Agent skill
kimi
Enhancement module for kimi-cli, integrating AI programming capabilities into the terminal workflow. Core Scenario: When the user wants to launch the Kimi Code agent for coding assistance, upgrades, or session management.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/kimi
SKILL.md
kimi - Kimi Code CLI Enhancement
The kimi module enhances the kimi-cli agent, providing a seamless terminal experience for AI-driven coding, session management, and workspace integration.
When to Activate
- When the user wants to launch the Kimi Code interactive session.
- When the user needs to upgrade or manage the
kimi-clitool. - When integrating Model Context Protocol (MCP) servers with Kimi.
- When continuing or forking previous AI coding sessions.
Core Principles & Rules
- Yolo Mode: Use the
-yor--yoloflag for automatic tool approval if requested. - Thinking Mode: Enable or disable deep thinking using
--thinkingor--no-thinking. - Environment Management: Use
--installor--upgradeto ensure the tool is up to date.
Additional Scenarios
- TUI Mode: Run the interactive terminal UI using
x kimi term. - Web Interface: Launch the Kimi web UI via
x kimi web.
Patterns & Examples
Launch Kimi Code
# Start an interactive Kimi Code session in the current directory
x kimi
Auto-Approve Commands
# Run Kimi with automatic approval for all actions (YOLO mode)
x kimi --yolo
Continue Last Session
# Resume the most recent conversation in the current workspace
x kimi --continue
Checklist
- Ensure
kimi-cliis installed; runx kimi --installif necessary. - Confirm if the user wants auto-approval (YOLO) enabled.
- Check if MCP configurations need loading.
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