
The silent friction slowing down modern enterprises is no longer a lack of data, but an overabundance of untrustworthy information, a problem that legacy data quality systems, with their rigid, manually-coded rules, are fundamentally unequipped to solve. This has catalyzed a paradigm shift away from deterministic, pattern-matching frameworks toward intelligent, self-learning systems powered by artificial intelligence. Traditional methods are failing










