Work place: Department of Internet of Things and Robotics Engineering, University of Frontier Technology, Bangladesh, Kaliakair, Gazipur-1750, Dhaka, Bangladesh
E-mail: 1901006@iot.uftb.ac.bd
Website: https://orcid.org/0009-0009-7618-353X
Research Interests:
Biography
Arifa Azmary is a recent graduate from University of Frontier Technology, Bangladesh, where she completed her B.Sc. (Engg.) degree in IoT and Robotics Engineering. She’s deeply interested in web development, machine learning (ML), and artificial intelligence (AI), and is passionate about how these technologies can be used to solve real-world problems. Throughout her academic journey, Arifa worked on a variety of hands-on IoT- based projects, where she learned to design and implement smart systems. Her projects combined hardware, embedded systems, and AI-driven decision-making, aiming to create more efficient and sustainable solutions. Arifa’s curiosity and commitment to emerging technologies drive her to constantly learn and explore new ways to make an impact in the fields of IoT, robotics, and AI. She’s excited about using her skills to help shape a future where technology improves lives in meaningful ways.
By Arifa Azmary Marshia Muntaka Atiqur Rahman Md. Toukir Ahmed
DOI: https://doi.org/10.5815/ijieeb.2026.02.09, Pub. Date: 8 Apr. 2026
In recent years, the rapid advancement of machine learning (ML) has surpassed many expectations, and its application in the healthcare sector has emerged as one of the most fascinating areas of exploration. This thesis looks into whether machine learning can increase the precision and efficacy of breast cancer diagnosis. With the help of nine classification algorithms including Random Forest, XGBoost and MLP Classifier the given work intends to propose a reliable automatic solution for malignant and benign classification of breast tumor. The main idea of the project is the development of the Web based tool that would allow doctors and other medical practitioners to make quick decisions The MLP Classifier was found to be the optimal solution after its efficiency was evaluated based on the accuracy rate, and such parameters as precision rate, recall rate, and F1-score. This leads to development of a user friendly app; even those that would not originally consider themselves technical can easily operate the application. Apart from addressing the matter of high accuracy of diagnostics, the system shows the possibility of minimizing the rates of human factors and optimizing clinical decision. Seeking for that day when technology and human opinion will complement each other in the delivery of healthcare, our study neither only contributes to the growing literature on applying artificial intelligence in healthcare but also evolves the blueprint to integrate ML models in everyday practice.
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