Agent skill
stat
Display detailed file or file system status with support for structured data exports (JSON, CSV). Core Scenario: When the user needs precise metadata about files or file systems for diagnostics or automation.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/stat
SKILL.md
stat - Enhanced File & File System Status
The stat module provides detailed metadata for files and file systems, including permissions, ownership, sizes, and timestamps, with the ability to export this data in structured formats.
When to Activate
- When the user needs detailed file attributes (permissions, inode, last modified).
- When checking file system usage and limits (e.g., total space, free inodes).
- When exporting file metadata to JSON, CSV, or TSV for automated analysis.
- When browsing file details using an interactive TUI.
Core Principles & Rules
- Precision: Provides detailed, technical metadata beyond standard
lsoutput. - Export Formats: Prioritize
--jsonor--csvfor data processing tasks. - File System Support: Use the
-fflag to target entire file systems instead of individual files.
Patterns & Examples
File Metadata
# View detailed information for a specific file
x stat myfile.txt
File System Status
# Check the status of the root file system
x stat -f /
JSON Export
# Get file status as a JSON object
x stat --json myfile.txt
Checklist
- Confirm if the target is an individual file or a file system.
- Verify the desired output format (Human-readable, JSON, CSV).
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