Mr. Muhammad Luqman Naseem | AI Security | Best Researcher Award

Mr. Muhammad Luqman Naseem | AI Security | Best Researcher Award

Harbin Institute of Technology Shenzhen, China

Author Profile

Google Scholar 

🌱 Early Academic Pursuits

From the heart of Multan, Pakistan, Muhammad Luqman Naseem began his journey in technology with a deep curiosity for how information systems shape the modern world. His academic pathway is rooted in discipline, ambition, and continuous learning. He completed a Bachelor of Science in Information Technology at the University of Education, where his graduation project—a comprehensive Online Event Management System—reflected both his creativity and problem-solving instincts early on. Not stopping there, he supplemented his undergraduate studies with a Postgraduate Diploma in Information Technology from the Government College of Science, focusing on web technologies and systems administration, areas that would become core to his professional identity. 🎓

His pursuit of excellence then led him to China, where he earned a Master of Science in Software Engineering at Northeastern University in Shenyang. Here, he tackled one of the most cutting-edge and high-stakes areas in software development: adversarial machine learning. His thesis, titled Detection of Adversarial Attacks in the Problem Space for SVM, positioned him at the intersection of artificial intelligence and cybersecurity, laying a strong foundation for impactful research. Complementing his technical training, he also completed Chinese language studies at the Confucius Institute in Beijing, reflecting his adaptability and commitment to global collaboration. 🌍📘

💼 Professional Endeavors

Muhammad Luqman Naseem’s career blends research, development, and hands-on IT operations across both academia and industry. He served as a Research Assistant at the Research Centre for Cross-Media AI at Northeastern University, where he worked on adversarial AI and malware detection using sophisticated tools like the Drebin API and NVIDIA Tesla K40 GPUs. This role honed his expertise in Python-based environments and secure scalable learning models.

His internship at NEUSOFT further diversified his technical acumen. Here, he contributed to full-stack development using Vue.js and Spring Boot, integrating databases and RESTful APIs with finesse. Before his time in China, he held significant IT roles in Pakistan. At Evyol Group, he led infrastructure projects, configuring enterprise networks and managing VMware and SAP systems. Earlier at ANC Foods, he ensured operational efficiency through expert server management and surveillance systems. His initial foray into the field as an Application Software Developer reflects his foundational passion for coding and system architecture. 💻🚀

🔬 Contributions and Research Focus

Luqman’s research embodies a commitment to safer digital ecosystems. His main focus lies in AI security, particularly adversarial machine learning, malware detection, and intrusion prevention. His work contributes to fortifying digital systems against manipulation, ensuring trust in AI-driven infrastructures. Beyond academia, his development work in enterprise and agricultural IT systems in Pakistan has strengthened organizational digital resilience and efficiency.

His hands-on contributions with scalable algorithms, coupled with his software engineering insights, continue to influence secure coding standards and intelligent threat detection techniques. 🧠🔐

🏆 Accolades and Recognition

While not explicitly decorated with formal awards (as per current records), Luqman’s growing portfolio speaks volumes of his competence and recognition within professional circles. His selection for research roles in China’s premier AI research centers and development projects at NEUSOFT—a globally known IT enterprise—attest to his credibility and sought-after skillset. The value of his academic publications and thesis also positions him as an emerging thought leader in adversarial AI defense. 🌟📄

🌐 Impact and Influence

Luqman’s work straddles the critical interface of cybersecurity and machine learning, domains with sweeping societal impact. His efforts ensure that AI systems can operate securely, resilient to malicious manipulations. Within enterprise IT, his configurations of secure networks and VPNs have safeguarded data across multinational firms. He influences both the academic and tech communities by contributing frameworks and code that can be scaled and adopted globally. His multicultural experiences in Pakistan and China enrich his capacity for international cooperation and cross-border tech solutions. 🌐🤝

🧭 Legacy and Future Contributions

Looking forward, Muhammad Luqman Naseem is poised to leave a lasting mark on both AI research and enterprise technology solutions. He envisions building robust, interpretable AI models that can detect and respond to evolving threats in real time. His legacy will likely rest in the convergence of ethical AI and digital security—a realm where human trust and machine intelligence meet.

Driven by intellectual integrity and cross-cultural understanding, Luqman continues to mentor emerging professionals and aims to contribute further through publications, public engagement, and collaborative innovation. Whether developing new tools or safeguarding data ecosystems, his future is undoubtedly aligned with advancing secure, responsible, and inclusive tech. ✨🔭

📝Notable Publications

Dr. Deniz Akdemir | Decision-making and Problem-solving | Best Researcher Award

Dr. Deniz Akdemir | Decision-making and Problem-solving | Best Researcher Award

NMDP, United States

Author Profile

Google Scholar 

🎓 Early Academic Pursuits

Deniz Akdemir’s journey into the world of data science and statistical genomics began with a strong academic foundation that combined both business acumen and analytical prowess. He earned his B.A. in Business Administration from the prestigious Middle East Technical University (METU) in Ankara, Turkey, in 1999. His growing interest in analytical modeling and decision-making led him to pursue a Master of Science in Statistics at METU, which he completed in 2003.

Building on this momentum, he continued his academic journey in the United States, obtaining both a Master of Arts in Applied Statistics (2004) and a Ph.D. in Statistics (2009) from Bowling Green State University. During his doctoral studies, Akdemir laid the groundwork for what would become a distinguished career in high-dimensional data analysis and computational biology. His academic training equipped him with a deep understanding of statistical theory while nurturing his talent for interdisciplinary research—a theme that would define much of his later work.

