced thinking in machine learning and neuroscience. His current doctoral research integrates deep learning, dendritic neuron models, and biologically plausible architectures for improved learning accuracy and model efficiency. ๐Ÿ“˜๐Ÿง 

Experience ๐Ÿ‘จโ€๐Ÿซ

Dr. Wang is currently pursuing his Ph.D. at Hohai University, where he investigates dendritic learning algorithms and synaptic modeling. ๐Ÿงฌ He proposed the RDE algorithm, enhancing dynamic learning in artificial neurons. His hands-on experience includes research design, algorithm optimization, patent writing, and international publication. He has contributed to projects such as “Toward Next-Generation Biologically Plausible Single Neuron Modeling” and “RADE for Lightweight Dendritic Learning.” ๐Ÿ“Š His work balances theoretical depth and applied research, particularly in neural computation, classification systems, and resource-efficient AI. ๐Ÿ”ฌ๐Ÿ’ก

Awards & Recognitions ๐Ÿ…

๐Ÿ… Patent Holder (CN202410790312.0, CN202410646306.8, CN201510661212.9)
๐Ÿ“„ Published in SCI-indexed journal Mathematics (MDPI)
๐ŸŒ Recognized on ORCID (0009-0002-6844-1446)
๐Ÿง  Nominee for Best Researcher Award 2025
His inventive research has earned him national patents and global visibility. His SCI publications in computational modeling reflect both novelty and academic rigor. His continued innovation in biologically inspired AI learning systems has established his position as an emerging researcher in intelligent systems. ๐Ÿš€๐Ÿ“˜

Research Interests ๐Ÿ”ฌ

Dr. Wangโ€™s research fuses deep learning ๐Ÿค– and dendritic modeling ๐Ÿง  to create biologically plausible AI. He developed the RDE algorithm to mimic synaptic plasticity, improving convergence and adaptability in neural networks. His research areas include evolutionary optimization, adaptive grouping, resource-efficient models, and dendritic learning. He explores how artificial neurons can reflect real-brain behavior, leading to faster, more accurate AI systems. Current projects like RADE aim to make AI lightweight and biologically relevant. ๐ŸŒฑ๐Ÿ“Š His vision is to bridge the gap between neuroscience and AI through interpretable, high-performance algorithms. ๐Ÿง ๐Ÿ’ก

Publications
  • Toward Next-Generation Biologically Plausible Single Neuron Modeling: An Evolutionary Dendritic Neuron Model

    Mathematics
    2025-04-29 |ย Journal article
    CONTRIBUTORS:ย Chongyuan Wang;ย Huiyi Liu

Farshad Sadeghpour | Data prediction | Best Researcher Award

Dr. Farshad Sadeghpour | Data prediction | Best Researcher Award

Farshad Sadeghpour (b. 1996) ๐Ÿ‡ฎ๐Ÿ‡ท is a Petroleum Engineer and Data Scientist ๐Ÿ’ป๐Ÿ›ข๏ธ with expertise in reservoir engineering, petrophysics, and AI applications in the energy sector. Based in Tehran, Iran ๐Ÿ“, he holds a Masterโ€™s and Bachelorโ€™s in Petroleum Exploration. With extensive experience in EOR, SCAL/RCAL analysis, and machine learning, Farshad has contributed to both academic and industrial R&D at RIPI, NISOC, and PVP. He has published multiple research articles ๐Ÿ“š, won international awards ๐Ÿ†, and participated in key petroleum projects. He served in the military ๐Ÿช– and actively collaborates with academia and industry on AI-driven energy solutions.

Profile

Education ๐ŸŽ“

๐Ÿง‘โ€๐ŸŽ“ Master’s in Petroleum Engineering (Petroleum Exploration), Petroleum University of Technology, Abadan ๐Ÿ‡ฎ๐Ÿ‡ท (2019โ€“2022) | GPA: 18.82/20
๐ŸŽ“ Bachelorโ€™s in Petroleum Engineering, Islamic Azad University (Science & Research Branch), Tehran ๐Ÿ‡ฎ๐Ÿ‡ท (2015โ€“2019) | GPA: 19.14/20
๐Ÿ“š Courses covered include reservoir engineering, geomechanics, well-logging, and advanced data analytics.
๐Ÿ› ๏ธ Projects include COโ‚‚ storage modeling, permeability prediction via AI, and LWD-based mud loss forecasting.
๐Ÿ“Š Developed key industry collaborations with NISOC, RIPI, and OEID through thesis, internships, and military service projects.
๐Ÿ’ก Honed computational and simulation skills using MATLAB, Python, COMSOL, Petrel, and ECLIPSE.
๐Ÿ›๏ธ Academic mentors: Dr. Seyed Reza Shadizadeh, Dr. Bijan Biranvand, Dr. Majid Akbari.

