Udemy

Complete RAG Bootcamp: Build, Optimize, and Deploy AI Apps

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  • 4,443 Students
  • Updated 10/2025
  • Certificate Available
4.1
(11 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
6 Hour(s) 31 Minute(s)
Language
English
Taught by
Data Science Academy, School of AI
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.1
(11 Ratings)

Course Overview

Complete RAG Bootcamp: Build, Optimize, and Deploy AI Apps

Learn to build intelligent, retrieval-powered AI systems using LangChain, LlamaIndex, and real-world RAG workflows

“This course contains the use of artificial intelligence”

Unlock the full potential of Retrieval-Augmented Generation (RAG) — the framework behind today’s most accurate, data-aware AI systems.
This comprehensive bootcamp takes you from the fundamentals of RAG architecture to enterprise-level deployment, combining theory, hands-on projects, and real-world use cases.

You’ll learn how to build powerful AI applications that go beyond simple chatbots — integrating vector databases, document retrievers, and large language models (LLMs) to deliver factual, explainable, and context-grounded responses.

What You’ll Learn

  • The core concepts of Retrieval-Augmented Generation (RAG) and why it’s transforming AI.

  • Building RAG pipelines from scratch using LangChain, LlamaIndex, and FAISS.

  • Implementing hybrid search (keyword + vector) for smarter retrieval.

  • Creating multi-modal RAG systems that process text, images, and PDFs.

  • Building Agentic RAG workflows where intelligent agents plan, retrieve, and reason autonomously.

  • Optimizing RAG performance with prompt tuning, top-k selection, and similarity thresholds.

  • Adding security, compliance, and role-based governance to enterprise RAG pipelines.

  • Integrating RAG into real-world workflows like Slack, Power BI, and Notion.

  • Deploying complete front-end and back-end RAG systems using Streamlit and FastAPI.

  • Designing evaluation metrics (semantic similarity, precision, recall) to measure retrieval quality.

Tools and Technologies Covered

  • LangChain, LlamaIndex, FAISS, OpenAI API, CLIP, Sentence Transformers

  • Streamlit, FastAPI, Pandas, Slack SDK, Power BI Integration

  • Python, LLM Prompt Engineering, and Enterprise Security Frameworks

Real-World Hands-On Labs

Each section of the course includes interactive labs and Jupyter notebooks covering:

  1. RAG Foundations – Build your first retrieval + generation pipeline.

  2. LangChain Integration – Connect document loaders, vector stores, and LLMs.

  3. Performance Optimization – Hybrid, MMR, and context tuning.

  4. Deployment – Launch full RAG applications via Streamlit & FastAPI.

  5. Enterprise Use Cases – Finance, Healthcare, Aviation, and Legal systems.

Who This Course Is For

  • Developers and Data Scientists exploring AI application design.

  • Machine Learning Engineers building context-aware LLMs.

  • Tech professionals aiming to integrate retrieval-augmented AI into products.

  • Students and researchers eager to understand modern AI architectures like RAG.

Outcome

By the end of this course, you’ll confidently design, implement, and deploy end-to-end RAG systems — combining the power of LLMs with enterprise data for smarter, explainable, and production-ready AI applications.

Course Content

  • 9 section(s)
  • 34 lecture(s)
  • Section 1 Introduction to Retrieval-Augmented Generation
  • Section 2 Foundations of RAG Architecture
  • Section 3 Working with Embeddings and Vector Databases
  • Section 4 Section 4: Building RAG Pipelines with LangChain
  • Section 5 Enhancing RAG Performance
  • Section 6 Deploying RAG Systems
  • Section 7 Advanced & Hybrid RAG Techniques
  • Section 8 Real-World Use Cases
  • Section 9 Section 9

What You’ll Learn

  • Design and Build a Retrieval-Augmented Generation (RAG) System Understand how to integrate large language models (LLMs) with retrieval pipelines
  • Implement Embeddings and Vector Databases for Semantic Search Learn how to generate and store embeddings using tools like OpenAI, ChromaDB, or Pinecone
  • Develop an End-to-End AI Knowledge Assistant Build and deploy a functional AI chatbot using frameworks like LangChain, Streamlit, and FastAPI
  • Evaluate and Optimize AI Performance Metrics Measure your assistant’s accuracy, relevance, and user experience using key performance metrics


Reviews

  • O
    Obiudu Valentine Chukwuemeka
    4.0

    Easy going so far.

  • O
    Olufemi Adebayo
    5.0

    Great lesson to revolutionise the way we use AI

  • R
    Rukayya Awwal Sulaiman
    5.0

    Awesome! The topic is delivered with utmost clarity.

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