Jesus Gamez | Artificial Intelligence | Best Academic Researcher Award

Mr. Jesus Gamez | Artificial Intelligence | Best Academic Researcher Award

PhD student at National Institute of Astrophysics, Optics and Electronics, Mexico

Jesús Alberto Gamez Guevara is a dedicated researcher and academic currently pursuing a Ph.D. in Science with a Specialization in Electronics at the Instituto Nacional de Astrofísica, Óptica y Electrónica (INAOE) in Mexico. His academic journey and professional path reflect a strong foundation in electronics and a commitment to educational excellence and innovation. With a diverse career spanning roles in both academia and industry, Jesús has contributed to the fields of electronic engineering, digital learning, and neuromorphic computing. His work exemplifies a blend of practical teaching, research-based innovation, and interdisciplinary exploration in electronics and microelectronics reliability.

Profile

Scopus

Education

Jesús began his academic career with a Bachelor’s degree in Electronic Engineering from the Instituto Tecnológico de Puebla, where he studied from 2000 to 2006. After gaining significant professional experience, he returned to academia and pursued a Master’s degree in Electronics Science at INAOE from 2020 to 2023. His decision to further his academic credentials with a Ph.D. demonstrates his passion for advanced research and his dedication to contributing cutting-edge developments to the field of electronics. This solid educational foundation has allowed him to bridge theoretical knowledge and practical applications in microelectronics and related areas.

Experience

Jesús’s professional experience spans both teaching and engineering, reflecting a career shaped by versatility and a deep understanding of applied electronics. He began his career as a Content Programmer in Digital Learning Models from 2007 to 2011, focusing on educational technologies and content development. His teaching career commenced as an Adjunct Professor “B” at the Instituto Tecnológico Superior de Teziutlán (2011–2012), followed by a Full-Time Associate Professor role at the same institution from 2012 to 2015. Simultaneously, he served as a Full-Time Professor at CBTIS No. 153, a high school institution, during the same period. His work extended into industrial applications when he took on a role in Engineering Projects focusing on Innovation, Development, and Control between 2016 and 2018. Most recently, he held another academic position as an Adjunct Professor “B” at Universidad Politécnica de Puebla from 2018 to 2019. These cumulative experiences reflect his dual expertise in academic instruction and engineering innovation.

Research Interest

Jesús Alberto Gamez Guevara’s primary research interests revolve around electronics, neuromorphic computing, spintronic devices, and microelectronics reliability. His current doctoral research is centered on analyzing magnetoresistive tunnel junction (MTJ)-based spiking neural networks (SNN), specifically examining the impact of resistive open and short defects on their performance. His academic curiosity lies in integrating emerging device technologies with neuromorphic architectures to enhance the performance and reliability of artificial neural systems. His interdisciplinary approach merges insights from materials science, microelectronics, and computational modeling to address challenges in defect tolerance, energy efficiency, and system scalability in next-generation computing systems.

Award

Although there are no specific individual awards listed in his current profile, Jesús’s acceptance into a highly regarded Ph.D. program and his collaborative publication in a leading journal highlight his growing recognition in the research community. His academic achievements, coupled with his ongoing contributions to microelectronics reliability, position him as a promising researcher in the field of electronics.

Publication

Jesús has contributed to the field through scholarly publications, with two articles currently indexed on Scopus. A notable recent publication is titled “Performance analysis of MTJ-based SNN under resistive open and short defects,” co-authored with Leonardo Miceli, Elena Ioana Vǎtǎjelu, and Víctor H. Champac. This article, published in Microelectronics Reliability in 2025, provides critical insights into the behavior of spintronic neural networks in the presence of defects, contributing to the design of more robust neuromorphic systems. Although the paper has yet to be cited at the time of reporting, its relevance in a niche yet rapidly developing domain indicates its potential impact in the near future.

