Gerardo Iovane | Cybersecurity| Cybersecurity Achievement Award

Prof. Dr. Gerardo Iovane | Cybersecurity| Cybersecurity Achievement Award

Professor, University of Salerno, Italy

Professor IASD Gerardo Iovane is a distinguished academic and researcher with over 25 years of international experience. A faculty member at the Department of Excellence in Computer Science at the University of Salerno, he is renowned for his work in Financial Computing, High-Frequency Trading, and Mathematical Analysis. He is a pioneer in Blockchain Technologies, Industry 4.0/5.0, AI, IoT, and Neuroscience. Prof. Iovane is the founder of the Atmosphere Arc blockchain ecosystem and is globally recognized as the originator of the term “Decentralized Economy.” His contributions have earned him numerous accolades, including the Washington Elite Award (2020) and the Innovation Award at Terni Digital Week (2024). ๐ŸŒ๐Ÿ’ก

Publication Profile

ORCID

Education ๐ŸŽ“

Prof. Iovane graduated with honors from the Nunziatella Military School and earned a summa cum laude degree in Nuclear and Subnuclear Physics. He pursued advanced research at CERN in Geneva and holds three doctorates in Physics, Mathematics, and Engineering and Innovation Economics. He is also an alumnus of the prestigious IASD (Institute for Advanced Defense Studies). ๐Ÿง‘โ€๐ŸŽ“โœจ

Experience ๐Ÿซ

With decades of experience, Prof. Iovane has led groundbreaking research projects with global partners, including China, Russia, the USA, and various EU and non-EU countries. As the scientific director of the Technology Transfer Center ART (Italy), he has collaborated with national defense organizations such as NATO and CeMiSS. His career spans impactful roles in academia, strategic studies, and blockchain innovation. ๐Ÿ› ๏ธ๐ŸŒ

Research Interests ๐Ÿ”

Prof. Iovane’s research spans Blockchain Technologies, Quantum Finance, Decentralized Economies, Industry 4.0/5.0, Artificial Intelligence, IoT, and Neuroscience. His pioneering MRQF Theory and MuReQua Chain are driving the future of financial and quantum technologies. ๐Ÿง ๐Ÿ’ป

Awards ๐Ÿ†

Prof. Iovaneโ€™s achievements include the Best Application in Europe Award (2001), Knight of the Italian Republic (2009), Best Scientist Award (2014, San Marino), Washington Elite Award (2020, USA), and Innovation Award (2024, Italy). Forbes USA highlighted his blockchain ecosystem as a global innovation in 2020. ๐ŸŒŸ๐Ÿ“œ

Publications ๐Ÿ“š

“Multiscale Relative Quantum Finance (MRQF) Theory”Published in 2014, Traders Magazine Special Issue.
[Cited by over 50 articles].

“MuReQua Chain: Advancing Quantum Blockchain Technologies”Published in 2023, Journal of Blockchain Research.
[Cited by 30+ articles].

“Decentralized Economies and Global Impacts”Published in 2020, International Journal of Economics.
[Cited by 25 articles].

“Industry 5.0 and IoT Integration for Security Systems”Published in 2021, IEEE Transactions on Industrial Informatics.
[Cited by 40+ articles].

 

Alberto Moccardi | Cybersecurity | Best Researcher Award

Dr. Alberto Moccardi | Cybersecurity | Best Researcher Award

Phd, Universitร  degli studi di Napolli Federico II, Italy

๐ŸŒŸ Alberto Moccardi is a dedicated researcher and Ph.D. candidate at the University of Naples Federico II in Naples, Italy, under the Department of Electrical Engineering and Information Technologies. His expertise spans Artificial Intelligence (AI) and Internet of Things (IoT) applications, particularly in predictive maintenance and smart road management systems. Alberto actively contributes to advancing human-centered AI methodologies to address pressing technological and societal challenges.

Publication Profile

ORCID

Education

๐ŸŽ“ Alberto Moccardi is pursuing his Ph.D. at the University of Naples Federico II. His academic journey is deeply rooted in electrical engineering and information technologies, emphasizing cutting-edge AI solutions in IoT ecosystems.

Experience

๐Ÿ’ผ With his role at the University of Naples Federico II, Alberto has developed a robust background in research and application-driven innovation. He has contributed to impactful projects in predictive maintenance and AI-driven road infrastructure management.

Research Interests

๐Ÿ” Albertoโ€™s research interests focus on AI-driven methodologies, IoT applications, and human-centered systems. He is passionate about designing robust frameworks for adversarial attack detection in IoT systems and creating equitable solutions for smart city management.

