Agent skill
wkp
Wikipedia search and summary extraction tool. Core Scenario: When AI needs to quickly obtain definitions or official summaries in the terminal.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/wkp
SKILL.md
x wkp - Wikipedia Assistant (AI Optimized)
x wkp provides a minimal interface for retrieving article lists, suggestions, and detailed summaries from Wikipedia via the command line.
When to Activate
- When a quick definition of a term, historical event, or technical concept is needed.
- When retrieving the plain-text summary of a specific Wikipedia entry.
- When getting search suggestions or related article lists via keywords.
Core Principles & Rules
- Non-interactive First: Avoid the
--appinteractive UI; useextractorhopsubcommands directly for plain text. - Structured Retrieval: Prioritize
extractfor detailed body text, orhopfor a concise summary of the first matching item.
Patterns & Examples
Extract Detailed Summary
# Get a detailed summary for "OpenAI"
x wkp extract OpenAI
Search for Related Entries
# Search for the keyword "Large Language Model"
x wkp search "Large Language Model"
Hop to the First Result's Summary
# Search and output the summary of the first match (most efficient)
x wkp hop "Rust Programming"
Get Search Suggestions
# Get suggestions for related entries when unsure of exact spelling
x wkp suggest "Quantom Computing"
Checklist
- Confirm if the query term needs to be quoted.
- Choose between
search(list) andextract(content) based on needs. - Default to English or Chinese queries for the most comprehensive info.
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