Repeatability, Scale, and Decision Context
2026-04-14
MVP v0.2 demonstrates that Kav AI is not a one-off detection tool, but a scalable system for identifying, prioritizing, and acting on integrity risks across an industrial facility.
This version moves beyond single-anomaly demos and establishes three core capabilities:
MVP v0.2 answers the key questions an operator will ask:
Yes — the platform processes thousands of assets and dozens of anomalies in a single run, not just isolated findings.
Yes — every high-priority anomaly includes recommended inspection actions tied to operational workflows.
Yes — findings are connected to risk and economic impact, not just temperature differences.
This establishes that Kav AI can operate at facility-relevant scale, not just isolated inspection points.
Asset: Insulated process piping
Observed condition:
Secondary signal:
Interpretation:
Recommended action:
This demonstrates the transition from detection → diagnosis → action.
Instead of a flat list of anomalies, MVP v0.2 produces a ranked inspection set:
Selection basis:
This ensures inspection teams know where to act first, not just what exists.
A key limitation of early demos is lack of context around scale. MVP v0.2 explicitly shows:
This reframes the system from:
Thermal anomalies are translated into business-relevant risk:
This ties the output directly to business value.
A critical shift in this version is clarifying that:
The drone and thermal camera collect data —
Kav AI is what makes that data usable at scale.
AI responsibilities in v0.2:
Without this layer, the workflow does not scale beyond manual review.
MVP v0.2 directly addresses the limitations of earlier demonstrations:
| Gap in v0.1 | Resolution in v0.2 |
|---|---|
| Single anomaly demo | 37 anomalies across 1,200 assets |
| Detection only | Detection + recommended action |
| No scale context | Explicit coverage metrics (65%) |
| No economic link | Cost/risk framing added |
| AI unclear | AI positioned as scaling layer |
MVP v0.2 is the second step in a staged evolution:
v0.1 — Detection
Demonstrates anomaly identification
v0.2 — Repeatability + Scale (current)
Demonstrates detection at facility scale
v0.3 — Decision Impact
Will quantify inspection prioritization and workflow integration
v0.4 — Closed-loop Intelligence
Will connect detection → validation → action → feedback
MVP v0.2 proves that Kav AI is:
It moves the system from:
“We found something interesting”
to:
“Here are the 8 places you should inspect next — and why.”