Ms. Uzma Nawaz| Decision making systems | Best Researcher Award
Research Student,National University of Sciences and Technology, Pakistan
🔬 Short Biography 🌿💊📚
Uzma Nawaz is a highly promising early-career researcher in the field of artificial intelligence and computer engineering. Her research is notable for its depth, diversity, and real-world relevance, especially in healthcare and decision support systems. With strong technical skills, a robust publication track record, and ongoing work in advanced AI topics like transformers, rough set theory, and quantum machine learning, she has laid a solid foundation for future contributions.
Profile
🎓 Education
Uzma Nawaz holds a Master of Science (M.S.) degree in Computer Engineering from the National University of Sciences and Technology (NUST), Islamabad, Pakistan, which she completed in February 2024 with a CGPA of 3.3/4.0. Her master’s thesis focused on “A Novel Approach to Calculate Dominance-based Rough Sets Approximations for Dynamic Datasets,” under the supervision of Dr. Usman Qamar and Dr. Summair Raza. Her academic work concentrated on Explainable Artificial Intelligence (XAI), decision support systems, data analysis, knowledge discovery, and pattern recognition. Uzma earned her Bachelor of Science (B.S.) degree in Computer Engineering from HITEC University, Taxila, in July 2020, graduating with a CGPA of 3.2/4.0. Her final year project, funded by IGNITE Pakistan, involved developing a machine learning-based clinical decision support system for early diagnosis using physiological data.
👩🏫 Experience
Uzma gained valuable practical experience through internships at leading organizations. At IEngineering Corporation, Islamabad, she worked from September 2019 to February 2020 on the ‘American Traffic Control’ project, performing detailed image annotations to support machine learning applications in computer vision. In July–August 2019, she interned at Scientific and Engineering Services, Atomic Energy, Islamabad, where she developed a real-time web application for water-level monitoring using load cells and integrated machine learning for predictive analysis. These roles helped her apply theoretical concepts in real-world industrial environments and enhanced her skills in data preprocessing, model integration, and system development.
📚 Skills
Uzma possesses strong programming capabilities in Python, MATLAB, C++, JavaScript, and SQL. She is experienced with web development frameworks such as Django and Flask, and skilled in using Git for version control. She also has hands-on experience in database management systems like MySQL and SQL, and is proficient in VBA macro programming. Her expertise extends to simulation tools such as MATLAB and practical implementation on embedded platforms including Raspberry Pi, Arduino, FPGA, Node MCU, Jetson Nano/Xavier, and ESP Wi-Fi modules.
🛰️ Research Focus
Uzma’s research interests span a broad range of topics in Artificial Intelligence and data science. Her primary focus lies in deep learning, machine learning, computer vision, and explainable AI. She has worked extensively on medical imaging, EEG signal classification, emotion recognition, and decision support systems. Her published work includes high-impact articles in Q1 journals such as IEEE Access and Engineering Applications of Artificial Intelligence. Her ongoing research involves dynamic data modeling, dominance-based rough set theory, and deep neural networks for clinical and agricultural applications.
🏆 Awards and Honors
Uzma Nawaz has been consistently recognized for her academic and extracurricular contributions. She was awarded IGNITE funding for her final year project in 2020, acknowledging the practical significance and innovation in her work. She also served as an ambassador at the EME NUST Olympiad in 2019 and took on leadership roles as an organizer and technical team member at HITEC Olympiad and the Scientific Society. Her efforts were acknowledged through appreciation awards in various capacities during 2017.
📚Publication
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Title: A Novel Framework for Efficient Dominance-Based Rough Set Approximations Using K-Dimensional (KD) Tree Partitioning and Adaptive Recalculations Techniques
Authors: U. Nawaz, Z. Saeed, K. Atif
Year: 2025 -
Title: A Survey of Deep Learning Approaches for the Monitoring and Classification of Seagrass
Authors: U. Nawaz, M. Anees-ur-Rahaman, Z. Saeed
Year: 2025 -
Title: A Review of Neuro-Symbolic AI Integrating Reasoning and Learning for Advanced Cognitive Systems
Authors: U. Nawaz, M. Anees-ur-Rahaman, Z. Saeed
Year: 2025 -
Title: A Novel Transformer-Based Approach for Adult’s Facial Emotion Recognition
Authors: U. Nawaz, Z. Saeed, K. Atif
Year: 2025 -
Title: A Novel Approach to Calculate Dominance-Based Rough Sets Approximations for Dynamic Datasets
Author: U. Nawaz
Year: 2024
🏁conclusion:
Uzma Nawaz is a strong and deserving candidate for the Best Researcher Award, especially in the early-career or emerging researcher category. Her current achievements, combined with ongoing high-potential projects and a commitment to both applied and theoretical research, clearly demonstrate excellence, innovation, and impact. With further development in global collaboration, commercialization, and grant acquisition, she could evolve into a leading figure in her field.