Vextra: A Unified Middleware Abstraction for Heterogeneous Vector Database Systems
By: Chandan Suri, Gursifath Bhasin
Potential Business Impact:
Lets different AI tools use any database easily.
The rapid integration of vector search into AI applications, particularly for Retrieval Augmented Generation (RAG), has catalyzed the emergence of a diverse ecosystem of specialized vector databases. While this innovation offers a rich choice of features and performance characteristics, it has simultaneously introduced a significant challenge: severe API fragmentation. Developers face a landscape of disparate, proprietary, and often volatile API contracts, which hinders application portability, increases maintenance overhead, and leads to vendor lock-in. This paper introduces Vextra, a novel middleware abstraction layer designed to address this fragmentation. Vextra presents a unified, high-level API for core database operations, including data upsertion, similarity search, and metadata filtering. It employs a pluggable adapter architecture to translate these unified API calls into the native protocols of various backend databases. We argue that such an abstraction layer is a critical step towards maturing the vector database ecosystem, fostering interoperability, and enabling higher-level query optimization, while imposing minimal performance overhead.
Similar Papers
Exqutor: Extended Query Optimizer for Vector-augmented Analytical Queries
Databases
Makes searching data with pictures faster.
Exqutor: Extended Query Optimizer for Vector-augmented Analytical Queries
Databases
Makes searching data with AI much faster.
TigerVector: Supporting Vector Search in Graph Databases for Advanced RAGs
Databases
Connects words and pictures for smarter searching.