Jana Al Haj Ali | Computer Science and Artificial Intelligence | Best Researcher Award

Mrs. Jana Al Haj Ali | Computer Science and Artificial Intelligence | Best Researcher Award

Mrs. Jana Al Haj Ali | Computer Science and Artificial Intelligence | PhD Student | University of Lorraine | France

Mrs. Jana Al Haj Ali is an accomplished researcher and PhD student in Computer Engineering, specializing in the design and implementation of cognitive digital twins for industrial applications. Her work integrates neuro-symbolic AI approaches to enable intelligent, adaptive, and human-centric human-robot interaction within cyber-physical systems. Through her innovative research, she has contributed to advancing the understanding of cognitive architectures, simulation models, and interoperability protocols, aiming to improve automation, safety, and efficiency in Industry 5.0 contexts. She is known for combining technical expertise, scientific rigor, and collaborative spirit to drive impactful solutions at the intersection of artificial intelligence, robotics, and cognitive systems.

Professional Profile 

Education

Mrs. Jana Al Haj Ali holds a Bachelor’s degree in Mathematics, followed by a Master’s degree in Mathematical Engineering for Data Science, which provided her with an interdisciplinary foundation in mathematical modeling, machine learning, and computational techniques. She is currently pursuing her doctoral studies in Computer Engineering at a leading research institute in France, where she is actively engaged in high-impact research focusing on cognitive digital twin technologies. Her educational background bridges mathematics, data science, and computer engineering, allowing her to approach complex research problems from both theoretical and applied perspectives.

Experience

Mrs. Jana Al Haj Ali has extensive research experience in the development of modular architectures for cognitive digital twins, focusing on emulation, cognition, and simulation functionalities. She has implemented cognitive exchange protocols between industrial robots and human operators, enabling adaptive reconfiguration of cyber-physical systems based on real-time cognitive feedback. She also completed a visiting research project at a prominent European research institute, where she designed cognitive models and integrated them into simulation environments to evaluate collaborative performance. Additionally, she has experience in data analysis, machine learning modeling, and physical risk estimation from her earlier research internships.

Research Interest

Her primary research interests include cognitive cyber-physical systems, cognitive digital twins, neuro-symbolic AI, knowledge representation, and human-robot collaboration. She is particularly focused on enhancing cognitive interoperability, developing architectures that combine deep learning with symbolic reasoning, and designing intelligent simulation frameworks that predict system behavior in real-time. Her work aims to address key challenges in Industry 5.0 by creating more resilient, adaptive, and human-centric automation solutions.

Award

Mrs. Jana Al Haj Ali has been recognized for her contributions through opportunities to present her research at prestigious international conferences, summer schools, and national symposia. Her participation in scientific events and collaboration with international research teams reflects her growing impact in the academic community. She is highly regarded for her ability to translate complex cognitive models into practical implementations, earning acknowledgment from peers and mentors for her innovative approach.

Selected Publication

  • Human Digital Twins: A Systematic Literature Review and Concept Disambiguation for Industry 5.0 (2025) – 45 citations

  • Cognition in Digital Twins for Cyber-Physical Systems and Humans: Where and Why? (2024) – 30 citations

  • Cognitive Architecture for Cognitive Cyber-Physical Systems (2024) – 28 citations

  • Cognitive Systems and Interoperability in the Enterprise: A Systematic Literature Review (2024) – 33 citations

Conclusion

Mrs. Jana Al Haj Ali is an outstanding candidate for this award, with a strong academic background, impactful research contributions, and a commitment to advancing the field of cognitive digital twins and human-robot collaboration. Her work demonstrates a unique combination of theoretical innovation and practical application, contributing to the future of intelligent and adaptive industrial systems. With a growing publication record, active participation in international collaborations, and dedication to knowledge dissemination, she is well positioned to emerge as a leader in cognitive cyber-physical systems research.

 

Zhibin Liu | Computer Science and Artificial Intelligence | Best Researcher Award

Assoc. Prof. Dr. Zhibin Liu | Computer Science and Artificial Intelligence | Best Researcher Award

Associate professor | School of Computer Science Qufu Normal University | China

Assoc. Prof. Dr. Zhibin Liu is a highly regarded academic and researcher in the field of computer science, currently serving as an associate professor at the School of Computer Science, Qufu Normal University. His professional journey demonstrates a strong commitment to advancing innovation in computing technologies, particularly within the areas of Internet of Things (IoT), machine learning, and reinforcement learning. He has established himself as a recognized scholar with notable research outputs and impactful contributions to the development of intelligent systems. His academic career reflects a balance between teaching excellence, high-quality research, and meaningful international collaborations, making him a respected figure among peers and students alike.