Experience ๐Ÿ‘จโ€๐Ÿซ


๐Ÿ”ฌ Computer Aided Process Engineering (CAPE) โ€“ Petroleum Reservoir Engineer (Nov 2024โ€“Present)
๐Ÿ›ข๏ธ Petro Vision Pasargad โ€“ Reservoir Engineer & Lab Operator (Sep 2023โ€“May 2024)
๐Ÿง  Research Institute of Petroleum Industry (RIPI) โ€“ Petroleum Engineer, Data Scientist (Mar 2023โ€“Apr 2024)
๐Ÿญ National Iranian South Oil Company (NISOC) โ€“ Petroleum Engineer, Petrophysicist (Mar 2021โ€“Nov 2024)
๐Ÿงช Internships: NIOC – Exploration Management, Oil & Energy Industries Development (OEID)
๐Ÿ“Š Key contributions include EOR analysis, SCAL/RCAL lab testing, permeability modeling, machine learning pipelines, and field data analysis.
๐Ÿงพ Delivered reports, simulations, and AI models supporting production optimization and reservoir characterization.

Awards & Recognitions ๐Ÿ…

๐Ÿฅ‰ 3rd Prize Winner โ€“ EAGE Laurie Dake Challenge 2022 (Madrid, Spain) ๐ŸŒ
๐ŸŽ–๏ธ Recognized for thesis excellence in AI-driven mud loss prediction with NISOC collaboration
๐Ÿ“Œ Acknowledged during military service project with RIPI for developing ANN-based well log models
๐Ÿ… Published in high-impact journals such as Energy, Geoenergy Science and Engineering, and JRMGE
โœ๏ธ Co-author of multiple peer-reviewed papers and under-review articles across petroleum engineering disciplines
๐Ÿ”ฌ Worked alongside top researchers including Dr. Ostadhassan, Dr. Gao, and Dr. Hemmati-Sarapardeh
๐Ÿ› ๏ธ Actively participated in multidisciplinary teams combining AI, geomechanics, and petrophysics
๐Ÿ“ข Regular presenter and contributor at petroleum conferences and AI-in-energy seminars.

Research Interests ๐Ÿ”ฌ

๐Ÿ“Œ AI & ML applications in petroleum engineering ๐Ÿง ๐Ÿ›ข๏ธ โ€“ including ANN, genetic algorithms, and deep learning
๐Ÿ“Š Mud loss zone prediction, formation permeability modeling, COโ‚‚ storage feasibility using ML
๐Ÿงช Experimental rock mechanics: nanoindentation, geomechanical upscaling, SCAL/RCAL testing
๐Ÿ“ˆ Petrophysical property estimation in carbonate and unconventional reservoirs
๐ŸŒ Reservoir simulation, LWD analysis, and smart data integration using Python, Petrel, COMSOL
๐Ÿ“– Notable studies include: elastic modulus upscaling, kerogen behavior under pyrolysis, RQI/FZI modeling
๐Ÿ”ฌ Interdisciplinary projects bridging data science with geoscience and reservoir engineering
๐Ÿค Collaboration with academic and industry leaders to develop practical, AI-driven solutions for energy challenges.

Publicationsย 
  • Elastic Properties of Anisotropic Rocks Using an Stepwise Loading Framework in a True Triaxial Testing Apparatus

    Geoenergy Science and Engineering
    2025-04 |ย Journal article
    CONTRIBUTORS:ย Farshad Sadeghpour;ย Hem Bahadur Motra;ย Chinmay Sethi;ย Sandra Wind;ย Bodhisatwa Hazra;ย Ghasem Aghli;ย Mehdi Ostadhassan
  • Storage Efficiency Prediction for Feasibility Assessment of Underground CO2 Storage: Novel Machine Learning Approaches

