agent-orchestrator

Multi-agent orchestration with 5 proven patterns - Work Crew, Supervisor, Pipeline, Council, and Auto-Routing

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Install skill "agent-orchestrator" with this command: npx skills add variable190/agent-orchestrator-molter-102

agent-orchestrator

Multi-agent orchestration for OpenClaw. Implements 5 proven patterns for coordinating multiple AI agents: Work Crew, Supervisor, Pipeline, Expert Council, and Auto-Routing.

USE WHEN:

  • A task can be parallelized for speed or redundancy (Work Crew)
  • Complex tasks need dynamic planning and delegation (Supervisor)
  • Work follows a predictable sequence of stages (Pipeline)
  • Cross-domain input is needed from multiple specialists (Expert Council)
  • Mixed task types need automatic routing to appropriate specialists (Auto-Routing)
  • Research tasks require breadth-first exploration of multiple angles
  • High-stakes decisions need confidence through multiple perspectives

DON'T USE WHEN:

  • Simple tasks that fit in one agent's context window (use main session instead)
  • Sequential tasks with no parallelization opportunity (use regular tool calls)
  • One-shot deterministic tasks (use single agent)
  • Tasks requiring real-time inter-agent conversation (this uses async spawning)
  • Tasks where 15x token cost cannot be justified
  • Quick/simple tasks where coordination overhead exceeds benefit

Outputs:

  • Aggregated results from multiple parallel agents
  • Synthesized consensus recommendations
  • Routing decisions to appropriate specialists
  • Structured output from staged processing

Decision Matrix

PatternUse WhenAvoid When
crewSame task from multiple angles, verification, research breadthResults cannot be easily compared/merged
superviseDynamic decomposition needed, complex planningFixed workflow, simple delegation
pipelineWell-defined sequential stages, content creationPath needs runtime adaptation
councilCross-domain expertise, risk assessment, policy reviewSingle-domain task, need fast consensus
routeMixed workload types, automatic classificationTask type is already known

Auto-Routing Pattern

The route command analyzes tasks and automatically classifies them by type, then routes to the appropriate specialist:

# Basic routing
claw agent-orchestrator route --task "Write Python parser"

# With custom specialist pool
claw agent-orchestrator route \
  --task "Analyze data and create report" \
  --specialists "analyst,data,writer"

# Force specific specialist
claw agent-orchestrator route \
  --task "Something complex" \
  --force coder

Confidence Thresholds

  • High confidence (>0.85): Auto-route immediately
  • Good confidence (0.7-0.85): Propose with confirmation option
  • Moderate confidence (0.5-0.7): Show top alternatives
  • Low confidence (<0.5): Request clarification

Available specialists: coder, researcher, writer, analyst, planner, reviewer, creative, data, devops, support

Common Workflows

# Parallel research with consensus
claw agent-orchestrator crew \
  --task "Research Bitcoin Lightning 2026 adoption" \
  --agents 4 \
  --perspectives technical,business,security,competitors \
  --converge consensus

# Best-of redundancy for critical analysis
claw agent-orchestrator crew \
  --task "Audit this smart contract for vulnerabilities" \
  --agents 3 \
  --converge best-of

# Supervisor-managed code review
claw agent-orchestrator supervise \
  --task "Refactor authentication module" \
  --workers coder,reviewer,tester \
  --strategy adaptive

# Staged content pipeline
claw agent-orchestrator pipeline \
  --stages research,draft,review,finalize \
  --input "topic: AI agent adoption trends"

# Expert council for decision
claw agent-orchestrator council \
  --question "Should we publish this blog post about unreleased features?" \
  --experts skeptic,ethicist,strategist \
  --converge consensus \
  --rounds 2

# Auto-route mixed tasks
claw agent-orchestrator route \
  --task "Write Python function to analyze CSV data" \
  --specialists coder,researcher,writer,analyst

# Force route to specific specialist
claw agent-orchestrator route \
  --task "Debug authentication error" \
  --force coder \
  --confidence-threshold 0.9

# Route and output as JSON for scripting
claw agent-orchestrator route \
  --task $TASK \
  --format json \
  --specialists "coder,data,analyst"

Negative Examples

DON'T: Use crew for simple single-answer questions

# WRONG: Wasteful for simple facts
claw agent-orchestrator crew --task "What is 2+2?" --agents 3

# RIGHT: Use main session directly
What is 2+2?

DON'T: Use supervise when pipeline suffices

# WRONG: Over-engineering fixed workflows
claw agent-orchestrator supervise --task "Draft, edit, publish"

# RIGHT: Use pipeline for fixed sequences
claw agent-orchestrator pipeline --stages draft,edit,publish

DON'T: Route when task type is obvious

# WRONG: Unnecessary classification overhead
claw agent-orchestrator route --task "Write Python code"

# RIGHT: Direct to appropriate specialist
claw agent-orchestrator crew --pattern code --task "Write Python code"

DON'T: Use multi-agent for very small context tasks

# WRONG: Coordination overhead exceeds value
claw agent-orchestrator crew --task "Fix typo" --agents 2

# RIGHT: Single agent or direct edit
edit file.py "typo" "correct"

Token Cost Warning

Multi-agent patterns use approximately 15x more tokens than single-agent interactions. Use only for high-value tasks where quality improvement justifies the cost. See Anthropic research: token usage explains 80% of performance variance in complex tasks.

Dependencies

  • Python 3.8+
  • OpenClaw sessions_spawn capability
  • OpenClaw sessions_list capability
  • OpenClaw sessions_history capability

Files

  • __main__.py - CLI entry point
  • crew.py - Work Crew pattern implementation
  • supervise.py - Supervisor pattern (Phase 2)
  • council.py - Expert Council pattern (Phase 2)
  • pipeline.py - Pipeline pattern (Phase 2)
  • route.py - Auto-Routing pattern (Phase 2)
  • utils.py - Shared utilities for session management

Status

  • MVP: Work Crew pattern implemented
  • Phase 2: 100% Complete
    • Supervisor pattern implemented - dynamic task decomposition and worker delegation
    • Pipeline pattern implemented - sequential staged processing with validation gates
    • Council pattern implemented - multi-expert deliberation with convergence methods
    • Route pattern implemented - intelligent task classification and specialist routing

References

  • Anthropic Multi-Agent Research System
  • LangGraph Supervisor Pattern
  • CrewAI Framework
  • AutoGen Conversational Agents

Source Transparency

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