
During two months of work on the iramler/slu_score_module_development repository, mgwahl21@stlawu.edu developed a cohesive Gymnastics Data Analysis Suite and a comprehensive Scores Analysis Notebook. They engineered reproducible workflows for consolidating, wrangling, and analyzing gymnastics scoring data, leveraging R and R Markdown for statistical modeling and visualization. Their approach integrated CSV data assets, Quarto HTML reporting, and predictive modeling using linear and mixed-effects models to estimate scores from difficulty and execution metrics. The work demonstrated depth in data engineering and analytics, enabling scalable, data-driven insights for gymnastics scoring and laying a foundation for future extensibility and reporting.

May 2025 monthly summary for iramler/slu_score_module_development: Key feature delivered a Gymnastics Scores Analysis Notebook (R Markdown) encapsulating data wrangling, exploratory data analysis with visualizations, and predictive modeling to estimate scores from difficulty and execution. No major bugs fixed this month. Impact: provides an end-to-end, reproducible analytics workflow that enables data-driven evaluation of gymnastics scoring, supports coaching and judging insights, and lays groundwork for scalable extension. Technologies demonstrated: R, R Markdown, data wrangling with dplyr/tidyr, visualization with ggplot2, and linear and multi-level modeling (e.g., lm and mixed-effects models).
May 2025 monthly summary for iramler/slu_score_module_development: Key feature delivered a Gymnastics Scores Analysis Notebook (R Markdown) encapsulating data wrangling, exploratory data analysis with visualizations, and predictive modeling to estimate scores from difficulty and execution. No major bugs fixed this month. Impact: provides an end-to-end, reproducible analytics workflow that enables data-driven evaluation of gymnastics scoring, supports coaching and judging insights, and lays groundwork for scalable extension. Technologies demonstrated: R, R Markdown, data wrangling with dplyr/tidyr, visualization with ggplot2, and linear and multi-level modeling (e.g., lm and mixed-effects models).
March 2025 performance summary for iramler/slu_score_module_development: Delivered a cohesive Gymnastics Data Analysis Suite that consolidates gymnastics data assets and analyses into a reproducible data analysis workflow, enabling faster data-driven scoring insights and scalable reporting. Established initial data wrangling, analysis, and modeling components and validated the repository's commit workflow with a lightweight test artifact.
March 2025 performance summary for iramler/slu_score_module_development: Delivered a cohesive Gymnastics Data Analysis Suite that consolidates gymnastics data assets and analyses into a reproducible data analysis workflow, enabling faster data-driven scoring insights and scalable reporting. Established initial data wrangling, analysis, and modeling components and validated the repository's commit workflow with a lightweight test artifact.
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