Agent skill
java
Enhanced Java (JDK) environment manager for installing, switching, and running Java applications. Core Scenario: When the user needs to manage JDK versions or run Java/Jar files via CLI.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/java
SKILL.md
java - Java (JDK) Environment Management
The java module provides a comprehensive way to manage Java Development Kits (JDK) and execute Java applications, ensuring that the appropriate runtime is available across different systems.
When to Activate
- When installing or switching between multiple JDK versions.
- When running
.jarfiles or compiling Java source code. - When identifying the currently active Java environment.
Patterns & Examples
Run Jar File
# Execute a Java archive file
x java -jar myapp.jar
Checklist
- Verify the desired JDK version.
- Ensure the
.jaror.javafile path is correct.
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