Agent skill
sed
Enhanced stream editor with interactive preview of search and replace operations using FZF. Core Scenario: When the user needs to perform text substitutions and wants to see the effects before applying changes.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/sed
SKILL.md
sed - Stream Editor with Interactive Preview
The sed module extends the classic stream editor by adding an interactive preview mode. Users can test their regex substitutions and see context differences (ctrl-s) in real-time before modifying files.
When to Activate
- When the user wants to perform text search and replace operations.
- When an interactive preview of regex effects is needed to avoid errors.
- When performing bulk line deletions or insertions in files.
- When using extended regular expressions for complex text manipulation.
Core Principles & Rules
- Preview First: Encourage using the
--fzfappmode to verify changes visually. - Context Differences: Use
ctrl-swithin the interactive app to view diffs. - In-place Safety: Use
-icarefully, preferably with a backup suffix.
Patterns & Examples
Interactive Preview
# Interactively test and preview regex changes on a file
x sed --fzfapp test.txt
Basic Substitution
# Replace 'world' with 'universe' in a piped string
echo "hello world" | x sed 's/world/universe/'
Global Replace
# Replace all occurrences of 'foo' with 'bar' in a file
x sed 's/foo/bar/g' file.txt
Checklist
- Confirm if the user needs an interactive preview or direct execution.
- Verify the regex pattern for search and replace.
- Check if the file should be modified in-place or output to stdout.
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