
Data Debt: The Silent Killer of Enterprise AI Ambitions
Your AI models are not the problem. Enterprises are deploying increasingly sophisticated large language models, building agentic workflows, and investing heavily in AI platforms. The technology has never been more capable. Yet 73% of organizations report their data initiatives falling short of ROI expectations — and only 27% exceed their targets. The gap between AI ambition and AI results has a name: data debt. Data debt is not a storage problem. It is the accumulated cost of fragmented architectures, broken pipelines, manual workarounds, and governance gaps that compound every time you try to scale AI on infrastructure that was never designed for it. And it is quietly killing enterprise AI ambitions at a rate most leadership teams do not fully understand. ## The $29 Million Problem Nobody Talks About The average enterprise spends $29.3 million per year on data programs, according to Fivetran's 2026 Enterprise Data Infrastructure Benchmark Report. Data integration alone consumes $4.2 m
Continue reading on Dev.to
Opens in a new tab