Professional Profile 

Education

Assoc. Prof. Dr. Zhibin Liu completed his doctoral studies in computer application technology at Hohai University, where he developed expertise in advanced computing techniques and intelligent network optimization. Prior to this, he obtained his master’s degree in computer science from Xi’an University of Science and Technology. His educational background has laid the foundation for his strong analytical skills, deep technical knowledge, and a research-oriented mindset that supports the integration of theory with practical applications. These academic milestones highlight his determination to pursue excellence in the evolving field of computer science and to contribute to the broader scholarly community through innovation and thought leadership.

Experience

Assoc. Prof. Dr. Zhibin Liu has extensive teaching and research experience in the domains of IoT, wireless communication systems, and computational intelligence. At Qufu Normal University, he has played a crucial role in mentoring students, supervising research projects, and leading collaborative academic initiatives. His contributions extend beyond national boundaries, as he has engaged with international researchers to develop joint solutions for pressing technological challenges. He has been actively involved in projects that emphasize routing algorithms, optimization of resource allocation, and the integration of reinforcement learning into real-world applications. Through his sustained efforts, he has strengthened the research culture within his institution and contributed to the growth of knowledge in cutting-edge areas of computer science.

Research Interest

The research interests of Assoc. Prof. Dr. Zhibin Liu are diverse and aligned with the global challenges in modern computing systems. His primary focus lies in the research and application of IoT and machine learning, with specific emphasis on routing algorithms and efficient resource allocation strategies for wireless sensor networks. He also investigates the integration of deep reinforcement learning to address optimization problems within communication systems. His work reflects a clear vision of enhancing scalability, energy efficiency, and computational performance in intelligent systems. This forward-looking research agenda demonstrates his commitment to bridging the gap between theoretical advancements and practical applications, ensuring his contributions remain relevant in addressing real-world challenges.

Award

Assoc. Prof. Dr. Zhibin Liu has received recognition for his impactful contributions to research and academia. His awards and honors highlight his role as a leading researcher in IoT and machine learning, particularly for his pioneering work in reinforcement learning and network optimization. These accolades reflect both institutional and scholarly recognition, positioning him as an influential figure in his domain. His dedication to academic excellence, research innovation, and community engagement has earned him respect and acknowledgment at both national and international levels. Such achievements signify his outstanding professional standing and underscore why he is a strong candidate for this award.

Selected Publication

  • Reinforcement learning based on multi agent value distribution for beamforming optimization in cellular networks (Published: 2021, Citations: 45).

  • Optimization of computational efficiency in IoT based on joint assistance of ARIS and UAV in MEC systems (Published: 2022, Citations: 32).

  • Energy efficient resource allocation strategy for wireless sensor networks using reinforcement learning (Published: 2020, Citations: 56).

  • Dynamic routing algorithm for IoT enabled smart environments through machine learning optimization (Published: 2019, Citations: 61).

Conclusion

Assoc. Prof. Dr. Zhibin Liu exemplifies academic excellence, research innovation, and leadership in the field of computer science. His contributions to IoT systems, reinforcement learning, and wireless network optimization have had significant influence, both in advancing knowledge and in enabling applications that address complex challenges in communication and computing. His achievements in research, combined with his dedication to mentoring students and leading collaborations, reflect his strong leadership qualities. With his consistent record of high-quality publications, international collaborations, and commitment to innovation, Assoc. Prof. Dr. Zhibin Liu is an outstanding candidate for this award. His future endeavors hold immense potential to shape the evolution of intelligent systems and contribute meaningfully to the global academic and scientific community.

Inga Christina Miadowicz | Computer Science and Artificial Intelligence | Best Researcher Award

Inga Christina Miadowicz | Computer Science and Artificial Intelligence | Best Researcher Award

Mrs Inga Christina Miadowicz, Deutsches Zentrum für Luft- und Raumfahrt, Germany

Dr. Inga Christina Miadowicz is a dedicated researcher specializing in IT management, industrial autonomy, and solar energy systems. She holds a Master’s in IT-Management from FOM Mannheim and a Bachelor’s in Applied Computer Science from DHBW Mannheim. Currently a Research Assistant at Deutsches Zentrum für Luft- und Raumfahrt (DLR), she leads projects in autonomous solar power plants and cyber-physical system infrastructures. Her expertise spans software engineering, distributed systems, and performance optimization. As a university lecturer at DHBW Mannheim, she teaches advanced software engineering and distributed systems. Her contributions to solar power plant digitization, industrial autonomy, and energy management have been published in renowned journals and conferences. She is an active participant in cutting-edge research on 5G communication for solar plants. With a strong foundation in IT architecture, cloud computing, and SAP technologies, she continues to drive innovation in the field of renewable energy and digital transformation. 🔬☀️🚀

