Agent skill
moonshot
Integrate Moonshot AI (Kimi) for chat and file-based context processing. Core Scenario: When the user wants to use Moonshot's large context capabilities for chat or file translation.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/moonshot
SKILL.md
moonshot - Moonshot AI (Kimi) Integration
The moonshot module provides access to Moonshot AI's services, known for their large context window and strong performance in Chinese language tasks.
When to Activate
- When the user wants to chat with the Kimi model.
- When the user needs to analyze or translate files using Moonshot's context.
- When checking Moonshot account balance or managing file uploads.
Core Principles & Rules
- API Key Management: Use
initor--cfg apikey=<key>for setup. - Alias Support: Use the
@kimialias for faster access. - Context Handling: Leverage the large context window by attaching files with
--file.
Additional Scenarios
- File Management: Use the
filesubcommand to manage documents uploaded to Moonshot. - Balance Check: Monitor credits using
x moonshot balance.
Patterns & Examples
Translate Files with Kimi
# Use the @kimi alias to translate local files
@kimi --file ./content.en.md "Translate to Chinese"
List Available Models
# View models supported by Moonshot
x moonshot model ls
Checklist
- Ensure the Moonshot API key is configured.
- Verify that files attached exist and are readable.
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