Original article excerpt
Server-side extracted preview paragraphs from the original source.
Using insights from the recent Economist Enterprise report, this blog will go into detail on why siloed data and legacy infrastructure are a roadblock to AI progress.
AI adoption is starting to translate into real-world returns. But as efforts accelerate, many organizations are running into the same problem: systems that are too expensive, too slow, and can’t scale.
Among companies with disconnected data environments, 67% cited data storage, movement, and duplication as the largest recurring AI cost, according to a recent survey of over 1,200 technology leaders by Economist Enterprise. For those with a unified data architecture, that number drops to just over half.
