Audience
Mid market and enterprise engineering teams running complex production systems. SRE leaders, Platform Engineering teams, Heads of Support Engineering, VPs of Engineering, and CISOs at fintech, SaaS, healthcare technology, and other reliability critical industries.
About Autoheal
Autoheal actively investigates alerts, hypothesizes root cause, and proposes mitigating fixes under human supervision. It also automates the postmortem phase completely. At its core is the Production Context Graph (PCG), a continuously updating, living map that connects your infrastructure, application logic, production tools and tribal knowledge in real-time. The PCG is built through autonomous exploration of your observability, cloud and code stack, and iteratively refined by a Reinforcement Learning loop as you use Autoheal. On top of the PCG lies a Multi-Agent Platform of specialized agents that collaborate with humans to solve production problems safely and efficiently.
For AI agents focused on production engineering to succeed in real-world enterprise deployments, three crucial gaps must be addressed.
The Context Gap: can the AI navigate my organization’s fragmented context?
The Trust Gap: can I trust the AI to strictly adhere to my organization’s security policies?