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YuHsunWang/README.md

Hi, I'm Shane

FamilyMart Data Analyst | NTU Econ MA | Retail analytics, quant research, ML, and knowledge workflows.

I work on retail data analytics and use side projects to explore Taiwan equity research, machine learning, statistical modeling, and practical data products.


Knowledge Base & Research Notes

I maintain a public knowledge base for research notes, side projects, and learning records. Notes are drafted in Obsidian, published with MkDocs, and maintained with an AI-assisted workflow.

Knowledge Base Notes

  • Trading Research: Taiwan equity strategies, backtesting, risk metrics, and market observations
  • Machine Learning: modeling workflows, statistical inference, and data analysis practice
  • Industry Research: passive components and other industry research notes
  • AI Engineering Notes: learning notes on RAG, agents, MCP, prompt engineering, and LLM evaluation

Current Project Focus

  • Financial data analysis, backtesting, and strategy research
  • Machine learning modeling and data visualization
  • Maintaining a knowledge base that connects notes, research, and coding projects

Tech Stack

Analysis & Modeling

Python R SQL scikit-learn statsmodels SciPy

Visualization & BI

Power BI Plotly Matplotlib Seaborn

Databases & Tools

MySQL DuckDB MongoDB Git


Projects

Taiwan equity strategy research with financial data analysis, backtesting, and trading signal evaluation.

Bayesian MCMC preference model using Metropolis-Hastings to estimate browsing preferences, diversity preference, and switching costs.

Convenience store food review analysis using PTT CVS posts, sentiment scoring, credibility weighting, and product ranking.

A TOEIC practice PWA built with React, Vite, and Gemini API for exercise generation and learning feedback.

Financial engineering notes and Python implementations for Black-Scholes pricing, Monte Carlo simulation, and risk metrics.


Contact

Email LinkedIn

Pinned Loading

  1. mcmc-portfolio mcmc-portfolio Public

    Bayesian MCMC model for estimating browsing preferences, diversity preference, and switching costs.

    Jupyter Notebook

  2. toeic-master toeic-master Public

    TOEIC practice PWA built with React, Vite, and Gemini API.

    JavaScript

  3. cvs-radar cvs-radar Public

    Convenience store food review analysis using sentiment scoring, credibility weighting, and product ranking.

    Python

  4. Financial_Engineering Financial_Engineering Public

    Financial engineering notes and Python implementations for option pricing, Monte Carlo simulation, and risk metrics.

    Jupyter Notebook

  5. Code_Practice Code_Practice Public

    Archived coding practice exercises for Python, data structures, algorithms, and programming fundamentals.

    Jupyter Notebook

  6. ML100day ML100day Public

    Archived ML course exercises covering data preprocessing, classical ML, unsupervised learning, and deep learning.

    Jupyter Notebook