Agent skill
str
High-performance string manipulation tool for transformations, splitting, and encoding. Core Scenario: When the user needs to process strings (upper/lower, trim, split, hash) in scripts or CLI.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/str
SKILL.md
str - High-Performance String Manipulation
The str module is a low-level, high-performance tool for common string operations. It is essential for data processing within shell scripts, supporting both piping and direct arguments.
When to Activate
- When converting string cases (upper/lower).
- When trimming whitespace or splitting strings by delimiters.
- When performing Base64 encoding/decoding or calculating MD5/SHA256 hashes.
- When replacing substrings or joining multiple strings.
- When converting line endings (dos2unix/unix2dos).
Core Principles & Rules
- Piping Support: Highly optimized for use in terminal pipes (e.g.,
echo "..." | x str upper). - Python-Style Slicing: Use the
slicesubcommand for complex substring extractions. - Efficiency: Designed for minimal overhead in high-frequency script calls.
Additional Scenarios
- Hash Verification: Quickly generate hashes for strings or data streams.
- Format Conversion: Standardize text files across different OS environments using
dos2unix.
Patterns & Examples
Basic Transformation
# Convert a string to uppercase
x str upper "hello world"
Splitting and Joining
# Split by comma and join by space
echo "a,b,c" | x str split "," | x str join " "
Encoding and Hashing
# Base64 encode and generate SHA256 hash
x str base64 "secret"
x str sha256 "data"
Checklist
- Confirm if the input is provided via pipe or argument.
- Verify the delimiter for splitting/joining tasks.
- Ensure the correct hash algorithm (MD5/SHA256) is requested.
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