Simply having data isn't enough to bring AI to the enterprise. AI needs data to be interpretable, contextual, and consistent. Models acting without context can lead to hallucinations and inaccurate results. But most enterprise intelligence is fragmented, trapped within siloed documents and systems.
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Data Prep Takes Work - Manually formatting, centralizing, and organizing data to create an ontology can take months.
- Data Loses Relevance - Data becomes outdated quickly, and manual updates to data ontologies can become impractical.
- Search Lacks Context - Traditional keyword search is useless when you need to support complex research, cross-departmental connections, and multi-step processes.
- Knowledge Loss Is Real - When a tenured employee departs, critical institutional knowledge disappears.