--- name: agent-orchestration license: MIT compatibility: "Claude Code 2.1.34+." description: Agent orchestration patterns for agentic loops, multi-agent coordination, alternative frameworks, and multi-scenario workflows. Use when building autonomous agent loops, coordinating multiple agents, evaluating CrewAI/AutoGen/Swarm, or orchestrating complex multi-step scenarios. tags: [agents, orchestration, multi-agent, agent-loops, crewai, autogen, swarm, coordination] context: fork agent: workflow-architect version: 2.0.0 author: OrchestKit user-invocable: false complexity: high metadata: category: workflow-automation --- # Agent Orchestration Comprehensive patterns for building and coordinating AI agents -- from single-agent reasoning loops to multi-agent systems and framework selection. Each category has individual rule files in `rules/` loaded on-demand. ## Quick Reference | Category | Rules | Impact | When to Use | |----------|-------|--------|-------------| | [Agent Loops](#agent-loops) | 2 | HIGH | ReAct reasoning, plan-and-execute, self-correction | | [Multi-Agent Coordination](#multi-agent-coordination) | 3 | CRITICAL | Supervisor routing, agent debate, result synthesis | | [Alternative Frameworks](#alternative-frameworks) | 3 | HIGH | CrewAI crews, AutoGen teams, framework comparison | | [Multi-Scenario](#multi-scenario) | 2 | MEDIUM | Parallel scenario orchestration, difficulty routing | **Total: 10 rules across 4 categories** ## Quick Start ```python # ReAct agent loop async def react_loop(question: str, tools: dict, max_steps: int = 10) -> str: history = REACT_PROMPT.format(tools=list(tools.keys()), question=question) for step in range(max_steps): response = await llm.chat([{"role": "user", "content": history}]) if "Final Answer:" in response.content: return response.content.split("Final Answer:")[-1].strip() if "Action:" in response.content: action = parse_action(response.content) result = await tools[action.name](*action.args) history += f"\nObservation: {result}\n" return "Max steps reached without answer" ``` ```python # Supervisor with fan-out/fan-in async def multi_agent_analysis(content: str) -> dict: agents = [("security", security_agent), ("perf", perf_agent)] tasks = [agent(content) for _, agent in agents] results = await asyncio.gather(*tasks, return_exceptions=True) return await synthesize_findings(results) ``` ## Agent Loops Patterns for autonomous LLM reasoning: ReAct (Reasoning + Acting), Plan-and-Execute with replanning, self-correction loops, and sliding-window memory management. **Key decisions:** Max steps 5-15, temperature 0.3-0.7, memory window 10-20 messages. ## Multi-Agent Coordination Fan-out/fan-in parallelism, supervisor routing with dependency ordering, conflict resolution (confidence-based or LLM arbitration), result synthesis, and CC Agent Teams (mesh topology for peer messaging in CC 2.1.33+). **Key decisions:** 3-8 specialists, parallelize independent agents, use Task tool (star) for simple work, Agent Teams (mesh) for cross-cutting concerns. ## Alternative Frameworks CrewAI hierarchical crews with Flows (1.8+), OpenAI Agents SDK handoffs and guardrails (0.7.0), Microsoft Agent Framework (AutoGen + SK merger), GPT-5.2-Codex for long-horizon coding, and AG2 for open-source flexibility. **Key decisions:** Match framework to team expertise + use case. LangGraph for state machines, CrewAI for role-based teams, OpenAI SDK for handoff workflows, MS Agent for enterprise compliance. ## Multi-Scenario Orchestrate a single skill across 3 parallel scenarios (simple/medium/complex) with progressive difficulty scaling (1x/3x/8x), milestone synchronization, and cross-scenario result aggregation. **Key decisions:** Free-running with checkpoints, always 3 scenarios, 1x/3x/8x exponential scaling, 30s/90s/300s time budgets. ## Key Decisions | Decision | Recommendation | |----------|----------------| | Single vs multi-agent | Single for focused tasks, multi for decomposable work | | Max loop steps | 5-15 (prevent infinite loops) | | Agent count | 3-8 specialists per workflow | | Framework | Match to team expertise + use case | | Topology | Task tool (star) for simple; Agent Teams (mesh) for complex | | Scenario count | Always 3: simple, medium, complex | ## Common Mistakes - No step limit in agent loops (infinite loops) - No memory management (context overflow) - No error isolation in multi-agent (one failure crashes all) - Missing synthesis step (raw agent outputs not useful) - Mixing frameworks in one project (complexity explosion) - Using Agent Teams for simple sequential work (use Task tool) - Sequential instead of parallel scenarios (defeats purpose) ## Related Skills - `langgraph` - LangGraph workflow patterns (supervisor, routing, state) - `function-calling` - Tool definitions and execution - `task-dependency-patterns` - Task management with Agent Teams workflow ## Capability Details ### react-loop **Keywords:** react, reason, act, observe, loop, agent **Solves:** - Implement ReAct pattern - Create reasoning loops - Build iterative agents ### plan-execute **Keywords:** plan, execute, replan, multi-step, autonomous **Solves:** - Create plan then execute steps - Implement replanning on failure - Build goal-oriented agents ### supervisor-coordination **Keywords:** supervisor, route, coordinate, fan-out, fan-in, parallel **Solves:** - Route tasks to specialized agents - Run agents in parallel - Aggregate multi-agent results ### agent-debate **Keywords:** debate, conflict, resolution, arbitration, consensus **Solves:** - Resolve agent disagreements - Implement LLM arbitration - Handle conflicting outputs ### result-synthesis **Keywords:** synthesize, combine, aggregate, merge, summary **Solves:** - Combine outputs from multiple agents - Create executive summaries - Score confidence across findings ### crewai-patterns **Keywords:** crewai, crew, hierarchical, delegation, role-based, flows **Solves:** - Build role-based agent teams - Implement hierarchical coordination - Use Flows for event-driven orchestration ### autogen-patterns **Keywords:** autogen, microsoft, agent framework, teams, enterprise, a2a **Solves:** - Build enterprise agent systems - Use AutoGen/SK merged framework - Implement A2A protocol ### framework-selection **Keywords:** choose, compare, framework, decision, which, crewai, autogen, openai **Solves:** - Select appropriate framework - Compare framework capabilities - Match framework to requirements ### scenario-orchestrator **Keywords:** scenario, parallel, fan-out, difficulty, progressive, demo **Solves:** - Run skill across multiple difficulty levels - Implement parallel scenario execution - Aggregate cross-scenario results ### scenario-routing **Keywords:** route, synchronize, milestone, checkpoint, scaling **Solves:** - Route tasks by difficulty level - Synchronize at milestones - Scale inputs progressively