Mr. Abdullah Al Mamun | Machine Learning | Young Scientist Award
Lecturer at Dhaka University of Engineering & Technology (DUET), Gazipur, Bangladesh.
Abdullah Al Mamun is an emerging researcher and academic professional π specializing in cutting-edge fields like IoT and Sustainability, Machine Learning, Computer Vision, and Explainable Artificial Intelligence π€πΏ. Currently serving as a Lecturer at the Model Institute of Science and Technology in Gazipur, he is also pursuing his Master of Science in Computer Science and Engineering at Dhaka University of Engineering & Technology (DUET) π. He has authored multiple peer-reviewed journal and conference papers π, many of which are published in IEEE and MDPI journals. Abdullah has been actively involved in several national and international research projects and has collaborated with scholars globally π. His drive to explore solutions for environmental monitoring, medical diagnostics, and smart systems using intelligent technology sets him apart π. Outside of academia, Abdullah engages in social volunteering, tech events, and academic clubs, continuously contributing to the student and research community π‘π₯.
Professional Profile:
Suitability for Young Scientist Award – Mr. Abdullah Al Mamun
Abdullah Al Mamun is an exceptionally promising early-career researcher and educator whose work spans IoT, Sustainability, Machine Learning, Computer Vision, and Explainable AI. His multidisciplinary contributions, especially in the areas of environmental monitoring, healthcare systems, and smart technologies, exhibit both innovation and societal relevanceβkey elements sought in a Young Scientist Awardee. His academic journey, technical expertise, international collaborations, and impactful project involvement establish him as a capable and committed scientist at the frontier of modern computing and intelligent systems.
π Education
Abdullah Al Mamun earned his Bachelor of Science in Computer Science and Engineering from Dhaka University of Engineering & Technology (DUET), Gazipur ππ». Currently, he is pursuing his Master of Science in Engineering in the same department at DUET (2024βPresent) ππ§ . His academic focus is rooted in data-driven research, intelligent systems, and digital sustainability π±π. With a CGPA of 3.64 in the final 21.25 credits, Abdullah shows consistent improvement and dedication to advanced technical learning ππ§βπ».
π§βπΌ Professional DevelopmentΒ
Abdullah Al Mamun has accumulated diverse professional experiences in both academia and the tech industry π§βπ«πΌ. Currently, he is working as a Lecturer in the Department of CSE at the Model Institute of Science and Technology, Gazipur π. He has served as a Research Assistant in South Korea’s Woosong University under the Multimedia Signal & Image Processing Group ππΌοΈ. In addition, he worked as a Tutor for over 3 years, teaching programming, data structures, and system analysis ππ¨βπ«. He also completed internships in web development and CMS-based platforms, gaining practical expertise in frontend and backend tools like HTML, CSS, JavaScript, PHP, and WordPress π»π§. He has contributed to government-funded projects like LICT and EDGE, further solidifying his experience in IT and system development for public infrastructure ποΈπ§π©.
π§ͺ Research FocusΒ
Abdullah’s research focus lies primarily at the intersection of IoT and environmental sustainability π, Machine Learning and Artificial Intelligence π€, and Computer Vision and Explainable AI ποΈπ. His projects include smart solar monitoring, child safety systems, and efficient deep learning models for medical applications like skin cancer detection π₯β‘. He aims to address real-world challenges through scalable, intelligent technologies that enhance both safety and efficiency in smart cities and healthcare systems ποΈπ. His recent work under review explores mental health classification in Thalassemia patients, digital land monitoring, and cyber intrusion detectionβillustrating a commitment to data ethics and sustainable innovation ππ. With a mix of theoretical foundations and practical system implementations, Abdullah’s research contributes significantly to modern computational solutions in healthtech, sustainability, and cybersecurity ππ‘.