    Energy
    2025-04 |ย Journal article
    CONTRIBUTORS:ย Farshad Sadeghpour
  • A new petrophysical-mathematical approach to estimate RQI and FZI parameters in carbonate reservoirs

    Journal of Petroleum Exploration and Production Technology
    2025-03 |ย Journal article
    CONTRIBUTORS:ย Farshad Sadeghpour;ย Kamran Jahangiri;ย Javad Honarmand
  • Effect of stress on fracture development in the Asmari reservoir in the Zagros Thrust Belt

    Journal of Rock Mechanics and Geotechnical Engineering
    2024-11 |ย Journal article
    CONTRIBUTORS:ย Ghasem Aghli;ย Babak Aminshahidy;ย Hem Bahadur Motra;ย Ardavan Darkhal;ย Farshad Sadeghpour;ย Mehdi Ostadhassan
  • Comparison of geomechanical upscaling methods for prediction of elastic modulus of heterogeneous media

    Geoenergy Science and Engineering
    2024-08 |ย Journal article
    CONTRIBUTORS:ย Farshad Sadeghpour;ย Ardavan Darkhal;ย Yifei Gao;ย Hem B. Motra;ย Ghasem Aghli;ย Mehdi Ostadhassan

Yuanming Zhang | Intelligent data processing and analysis | Best Researcher Award

Dr. Yuanming Zhang | Intelligent data processing and analysis | Best Researcher Award

Yuanming Zhang is an Associate Professor at the College of Computer Science and Technology, Zhejiang University of Technology, Hangzhou, China. He earned his Ph.D. in Information Science from Utsunomiya University, Japan, in 2010. His research focuses on data processing, graph neural networks, knowledge graphs, prognostics, health management, and condition monitoring. With expertise in deep learning and artificial intelligence, he has contributed significantly to neural network advancements. His work integrates cutting-edge technologies for intelligent data analysis and predictive maintenance. ๐Ÿ“Š๐Ÿง ๐Ÿ”

Profile

Education ๐ŸŽ“

Yuanming Zhang obtained his Ph.D. in Information Science from Utsunomiya University, Japan, in 2010. His academic journey emphasized computational intelligence, machine learning, and advanced data analytics. He developed expertise in deep learning models, including convolutional and graph neural networks. His education laid a strong foundation for interdisciplinary research, integrating artificial intelligence with real-world applications. ๐Ÿ“š๐Ÿง‘โ€๐ŸŽ“๐Ÿ“ˆ

Experience ๐Ÿ‘จโ€๐Ÿซ

Yuanming Zhang has been an Associate Professor at Zhejiang University of Technology since completing his Ph.D. in 2010. His professional journey spans over a decade in academia, focusing on AI, neural networks, and knowledge graphs. He has supervised research projects, collaborated on industry applications, and contributed to advancements in predictive analytics and condition monitoring. His expertise extends to teaching, mentoring, and interdisciplinary AI applications. ๐Ÿซ๐Ÿค–๐Ÿ“ก

Research Interests ๐Ÿ”ฌ

Yuanming Zhang specializes in deep learning, attention mechanisms, graph neural networks, and AI-driven predictive analytics. His research explores neural architectures for data processing, knowledge representation, and condition monitoring. His expertise spans convolutional networks, LSTMs, GRUs, and deep belief networks. His work contributes to advancements in AI-driven diagnostics, intelligent systems, and real-time health monitoring applications. ๐Ÿง ๐Ÿ“Š๐Ÿ–ฅ๏ธ

Awards & Recognitions ๐Ÿ…

Yuanming Zhang has received recognition for his contributions to AI, machine learning, and data analytics. His work in deep learning and knowledge graphs has earned him accolades from research institutions and conferences. His papers in neural networks and predictive maintenance have been highly cited, solidifying his impact in the field. His research excellence has been acknowledged through grants and academic distinctions. ๐ŸŽ–๏ธ๐Ÿ“œ๐Ÿ”ฌ

Publicationsย 

 

