Zum Inhalt springen

Details

Agentic AI is moving fast — but separating real productivity from “agent-washing” is now the developer’s challenge.

Citi has recently shared public progress in this space, including internal GenAI platforms such as Citi Assist, Citi Stylus / Stylus Workspaces, and updates introducing agentic AI capabilities inside Stylus Workspaces aimed at improving employee productivity.

In this session, we will delve into:

How do you implement Agentic AI in Java so it reliably delivers productivity — not just hype?

We’ll start with a simple LangChain4J example and evolve it step-by-step into a workflow that demonstrates:

  • how to go from a prompt → structured execution

  • when an agent is useful vs when it’s unnecessary complexity

  • tool calling & orchestration patterns that work in real apps

  • how to get repeatable outcomes instead of “it worked once”

This is not a futuristic vision talk — it’s a hands-on, developer-first walkthrough showing Agentic AI done properly in Java with LangChain4J.

This session will be an engaging discussion with focus on AI from a practical engineering perspective. Everyone welcome.

Closing Lightning Talk

Composable Intelligence

Designing AI Native Workflows with Skills, Skill Composition and Agent Collaboration

Niall McLoughlin (DailyPay)

Verwandte Themen

Artificial Intelligence
Java

Das könnte dir auch gefallen