talk-data.com talk-data.com

Filter by Source

Select conferences and events

People (92 results)

See all 92 →
Showing 4 results

Activities & events

Title & Speakers Event

As Java developers, we pride ourselves on handling edge cases in our code, but what about edge cases in the Java language itself? Join us for an interactive session with certification book author Jeanne Boyarsky as she uncovers real-world Java “gotchas”, quirks, and surprises you’re likely to encounter in your day-to-day coding (not just puzzlers for entertainment). You’ll explore fresh language twists introduced in Java 17 through Java 25 (scheduled for Sept 16 release), along with a few timeless classics, and leave with sharper instincts to recognize and avoid these hidden pitfalls in your own applications.

java 17 java 25 java language
Introduction to AI Agents 2025-09-23 · 22:30
Frank Greco – Founder @ NYJavaSIG

Ever wonder what the heck AI agents are? This short session breaks down how tools (function-calling) and reasoning models combine to form agents, ie, intelligent entities that can complete tasks on their own. We’ll start by clarifying what tools are, then show how agents build on that concept using LangChain4j.

langchain4j function calling ai agents

REGISTER - EVENTBRITE REGISTRATION (not here on Meetup)

Autonomous AI for Enterprise Testing at Scale

Andy Piper - VP of Engineering, Diffblue

Unit testing is one of the biggest productivity killers in modern Java development. Developers report spending most of their time on tasks other than writing code. Many devs even skip writing unit tests altogether. But what if AI could eliminate 95% of that burden?

Developer toil is real—days, even weeks, are spent conducting manual, repetitive, time-consuming tasks like unit testing, which slows enterprises down. While GenAI coding assistants can support developers, they repeatedly fall short in performing complex unit testing tasks without human oversight.

For companies to succeed, code must be foolproof. So, how can enterprises ensure comprehensive testing is done with due diligence and at scale? In this session, you will learn how.

REGISTER

Thunder Talk: Making Sense of Embeddings for Java Developers – LangChain4j – Part 2

Frank Greco - NYJavaSIG - Java Champion

Embeddings are the backbone of modern AI. They turn words, code, and other data types into single-precision floating-point vectors that machines can handle. In this 20-minute ThunderTalk, Frank will explain what embeddings are, why they matter, and how to use them for search,​ recommendations, and RAG-based chatbots. We’ll use LC4J for a couple of quick demos.

REGISTER

Autonomous AI for Testing at Scale -and- What are Embeddings (w/ LangChain4j)?

Our main speaker for the May 15th meeting focuses on using GenAI as a valuable tool for the software development process. Andy Piper from Diffblue will show us how AI can handle most of our unit testing using reinforcement learning AI. And since AI is becoming a ubiquitous tool for all developers, Frank Greco will continue his GenAI thunder-talk series and explain embeddings in clear Java terms with quick IntelliJ demos using LangChain4j.

Sign up to attend in person at https://www.javasig.com/. Will be on Youtube after a few days or a week.

Autonomous AI for Enterprise Testing at Scale Unit testing is one of the biggest productivity killers in modern Java development. Developers report spending most of their time on tasks other than writing code. Many devs even skip writing unit tests altogether. But what if AI could eliminate 95% of that burden?

Thunder Talk: Making Sense of Embeddings for Java Developers - LangChain4j - Part 2 Embeddings are the backbone of modern AI. They turn words, code, and other data types into single-precision floating-point vectors that machines can handle. In this 20-minute ThunderTalk [insert loud-thunder.mp3 here], Frank will explain what embeddings are, why they matter, and how to use them for search, recommendations, and RAG-based chatbots. We’ll use LC4J for a couple of quick demos.

Autonomous AI for Testing at Scale + Embeddings with LangChain4j
Showing 4 results