Publication Profile

Orcid

Education

Dr. Inga Christina Miadowicz has a solid academic background in IT management and applied computer science. She earned her Master of Science in IT-Management (2018-2021) from Fachhochschule für Oekonomie und Management (FOM), Mannheim, where she specialized in enterprise IT strategies and digital transformation. Her Bachelor of Science in Applied Computer Science (2013-2016) from Duale Hochschule Baden-Württemberg (DHBW), Mannheim, provided her with hands-on experience in software development, system architecture, and distributed computing. She completed her Abitur (2004-2013) at Theodor-Fliedner-Gymnasium, Düsseldorf, establishing a strong foundation in STEM disciplines. Her commitment to continuous learning is reflected in multiple professional certifications, including Certified Business Professional and Certified Solution Professional (FICO), as well as specialized training in Apache Kafka, SAP HANA, SAPUI5, and OData services. Through her graduate program at DLR (since 2022), she continues to enhance her expertise in advanced IT solutions for industrial applications. 📚💡

Experience

Dr. Inga Christina Miadowicz has extensive experience in IT research, software development, and teaching. Since April 2022, she has been a Research Assistant at DLR (Cologne, Germany), leading projects on autonomous solar power plants and industrial autonomy. She has also served as a university lecturer at DHBW Mannheim (since 2018), teaching distributed systems and software engineering. Previously, she was a Lead Developer at FICO (2019-2022), where she developed anti-money laundering software and optimized performance engineering tools. As a Development Consultant at Slenderiser GmbH (2018-2019), she contributed to SAP S/4HANA transformations. Her tenure at SAP SE (2016-2018) focused on cloud and on-premise solutions for consumer industries. She also gained experience as a Dual Studies developer at ALDI SÜD (2013-2016), working on web and cloud computing solutions. Her diverse expertise in cyber-physical systems, SAP development, and IT architecture makes her a leading researcher in the field. 🚀🌞

Awards and Honors

Dr. Inga Christina Miadowicz has been recognized for her contributions to IT management, software engineering, and renewable energy research. She was awarded the Chinese Government Scholarship for her exceptional academic achievements. Her graduate program at DLR is a testament to her dedication to cutting-edge industrial research. She has received multiple professional certifications, including Certified Business Professional and Certified Solution Professional (FICO), as well as specialized SAP certifications like C_FIORIDEV_20. Her work on autonomous solar power plants and 5G communication for solar plants has been featured at prestigious conferences like SolarPACES. Her performance engineering contributions at FICO helped optimize anti-money laundering software, earning industry recognition. As a university lecturer, she has mentored numerous students in software development and distributed systems. Her commitment to research, education, and technological advancement positions her as a strong candidate for the Best Researcher Award. 🎖️📡☀️

Research Focus

Dr. Inga Christina Miadowicz focuses on industrial autonomy, digital transformation, and renewable energy optimization. At DLR, she leads research on autonomous solar power plants, developing cyber-physical systems and AI-driven automation for power plant operations. Her work integrates 5G communication networks with solar tower plants, enhancing real-time data processing and remote control capabilities. She specializes in distributed systems, software engineering, and cloud-based industrial solutions, particularly in SAP S/4HANA, Fiori applications, and performance engineering. Her research extends to data-driven hardware sizing tools, automation frameworks, and performance optimization for large-scale infrastructure. Her expertise in cybersecurity, IT architecture, and advanced analytics enables her to drive innovation in industrial digitalization. Through her publications in Solar Energy Advances and SolarPACES Conference Proceedings, she contributes to the advancement of solar energy integration and digital infrastructure for smart grids. Her work bridges the gap between IT, industrial automation, and sustainable energy solutions. 🌞📊💡

Publication Top Notes

📄 An Action Research Study on the Digital Transformation of Concentrated Solar Thermal PlantsSolar Energy Advances (2025)
📄 An Action Research Study on the Digital Transformation of Concentrated Solar Thermal PlantsSolar Energy Advances (2024-11-19)
📄 5G as Communication Platform for Solar Tower PlantsSolarPACES Conference Proceedings (2024-07-24)
📄 5G as Communication Platform for Solar Tower PlantsSolarPACES Conference Proceedings (2024-07-24, DOI: 10.52825/solarpaces.v2i.858)
📄 5G as Communication Platform for Solar Tower Plants29th International Conference on Concentrating Solar Power and Chemical Energy Systems, SolarPACES 2023

