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researchdanieloh30a day ago
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research

This project uses Quarkus, the Supersonic Subatomic Java Framework and the Model Context Protocol to implement a simple agentic app using multiple MCP servers and Quarkus + LangChain4j.

If you want to learn more about Quarkus, please visit its website: https://quarkus.io/ .

Running the application in dev mode

You'll need node and npm installed (this is used to start mcp services). Follow the recommended way to install for your system.

You will also need a container environment available (e.g. Podman or Docker) if you want to see built-in telemetry, which you can access once the app is up by going to the Dev UI and finding the Grafana link. If you don't have a container environment, comment out the part in application.properties dealing with telemetry.

Create a directory called playground at the root folder of your clone if you wish to use the filesystem MCP server (or change the name in application.properties to some other name, but the directory must exist)

Several of the MCP services require API keys. Here are links to get the keys:

Once you have all that, the easiest way is to create a file called .env in your clone (this file is listed in .gitignore so won't be pushed to GitHub if you fork this repo and make the file). The .env file should look like:

quarkus.langchain4j.mcp.bravesearch.environment.BRAVE_API_KEY=<YOUR BRAVE API KEY HERE>
quarkus.langchain4j.mcp.googlemaps.environment.GOOGLE_MAPS_API_KEY=<YOUR GMAPS API KEY HERE>
quarkus.langchain4j.mcp.slack.environment.SLACK_BOT_TOKEN=<YOUR SLACK BOT TOKEN HERE>
quarkus.langchain4j.mcp.slack.environment.SLACK_TEAM_ID=<YOUR SLACK TEAM ID HERE>
quarkus.langchain4j.openai.api-key=<YOUR OPENAI API KEY HERE>

These variables will automatically be included when you run Quarkus in Dev mode. You can also put them directly in application.properties but be careful not to check them into a public source repository!

For production use, these should obviously be treated differently, stored in secure places like vaults or kubernetes Secrets, and injected as environment variables at runtime.

But for testing, you can run your application in dev mode that enables live coding using:

./mvnw compile quarkus:dev

In Dev mode, you can use the Dev UI to chat with the LLM you've configured by going to "Extensions" and clicking "Chat" to chat. You'll find the system message pre-filled in from the content from Bot.java

NOTE: Quarkus now ships with a Dev UI, which is available in dev mode only at http://localhost:8080/q/dev/.

Testing the app

There is a simple frontend application to test the assistant - access http://localhost:8080 and you should see:

Issue some sample prompts to see how it uses agent reasoning to invoke the various tools:

My name is Daniel Oh. I am a member of a team of 2 myself and James Falkner. I like Italian food, while Daniel is on a strict gluten-free diet.

Please find one good restaurant in Boston, MA with the highest rating that meets
the team's dietary needs and preferences. Then, invite the team to a lunch at 12pm next Friday.
In your message, include the name and description of the restaurant, the time and
date of the lunch, and driving directions from Georgia World Congress Center.

And some simpler follow-up prompts like:

  • Send the restaurant recommendation details to the slack channel "#lunchtime".

  • Create an ICS calendar file for me in my calendar in the "playground/calendar" directory.

  • What was the reasoning you used to arrive at that recommendation?

  • How did you choose the restaurant?

  • What actions did you take for each step and which tools did you use?

  • Why did you search for gluten-free restaurants?

  • What did you remember about each person on the team based on team.txt file?

In Dev mode, you can also use the Dev UI to chat with the LLM you've configured by going to "Extensions" and clicking "Chat" to chat. You'll find the system message pre-filled in from the content from Bot.java

NOTE: Quarkus now ships with a Dev UI, which is available in dev mode only at http://localhost:8080/q/dev/.

Packaging and running the application

The application can be packaged using:

./mvnw package

It produces the quarkus-run.jar file in the target/quarkus-app/ directory. Be aware that it’s not an über-jar as the dependencies are copied into the target/quarkus-app/lib/ directory.

The application is now runnable using java -jar target/quarkus-app/quarkus-run.jar.

If you want to build an über-jar, execute the following command:

./mvnw package -Dquarkus.package.type=uber-jar

The application, packaged as an über-jar, is now runnable using java -jar target/*-runner.jar.

Creating a native executable

You can create a native executable using:

./mvnw package -Dnative

Or, if you don't have GraalVM installed, you can run the native executable build in a container using:

./mvnw package -Dnative -Dquarkus.native.container-build=true

You can then execute your native executable with: ./target/research-1.0-SNAPSHOT-runner

If you want to learn more about building native executables, please consult https://quarkus.io/guides/maven-tooling.

Related Guides

  • LangChain4j Model Context Protocol client (guide): Provides the Model Context Protocol client-side implementation for LangChain4j
  • LangChain4j OpenAI (guide): Provides the basic integration with LangChain4j
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