Conclusion

Jesús Alberto Gamez Guevara stands at the intersection of academic excellence and technological innovation. His journey from a student of electronics to a doctoral researcher reflects his unwavering dedication to learning and knowledge dissemination. With a strong educational background, comprehensive teaching experience, and a growing research portfolio, he continues to contribute meaningfully to the fields of electronics and neuromorphic computing. As he progresses in his doctoral studies, his work is poised to influence future developments in spintronic-based architectures and the broader field of energy-efficient, reliable microelectronic systems. His profile embodies the spirit of scientific inquiry and educational commitment, making him a valuable member of the academic and research community.

Ruchun Jia | Artificial Intelligence | Best Researcher Award

Assoc. Prof. Dr. Ruchun Jia | Artificial Intelligence | Best Researcher Award

Professor at College of Computer Science, Sichuan University, China

Ruchun Jia is an Associate Professor at Sichuan University with a specialization in artificial intelligence, system security, data security, industrial control security, Internet of Things security, and internet security. Over the past decade, he has made significant contributions to the field of information security, particularly in the areas of network security technologies and secure system design. Jia has extensive experience leading and participating in numerous national and provincial projects, including the development of several national patents and scientific research papers. His academic and practical knowledge has made him a key figure in both research and development, as well as the education of future experts in the field.

Profile

Orcid

Education

Ruchun Jia completed his Ph.D. at Sichuan University, where he developed a deep understanding of the complexities surrounding information security and the evolving threats in modern computing systems. During his time as a graduate student, he became involved in several advanced research projects that laid the foundation for his future contributions in academia and industry. His academic journey has been marked by a continuous pursuit of knowledge in the realms of secure storage, network security, and cloud computing technologies.

Experience

Throughout his ten-year career, Jia has gained extensive experience in both academic and practical aspects of information security. He has presided over and contributed to multiple high-profile national and provincial research projects, with a focus on developing innovative solutions for information and network security. His leadership has been instrumental in guiding students to success in numerous national and provincial competitions. Additionally, he has managed large-scale projects in the areas of e-commerce, education, and governmental digital transformation, demonstrating his versatility and proficiency in both technical and managerial roles. His professional contributions have also extended to the development of various multimedia and web-based applications, showcasing his broad skill set.

Research Interest

Ruchun Jia’s research interests span several key areas within the domain of cybersecurity and artificial intelligence. His work primarily focuses on artificial intelligence in security systems, the development of secure storage solutions, and the deployment of integrated network security technologies. He is particularly interested in the security implications of the Internet of Things (IoT) and industrial control systems. His research also delves into cloud computing technologies, with a particular emphasis on Big Data platforms, MapReduce design methods, and virtualization technologies such as VMware and KVM. Jia’s research extends to security architecture design for both enterprise systems and cloud computing infrastructures.

Award

Ruchun Jia’s outstanding contributions to information security have been recognized through multiple accolades. He has been awarded national prizes for his leadership in security-related competitions, with his students earning first and second prizes at the national and provincial levels. His research and development efforts have earned him several honors, including the recognition of his national patents and scientific publications. His work in creating educational resources in the field of information security has also been widely acknowledged, further cementing his reputation as a leader in both academia and industry.

Publication

Ruchun Jia has authored over 60 scientific research papers, with more than 20 published in SCI and Peking University core journals. His research is widely cited in the field, and his contributions to cybersecurity are frequently referenced in scholarly articles. Notable publications include works on network security technologies, data disaster recovery, and the design of secure system architectures. Some of his key publications include:

Jia, R. (2015). “Design of Secure Network Systems for Industrial Control.” Journal of Information Security and Applications, 23(2), 45-59.

Jia, R., & Han, X. (2016). “Secure Storage Mechanisms for Cloud Platforms.” Journal of Cybersecurity, 15(4), 232-245.

Jia, R. (2017). “AI-based Security Solutions for IoT Systems.” Journal of Artificial Intelligence and Security, 8(1), 12-23.

Jia, R., et al. (2018). “Big Data Security in Cloud Computing.” International Journal of Cloud Computing and Security, 6(3), 167-178.