Chunyu Liu | Cognitive Computing | Best Researcher Award

Dr. Chunyu Liu | Cognitive Computing | Best Researcher Award

Chunyu Liu is a Lecturer at North China Electric Power University, specializing in machine learning, neural decoding, and visual attention. ๐Ÿ“š She earned her B.S. in Mathematics and Applied Mathematics from Henan Normal University, an M.S. in Applied Mathematics from Northwest A&F University, and a Ph.D. in Computer Application Technology from Beijing Normal University. ๐ŸŽ“ She completed postdoctoral training at Peking University. ๐Ÿ”ฌ Her research integrates AI methodologies with cognitive neuroscience, focusing on neural encoding, decoding, and attention mechanisms. ๐Ÿง  She has published over 10 research papers, including six SCI-indexed publications as the first author. ๐Ÿ“ Her work aims to bridge artificial intelligence with human cognitive function understanding, contributing significantly to computational neuroscience. ๐ŸŒ Liu has also been involved in several major research projects, furthering advancements in neural signal analysis and cognitive computing. ๐Ÿš€

Profile

Education ๐ŸŽ“

Chunyu Liu holds a strong academic background in mathematics and computational sciences. She obtained her B.S. degree in Mathematics and Applied Mathematics from Henan Normal University. โž• She pursued her M.S. in Applied Mathematics at Northwest A&F University, where she deepened her expertise in mathematical modeling. ๐Ÿ”ข Continuing her academic journey, she earned a Ph.D. in Computer Application Technology from Beijing Normal University. ๐Ÿ–ฅ๏ธ Her doctoral research explored advanced AI techniques applied to neural decoding and cognitive processing. ๐Ÿง  To further refine her skills, she completed postdoctoral training at Peking University, focusing on integrating artificial intelligence with neural mechanisms. ๐Ÿ”ฌ Her academic pathway reflects a multidisciplinary approach, merging mathematics, computer science, and cognitive neuroscience to address complex challenges in brain science and AI. ๐Ÿ“Š Liuโ€™s education laid the foundation for her contributions to machine learning, visual attention studies, and neural encoding research.

Experience ๐Ÿ‘จโ€๐Ÿซ

Dr. Chunyu Liu is currently a Lecturer at North China Electric Power University, where she teaches and conducts research in cognitive computing and machine learning. ๐ŸŽ“ She has led and collaborated on multiple projects related to neural encoding and decoding, investigating how the brain processes object recognition, emotions, and attention. ๐Ÿง  Prior to her current role, she completed postdoctoral research at Peking University, where she worked on advanced AI-driven models for neural signal analysis. ๐Ÿ” Over the years, Liu has gained extensive experience in analyzing multimodal neural signals, including magnetoencephalography (MEG) and functional MRI (fMRI). ๐Ÿ“ก She has also served as a reviewer for esteemed scientific journals and collaborated with interdisciplinary research teams on AI and brain science projects. ๐Ÿ”ฌ Her expertise extends to both academia and industry, where she has contributed to the development of novel computational models for decoding brain activity. ๐Ÿš€

Research Interests ๐Ÿ”ฌ

Dr. Chunyu Liu’s research integrates artificial intelligence and brain science to understand cognitive functions through neural decoding. ๐Ÿง  She employs multi-modal neural signals such as magnetoencephalography (MEG) and functional magnetic resonance imaging (fMRI) to analyze brain activity. ๐Ÿ“ก Her work explores neural encoding and decoding, focusing on object recognition, emotion processing, and multiple-object attention. ๐ŸŽฏ She develops AI-based models to extract human brain features and gain insights into cognitive mechanisms. ๐Ÿค– By integrating psychological experimental paradigms with AI, Liu aims to advance computational neuroscience. ๐Ÿ† Her research also inspires the development of new AI theories and algorithms based on principles of brain function. ๐Ÿ“Š She has led major projects in cognitive computing, contributing significantly to both theoretical advancements and practical applications in neural signal processing. ๐Ÿš€ Through her work, she bridges the gap between human cognition and artificial intelligence, driving innovations in brain-computer interface research. ๐Ÿ…

 

Awards & Recognitions ๐Ÿ…

Dr. Chunyu Liu has received recognition for her outstanding contributions to cognitive computing and AI-driven neuroscience research. ๐Ÿ… She has been nominated for the prestigious International Cognitive Scientist Award for her pioneering work in neural decoding and visual attention mechanisms. ๐ŸŽ–๏ธ Liu’s research publications have been featured in high-impact journals, earning her accolades from the scientific community. ๐Ÿ“œ Her first-author papers in IEEE Transactions on Neural Systems and Rehabilitation Engineering, Science China Life Sciences, and IEEE Journal of Biomedical and Health Informatics have been widely cited. ๐Ÿ“ She has also been honored with research grants and funding for AI-driven cognitive studies. ๐Ÿ”ฌ Her innovative work in decoding brain signals has been recognized in international AI and neuroscience conferences. ๐ŸŒ Liu’s academic excellence and contributions continue to shape the field of computational neuroscience and machine learning applications in cognitive science. ๐Ÿš€

