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Spring Ai + Rag: Build Production-Grade Ai With Your Data - Wersja do druku +- SpeedwayHero - forum (https://speedwayhero.com/forum) +-- Dział: Forum Główne (https://speedwayhero.com/forum/forumdisplay.php?fid=1) +--- Dział: Propozycje (https://speedwayhero.com/forum/forumdisplay.php?fid=5) +--- Wątek: Spring Ai + Rag: Build Production-Grade Ai With Your Data (/showthread.php?tid=77460) |
Spring Ai + Rag: Build Production-Grade Ai With Your Data - charlie - 18-01-2026 [center] ![]() Spring Ai + Rag: Build Production-Grade Ai With Your Data Published 1/2026 Created by Infiproton Tech, Harish B N MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch[/center] Level: All | Genre: eLearning | Language: English | Duration: 48 Lectures ( 3h 50m ) | Size: 3 GB Spring AI RAG system design covering ingestion, chunking, retrieval, and prompt reliability. 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. Requirements ● Basic experience with Java and Spring Boot (REST APIs, configuration, project structure). ● Comfortable working with databases and general backend application concepts. ● Familiarity with IDE-based development and running applications locally. ● No prior AI, RAG, or Spring AI experience required - all AI concepts are covered from scratch. Description 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. 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. Who this course is for ■ Java and Spring Boot developers who want to integrate RAG into backend applications ■ Backend engineers adding AI capabilities to existing systems and services ■ Developers who care about system design, correctness, and long-term maintainability ■ Engineers who want to understand how RAG works end-to-end, from ingestion to retrieval and controlled generation Cytat:https://rapidgator.net/file/09ff39c3531b5c8e6c2ffa801b561788/Spring_AI___RAG_Build_Production_Grade_AI_with_Your_Data.part4.rar.html |