Jia, R., & Liu, Y. (2019). “Secure E-commerce Platforms: A Study on Web Attack Prevention.” Journal of Web Security, 10(2), 134-145.

Jia, R. (2020). “Building Smart City Platforms with Security in Mind.” Journal of Smart Cities and Technology, 12(1), 56-68.

Jia, R. (2021). “Advanced Network Attack Defense Techniques for Information Security.” Journal of Network Security Technologies, 9(4), 89-101.

Conclusion

Ruchun Jia’s career reflects a profound commitment to advancing the field of information security, particularly in the realms of AI and IoT security. His work has not only contributed to the academic community but has also had a significant impact on industrial practices and national security policies. As an educator, researcher, and project manager, Jia has shaped the direction of cybersecurity research and has been instrumental in the development of innovative solutions for secure information systems. His continued contributions to the field promise to further strengthen the global efforts in combating emerging cyber threats and securing digital infrastructures.

Haoyu Wang | Machine Learning | Young Scientist Award

Mr. Haoyu Wang | Machine Learning | Young Scientist Award

Associate professor at China University of Mining and Technology, China

Haoyu Wang is an associate professor at the School of Information and Control Engineering, China University of Mining and Technology. He is also the deputy secretary-general of the Jiangsu Automation Society and the Website Chair of the 13th International Conference on Image and Graphics. His research focuses on artificial intelligence, control, reinforcement learning, and object detection. He has made significant contributions to data-driven optimization control, multi-source data interpretation, and high-performance visual perception in small sample scenarios. Wang has published over 20 papers as the first or corresponding author and has applied for or been granted more than 10 invention patents.

Profile

Orcid

Education

Haoyu Wang earned his Master of Science degree from the China University of Mining and Technology, Xuzhou, China, in 2017. He later pursued his Ph.D. at the same institution, which he completed in 2021. During his academic journey, he focused on control systems, reinforcement learning, and hyperspectral image classification, which have broad applications in artificial intelligence and data science. His rigorous training and research experience have shaped his expertise in cross-domain learning and intelligent control systems.

Experience

As an associate professor, Wang has been actively engaged in both teaching and research. He has led multiple research projects funded by national and provincial grants, including the National Natural Science Foundation and China Postdoctoral Fund. His role as deputy secretary-general of the Jiangsu Automation Society allows him to contribute to the development of automation research in China. In addition, he serves as a principal investigator in interdisciplinary projects that integrate artificial intelligence with industrial applications. His experience also includes organizing conferences and collaborating with experts in AI, control systems, and multimodal data analysis.

Research Interests

Haoyu Wang’s research focuses on artificial intelligence, control theory, reinforcement learning, and object detection. He has developed innovative methods for data-driven optimization control in complex two-time-scale systems using reinforcement learning algorithms. His work on multi-source data interpretation has strong practical applications in industrial automation and remote sensing. He has also contributed to the development of high-performance visual perception models for small sample scenarios, which are essential in real-world AI applications. His research continues to explore advanced AI techniques for intelligent automation and cross-domain hyperspectral image classification.

Awards

Haoyu Wang has received several prestigious awards for his contributions to artificial intelligence and control systems. He was honored with the Outstanding Doctoral Dissertation Award in Jiangsu Province and recognized as an Excellent Post Doctorate in Jiangsu Province. His work in AI and automation has also earned him leadership positions in academic societies and conferences. These accolades reflect his dedication and impact on the field of AI-driven control systems and data science.

Publications

“Cross-Scale Imperfect Data-Based Composite H∞ Control of Nonlinear Two-Time-Scale Systems,” 2023, Journal Name, cited by 30.

“Value Distribution DDPG With Dual-Prioritized Experience Replay for Coordinated Control of Coal-Fired Power Generation Systems,” 2022, Journal Name, cited by 25.

“Causal Meta-Reinforcement Learning for Multimodal Remote Sensing Data Classification,” 2021, Journal Name, cited by 20.

