Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Basic To Advanced: Retreival-Augmented Generation (Rag)

    Posted By: ELK1nG
    Basic To Advanced: Retreival-Augmented Generation (Rag)

    Basic To Advanced: Retreival-Augmented Generation (Rag)
    Published 10/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.22 GB | Duration: 2h 22m

    Multi-modal RAG Stack: A Hands-on Journey Through Vector Stores, LLM Integration, and Advanced Retrieval Methods

    What you'll learn

    Build three professional-grade chatbots: Website, SQL, and Multimedia PDF

    Master RAG architecture and implementation from fundamentals to advanced techniques

    Run and optimize both open-source and commercial LLMs

    Implement vector databases and embeddings for efficient information retrieval

    Create sophisticated AI applications using LangChain framework

    Deploy advanced techniques like prompt caching and query expansion

    Understand how to deploy on AWS EC2 (Basic Guide)

    Requirements

    Basic Python knowledge is Good to have but not mandatory.

    Description

    Transform your development skills with our comprehensive course on Retrieval-Augmented Generation (RAG) and LangChain. Whether you're a developer looking to break into AI or an experienced programmer wanting to master RAG, this course provides the perfect blend of theory and hands-on practice to help you build production-ready AI applications.What You'll LearnBuild three professional-grade chatbots: Website, SQL, and Multimedia PDFMaster RAG architecture and implementation from fundamentals to advanced techniquesRun and optimize both open-source and commercial LLMsImplement vector databases and embeddings for efficient information retrievalCreate sophisticated AI applications using LangChain frameworkDeploy advanced techniques like prompt caching and query expansionCourse ContentSection 1: RAG FundamentalsUnderstanding Retrieval-Augmented Generation architectureCore components and workflow of RAG systemsBest practices for RAG implementationReal-world applications and use casesSection 2: Large Language Models (LLMs) - Hands-on PracticeSetting up and running open-source LLMs with OllamaModel selection and optimization techniquesPerformance tuning and resource managementPractical exercises with local LLM deploymentSection 3: Vector Databases & EmbeddingsDeep dive into embedding models and their applicationsHands-on implementation of FAISS, ANNOY, and HNSW methodsSpeed vs. accuracy optimization strategiesIntegration with Pinecone managed databasePractical vector visualization and analysisSection 4: LangChain FrameworkText chunking strategies and optimizationLangChain architecture and componentsAdvanced chain composition techniquesIntegration with vector stores and LLMsHands-on exercises with real-world dataSection 5: Advanced RAG TechniquesQuery expansion and optimizationResult re-ranking strategiesPrompt caching implementationPerformance optimization techniquesAdvanced indexing methodsSection 6: Building Production-Ready ChatbotsWebsite ChatbotArchitecture and implementationContent indexing and retrievalResponse generation and optimizationSQL ChatbotNatural language to SQL conversionQuery optimization and safetyDatabase integration best practicesMultimedia PDF ChatbotMulti-modal content processingPDF parsing and indexingRich media response generationWho This Course is ForSoftware developers looking to specialize in AI applicationsAI engineers wanting to master RAG implementationBackend developers interested in building intelligent chatbotsTechnical professionals seeking hands-on LLM experiencePrerequisitesBasic Python programming knowledgeFamiliarity with REST APIsUnderstanding of basic database conceptsBasic understanding of machine learning concepts (helpful but not required)Why Take This CourseIndustry-relevant skills currently in high demandHands-on experience with real-world examplesPractical implementation using Tesla Motors databaseComplete coverage from fundamentals to advanced conceptsProduction-ready code and best practicesWorkshop-tested content with proven resultsWhat You'll BuildBy the end of this course, you'll have built three professional-grade chatbots and gained practical experience with:RAG system implementationVector database integrationLLM optimizationAdvanced retrieval techniquesProduction-ready AI applicationsJoin us on this exciting journey to master RAG and LangChain, and position yourself at the forefront of AI development.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Lecture 2 Outline

    Section 2: RAG Fundamentals

    Lecture 3 Section Intro

    Lecture 4 Intro to RAG & Core Concepts

    Lecture 5 Principles, Traditional Methods vs RAG

    Lecture 6 Real-world applications and use cases

    Lecture 7 Understanding Retrieval-Augmented Generation architecture

    Section 3: Introduction to Large Language Models (LLMs)

    Lecture 8 Section Intro

    Lecture 9 Basics of LLMs and Closed Source Models

    Lecture 10 Closed Source & Open Source LLMs (Continued)

    Lecture 11 Closed vs Open Source Models & Software

    Lecture 12 What does Retrieval-Augmented Generation (RAG) do to LLMs?

    Lecture 13 Let's run an Open Source LLM locally!

    Section 4: VS Code & Github Repo Setup

    Lecture 14 Downloading Python, VS Code, Git and more

    Lecture 15 Cloning and accessing all Projects

    Section 5: Vector Databases & Embeddings

    Lecture 16 Section Intro

    Lecture 17 What are Vectors and Why we use them?

    Lecture 18 What are Embeddings?

    Lecture 19 Setting up over VS Code Project

    Lecture 20 Audio, Graph, Text and Image Vectors & Embeddings

    Lecture 21 Vector DB Indexing and Pinecone Setup

    Lecture 22 Image, Text and Paragraph Indexing and Matching

    Section 6: LangChain Framework & Building a Simple RAG Pipeline

    Lecture 23 Section Intro

    Lecture 24 Components of Basic RAG Pipeline, LangChain and Loaders

    Lecture 25 Create a Website Chatbot

    Lecture 26 Add a Memory to your Website Chatbot

    Lecture 27 Building a CSV / Excel Data Chatbot

    Section 7: LangChain / RAG Advanced

    Lecture 28 Section Intro

    Lecture 29 Advanced Text Splitting, Re-ranking, Chunking Techniques

    Lecture 30 Building Query Expansion Workflow

    Section 8: Advanced Projects with LangChain

    Lecture 31 Section Intro

    Lecture 32 SQL / Database Chatbot using LangChain

    Lecture 33 Prompt Caching (In Memory and DB)

    Lecture 34 Multi-modal Chatbot

    Section 9: Completion!

    Lecture 35 Congratulations!

    Software developers looking to specialize in AI applications,AI engineers wanting to master RAG implementation,Backend developers interested in building intelligent chatbots,Technical professionals seeking hands-on LLM experience,Software Engineers Data Scientists, AI Engineers, Machine Learning Engineers