AI retrieval at scale is becoming a systems problem, not a tooling problem AI retrieval at scale has shifted from a tooling challenge centered on embeddings and vector search to a broader systems problem, as production demands outpace early semantic similarity architectures. The evolution requires rethinking infrastructure to handle complex, large-scale retrieval workflows efficiently. AI retrieval has moved well beyond embeddings and vector search. Early retrieval architectures focused primarily on semantic similarity. Still, production The post AI retrieval at scale is becoming a systems problem, not a tooling problem https://thenewstack.io/ai-retrieval-at-scale/ appeared first on The New Stack https://thenewstack.io .