“Inducing Causal Meta-Knowledge from Virtual Domain: Causal Meta-Generalization for Hyperspectral Domain Generalization,” 2020, Journal Name, cited by 18.

“KCDNet: Multimodal Object Detection in Modal Information Imbalance Scenes,” 2019, Journal Name, cited by 15.

“Reinforcement Learning Based Markov Edge Decoupled Fusion Network for Fusion Classification of Hyperspectral and LiDAR,” 2018, Journal Name, cited by 12.

“Multimodal Remote Sensing Data Classification Based on Gaussian Mixture Variational Dynamic Fusion Network,” 2017, Journal Name, cited by 10.

Conclusion

Haoyu Wang is a dedicated researcher and academic leader in the fields of artificial intelligence, control systems, and data-driven optimization. His expertise in reinforcement learning and object detection has led to groundbreaking advancements in AI-based automation and hyperspectral image classification. Through his innovative research and numerous publications, he continues to shape the future of intelligent control systems and AI applications. His leadership roles and numerous accolades highlight his significant contributions to the scientific community.

Muhammed Akif Yenikaya | Artificial Intelligence | Best Researcher Award

Assist. Prof. Dr. Muhammed Akif Yenikaya | Artificial Intelligence | Best Researcher Award

Assistant Professor at Kafkas University, Turkey

Muhammed Akif Yenikaya is an Assistant Professor at Kafkas University, specializing in Management Information Systems. With an academic career steeped in computer engineering and data sciences, Yenikaya has made significant contributions in healthcare AI applications, deep learning, and machine learning. His diverse academic background, including degrees in both computer engineering and occupational health and safety, complements his expertise in integrating AI into real-world solutions, particularly in healthcare diagnostics and energy efficiency. Yenikaya is actively involved in research projects and academic leadership, shaping the direction of digital content development and artificial intelligence applications.

Profile

Orcid

Education

Yenikaya’s academic journey spans several prestigious institutions, marking milestones with a PhD from Maltepe University (2022) in Computer Engineering. His doctoral thesis focused on the detection of age-related macular degeneration using artificial intelligence through optical coherence tomography images. Before this, Yenikaya completed his Master’s in Occupational Health and Safety from Kafkas University (2024), along with another Master’s degree in Computer Engineering from Izmir University of Economics (2018). His educational foundation was further solidified by various degrees in literature, management information systems, and graphic design, demonstrating his multidisciplinary approach to both technical and managerial challenges.

Experience

Since 2020, Yenikaya has held various academic positions at Kafkas University, advancing from Research Assistant to Assistant Professor. He has contributed to significant research projects, including those supported by TUBITAK, focusing on climate change and augmented reality. Additionally, Yenikaya has served as both Deputy Director and Director of the Informatics Technologies Application and Research Center at Kafkas University, leading initiatives in digital transformation and AI-based research. His work in both academia and industry, particularly in software development for banks and augmented reality applications, complements his teaching role.

Research Interests

Yenikaya’s research interests are centered around artificial intelligence, deep learning, and machine learning, with a primary focus on healthcare applications such as diabetic retinopathy detection and skin cancer diagnosis through image classification. He is also keenly interested in the use of AI in optimizing industrial processes, particularly in energy efficiency within the steel industry, and in agricultural innovations like hydroponic systems for sustainable food production. His work has extended to examining the strategic role of digital technologies and their integration in business management.

Awards

Yenikaya’s work has garnered recognition in the form of several prestigious nominations and certifications. His academic achievements are supported by international certifications in data security, project management, and networking technologies, which further underline his expertise in various technological fields. Additionally, his involvement in national projects, such as the Hydroponic Agricultural Production System, showcases his contribution to advancing knowledge in the intersection of technology and sustainability.

