Udemy

Spring AI + RAG: Build Production-Grade AI with Your Data

Enroll Now
  • 337 Students
  • Updated 3/2026
5.0
(43 Ratings)
CTgoodjobs selects quality courses to enhance professionals' competitiveness. By purchasing courses through links on our site, we may receive an affiliate commission.

Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
3 Hour(s) 59 Minute(s)
Language
English
Rating
5.0
(43 Ratings)

Course Overview

Spring AI + RAG: Build Production-Grade AI with Your Data

Spring AI RAG system design covering ingestion, chunking, retrieval, and prompt reliability.

Most RAG courses stop at loading a few documents and asking questions.

This course goes further.

Spring AI + RAG: Build Production-Grade AI with Your Data teaches you how to design, build, and operate a real Retrieval-Augmented Generation (RAG) system the way backend engineers build serious systems — with clear boundaries, explicit pipelines, and production-minded decisions.

Includes free 90-day access to IntelliJ IDEA Ultimate for a professional development experience.

Includes professionally prepared subtitles in Spanish, Portuguese (Brazil), Japanese, and Chinese.


This is not a prompt-engineering or chatbot tutorial.
It is a backend-first system design course focused on correctness, reliability, and long-term maintainability.

You will build a complete Internal Knowledge Assistant for a fictional company, using:

  • Spring Boot

  • Spring AI

  • PostgreSQL

  • Redis / vector stores

The same codebase evolves throughout the course, exactly like a real backend system.

What Makes This Course Different

  • RAG is treated as a system, not a prompt trick

  • Ingestion, chunking, retrieval, and prompting are separate, testable pipelines

  • Metadata is a first-class concern, not an afterthought

  • Knowledge can be added, updated, and deleted safely

  • Everything is implemented using Spring AI abstractions, not custom hacks

  • No Python, no LangChain, no demo-only shortcuts

By the end, you will not just “use Spring AI” — you will understand how to own and evolve an AI system in production.

What You Will Learn

  • How to design ingestion pipelines for PDFs, Markdown, and databases

  • Why chunking strategies directly affect retrieval quality

  • How embeddings and vector stores fit into backend architecture

  • How to build metadata-aware retrieval pipelines

  • How to control LLM behavior with explicit prompt orchestration

  • How to manage knowledge lifecycle: add, update, delete

  • How to build RAG systems that remain correct as data changes

Course Modules Overview

This course is organized as a progressive backend system build, where each module introduces exactly one new system concern.

  • Module 1 — Setup & Spring AI Baseline
    Spring Boot + Spring AI setup and a minimal chat endpoint to establish the foundation.

  • Module 2 — RAG Readiness
    Use-case framing, data sources, and infrastructure setup (PostgreSQL, Redis).

  • Module 3 — Ingestion Pipelines
    Designing repeatable ingestion for PDFs, wiki content, and database records.

  • Module 4 — Chunking Strategies
    Source-specific chunking approaches and a unified chunking pipeline.

  • Module 5 — Embeddings & Vector Storage
    Generating embeddings and persisting them with metadata in a vector store.

  • Module 6 — Retrieval Pipelines
    Metadata-aware similarity search and clean retrieval integration into chat.

  • Module 7 — Prompt Orchestration & Reliability
    Grounded prompts, explicit behavior control, and citation-based, source-attributed answers.

  • Module 8 — Knowledge Lifecycle
    Safe add, update, and delete workflows to keep the system correct over time.

Who This Course Is For

  • Java and Spring Boot developers

  • Backend engineers integrating AI into real systems

  • Developers who already understand REST APIs, databases, and Spring fundamentals

  • Engineers who want to move beyond demo-level RAG implementations

Who This Course Is NOT For

  • Absolute beginners to Java or Spring

  • No-code or prompt-only AI learners

  • Frontend-focused developers looking for chatbot-only examples

  • Learners expecting quick "load a PDF and chat" style examples

Outcome

After completing this course, you will be able to:

  • Design RAG systems confidently

  • Build production-grade AI pipelines using Spring AI

  • Reason about correctness, reliability, and system boundaries

  • Apply the same architecture to other real-world use-cases

This course gives you the mental model and engineering discipline needed to build AI systems that last.

Course Content

  • 8 section(s)
  • 50 lecture(s)
  • Section 1 Project Setup & Spring AI Sanity Check
  • Section 2 RAG Readiness: Use-Case, Data & Infrastructure
  • Section 3 Data Ingestion Pipelines for RAG Systems
  • Section 4 Chunking Strategies for High-Quality RAG
  • Section 5 Embeddings & Vector Storage
  • Section 6 Retrieval Pipelines for RAG & Chat Integration
  • Section 7 Prompt Orchestration & Reliable AI Responses
  • Section 8 Knowledge Lifecycle Management for RAG Systems

What You’ll Learn

  • Design end-to-end RAG systems using Spring AI, following backend system design principles rather than demo-style implementations., Build repeatable ingestion pipelines for PDFs, wiki documents, and database content with clear structure and metadata., Implement effective chunking and embedding pipelines that directly impact retrieval quality and correctness., Design metadata-aware retrieval pipelines and integrate them cleanly into backend chat flows., Control LLM behavior using explicit prompt orchestration, grounding rules, and source-aware answers., Manage the full knowledge lifecycle by safely adding, updating, and deleting data without corrupting retrieval results.

Reviews

  • P
    Praveen Adiga
    5.0

    Best RAG course with practical implementation

  • A
    Anne George
    5.0

    A well-thought-out course with strong architectural depth.

  • A
    Anusuya Ganguly
    5.0

    it is a excellent match , this course is really good for any backend developer having expertise in java, spring boot and interested in building a production grade RAG.

  • L
    Lincoln D Marsh
    5.0

    Feels like learning directly from industry experience.

Start FollowingSee all

We use cookies to enhance your experience on our website. Please read and confirm your agreement to our Privacy Policy and Terms and Conditions before continue to browse our website.

Read and Agreed