zachysun

langgraph-for-agents

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# Install this skill:
npx skills add zachysun/LangGraph_Skill

Or install specific skill: npx add-skill https://github.com/zachysun/LangGraph_Skill/tree/main/.skill/langgraph-for-agents

# Description

Use LangGraph to build agents

# SKILL.md


name: langgraph-for-agents
description: Use LangGraph to build agents


LangGraph for Agents

When to use

  • Use this skill when the user asks to build agents or multi-agent systems using LangGraph.

How to refer

Integrated Reference Examples

Read the examples in "./references/" to understand common patterns.
Start with "./references/README.md" for an overview, then read the target file, it will show more details.

External Resources

[Search]
If the "search" tool is available, you can refine the query keywords and execute the search.

[Browse]
If the "browse" tool is available, you can visit the following three websites:
- LangGraph Official GitHub Repository (https://github.com/langchain-ai/langgraph)
- LangGraph Official Documentation (https://docs.langchain.com/oss/python/langgraph/overview)
- LangChain Official Documentation (https://docs.langchain.com/oss/python/langchain/overview)

[Fetch]
If the "fetch" tool is available, you can retrieve content from the following URL:
- Context-7 LangGraph (https://context7.com/websites/langchain_oss_python_langgraph/llms.txt?tokens=10000)
You may adjust the number of tokens by modifying the tokens parameter in the URL. The default value is 10,000.

Project Structure

For demos or tests, use a single .py file. For production-grade applications, use:

├── app/                      
│   ├── api/        # API endpoints
│   ├── backend/    # LangGraph logic
│   └── frontend/   # User interface
├── .env.example
├── requirements.txt
└── README.md

Build Philosophy

  • Prefer Native: Check if a tool or integration already exists in LangChain before custom building.
  • Single File First: Keep core logic in one file initially to simplify debugging.
  • Clean Code: Provide only essential comments and use clear, descriptive variable names.
  • Real Data: Use actual API URLs and schemas whenever possible.

# README.md

LangGraph_Skill

---
name: langgraph-for-agents
description: Use LangGraph to build agents
---

Folder: ".skill/langgraph-for-agents/"

Platforms support skills:
- Claude Code
- OpenCode
- Codex
- Trae
- OpenClaw
- Manus
- ...

All references are from repository https://github.com/zachysun/LangGraph_Usage_Lib

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.