Awards

๐Ÿ† Albertoโ€™s innovative work has gained recognition through academic publications and conference presentations, reflecting his dedication to leveraging technology for societal benefit.

Publications

Detecting Adversarial Attacks in IoT-Enabled Predictive Maintenance with Time-Series Data Augmentation
๐Ÿ“œ Published: 2024-11-20 | Journal: Information
๐Ÿ”— DOI: 10.3390/info15110740

AI Driven Potholes Detection for Equitable Repair Prioritization: Human-centred AI-driven methodology as support of road management system
๐Ÿ“œ Published: 2023-12-14 | Conference: Proceedings of the 2023 Conference on Human-Centered Artificial Intelligence: Education and Practice
๐Ÿ”— DOI: 10.1145/3633083.3633224

 

Muhammad Asfand Hafeez | Information Security | Best Researcher Award

Mr. Muhammad Asfand Hafeez | Information Security | Best Researcher Award

Research Assistant, Florida Atlantic University, United States

Muhammad holds a B.Sc. in Electrical Engineering from the University of Management and Technology, Lahore, Pakistan, with a CGPA of 3.89/4.00. He completed his M.Sc. in IT Convergence Engineering at Gachon University, South Korea, with a CGPA of 4.38/4.50, where he focused on GPU-based PQC implementations. He is now pursuing his Ph.D. at Florida Atlantic University with a perfect CGPA of 4.0/4.0. ๐ŸŽ“๐Ÿ“š

Publication Profile

Strengths for the Award:

  1. Outstanding Academic Record: Muhammad Asfand Hafeez has demonstrated exceptional academic performance, with a CGPA of 4.0/4.0 in his PhD program and a CGPA of 4.38/4.50 in his Masterโ€™s program, showcasing his dedication and excellence in his studies.
  2. Innovative Research Contributions: His research in GPU-based implementations of Post-Quantum Cryptography (PQC) algorithms for IoT applications and side-channel analysis exhibits a strong focus on cutting-edge technologies and practical applications. This includes significant contributions to improving security protocols in emerging technologies.
  3. High-Impact Publications: Hafeez has a robust publication record in reputable journals and conferences, including IEEE Internet of Things Journal and IEEE Access. His work on GPU acceleration and cryptographic methods is relevant to current and future research in security and optimization.
  4. Awards and Recognition: He has received multiple awards such as the Rector Innovation Award, Patronโ€™s Medal, and Best Paper Award, indicating recognition from academic and industry peers for his innovative work and contributions.
  5. Diverse Experience: His experience spans research assistant roles in various prestigious institutions and internships, providing him with a broad perspective and expertise in different aspects of electrical engineering and computer science.

Areas for Improvement:

  1. Broader Research Impact: While his research is highly specialized, expanding his work to address a wider range of practical problems and applications could further enhance its impact and relevance to diverse fields.
  2. Collaborative and Interdisciplinary Work: Increasing collaboration with researchers from other disciplines or institutions could lead to more comprehensive research outcomes and foster interdisciplinary innovations.
  3. Public Engagement and Dissemination: Greater emphasis on public outreach and dissemination of his research findings through non-academic channels could raise awareness and highlight the societal impacts of his work.

 

Experience

Muhammad has gained substantial research experience through his roles as a Research Assistant at various esteemed institutions, including ISCAAS Lab at Florida Atlantic University, Kansas State University, and Information Security & Machine Learning Lab at Gachon University. His internships and assistant roles have provided him with practical insights into electrical engineering and information security. ๐Ÿงช๐Ÿ’ผ

Research Focus

Muhammadโ€™s research interests include GPU computing, Post-Quantum Cryptography (PQC), cryptographic protocols, and secure multi-party computation. He is dedicated to enhancing the efficiency and security of cryptographic systems and optimizing deep learning models. His work also encompasses side-channel analysis and applications of PQC in IoT. ๐Ÿ’ป๐Ÿ”’

Awards and Honors

Muhammad has been honored with several prestigious awards, including the Rector and Dean Merit Awards, the Rector Innovation Award, and the Patronโ€™s (Gold) Medal Award. He has also achieved notable positions in competitions such as IEEE Xtreme Programming and Mechnofest. His recognition includes the Best Paper Award by BK21 FAST Intelligence Convergence Center and accolades from the Pakistan International Auto Show. ๐Ÿ…๐ŸŽ–๏ธ

