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Muhammad Uzair Wajeeh

NUST · 2026

Academic

Program
BEE
CGPA
2.25
Year
2026
Education
SEECS
Address
Islamabad, Pakistan
DOB

Career

Current role
Engineering Intern - OFC Planning and Development at Transworld Home
Target role
Skills
LaTeX, Overleaf, React Native, Postman, RESTful APIs, Optical Fiber Communication, Network Planning, AI, Machine Learning, Deep Learning, LLMs, RBAC, MFA, Blockchain

Verbatim text

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Muhammad Uzair Wajeeh
Cell: 923316266667 |  Email: uzairwajeeh1@gmail.com
LinkedIn: https://www.linkedin.com/in/uzair-wajeeh-2804b224b?
utm_source=share&utm_campaign=share_via&utm_content=profile&utm_medium=android_app
Address: HOUSE F-75, HAMMAM ROAD, ATTOCK , Islamabad , Pakistan
PROFESSIONAL PROFILE
Final-year Electrical Engineering student at NUST SEECS with a growing interest in computer and communication networks.
Completed an internship at CSN Lab, NUST, and currently undertaking an engineering internship at Transworld, gaining initial
exposure to optical fiber communication networks and network planning concepts. Possess foundational understanding of
networking principles and system-level engineering workflows. Currently pursuing a Final Year Project related to secure AI-driven
healthcare systems and motivated to further develop practical networking and communication engineering skills.
EDUCATION
Bachelors in Electrical Engineering (BEE)
School of Electrical Engineering and Computer Science(SEECS) , Islamabad , 2.25 (2022-2026)
INTERNSHIP EXPERIENCE
Summer Intern at CSN lab(NUST)
25-Jun-2025 - 25-Aug-2025
Learned and applied LaTeXand Overleaf for professionalacademic witing, collaborative editing, and paper formatting. Gained hands-
on skills in cross-platform appdevelopment using React Native for building mobile applications. Learned to use Postman for
testingand validating RESTful APls
Transworld Home
08-Jan-2026 - 09-Feb-2026
Engineering Intern - OFC Planning and Development
FINAL YEAR PROJECT
Secure AI-Driven Healthcare System for Disease Diagnosis and Patient Management
Artificial intelligence (AI) and machine learning (ML) are transforming healthcare by enhancing disease diagnosis, hospital workflow,
and patient management. Traditional diagnostic methods for diseases like malaria, pneumonia, and other infections often suffer from
human error, delays, and accessibility issues, particularly in remote and resource-limited regions. There is a growing need for an AI-
powered healthcare management and disease diagnosis platform that can support automated medical analysis and patient-doctor
connectivity. However, AI-driven healthcare systems also introduce security and privacy concerns, as unauthorized access, data
tampering, and lack of accountability can result in serious privacy breaches, misdiagnoses, and regulatory violations. Without strict
access control, any staff member, whether a doctor, nurse, or technician, could view or alter sensitive medical data, increasing the
risks of errors, fraudulent activity, and loss of patient trust. Given the sensitive nature of medical records and personal health
information, it is critical to implement advanced security measures to protect patient data from cyber threats and unauthorized
access. This FYDP aims to develop a Secure AI-Driven healthcare Management and Disease Diagnosis System that integrates AI-
powered disease detection, patient-doctor connectivity, and hospital workflow automation while ensuring robust security mechanisms
to safeguard sensitive medical data. The system will enhance early disease detection and medical decision-making by utilizing deep
learning models for medical imaging analysis and Large Language Models (LLMs) for real-time patient guidance. Beyond diagnosis,
the system will support secure patient data management, appointment scheduling, resource tracking, and emergency alerts. In critical
cases, it will automatically connect patients to the nearest available doctor and facilitate appointment booking. To address security
concerns, the system will incorporate Role-Based Access Control (RBAC) to restrict access based on user roles, ensuring that only
authorized personnel can view or modify specific patient records. RBAC enhances data security by preventing unauthorized access,
improving accountability, and maintaining a detailed audit trail of all system activities. Additionally, Multi-Factor Authentication (MFA)
will strengthen login security, End-to-End Encryption will secure data transmission, and Blockchain Audit Logs will provide an

AI enrichment

Muhammad Uzair Wajeeh is a final-year Electrical Engineering student at NUST with a 2.25 CGPA, currently undertaking internships in optical fiber communication and software development. He has gained foundational experience in React Native, API testing, and LaTeX, while working on a final year project involving AI-driven healthcare systems and blockchain security.
Skills (AI)
["React Native", "Postman", "LaTeX", "Overleaf", "Optical Fiber Communication", "Network Planning", "AI/ML", "Blockchain", "RBAC", "MFA", "End-to-End Encryption"]
Status: ai_done
Provenance
Source file: SEECS - Electrical Engineering-2026.pdf
From job #259 page 191
Created: 1778168427