• Menu
  • Skip to right header navigation
  • Skip to main content
  • Skip to primary sidebar

DigiBanker

Bringing you cutting-edge new technologies and disruptive financial innovations.

  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In
  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In

Enterprise AI struggles due to fragmented data, poor governance, and infrastructure limits, amplifying errors and bias that erode trust and misinform business decisions

August 20, 2025 //  by Finnovate

Across boardrooms, enterprise AI has become the biggest line item in the innovation budget — yet it’s also become the biggest source of anxiety. Andrew Frawley, CEO of Data Axle, believes the major problem begins before even a single line of code is written. “The real issue isn’t the technology itself, but the foundation,” he told me. “Companies are obsessing over models while neglecting or under-nurturing the one thing those models rely on: data.” Fragmented records and siloed systems have become default conditions in most enterprises. AI only exposes those fractures faster and at scale. “Some brands, blinded by AI’s possibilities and potential, rush for immediate deployment while bypassing the crucial, foundational work of establishing a data infrastructure,” he explained. “The most critical steps — which include establishing data ownership, building governance into workflows and enforcing quality standards — often get pushed aside in the interest of speed.” But that, according to Frawley, always results in misfires that damage trust. Udo Foerster, CEO of German consultancy Advan Team, sees similar dysfunction among the businesses he advises. For all the talk of algorithms, it’s the invisible plumbing beneath AI that’s doing the damage. Ken Mahoney, CEO of Mahoney Asset Management, flagged another overlooked bottleneck: The physical limits of AI’s appetite for energy and infrastructure. Frawley says that without clear strategy and clean data, models confidently push the wrong action. “Deploying AI on fragmented or inaccurate data is an act of self-sabotage,” he said. “It will amplify existing flaws, erode the quality of analytics and introduce a false sense of confidence in misinformed decisions. With fragmented or inaccurate data, they amplify errors and bias at speed, autonomously executing actions, pushing a business further in the wrong direction before the problem can be detected.”

Read Article

Category: Additional Reading

Previous Post: « Embedded payments are seeing rising adoption in the parking sector through AI-recognition tech that lets customers just drive in and scan a QR code to enter their credit card information the first time they park, with automatic vehicle identification and charges applied on subsequent trips

Copyright © 2025 Finnovate Research · All Rights Reserved · Privacy Policy
Finnovate Research · Knyvett House · Watermans Business Park · The Causeway Staines · TW18 3BA · United Kingdom · About · Contact Us · Tel: +44-20-3070-0188

We use cookies to provide the best website experience for you. If you continue to use this site we will assume that you are happy with it.