Esta página se muestra en inglés. Una traducción al español está en curso.
PromptsMay 12, 2026·2 min de lectura

Awesome Agentic AI (ZH) — 7-Stage Learning Map

awesome-agentic-ai-zh is a bilingual 7-stage roadmap for AI agents, with 145+ curated projects, hands-on exercises, and CLI/MCP ecosystem guidance.

Listo para agents

Este activo puede ser leído e instalado directamente por agents

TokRepo expone un comando CLI universal, contrato de instalación, metadata JSON, plan según adaptador y contenido raw para que los agents evalúen compatibilidad, riesgo y próximos pasos.

Native · 96/100Política: permitir
Superficie agent
Cualquier agent MCP/CLI
Tipo
Prompt
Instalación
Single
Confianza
Confianza: Community
Entrada
stages/
Comando CLI universal
npx tokrepo install 9687e825-75cf-57b7-86ab-6304f16c119e
Introducción

awesome-agentic-ai-zh is a bilingual 7-stage roadmap for AI agents, with 145+ curated projects, hands-on exercises, and CLI/MCP ecosystem guidance.

  • Best for: learners who want a structured path from LLM basics to multi-agent systems and MCP
  • Works with: Markdown-first content; ZH (Traditional/Simplified) + English; includes exercises and project picks
  • Setup time: 30–45 minutes to start

Practical Notes

  • Quant: the roadmap is organized into 7 stages with two tracks (CLI Power User vs Agent Builder).
  • Quant: it highlights 145+ projects and estimates 14–19 weeks minimum (realistically 5–6 months at 5–8 hr/week).

Main

A practical way to use this repo at work:

  1. Follow Stage 0–2 as shared foundation, then choose Track A (use CLI agents) or Track B (build agents).
  2. Treat each stage’s “hands-on” items as acceptance tests: finish them before moving on.
  3. Keep a weekly log of what you built and what failed—agent work improves fastest when failures are explicit.

If your goal is productivity with Claude Code/Codex, Track A is the faster path; Track B is the deeper path for system builders.

FAQ

Q: Is it only in Chinese? A: No—README shows Traditional Chinese, Simplified Chinese, and English docs.

Q: Which track should I start with? A: Most people start with Track A for CLI productivity, then switch to Track B for deeper agent building.

Q: How long does it take? A: The repo estimates 14–19 weeks minimum; realistic pace is 5–6 months at 5–8 hours/week.

🙏

Fuente y agradecimientos

Source: https://github.com/WenyuChiou/awesome-agentic-ai-zh > License: MIT > GitHub stars: 1,043 · forks: 102

Discusión

Inicia sesión para unirte a la discusión.
Aún no hay comentarios. Sé el primero en compartir tus ideas.

Activos relacionados