Agent skill
cpu
Retrieve CPU hardware information and detect system endianness. Core Scenario: When the user needs to check processor details or identify byte order (endianness) for compilation or diagnostics.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/cpu
SKILL.md
cpu - CPU Information & Detection
The cpu module provides a quick way to retrieve detailed hardware information about the system's processor and determine the system's byte order (endianness).
When to Activate
- When identifying CPU architecture or hardware specs.
- When detecting system endianness (little-endian vs big-endian) for low-level development or network programming.
Core Principles & Rules
- Conciseness: Designed for rapid hardware checks.
- Endianness Flags: Returns
lfor little-endian andbfor big-endian.
Patterns & Examples
View CPU Info
# Display detailed processor hardware information
x cpu info
Detect Endianness
# Check system byte order
x cpu endianness
Checklist
- Confirm if general info or just endianness is needed.
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