Publications Top Notes

Efficient TMVP-Based Polynomial Convolution on GPU for Post-Quantum Cryptography Targeting IoT Applications (2024) – IEEE Internet of Things Journal

GPU-Accelerated Deep Learning-based Correlation Attack on Tor Networks (2023) – IEEE Access

High Throughput Acceleration of Scabbard Key Exchange and Key Encapsulation Mechanism Using Tensor Core on GPU for IoT Applications (2023) – IEEE Internet of Things Journal

H-QNN: A Hybrid Quantumโ€“Classical Neural Network for Improved Binary Image Classification (2024) – AI

A Low-Overhead Countermeasure Against Differential Power Analysis for AES Block Cipher (2021) – Applied Sciences

Performance Improvement of Decision Tree: A Robust Classifier Using Tabu Search Algorithm (2021) – Applied Sciences

A Hybrid Linear Quadratic Regulator Controller for Unmanned Free-Swimming Submersible (2021) – Applied Sciences

Conclusion:

Muhammad Asfand Hafeez is a highly promising candidate for the Best Researcher Award due to his exemplary academic achievements, innovative research contributions, and significant awards and recognitions. His work in GPU-based implementations of Post-Quantum Cryptography and other advanced areas reflects a deep understanding of and commitment to his field. Addressing areas for improvement, such as broadening the scope of his research impact and increasing public engagement, could further enhance his candidacy and contributions to the field.

mourad JABRANE | Computer Science | Best Researcher Award

Prof Dr. mourad JABRANE | Computer Science | Best Researcher Award

software enginee, sultan moulay slimane university, Morocco

JABRANE Mourad is a state-certified software engineer and a third-year Ph.D. candidate at the National School of Applied Sciences, Sultan Moulay Slimane University. With a passion for designing scalable and efficient systems, Mourad excels in data mining, machine learning, and distributed computing. As an adjunct professor, he effectively conveys complex concepts, making him a valuable contributor to both academia and industry.

Publication Profile

Strengths for the Award:

  1. Solid Academic Background: Jabrane Mourad holds a state-certified software engineering degree and is currently a Ph.D. candidate specializing in Big Data, showcasing a strong academic foundation in cutting-edge technologies.
  2. Research Contributions: His research work focuses on significant areas like entity resolution in Big Data, machine learning, and distributed computing. His publications in reputable journals, such as the Journal of Intelligent Information Systems and Information Systems, highlight his contributions to the field.
  3. Diverse Skill Set: Mourad has extensive expertise in programming languages (Java, Python, JavaScript, etc.), frameworks (Spring, Angular), and software engineering tools (Docker, Jenkins, Kubernetes), making him a well-rounded researcher with practical skills applicable to various domains.
  4. Teaching Experience: As an adjunct professor, Mourad has taught a wide range of subjects including data integration, advanced Java Enterprise Edition, and distributed systems. His teaching experience demonstrates his ability to communicate complex concepts clearly, which is a valuable trait in academia.
  5. International Recognition: The publication of his work in international journals and his participation in global research projects suggest that his research has gained international recognition, making him a strong candidate for the award.

Areas for Improvement:

  1. Broader Impact: While Mourad’s research contributions are significant, further efforts to collaborate on interdisciplinary projects or engage in community outreach could broaden the impact of his work.
  2. Innovation and Patents: Although he has a strong publication record, obtaining patents or developing innovative software solutions could further strengthen his candidacy for a best researcher award.
  3. Networking and Collaborations: Expanding his network and collaborating with more researchers across different institutions could help him gain more visibility and access to diverse research opportunities.

Education

Ph.D. Candidate (2021 โ€“ Present): National School of Applied Sciences, Sultan Moulay Slimane University.
Thesis title: Entity Resolution in Big Data. State Software Engineer (2018 โ€“ 2021): National School of Applied Sciences, Sultan Moulay Slimane University. MP Higher School Preparatory Classes (2016 โ€“ 2018): Centre Ibn Abdoun.
Track title: Mathematics, Physics, and Engineering Sciences.

Experience ๐Ÿ’ผ

JABRANE Mourad has accumulated significant experience as an adjunct professor at the National School of Applied Sciences, where he has taught a variety of subjects including Data Integration, Data Quality, Advanced JEE, Distributed Systems, Python Programming, MATLAB, and C Programming. His roles extend to both regular courses and continuing education programs, demonstrating his versatility and commitment to teaching.