💼 Professional Endeavors

Dr. Akdemir’s professional trajectory is a blend of academia, industry, and applied research. Following the completion of his Ph.D., he held a Postdoctoral Research Associate position at University College Dublin from 2019 to 2021. During this time, he contributed to the advancement of statistical methodologies in genomic selection and experimental design.

He transitioned into the healthcare and clinical data landscape through his role at the National Marrow Donor Program (NMDP). Initially joining as a Clinical Data Scientist in 2021, Akdemir’s exceptional performance and scientific insight led to his promotion as Senior Clinical Data Scientist in 2023. At NMDP, he applies cutting-edge statistical and machine learning techniques to optimize bone marrow transplant outcomes and improve patient care—a prime example of research translating into life-saving real-world impact.

In parallel, he founded and operates StatGen Consulting, a firm that provides expert consulting services in statistical genomics and machine learning. Through StatGen, he bridges the gap between theoretical development and industry application, fostering innovation across academia, agriculture, and clinical healthcare.

🔬 Contributions and Research Focus

Deniz Akdemir is widely recognized for his pioneering contributions to statistical genomics, machine learning, and computational biology. His research revolves around developing statistical methodologies that address complex biological questions, particularly in the domains of genomic prediction, multi-trait modeling, genotype-by-environment interactions, and optimization of breeding programs.

His innovative software tools, such as TrainSel (R) and trainselpy (Python), have been instrumental in enhancing the selection of optimal training populations, improving predictive accuracy in genomic selection models. These tools are used by researchers and practitioners worldwide to streamline data-driven breeding and selection strategies.

With over 3,400 citations, 86 publications, and a growing international reputation, Akdemir’s work is a cornerstone in the statistical modeling of genomic data. His ability to integrate Bayesian methods, high-dimensional statistics, deep learning, and causal inference into biological frameworks has led to significant advances in both plant breeding and human health research.

🏆 Accolades and Recognition

While not one to seek the spotlight, Deniz Akdemir’s work has earned considerable recognition within the scientific community. His Google Scholar citation count of over 3,400 reflects the widespread adoption and influence of his methodologies. Collaborations with prominent researchers such as Jean-Luc Jannink, Mark Sorrells, Jose Crossa, and Jessica Rutkoski have resulted in high-impact publications that drive global conversations in genetics and data science.

He is also widely respected for his collaborative spirit and leadership in large-scale research projects, and his work is often cited in discussions of best practices in genomic prediction and breeding program optimization.

🌍 Impact and Influence

Dr. Akdemir’s influence extends across disciplines and continents. His statistical tools are not confined to academic research—they have practical applications in agriculture, biotechnology, and clinical medicine. His contributions help shape crop resilience strategies in the face of climate change, and inform personalized treatment strategies in hematopoietic stem cell transplantation.

Beyond the numbers, Akdemir is a mentor, educator, and thought leader. His ability to translate complex statistical theories into practical insights enables teams to make better decisions based on data. He regularly contributes to open-source communities, champions reproducible research, and supports collaborative networks across universities and institutes worldwide.

🌟 Legacy and Future Contributions

Looking ahead, Deniz Akdemir is poised to further his impact in areas where statistical innovation intersects with biological complexity. His vision for the future includes expanding the use of machine learning algorithms in healthcare, continuing to develop statistical tools that enhance breeding program efficiency, and deepening his work on genomic prediction frameworks that can transform personalized medicine.

As he continues to build bridges between disciplines and create tools that shape the future of data-driven research, Dr. Akdemir’s legacy will be that of a visionary who brought clarity, precision, and real-world impact to some of the most complex challenges in science and healthcare.

Genomic Selection and Association Mapping in Rice (Oryza sativa): Effect of Trait Genetic Architecture, Training Population Composition, Marker Number and More

Authors: J. Spindel, H. Begum, D. Akdemir, P. Virk, B. Collard, E. Redona, G. Atlin, J.-L. Jannink, S. McCouch
Journal: PLoS Genetics
Year: 2015

 Integrating Environmental Covariates and Crop Modeling into the Genomic Selection Framework to Predict Genotype by Environment Interactions

Authors: N. Heslot, D. Akdemir, M.E. Sorrells, J.-L. Jannink
Journal: Theoretical and Applied Genetics
Year: 2014

Training Set Optimization under Population Structure in Genomic Selection

Authors: J. Isidro, J.-L. Jannink, D. Akdemir, J. Poland, N. Heslot, M.E. Sorrells
Journal: Theoretical and Applied Genetics
Year: 2015

 Genome-Wide Prediction Models That Incorporate de novo GWAS Are a Powerful New Tool for Tropical Rice Improvement

Authors: J.E. Spindel, H. Begum, D. Akdemir, B. Collard, E. Redoña, J.-L. Jannink, S. McCouch
Journal: Heredity
Year: 2016

 Squamous Cell and Adenosquamous Carcinomas of the Gallbladder: Clinicopathological Analysis of 34 Cases Identified in 606 Carcinomas

Authors: J.C. Roa, O. Tapia, A. Cakir, O. Basturk, N. Dursun, D. Akdemir, B. Saka, V. Bagci, I.O. Dursun, N. Adsay
Journal: Modern Pathology
Year: 2011