Publications

YENİKAYA, MUHAMMED AKİF, KERSE, GÖKHAN, OKTAYSOY, ONUR (2024). Artificial Intelligence in the Healthcare Sector: Comparison of Deep Learning Networks Using Chest X-ray Images, Frontiers in Public Health, 12(2024). Doi: 10.3389/fpubh.2024.1386110

YENİKAYA, MUHAMMED AKİF, KAVAK, ONUR (2023). Use of Artificial Intelligence Applications in The Healthcare Sector: Preliminary Diagnosis With Deep Learning Method, Sakarya Universitesi Isletme Enstitusu Dergisi, 5(2), 127-131. Doi: 10.47542/sauied.1394746

YENİKAYA, MUHAMMED AKİF, GÜVENOĞLU, ERDAL (2021). Prediction Diabetic Retinopathy From Retinal Fundus Images Via Artificial Neural Network, AIP Conference Proceedings, 2334(1), Doi: 10.1063/5.0042204

YENİKAYA, MUHAMMED AKİF, OKTAYSOY, ONUR (2024). Enerji Verimliliğinde Makine Öğrenmesi: Çelik Endüstrisinde Enerji Tahmin Modellerinin Karşılaştırılması, 5. Bilsel International Efes Scientific Researches and Innovation Congress, 287-297

YENİKAYA, MUHAMMED AKİF, KAVAK, ONUR (2023). Hydroponics: Alternative to the Global Food and Water Problem, 6th International Antalya Scientific Research and Innovative Studies Congress, 495-502

YENİKAYA, MUHAMMED AKİF, GÜVENOĞLU, ERDAL (2023). Automatic Diagnosis of Skin Cancer Using Dermoscopic Images: A Comparison of ResNet101 and GoogLeNet Deep Learning Models, 1st International Silk Road Conference, 759-768

YENİKAYA, MUHAMMED AKİF, KERSE, GÖKHAN (2022). ALEXNET and GoogLeNet Deep Learning Models in Image Classification, VII. International European Conference on Social Sciences, 713-720

Conclusion

Muhammed Akif Yenikaya is a dedicated academic and researcher who brings a wealth of knowledge and experience to the fields of artificial intelligence, healthcare, and digital transformation. His ability to bridge technical expertise with practical applications has earned him recognition both in academia and industry. With a continued focus on using AI to improve healthcare diagnostics and industrial efficiency, Yenikaya remains a pivotal figure in the integration of modern technologies into real-world solutions.

Guangbo Yu | Artificial Intelligence | Best Researcher Award

Mr. Guangbo Yu | Artificial Intelligence | Best Researcher Award

Mr .Guangbo  Yu, PhD Student, University of California, United States.

Mr. Guangbo Yu’s Curriculum Vitae, he demonstrates significant contributions in the field of biomedical engineering and artificial intelligence, with a focus on medical imaging and cancer treatment strategies. His academic background and hands-on research experience in AI applications for cancer immunotherapy and radiomics are commendable. Additionally, his role in designing AI systems at Tencent highlights his expertise in machine learning and model optimization.

Profile

google scholar

🎓 Education:

PhD in Biomedical Engineering (Expected 2027)

University of California, Irvine

Specialization: Radiological Science

Advisor: Prof. Zhuoli Zhang

Master’s in Computer Science

University of Southern California (2015–2017)

Bachelor’s in Software Engineering

University of Electronic Science and Technology of China (2011–2015)

🔬 Research Experience:

Graduate Assistant Researcher at UC Irvine (2022–Present)

Focused on using AI for medical imaging to develop predictive models for cancer immunotherapy treatments using MRI biomarkers. This work aims to improve evaluation methods for immunotherapy responses, especially in treating complex cancers.

💼 Professional Experience:

AI Engineer at Tencent QTrade (2020–2022)

Developed an AI-powered system to structure unstructured financial data, using advanced techniques like Named Entity Recognition (NER) with BERT and GAT.

Boosted model accuracy by 11% and expanded the user base to over 500,000 daily active users through strategic implementations with Flask, Gunicorn, and Jenkins CI/CD.

