The primary goal of AstroDebugger was to investigate the impact of travel on the performance of baseball teams, utilizing data science techniques. The primary performance metric that we used was On-base Plus Slugging (OPS), providing a full view of offensive capabilities.
OPS is a commonly used performance metric for baseball teams.It measures a players ability to get on base and the their ability to hit the ball.
AstroDebugger primary model utilized linear regression techniques to analye the provided data. Utilizing linear regressions allowed us to uncover patterns and relationships between travel variables and the OPS performance metric.
AstroDebugger wouldn't have been possible without the collaborative efforts of the team. We extend our gratitude to Rice University and all their sponsors for hosting the hackathon and providing the platform for learning and exploration.
Thank you to all the sponsors of the Rice datathon!