Careerguide

Improving Data Quality Using AI and ML

Nieuws
20-06-2025
Udaya Veeramreddygari
Aartificial intelligence (AI) and machine learning (ML) offering a game-changing approach that shifts us from merely reacting to data issues to actively ensuring quality.

Why Data Quality Matters

When data quality takes a hit, it sets off a chain reaction of problems that go way beyond just a minor hassle. Organizations can end up facing hefty financial losses, poor strategic choices, and a serious decline in trust from stakeholders when the integrity of their data is compromised. Common data quality challenges that we face it today’s world:

  • Missing or incomplete values that create gaps in analysis
  • Duplicate records that inflate metrics and distort insights
  • Inconsistent formatting across systems and sources
  • Outdated or stale information that leads to poor decisions
  • Incorrect data entries from human error or system failures
  • Schema inconsistencies between integrated systems
  • Data drift as business processes evolves over time

These aren’t just minor inconveniences they can cost businesses millions. In fact, Gartner reports that poor data quality can set organizations back an average of $12.9 million each year. However, this number often falls short of capturing the full impact, which encompasses:

  • Lost revenue opportunities from missed insights
  • Regulatory compliance violations and associated penalties
  • Customer churn due to poor experiences driven by bad data
  • Operational inefficiencies and resource waste
  • Damaged reputation and loss of competitive advantage

[....]

Lees verder op: dataversity.net