Direkt zum Inhalt

Super Bowl Analytics with polars

Will Bracken guides you through solving data analysis problems using polars, a lightning-fast DataFrame library built for modern analytics.
6. Feb. 2026

The Super Bowl isn’t just a spectacle—it’s also a rich source of data for uncovering patterns, testing hypotheses, and practicing your analytics skills. In this hands-on session, you’ll use the polars Python package to analyze historical Super Bowl data, answering real questions about team performance, scoring trends, and more.

In this code-along, Will Bracken, a Data Science Manager at MongoDB, will guide you through solving data analysis problems using polars, a lightning-fast DataFrame library built for modern analytics. You’ll explore how to manipulate and calculate metrics on large datasets, and even apply simple machine learning models to American football data.

Key Takeaways:

  • Learn how to use the polars Python package for efficient data analysis.
  • Solve real-world analytical questions using Super Bowl data like has the NFL evolved into a passing league, do player ratings from organizations like Madden correlate with performance on the field, and do defenses really win championships? 
  • Understand how to apply calculations and basic ML techniques to sports analytics problems and make your own model to predict this year’s super bowl winner.

Session Resources

Resources

Themen
Verwandt

Blog

An Introduction to Polars: Python's Tool for Large-Scale Data Analysis

Explore Polars, a robust Python library for high-performance data manipulation and analysis. Learn about its features, its advantages over pandas, and how it can revolutionize your data analysis processes.
Moez Ali's photo

Moez Ali

9 Min.

Blog

Getting Started with Polars GPU Acceleration: 13x Faster Queries

Discover how to use the recently released Polars GPU engine, powered by NVIDIA RAPIDS cuDF, to achieve faster query performance on large datasets.
Thalia Barrera's photo

Thalia Barrera

11 Min.

Tutorial

High Performance Data Manipulation in Python: pandas 2.0 vs. polars

Discover the main differences between Python’s pandas and polars libraries for data science
Javier Canales Luna's photo

Javier Canales Luna

code-along

Superbowl Analysis in Python

Learn to do exploratory data analysis in Python on historic Super Bowl data.

Eric Eager

code-along

Analyzing Olympics Data in SQL & Databricks

In this session, Holly, a Staff Developer Advocate at Databricks, teaches you how to get started using the Databricks platform while working through an analysis of Olympics sporting data.
Holly Smith's photo

Holly Smith

code-along

Analyzing Home Field Advantage at The Super Bowl in R

Paul Sabin, Lecturer in Statistics & Data Science, and Senior Sports Analytics Fellow at The Wharton School, will guide you through analyzing home field advantage in Super Bowl games.
Paul Sabin's photo

Paul Sabin

Mehr anzeigenMehr anzeigen