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Deep Learning & Machine Learning

Building Generative AI Services with LangChain version 1.0

This course covers the entire process of designing and implementing generative AI services centered on LangChain 1.0 and LangGraph through step-by-step hands-on practice. Beyond simple LLM calls, you'll directly implement operational AI system architectures that include agent-based architecture, state management, memory, streaming, middleware, and Human-in-the-Loop. Through hands-on practice with document/PDF/web data-based RAG systems, SQL Agent (Chinook DB), tool-calling-based Agents, Supervisor pattern multi-agents, and state machine-based workflows using LangGraph Graph API, you'll build reusable agent pipelines that can be immediately applied in real-world scenarios. Additionally, through structured output (Pydantic-based), agent middleware (Summarization, HITL, Retry, PII protection), and token/step-by-step streaming, you'll complete generative AI applications with the stability, scalability, and controllability required in actual services. 👉 For those who want to accurately understand the internal structure and execution flow of LangChain/LangGraph 👉 For those who want to implement RAG·Agent as a real service structure, not just a "demo" 👉 This is the optimal course for those who need a realistic practical roadmap covering state-based agents, SQL·document automation, and multi-agent orchestration.

4 learners are taking this course

Level Beginner

Course period Unlimited

  • YoungJea Oh
실습 중심
실습 중심
AI 활용법
AI 활용법
ChatGPT
ChatGPT
prompt engineering
prompt engineering
LangChain
LangChain
Generative AI
Generative AI
실습 중심
실습 중심
AI 활용법
AI 활용법
ChatGPT
ChatGPT
prompt engineering
prompt engineering
LangChain
LangChain
Generative AI
Generative AI

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