Claude-skill-registry agent-orchestration-planner
Designs multi-step agent workflows with tool usage, retry logic, state management, and budget controls. Provides orchestration diagrams, tool execution order, fallback strategies, and cost limits. Use for "AI agents", "agentic workflows", "multi-step AI", or "autonomous systems".
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/agent-orchestration-planner" ~/.claude/skills/majiayu000-claude-skill-registry-agent-orchestration-planner && rm -rf "$T"
manifest:
skills/data/agent-orchestration-planner/SKILL.mdsource content
Agent Orchestration Planner
Design robust multi-step agent systems with tools and error handling.
Agent Architecture
User Query → Planning → Tool Selection → Tool Execution → Result Synthesis → Response ↓ ↓ ↓ ↓ Memory Retry Logic Validation Cost Tracking
Agent Loop Pattern
from typing import List, Dict, Any class Agent: def __init__(self, tools: List[Tool], max_iterations: int = 5): self.tools = tools self.max_iterations = max_iterations self.memory = [] self.cost_tracker = CostTracker() def run(self, query: str) -> str: self.memory.append({"role": "user", "content": query}) for iteration in range(self.max_iterations): # Decide next action action = self.plan_next_action() if action["type"] == "final_answer": return action["content"] # Execute tool result = self.execute_tool(action["tool"], action["params"]) # Track cost self.cost_tracker.add(result["cost"]) # Check budget if self.cost_tracker.exceeds_limit(): return self.budget_exceeded_response() # Add to memory self.memory.append({ "role": "tool", "tool": action["tool"], "result": result["data"] }) return "Max iterations reached" def plan_next_action(self) -> Dict: prompt = self.build_planning_prompt() response = llm(prompt) return parse_action(response)
Tool Orchestration
TOOL_ORDER = { "search_web": 1, # Always try search first "query_database": 2, # Then database "call_api": 3, # Then external APIs "generate_content": 4, # Finally generate } def select_tools(query: str, available_tools: List[Tool]) -> List[Tool]: """Select and order tools based on query""" # Use LLM to select relevant tools tool_selection_prompt = f""" Given this query: "{query}" Which of these tools are needed? {[t.name for t in available_tools]} Return JSON array of tool names in execution order. """ selected_names = json.loads(llm(tool_selection_prompt)) selected_tools = [t for t in available_tools if t.name in selected_names] # Sort by predefined order selected_tools.sort(key=lambda t: TOOL_ORDER.get(t.name, 999)) return selected_tools
Retry & Fallback Logic
def execute_with_retry(tool: Tool, params: Dict, max_retries: int = 3): """Execute tool with exponential backoff retry""" for attempt in range(max_retries): try: result = tool.execute(params) return {"success": True, "data": result} except ToolError as e: if attempt == max_retries - 1: # Try fallback tool fallback = get_fallback_tool(tool.name) if fallback: return execute_with_retry(fallback, params, 1) return {"success": False, "error": str(e)} # Wait before retry time.sleep(2 ** attempt) FALLBACK_TOOLS = { "search_web": "query_database", "call_api": "use_cached_data", }
State Management
class AgentState: def __init__(self): self.memory = [] self.tool_results = {} self.costs = 0.0 self.iteration = 0 def add_message(self, role: str, content: str): self.memory.append({"role": role, "content": content}) def add_tool_result(self, tool_name: str, result: Any): self.tool_results[tool_name] = result def get_context(self) -> str: """Build context from memory for next LLM call""" return "\n".join([ f"{msg['role']}: {msg['content']}" for msg in self.memory[-5:] # Last 5 messages ])
Budget & Cost Controls
class CostTracker: def __init__(self, max_cost: float = 1.0): self.max_cost = max_cost self.total_cost = 0.0 self.breakdown = {} def add(self, cost: float, category: str = "llm"): self.total_cost += cost self.breakdown[category] = self.breakdown.get(category, 0) + cost def exceeds_limit(self) -> bool: return self.total_cost >= self.max_cost def remaining(self) -> float: return self.max_cost - self.total_cost # Use in agent if cost_tracker.exceeds_limit(): return f"Budget limit reached. Used ${cost_tracker.total_cost:.4f}"
Orchestration Diagram
graph TD A[User Query] --> B[Plan Action] B --> C{Action Type?} C -->|Tool Call| D[Execute Tool] C -->|Final Answer| E[Return Response] D --> F[Validate Result] F -->|Success| G[Update Memory] F -->|Failure| H[Retry/Fallback] H --> D G --> I{Budget OK?} I -->|Yes| B I -->|No| J[Budget Exceeded] J --> E
Planning Prompt
def build_planning_prompt(state: AgentState) -> str: return f""" You are an agent that can use tools to answer questions. Available tools: {json.dumps([t.schema for t in tools], indent=2)} Conversation history: {state.get_context()} Based on the conversation, decide your next action: 1. Call a tool (specify tool name and parameters) 2. Provide final answer If calling a tool, respond with: {{"action": "tool_call", "tool": "tool_name", "params": {{...}}}} If providing final answer, respond with: {{"action": "final_answer", "content": "your answer"}} Think step by step about what information you need. """
Multi-Agent Coordination
class MultiAgentSystem: def __init__(self): self.agents = { "researcher": ResearchAgent(), "coder": CodeAgent(), "reviewer": ReviewAgent(), } def run(self, task: str): # Researcher gathers information context = self.agents["researcher"].run(task) # Coder generates solution code = self.agents["coder"].run(f"{task}\nContext: {context}") # Reviewer validates review = self.agents["reviewer"].run(f"Review this code:\n{code}") if review["approved"]: return code else: # Iterate with feedback return self.agents["coder"].run( f"Fix this code based on feedback:\n{review['feedback']}" )
Best Practices
- Limit iterations: Prevent infinite loops
- Budget controls: Track and limit costs
- Tool validation: Verify tool outputs
- Error handling: Graceful fallbacks
- State persistence: Save progress
- Observability: Log all actions
- Human-in-loop: Critical decisions
Output Checklist
- Agent loop implementation
- Tool selection logic
- Retry & fallback strategies
- State management
- Cost tracking
- Budget limits
- Orchestration diagram
- Planning prompts
- Error handling
- Observability/logging