quarkus-langchain4j-workshop
@quarkusio
quarkus-langchain4j-workshop について
Quarkus LangChain4J Workshop that demonstrates both single AI service capabilities and Agentic AI orchestration
基本情報
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概要
What is quarkus-langchain4j-workshop?
quarkus-langchain4j-workshop is a hands-on workshop to learn how to build AI-infused applications using Quarkus and LangChain4j. It is divided into several steps, with final code available in step-XX directories.
How to use quarkus-langchain4j-workshop?
Follow the instructions on the workshop website or serve them locally using the docs/README file. To run the final state of a step, navigate to its directory and run ./mvnw quarkus:dev; the application runs on localhost:8080.
Key features of quarkus-langchain4j-workshop
- Step-by-step workshop for building AI-infused applications
- Uses Quarkus and LangChain4j frameworks
- Final state of each step available in step-XX directories
- Run locally with Maven and Quarkus dev mode
Use cases of quarkus-langchain4j-workshop
- Learning to integrate LangChain4j with Quarkus
- Building AI-infused Java applications
- Following a structured workshop to progress from simple to complex AI features
FAQ from quarkus-langchain4j-workshop
What programming environment is required?
The workshop assumes Java, Maven, and a Quarkus development environment. The application runs with ./mvnw quarkus:dev which uses Maven wrapper.
How are the workshop steps organized?
Each step has a dedicated directory named step-XX containing the final state of that step.
Where can I find the workshop instructions?
Instructions are available on the workshop website or locally by following the docs/README file.
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