Mr. Siddhant Srinivas | Cyber Security | Best Researcher Award

Mr. Siddhant Srinivas | Cyber Security | Best Researcher Award

California State University | United States

Siddhant Srinivas is an emerging researcher in Artificial Intelligence and Cybersecurity, currently contributing to the advancement of AI-augmented Security Operations Centers (SOC) through the integration of Large Language Models (LLMs) and AI agents. His research primarily focuses on developing intelligent frameworks that enhance the efficiency, scalability, and trustworthiness of SOC workflows. As the first author of a peer-reviewed publication in MDPI, Siddhant has presented a comprehensive taxonomy of AI-driven applications across SOC processes, highlighting their potential in transforming traditional alert triage, threat detection, and incident response systems. His work introduces a capability-maturity model that outlines the evolution from manual to autonomous SOC operations while addressing the challenges of explainability, safety, and reliability in AI deployments. Siddhant’s contributions emphasize bridging the gap between theoretical AI models and their practical implementation in cybersecurity domains. He has been recognized for his scholarly excellence through published research and active involvement in Dr. Alzahrani’s AI Research Lab. His published works are cited in indexed databases such as Scopus and Google Scholar, reflecting a growing academic footprint and influence in the emerging intersection of AI and security research. His citation records and h-index metrics from both Scopus and Google Scholar demonstrate his contributions to advancing secure, transparent, and automated AI systems.

Profile

ORCID

Featured Publication

Srinivas, S., Kirk, B., Zendejas, J., Bari, A., Dajani, K., & Alzahrani, N. (2025). AI-Augmented SOC: A survey of LLMs and agents for security automation. MDPI Informatics, 5(4), 95.

Zongbao Jiang | Cybersecurity | Best Researcher Award

Mr. Zongbao Jiang | Cybersecurity | Best Researcher Award

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

📘 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

 

🎓 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.

💼 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.

🔬 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.

🏆 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
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Reversible Data Hiding in Encrypted Images based on Classic McEliece Cryptosystem
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Reversible Data Hiding Algorithm in Encrypted Domain Based on Matrix Secret Sharing
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