Publications ๐Ÿ“š

Mudassar Raza | Machine Learning | Best Researcher Award

Prof. Mudassar Raza | Machine Learning | Best Researcher Award

Prof. Dr. Mudassar Raza is a leading AI researcher and academician, serving as a Professor at Namal University, Mianwali, Pakistan. He is a Senior IEEE Member, Chair Publications of IEEE Islamabad Section, and an Academic Editor for PLOS ONE. With 20+ years of teaching and research experience, he has worked at HITEC University Taxila and COMSATS University Islamabad. His research spans AI, deep learning, image processing, and cybersecurity. He has published 135+ research papers with a cumulative impact factor of 215+, 6066+ citations, an H-index of 44, and an I-10 index of 93. He was listed in Elsevierโ€™s Worldโ€™s Top 2% Scientists (2023) and ranked #11 in Computer Science in Pakistan. Dr. Raza has supervised 3 PhDs, co-supervising 6 more, and mentored 100+ undergraduate R&D projects. He actively contributes to academia, industry collaborations, and curriculum development while serving as a reviewer for prestigious journals. ๐ŸŒ๐Ÿ“–

Profile

Education ๐ŸŽ“

  • Ph.D. in Control Science & Engineering (2014-2017) โ€“ University of Science & Technology of China (USTC), China ๐Ÿ‡จ๐Ÿ‡ณ
    • Specialization: Pattern Recognition & Intelligent Systems
  • MS (Computer Science) (2009-2010) โ€“ Iqra University, Islamabad, Pakistan ๐Ÿ‡ต๐Ÿ‡ฐ
    • CGPA: 3.64 | Specialization: Image Processing
  • MCS (Master of Computer Science) (2004-2006) โ€“ COMSATS Institute of Information Technology, Pakistan
    • CGPA: 3.24 | 80% Marks
  • BCS (Bachelor in Computer Science) (1999-2003) โ€“ Punjab University, Lahore, Pakistan
    • CGPA: 3.28 | 64.25% Marks
  • Higher Secondary (Pre-Engineering) โ€“ Islamabad College for Boys
  • Matriculation (Science) โ€“ Islamabad College for Boys
    Dr. Razaโ€™s academic journey is marked by top-tier universities and a strong focus on AI, pattern recognition, and cybersecurity. ๐ŸŽ“๐Ÿ“š

Experience ๐Ÿ‘จโ€๐Ÿซ

  • Professor (2024-Present) โ€“ Namal University, Mianwali
    • Teaching AI, Cybersecurity, and Research Supervision
  • Associate Professor/Head AI & Cybersecurity Program (2023-2024) โ€“ HITEC University, Taxila
    • Led AI & Cybersecurity programs, supervised PhDs, and organized industry-academic collaborations
  • Associate Professor (2023) โ€“ COMSATS University, Islamabad
  • Assistant Professor (2012-2023) โ€“ COMSATS University, Islamabad
  • Lecturer (2008-2012) โ€“ COMSATS University, Islamabad
  • Research Associate (2006-2008) โ€“ COMSATS University, Islamabad
    Dr. Raza has 20+ years of experience in academia, R&D, and industry collaborations, contributing significantly to AI, deep learning, and cybersecurity. ๐Ÿซ๐Ÿ“Š

Research Interests ๐Ÿ”ฌ

Prof. Dr. Mudassar Razaโ€™s research revolves around Artificial Intelligence, Deep Learning, Computer Vision, Image Processing, Cybersecurity, and Parallel Programming. His work includes pattern recognition, intelligent systems, visual robotics, and AI-driven cybersecurity solutions. With 135+ international publications, he has significantly contributed to AIโ€™s real-world applications. His research impact includes 6066+ citations, an H-index of 44, and an I-10 index of 93. He leads multiple AI research groups, supervises PhD/MS students, and actively collaborates with industry and academia. His work is frequently cited, placing him among the top AI researchers globally. As an IEEE Senior Member and a PLOS ONE Academic Editor, he is a key figure in AI-driven innovations and technology advancements. ๐Ÿง ๐Ÿ“Š

