While leaders express confidence in their own data to fuel their AI initiatives, they have also experienced material financial losses as a result of poor data governance, but this has not blunted efforts to implement AI at their organization, nor has it impacted plans to invest heavily in the technology.
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A recent poll from corporate performance management solutions provider
They are probably right to question their data’s quality, as 72% say bad data cost their organization $500,000 or more, with more than one-third (37%) reporting damages over $1 million. Downstream impacts include delayed reporting and closing (cited by 44%), lost revenue opportunities (41%), a lack of trust in automated insights (38%) and compliance issues (35%).
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“We found a strong relationship here, and that alone points to significant governance gaps that organizations need to address. If companies are adopting AI tools at scale without fully trusting or governing the data those tools rely on, it’s not surprising that poor data-driven decisions follow. That said, AI isn’t so much the root cause as it is an amplifier of underlying data challenges that already existed. The correlation should serve as a clear signal to act, not a verdict on AI itself,” said McIntyre.
While the vast majority of executives, 85%, say they have a formal data governance program in place or underway, McIntyre said it doesn’t mean much if they lack confidence in the data itself. The challenge is not so much having a governance program but ensuring the data is genuinely auditable and transparent, which she said requires human logic. This, in turn, is needed to establish human trust.
“Systems don’t build trust on their own. It’s up to humans to create the data hierarchy and define the business logic. You need a person behind the numbers to establish that framework and understand the ‘why,’ which ensures the data is clean and transparent enough for AI to be successfully built on top of it,” she said.
In the same regard, while executives regularly doubt or double-check the data, this means little if this does not, in turn, turn that skepticism into meaningful investigation. While recognizing a gap is a starting point, she said, it needs to be followed by deeper research, allowing organizations to truly understand the root of their data before reacting.
One of the challenges of establishing a decent data governance program is that organizations do not always agree on who should be responsible for it: finance or IT. The OneStream survey found that while 89% of executives overall say finance and IT are aligned, 85% of CIOs believe they lead data governance, while 78% of CFOs claim the lead. They also have a different perspective on data governance challenges: Finance prioritizes accuracy, context and accountability, and IT focuses on enablement, scalability and execution. Because of this disconnect, nearly one in three CFOs (32%) cite “lack of data ownership” as a key barrier to success.
This calls to mind a recent study from Grant Thornton that found similar mismatches between different parts of the organization (
A similar confidence mismatch was found in a recent survey from data extraction solutions provider
This confidence mismatch was also found in Deloitte’s
However, governance lagging behind ambitions in AI is not a new thing. Last year, for example, governance, risk and compliance solutions provider
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