AI innovation is increasingly constrained by architecture
As AI applications evolve beyond standalone vector search, many organizations find themselves coordinating separate systems for keyword search, vector retrieval, ranking, and personalization. Each additional layer introduces synchronization overhead, operational complexity, and slower iteration.
This GigaOm Decision Brief explores why AI performance is increasingly determined by architecture rather than individual components and how a unified AI Search Platform can reduce integration overhead while enabling more relevant, responsive customer experiences.