Agent skill
wttr
Check weather forecasts and moon phases directly from the terminal. Core Scenario: When the user needs current weather information or upcoming forecasts via terminal.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/wttr
SKILL.md
wttr - CLI Weather Forecast
The wttr module provides weather information for current or specified locations, utilizing the wttr.in service. It supports human-readable formats, moon phases, and unit customization.
When to Activate
- When the user wants to check the weather at their current location or a specific city.
- When viewing current or historical moon phases.
- When needing a concise weather summary for scripts or status lines.
Core Principles & Rules
- Localization: Automatically adapts units and language based on the environment unless specified.
- Moon Phases: Use the
moonsubcommand for lunar data.
Patterns & Examples
Check Local Weather
# View the weather forecast for the current location
x wttr
Check Specific City
# View the weather for Beijing
x wttr Beijing
Moon Phase
# View the current phase of the moon
x wttr moon
Checklist
- Confirm the target location (default is current).
- Verify if specific units (metric/imperial) are required.
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