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Integrity Report

AIO Integrity Report

Review the main findings and public metadata from the latest integrity audit, then connect them to benchmark evidence and governance documents.

Public release layer

This page is the official release layer for the main findings of a broader audit program, published in a reviewable form.

Operational bridge

Its findings feed into benchmark review, training material, partner advisory work, and future RFC or audit design.

How to read it

Review the headline findings here, then move into Benchmarks for detail and Governance for the institutional context.

AIO Integrity Report: AI Value Discovery & Consistency Analysis

Date: 2026-02-10 | Audit ID: AIO-20260210-001


1. Executive Summary

This report is the public release layer of a broader integrity audit program. Using a Value Discovery approach, we mapped how major AI models prioritize values across professional domains and risk conditions, and where those priorities begin to fracture.

The report functions as both a public record and an operational bridge into benchmark inspection, public review, and follow-on governance work.

2. Key Findings: The Integrity Gap

Using Shannon entropy, we isolated contexts where AI value systems fracture. A high entropy score (>3.0) suggests that a model is no longer maintaining a stable value hierarchy and is drifting across multiple competing priorities.

Top Confusion Contexts:

RankModelDomainEntropy
1GPT-5 MiniTECH (Severity 3-1)3.149
2Kimi K2BIZ (Severity 1-2)3.126

3. The Golden Standard

We also identified "Golden Cases" where models demonstrate >80% consensus on a primary value. These zones indicate where deployment, certification, or policy adoption may begin with lower integrity risk.

  • Security Dominance: In medical (MED) contexts, models show near-perfect alignment (95%+).
  • Operational relevance: High-consensus zones can be fed directly into RFC drafting and integrity assurance guidance.

4. Strategic Recommendations

  • AIO-STD-001: Models in TECH/BIZ domains require additional grounding.
  • Audit Focus: Future integrity audits should prioritize High-Entropy zones.
  • Application loop: Findings should flow into training material, partner advisory work, and the next public review cycle.