- Location
- Mississauga, Ontario, Canada
- Portals
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Vancouver, British Columbia, Canada
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Toronto, Ontario, Canada
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Skills
Socials
Achievements



Latest feedback
Recent projects

Synthetic data project framework
Our company is interested in creating frameworks / templates for our pilot projects with social impact clients. Impact of this work is to maintain efficient operational execution in how we structure our client work. We would like to collaborate with students to provide cohesive, appropriate details relative to the pilot project scaffolding from our Data Scientists. Students will write technical statistical documentation on methodologies and write code (likely in Python, using Jupyter and/or Marimo notebook) so we can achieve a fulsome pre-pilot understanding of the workflow involved. This will involve several different steps for the students, including: Working with Data Scientist guidance to write code that assesses initial data type, structure, etc, especially on determining appropriate analytical tooling for client data use case categories Expanding on baseline Data Scientist framework document for synthetic data 'utility' metrics, i.e. how useful to a given statistical model the synthetic data is Completing all above in analytical objectives including but not limited to dimension reduction, relationship analysis, and clustering

AI-Powered Financial Analysis System
The project aims to develop an AI-powered financial analysis and trading assistant designed to evaluate market momentum and provide short- to mid-term forecasts and strategies. The assistant will analyze real-time stock market data, financial news, and economic indicators to identify trends, investment opportunities, and potential risks. By leveraging AI-driven scoring and sentiment analysis, the system will offer buy/sell signals, market sentiment insights, and strategic recommendations to guide decision-making. The solution will be hosted on a secure cloud platform to ensure accessibility and scalability. This project provides learners with an opportunity to apply their knowledge of AI, data analysis, and financial markets to create a tool that simplifies market analysis and enhances investment strategies.
Work experience
Data Engineer
Chromatic Data
Mississauga, Ontario, Canada
February 2025 - Current
• Developed SQL-based ETL pipelines to extract and aggregate historical stock prices, and financial statements,
from multiple databases, reducing data processing time by 50% and ensuring high data accuracy for financial modeling.
• Implemented machine learning models using Monte Carlo simulations and regression analysis to predict stock price
movements, portfolio returns, and risk-adjusted performance, improving model precision by 28%
• Used PCA, correlation analysis, and K mean clustering to optimize data processing, cutting computer load by 40%.
Financial Analyst
Valemount Consulting
September 2024 - Current
Conducted financial analysis for five SaaS, AI, and fintech companies by creating DCF models with forecasted revenues,
free cash flows, and terminal values using Python and Excel, influencing $11M+ investment decisions.
• Built Python modules with vectorized operations to optimize DCF calculations, increasing efficiency by 37%.
• Presented investment reports to partners, collaborating with three analysts to summarize key valuation metrics, financial
risks, and competitive advantages, guiding decision making for five acquisition strategies.
Chapter President
Xavier DECA
Mississauga, Ontario, Canada
May 2023 - June 2024
• Planned and executed four mock competitions, three technical workshops, and two finance conferences with 150+
attendees, resulting in 85 provincial and 12 international qualifiers, while increasing membership by 110%.
• Directed a team of 120+ members and 11 executives for training in finance, marketing, law, and entrepreneurship
Sales Associate & Bookkeeper
J&C Retailers
Toronto, Ontario, Canada
November 2022 - June 2024
Managed financial records using QuickBooks, streamlining transactions and improving accounting efficiency by 67%.
• Conducted weekly inventory audits, identifying and resolving discrepancies, saving the store $2,300 annually.
• Developed annual budgets with 95% forecast accuracy, optimizing resource allocation for a $240,000 operation, and
processed payroll for 6 employees, ensuring 100% on-time disbursements and compliance with tax regulations.
Technical Team and Finance Lead
FRC Team 1325 Inverse Paradox
Mississauga, Ontario, Canada
September 2022 - September 2024
Developed a data collection program using React.js and TypeScript to analyze data from 250+ matches, calculate
scoring metrics, and enable 30+ scouters to input data, optimizing team performance and strategy.
• Led a team of eight students to organize 10+ outreach events, promoting STEM education to 200+ students.
• Created industry-standard part drawings that reduced errors and cut production time by four days.
• Achieved top competition results, placing 3rd in Ontario, 23/3400 globally, and 1st at two district competitions.
Education
Computing and Financial Management, Computer Science & Finance
University of Waterloo
September 2024 - April 2029
Personal projects
Black-Scholes Option Pricing Tool
January 2025 - January 2025
https://github.com/KhushP27/Black-Scholes-Options-Pricing-ModelBlack-Scholes Option Pricing Tool | Python, Streamlit, NumPy, pandas, Matplotlib
• Developed a pricing calculator using Python and Streamlit with a user-friendly interface for inputting key
parameters such as stock price, strike price, time to maturity, volatility, and risk-free rate.
• Designed heatmap visualizations using Matplotlib to show option values for various stock prices and volatilities
• Created configurable ranges for stock price and volatility shocks, to view option pricing sensitivities.
Visually Impaired Assistance APP
January 2025 - January 2025
https://devpost.com/software/sightsense-tx8l9eVisually Impaired Assistance App | Python, Swift (IOS), FastAPI, YOLO, Mediapipe, Transformers
• Developed a FastAPI backend in Python, integrating EasyOCR and GPT for 95% accurate text and image response.
• Built real-time object detection with YOLO and Mediapipe, delivering sub-100ms feedback via a Swift iOS app.
• Integrated depth estimation and Google TTS for spatial guidance, increasing user engagement by 60%.
Technologies Used:
cv2, depth-anything, easy-ocr, fastapi, gpt-4, gtts, huggingface, mediapipe, numpy, openai, opencv, pillow, python, pytorch, swift, text-to-speech, ultralytics, vision, yolov8
Console Blackjack Game
November 2024 - November 2024
Console Blackjack Game | Java, Git, IntelliJ IDEA, OOP, JUnit
• Developed a fully functional Blackjack game using object-oriented programming (OOP) principles, with classes for
Deck, Card, and Player, implementing card shuffling, game state management, and player input logic.
• Designed robust input validation with 100% accuracy to handle errors, invalid inputs, and edge cases.
• Optimized game performance supporting up to two concurrent players in a console-based environment, implementing
efficient logic for gameplay flow while maintaining clear, responsive, and user-friendly interfaces.
Automated Long Term Stock Portfolio Creator
November 2024 - November 2024
https://github.com/KhushP27/Quantitative-Stock-Portfolio-AdvisorLong-Term Stock Portfolio Creator | Python, NumPy, pandas, Matplotlib, Yahoo Finance
• Developed a portfolio management tool using Python, analyzing 40+ tickers with financial metrics such as tracking
error, beta values, and correlation, and applying min-max normalization on 3 metrics to optimize performance.
• Built scoring based weighting mechanisms for $1M portfolios, balancing risk/return with quantitative methods.
• Achieved 2nd place in a real-time week-long simulation, tracking the S&P 500 and TSX 60 to a 81% accuracy level.
Market Arbitrage Finder
October 2024 - October 2024
https://github.com/KhushP27/Market-Arbitrage-FinderMarket Arbitrage Finder | Python, NumPy, pandas, Matplotlib, Yahoo Finance
• Developed a tool to identify arbitrage opportunities between Canadian and American exchanges.
• Analyzed cross-listed stocks using Matplotlib to find discrepancies by graphing implied vs. actual exchange rates.
• Discussed implications of standard deviation, mean, and median to optimize profits achieving 151% returns.