Artwork
iconShare
 
Manage episode 514005909 series 3317544
Content provided by Hugo Bowne-Anderson. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Hugo Bowne-Anderson 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://staging.podcastplayer.com/legal.

Most AI teams find their multi-agent systems devolving into chaos, but ML Engineer Alex Strick van Linschoten argues they are ignoring the production reality. In this episode, he draws on insights from the LLM Ops Database (750+ real-world deployments then; now nearly 1,000!) to systematically measure and engineer constraint, turning unreliable prototypes into robust, enterprise-ready AI.

Drawing from his work at Zen ML, Alex details why success requires scaling down and enforcing MLOps discipline to navigate the unpredictable "Agent Reliability Cliff". He provides the essential architectural shifts, evaluation hygiene techniques, and practical steps needed to move beyond guesswork and build scalable, trustworthy AI products.

We talk through:

  • Why "shoving a thousand agents" into an app is the fastest route to unmanageable chaos
  • The essential MLOps hygiene (tracing and continuous evals) that most teams skip
  • The optimal (and very low) limit for the number of tools an agent can reliably use
  • How to use human-in-the-loop strategies to manage the risk of autonomous failure in high-sensitivity domains
  • The principle of using simple Python/RegEx before resorting to costly LLM judges

LINKS

🎓 Learn more:

-This was a guest Q&A from Building LLM Applications for Data Scientists and Software Engineershttps://maven.com/hugo-stefan/building-llm-apps-ds-and-swe-from-first-principles?promoCode=AI20

Next cohort starts November 3: come build with us!

  continue reading

61 episodes