--- name: agent-lifecycle-management description: Manage agent fleet through CRUD operations and lifecycle patterns. Use when creating, commanding, monitoring, or deleting agents in multi-agent systems, or implementing proper resource cleanup. allowed-tools: Read, Grep, Glob --- # Agent Lifecycle Management Skill Manage agent fleets through Create, Command, Monitor, and Delete operations. ## Purpose Guide the implementation of CRUD operations for agent fleets, ensuring proper lifecycle management and resource cleanup. ## When to Use - Setting up agent lifecycle patterns - Implementing agent management tools - Designing cleanup and resource management - Building agent state tracking ## Prerequisites - Understanding of orchestrator architecture (@single-interface-pattern.md) - Familiarity with the Three Pillars (@three-pillars-orchestration.md) - Access to Claude Agent SDK documentation ## SDK Requirement > **Implementation Note**: Full lifecycle management requires Claude Agent SDK with custom MCP tools. This skill provides design patterns for SDK implementation. ## Lifecycle Pattern ```text Create --> Command --> Monitor --> Aggregate --> Delete | | | | | v v v v v Template Prompt Status Results Cleanup ``` ## CRUD Operations ### Create Operation Spin up a new specialized agent. **Parameters**: - `template`: Pre-defined configuration to use - `name`: Unique identifier for this agent - `system_prompt`: Custom prompt (alternative to template) - `model`: haiku, sonnet, or opus - `allowed_tools`: Tools this agent can use **Example**: ```python create_agent( name="scout_1", template="scout-fast", # OR system_prompt="...", model="haiku", allowed_tools=["Read", "Glob", "Grep"] ) ``` **Best Practices**: - Use templates for consistency - Give descriptive names - Select appropriate model - Minimize tool access ### Command Operation Send prompts to an agent. **Parameters**: - `agent_id`: Which agent to command - `prompt`: The detailed instruction **Example**: ```python command_agent( agent_id="scout_1", prompt=""" Analyze the authentication module in src/auth/. Focus on: 1. Current implementation patterns 2. Security considerations 3. Potential improvements Report findings in structured format. """ ) ``` **Best Practices**: - Detailed, specific prompts - Clear expected output format - Include all relevant context - One task per command ### Monitor Operation (Read) Check agent status and progress. **Operations**: ```python # Check status check_agent_status( agent_id="scout_1", verbose_logs=True ) # List all agents list_agents() # Read agent logs read_agent_logs( agent_id="scout_1", offset=0, limit=50 ) ``` **Status Values**: | Status | Meaning | | --- | --- | | `idle` | Ready for commands | | `executing` | Processing prompt | | `waiting` | Waiting for input | | `blocked` | Permission needed | | `complete` | Finished | ### Delete Operation Clean up agents when work is complete. **Example**: ```python delete_agent(agent_id="scout_1") ``` **Key Principle**: > "Treat agents as deletable temporary resources that serve a single purpose." ## Lifecycle Patterns ### Scout-Build Pattern ```text 1. Create scout agent 2. Command: Analyze codebase 3. Monitor until complete 4. Aggregate scout findings 5. Delete scout 6. Create builder agent 7. Command: Implement based on findings 8. Monitor until complete 9. Aggregate build results 10. Delete builder ``` ### Scout-Build-Review Pattern ```text Phase 1: Scout - Create scouts (parallel) - Command each with specific area - Aggregate findings Phase 2: Build - Create builder - Command with scout reports - Monitor implementation Phase 3: Review - Create reviewer - Command to verify implementation - Generate final report Cleanup: Delete all agents ``` ### Parallel Execution ```text Create: scout_1, scout_2, scout_3 (parallel) Command each with different area Monitor all until complete Aggregate all findings Delete all scouts Create: builder_1, builder_2 (parallel) Command each with different files Monitor all until complete Aggregate all changes Delete all builders ``` ## Agent Templates ### Fast Scout Template ```yaml --- name: scout-fast description: Quick codebase reconnaissance tools: [Read, Glob, Grep] model: haiku --- # Scout Agent Analyze codebase efficiently. Focus on: - File structure - Key patterns - Relevant code sections Report findings concisely. ``` ### Builder Template ```yaml --- name: builder description: Code implementation specialist tools: [Read, Write, Edit, Bash] model: sonnet --- # Builder Agent Implement changes based on specifications. Follow existing patterns. Test your changes. Report what was modified. ``` ### Reviewer Template ```yaml --- name: reviewer description: Code review and verification tools: [Read, Grep, Glob, Bash] model: sonnet --- # Reviewer Agent Verify implementation against requirements. Check for issues and risks. Report findings by severity. ``` ## State Tracking Track agent state for observability: ```json { "agent_id": "scout_1", "template": "scout-fast", "status": "executing", "created_at": "2024-01-15T10:30:00Z", "last_activity": "2024-01-15T10:32:15Z", "context_tokens": 12500, "cost": 0.05, "tool_calls": 15 } ``` ## Resource Cleanup ### Cleanup Triggers | Trigger | Action | | --- | --- | | Work complete | Delete immediately | | Error state | Delete and report | | Timeout | Delete and warn | | User abort | Delete all | ### Cleanup Checklist - [ ] All agents have termination logic - [ ] Dead agents are detected - [ ] Resources are released - [ ] Final results are captured - [ ] Cleanup is logged ## Output Format When implementing lifecycle management, provide: ```markdown ## Lifecycle Implementation ### Agent Templates [List of templates with configurations] ### CRUD Tools | Tool | Implementation | Parameters | | --- | --- | --- | | create_agent | ... | ... | | command_agent | ... | ... | | check_agent_status | ... | ... | | list_agents | ... | ... | | delete_agent | ... | ... | ### State Schema [JSON schema for agent state] ### Cleanup Logic [When and how agents are deleted] ``` ## Anti-Patterns | Anti-Pattern | Problem | Solution | | --- | --- | --- | | Keeping dead agents | Resource waste | Delete when done | | Long-lived agents | Context accumulation | Fresh agents per task | | Generic agents | Unfocused work | Specialized templates | | Missing cleanup | Dead agents accumulate | Always delete | | Reusing agents | Context contamination | Create fresh | ## Key Quotes > "The rate at which you create and command your agents becomes the constraint of your engineering output." > > "One agent, one prompt, one purpose - then delete." ## Cross-References - @agent-lifecycle-crud.md - Lifecycle patterns - @three-pillars-orchestration.md - CRUD pillar - @single-interface-pattern.md - Orchestrator architecture - @orchestrator-design skill - System design ## Version History - **v1.0.0** (2025-12-26): Initial release --- ## Last Updated **Date:** 2025-12-26 **Model:** claude-opus-4-5-20251101