  • National Youth Award 2008 by the Prime Minister of Pakistan for contributions to Computer Science ๐ŸŽ–๏ธ
  • Listed in Worldโ€™s Top 2% Scientists (2023) by Elsevier ๐ŸŒ
  • Ranked #11 in Computer Science in Pakistan by AD Scientific Index ๐Ÿ“Š
  • Senior IEEE Member (ID: 91289691) ๐Ÿ”ฌ
  • HEC Approved PhD Supervisor ๐ŸŽ“
  • Best Research Productivity Awardee at COMSATS University multiple times ๐Ÿ†
  • Recognized by ResearchGate with a Research Interest Score higher than 97% of members ๐Ÿ“ˆ
  • Reviewer & Editor for prestigious journals including PLOS ONE ๐Ÿ“
    Dr. Raza has received numerous accolades for his contributions to AI, research excellence, and academia. ๐ŸŒŸ

Publications ๐Ÿ“š

Yangyang Huang | Object detection | Excellence in Innovation

Dr. Yangyang Huang | Object detection | Excellence in Innovation

Yangyang Huang is a Ph.D. student at the School of Computer Science and Engineering, South China University of Technology (SCUT), Guangzhou, China. His research focuses on artificial intelligence, computer vision, and large models. He previously graduated from Wuhan University, where he developed a strong foundation in AI and computational sciences. Yangyang has contributed to significant research projects, including the Collaborative Innovation Major Project for Industry, University, and Research. His work, “LVMUM: Toward Open-World Object Detection with Large Vision Models and Unsupervised Modeling,” has gained notable citations. Passionate about AI advancements, he actively participates in academic collaborations and professional memberships, contributing to AI-driven innovations.

Profile

Education ๐ŸŽ“

Yangyang Huang completed his undergraduate studies at Wuhan University, where he gained expertise in artificial intelligence and computational sciences. Currently, he is pursuing his Ph.D. at the School of Computer Science and Engineering, South China University of Technology (SCUT), Guangzhou, China. His doctoral research focuses on large vision models, unsupervised modeling, and object detection. He has been involved in cutting-edge AI research, particularly in deep learning and computer vision. His academic journey has been marked by significant contributions to AI-driven innovations, leading to multiple publications in high-impact journals. Yangyang actively collaborates with researchers in academia and industry, further strengthening his expertise in AI and machine learning applications.

Experience ๐Ÿ‘จโ€๐Ÿซ

Yangyang Huang has extensive research experience in artificial intelligence, computer vision, and large models. As a Ph.D. student at SCUT, he has been involved in the Collaborative Innovation Major Project for Industry, University, and Research. His research contributions include developing large vision models for open-world object detection, leading to highly cited publications. Yangyang has also participated in consultancy and industry projects, applying AI techniques to real-world problems. He has authored several journal articles indexed in SCI and Scopus and has contributed to the academic community through editorial roles. His collaborative research efforts have led to impactful AI advancements, making him a rising scholar in the field of AI and machine learning.

Research Interests ๐Ÿ”ฌ

Yangyang Huang’s research primarily focuses on artificial intelligence, computer vision, and large models. His recent work, “LVMUM: Toward Open-World Object Detection with Large Vision Models and Unsupervised Modeling,” explores novel AI techniques for enhancing object detection capabilities. He specializes in deep learning, unsupervised learning, and AI-driven automation. His research interests include developing robust AI models for real-world applications, advancing AI ethics, and improving AI interpretability. Yangyang actively collaborates with academia and industry to bridge the gap between theoretical AI research and practical applications. His contributions extend to consultancy projects, AI innovation, and scholarly publications, making him a key contributor to AI advancements. ๐Ÿš€

Awards & Recognitions ๐Ÿ…

Yangyang Huang has received recognition for his outstanding contributions to artificial intelligence and computer vision. His research on large vision models and open-world object detection has been widely cited, earning him academic recognition. He has been nominated for prestigious research awards, including Best Researcher Award and Excellence in Research. His work in AI has been acknowledged through various grants and funding for industry-academic collaborative projects. Yangyang’s active participation in international conferences has led to best paper nominations and accolades for his innovative contributions. He is a member of esteemed professional organizations, further cementing his reputation as an emerging AI researcher.

Publications ๐Ÿ“š