-
Notifications
You must be signed in to change notification settings - Fork 0
Home
The AI Quality Manifesto is a community-driven effort to define practical standards for building trustworthy, accountable, and human-centered AI systems.
AI Trust Human Accountability Governance in Workflows AI Drift Hallucination Risk Institutional Knowledge Measurable Quality Outcomes
As AI systems rapidly expand across software engineering, healthcare, finance, operations, governance, and enterprise automation, organizations are facing a growing trust crisis.
AI can generate output at unprecedented scale.
But scale without validation creates:
false positives hallucinations governance gaps operational instability synthetic noise accountability failures
The AI Quality Manifesto exists to address these challenges through practical engineering principles.
The Manifesto
We are uncovering better ways to build trustworthy AI through human judgment and systemic wisdom.
Through this work we have come to value:
Humans and AI working together
over autonomous systems without accountability
Validated outcomes
over confident generation
Institutional wisdom
over stateless execution
Governance embedded in workflows
over governance added after failure
Trust that compounds over time
over speed without verification
That is, while there is value in the items on the right, we value the items on the left more.
Why the Manifesto Exists
The software industry has repeatedly experienced the same cycle:
New automation technology emerges Organizations accelerate adoption Quality becomes compressed or bypassed Technical debt accumulates Trust declines Governance appears after failure
AI is accelerating this cycle dramatically.
Modern AI systems now influence:
code generation operational decisions financial analysis customer interactions governance workflows remediation systems enterprise automation
This creates a new engineering challenge:
How do organizations scale AI safely without removing human accountability?
The Three Domains of AI Quality
- AI Outcome (Slop)
AI Outcome measures whether generated results are:
useful trustworthy operationally valid contextually correct
Examples of AI slop:
low-quality generated code invalid remediation repetitive synthetic output broken recommendations unusable engineering artifacts
Core Question:
Did the AI produce meaningful and trustworthy outcomes?
- AI Drift
AI systems degrade over time.
Drift includes:
model drift governance drift workflow drift behavioral inconsistency policy drift brand drift
Unchecked drift becomes invisible technical debt.
Core Question:
Is the system degrading over time?
- AI Hallucinations
Hallucinations occur when AI fabricates reality.
Examples include:
invented APIs fabricated citations false compliance claims incorrect reasoning synthetic operational narratives
Hallucinations become dangerous when systems operate autonomously.
Core Question:
Did the AI fabricate reality?
AI recommends. Humans decide. Critical decisions require accountable ownership.
A highly confident answer can still be wrong. Every AI outcome must remain measurable, reviewable, and challengeable.
Governance must exist inside:
- Engineering workflows
- CI/CD pipelines
- Approval systems
- Escalation paths
- Operational telemetry
Not only inside policies and presentations.
The purpose of automation is not removing accountability.
The purpose is creating trustworthy outcomes at scale.
Organizations should not solve the same problems repeatedly. Every validation should strengthen future decision-making.
| Dimension | Question |
|---|---|
| Completeness | Did we evaluate the entire context? |
| Consistency | Are outcomes stable and repeatable? |
| Validity | Are results grounded in reality? |
Together, these create trustworthy systems.
Over time:
Trust compounds through:
- Validated outcomes
- Human review
- Operational learning
- Institutional memory
Human oversight cannot become governance theater. Humans must have:
- Authority to reject AI outcomes
- Visibility into reasoning
- Escalation control
- Auditability
- Accountability ownership
AI should assist human judgment.
Not replace it.
The Future of Quality Engineering
Quality engineering is evolving into:
AI Trust Engineering Governance Engineering Human-in-the-Loop Systems Design Drift Detection Operations Institutional Knowledge Architecture
The future organization will not compete solely on AI speed.
It will compete on trustworthy AI outcomes.
Community Goals
The AI Quality Manifesto is intended to become an open engineering community focused on:
trustworthy AI systems operational governance measurable quality accountable automation institutional learning practical implementation patterns
We welcome:
engineers architects QA professionals governance leaders researchers product teams enterprise operators Contributing
We encourage the community to contribute:
implementation patterns governance workflows drift detection models operational lessons learned case studies tooling integrations AI quality metrics human-in-the-loop frameworks
The goal is not theoretical perfection.
The goal is operational trust.
Founder
Aaron McCormack Founder & CTO, SysWisdom.ai 28 Years in Quality Engineering Former Principal Architect, Best Buy Health
Early advocate for:
gray-box testing approaches multi-dimensional automation reliability strategies human-centered AI governance systems
Author of: The AI Quality Manifesto