langchain.biz logo
Real-world LangChain use cases and workflows
HomeContact us

LangChain Chains: How They Work and How to Build Them Right

  1. Home
  2. Blog
  3. LangChain Chains: How They Work and How to Build Them Right
4:3 tech infographic explaining LangChain chains on a clean white background. The design shows how prompts, LLMs, memory, tools, and output parsers connect in sequential AI workflows. Visual sections highlight LLMChain, SequentialChain, RouterChain, and T4:3 tech infographic explaining LangChain chains on a clean white background. The design shows how prompts, LLMs, memory, tools, and output parsers connect in sequential AI workflows. Visual sections highlight LLMChain, SequentialChain, RouterChain, and T

Frequently Asked Questions

General

Popular Blogs

LangChain MCP: Connect Agents to Tools with MCP Protocol
May 18th, 2026

LangChain MCP: Connect Agents to Tools with MCP Protocol

Learn how LangChain MCP works. Connect AI agents to real tools using MCP servers with setup guides, full code examples, and production best practices.

Read More
  • LangChain Groq: Fast AI Apps with Groq and LangChain

    LangChain Groq: Fast AI Apps with Groq and LangChain

    Learn LangChain Groq from setup to production. Build fast chains, RAG pipelines, and agents using Groq's LPU with Python code examples with this guide.

    Read More
  • LangChain Python: Complete Guide for AI App Development

    LangChain Python: Complete Guide for AI App Development

    Learn LangChain Python from setup to production. Build chains, RAG pipelines, memory, and agents with clear code examples and expert guidance.

    Read More
  • LangGraph Studio: Build and Debug AI Agents Visually

    LangGraph Studio: Build and Debug AI Agents Visually

    Learn how LangGraph Studio works, its key features like time-travel debugging and human-in-the-loop & how it helps developers build production-ready AI agents.

    Read More
langchain.biz — real-world LangChain use cases and workflows