Julián Duque
Building AI Applications with LangChain and Node.js
#1about 4 minutes
Defining modern AI applications and core concepts
An overview of what constitutes a generative AI application and a review of fundamental concepts like LLMs, inference, context windows, and model evaluation.
#2about 2 minutes
Exploring common AI application patterns
A breakdown of the four primary architectural patterns for AI applications: chat, retrieval-augmented generation (RAG), single-agent, and multi-agent systems.
#3about 2 minutes
Understanding the modern LLM application stack
A look at the key components of the LLM stack, including the agent runtime, inter-agent communication, data retrieval with vector databases, and LLMops.
#4about 1 minute
Introducing key protocols for agent communication
An explanation of the Model Context Protocol (MCP) for extending agent context and the Agent-to-Agent (A2A) protocol for enabling communication between different agents.
#5about 3 minutes
How to choose the right tools for your AI application
Guidance on selecting the appropriate tools for your project, including programming language, LLM provider, and vector database, with a focus on Node.js and PostgreSQL.
#6about 2 minutes
Getting started with LangChain for Node.js
An introduction to the LangChain.js ecosystem, covering its core packages, community integrations, and the powerful LangChain Expression Language (LCEL) for composing chains.
#7about 2 minutes
Building complex agents with LangGraph
Learn when to use LangGraph instead of standard LangChain for building complex, stateful multi-agent systems with branching logic and retry mechanisms.
#8about 5 minutes
Composing a basic chain with the expression language
A practical example of how to use the LangChain Expression Language (LCEL) to pipe together a prompt template, an LLM, and an output parser in a few lines of code.
#9about 4 minutes
Live code demo of various AI application patterns
A walkthrough of runnable code examples demonstrating structured output, chat with memory, retrieval-augmented generation (RAG), and a multi-agent supervisor architecture.
#10about 1 minute
Using LangSmith for observability and debugging
An overview of how LangSmith provides essential observability, allowing you to trace, debug, and evaluate the performance of complex agent and chain executions.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
09:46 MIN
Code walkthrough for building a RAG-based chatbot
Creating Industry ready solutions with LLM Models
03:10 MIN
Integrating generative AI into Java applications with LangChain4j
Infusing Generative AI in your Java Apps with LangChain4j
00:56 MIN
Strategies for integrating local LLMs with your data
Self-Hosted LLMs: From Zero to Inference
02:05 MIN
Simplifying retrieval-augmented generation (RAG) pipelines
One AI API to Power Them All
01:39 MIN
Using LLMs to understand and navigate codebases
How E.On productionizes its AI model & Implementation of Secure Generative AI.
07:55 MIN
Demo: Implementing RAG with LangChain4J and a vector database
Langchain4J - An Introduction for Impatient Developers
01:06 MIN
Moving beyond hype with real-world generative AI
Semantic AI: Why Embeddings Might Matter More Than LLMs
06:57 MIN
Building an AI application using LangChain4j
Java Meets AI: Empowering Spring Developers to Build Intelligent Apps
Featured Partners
Related Videos
Langchain4J - An Introduction for Impatient Developers
Juarez Junior
AI Agents Graph: Your following tool in your Java AI journey
Alex Soto
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
Dieter Flick & Michel de Ru
Create AI-Infused Java Apps with LangChain4j
Daniel Oh & Kevin Dubois
Infusing Generative AI in your Java Apps with LangChain4j
Kevin Dubois
Building Real-Time AI/ML Agents with Distributed Data using Apache Cassandra and Astra DB
Dieter Flick
Large Language Models ❤️ Knowledge Graphs
Michael Hunger
Semantic AI: Why Embeddings Might Matter More Than LLMs
Christian Weyer
Related Articles
View all articles

.png?w=240&auto=compress,format)

From learning to earning
Jobs that call for the skills explored in this talk.



CGI Group Inc.
Köln, Germany
Senior
Data analysis
Natural Language Processing

Amdocs
Kontich, Belgium
Senior
Terraform
Kubernetes
Machine Learning
Continuous Integration


DL Remote
Hannover, Germany
Remote
€80K
Node.js
TypeScript
AWS Lambda

DL Remote
Hamburg, Germany
Remote
€80K
Node.js
TypeScript
AWS Lambda

DL Remote
Leipzig, Germany
Remote
€80K
Node.js
TypeScript
AWS Lambda

CloudStream
London, United Kingdom
NoSQL
FastAPI
AWS Lambda