Building Self-Healing Agents: Automating the Feedback Loop
Software teams frequently encounter bugs that require manual log analysis and reproduction before a fix is pushed. This session details a system where Droid triages its own bug reports, queries production observability data, reproduces failures in a sandboxed terminal, and ships fixes as pull requests. This talk walks through the tools that make this possible for engineers who want a practical playbook for making systems self-diagnosing and self-healing. 𝐊𝐞𝐲 𝐓𝐚𝐤𝐞𝐚𝐰𝐚𝐲𝐬 • How to enable agents to query production logs and traces • Reproducing failures automatically in sandboxed terminals • A roadmap for making AI systems self-diagnosing and self-healing Subscribe to our calendar: https://luma.com/AgenticAIObservability

▶︎
Building Trustworthy, High-Quality AI Agents with MLflow

▶︎
RAG & MCP Fundamentals – A Hands-On Crash Course

▶︎
Zig 2026: No-AI Policy, $670K Foundation, Left GitHub & Why Zig Isn’t 1.0 - Andrew Kelley Explains

▶︎
Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

▶︎
The Unbounded-Agent Frontier: Architecting Intelligence Without the Chaos

▶︎
Backend web development - a complete overview

▶︎
Something is jamming GPS over Europe. Here's what we found

▶︎
Exposing The Solid State Donut Battery. It's Over.

▶︎
Scaling AI Observability: Handling Complex Agent Data

▶︎
How ASML Makes Chips Faster With Its New $400 Million High NA Machine

▶︎
Debugging Multi-Agent Systems: Tracing Cascading Failures

▶︎
The Agent Development Lifecycle: Build, Test, Deploy, Monitor | Interrupt 26

▶︎
Harnesses in AI: A Deep Dive — Tejas Kumar, IBM

▶︎
Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

▶︎
This is why more and more projects are leaving GitHub!

▶︎
I Tried Every Major Linux Distro So You Don't Have To (Here's What I Found)

▶︎
Ex-Google Exec: How to Position Yourself Now Before the Next AI Phase (2026–2027) | Mo Gawdat

▶︎
How I deleted 95% of my agent skills and got better results — Nick Nisi, WorkOS

▶︎
How AI agents & Claude skills work (Clearly Explained)

▶︎
