Agent skill
lms
CLI module for LM Studio, enabling terminal-based chat and local LLM management. Core Scenario: When the user wants to interact with locally hosted models in LM Studio via the command line.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/lms
SKILL.md
lms - LM Studio CLI Enhancement
The lms module provides a CLI interface for LM Studio, allowing users to chat with local models and manage configurations directly from the terminal.
When to Activate
- When the user wants to chat with models running in LM Studio.
- When managing local LM Studio configurations and session defaults.
- When performing terminal-based interaction with local AI services.
Core Principles & Rules
- Integration: Designed to work alongside the LM Studio desktop application.
- Subcommand Transparency: Use
--runcmdto access originallmscommand features if needed.
Patterns & Examples
Chat with Local Model
# Start a chat session with the model active in LM Studio
x lms chat
Initialize Config
# Set up default parameters for LM Studio interaction
x lms init
Checklist
- Ensure LM Studio is running and the local server is active.
- Verify if specific session defaults need to be set via
x lms --cur.
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