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Agent Orchestrator

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@aatmaan1

npx machina-cli add skill @aatmaan1/agent-orchestrator --openclaw
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SKILL.md
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Agent Orchestrator

Orchestrate complex tasks by decomposing them into subtasks, spawning autonomous sub-agents, and consolidating their work.

Core Workflow

Phase 1: Task Decomposition

Analyze the macro task and break it into independent, parallelizable subtasks:

1. Identify the end goal and success criteria
2. List all major components/deliverables required
3. Determine dependencies between components
4. Group independent work into parallel subtasks
5. Create a dependency graph for sequential work

Decomposition Principles:

  • Each subtask should be completable in isolation
  • Minimize inter-agent dependencies
  • Prefer broader, autonomous tasks over narrow, interdependent ones
  • Include clear success criteria for each subtask

Phase 2: Agent Generation

For each subtask, create a sub-agent workspace:

python3 scripts/create_agent.py <agent-name> --workspace <path>

This creates:

<workspace>/<agent-name>/
├── SKILL.md          # Generated skill file for the agent
├── inbox/            # Receives input files and instructions
├── outbox/           # Delivers completed work
├── workspace/        # Agent's working area
└── status.json       # Agent state tracking

Generate SKILL.md dynamically with:

  • Agent's specific role and objective
  • Tools and capabilities needed
  • Input/output specifications
  • Success criteria
  • Communication protocol

See references/sub-agent-templates.md for pre-built templates.

Phase 3: Agent Dispatch

Initialize each agent by:

  1. Writing task instructions to inbox/instructions.md
  2. Copying required input files to inbox/
  3. Setting status.json to {"state": "pending", "started": null}
  4. Spawning the agent using the Task tool:
# Spawn agent with its generated skill
Task(
    description=f"{agent_name}: {brief_description}",
    prompt=f"""
    Read the skill at {agent_path}/SKILL.md and follow its instructions.
    Your workspace is {agent_path}/workspace/
    Read your task from {agent_path}/inbox/instructions.md
    Write all outputs to {agent_path}/outbox/
    Update {agent_path}/status.json when complete.
    """,
    subagent_type="general-purpose"
)

Phase 4: Monitoring (Checkpoint-based)

For fully autonomous agents, minimal monitoring is needed:

# Check agent completion
def check_agent_status(agent_path):
    status = read_json(f"{agent_path}/status.json")
    return status.get("state") == "completed"

Periodically check status.json for each agent. Agents update this file upon completion.

Phase 5: Consolidation

Once all agents complete:

  1. Collect outputs from each agent's outbox/
  2. Validate deliverables against success criteria
  3. Merge/integrate outputs as needed
  4. Resolve conflicts if multiple agents touched shared concerns
  5. Generate summary of all work completed
# Consolidation pattern
for agent in agents:
    outputs = glob(f"{agent.path}/outbox/*")
    validate_outputs(outputs, agent.success_criteria)
    consolidated_results.extend(outputs)

Phase 6: Dissolution & Summary

After consolidation:

  1. Archive agent workspaces (optional)
  2. Clean up temporary files
  3. Generate final summary:
    • What was accomplished per agent
    • Any issues encountered
    • Final deliverables location
    • Time/resource metrics
python3 scripts/dissolve_agents.py --workspace <path> --archive

File-Based Communication Protocol

See references/communication-protocol.md for detailed specs.

Quick Reference:

  • inbox/ - Read-only for agent, written by orchestrator
  • outbox/ - Write-only for agent, read by orchestrator
  • status.json - Agent updates state: pending → running → completed | failed

Example: Research Report Task

Macro Task: "Create a comprehensive market analysis report"

Decomposition:
├── Agent: data-collector
│   └── Gather market data, competitor info, trends
├── Agent: analyst
│   └── Analyze collected data, identify patterns
├── Agent: writer
│   └── Draft report sections from analysis
└── Agent: reviewer
    └── Review, edit, and finalize report

Dependency: data-collector → analyst → writer → reviewer

Sub-Agent Templates

Pre-built templates for common agent types in references/sub-agent-templates.md:

  • Research Agent - Web search, data gathering
  • Code Agent - Implementation, testing
  • Analysis Agent - Data processing, pattern finding
  • Writer Agent - Content creation, documentation
  • Review Agent - Quality assurance, editing
  • Integration Agent - Merging outputs, conflict resolution

Best Practices

  1. Start small - Begin with 2-3 agents, scale as patterns emerge
  2. Clear boundaries - Each agent owns specific deliverables
  3. Explicit handoffs - Use structured files for agent communication
  4. Fail gracefully - Agents report failures; orchestrator handles recovery
  5. Log everything - Status files track progress for debugging

Source

git clone https://clawhub.ai/aatmaan1/agent-orchestratorView on GitHub

Overview

Agent Orchestrator is a meta-agent that breaks down macro tasks into autonomous subtasks, dynamically generates SKILL.md files for specialized sub-agents, and coordinates file-based communication to consolidate outcomes before dissolving the agents. It enables scalable, parallel task execution with structured communication and final summarization.

How This Skill Works

Technically, it analyzes a macro task to yield parallel, independent subtasks, then spawns sub-agents with dedicated SKILL.md files. It dispatches tasks via inbox/instructions.md and status.json, monitors progress, and, after completion, consolidates all outputs and dissolves the sub-agents.

When to Use It

  • Planning a large project by breaking it into independent components that can run in parallel.
  • Running parallelized data analysis or research tasks that feed into a common deliverable.
  • Coordinating a multi-disciplinary content production pipeline (research, writing, design, review).
  • Automating modular compliance or audit reporting with separate sub-tasks.
  • Managing a distributed software feature rollout with interdependent components.

Quick Start

  1. Step 1: Define the macro task and decompose it into independent subtasks with clear success criteria.
  2. Step 2: For each subtask, use the agent factory workflow to create a sub-agent workspace and generate a SKILL.md.
  3. Step 3: Dispatch tasks by writing inbox/instructions.md, copy inputs, initialize status.json, and monitor via status checks until consolidation.

Best Practices

  • Define clear, objective success criteria for each subtask and an exit condition for each sub-agent.
  • Keep sub-agents autonomous and isolated to minimize cross-task dependencies.
  • Use precise input/output specifications and stable communication formats (inbox/instructions.md, status.json, outbox).
  • Maintain a current dependency graph to guide sequencing and consolidation.
  • Design SKILL.md templates to be idempotent, with robust error handling and clear recovery steps.

Example Use Cases

  • Marketing campaign orchestration: research, copywriting, design, deployment, and performance analysis as separate sub-agents.
  • Software feature rollout: design, implementation, testing, documentation, and release notes handled by dedicated sub-agents.
  • Research synthesis: literature review, methodology drafting, results compilation, and discussion writing as parallel tasks.
  • Regulatory compliance: policy review, evidence gathering, auditing, and final reporting by specialized agents.
  • Data analytics pipeline: data collection, cleaning, transformation, modeling, and visualization produced by sub-agents.

Frequently Asked Questions

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