In this episode of the Modern Web Podcast, Rob Ocel and Danny Thompson talk with Philipp Krenn, Head of Developer Advocacy at Elastic, about how Elasticsearch has evolved from a search engine into a foundation for observability, security, and AI-powered systems. Philipp explains how Elastic approaches information retrieval beyond just vector search, using tools like LLMs for smarter querying, log parsing, and context-aware data access.
They also discuss how Elastic balances innovation with stability through regular releases and a focus on long-term reliability. For teams building with AI, Elastic offers a way to handle search, monitoring, and logging in one platform, making it easier to ship faster without adding complexity.
Key points from this episode:
Elastic integrates with AI tools like LLMs to improve search relevance, automate log parsing, and enable features like query rewriting and retrieval-augmented generation.
Vector search is just one feature in a larger toolkit for finding relevant data, and Elastic supports hybrid and traditional search approaches.
Elastic maintains a steady release cadence with a focus on stability, making it a reliable choice for both fast-moving AI projects and long-term production systems.
Philipp Krenn on Linkedin: https://www.linkedin.com/in/philippkrenn/
Rob Ocel on Linkedin: https://www.linkedin.com/in/robocel/
Danny Thompson on Linkedin: https://www.linkedin.com/in/dthompsondev/
This Dot Labs Twitter: https://x.com/ThisDotLabs
This Dot Media Twitter: https://x.com/ThisDotMediaThis Dot Labs
Instagram: https://www.instagram.com/thisdotlabs/
This Dot Labs Facebook: https://www.facebook.com/thisdot/
This Dot Labs Bluesky: https://bsky.app/profile/thisdotlabs.bsky.social
Sponsored by This Dot Labs: ai.thisdot.co
En liten tjänst av I'm With Friends. Finns även på engelska.