Three engineers in a war room. Observations flying across Slack: "Customer said checkout froze right after updating cart." "Service X felt slow an hour before this started." "Didn't we flip a flag for the recommender earlier today?" These fragments contain the intelligence needed to understand what's happening. But someone has to connect them. One person's taking notes while debugging. Another's reconstructing which theory came before which data point. Everyone's doing two jobs: solving the problem and documenting the problem-solving.
Harness's AI Scribe, launched last week, collapses this synthesis tax. The product reveals something teams have accepted as inevitable: incident response was stuck in a manual coordination bottleneck.
Synthesis Becomes Infrastructure
AI Scribe captures signals from natural team dialogue across Slack, Zoom, and Microsoft Teams—treating that dialogue as structured operational input. The system identifies impacted services, dependencies, customer symptoms, theories, contradictions, temporal clues ("right after," "an hour before"). It synthesizes these fragments into hypotheses with supporting data, connecting "checkout froze after cart update" to recent cart service changes automatically.
We recognize why this matters from building enterprise web automation at scale. The most valuable debugging information often appears in team channels before logs capture it. When an engineer notices "this only happens after 3pm Pacific" or "the site changed its login flow yesterday," they're capturing signal that won't show up in error logs for hours. If your infrastructure can't reason about these observations, you're always reconstructing context after the fact.
Manual note-taking during war room calls disappears. Timeline reconstruction disappears. Tracking who said what when disappears. Synthesizing scattered information across channels disappears.
Teams can validate hypotheses quickly. They move directly to testing theories. They focus on judgment calls that actually require human expertise.
Speed increases without adding engineers—synthesis that previously consumed cognitive bandwidth during high-pressure situations now runs as infrastructure.
Why the Infrastructure Approach Matters
AI Scribe's design—treating dialogue as structured operational input—addresses what happens when valuable debugging information appears in team channels before logs capture it. The system captures impacted services, dependencies, customer symptoms, theories, and temporal clues from natural conversation, synthesizing them into hypotheses teams can validate quickly.
Production realities become visible when you try to build similar systems at scale. The gap between "works in demo" and "handles X reliably in production" always comes down to the same thing: capturing context that humans communicate naturally but systems struggle to see. "Service X felt slow" is valuable signal, but it's ambiguous. "Didn't we flip a flag" is a question, not a fact. The infrastructure has to reason about uncertainty while building hypotheses teams can validate or discard quickly.
We're watching this pattern across agent systems. Routine information gathering collapses into infrastructure. Humans focus on decisions that matter. Teams building incident response infrastructure face a choice: keep accepting synthesis as manual work, or delegate it to infrastructure reliable enough to trust.
Harness stopped accepting that bottleneck as inevitable.
Things to follow up on...
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Harness's broader platform: AI Scribe is part of Harness AI SRE, which brings together critical components of response engineering by capturing context, coordinating action, and providing investigative assistance across the software delivery lifecycle.
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Multi-agent architecture approach: Harness uses specialized agents for DevOps, SRE, Release, AppSec, Test, and FinOps that work together silently to deliver faster, safer, and more automated software delivery.
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The incident response foundation: Before AI Scribe's January 2026 launch, Harness introduced Harness Incident Response in October 2025, positioning it as a dynamic runbook where AI collaborates with humans to drive faster, smarter decisions.
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Company trajectory and valuation: Harness recently hit a $5.5B valuation with $240M in funding to automate AI's "after code" gap, led by co-founder and CEO Jyoti Bansal who previously built and sold AppDynamics to Cisco for $3.7 billion.

