For CDOs, CIOs and DQMs, the reality is often frustrating: the data quality tools in place show errors, but don't help to correct them quickly. They centralize alerts, but disperse responsibilities. And very often, they are designed for IT, not for those who live with data on a daily basis.
Today, the question is no longer "should data quality be monitored?", but how to industrialize it, making it collaborative, traceable, and controllable by the right profiles, without systematic dependence on specific developments.
In 2025, fast-moving companies are those that no longer simply observe their data problems. They identify, correct and track them continuously, within an accessible and governed framework. A new-generation platform doesn't just display anomalies, it enables immediate action to be taken, without technical overload.
This type of solution handles all the key stages:
Modern platforms also integrateuseful but controllable artificial intelligence bricks: contextual correction suggestions, real-time alerts, continuous supervision of critical flows. Nothing is imposed automatically; it's always the user who retains control.
The creation of rules in natural language means that controls can be adapted to the organization's specific needs, without the need for complex technical translation. Data lineage, traceability of corrections, documentation of rules: everything is centralized and easy to read.
A modern platform is not just an individual tool. It becomes a collaborative space, where business units, data governance and IT can work on unified, reliable and duplication-free repositories.
Above all, it's not just a marketing overlay. Its no-code interface is truly usable by non-technical profiles. Because it's this controlled autonomy that speeds up quality assurance.
👉 These bricks, once brought together, are not a luxury. They form the minimum foundation for piloting a data quality strategy that measures up to today's challenges.
Modern platforms use artificial intelligence where it saves time: detection, suggestion, recognition of sensitive entities. But they are not content to act "in the user's place". A serious platform must always leave the hand to the person who knows the business.
A basic principle remains: if a competent human can't explain a rule or correct a field, AI won't do it any better.
This is why AI does not replace governance. It reinforces it, by making it faster, more reactive and more robust.
Monitoring is all very well. But if you can't do anything once a problem has been detected, you're stuck in a passive model. The strength of a modern platform lies in its ability to act immediately, in the same environment, with a governed logic.
This transforms data quality into a fluid process, integrated into everyday use, rather than a centralized gas factory.
Modern data quality platforms are not just more beautiful or faster tools. They reflect a change in logic. They recognize what organizations really expect today:
📌 Data quality is no longer a support function. It's a lever for performance, compliance and operational efficiency.
Your organization is growing, your workflows are becoming more complex, and your requirements are increasing. But has your data quality platform kept pace?
👉 Ask for a demo with a Tale of Data expert
and find out what a modern solution, designed for 2025, can really do for you.