The cost of
bad data
in construction.
Bad data is not a minor inconvenience. It is a structural cost that every construction company carries — embedded in rework, wrong decisions, and operational failures. The numbers are precise. The problem is solvable.
Construction generates more data
than ever. Most of it is unusable.
The research is unambiguous. Bad data in construction is not an edge case — it is the default. And its consequences extend far beyond individual projects.
A 2021 study by FMI and Autodesk surveyed 1,115 construction professionals across Europe. The findings are stark: 82% of firms are collecting more data than three years ago — yet 39% say less than half of that data is actually usable.
The root causes are consistent across every country surveyed. Data is inaccurate. Data is incomplete. Data is inconsistent between systems and parties. And critically, it is often untimely — arriving too late to influence the decisions it was meant to support.
The result: 41% of project managers make their decisions using data they cannot fully trust. In an industry where a wrong procurement decision or a misclassified element can cascade into days of rework, this is not a data quality problem. It is an operational risk.
The McKinsey Global Institute adds a longer-term dimension. Construction labor productivity has grown at just 1% per year over two decades — compared to 2.8% for the total economy. A significant part of that gap is attributable to information failures: wrong decisions made on bad data, repeated project by project.
Nine data points that
define the problem.
From global figures
to your own numbers.
The global figures are striking. But the real question is what bad data costs your organisation specifically. Use the model below to estimate your exposure.
Estimate your own exposure
Based on the FMI / Autodesk methodology for European construction firms.
Where bad data enters
your models — and spreads.
The industry-wide figures capture the full picture. But in BIM-driven workflows, the problem has a specific origin: data errors that start in Revit and propagate downstream through every system that depends on them.
The questions decision makers
actually ask.
Direct answers to the most common questions about data quality costs in construction — optimised for clarity and precision.
Get the full evidence base as a PDF.
The complete source data, methodology, and DAQS perspective on the cost of bad data in construction — formatted for internal sharing and business case development.