Mr. Muhammad Luqman Naseem | AI Security | Best Researcher Award
Mr. Muhammad Luqman Naseem | AI Security – Ph.D at Harbin Institute of Technology, China
Muhammad Luqman Naseem is a dynamic and forward-thinking researcher specializing in AI security and adversarial machine learning. With a strong academic foundation and a multifaceted professional journey across research institutions and the tech industry, he has established himself as a promising thought leader in the field of secure artificial intelligence. His work bridges the domains of machine learning, cybersecurity, and cross-media AI, contributing novel insights to adversarial defenses in real-world systems. Currently based in China, Luqman has gained recognition through his participation in international conferences, cross-border projects, and high-impact journal publications, demonstrating a commitment to excellence in science and innovation.
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🔹Education:
Luqman holds a Master of Science in Software Engineering from Northeastern University, China, where he focused on adversarial machine learning and ICT security. His thesis explored the detection of adversarial attacks in the problem space for Support Vector Machines, a topic of rising significance in secure AI systems. Prior to this, he completed a Bachelor of Science in Information Technology from the University of Education in Pakistan, where his undergraduate work included the development of online event management systems. Complementing his core degrees, he pursued a postgraduate diploma in Information Technology and Chinese language studies, enabling both technical and linguistic fluency vital for his international academic journey. His education reflects a well-rounded foundation in computer science, systems development, and advanced machine learning techniques.
🔹Experience:
Muhammad Luqman Naseem has accumulated hands-on experience through diverse roles in research and development. As a Research Assistant at the Research Centre for Cross-Media AI at Northeastern University, he worked extensively on adversarial AI, malware detection, and secure learning models using advanced platforms such as Ubuntu VM and NVIDIA Tesla K40. His earlier engineering internships involved backend and frontend development using technologies like Spring Boot and Vue.js, furthering his grasp on full-stack development. In industry roles, he has worked as an IT officer, network engineer, and application developer, handling networks, virtualization systems, SAP environments, and security firewalls. These varied experiences have shaped a tech-savvy researcher well-versed in both theory and implementation.
🔹Research Interest:
Luqman’s primary research interests lie in adversarial machine learning, AI security, and secure multi-label classification systems. His work focuses on detecting and mitigating vulnerabilities in intelligent systems, especially in high-stakes environments like healthcare, finance, and IoT. He is also deeply engaged with gradient-based attacks, black-box model inversion techniques, and scalable malware detection models. His interdisciplinary outlook allows him to integrate machine learning, systems programming, and cybersecurity practices to address real-world challenges in digital safety and trust in AI-driven decisions.
🔹Award:
Luqman has been recognized multiple times for his academic diligence and technical contributions. He received the prestigious Chinese Government Scholarship (CSC) to support his postgraduate research and was previously honored with Pakistan’s Prime Minister Laptop Award for outstanding performance. Additionally, his commitment to enterprise solutions was acknowledged through SAP Business One End-User Training Certification. His active participation in conferences, workshops, and collaborative seminars, including the Huawei Developer Conference and ICSI 2023, further reflects his contribution to global innovation communities.
🔹Publications:
📘 Trans-IFFT-FGSM: A Novel Fast Gradient Sign Method for Adversarial Attacks (2024), Multimedia Tools and Applications – An impactful contribution to fast adversarial model design.
📗 Showing Many Labels in Multi-label Classification Models: An Empirical Study of Adversarial Examples (2024), arXiv – Delving into vulnerabilities of multi-label classifiers.
📙 Comprehensive Comparisons of Gradient-based Multi-label Adversarial Attacks (2024), Complex & Intelligent Systems – A benchmarking study for multiple gradient attack strategies.
📕 C2fmi: Corse-to-Fine Black-box Model Inversion Attack (2023), IEEE Transactions on Dependable and Secure Computing – A study on reconstructing models from outputs in secure systems.
📒 How Deep Learning is Empowering Semantic Segmentation (2022), Multimedia Tools & Applications – A survey of DL methods for vision-based tasks.
📓 Fast and Robust Detection of Adversarial Attacks in the Problem Space using Machine Learning (2022) – Addressing adversarial defense using efficient learning models.
🔹Conclusion:
Muhammad Luqman Naseem exemplifies the qualities of an ideal recipient for the Best Researcher Award—analytical rigor, technical innovation, and collaborative engagement. His growing portfolio of research in adversarial AI, backed by real-world application experience, positions him at the forefront of tackling one of the most critical challenges in the AI domain: ensuring secure and trustworthy intelligent systems. His consistent publication record, international exposure, and scholarly recognition showcase not only his past achievements but also his potential for future contributions to the research community. Awarding him this honor would not only recognize his achievements but also inspire further advancement in secure AI research across global communities.