College Football Data
Summary
This College Football Data MCP server, developed by Chris Leonard, provides AI assistants with access to comprehensive college football statistics via the College Football Data API. Built with Python and leveraging libraries like httpx and pydantic, it offers a natural language interface for querying game results, team records, player stats, rankings, and advanced metrics. The server implements robust error handling, rate limiting, and caching to optimize API usage. By abstracting the complexities of data retrieval and analysis, it enables AI systems to generate insights on team performance, analyze historical trends, and compare statistics across seasons. This implementation is particularly valuable for sports analysts, researchers, and fans seeking in-depth college football data analysis, facilitating use cases such as game prediction, player evaluation, and historical performance comparisons.
Available Actions(9)
get-games
Retrieve game data.
get-records
Get team records.
get-games-teams
Access team game statistics.
get-plays
Query play-by-play data.
get-drives
Analyze drive information.
get-play-stats
View play statistics.
get-rankings
Check team rankings.
get-pregame-win-probability
See win probabilities.
get-advanced-box-score
Access detailed game statistics and analytics.
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