
Developed an NBA Team Investment Analytics Notebook for the thezachdrake/UMD-INST627-Fall2024 repository, focusing on aligning business objectives with actionable analytics. The project defined five key questions relevant to NBA team performance and investment, then implemented a reproducible workflow using Python, pandas, and sqlite3 within Jupyter Notebooks. The notebook computes and displays descriptive statistics such as scoring averages, streaks of below-average performances, playoff appearances, year-over-year improvement, and defensive effectiveness. By consolidating problem definition and analytics in a reusable template, the work supports data-driven investment decisions and enables future extensibility for similar analyses, emphasizing clarity, traceability, and reproducibility throughout.
December 2024 monthly work summary for thezachdrake/UMD-INST627-Fall2024. Delivered an NBA Team Investment Analytics Notebook that aligns business objectives with five analytics questions and provides a reproducible workflow for computing descriptive statistics of NBA team performance (scoring averages, streaks of consecutive below-average performances, playoff appearances, year-over-year improvement, and defensive effectiveness) using pandas and sqlite3. The notebook is designed for easy sharing and extension, supporting faster, data-driven investment decisions.
December 2024 monthly work summary for thezachdrake/UMD-INST627-Fall2024. Delivered an NBA Team Investment Analytics Notebook that aligns business objectives with five analytics questions and provides a reproducible workflow for computing descriptive statistics of NBA team performance (scoring averages, streaks of consecutive below-average performances, playoff appearances, year-over-year improvement, and defensive effectiveness) using pandas and sqlite3. The notebook is designed for easy sharing and extension, supporting faster, data-driven investment decisions.

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