It's now Connecticut Sports Analytics Symposium (CSAS)!

  • Data/Time: April 11-12, 2025
  • Location: Yale University, New Haven, CT

Data Challenge Winners

  • High school/undergraduate division
    • Yonsei Blues (Juwon Lee, Jiyong Lee, and Yugyung Kim), Yonsei University (Korea): Optimizing Batting Orders: Monte Carlo Game Simulation Based on Batter Swing Clustering
  • Graduate division
    • Reese Mullen, Boston University: The Effect Of Injuries On Bat Speed

Student Poster Award Winners

  • First Place: Eugene Han, Yale University: Leveraging Alternative Data for Mixed Martial Arts Betting Markets
  • Second Place: Jacqueline Wang, Yale University: Regularized adjusted
    plus-minus: pseudo-Bayesian player evaluation in hockey and
    performance improvements through design matrix transformation
  • Third Place: Abhi Nagireddygari, Bowdoin College: Extracting & Analyzing Squash Match Patterns Using a Low-Cost Computer Vision Framework

About CSAS

While there are many well established sports analytics conferences, they are often not accessible to students due to technical level, cost, or space limitations. Connecticut Sports Analytics Symposium (CSAS) is a continuation of the UConn Sports Analytics Symposium (UCSAS) which started in 2019 with a broadened scope. It focuses on students at all levels, including graduate, undergraduate, and high school, who are interested in sports analytics or more generally, data science. CSAS aims to:

  • showcase sports analytics to students at an accessible level;
  • train students in data analytics with application to sports data; and
  • foster collaboration between academic programs and the sports industry.