Tuesday, 17 March 2026

What should agencies be doing at this stage of AI development?



At
this stage of AI development (late-2025 reality, not hype), marketing agencies should neither resist AI nor surrender to it. The winners are doing something more disciplined:

Using AI to increase human leverage, not replace human judgement.

Below is a clear, practical framework for what marketing agencies should be doing now.


1. Treat AI as Infrastructure, Not Strategy

AI is no longer a differentiator. It’s becoming like:

  • CRM systems
  • Email automation
  • Programmatic buying

Agencies should:

  • Bake AI into workflows quietly
  • Stop selling “AI-powered” as a headline
  • Focus client conversations on outcomes, not tools

If an agency’s pitch leads with AI, it usually signals weak strategic depth.


2. Double Down on Strategy, Positioning & Taste

AI is excellent at:

  • Producing content
  • Generating options
  • Scaling execution

AI is still poor at:

  • Market positioning
  • Brand intuition
  • Cultural timing
  • High-stakes judgement

Agencies should invest more in:

  • Senior strategists
  • Brand architects
  • Editorial directors
  • Human creative direction

In practice:

Let AI generate 20 ideas. Let humans choose the one that matters.

3. Own First-Party Data Aggressively

AI without proprietary data is generic.

Agencies should be:

  • Building first-party data pipelines for clients
  • Reducing dependence on rented platforms
  • Capturing intent, not just impressions

This includes:

  • Email lists
  • Events
  • Partnerships
  • PR exposure
  • Offline → online attribution

This is especially critical in HNW, finance, luxury, and B2B where shallow data produces shallow results.


4. Use AI to Eliminate Low-Value Labour (Intern Work)

AI should replace:

  • Manual reporting
  • Basic copy variations
  • A/B setup and analysis
  • Research aggregation
  • List cleaning and enrichment

This allows agencies to:

  • Run leaner teams
  • Pay fewer juniors, but better seniors
  • Increase margins without increasing headcount

If AI is being used to replace senior thinking, the agency is already in decline.


5. Move From “Content” to “Signals”

Most AI-driven marketing floods the internet with noise.

Smart agencies are shifting to:

  • Signal creation over volume
  • Authority over reach
  • Credibility over clicks

Examples:

  • Thought leadership placed in the right publications
  • Executive visibility, not brand spam
  • Scarcity-based messaging
  • Fewer leads, higher quality

AI helps identify patterns. Humans decide where to be visible and where to stay silent.


6. Re-price Around Access & Insight, Not Output

AI destroys output-based pricing.

Agencies should be:

  • Selling access to thinking
  • Charging for strategic clarity
  • Structuring retainers around advisory + execution
  • Avoiding per-asset pricing models

Clients will not pay premium fees for things they know AI can generate cheaply.

They will pay for:

  • Confidence
  • Risk reduction
  • Market understanding
  • Introductions and influence


7. Build Hybrid Talent, Not Prompt Engineers

The best hires now are:

  • Strategists who can use AI fluently
  • Creatives who direct machines
  • Media planners who understand data + narrative
  • Account leads who translate complexity simply

Avoid:

  • Pure “AI operators”
  • Prompt-only roles
  • Tool-chasing specialists

Tools change. Thinking compounds.


8. Protect the Brand From AI Overuse

Over-automated marketing looks:

  • Generic
  • Soulless
  • Interchangeable

Agencies must act as brand guardians, ensuring:

  • Voice consistency
  • Editorial standards
  • Restraint
  • Quality thresholds

In luxury, finance, and HNW sectors, overuse of AI is reputational risk.


9. Prepare for Client Disillusionment

Many clients are currently:

  • Experimenting with AI internally
  • Overestimating what it can do
  • Underestimating execution complexity

Agencies should position themselves as:

  • The stabilising force after failed AI experiments
  • The bridge between tools and reality
  • The operator that makes AI commercially useful

This moment is coming fast.


Bottom Line

At this stage of AI development, marketing agencies should:

  • Automate execution
  • Elevate judgement
  • Own data
  • Protect brands
  • Sell thinking, not tools

AI will commoditise doing.

Agencies survive by mastering deciding.