Advanced LangGraph Techniques
A reflection agent does not just generate a result: it evaluates its own work through a structured critique process. Instead of asking an LLM to directly generate its final result, an age...
For demonstrations, we will use LangGraph's Graph API to implement this pattern.
Sign in to read this course
A free account unlocks all 514 courses. 20 are readable without one.
What's inside
11 sections- 1 Table of Contents
- 2 Introduction to the Reflection pattern
- 3 Demo: Implementing the Reflection pattern with LangGraph
- 4 Demo: Running the graph and enabling LangSmith tracing
- 5 Demo: Extending the application with Human in the Loop
- 6 Demo: Extending the application with Memory and Context
- 7 Demo: Deploying the application on LangSmith Cloud
- 8 Understand cost and latency implications
- 9 Demo: Extension of the application with Streaming
- 10 Demo: Using the Responses API and running in the background
- 11 Appendices
More AI Agents & Orchestration courses
View all 23Agentic AI for Developers
Agentic AI across the SDLC: memory, tools, MCP, RAG, agentic coding and multi-agent observability.
Developing AI Agents with OpenAI AgentKit
Build, deploy and govern agents with OpenAI AgentKit — Agent Builder, tool calling, guardrails and evals.
Developing Multi-agent Systems
Design multi-agent systems with LangGraph — topologies, negotiation, hierarchies and game theory.
Applying Multi-Agent Systems to Daily Tasks
Understand and design multi-agent systems with side-by-side framework comparisons and implementation patterns.
Frameworks for Developing LLM Agents
Refine prompts, add RAG context, build feedback loops and orchestrate conversational memory with Spring Boot.
GenAI Orchestration and Agent Patterns
Multi-step reasoning, multi-agent collaboration, tool chaining, error recovery and orchestration best practices.
Interested in this course?
Contact us to book it or get a custom training plan for your team.