Research Focus ๐Ÿ”ฌ

Mouradโ€™s research is centered around big data, with specific interests in data mining, machine learning, and distributed computing. His Ph.D. work focuses on Entity Resolution in Big Data, where he is exploring innovative approaches to improve accuracy and efficiency in large-scale data matching.

Awards and Honors ๐Ÿ…

Though the detailed awards and honors list is not provided, Mourad’s academic and professional journey is marked by his selection as a Ph.D. candidate and his appointment as an adjunct professor at a prestigious institution.

Publications ๐Ÿ“š

Mourad has contributed extensively to the field of big data and machine learning. Below are some of his notable publications:

  1. โ€œErabqs: Entity resolution based on active machine learning and balancing query strategyโ€ – Published in Journal of Intelligent Information Systems, March 2024. Cited by 3 articles.
  2. โ€œEnhancing entity resolution with a hybrid active machine learning framework: Strategies for optimal learning in sparse datasetsโ€ – Published in Information Systems, November 2024. Cited by 7 articles.
  3. โ€œEnhancing semantic web entity matching process using transformer neural networks and pre-trained language modelsโ€ – Published in Computing and Informatics, 2024. Cited by 5 articles.
  4. โ€œSentiment analysis dataset in Moroccan dialect: Bridging the gap between Arabic and Latin scripted dialectโ€ – Published in Language Resources and Evaluation, July 2024. Cited by 4 articles.

 

Conclusion:

Jabrane Mourad presents a strong case for the Best Researcher Award due to his solid academic background, notable research contributions in Big Data and machine learning, and diverse technical skills. His role as an adjunct professor and his extensive teaching experience further emphasize his ability to convey knowledge and contribute to the academic community. To enhance his candidacy, Mourad could focus on increasing the broader impact of his research through interdisciplinary collaborations and innovation. Overall, Mourad is a well-rounded candidate with the potential to make substantial contributions to the field, making him a suitable contender for the award.

Zongbao Jiang | Cybersecurity | Best Researcher Award

Mr. Zongbao Jiang | Cybersecurity | Best Researcher Award

Under postgraduate, Engineering University of People’s Armed Police, China

๐Ÿ“˜ Zongbao Jiang is an emerging researcher specializing in computer technology at the Engineering University of People’s Armed Police. His research focuses on reversible data hiding techniques, aiming to improve embedding capacity, security, and applicability. Through innovative methods, Jiang enhances data hiding performance, ensuring the integrity and confidentiality of original content. Actively collaborating with peers and participating in workshops, he stays abreast of the latest advancements in his field.

Profile

Scopus

 

๐ŸŽ“ Education:

Zongbao Jiang is currently an undergraduate at the Engineering University of People’s Armed Police, where he delves into computer technology and data security. His academic journey is marked by rigorous research and a strong foundation in information security.

๐Ÿ’ผ Experience:

Zongbao Jiang has participated in a project funded by the National Natural Science Foundation of China, collaborating with notable researchers like Minqing Zhang. He has successfully published papers in top-tier journals and conferences, demonstrating his expertise and contribution to the field of computer technology.

๐Ÿ”ฌ Research Interests:

Zongbao Jiang’s research interests revolve around information security and reversible data hiding techniques. His work focuses on enhancing performance metrics such as embedding capacity and security while maintaining the confidentiality of original content. Jiang’s innovative approach aims to develop robust solutions for secure communications and data preservation.

๐Ÿ† Awards:

Zongbao Jiang has made significant contributions to his field, evidenced by his publications in high-impact journals and conferences. He holds three authorized software copyrights and has a patent under review. His work in reversible data hiding techniques has earned him recognition in the academic community.

Publications

Reversible Data Hiding Algorithm in Encrypted Images Based on Adaptive Median Edge Detection and Matrix-Based Secret Sharing
Link to article
Reversible Data Hiding in Encrypted Images based on Classic McEliece Cryptosystem
Link to article
Reversible Data Hiding Algorithm in Encrypted Domain Based on Matrix Secret Sharing
Link to article

HaiTian Chen | Computer Science | Best Researcher Award

Ms. HaiTian Chen | Computer Science | Best Researcher Award

College of Science, North China University of Science and Technology, China

Chen HaiTian is a dedicated researcher in the field of Cyberspace Security from China. Born in December 1998, Chen has made significant strides in federated learning, privacy preservation, and cybersecurity. His contributions span multiple peer-reviewed journals and patents, showcasing his commitment to advancing technology and safeguarding digital spaces.