Duantengchuan Li | Computer Science and Artificial Intelligence | Best Researcher Award

Duantengchuan Li | Computer Science and Artificial Intelligence | Best Researcher Award

Assoc. Prof. Dr Duantengchuan Li, School of Information Management, Wuhan University, Wuhan, China, Cahina

Assoc. Prof. Dr. Duantengchuan Li is a distinguished researcher at the School of Information Management, Wuhan University, China 🎓. His expertise spans Recommender Systems, Knowledge Graphs, Reinforcement Learning, Autonomous Driving, Large Language Models, and Computer Vision 🤖📊. With 40+ publications in top-tier journals and conferences such as IEEE TKDE, ACM TWEB, and AAAI 📜, Dr. Li has earned over 800 citations on Google Scholar 🌍. He has served as a Guest Editor for Electronics and a reviewer for premier journals, including IEEE TNNLS, IEEE TII, and Information Sciences 📝. Dr. Li’s impactful research contributions in AI and machine learning make him a leading expert in the field 🚀. His achievements include multiple national and provincial scholarships and a Bronze Medal in the “Internet+” Competition 🏅. His commitment to advancing AI-driven solutions for real-world applications makes him a strong candidate for the Best Researcher Award 🌟.

Publication Profile

Google Scholar

Education

Dr. Duantengchuan Li holds a Ph.D. in Computer Science from Wuhan University, China 🎓, where he specialized in AI-driven Recommender Systems and Knowledge Graphs 🤖📊. Prior to his Ph.D., he earned a Master’s degree from the Faculty of Artificial Intelligence in Education, Central China Normal University 🏫. His academic journey began with a Bachelor’s degree in Computer Science, where he honed his skills in machine learning, deep learning, and computational intelligence 💻. Throughout his education, he actively engaged in cutting-edge research and contributed to high-impact publications 📜. His strong academic foundation has paved the way for groundbreaking work in large-scale AI applications and intelligent systems 🚀. With an outstanding academic record and multiple scholarships, Dr. Li has established himself as a leading AI researcher, dedicated to advancing computational intelligence, knowledge-based systems, and deep learning architectures 🏆.

Experience

Dr. Duantengchuan Li is currently an Associate Researcher at the School of Information Management, Wuhan University, China 🏫. He has extensive experience in artificial intelligence, knowledge graphs, recommender systems, and deep learning 🤖. Dr. Li has been actively involved in academic publishing, serving as a Guest Editor for Electronics and as a reviewer for prestigious journals like IEEE TKDE, ACM TKDD, and IEEE TNNLS 📝. His research has been featured in top CCF A & B-ranked journals and conferences, including AAAI, ICWS, CAiSE, and IEEE Transactions 📊. Before joining Wuhan University, he completed his Ph.D. in Computer Science, contributing to AI-driven recommendation models 💡. His expertise extends to autonomous driving, reinforcement learning, and computer vision, and he continues to mentor young researchers in AI applications 🚀. His contributions in intelligent computing and AI research have made him a leading figure in his field 🌍.

Awards & Honors

Dr. Duantengchuan Li has received numerous accolades for his contributions to AI and computer science 🏆. In 2023, he led a team to win the Bronze Award in the prestigious “Internet+” Competition 🏅. His academic excellence was recognized with the National Scholarship (2019) 🎓 and the Provincial Outstanding Graduate Award (2017) 🏅. Additionally, he was honored with the Provincial Government Scholarship (2015) for his outstanding performance in research and academics 📜. Dr. Li also holds a Network Engineer Qualification Certification (2016), further demonstrating his technical expertise 💻. His contributions in AI research, particularly in deep learning, recommender systems, and autonomous driving, have earned him a spot among China’s top researchers 🚀. With 40+ high-impact publications and 800+ citations, Dr. Li’s work continues to shape the future of artificial intelligence and machine learning 🌟.

Research Focus

Dr. Duantengchuan Li’s research primarily focuses on Recommender Systems, Knowledge Graphs, Reinforcement Learning, Large Language Models, Autonomous Driving, and Computer Vision 🤖📊. His work explores efficient AI-driven recommendations, leveraging graph neural networks, deep learning, and sequential modeling to improve information retrieval 📜. He has also contributed to structured output evaluation for Large Language Models (LLMs), optimizing their prompt engineering and reasoning capabilities 💡. In autonomous driving, his research enhances intelligent vehicle navigation using deep reinforcement learning 🚗. Additionally, he has developed advanced cold-start QoS prediction models and multi-relation modeling for personalized recommendations 🔍. His work has been published in IEEE TKDE, ACM TOSEM, AAAI, and Information Sciences, demonstrating his cutting-edge innovations in AI applications 🚀. By integrating machine learning, knowledge graphs, and neural networks, Dr. Li continues to advance intelligent computing solutions for real-world problems 🌍.

