agent-coordination

Coordinate multiple agents for software development across any language. Use for parallel execution of independent tasks, sequential chains with dependencies, swarm analysis from multiple perspectives, or iterative refinement loops. Handles Python, JavaScript, Java, Go, Rust, C#, and other languages.

$ 安裝

git clone https://github.com/d-o-hub/github-template-ai-agents /tmp/github-template-ai-agents && cp -r /tmp/github-template-ai-agents/.claude/skills/agent-coordination ~/.claude/skills/github-template-ai-agents

// tip: Run this command in your terminal to install the skill


name: agent-coordination description: Coordinate multiple agents for software development across any language. Use for parallel execution of independent tasks, sequential chains with dependencies, swarm analysis from multiple perspectives, or iterative refinement loops. Handles Python, JavaScript, Java, Go, Rust, C#, and other languages.

Agent Coordination

Coordinate multiple agents efficiently for complex development tasks across any programming language.

Quick Start

Choose your coordination strategy:

Parallel - Independent tasks → See PARALLEL.md Sequential - Dependent tasks → See SEQUENTIAL.md
Swarm - Multi-perspective analysis → See SWARM.md Hybrid - Multi-phase workflows → See HYBRID.md Iterative - Progressive refinement → See ITERATIVE.md

Available Agents

AgentBest For
code-reviewerQuality assessment, standards
test-runnerExecute tests, verify functionality
feature-implementerBuild new capabilities
refactorerImprove existing code
debuggerDiagnose and fix issues
security-auditorFind vulnerabilities
performance-optimizerSpeed and efficiency
loop-agentOrchestrate iterations

Basic Workflow

  1. Choose strategy based on task structure
  2. Select agents matching required capabilities
  3. Execute with quality gates between phases
  4. Validate outputs before proceeding
  5. Synthesize results

Language Support

This coordination skill works with:

  • Python (Django, Flask, FastAPI)
  • JavaScript/TypeScript (Node.js, React, Vue)
  • Java (Spring, Jakarta EE)
  • Go (Gin, Echo)
  • Rust (Actix, Rocket)
  • C# (.NET, ASP.NET Core)

Common Patterns

Analysis + Execution:

1. Swarm analysis (parallel agents gather insights)
2. Sequential execution (apply findings)
3. Parallel validation (verify results)

Test-Driven Workflow:

1. test-runner: Run existing tests
2. feature-implementer: Add functionality
3. test-runner: Verify implementation
4. code-reviewer: Quality check

Performance Optimization:

Loop with performance-optimizer until:
- Metrics meet targets
- No more optimizations found
- Max iterations reached

Quality Gates

Between each phase, verify:

  • Code compiles/parses correctly
  • Tests pass with adequate coverage
  • Security scans clean
  • Performance acceptable
  • No regressions introduced

Next Steps

Read the specific coordination pattern that matches your task structure. Each pattern includes detailed workflows, examples, and quality criteria.