Profile

ORCID

 

Education

Chen HaiTian holds a major in Cyberspace Security, demonstrating his expertise and focus in this critical area of study. His academic background has equipped him with the skills and knowledge necessary to tackle complex cybersecurity challenges and contribute to innovative solutions in the field. ๐ŸŽ“

Research Interests

Chen HaiTian’s research interests focus on federated learning, privacy preservation, and cybersecurity. He is particularly interested in developing robust aggregation techniques to defend against poisoning attacks in federated learning and exploring personalized fair split learning for resource-constrained Internet of Things (IoT). ๐Ÿ”

Awards

Chen HaiTian has received recognition for his contributions to software development, including the Huali Academy Backstage Management System V1.0 and the DC Early Warning System V1.0. His work has been registered with computer software registration numbers, showcasing his achievements in developing innovative solutions for network management and security. ๐Ÿ†

Publications

Chen, H.; Chen, X.; Peng, L. (2023). FLRAM: Robust Aggregation Technique for Defense Against Byzantine Poisoning Attacks in Federated Learning. Electronics. Cited by Electronics.

Chen, H.; Chen, X.; Peng, L. (2024). Personalized Fair Split Learning for Resource-Constrained Internet of Things. Sensors, 24, 88. Cited by Sensors.

Chen, H., Chen, X., Ma R., et al. (2024). A federated learning privacy preserving approach for remote sensing data. Computer Applications. Cited by Computer Applications.

Chen, H., Chen, X. (2023). A Robust Aggregation Technique for Poisoning Attack Defense in Federated Learning. Cited by Journal.

Xu C., Zhang S., Chen H., et al. (2024). A federated learning approach based on adaptive differential privacy and customer selection optimization. Computer Applications. Cited by Computer Applications.

Peng L., Zhang S., Chen H., et al. (2023). Clustered federated learning based on improved CFSFDP algorithm. Journal of North China University of Science and Technology (Natural Science Edition). Cited by NCUST.

Qiang Li | Computer Science | Best Researcher Award

Mr. Qiang Li | Computer Science | Best Researcher Award

Lecturer, Qingdao University, China

Dr. Li Qiang is an experienced lecturer in computer science with a PhD in Engineering. He specializes in high-performance computing and has a strong background in both teaching and research. Committed to fostering academic excellence and technological innovation, Dr. Li has been a dedicated educator and researcher at Qingdao University since 2015.

Profile

ORCID

 

Education ๐ŸŽ“

PhD in Engineering: University of the Chinese Academy of Sciences, Computer Network Information Center (2010-2014), Advisor: Lu Zhonghua. Master’s in Information Science and Engineering: Shandong University of Science and Technology (2007-2010), Advisor: Zhao Maoxian. Bachelor’s in Education: Qingdao University (2003-2007).

Experience ๐Ÿ‘จโ€๐Ÿซ

Lecturer at Qingdao University, School of Computer Science and Technology (January 2015-Present). Teaching undergraduate and graduate courses in computer science. Supervising student research projects and theses. Conducting research in high-performance computing. Published 12 research papers in journals and conferences. Granted 2 patents.

Research Interests ๐Ÿ”ฌ

Dr. Li Qiang’s research interests lie in high-performance computing, particularly in the optimization and parallel implementation of numerical simulations and the development of new computational frameworks. His work focuses on enhancing computational efficiency and scalability in large-scale scientific computations.

Awards ๐Ÿ†

Dr. Li Qiang has been recognized for his contributions to the field of high-performance computing through multiple publications and patents. His innovative work has led to advancements in computational methods and has garnered attention in the academic community.

Publications ๐Ÿ“„

Optimization Research of Heterogeneous 2D-Parallel Lattice Boltzmann Method Based on Deep Computing Unit. Appl. Sci. 2024, 14, 6078.

Heterogeneous Parallel Implementation of Large-Scale Numerical Simulation of Saint-Venant Equations. Appl. Sci. 2022, 12, 5671. Cited by 6

The Study of Parallelization of SWAT Hydrology Cycle. The 32nd ACM International Conference on Supercomputing, Beijing, 2018. [Cited by 3]

A New Parallel Framework of Distributed SWAT Calibration. Journal of Arid Land, 2015, 7(1): 122-131. [Cited by 7]

Parallel Simulation of High-Dimensional American Option Pricing Based on CPU VS MIC. Concurrency and Computation: Practice and Experience, 2014, 27(5): 1110-1121. [Cited by 5]