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39% of organizations lack data governance as AI tackles dirty data crisis
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Organizations are struggling with “dirty” data that contains duplicates, inconsistencies, and fragmentation across departments, with 39% lacking proper data governance frameworks according to recent research. This widespread data quality crisis is preventing businesses and public sector bodies from generating actionable insights needed to serve customers and citizens effectively, while AI-powered solutions are emerging as the primary remedy for automated data cleansing.

The scale of the problem: Poor data management has become endemic across sectors, with financial institutions particularly affected by storage and integration challenges.

  • 44% of financial firms struggle to manage data stored across multiple locations, leading to inflated operational costs.
  • Organizations frequently maintain duplicate and incomplete records due to inconsistent data practices.
  • Teams work in data silos, with separate departments like sales and marketing maintaining isolated datasets for the same customers.

Why data gets “dirty”: The root causes stem from both organizational structure and technical limitations that have accumulated over years of poor practices.

  • Departments often work with fragmented, inconsistent data instead of integrated systems providing a single reliable database.
  • Legacy or rules-based software can no longer handle the volume of data modern organizations need to process.
  • Data governance is frequently misunderstood as solely an IT responsibility, when actual data users in departments like finance, sales, and marketing should take ownership.

The ownership challenge: Responsibility for data quality often falls into a gap between IT teams and department users who actually work with the information daily.

  • IT teams can ensure software systems function properly, but they don’t interact with customers and stakeholders using the data.
  • Departments that benefit most from clean data—such as finance, sales, marketing, and in public sector contexts, social care and education teams—should take primary responsibility for data management.
  • Creating a culture of data responsibility driven by desire for a single view of customer or citizen information requires staff training and organizational commitment.

AI-powered solutions: Artificial intelligence and machine learning technologies are being deployed to address data quality issues that manual processes cannot handle effectively.

  • These newer tools can process larger data volumes and identify patterns and inconsistencies that rules-based software cannot detect.
  • AI systems can eliminate data duplication and offer predictive data modeling capabilities.
  • Automated data cleansing boosts productivity by handling manual processes that previously consumed significant staff time, allowing humans to focus on higher-value tasks.

The business impact: Clean data delivers benefits that extend far beyond simple organization, enabling better decision-making and operational efficiency.

  • Breaking down data silos allows improved collaboration and cohesion across departments.
  • Organizations can deliver personalized marketing campaigns, optimize supply chains, issue council tax bills, and allocate social care budgets more effectively.
  • Companies that treat data as a strategic asset rather than a byproduct are positioned to outperform competitors who can’t adapt quickly to customer and market demands.
What is 'dirty' data and why is it important for businesses to eliminate it?

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