π οΈ Research Skills
Abdullah possesses a diverse and robust research skill set π―. His core technical skills include Python programming π, machine learning models π€, deep learning frameworks like YOLOv8 π―, and simulation tools such as Origin, Matplotlib, and Seaborn π. He is proficient in both supervised and unsupervised learning, especially in outlier detection, parameter optimization, and data visualization π§ πΌοΈ. His hands-on work with Arduino, image processing, and web-based monitoring systems demonstrates strong integration of hardware-software synergy π§π». He is also adept in Explainable AI, which enhances transparency in decision-making algorithms ππ§Ύ. Abdullah’s ability to manage end-to-end pipelines from data collection to model deployment, along with experience in collaborative and interdisciplinary projects, sets a strong foundation for innovative research ππ¬. His publications and ongoing research underline his capabilities in academic writing, critical thinking, and experimental design ππ§ͺ.
π Awards and Honors
Abdullah has earned recognition for his academic and technical excellence πποΈ. He won the Second Runner-Up prize at BEYOND THE METRICS-2023, hosted by the Department of Business and Technology Management, IUT ππ. He was also the Runner-Up in the Intra DUET Programming Contest (IDPC) 2022 organized by DUETβs CSE Department π§βπ»π₯. Additionally, he has participated and been selected in prestigious competitions such as the NASA Space App Challenge 2024 π, DUET TECH FEST, and ROBO MANIA π€. These accolades reflect his commitment to innovation, teamwork, and competitive programming skills ππ‘.
Publication Top Notes
1. Software Defects Identification: Results using Machine Learning and Explainable Artificial Intelligence Techniques
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Authors: M. Begum, M.H. Shuvo, I. Ashraf, A. Al Mamun, J. Uddin, M.A. Samad
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Published in: IEEE Access, Volume 11, Pages 132750-132765
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Year: 2023
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Citations: 13
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Summary:
This paper investigates how machine learning (ML) and explainable artificial intelligence (XAI) methods can enhance the identification of software defects. The study uses multiple ML models (such as Random Forest, SVM, and XGBoost) and applies explainability techniques (e.g., SHAP, LIME) to interpret model decisions. The results show improved defect prediction accuracy and transparency, contributing to software reliability and maintainability.
2. Developed an IoT-Based Smart Solar Energy Monitoring System for Environmental Sustainability
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Authors: A. Al Mamun, M.H. Shuvo, T. Islam, D. Islam, M.J. Islam, F.A. Tanvir
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Published in: 2024 3rd International Conference on Advancement in Electrical and Electronic Engineering (ICAEEE)
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Year: 2024
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Citations: 4
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Summary:
This paper presents an Internet of Things (IoT)-enabled smart solar energy monitoring system. The system tracks and analyzes real-time data such as voltage, current, and energy output to promote environmental sustainability and efficient energy usage. Cloud-based dashboards and mobile alerts enhance usability. The innovation supports green energy adoption, especially in remote or resource-limited areas.
3. Developing an IoT-Based Child Safety and Monitoring System: An Efficient Approach
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Authors: K.I. Masud, M.H. Shuvo, A. Al Mamun, J. Mallick, M.R. Jannat, M.O. Rahman
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Published in: 2023 26th International Conference on Computer and Information Technology (ICCIT)
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Year: 2023
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Citations: 4
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Summary:
This paper proposes an IoT-driven child safety and monitoring system that integrates GPS tracking, wearable sensors, and mobile app notifications. Designed to prevent child abduction and accidents, the system provides real-time location updates and safety alerts to parents or guardians. The study highlights its effectiveness, low cost, and adaptability in both urban and rural settings.
4. Internet of Things (IoT)-Based Solutions for Uneven Roads and Balanced Vehicle Systems Using YOLOv8
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Authors: M. Begum, A.K.I. Riad, A.A. Mamun, T. Hossen, S. Uddin, M.N. Absur, …
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Published in: Future Internet, Volume 17, Issue 6, Article 254
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Year: 2025
- Summary:
This study introduces an IoT-based system that leverages the YOLOv8 deep learning model to detect road anomalies such as potholes and bumps. The system uses real-time video analytics and onboard sensors to inform vehicle control systems, improving passenger comfort and road safety. The approach demonstrates high accuracy and responsiveness in urban mobility applications.