| name | llm-config |
| description | Configure RuVLLM local inference with model selection, MicroLoRA fine-tuning, and SONA adaptation |
| argument-hint | [--model MODEL] [--adapter microlora|sona] |
| allowed-tools | mcp__claude-flow__ruvllm_generate_config mcp__claude-flow__ruvllm_status mcp__claude-flow__ruvllm_microlora_create mcp__claude-flow__ruvllm_microlora_adapt mcp__claude-flow__ruvllm_sona_create mcp__claude-flow__ruvllm_sona_adapt Bash |
LLM Configuration
Configure RuVLLM for local inference and fine-tuning.
When to use
When you need to configure local LLM inference, create MicroLoRA adapters for task-specific fine-tuning, or set up SONA for real-time adaptation.
Steps
- Check status — call
mcp__claude-flow__ruvllm_status to see current model and adapter state
- Generate config — call
mcp__claude-flow__ruvllm_generate_config with model parameters
- Create MicroLoRA — call
mcp__claude-flow__ruvllm_microlora_create for task-specific adapters
- Adapt MicroLoRA — call
mcp__claude-flow__ruvllm_microlora_adapt with training data
- Create SONA — call
mcp__claude-flow__ruvllm_sona_create for real-time neural adaptation
- Adapt SONA — call
mcp__claude-flow__ruvllm_sona_adapt with feedback signals
MicroLoRA vs SONA
| Feature | MicroLoRA | SONA |
|---|
| Speed | Minutes to train | <0.05ms adaptation |
| Scope | Task-specific fine-tuning | Real-time micro-adjustments |
| Persistence | Saved as adapter weights | Session-scoped |
| Use case | Specialized domain tasks | Continuous feedback loops |