Launching today

Struct
AI agent that root-causes engineering alerts
200 followers
AI agent that root-causes engineering alerts
200 followers
Struct is an AI agent that root-causes engineering alerts using logs, metrics, traces, and code. Resolve incidents faster with a composable, customizable system that deploys in minutes and works with your existing DevOps workflows.







Struct
Hey Hunters!
We're Deepan and Nimesh, co-founders of Struct. Today we're excited to launch the on-call agent every team deserves -- for free!
If you've been on-call, you know the drill: alert fires, you open Datadog (or Grafana, or whatever), hunt for spikes, grep through logs and code, loop in a senior engineer...rinse & repeat. Meanwhile, noisy alerts never get tuned and customer issues slip through.
Struct gets you from alert β root cause before you even open your laptop.
Within minutes of an alert firing, Struct:
β Pulls relevant metrics, logs, traces, monitors, and code
β Does a regression analysis and correlates anomalies and spikes
β Replies with with a root cause, impact summary, and pattern analysis
β Drafts a full incident report with dynamically generated charts, timelines, and commit histories
Dive deeper in Slack or our app. Or handoff the full context to your favorite coding agent to ship a fix in one-click.
We built Struct for lean teams without an SRE, and orgs going all-in on AI dev workflows β companies like FERMAT and Arcana already use Struct to auto-investigate thousands of alerts monthly and give every engineer the context to handle incidents on their own.
Five minute set up, integrates with every leading observability platform plus Slack, GitHub, Linear, Claude Code, and fully SOC 2 Type II and HIPAA compliant.
Get started free at struct.ai β no credit card required.
Questions? Hit us in the comments - we'll be around all day. Or shoot us an email at founders@struct.ai.
And as a special thanks to the Product Hunt community, if you upgrade to a paid plan, use promo code HUNTSTRUCT for 20% off for the next 3 months! π₯
Snippets AI
The gap between "alert fires" and "engineer understands what actually broke" is where most incident response time gets wasted β correlating metrics, logs, and traces across services is exactly the kind of tedious cross-referencing that AI should handle. The one-click handoff to a coding agent to ship the fix is a compelling end-to-end vision β how well does that work today for non-trivial root causes that span multiple services?
Struct
@svyat_dvoretskiΒ Great question! Multiple services is exactly where this becomes so powerful. Struct is able to string together logs across different services from different observability providers using encoded correlation techniques (e.g. querying by correlation ids, querying for known logs, sifting through a time range, etc.) which is ordinarily a tedious process. It constructs a timeline of the issue and iteratively goes deeper to establish a definitive root cause. It memorizes successful debugging techniques for each customer's unique architecture, which makes it get even better over time. Our customers working at a large scale with many services are already reporting an 80% reduction in triage time.