The primary hurdle lies in the transition from personal AI—tools like individual writing assistants—to organizational AI, which requires shared knowledge and strict governance. Most current data architectures were built for human users, not autonomous agents, leading to what researchers call context fragmentation. According to the study, 77% of executives admit that less than a fifth of their enterprise data is sufficiently contextualized for agentic use.
This lack of data lineage and meaning forces a high failure rate for deployments. Roughly 40% of tech leaders report that over 40% of their AI pilot projects fail to reach production because their underlying infrastructure remains ill-equipped for autonomous tasks. Furthermore, a perception gap exists within leadership teams: 69% of C-suite executives believe their organizations are already operating with agentic AI, compared to only 57% of vice presidents.

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