AIchemist
제품
회사
리소스
지원사업
메타버스 사무실
문의하기
회사
회사
뉴스
지원사업
데이터 바우처
AI 바우처
← 목록으로
Data Strategy

How to Design an Enterprise Data Strategy Across LLMs, Agents, and Vision AI

Mar 4, 2026

Many enterprises still design their AI data strategies as though each major system type will remain independent. One group works on LLM retrieval. Another builds vision pipelines. Another explores agents. But by 2026, this separation is becoming increasingly expensive. Enterprise value is moving toward systems where LLMs, agents, and vision AI interact inside the same business workflows.

The first reason this matters is that these systems consume different kinds of truth. LLMs rely heavily on knowledge structure. Agents depend on workflow state and permissions. Vision AI depends on visual evidence and spatial context.

This becomes especially visible in real workflows. A field issue may be detected visually, interpreted against a spatial context, described through a knowledge layer, and then passed into an agentic process for routing or action. That single business chain involves vision, documents, workflow state, and often location.

This is why an enterprise data strategy across LLMs, agents, and vision AI must begin with shared reference structures rather than tool-specific silos.

블로그 - AI 데이터 인사이트 | AIchemist