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Maximilian J. Gebauer

PROFILE

Maximilian J. Gebauer

During two months on the jdpipping/summer-lab repository, Gebauer developed a suite of analytics and recommendation tools spanning sports and music domains. He built modular R Markdown notebooks for NBA, NFL, baseball, and golf analytics, applying Bayesian inference, XGBoost, and multinomial logistic regression to model team performance, win probabilities, and player outcomes. Gebauer also designed a reproducible Spotify song recommendation pipeline using ensemble methods and data preprocessing in R, enabling personalized user predictions. His work emphasized reproducibility, clear documentation, and stakeholder alignment, demonstrating depth in statistical modeling, machine learning, and data visualization while delivering production-ready, business-aligned analytical frameworks.

Overall Statistics

Feature vs Bugs

100%Features

Repository Contributions

17Total
Bugs
0
Commits
17
Features
6
Lines of code
5,645
Activity Months2

Work History

July 2025

1 Commits • 1 Features

Jul 1, 2025

July 2025 monthly summary for jdpipping/summer-lab focusing on key accomplishments, business value, and technical execution. Delivered a foundational, reproducible Spotify song recommendation model framework and associated documentation to enable rapid iteration and stakeholder alignment for personalized user experiences.

June 2025

16 Commits • 5 Features

Jun 1, 2025

June 2025 monthly summary for jdpipping/summer-lab: Delivered multi-sport analytics notebook suites (NBA, NFL, Baseball, Golf) and Educational Data Science notebooks, enabling data-driven decision making and teaching resources. Implemented advanced modeling approaches (XGBoost, Bayesian modeling, multinomial logistic regression, MLE/Empirical Bayes) with RMSE evaluation, and enhanced reproducibility and documentation across the repository.

Activity

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Quality Metrics

Correctness83.4%
Maintainability80.0%
Architecture81.2%
Performance69.4%
AI Usage20.0%

Skills & Technologies

Programming Languages

RStan

Technical Skills

Bayesian InferenceClusteringData AnalysisData PreprocessingData VisualizationEnsemble MethodsExploratory Data AnalysisMachine LearningModel TrainingR MarkdownR ProgrammingSimulationStatistical ModelingXGBoost

Repositories Contributed To

1 repo

Overview of all repositories you've contributed to across your timeline

jdpipping/summer-lab

Jun 2025 Jul 2025
2 Months active

Languages Used

RStan

Technical Skills

Bayesian InferenceClusteringData AnalysisData VisualizationExploratory Data AnalysisMachine Learning

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