Shuhao Shen | Cybersecurity | Best Researcher Award
Shuhao Shen, Huazhong University of Science and Technology, China
Shuhao Shen is a dedicated Ph.D. student in Cyberspace Security at Huazhong University of Science and Technology (HUST) π. As a member of Professor Cai Fuβs team, he focuses on cutting-edge areas such as binary vulnerability detection, graph neural networks (GNNs), and large language model (LLM) applications π€. Shuhao ranks in the top 25% of his Ph.D. cohort and previously ranked 12th during his undergraduate studies. He has contributed to national-level cybersecurity projects and collaborated with QiAnXin Group on binary component analysis π‘οΈ. Known for his diligence, curiosity, and adaptability, Shuhao aspires to lead in cybersecurity innovation π.
Professional profile :
Suitability for Best Researcher Award :
Shuhao Shen is a promising Ph.D. researcher at Huazhong University of Science and Technology (HUST), actively contributing to the fields of binary vulnerability detection, graph neural networks (GNNs), and large language model (LLM) applications. His work addresses some of the most pressing challenges in cybersecurity, including the secure analysis of binary componentsβan area critical to national infrastructure and digital defense. His academic performance, demonstrated by being in the top 25% of his Ph.D. cohort and previously ranking 12th in his undergraduate class, reflects consistent excellence and intellectual rigor.
Education & Experience :
π Ph.D. in Cyberspace Security β Huazhong University of Science and Technology (HUST)
π Wuhan, China | β³ Sep 2023 β Jun 2028 (Expected)
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π§βπ« Under Prof. Cai Fu’s supervision
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π Top 25% in academic ranking
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ποΈ First-Class Academic Scholarship (2023)
π Bachelor’s in Cyberspace Security β HUST
π Wuhan, China | β³ Sep 2020 β Jun 2024 (Expected)
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π Ranked 12th in major
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π Honors: Outstanding Student Cadre, Excellent Communist Youth League Cadre
πΌ Algorithm Engineer Intern β Wuhan CGCL Lab
π Wuhan, China | β³ Jul 2023 β Dec 2024
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π Focus on graph neural networks and binary vulnerability detection
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π€ Collaboration with QiAnXin Group and national-level LLM projects
Professional Development :
Shuhao Shen has developed strong skills in Python π and C++ π», mastering deep learning frameworks and tools like LangChain and vLLM for large model deployment. Heβs proficient with vulnerability detection tools such as angr π οΈ and IDA Pro π§ , allowing him to design efficient rule-based and AI-assisted detection schemes. His hands-on experience includes publishing in the Journal of Systems and Software and contributing to significant projects involving binary analysis π¬, function embedding, and open-source component recognition π§©. Shuhaoβs balanced skill set and real-world project exposure position him for continued growth in advanced cybersecurity development π.
Research Focus :
Shuhao Shenβs research is centered on cyberspace security π, particularly in binary vulnerability detection, graph neural networks (GNNs) π, and large language models (LLMs) π€ for software analysis. His recent work includes utilizing angr and IDA Pro for binary feature extraction and applying function embeddings for open-source component detection in C/C++ binaries π§©. He is actively exploring the intersection of machine learning and cybersecurity, aiming to create intelligent, automated vulnerability detection systems π. His research aligns with next-generation software supply chain protection, secure development environments, and AI-augmented security tools π.
Awards & Honors :
π National First Prize β Undergraduate Innovation and Entrepreneurship Program (Nov 2023)
ποΈ First-Class Academic Scholarship β HUST (2023)
π Outstanding Student Cadre β HUST
π£ Excellent Communist Youth League Cadre β HUST
Publication Top Notes :Β
Title:Β BinCoFer: Three-stage purification for effective C/C++ binary third-party library detection
Author: Shuhao Shen
Publication Type: Journal article
Citation (placeholder): Shen, S. (Year). BinCoFer: Three-stage purification for effective C/C++ binary third-party library detection. Journal Name, Volume(Issue), pages. DOI
Conclusion :
Shuhao Shen demonstrates the research depth, technical innovation, and real-world impact that align perfectly with the goals of the Best Researcher Award. His advanced work in cybersecurity, particularly in leveraging AI to tackle binary vulnerabilities, is not only timely but also critical in an era of escalating digital threats. Given his contributions to both academic and industrial spheres, Shuhao is well-positioned to become a future leader in cybersecurity research, making him a highly deserving candidate for this recognition.