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Vector databases typically manage large collections of embedding vectors. As AI applications are growing rapidly, the number of embeddings that need to be stored and indexed is increasing. The Faiss library is dedicated to vector similarity search, a core functionality of vector databases. Faiss is a toolkit of indexing methods and related primitives used to search, cluster, compress and transform vectors. This paper describes the trade-offs in vector search and the design principles of Faiss in terms of structure, approach to optimization and interfacing. We benchmark key features of the library and discuss a few selected use cases to highlight its broad applicability.
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Matthijs Douze
Milieux environnementaux, transferts et interactions dans les hydrosystèmes et les sols
Alexandr Guzhva
Chengqi Deng
Dalian Maritime University
IEEE Transactions on Big Data
Milieux environnementaux, transferts et interactions dans les hydrosystèmes et les sols
Fairchild Semiconductor (United States)
Skin Research Center
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Douze et al. (Mon,) studied this question.
synapsesocial.com/papers/69d83cd48c03fbaff8bee655 — DOI: https://doi.org/10.1109/tbdata.2025.3618474