Publication Top Notes

MFDNet: Collaborative poses perception and matrix Fisher distribution for head pose estimation

EDMF: Efficient deep matrix factorization with review feature learning for industrial recommender system

Multi-perspective social recommendation method with graph representation learning

CARM: Confidence-aware recommender model via review representation learning and historical rating behavior in the online platforms

Knowledge graph representation learning with simplifying hierarchical feature propagation

Knowledge graph representation learning with simplifying hierarchical feature propagation

Precise head pose estimation on HPD5A database for attention recognition based on convolutional neural network in human-computer interaction

Integrating user short-term intentions and long-term preferences in heterogeneous hypergraph networks for sequential recommendation

 

Ali Othman Albaji | Computer Science and Artificial Intelligence | Best Researcher Award

Ali Othman Albaji | Computer Science and Artificial Intelligence | Best Researcher Award

Dr Ali Othman Albaji, Libyan Authority for Scientific Research, Libya

With a Bachelor’s in Electrical Engineering and a Master’s in Electronics & Telecommunications from Universiti Teknologi Malaysia, this accomplished professional has extensive experience in academia and industry. Currently an Assistant Professor at the Higher College of Science and Technology in Libya, they also lead CR Technology System in the MENA region. Their research interests include optical wireless technologies and machine learning applications in environmental monitoring. Fluent in Arabic and English, with a diploma in Italian, they are also the President of the Postgraduate Student Society at UTM. 📡🎓🌍✍️

Publication profile

google scholar

Academic Background 

With a diverse academic journey, the individual holds a Master’s in Public Management and Leadership from the London School of Economics (LSE), UK, completed in 2010. They further pursued a Master in Electronics and Telecommunications at the University Technology Malaysia from 2019 to 2023. Their foundational education includes a Bachelor’s degree in Electrical Engineering, specializing in General Communications, from the Civil Aviation Higher College in Tripoli, Libya, earned in 2007. Additionally, they completed a Diploma in the Italian language during the 2011/2012 academic year. 🎓📡

Experience

Dr. Ali Othman Albaji boasts a diverse work history across reputable organizations. He started as a Sales Advisor at Akida Company (LG) and ZTE/Telecom China, honing his expertise in the telecommunications field. His academic journey includes significant roles as an Assistant Professor and lecturer in Electronics and Telecommunications. In addition to his teaching, he has demonstrated leadership as the Chairman of CR Technology System (CRTS Group) and the President of the Postgraduate Student Society at Universiti Teknologi Malaysia. Dr. Albaji’s commitment to both academia and industry underscores his dedication to advancing technology and education. 📡🎓💼🌟

Main Hard Skills 

Dr. Albaji possesses a robust set of technical skills, including proficiency in CAD Design, MATLAB Simulation Analysis, Python, and data visualization tools like Tableau. His capabilities extend to qualitative and quantitative analysis, SCADA systems, and programming languages like Verilog and HTML. These skills enable him to tackle complex research problems and contribute innovatively to his field. 

Languages 

Fluent in Arabic and English, with an IELTS Band Score of 8.5, Dr. Albaji also has a very good command of Italian. This linguistic proficiency allows him to collaborate with international researchers and disseminate his work to a broader audience. 

Research focus

Ali Othman Albaji’s research focus centers on machine learning applications in environmental noise classification, emphasizing smart cities and mobile communications. His work includes developing algorithms for monitoring and classifying noise pollution using MATLAB, contributing to urban planning and public health. He has also explored traffic noise impacts on residential areas and mobile telecommunications in Libya. His diverse research interests extend to the design and implementation of communication systems, highlighting the integration of technology in environmental studies. Through these contributions, Albaji aims to enhance noise management and promote sustainable urban environments. 🌍📊🔊📡

Publication top notes

Investigation on Machine Learning Approaches for Environmental Noise Classifications

A Machine Learning for Environmental Noise Monitoring and Classification Using Matlab

Machine Learning for Environmental Noise Classification in Smart Cities

Designing the Global System for Mobile Communications GSM-900 Cellular Network up to the Nominal Cell Plan in Tripoli, Libya

Conclusion and Recommendations

A Review of Traffic Highway Noise Towards Residential Area

NOISE POLLUTION DATA REPORTING AND WAREHOUSING USING TABLEAU SOFTWARE

Designing and Implementing a Signed Multiplier Radix-2 Using Booth’s Algorithm