![]() |
|
Ai Agent Memory Architecture With Spring Ai - Printable Version +- My Board (https://cursos.mpagestao.com.br) +-- Forum: Fórum MPA (https://cursos.mpagestao.com.br/forumdisplay.php?fid=1) +--- Forum: Fórum MPA – Espaço de Troca e Aprendizado Contínuo (https://cursos.mpagestao.com.br/forumdisplay.php?fid=2) +--- Thread: Ai Agent Memory Architecture With Spring Ai (/showthread.php?tid=213987) |
Ai Agent Memory Architecture With Spring Ai - charlie - 05-14-2026 [center] ![]() Ai Agent Memory Architecture With Spring Ai Published 5/2026 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Language: English | Duration: 1h 48m | Size: 1.05 GB[/center] Build layered memory systems with Java, Spring AI, PostgreSQL, pgvector, and scalable backend architecture What you'll learn Design AI agents with layered memory using Spring AI Advisors and PostgreSQL Build persona, episodic, semantic, and working memory for AI assistants Implement vector-based memory retrieval using pgvector and embeddings Create AI systems that remember users correctly across conversations Build scalable async memory pipelines for production-style AI backends Develop backend AI applications that learn user preferences over time Understand why chat history alone is not real memory for AI agents Requirements Basic knowledge of Java and Spring Boot is recommended Prior experience with SQL databases like PostgreSQL will help No prior AI or machine learning experience is required Curiosity about how modern AI assistants remember users across conversations Description Most AI applications do not truly remember users. They simply replay chat history. In this course, you will learn how to design and implement real memory systems for AI agents using Java, Spring AI, PostgreSQL, and pgvector. Using a practical AI Travel Planner project, you will build a layered memory architecture that enables AI assistants to remember users correctly across conversations. This is a backend engineering focused course designed for developers who want to move beyond basic chat applications and build production-style AI systems. What You'll Build • Working memory using conversation history • Persona memory for persistent user facts • Episodic memory using conversation summaries • Semantic memory using learned preferences • Vector similarity search with pgvector • Async memory processing pipelines • Centralized prompt assembly using Spring AI Advisors What You'll Learn • Why chat history is not real AI memory • How modern AI memory systems are structured • How to design layered memory architectures • How embeddings and vector search work in practice • How to retrieve relevant memory dynamically • How to build scalable AI backend pipelines • How to personalize AI behavior across conversations Technologies Used • Java • Spring Boot • Spring AI • PostgreSQL • pgvector By the end of this course, you will have a complete understanding of how real AI memory systems are designed and implemented in modern backend applications. Who this course is for Backend engineers building AI assistants and copilots Spring Boot developers exploring AI memory systems Java developers interested in production-style AI architecture Quote:https://rapidgator.net/file/ed9326d59b867904e2ec4f1ea39bc730/AI_Agent_Memory_Architecture_with_Spring_AI.part2.rar.html |