
Developed a suite of data science and machine learning materials for the HWTeng-Teaching/202509-ML-FinTech repository, focusing on reproducible workflows and modular curriculum design. Built end-to-end Jupyter Notebooks covering exploratory data analysis, clustering, regression, and principal component analysis, using Python, Pandas, and Scikit-learn. Established project scaffolding and documentation to streamline onboarding and support collaborative development. Delivered hands-on tutorials for hierarchical and K-means clustering, multiple regression models, and financial data analysis, each with clear commit histories to ensure maintainability. Implemented math utilities and plotting templates to accelerate future notebook development, emphasizing clarity, reproducibility, and practical application for teaching and experimentation.
November 2025: Delivered three notebook-based features in HWTeng-Teaching/202509-ML-FinTech, focusing on data analysis, predictive ML workflows, and math-focused tooling. Features were implemented with clear commit history to support reproducibility and onboarding. No major bugs were reported in this period.
November 2025: Delivered three notebook-based features in HWTeng-Teaching/202509-ML-FinTech, focusing on data analysis, predictive ML workflows, and math-focused tooling. Features were implemented with clear commit history to support reproducibility and onboarding. No major bugs were reported in this period.
October 2025 — HWTeng-Teaching/202509-ML-FinTech: Established a scalable ML coursework foundation with project scaffolding and a suite of end-to-end notebooks spanning clustering and regression workflows. Implemented a robust directory structure (including a placeholder HW2 directory under xxxx_NAME/2020_AyeMya) to support modular content expansion and reproducible teaching materials. Delivered hands-on materials for clustering (hierarchical with complete and single linkage; K-means), regression analyses (AutoData with multiple linear regression, including data loading, descriptive stats, correlations, interactions, and diagnostic plots), Boston housing regression (simple, multiple, and polynomial models with visualizations), and PCA-enabled clustering analysis. These materials enable rapid curriculum delivery, reproducible experiments, and improved onboarding for learners and instructors.
October 2025 — HWTeng-Teaching/202509-ML-FinTech: Established a scalable ML coursework foundation with project scaffolding and a suite of end-to-end notebooks spanning clustering and regression workflows. Implemented a robust directory structure (including a placeholder HW2 directory under xxxx_NAME/2020_AyeMya) to support modular content expansion and reproducible teaching materials. Delivered hands-on materials for clustering (hierarchical with complete and single linkage; K-means), regression analyses (AutoData with multiple linear regression, including data loading, descriptive stats, correlations, interactions, and diagnostic plots), Boston housing regression (simple, multiple, and polynomial models with visualizations), and PCA-enabled clustering analysis. These materials enable rapid curriculum delivery, reproducible experiments, and improved onboarding for learners and instructors.
September 2025: Delivered foundational documentation and data science workflow for HWTeng-Teaching/202509-ML-FinTech. Implemented a project documentation skeleton with author metadata and introduced a Boston Housing Data EDA notebook to enable reproducible analyses, positioning the project for faster onboarding and iterative feature work. No major bugs observed; work emphasizes maintainability and business value.
September 2025: Delivered foundational documentation and data science workflow for HWTeng-Teaching/202509-ML-FinTech. Implemented a project documentation skeleton with author metadata and introduced a Boston Housing Data EDA notebook to enable reproducible analyses, positioning the project for faster onboarding and iterative feature work. No major bugs observed; work emphasizes maintainability and business value.

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