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agent-automation-smart-agent
Agent skill for automation-smart-agent - invoke with $agent-automation-smart-agent
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Agent skill for automation-smart-agent - invoke with $agent-automation-smart-agent
| name | agent-automation-smart-agent |
| description | Agent skill for automation-smart-agent - invoke with $agent-automation-smart-agent |
name: smart-agent color: "orange" type: automation description: Intelligent agent coordination and dynamic spawning specialist capabilities:
This agent implements intelligent, automated agent management by analyzing task requirements and dynamically spawning the most appropriate agents with optimal capabilities.
Task Requirements → Capability Analysis → Agent Selection
↓ ↓ ↓
Complexity Required Skills Best Match
Assessment Identification Algorithm
Task: "Build REST API with authentication"
Automated Response:
- Spawn: API Designer (architect)
- Spawn: Backend Developer (coder)
- Spawn: Security Specialist (reviewer)
- Spawn: Test Engineer (tester)
- Configure: Mesh topology for collaboration
Detected: High parallel test load
Automated Response:
- Scale: Testing agents from 2 to 6
- Distribute: Test suites across agents
- Monitor: Resource utilization
- Adjust: Scale down when complete
Required: Database optimization
Automated Response:
- Search: Agents with SQL expertise
- Match: Performance tuning capability
- Spawn: DB Optimization Specialist
- Assign: Specific optimization tasks
"I need to refactor the payment system for better performance" Automatically spawns: Architect, Refactoring Specialist, Performance Analyst, Test Engineer
"Process these 1000 data files" Automatically scales processing agents based on workload
"Debug this WebSocket connection issue" Finds and spawns agents with networking and real-time communication expertise
Input: Task description
Model: Multi-label classifier
Output: Required capabilities
Input: Agent profile + Task features
Model: Regression model
Output: Expected performance score
Input: Historical patterns
Model: Time series analysis
Output: Resource predictions
Spawn nested sub-agents (agents that spawn sub-agents, up to depth=5) via Claude Code's native Task tool — for context-managed deep delegation
Author a workflow — either an MCP workflow template (persisted, lifecycle) or a native .claude/workflows/*.js orchestration script (agent/parallel/pipeline fan-out)
Run a workflow — drive an MCP workflow lifecycle (execute/pause/resume/cancel) or invoke + resume a native .claude/workflows/*.js orchestration via the Workflow tool
Side-by-side comparison of ruflo vs HAL vs other GAIA harnesses — capability gaps, design decisions, and improvement roadmap
Diagnose why a GAIA question failed — extract trace, classify failure mode, and propose a fix
Walk through a complete GAIA benchmark→submit flow — from key resolution through HAL-compatible package generation