Agent Workflow Designer
技能 已验证 活跃Agent Workflow Designer
Design production-grade multi-agent workflows with clear pattern choice, handoff contracts, failure handling, and cost/context controls.
功能
- Workflow pattern selection for multi-step agent systems
- Skeleton config generation for fast workflow bootstrapping
- Context and cost discipline across long-running flows
- Error recovery and retry strategy scaffolding
- Documentation pointers for operational pattern tradeoffs
使用场景
- When a single prompt is insufficient for task complexity
- When you need specialist agents with explicit boundaries
- When you want deterministic workflow structure before implementation
- When you need validation loops for quality or safety gates
非目标
- Over-orchestrating tasks solvable by one well-structured prompt
- Passing full upstream context instead of targeted artifacts
安装
请先添加 Marketplace
/plugin marketplace add alirezarezvani/claude-skills/plugin install engineering@claude-code-skills质量评分
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