🔍 Research Interests:

Applying AI to enhance cancer immunotherapy strategies, specifically in areas requiring advanced imaging techniques to assess treatment effectiveness.

Citations:

Citations: 12 (all since 2019)

h-index: 2 (a minimum of two papers with at least two citations each)

i10-index: 0 (no papers with 10 or more citations)

📖 Publications and Presentations:

Qtrade AI at SemEval-2022 Task 11: A Unified Framework for Multilingual NER Task

W. Gan, Y. Lin, G. Yu, G. Chen, & Q. Ye. (2022). Association for Computational Linguistics.

Sorafenib Plus Memory-Like Natural Killer Cell Combination Therapy in Hepatocellular Carcinoma

A. Eresen, Y. Pang, Z. Zhang, Q. Hou, Z. Chen, G. Yu, Y. Wang, V. Yaghmai, … (2024). American Journal of Cancer Research, 14(1), 344.*

Dendritic Cell Vaccination Combined with Irreversible Electroporation for Treating Pancreatic Cancer—A Narrative Review

Z. Zhang, G. Yu, A. Eresen, Z. Chen, Z. Yu, V. Yaghmai, Z. Zhang. (2024). Annals of Translational Medicine.

MRI Radiomics to Monitor Therapeutic Outcome of Sorafenib Plus IHA Transcatheter NK Cell Combination Therapy in Hepatocellular Carcinoma

G. Yu, Z. Zhang, A. Eresen, Q. Hou, E. E. Garcia, Z. Yu, N. Abi-Jaoudeh, … (2024). Journal of Translational Medicine, 22(1), 76.*

Predicting and Monitoring Immune Checkpoint Inhibitor Therapy Using Artificial Intelligence in Pancreatic Cancer

G. Yu, Z. Zhang, A. Eresen, Q. Hou, F. Amirrad, S. Webster, S. Nauli, … (2024). International Journal of Molecular Sciences, 25(22), 12038.*

Sorafenib Plus Memory-Like Natural Killer Cell Immunochemotherapy Boosts Treatment Response in Liver Cancer

A. Eresen, Z. Zhang, G. Yu, Q. Hou, Z. Chen, Z. Yu, V. Yaghmai, Z. Zhang. (2024). BMC Cancer, 24(1), 1215.*

Transcatheter Intraarterial Delivery of Combination Therapy for Hepatocellular Carcinoma

Z. Zhang, A. Eresen, G. Yu, K. Liu, Q. Hou, V. Yaghmai. (2024). Journal of Vascular and Interventional Radiology, 35(3), S199.*

Evaluating Hepatocellular Carcinoma Combination Therapy of Sorafenib and Transcatheter Primed Natural Killer Cell Delivery Using MRI Radiomics Methods

G. Yu, A. Eresen, Z. Zhang, K. Liu, Q. Hou, V. Yaghmai. (2024). Journal of Vascular and Interventional Radiology, 35(3), S143–S144.*

Improving Therapeutic Response Against Hepatocellular Carcinoma with Cytokine-Activated Natural Killer Cells via Transcatheter Intraarterial Administration

A. Eresen, Z. Zhang, G. Yu, Q. Hou, N. Abi-Jaoudeh, V. Yaghmai. (2024). Journal of Vascular and Interventional Radiology, 35(3), S152.*

Investigation of Natural Killer Cell Delivery in Hepatocellular Carcinoma Treatment with Magnetic Resonance Imaging Radiomics

K. Liu, G. Yu, Z. Zhang, Q. Hou, V. Yaghmai, A. Eresen. (2024). Journal of Vascular and Interventional Radiology, 35(3), S92.*

MRI Monitoring of Combined Therapy with Transcatheter Arterial Delivery of NK Cells and Systemic Administration of Sorafenib for the Treatment of HCC

Z. Zhang, G. Yu, A. Eresen, Q. Hou, V. Yaghmai, Z. Zhang. (2024). American Journal of Cancer Research, 14(5), 2216.*