Nahyan Javed Ejaz Akhtar

Nahyan Javed Ejaz Akhtar

Hilton Pharma Merit Scholar

Graduate of 2026
BS Electrical Engineering

Aspiration Statement

Passionate about the intersection of AI and telecommunications, I aim to leverage my background in machine learning and network systems to build intelligent, innovative connectivity solutions for the future.

Core Skills

  • Data Analysis & Visualization
  • FPGA & SoC Implementation
  • IoT & Cloud Integration
  • Machine Learning
  • Network Simulation & Configuration
  • Python Programming

Core Competencies

  • Drive for Results
  • Planning
  • Takes Initiative

Preferred Career Paths

First priority: AI Engineer, AI- Modeling

Second priority: Telecommunication Engineer

Third priority: UI/UX Designer, Software

Experience

Leadership / Meta-curricular

  • Ee Representative
  • Member, Entrepreneurship Club

Internship / Volunteer Work

  • Student Researcher, Summer Tehqeeq Research Program - Student Researcher (June – August 2025)
  • HBL, Compliance Automation (July – August 2024)

Publications / Creative Projects

  • Publication – Biosensing-Driven Framework for Assistive Therapy: A Proof-of-Concept Study (2nd IEEE Karachi Humanitarian Technology Conference (KHI-HTC) 2026) (Under-Review)
  • Publication – BiLSTM-Based Sequential Acoustic Crash Detection for Urban Road Safety (2nd IEEE Karachi Humanitarian Technology Conference (KHI-HTC) 2026) (Under-Review)
  • Publication – HU at SemEval Task 10: Psycholinguistic Extraction and Classification for Conspiracy Narratives (SemEval 2026) (Under Review)

Final Year Project

Project Title

Car Crash Detection Using Acoustic Signature

Description

This project aims to enhance road safety and accelerate emergency response times by developing an automated car crash detection system based on acoustic signatures. Utilizing a machine learning approach, the system processes audio data such as collisions, skids, and ambient background noise and converts it into spectrogram images. An RNN-LSTM model is then trained to accurately classify these acoustic events, reliably distinguishing actual crashes from normal traffic sounds. To enable real-time, low-latency detection at the edge, the architecture is planned for hardware deployment on a Zynq SoC platform. By instantly identifying accidents the moment they occur, this system provides a critical solution to reduce emergency dispatch delays and improve outcomes in life-threatening situations.

Project Pictures