AIVA + AI Stewardship™

How They Work Together

Integration & Operating Model


1. Purpose of This Document

This document explains the relationship between AIVA (AI Visibility Architecture) and AI Stewardship™ — two distinct but integrated components of a complete AI visibility governance system.

Understanding this relationship is essential for:

  • Organisations evaluating the service
  • Teams implementing the methodology
  • Practitioners training in the discipline
  • Anyone reading AIVA or Stewardship documentation

2. The Fundamental Distinction

AIVA observes. AI Stewardship™ governs.

AIVA (AI Visibility Architecture)

What it is: A methodology and reporting system

What it does: Produces observable evidence about AI visibility conditions

Primary output: AIVA Visibility Reports and Visibility Index

Core function: State articulation — showing where visibility exists and doesn’t

AI Stewardship™

What it is: A governance service and authority model

What it does: Interprets evidence, determines eligibility, provides direction

Primary output: AI Stewardship™ Overview Reports and AES determinations

Core function: Governance — preserving architectural eligibility over time


3. The Integration Model

AIVA and AI Stewardship™ operate as a three-layer system, with each layer building on the one below.

Layer 1 — Infrastructure (Foundation)

Your existing infrastructure — CloudFlare, Akamai, AWS, or similar platforms — produces live reports showing how AI systems interact with your digital presence. This is raw data: bot traffic, crawl patterns, cache behaviour, delivery metrics.

Layer 2 — AIVA (Observability)

AIVA maps infrastructure reports to the 11-stage AI Visibility Lifecycle. It transforms raw data into structured visibility reports showing the status of each stage — Stable, Constrained, Residual, Inactive, or Unresolved. AIVA observes and reports. It does not interpret or recommend.

Layer 3 — AI Stewardship™ (Governance)

AI Stewardship™ sits above AIVA. It interprets the evidence AIVA produces, determines your AI Architectural Eligibility Status (AES), and provides governance direction. Stewardship preserves eligibility over time. It governs; it does not implement.

The flow is always upward: Infrastructure → AIVA → AI Stewardship™ → Organisation


4. How Data Flows

  1. Infrastructure produces live reports (CloudFlare, Akamai, etc.)
  2. AIVA maps reports to lifecycle stages using the 11-stage framework
  3. AIVA produces Visibility Reports showing stage status
  4. AI Stewardship™ interprets AIVA outputs in architectural context
  5. Stewardship determines AES (Eligible-Stable, At Risk, Ineligible)
  6. Stewardship provides governance direction to the organisation

5. Terminology Mapping

AIVA and AI Stewardship™ use related but distinct terminology:

ConceptAIVA TermStewardship Term
Overall statusVisibility Profile / Visibility IndexAI Architectural Eligibility Status (AES)
Per-stage statusStage Status Labels (Stable, Constrained, Residual, Inactive, Unresolved)Used as inputs to AES determination
Primary outputAIVA Visibility ReportAI Stewardship™ Overview Report
Framework11-Stage AI Visibility LifecycleSame — shared framework
Human roleAI Visibility ArchitectAI Stewardship™ Authority

6. What Each System Does NOT Do

AIVA Does NOT:

  • Determine eligibility (that’s Stewardship)
  • Provide governance direction (that’s Stewardship)
  • Make recommendations (observation only)
  • Judge success or failure (state articulation only)

AI Stewardship™ Does NOT:

  • Produce raw visibility evidence (that’s AIVA)
  • Map infrastructure reports (that’s AIVA)
  • Implement systems (that’s Practitioners)
  • Guarantee outcomes (governance only)

7. The Complete Operating Chain

Together, AIVA and AI Stewardship™ form a complete operating chain with clear responsibilities at each level.

Layer 1 — AIVA System

  • Produces governed AI visibility reports
  • Enforces disciplined language and framing
  • Separates observation from inference
  • Produces auditable, comparable outputs

Layer 2 — AI Stewardship™ Authority (Human Professional)

  • Reads and audits AIVA reports
  • Compares results over time
  • Identifies patterns and anomalies
  • Interprets without fabricating causality
  • Determines AES and provides governance direction
  • Signs off with professional responsibility

Layer 3 — End User / Organisation (Decision Maker)

  • Receives signed, interpreted reports
  • Understands what changed and why
  • Decides what to act on
  • Takes organisational responsibility

8. Canonical Statement

AIVA is the observability methodology that produces evidence.

AI Stewardship™ is the governance layer that interprets evidence and preserves eligibility.

Neither substitutes for the other. Together they form a complete governance system.


ACCESS AND SCOPE NOTICE

Detailed methodologies for AI visibility measurement, architectural frameworks, and diagnostic practices are maintained separately. This paper describes the structural gap — not the operational response.

Public documentation describes what is happening, not how to address it.

About This DocumentThe analysis framework was developed by Bernard Lynch, Founder of CV4Students.com and AI Visibility & Signal Mesh Architect, Developer of the 11-Stage AI Visibility Lifecycle.