![]() |
Ai Agents & Agentic Workflows With Spring Ai, Mcp And Java
![]() Ai Agents & Agentic Workflows With Spring Ai, Mcp And Java Published 5/2026 Created by Vinoth Selvaraj MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Level: All Levels | Genre: eLearning | Language: English | Duration: 190 Lectures ( 11h 53m ) | Size: 5 GB What you'll learn ⚡ Build AI Agents using Spring AI and Java ⚡ Design Agentic Workflows and multi-turn reasoning systems ⚡ Implement MCP Servers using Spring Boot ⚡ Build and expose MCP Tools, Resources and Prompts ⚡ Integrate OpenAI, Gemini and local LLMs using Ollama ⚡ Build Human-in-the-Loop workflows using Elicitation ⚡ Handle asynchronous workflows using Progress Notifications ⚡ Write Integration Tests for MCP-based AI systems ⚡ Implement Structured Output and Prompt Engineering techniques ⚡ Use ChatClient, ChatMemory and Advisors effectively Requirements ❗ No prior AI knowledge is required. We will start from the fundamentals with a hands-on approach. ❗ Knowledge of Java and Spring Boot is required. ❗ OpenAI and Gemini APIs may incur small usage costs. Expected cost for this course is approximately 1 USD. Description Build AI Agents and Agentic Workflows using Spring AI, MCP and Java. This course is a deep-dive, architecture-first masterclass on building production-grade AI Agents and Agentic Workflows using Java, Spring AI and the Model Context Protocol (MCP). What you will master ✨ Building AI Agents using Spring AI and Java ✨ Designing Agentic Workflows and multi-turn reasoning systems ✨ Understanding MCP Architecture and communication flow ✨ Implementing MCP Tools, Resources and Prompts ✨ Building Human-in-the-Loop workflows using Elicitation ✨ Handling asynchronous workflows using Progress Notifications ✨ Integrating OpenAI, Gemini and local models using Ollama ✨ Using ChatClient, ChatMemory and Advisors effectively ✨ Implementing Structured Output and Prompt Engineering techniques ✨ Designing AI-Powered Microservices using Spring Boot ✨ Writing Integration Tests for MCP-based systems ✨ Applying real-world AI architecture patterns and implementation best practices By the end of the course, you will be able to ✨ Build production-grade AI Agents and Agentic Workflows using Spring AI and Java ✨ Design and implement MCP Servers with Tools, Resources and Prompts ✨ Integrate OpenAI, Gemini and local LLMs into Spring Boot applications ✨ Build context-aware AI systems using ChatMemory, Advisors and Structured Output ✨ Apply production-oriented AI architecture patterns, testing strategies and best practices Throughout the course, we will build practical, production-style AI systems using Spring Boot, Spring AI and MCP. Who this course is for ⭐ Java and Spring Developers exploring AI Agents and MCP Homepage Код:
https://anonymz.com/?Цитата:
|
| Часовой пояс GMT +3, время: 15:58. |
vBulletin® Version 3.6.8.
Copyright ©2000 - 2026, Jelsoft Enterprises Ltd.
Перевод: zCarot