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jnMetaCode/agency-agents-zh

🎭 266 个即插即用的 AI 专家角色 — 支持 Hermes Agent/Claude Code/Cursor/Copilot 等 18 种工具,覆盖工程/设计/营销/金融等 20 个部门。含 50 个中国市场原创智能体(小红书/抖音/微信/飞书/钉钉等)。搭配编排器 agency-orchestrator,一句话即可让多位专家按 DAG 自动协作。

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What it does

This project offers a collection of 186 ready-to-use AI specialist personas — like a virtual team of experts covering engineering, marketing, and business strategy — that can be dropped directly into popular AI coding and productivity tools. It's a Chinese-language edition that also includes personas tailored specifically for Chinese platforms like Xiaohongshu, Douyin, and WeChat.

Why it matters

As AI assistants become standard in product and development workflows, teams that can quickly deploy specialized, context-aware AI personas will move faster than those using generic prompts — and this project signals strong demand for localized AI tooling in the Chinese market. For founders and investors, it highlights an emerging category of 'AI team augmentation' products where pre-packaged expertise, not raw AI access, becomes the competitive advantage.

44Hot

Gaining traction — heating up

Stars
15.6k
Forks
2.7k
Contributors
6
Language
Shell

Score updated Apr 8, 2026

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