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jnMetaCode/agency-orchestrator

🚀 One sentence → multi-AI-role collaboration → complete plan in minutes. 211+ expert roles, zero-code YAML, 9 LLM providers (6 free). 一句话调度多个AI专家自动协作,几分钟交付完整方案。

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What it does

Agency Orchestrator lets you describe a problem in one sentence and automatically assembles a team of AI specialists — choosing from 211 expert roles like product manager, financial analyst, or marketer — who work together in parallel to deliver a complete plan within minutes. It works with tools you may already pay for like ChatGPT Plus, Claude, or GitHub Copilot, requires no coding or complex setup, and runs entirely through simple configuration files.

Why it matters

As AI moves from single-assistant chat to coordinated multi-agent workflows, this tool gives founders and small teams the ability to simulate a full cross-functional team on demand — at near-zero cost — which fundamentally changes how early-stage decisions, research, and planning get done. The no-code, no-extra-cost positioning also signals a broader market shift: the barrier to running sophisticated AI workflows is collapsing, making multi-agent orchestration a realistic tool for non-technical builders, not just engineers.

37Active

On the radar — signal detected

Stars
1.5k
Forks
211
Contributors
1
Language
TypeScript

Score updated Apr 26, 2026

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