

Revolutionizing Production Systems: The Resolve AI Approach
16 snips Sep 4, 2025
In this engaging conversation, Spiros Xanthos, CEO of Resolve AI, shares his vision for revolutionizing operational systems with AI agents. He discusses the limitations of traditional tools and how intelligent agents can enhance troubleshooting. Spiros highlights the importance of context and memory for effective AI integration, as well as the evolving collaboration between humans and AI in production environments. He emphasizes the need for continuous learning to maximize AI's potential, paving the way for more efficient human-machine partnerships and improved user experiences.
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Startup Born From Burnout
- Spiros started Resolve AI after burnout and stability issues while running Splunk Observability.
- He built agents to extract tribal knowledge across code, telemetry, and tools to act like on-call engineers.
Observability's Cold-Start Problem
- Traditional observability floods humans with data and specific alerts that don't generalize well.
- New engineers face a cold-start of months to become effective on call due to scattered tribal knowledge.
Have Agents Do The Heavy Lifting
- Let agents learn system context and do heavy lifting by connecting logs, metrics, code changes, and infra.
- Keep humans in the loop to choose between top candidate theories and approve fixes.