Udemy
    •  
    •  
    •  
    •  
    •  
    •  
    •  
    •  
Hier kannst du dein Wissen und Können an Millionen von Teilnehmer:innen in aller Welt weitergeben und damit richtig Geld verdienen!
Weitere Infos
Dein Einkaufswagen ist leer.
Weiter einkaufen
Build AI Agents, ChatBot, RAG with LangChain + Local LLMs
Bewertung: 4,5 von 5(1,090 Bewertungen)
5.210 Teilnehmer:innen
Erstellt vonKarthik KK
Zuletzt aktualisiert 5/2026
Englisch

Das wirst du lernen

  • Running LLMs in Local Machine for development of LLM application
  • Understand the power of Langchain for building Local LLM application
  • Understand Chain, Prompts, ChatPromptTemplates, ChatMessageHistory
  • Building Chatbots with Historical Information with Langchain
  • Building RAG application with Vector stores, Embedding and Local LLMs
  • Understanding and Building Tools for LLMs
  • Building AI Agents with Tooling support for LLMs
  • Testing/Evaluating AI Agent & RAG Application with RAGAs

Kursinhalt

19 Abschnitte124 Lektionen13 Std. 7 Min. Gesamtdauer
  • Introduction6:56
  • Why Langchain?4:54
  • Understanding Langchain Ecosystem4:50
  • Check your knowledge!

Anforderungen

  • Basics of Python
  • Enthusiasm to learn the power of LLMs knowledge to enhance your app workflow
  • Enthusiasm to build AI Agents, RAG applications and Testing them

Beschreibung

Build & Test AI Agents, Chatbots, and RAG with Ollama & Local LLMs


This course is designed for complete beginners—even if you have zero knowledge of LangChain, you’ll learn step by step how to build LLM-based applications using local Large Language Models (LLMs).


The course is fully updated with LangChain v1.0.3


We’ll go beyond development and dive into evaluating and testing AI agents, RAG applications, and chatbots using RAGAs to ensure they deliver accurate and reliable results, following key industry metrics for AI performance.


What You’ll Learn:


  • Fundamentals of LangChain & LangSmith

  • Chat Message History in LangChain for storing conversation data

  • Running Parallel & Multiple Chains (RunnableParallels, etc.)

  • Building Chatbots with LangChain & Streamlit (with message history)

  • Understanding Tools and Tool chains in LLM

  • Building Tools and Custom Tools for LLM 

  • Creating AI Agents using LangChain

  • Implementing RAG with vector stores & local LLM embeddings

  • Using AI Agents and RAG with Tooling while building LLM Apps

  • Optimizing & Debugging AI applications with LangSmith

  • Evaluating & Testing LLM applications with RAGAs

  • Real-world projects & hands-on testing strategies

  • Assessing RAG & AI Agents with RAGAs


This entire course is taught inside Jupyter Notebook with Visual Studio, providing an interactive, guided experience where you can run the code seamlessly and follow along effortlessly.


By the end of this course, you’ll be able to build, test, and optimize AI-powered applications with confidence!

Für wen eignet sich dieser Kurs:

  • Beginner Developer or QA Engineer
  • AI Engineer/Tester
  • AI Tester/Gen AI Tester