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LangChain Development for LLM Applications
Educative

LangChain Development for LLM Applications

Build production-ready LLM applications using LangChain framework through 2 hours of beginner-friendly training covering prompt templates, chains, memory management, and agents. Master retrieval-augmented generation, implement multilingual chatbots with router chains, and explore LangGraph for dynamic multi-agent systems while connecting language models to external tools and data sources. Learn More
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Lessons : 20

Module : 5

LangChain Development for LLM Applications
Course available on

Subject

Duration

1 – 2 hours

Course Level

Beginner

Overview

Large language models offer impressive capabilities, but integrating them into applications presents challenges. LangChain solves these problems by providing frameworks for building LLM-powered applications that actually work in production.

Founded in 2022 by Harrison Chase, LangChain quickly became essential for GenAI development. This beginner course teaches practical implementation across 2 hours of interactive lessons, requiring no prior LLM experience.

You’ll explore prompt templates standardizing how you communicate with models, chains connecting multiple operations sequentially, and memory types managing conversational context so chatbots remember previous exchanges. These components automate workflows and enable sophisticated AI behaviors.

The training covers connecting language models with external tools and data through APIs. You’ll use agents that autonomously decide which tools to employ for specific tasks, expanding applications beyond static responses into dynamic problem-solving systems.

Retrieval-augmented generation demonstrates how models access external knowledge bases, answering questions beyond their training data. This proves crucial for applications requiring current information or domain-specific knowledge.

LangGraph basics introduce building dynamic multi-agent systems where multiple AI agents collaborate on complex tasks. You’ll understand LangGraph components and create robust routing systems directing queries to appropriate handling mechanisms.

A hands-on chatbot project implements router chains enabling responses in multiple languages, demonstrating practical LangChain application. The interactive platform lets you code immediately, receiving personalized feedback as concepts build progressively.

Developed by ex-MAANG engineers and PhD educators, curriculum reflects what matters in actual development environments. You’re learning frameworks and patterns used building production AI applications, not academic exercises disconnected from real implementation.

What You'll Learn

  • LangChain fundamentals understanding core framework capabilities
  • Language model integration connecting LLMs to applications
  • Prompt template development standardising model interactions
  • Chain construction linking operations for complex workflows
  • Memory management maintaining conversational context
  • Output parsing structuring model responses for application use
  • Runnables and expression language composing LangChain components
  • Tool integration connecting models with external APIs and functions
  • Agent implementation building autonomous decision-making systems
  • Embeddings and vector stores semantic search and similarity matching
  • Retrieval-augmented generation accessing external knowledge bases
  • Multilingual chatbot development implementing router chains
  • LangGraph introduction creating multi-agent systems
  • Dynamic routing systems directing queries intelligently
  • Workflow automation using LangChain for repetitive tasks

Taught by : MAANG Engineers

Curriculum development combines former software engineers from Meta, Amazon, Apple, Netflix, and Google with PhD computer science educators, consulting developers and data scientists actively working in AI fields. Their teaching emphasizes hands-on implementation through interactive coding environments, providing immediate feedback rather than passive video consumption. Lessons adapt based on individual learner progress, ensuring concepts solidify before advancing. This methodology reflects their mission providing practical skills needed in rapidly evolving technology sectors, particularly generative AI where framework updates and new patterns emerge constantly, requiring implementation experience to translate documentation into functioning applications.

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English

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Very High

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Duration

1 – 2 hours

Level

Beginner

Subject

Course available on

Summarize : Build production-ready LLM applications using LangChain framework through 2 hours of beginner-friendly training covering prompt templates, chains, memory management, and agents. Master retrieval-augmented generation, implement multilingual chatbots with router chains, and explore LangGraph for dynamic multi-agent systems while connecting language models to external tools and data sources. Learn More

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