“We must do something about
generative AI right now.”
With Copilot and GPT hitting the
market, by now most boardrooms have heard some variation of this declaration.
But while it is important for businesses to adapt quickly to new opportunities,
it is worth noting that chasing down the latest trend may sometimes end up in
wasted resources, misaligned priorities, and might even slow down the pace of
innovation. Even as business leaders give the greenlight, they must ask
themselves: As an organization, are we truly ready to adopt this trend?
A robust data analytics
foundation is a crucial precursor to Artificial Intelligence (AI) adoption. Yet
very few
businesses can confidently state that their data is ready for AI. Your
organizational data is best suited for AI when it’s cleansed, consistent, and
centrally stored. But how does one make that happen when most organizations
continue to maintain a network of disparate systems that are poorly integrated?
When data is the differentiator for success, how does one work around data
accessibility issues? When crucial information is trapped in the form of unstructured
data in presentations, strategy papers, and customer logs that are better
suited for record-keeping, not analysis, how does one fully leverage the power of
AI?