Nfl Super Bowl Scores
by Ontos-AI
Finds Super Bowl score records on the NFL website for a given year.
Skill Details
Repository Files
1 file in this skill directory
name: nfl-super-bowl-scores description: Finds Super Bowl score records on the NFL website for a given year.
name: nfl-super-bowl-scores description: Finds Super Bowl score records on the NFL website for a given year. tags:
- NFL
- Super Bowl
- sports
- scores
- football
NFL Super Bowl Score Finder
This skill helps users locate the score record for a specific Super Bowl on the official NFL website.
Core Functionality
- Year-Specific Search: Takes a year as input and constructs a search query or navigates directly to the relevant Super Bowl page on NFL.com.
- Score Extraction: Identifies and extracts the final score of the Super Bowl game for the specified year.
- Team Information: Provides the names of the participating teams.
- URL Citation: Returns the direct URL to the NFL.com page where the information was found.
Usage
Trigger: "Find the 2019 Super Bowl score on the NFL website." or "What was the score of Super Bowl [Year]?"
Parameters
year: (Required) The year of the Super Bowl for which to find the score (e.g., "2019", "2023").
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