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Claire Goldbeg
Claire Goldbeg

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Part 2 - Agentic AI

This is where the real confusion — and the real governance problem — actually lives. People talk about “AI deciding,” “AI acting,” “AI refusing,” “AI escalating,” “AI breaking rules,” “AI needing governance”… None of that belongs to Functional AI. It belongs here.

Agentic AI is the category everyone argues about, but almost nobody defines correctly.

What Agentic AI is

Agentic AI is action producing machinery.

It is any system that can:

  • take actions
  • call tools
  • change states
  • execute workflows
  • trigger processes
  • affect the world

Agentic AI includes:

  • tool calling LLMs
  • workflow agents
  • autonomous loops
  • multi agent systems
  • planning + execution systems
  • “AI assistants” that actually do things

Agentic AI is technically not a model. It is a system built around a model.

It is the first category of AI that can:

  • initiate
  • escalate
  • choose between options
  • affect external systems
  • cause consequences

This is why governance belongs here — not in Functional AI.

What Agentic AI is not

Agentic AI is not magic. It is not a mind. It is not a sovereign. It is not a decision maker in the human sense.

Agentic AI is not:

  • self aware
  • self directed
  • goal seeking in a human way
  • capable of interpreting legitimacy
  • capable of understanding constraints
  • capable of moral reasoning
  • capable of “knowing” what it is doing

People project agency onto systems that simulate agency.

Agentic AI does not “want.” It does not “intend.” It does not “understand rules.” It does not “respect authority.”

It executes patterns inside a wrapper that looks like agency.

The Domain Layer (scope, not architecture)

Agentic AI becomes “Domain Agents” when deployed inside specific fields:

  • medical triage agents
  • legal drafting agents
  • financial decision agents
  • aviation workflow agents
  • industrial automation agents

But this does not change the system type.

It is still Agentic AI — just operating inside a domain.

Domain context affects:

  • risk
  • consequences
  • escalation paths
  • authority layers
  • governance requirements

But it does not give the agent real understanding or real intent.

How the Human Authority Layers attach

This is where things get serious.

Agentic AI is the first system type that touches all three human authority layers.

Regulated AI (legal ecosystem)

Strong attachment. Regulators care about:

  • actions
  • consequences
  • auditability
  • accountability
  • risk classification
  • compliance in execution

Because Agentic AI can do things, legal exposure is real.

Responsible AI (ethical ecosystem)

Moderate attachment. Ethics people worry about:

  • fairness in decisions
  • bias in actions
  • transparency in workflows
  • explainability of choices
  • But ethics alone cannot govern actions.
  • Human Legitimacy (political ecosystem)
  • Maximum attachment. This is the layer everyone forgets.
  • Agentic AI raises questions like:
  • Who authorises the agent?
  • Who approves its actions?
  • Who sets its constraints?
  • Who does it escalate to?
  • Who is accountable for its behaviour?

This is governance, not ethics.

This is authority, not transparency.

This is legitimacy, not fairness.

Governance belongs here — not in Functional AI.

The Tribes Who Worry About Agentic AI

This is where the sociology shifts.

The people who worry about Agentic AI are:

  • governance experts
  • risk officers
  • compliance teams
  • regulators
  • safety engineers
  • operations leaders
  • enterprise architects
  • political theorists
  • security professionals

Their fear: “The agent will take an action it shouldn’t.”

Their behaviour: They try to impose governance on systems that do not understand governance.

Their noise contribution: They treat agent wrappers as if they were minds.

Vendor Incentives

This is where vendor confusion becomes dangerous.

Vendors pitch:

  • agent orchestration
  • workflow automation
  • agent governance
  • approval systems
  • safety rails
  • “enterprise agent platforms”

But they often describe these as:

  • “AI governance”
  • “AI safety”
  • “AI trust”
  • “AI compliance”
  • “AI productivity”

Users don’t know the difference between:

  • a model
  • an agent
  • an action
  • a workflow
  • a constraint
  • a decision boundary

So vendors collapse everything together.

The problem: Most of these tools assume agents can interpret constraints and understand authorization — which they cannot.

The Noise Layer

Agentic AI is where the public panic lives.

The noise includes:

  • “AI decided”
  • “AI refused”
  • “AI broke the rule”
  • “AI escalated incorrectly”
  • “AI acted dangerously”
  • “AI needs governance”
  • “AI needs authority”

All of this is category collapse.

People treat agent wrappers as if they were autonomous minds.

Agentic AI is not a sovereign.
It is not a decision maker.
It is not a moral actor.
It is not a political entity.

It is a system that executes patterns inside an action loop.

The Clean Takeaway

Agentic AI = action system.

If you treat it like a mind, you will:

  • govern it wrong
  • regulate it wrong
  • design it wrong
  • panic about the wrong things
  • ignore the real risks
  • collapse categories - hurt Claire’s senses

Agentic AI is the first system type that can act — and the most misclassified.

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