MaMaTa Unlocks Industrial Knowledge with Cognite Data Fusion® to Scale Efficiencies
MaMaTa, a subsidiary of Mecatherm, a global leader in industrial baking systems, supports OEMs, machine operators, and production teams throughout the baking value chain. By adopting Cognite Data Fusion®, MaMaTa streamlined data integration, enhanced operational efficiency, and built scalable, future-proof solutions to solve unstructured industrial data challenges faced by MaMaTa.
Cut integration time from weeks to minutes using reusable data models
Reduced time-to-value by accelerating diagnostics with low-code applications and advanced analytics
Enabled cross-functional collaboration by bridging shop-floor expertise with real-time data
MaMaTa Transforms Industrial DataOps with Cognite
Cognite Data Fusion® helped MaMaTa break down silos, integrate real-time insights, and scale operations. They achieved this by connecting 12 machines in a matter of minutes and enabling predictive maintenance.
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In their own words
With our previous platform, we were limited to sites, lines, and equipment to store all the data. Now,[with Cognite] we have a much more complex data model and can see that we can store very detailed information about the specific equipment but in a standard way.

Olivier Lempereur
Chief Data Officer, MaMaTa
So far, we’ve managed in three months to get from no platform and no front end to a first site connected and its data available in the first version of our customer portal.

Olivier Lempereur
Chief Data Officer, MaMaTa
The Total Economic Impact of Cognite Data Fusion®
Customer interviews and financial analysis reveal an ROI of 400% and total benefits of $21.56M over three years for the Cognite Data Fusion® platform.
Summary of benefits
(three-year risk-adjusted)
Improved SME efficiency
$1.5M
Revenue gains arising from shorter shutdown period
$4.8M
Real-time data efficiencies
$2.3M
Optimized planned maintenance programme
$4.3M
Energy efficiency savings
$5.1M
Optimization of heavy machinery and industrial work-flow
$9M