Agent skill
find
Search for files and directories in a directory hierarchy with an interactive FZF application. Core Scenario: When the user needs to find files based on name, size, type, or other metadata.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/find
SKILL.md
find - Enhanced File Search
The find module extends the standard system find utility, offering an interactive FZF-powered application for rapid file discovery and metadata-based filtering.
When to Activate
- When the user wants to locate files or directories based on patterns or attributes.
- When an interactive, searchable list of files is required (
--fzfapp). - When finding files by size (e.g., larger than 100MB) or modification time.
Core Principles & Rules
- Interactive Mode: Automatically launches a TUI app for easy browsing if no specific criteria are given.
- Attribute-Based: Supports standard find flags like
-type,-name,-size, and-mtime. - Actionable Results: Can execute commands on found items using
-exec.
Patterns & Examples
Interactive Discovery
# Open interactive FZF app to find files or folders
x find
Search by Name
# Find all text files in the current directory
x find . -name "*.txt"
Large File Search
# Find files larger than 100MB in the home directory
x find /home -size +100M
Checklist
- Confirm the search path and criteria (name, size, type).
- Verify if an interactive view or direct command execution (
-exec) is needed. - Ensure the user is aware of the recursive nature of the search.
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