Agent skill
deepseek
Integrate DeepSeek AI for high-performance text generation and specialized reasoning. Core Scenario: When the user wants to use DeepSeek's V3 or Reasoner models for coding, translation, or complex logic.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/deepseek
SKILL.md
deepseek - DeepSeek AI Integration
The deepseek module provides a CLI interface for DeepSeek's AI models, including the powerful V3 model and the reasoning-focused model.
When to Activate
- When the user wants to use DeepSeek for chat, text generation, or coding tasks.
- When the user needs complex reasoning or math solving using the
deepseek-reasonermodel. - When checking DeepSeek account balance or managing API keys.
Core Principles & Rules
- API Key Management: Use
initor--cfg apikey=<key>for setup. - Model Selection: Default is V3 (
@ds). Use--model deepseek-reasonerfor tasks requiring deep thought. - Balance Monitoring: Use the
balancesubcommand to keep track of credits.
Additional Scenarios
- Quick Alias: Use
@dsfor rapid interaction. - Project Configuration: Set default models per project using the
--cfgoptions.
Patterns & Examples
Chat with DeepSeek V3
# Ask a general question
@ds "Explain the concept of quantum entanglement"
Logical Reasoning
# Use the reasoning model for complex logic
@ds --model deepseek-reasoner "Solve this complex probability problem: ..."
Check Account Balance
# View current credits
x deepseek balance
Checklist
- Ensure the DeepSeek API key is initialized.
- Confirm if the reasoning model is better suited for the current task.
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