Aiza Imran
Sohail Tabba HU TOPS Scholar
Aspiration Statement
Motivated by Data, AI, and Management, aiming to build a career in analytical and strategic roles where I can solve real-world problems and grow my decision-making and leadership skills.
Core Skills
- Deep Learning
- Power BI
- Power Automate
- Python
- Software Development Processes and Methodologies
Preferred Career Paths
First priority: Data Analyst
Second priority: Product Manager
Third priority: AI Engineer
Experience
Leadership / Meta-curricular
- Women Techmakers - Global Ambassador
- Gdg - Core Team Member
- Career Services Office - Event Volunteer
- General Secretary, Natural Science Club
Internship / Volunteer Work
- Data Analyst Intern, UBL (July – August 2025)
- Undergrad Researcher, Habib University (March – December 2024)
- Tech Intern, Print Eazy (March – May 2024)
- Game Programmer, Mindstorm Studios (June 2023 – August 2024)
Publications / Creative Projects
- Publication – A Qualitative Study of Bibliographic Data Sources and Retrieval Mechanisms for Computational Research
- Publication – Published in 2024, 26th International Multi-Topic Conference (INMIC)
- Leadership Role – Global Ambassador for WomenTechmakers - 2024
Final Year Project
Project Title
AgriVerse: AI-Based Agricultural Commodity Price Prediction Platform
Description
Developed an AI-powered platform to predict agricultural commodity prices using machine learning techniques, including LSTMs and ensemble models. The system integrates real-time data pipelines with a full-stack architecture, enabling continuous data ingestion, processing, and prediction. A multilingual dashboard was designed to ensure accessibility for diverse, non-technical users. The project aimed to address price volatility in agricultural markets by providing reliable, data-driven forecasts to support better decision-making for stakeholders. Key outcomes included improved prediction accuracy across multiple commodities and the successful deployment of an end-to-end system capable of handling real-world data. The project demonstrates the practical application of AI in solving domain-specific challenges at scale while prioritizing usability and impact.