– 5 min.
A blurry, black and white close-up showing faint curved lines or text below a dark upper background, related to construction IoT.

From telematics to intelligence: The OEM platform shift

OEMs have more machine data than ever. The ones winning on it have stopped asking what their customers need from it, and started asking what their own business needs.
A man with short gray hair and glasses in a dark blazer and white shirt smiles slightly, related to construction equipment tracking.
Paul Wilson
VP, OEM Group Americas at Trackunit
An excavator loads gravel into a yellow dump truck at a quarry, with mounds of rocks nearby—fleet management in action.

I spend most of my time talking to OEM program leaders who have done everything right on paper. Connectivity running, data flowing, devices on machines across the installed base. And the conversation always arrives at the same place: why isn’t this doing more for the business?

The honest answer is simple. Connectivity isn’t just something you do for your customers. It’s the data foundation for your own business.

Most programs were built the other way around: designed to satisfy rental customers, not drive OEM commercial outcomes. That decision set the ceiling most programs are now hitting.

Why most OEM connectivity programs leave value on the table

Every machine an OEM ships is already generating data from the first hour in the field. Loads, fault patterns, duty cycles. For many OEMs, that data never makes it back to the people who could use it.

Aftermarket teams work from historical averages. Engineering waits for warranty claims. Dealer networks react to customer calls instead of machine condition.

None of this is inevitable. The data already exists. BCG’s 2025 research makes the commercial case clearly: aftermarket service margins run significantly higher than new equipment sales. The OEMs capturing that margin have a program built for their business, not just their customers. 

A large yellow dump truck filled with sand is parked on concrete under a cloudy sky, useful for construction fleet management.
Every machine is already generating data. The question is whether the program was built to use it

From connected to intelligent

Getting there starts with a decision most programs haven’t made. Connect every machine by default, not just when a customer asks. Fragmented coverage produces fragmented insight. An OEM with 60% of its installed base connected is working with 60% of the picture.

Full-fleet connectivity changes that. Complete coverage reveals which components fail early and where machines run beyond design assumptions. It shows where warranty exposure is building before claims arrive. None of that surfaces reliably from a partially connected fleet.

Connectivity creates coverage. Coverage creates pattern visibility. Operationalizing those patterns is what turns machine data into revenue, cost control, and uptime.

From field data to better product decisions

The question worth asking is simple: what is this data actually for? Most OEM programs were built to answer that question on behalf of the customer. The shift is in answering it for the business.

When field data flows back to engineering, real problems surface. One OEM with 10,000 machines found them consistently over-specified for actual duty cycles. Closing that gap generated a validated €2.5M efficiency gain across the fleet.

Two people discuss something on a computer in a modern office labeled Let Us Grow HQ, highlighting a connected jobsite.
The shift from box provider to intelligence platform starts with routing data to the people who can act on it

Real-world usage data makes that possible. It shows how machines actually behave, not how engineers modeled them. OEMs who build this feedback loop catch design issues before they become warranty campaigns.

When it flows to service and aftermarket, dealer networks stop reacting and start anticipating. 

They know which machines need attention before a customer calls and dispatch with the right parts. Demand signals from connected machines replace the historical averages aftermarket teams have always had to work from. 

From data foundation to AI-powered operations

Some OEMs decide to build the intelligence layer themselves. I call it the do-it-yourself stack trap. They stand up cloud environments, build BI dashboards, start layering in AI tools. And it works, for a while.

The challenge isn’t the first version. It’s maintaining it: security certifications, compliance, API versioning, data normalization across machine generations.  In my experience, teams often hit the wall around 18 months in. Stretched thin keeping what they built running.

Aerial view of a construction site with steel framework, materials, equipment, and vehicles on sandy ground, highlighting a connected jobsite.
The fastest-moving OEMS focus on what they are best at: The machine, the application, the customer

The OEMs moving fastest focus on what they are best at: the machine, the application, the customer. An operating data platform platform handles the infrastructure underneath. The speed difference is real. One OEM deployed over 10,000 customer portals in two weeks after standardizing on a platform approach. 

Once the foundation is in place, the next challenge is access: getting data to the people who need it. Model Context Protocol (MCP) is the open standard making that practical at scale. It connects familiar AI tools directly to live machine data. No exports, no custom integrations, no report cycle.

A service team can ask which assets are approaching a maintenance threshold. The answer comes in seconds.

Make the shift today

Most OEMs already have enough machine data. The real question is whether that data exists primarily for customers or also, for the business itself.

The OEMs finding the answer are redesigning their programs around commercial goals: aftermarket revenue, engineering margins, machine sales. Each of those goals already has a data answer. The machines have been telling them for years.


About the author

Paul Wilson leads OEM sales across the Americas at Trackunit. He has spent a decade working with construction equipment manufacturers to build connectivity programs that go beyond basic telematics. Before Trackunit, Paul ran the IIoT division at ZTR and held senior sales leadership roles at TELUS Business and Info-Tech Research Group.

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