jasonz-ncc42

langchain-docs

Local LangChain AI documentation reference. Use when asked about LangChain, LangGraph, agents, chains, prompts, memory, tools, retrieval, RAG, vector stores, document loaders, or building LLM applications.

jasonz-ncc42 7 Updated 4mo ago
GitHub

Install

npx skillscat add jasonz-ncc42/local-context7/langchain-docs

Install via the SkillsCat registry.

SKILL.md

LangChain Documentation

LangChain is a framework for building LLM-powered applications. It provides components for chains, agents, RAG, memory, and tools. LangGraph extends this with stateful multi-agent orchestration.

Navigation Guide

LangChain: references/langchain/ - Core framework docs (51 files)

  • Agents, chains, RAG, memory, tools, models, guardrails
  • Key files: overview.mdx, agents.mdx, knowledge-base.mdx

LangGraph: references/langgraph/ - Multi-agent orchestration (35 files)

  • Graph API, memory, interrupts, durable execution
  • Key files: graph-api.mdx, memory.mdx, agentic-rag.mdx

Python SDK: references/python/ - Python API reference (1283 files)

  • Complete API docs for langchain-core, langchain, langgraph

JavaScript SDK: references/javascript/ - JS/TS API reference (299 files)

  • Complete API docs for @langchain/core, langchain, langgraph

Concepts: references/concepts/ - Foundational concepts (2 files)

Deep Agents: references/deepagents/ - Advanced agent patterns (10 files)

Key Entry Points

Task Start Here
Getting started references/learn.mdx
LangChain overview references/langchain/overview.mdx
Build an agent references/langchain/agents.mdx
RAG implementation references/langchain/knowledge-base.mdx
LangGraph intro references/langgraph/graph-api.mdx
Memory & state references/langgraph/memory.mdx
Python API references/python/
JavaScript API references/javascript/

When to use

Use this skill when the user asks about:

  • LangChain chains, agents, or components
  • LangGraph multi-agent orchestration
  • RAG (Retrieval Augmented Generation)
  • Memory and conversation history
  • Tools and tool calling
  • Vector stores and embeddings
  • Building LLM applications

How to find information

  1. First, read references/STRUCTURE.md to see all 1688 documentation files organized by directory
  2. Use Navigation Guide to find the section
  3. Check Key Entry Points for common tasks
  4. For API details: references/python/ or references/javascript/

STRUCTURE.md contains a complete file listing - always check it first when searching for specific topics.