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Zoya Akbar

FAST · 2021 · i21- 1403
Email
Phone
LinkedIn
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Academic

Program
CGPA
Year
2021
Education
Address
DOB

Career

Current role
Target role
Skills
Artificial Intelligence, Genetic Algorithms, Reinforcement Learning, Modern Portfolio Theory, Finance

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Al-Driven Portfolio Optimization: 
A Comparative Analysis using Artificial Intelligence and Traditional 
Models 
This research investigates the optimization of stock investment portfolios using both Al-driven and 
traditional methods. The study compares Al techniques such as Genetic Algorithms and 
Reinforcement Learning with traditional Modern Portfolio Theory to determine which approach 
yields superior risk-adjusted returns. Using historical data from the top 100 stocks in China and 
Pakistan, the study aims to identify the strengths and limitations of both methods. Additionally, the 
research explores how these approaches can contribute to achieving the United Nations 
Sustainable Development Goals (SDGs), particularly in the areas of economic growth, responsible 
consumption, and financial innovation. The findings will offer valuable insights into enhancing 
portfolio optimization and investment strategies, helping investors and financial analysts make 
more informed decisions. 
Key Words: Portfolio Optimization, Artificial Intelligence, Genetic Algorithms, Reinforcement Learning, 
Modern Portfolio Theory 
Al-DRIVEN PORTFOLIO 
OPTIMIZATION 
A Comparative Analysis using 
Artificial Intelligence and Traditional Models 
OBJECTIVE 
Evaluate the effectiveness of Al techniques, 
specifically Genetic Algorithms and 
Reinforcement Learning, 
alongside traditional Modern Portfolio Theory 
to determine which approach yields superior 
risk-adjusted returns. 
Area of Study: 
Finance 
Supervisor Name: 
Dr. Muhammad Yasir 
Group Members: 
Areeba Tariq (i21 - 1401) 
Zoya Akbar (i21- 1403)

AI enrichment

Zoya Akbar is a student researcher focusing on finance and artificial intelligence, specifically comparing AI-driven portfolio optimization methods with traditional models. Her work involves analyzing Genetic Algorithms and Reinforcement Learning against Modern Portfolio Theory using historical stock data from China and Pakistan.
Skills (AI)
["Portfolio Optimization", "Artificial Intelligence", "Genetic Algorithms", "Reinforcement Learning", "Modern Portfolio Theory", "Financial Analysis", "Data Analysis"]
Status: ai_done
Provenance
Source file: FAST School of Management - Graduate Directory 2025.pdf
From job #19 page 145
Created: 1778118645