Agent skill
agent-management
Create, manage, and orchestrate AI agents using the AI Maestro CLI. Use when the user asks to "create agent", "list agents", "delete agent", "hibernate agent", "wake agent", "install plugin", "show agent", "restart agent", or any agent lifecycle management task.
Install this agent skill to your Project
npx add-skill https://github.com/davila7/claude-code-templates/tree/main/cli-tool/components/skills/ai-maestro/agent-management
SKILL.md
AI Maestro Agent Management
Create, manage, and orchestrate multiple AI agents through a unified CLI. Handles the full agent lifecycle: create, hibernate, wake, rename, export/import, and plugin management. Part of the AI Maestro suite.
Prerequisites
Requires AI Maestro running locally with tmux 3.0+.
# Install the CLI
git clone https://github.com/23blocks-OS/ai-maestro-plugins.git
cd ai-maestro-plugins && ./install-agent-cli.sh
Core Commands
Agent Lifecycle
| Command | Description |
|---|---|
aimaestro-agent.sh list |
List all agents with status |
aimaestro-agent.sh show <agent> |
Detailed agent information |
aimaestro-agent.sh create <name> --dir <path> |
Create new agent |
aimaestro-agent.sh update <agent> --task "..." |
Update task/tags |
aimaestro-agent.sh delete <agent> --confirm |
Delete agent |
aimaestro-agent.sh rename <old> <new> |
Rename agent |
aimaestro-agent.sh hibernate <agent> |
Save state, free resources |
aimaestro-agent.sh wake <agent> |
Resume hibernated agent |
aimaestro-agent.sh restart <agent> |
Hibernate then wake |
Plugin Management
| Command | Description |
|---|---|
aimaestro-agent.sh plugin install <agent> <plugin> |
Install plugin |
aimaestro-agent.sh plugin uninstall <agent> <plugin> |
Remove plugin |
aimaestro-agent.sh plugin list <agent> |
List installed plugins |
aimaestro-agent.sh plugin marketplace add <agent> <source> |
Add marketplace |
Export/Import
| Command | Description |
|---|---|
aimaestro-agent.sh export <agent> |
Export agent config |
aimaestro-agent.sh import <file> |
Import agent from file |
Usage Examples
# Create a backend API agent
aimaestro-agent.sh create backend-api \
--dir ~/projects/backend \
--task "Build REST API with TypeScript" \
--tags "api,typescript"
# End of day -- save resources
aimaestro-agent.sh hibernate frontend-ui
aimaestro-agent.sh hibernate data-processor
# Resume next morning
aimaestro-agent.sh wake frontend-ui --attach
# Install a plugin on an agent
aimaestro-agent.sh plugin install backend-api my-plugin
# Backup before risky changes
aimaestro-agent.sh export backend-api -o backup.json
Agent Statuses
| Status | Meaning |
|---|---|
online |
Running in tmux session |
offline |
Registered but no active session |
hibernated |
Saved state, session killed |
Full AI Maestro Experience
This skill is part of the AI Maestro platform, which provides 6 skills for AI agent orchestration: messaging, memory, docs, graph, planning, and agent management.
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
verl-rl-training
Provides guidance for training LLMs with reinforcement learning using verl (Volcano Engine RL). Use when implementing RLHF, GRPO, PPO, or other RL algorithms for LLM post-training at scale with flexible infrastructure backends.
openrlhf-training
High-performance RLHF framework with Ray+vLLM acceleration. Use for PPO, GRPO, RLOO, DPO training of large models (7B-70B+). Built on Ray, vLLM, ZeRO-3. 2× faster than DeepSpeedChat with distributed architecture and GPU resource sharing.
gguf-quantization
GGUF format and llama.cpp quantization for efficient CPU/GPU inference. Use when deploying models on consumer hardware, Apple Silicon, or when needing flexible quantization from 2-8 bit without GPU requirements.
Claude Code Guide
Master guide for using Claude Code effectively. Includes configuration templates, prompting strategies "Thinking" keywords, debugging techniques, and best practices for interacting with the agent.
qdrant-vector-search
High-performance vector similarity search engine for RAG and semantic search. Use when building production RAG systems requiring fast nearest neighbor search, hybrid search with filtering, or scalable vector storage with Rust-powered performance.
behavioral-modes
AI operational modes (brainstorm, implement, debug, review, teach, ship, orchestrate). Use to adapt behavior based on task type.
Didn't find tool you were looking for?