Calculate your proptech boost!

Operational efficiency

2026-03-30

Why AI in Real Estate Is Failing – And How to Fix It with Agentic Workflows

Based on insights from McKinsey & Company’s latest research on AI and operating models in real estate

Most real estate companies have tried AI for building management systems by now. Plenty have run pilots. Some have even seen demos that looked genuinely impressive. And yet, very few have seen real financial impact.

McKinsey & Company calls this “pilot purgatory” – and according to their latest research, this is where the majority of real estate firms are stuck today.

So what separates the 20% that are actually getting value from AI?

It has very little to do with which AI model you use – and everything to do with how your workflows are designed.

The problem is not the technology. It is the operating model.

One of the sharpest insights from McKinsey & Company is simple:

When a pipe bursts at 6am, your tenant does not care whether you are using Gemini or Claude.

What shows up is your operating model – your workflows, your response systems, your ability to execute.

The AI model is only as useful as the processes it is embedded in.

Right now, most real estate workflows were never designed for AI.

  • Work orders come in through fragmented channels
  • Maintenance coordination is manual
  • Tenants are left wondering if anyone received their request
  • There is no learning loop to improve over time

AI can absolutely help with all of this.

But only if the workflows are built to let it act.

Pick a domain, not a list of use cases

One of the most practical ideas in the research is the “Goldilocks mindset”.

Most companies go too small:

  • collecting AI use cases like a checklist

Or too big:

  • launching vague transformation programs that never ship

The sweet spot is a domain.

A domain is a connected slice of work that is:

  • big enough to matter
  • focused enough to actually change
  • tied to clear business KPIs

Examples include:

  • leasing and renewals
  • maintenance and facilities
  • asset management reporting

These are areas with high volume, messy handoffs, and clear business impact – exactly where AI can create value.

Automate the steps. Protect the thoughts.

Once you pick a domain, every workflow can be broken into two parts:

Steps
Repetitive coordination work:

  • routing tickets
  • scheduling vendors
  • logging results

Thoughts
Human judgment:

  • decision-making
  • relationships
  • high-stakes approvals

The goal is not to replace people.

The goal is to remove coordination overhead so humans can focus on what actually builds trust and drives value.

This is where agentic AI becomes real.

Software that does not just generate insights, but monitors, decides, and acts across your building systems.

From insight to action: what this looks like in practice

For example:

A peak shaving agent can detect an upcoming power spike, analyze its root cause, and automatically reduce load by adjusting EV charging or HVAC systems – before it impacts your energy costs.

No dashboard.
No manual coordination.
Just execution.

Trust must be designed into the system

Another key insight is that trust is not optional – it is a product requirement.

AI systems must include:

  • traceability
  • auditability
  • clear escalation paths
  • human-in-the-loop for exceptions

The most successful companies design governance from day one:

  • clear automation levels
  • defined guardrails
  • continuous feedback loops

This is what allows AI to move from experiments to real operations.

The compounding advantage

Here is what makes this shift powerful.

Once you redesign a domain properly, you build something competitors do not have:

  • proprietary data
  • connected workflows
  • learning loops from real decisions

AI tools will become commoditized.

But operating models will not.

The advantage will belong to companies that:

  • connect their systems
  • redesign their workflows
  • and let AI act

From fragmented systems to autonomous operations

This is exactly the gap ProptechOS is designed to solve.

Not another AI tool.

But the execution layer that connects data, workflows, and actions across your building portfolio.

ProptechOS enables real estate owners to move from:

  • dashboards → execution
  • insights → actions
  • manual coordination → autonomous workflows

From sense → reason → act.

The real question is not about AI

McKinsey & Company estimates that AI could unlock $430–550 billion in value across real estate.

The question is not whether the technology is capable.

The question is whether your workflows are ready to let it act.

See it in action

See how AI agents detect, decide, and act across your buildings in real time.

Book a demo with ProptechOS

Anna Lundvall Hedin

Marketing Manager

Related posts

Operational efficiency

2026-03-30

Why AI in Real Estate Isn’t Delivering — And What the 20% Are Doing Differently

Operational efficiency

2026-03-24

Your building has an AI agent. It probably still needs a human to get anything done.

Operational efficiency

2026-03-24

Build fast, stay safe: how we made AI-built apps enterprise-secure

Subscribe to newsletter

By subscribing you agree to with our Privacy Policy.

Ready to see ProptechOS in action?

Take a leap into the future. See how ProptechOS can deliver real business value and support your journey toward a data-driven real estate business.