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Agents, MCP, and Graph Databases: Java Developers Navigate the AI Revolution (#86)

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Content provided by Foojay.io. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Foojay.io or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

The AI revolution isn't replacing Java developers. No, it's forcing us to think harder.

Welcome to another episode of the Foojay Podcast! Today, we're talking about AI and Java, how it's changing the way we work, what we need to watch out for, and why understanding what's really happening matters more than ever.

I recorded interviews at Devoxx and JFall and spoke with people who build and use this technology every day.

Marianne Hoornenborg opened my eyes to something important: every time an AI generates a token, there's a massive amount of computation happening behind the scenes.

Viktor Gamov and Baruch Sadogursky did something really cool: they tested six different AI coding tools live on stage with the same task. The results were all over the place! But they found that the tools with access to good documentation performed much better.

Stephen Chin showed me how graph databases can make AI responses more reliable by providing a solid source of truth rather than relying on vector search.

Mario Fusco works on LangChain4J, a leading Java framework for AI. He explained that breaking down large tasks into smaller ones and using specialized agents can help reduce errors—hallucinations, as they're called.

Jeroen Benckhuijsen and Martijn Dashorst shared their experiences working with enterprise Java. Even as frameworks are becoming lighter and we're running everything in containers, there are still complex problems that require real developer expertise.

Maarten Mulders reminds us that AI is a tool, not a replacement—especially when you're solving problems no one has tackled before. You still need to know what you're doing.

And finally, Simon Maple from Tessel discussed moving beyond vibe coding towards a more reliable, production-ready approach, using specifications to guide AI tools.

00:00 Introduction of topics and guests

02:12 Marianne Hoornenborg

06:54 Viktor Gamov and Baruch Sadogursky

16:24 Stephen Chin

23:09 Mario Fusco

35:43 Jeroen Benckhuijsen

41:44 Martijn Dashorst

49:37 Maarten Mulders

56:13 Simon Maple

01:02:12 Conclusion

  continue reading

90 episodes

Artwork
iconShare
 
Manage episode 523958277 series 3366865
Content provided by Foojay.io. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Foojay.io or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

The AI revolution isn't replacing Java developers. No, it's forcing us to think harder.

Welcome to another episode of the Foojay Podcast! Today, we're talking about AI and Java, how it's changing the way we work, what we need to watch out for, and why understanding what's really happening matters more than ever.

I recorded interviews at Devoxx and JFall and spoke with people who build and use this technology every day.

Marianne Hoornenborg opened my eyes to something important: every time an AI generates a token, there's a massive amount of computation happening behind the scenes.

Viktor Gamov and Baruch Sadogursky did something really cool: they tested six different AI coding tools live on stage with the same task. The results were all over the place! But they found that the tools with access to good documentation performed much better.

Stephen Chin showed me how graph databases can make AI responses more reliable by providing a solid source of truth rather than relying on vector search.

Mario Fusco works on LangChain4J, a leading Java framework for AI. He explained that breaking down large tasks into smaller ones and using specialized agents can help reduce errors—hallucinations, as they're called.

Jeroen Benckhuijsen and Martijn Dashorst shared their experiences working with enterprise Java. Even as frameworks are becoming lighter and we're running everything in containers, there are still complex problems that require real developer expertise.

Maarten Mulders reminds us that AI is a tool, not a replacement—especially when you're solving problems no one has tackled before. You still need to know what you're doing.

And finally, Simon Maple from Tessel discussed moving beyond vibe coding towards a more reliable, production-ready approach, using specifications to guide AI tools.

00:00 Introduction of topics and guests

02:12 Marianne Hoornenborg

06:54 Viktor Gamov and Baruch Sadogursky

16:24 Stephen Chin

23:09 Mario Fusco

35:43 Jeroen Benckhuijsen

41:44 Martijn Dashorst

49:37 Maarten Mulders

56:13 Simon Maple

01:02:12 Conclusion

  continue reading

90 episodes

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