| name | multi-agent-ai-projects |
| description | Guidelines for multi-agent AI and learning projects with lesson-based structures. Activate when working with AI learning projects, experimental directories like .spec/, lessons/ directories, STATUS.md progress tracking, or structured learning curricula with multiple modules or lessons. |
Multi-Agent AI Projects
Guidelines for working with multi-agent AI learning projects and experimental codebases.
CRITICAL: First Actions When Starting or Resuming Work
Read STATUS.md FIRST (usually .spec/STATUS.md or project root) - Shows current phase, completed lessons, blockers, and resume instructions. This prevents working on wrong lessons or repeating completed work.
Then:
- Check git status
- Verify dependencies installed
- Check lesson-specific .env files
Auto-activate when: Project has .spec/ directory, lessons/ subdirectory, STATUS.md, or lesson-numbered directories.
Project Structure Recognition
Common Patterns
.spec/ directory - Learning specifications and experimental code
lessons/ or similar learning directories
STATUS.md - Progress tracking for learning journey
- Per-lesson or per-module structure
- Self-contained lesson directories
Typical Lesson Structure
lesson-XXX/
├── <name>_agent/ # Agent (agent.py, tools.py, prompts.py, cli.py)
├── .env # API keys (gitignored)
├── PLAN.md / README.md # Lesson docs
├── COMPLETE.md # Learnings
└── test_*.py # Tests
Workflow Patterns
Execution
- Use
uv run python from lesson directory
- Check lesson README for setup
API Keys
- Per-lesson
.env files (never commit)
- Check
.env.example or .env.template
Dependencies
uv sync --group lesson-XXX for lesson-specific deps
- Check
pyproject.toml for dependency groups
Progress Tracking
STATUS.md Pattern
- Read before starting work (most important!)
- Update after completing lessons
- Note blockers and next steps
- Document learnings and insights
- Track which lessons are complete
Session Management
- Always check STATUS.md at session start (FIRST action)
- Update STATUS.md before ending sessions
- Note any experimental findings
- Document what worked and what didn't
Common Project Types
Learning Spike Projects
- Focus on exploration and experimentation
- Code may not be production-quality
- Documentation of learnings is important
- Test different approaches
- Iterate quickly
Multi-Agent Frameworks
- Agent coordination patterns
- Tool usage and integration
- Message passing between agents
- State management across agents
- Router/coordinator patterns
Quick Reference
Execution:
uv run python from lesson directory
- Check per-lesson dependencies
Documentation:
- Update STATUS.md with progress
- Document findings in COMPLETE.md
- Note blockers and next steps
Note: These projects are learning-focused - prioritize understanding and documentation over production perfection. STATUS.md is your single source of truth for project state.